Preface

This document describes the PGI Fortran interfaces to cuBLAS, cuFFT, cuRAND, and cuSPARSE, which are CUDA Libraries used in scientific and engineering applications built upon the CUDA computing architecture.

Intended Audience

This guide is intended for application programmers, scientists and engineers proficient in programming with the Fortran language. This guide assumes some familiarity with either CUDA Fortran or OpenACC.

Organization

The organization of this document is as follows:

Introduction
contains a general introduction to Fortran interfaces, OpenACC, CUDA Fortran, and CUDA Library functions
BLAS Runtime Library APIs
describes the Fortran interfaces to the various cuBLAS libraries
FFT Runtime Library APIs
describes the module types, definitions and Fortran interfaces to the cuFFT library
Random Number Runtime APIs
describes the Fortran interfaces to the host and device cuRAND libraries
Sparse Matrix Runtime APIs
describes the module types, definitions and Fortran interfaces to the cuSPARSE Library
Examples
provides sample code and an explanation of each of the simple examples.

Conventions

This guide uses the following conventions:

italic
is used for emphasis.
Constant Width
is used for filenames, directories, arguments, options, examples, and for language statements in the text, including assembly language statements.
Bold
is used for commands.
[ item1 ]
in general, square brackets indicate optional items. In this case item1 is optional. In the context of p/t-sets, square brackets are required to specify a p/t-set.
{ item2 | item 3 }
braces indicate that a selection is required. In this case, you must select either item2 or item3.
filename ...
ellipsis indicate a repetition. Zero or more of the preceding item may occur. In this example, multiple filenames are allowed.
FORTRAN
Fortran language statements are shown in the text of this guide using a reduced fixed point size.
C/C++
C/C++ language statements are shown in the test of this guide using a reduced fixed point size.

The PGI compilers and tools are supported on a wide variety of Linux, macOS and Windows operating systems running on 64-bit x86-compatible processors, and on Linux running on OpenPOWER processors. (Currently, the PGI debugger is supported on x86-64/x64 only.) See the Compatibility and Installation section on the PGI website for a comprehensive listing of supported platforms.

Note: Support for 32-bit development was deprecated in PGI 2016 and is no longer available as of the PGI 2017 release. PGI 2017 is only available for 64-bit operating systems and does not include the ability to compile 32-bit applications for execution on either 32- or 64-bit operating systems.

Terminology

If there are terms in this guide with which you are unfamiliar, see the PGI glossary.

1. Introduction

This document provides a reference for calling CUDA Library functions from PGI Fortran. It can be used from Fortran code using the OpenACC programming model, or from PGI CUDA Fortran. Currently, the CUDA libraries which PGI provides pre-built interface modules for, and which are documented here, are:

  • cuBLAS, an implementation of the BLAS.
  • cuFFT, a library of Fast Fourier Transform (FFT) routines.
  • cuRAND, a library for random number generation.
  • cuSPARSE, a library of linear algebra routines used with sparse matrices.

The OpenACC Application Program Interface is a collection of compiler directives and runtime routines that allows the programmer to specify loops and regions of code for offloading from a host CPU to an attached accelerator, such as a GPU. The OpenACC API was designed and is maintained by an industry consortium. See the OpenACC website for more information about the OpenACC API.

CUDA Fortran is a small set of extensions to Fortran that supports and is built upon the CUDA computing architecture. CUDA Fortran includes a Fortran 2003 compiler and tool chain for programming NVIDIA GPUs using Fortran, and is an analog to NVIDIA's CUDA C compiler. Compared to the PGI Accelerator and OpenACC directives-based model and compilers, CUDA Fortran is a lower-level explicit programming model with substantial runtime library components that give expert programmers direct control of all aspects of GPGPU programming.

This document does not contain explanations or purposes of the library functions, nor does it contain details of the approach used in the CUDA implementation to target GPUs. For that information, please see the appropriate library document that comes with the NVIDIA CUDA Toolkit. This document does provide the Fortran module contents: derived types, enumerations, and interfaces, to make use of the libraries from Fortran rather than from C or C++.

Many of the examples used in this document are provided in the PGI compiler and tools distribution, along with Makefiles, and are stored in the yearly directory, such as 2016/CUDA-Libraries.

1.1. Fortran Interfaces and Wrappers

Almost all of the function interfaces shown in this document make use of features from the Fortran 2003 iso_c_binding intrinsic module. This module provides a standard way for dealing with isues such as inter-language data types, capitalization, adding underscores to symbol names, or passing arguments by value.

Often, the iso_c_binding module enables Fortran programs containing properly written interfaces to call directly into the C library functions. In some cases, PGI has written small wrappers around the C library function, to make the Fortran call site more "Fortran-like", hiding some issues exposed in the C interfaces like handle management, host vs. device pointer management, or character and complex data type issues.

In a small number of cases, the C Library may contain multiple entry points to handle different data types, perhaps an int in one function and a size_t in another, otherwise the functions are identical. In these cases, PGI may provide just one generic Fortran interface, and will call the appropriate C function under the hood.

1.2. Using CUDA Libraries from OpenACC Host Code

All four of the libraries covered in this document contain functions which are callable from OpenACC host code. Most functions take some arguments which are expected to be device pointers (the address of a variable in device global memory). There are several ways to do that in OpenACC.

If the call is lexically nested within an OpenACC data directive, the PGI Fortran compiler, in the presence of an explicit interface such as those provided by the PGI library modules, will default to passing the device pointer when required.

subroutine hostcall(a, b, n)
use cublas
real a(n), b(n)
!$acc data copy(a, b)
call cublasSswap(n, a, 1, b, 1)
!$acc end data
return
end

A Fortran interface is made explicit when you use the module that contains it, as in the line use cublas in the example above. If you look ahead to the actual interface for cublasSswap, you will see that the arrays a and b are declared with the CUDA Fortran device attribute, so they take only device addresses as arguments.

It is more acceptable and general when using OpenACC to pass device pointers to subprograms by using the host_data clause as most implementations don't have a way to mark arguments as device pointers. The host_data construct with the use_device clause makes the device addresses available in host code for passing to the subprogram.

use cufft
use openacc
. . .
!$acc data copyin(a), copyout(b,c)
ierr = cufftPlan2D(iplan1,m,n,CUFFT_C2C)
ierr = ierr + cufftSetStream(iplan1,acc_get_cuda_stream(acc_async_sync))
!$acc host_data use_device(a,b,c)
ierr = ierr + cufftExecC2C(iplan1,a,b,CUFFT_FORWARD)
ierr = ierr + cufftExecC2C(iplan1,b,c,CUFFT_INVERSE)
!$acc end host_data

! scale c
!$acc kernels
c = c / (m*n)
!$acc end kernels
!$acc end data

This code snippet also shows an example of sharing the stream that OpenACC and the cuFFT library use. Every library in this document has a function for setting the CUDA stream which the library runs on. Usually, when using OpenACC, you want the OpenACC kernels to run on the same stream as the library functions. In the case above, this guarantees that the kernel c = c / (m*n) does not start until the FFT operations complete. The function acc_get_cuda_stream and the definition for acc_async_sync are in the openacc module.

1.3. Using CUDA Libraries from OpenACC Device Code

Two libraries are available from withn OpenACC compute regions, though the two can behave quite differently. Functions in both the openacc_cublas module and the openacc_curand module are marked acc routine seq. The cuBLAS interfaces from device code closely mirror what's available from the host, but the underlying implementation may launch a new kernel using CUDA dynamic parallelism. The routines should not be called by multiple threads if you expect the threads to cooperate together to compute the answer.

subroutine testdev( a, b, n )
use openacc_cublas
real :: a(n), b(n)
type(cublasHandle) :: h
!$acc parallel num_gangs(1) copy(a,b,h)
j = cublasCreate(h)
j = cublasSswap(h,n,a,1,b,1)
j = cublasDestroy(h)
!$acc end parallel
return
end subroutine

When using the openacc_cublas module, you must link with -lcublas_device (or defaultlib:cublas_device on Windows) and compile and link with -Mcuda.

The cuRAND device library is all contained within CUDA header files. In device code, it is designed to return one or a small number of random numbers per thread. The thread's random generators run independently of each other, and it is usually advised for performance reasons to give each thread a different seed, rather than a different offset.

program t
use openacc_curand
integer, parameter :: n = 500
real a(n,n,4)
type(curandStateXORWOW) :: h
integer(8) :: seed, seq, offset
a = 0.0
!$acc parallel num_gangs(n) vector_length(n) copy(a)
!$acc loop gang
do j = 1, n
!$acc loop vector private(h)
  do i = 1, n
    seed = 12345_8 + j*n*n + i*2
    seq = 0_8
    offset = 0_8
    call curand_init(seed, seq, offset, h)
!$acc loop seq
    do k = 1, 4
      a(i,j,k) = curand_uniform(h)
    end do
  end do
end do
!$acc end parallel
print *,maxval(a),minval(a),sum(a)/(n*n*4)
end

When using the openacc_curand module, since all the code is contained in CUDA header files, you do not need any additional libraries on the link line. However, since the current implementation relies on CUDA compilation, you must compile with -ta=tesla,nollvm.

1.4. Using CUDA Libraries from CUDA Fortran Host Code

The predominant usage model for the library functions listed in this document is to call them from CUDA Host code. CUDA Fortran allows some special capabilities in that the compiler is able to recognize the device and managed attribute in resolving generic interfaces. Device actual arguments can only match the interface's device dummy arguments; managed actual arguments, by precedence, match managed dummy arguments first, then device dummies, then host.

program testisamax  ! link with -Mcudalib=cublas -lblas
use cublas
real*4              x(1000)
real*4, device  :: xd(1000)
real*4, managed :: xm(1000)

call random_number(x)

! Call host BLAS
j = isamax(1000,x,1)

xd = x
! Call cuBLAS
k = isamax(1000,xd,1)
print *,j.eq.k

xm = x
! Also calls cuBLAS
k = isamax(1000,xm,1)
print *,j.eq.k
end

Using the cudafor module, the full set of CUDA functionality is available to programmers for managing CUDA events, streams, synchronization, and asynchronous behaviors. CUDA Fortran can be used in OpenMP programs, and the CUDA Libraries in this document are thread safe with respect to host CPU threads. Further examples are included in chapter Examples.

1.5. Using CUDA Libraries from CUDA Fortran Device Code

The cuBLAS and cuRAND libraries have functions callable from CUDA Fortran device code, and their interfaces are accessed via the cublas_device and curand_device modules, respectively. The module interfaces are very similar to the modules used in OpenACC device code, but for CUDA Fortran, each subroutine and function is declared attributes(device), and the subroutines and functions do not need to be marked as acc routine seq.

! cuBLAS in device code requires -Mcuda=cc35 or higher
! since it potentially uses dynamic parallelism to launch kernels.
! pgfortran -Mcuda=cc35 testcu.cuf -lcublas_device
attributes(global) subroutine testcu( a, b, n )
use cublas_device
real, device :: a(*), b(*)
type(cublasHandle) :: h
integer, value :: n
i = threadIdx%x
if (i.eq.1) then
    j = cublasCreate(h)
    j = cublasSswap(h,n,a,1,b,1)
    j = cublasDestroy(h)
end if
return
end subroutine

Using the device cuRAND library with CUDA Fortran also requires compiling with -Mcuda=nollvm so the CUDA in the cuRAND headers can get compiled.

module mrand
    use curand_device
    integer, parameter :: n = 500
    contains
        attributes(global) subroutine randsub(a)
        real, device :: a(n,n,4)
        type(curandStateXORWOW) :: h
        integer(8) :: seed, seq, offset
        j = blockIdx%x; i = threadIdx%x
        seed = 12345_8 + j*n*n + i*2
        seq = 0_8
        offset = 0_8
        call curand_init(seed, seq, offset, h)
        do k = 1, 4
            a(i,j,k) = curand_uniform(h)
        end do
        end subroutine
end module

program t   ! pgfortran -Mcuda=nollvm t.cuf
use mrand
use cudafor ! recognize maxval, minval, sum w/managed
real, managed :: a(n,n,4)
a = 0.0
call randsub<<<n,n>>>(a)
print *,maxval(a),minval(a),sum(a)/(n*n*4)
end program

1.6. Pointer Modes in cuBLAS and cuSPARSE

Because the PGI Fortran compiler can distinguish between host and device arguments, the PGI modules for interfacing to cuBLAS and cuSPARSE handle pointer modes differently than CUDA C, which requires setting the mode explicitly for scalar arguments. Examples of scalar arguments which can reside either on the host or device are the alpha and beta scale factors to the *gemm functions.

Typically, when using the normal "non-_v2" interfaces in the cuBLAS and cuSPARSE modules, the runtime wrappers will implicitly add the setting and restoring of the library pointer modes behind the scenes. This adds some negligible but non-zero overhead to the calls.

To avoid the implicit getting and setting of the pointer mode with every invocation of a library function do the following:

  • For the BLAS, use the cublas_v2 module, and the v2 entry points, such as cublasIsamax_v2. It is the programmer's responsibility to properly set the pointer mode when needed. Examples of scalar arguments which do require setting the pointer mode are the alpha and beta scale factors passed to the *gemm routines, and the scalar results returned from the v2 versions of the *amax(), *amin(), *asum(), *rotg(), *rotmg(), *nrm2(), and *dot() functions. In the v2 interfaces shown in the chapter 2, these scalar arguments will have the comment ! device or host variable. Examples of scalar arguments which do not require setting the pointer mode are increments, extents, and lengths such as incx, incy, n, lda, ldb, and ldc.

  • For the cuSPARSE library, each function listed in chapter 5 which contains scalar arguments with the comment ! device or host variable has a corresponding v2 interface, though it is not documented here. For instance, in addition to the interface named cusparseSaxpyi, there is another interface named cusparseSaxpyi_v2 with the exact same argument list which calls into the cuSPARSE library directly and will not implicitly get or set the library pointer mode.

The CUDA default pointer mode is that the scalar arguments reside on the host. The PGI runtime does not change that setting.

1.7. Writing Your Own CUDA Interfaces

Despite the large number of interfaces included in the modules described in this document, users will have the need from time-to-time to write their own interfaces to new libraries or their own tuned CUDA, perhaps written in C/C++. There are some standard techniques to use, and some non-standard PGI extensions which can make creating working interfaces easier.

! cufftExecC2C
interface cufftExecC2C
    integer function cufftExecC2C( plan, idata, odata, direction ) bind(C,name='cufftExecC2C')
        integer, value :: plan
        complex, device, dimension(*) :: idata, odata
        integer, value :: direction
    end function cufftExecC2C
end interface cufftExecC2C

This interface calls the C library function directly. You can deal with Fortran's capitalization issues by putting the properly capitalized C function in the bind(C) attribute. If the C function expects input arguments passed by value, you can add the value attribute to the dummy declaration as well. A nice feature of Fortran is that the interface can change, but the code at the call site may not have to. The compiler changes the details of the call to fit the interface.

Now suppose a user of this interface would like to call this function with REAL data (F77 code is notorious for mixing REAL and COMPLEX declarations). There are two ways to do this:

! cufftExecC2C
interface cufftExecC2C
    integer function cufftExecC2C( plan, idata, odata, direction ) bind(C,name='cufftExecC2C')
        integer, value :: plan
        complex, device, dimension(*) :: idata, odata
        integer, value :: direction
    end function cufftExecC2C
    integer function cufftExecR2R( plan, idata, odata, direction ) bind(C,name='cufftExecC2C')
        integer, value :: plan
        real, device, dimension(*) :: idata, odata
        integer, value :: direction
    end function cufftExecR2R
end interface cufftExecC2C

Here the C name hasn't changed. The compiler will now accept actual arguments corresponding to idata and odata that are declared REAL. A generic interface is created named cufftExecC2C. If you have problems debugging your generic interface, as a debugging aid you can try calling the specific name, cufftExecR2R in this case, to help diagnose the problem.

A commonly used extension which is supported by PGI is ignore_tkr. A programmer can use it in an interface to instruct the compiler to ignore any combination of the type, kind, and rank during the interface matching process. The previous example using ignore_tkr looks like this:

! cufftExecC2C
interface cufftExecC2C
    integer function cufftExecC2C( plan, idata, odata, direction ) bind(C,name='cufftExecC2C')
        integer, value :: plan
        !dir$ ignore_tkr(tr) idata, (tr) odata
        complex, device, dimension(*) :: idata, odata
        integer, value :: direction
    end function cufftExecC2C
end interface cufftExecC2C

Now the compiler will ignore both the type and rank (F77 could also be sloppy in its handling of array dimensions) of idata and odata when matching the call site to the interface. An unfortunate side-effect is that the interface will now allow integer, logical, and character data for idata and odata. It is up to the implementor to determine if that is acceptable.

A final aid, specific to PGI, worth mentioning here is ignore_tkr (d), which ignores the device attribute of an actual argument during interface matching.

Of course, if you write a wrapper, a narrow strip of code between the Fortran call and your library function, you are not limited by the simple transormations that a compiler can do, such as those listed here. As mentioned earlier, many of the interfaces provided in the cuBLAS and cuSPARSE modules use wrappers.

A common request is a way for Fortran programmers to take advantage of the thrust library. Explaining thrust and C++ programming is outside of the scope of this document, but this simple example can show how to take advantage of the excellent sort capabilities in thrust:

// Filename: csort.cu
// nvcc -c -arch sm_35 csort.cu
#include <thrust/device_vector.h>
#include <thrust/copy.h>
#include <thrust/sort.h>

extern "C" {

    //Sort for integer arrays
    void thrust_int_sort_wrapper( int *data, int N)
    {
    thrust::device_ptr <int> dev_ptr(data);
    thrust::sort(dev_ptr, dev_ptr+N);
    }

    //Sort for float arrays
    void thrust_float_sort_wrapper( float *data, int N)
    {
    thrust::device_ptr <float> dev_ptr(data);
    thrust::sort(dev_ptr, dev_ptr+N);
    }

    //Sort for double arrays
    void thrust_double_sort_wrapper( double *data, int N)
    {
    thrust::device_ptr <double> dev_ptr(data);
    thrust::sort(dev_ptr, dev_ptr+N);
    }
}

Set up interface to the sort subroutine in Fortran and calls are simple:

program t
interface sort
   subroutine sort_int(array, n) &
        bind(C,name='thrust_int_sort_wrapper')
        integer(4), device, dimension(*) :: array
        integer(4), value :: n
    end subroutine
end interface
integer(4), parameter :: n = 100
integer(4), device :: a_d(n)
integer(4) :: a_h(n)
!$cuf kernel do
do i = 1, n
    a_d(i) = 1 + mod(47*i,n)
end do
call sort(a_d, n)
a_h = a_d
nres  = count(a_h .eq. (/(i,i=1,n)/))
if (nres.eq.n) then
    print *,"test PASSED"
else
    print *,"test FAILED"
endif
end

1.8. PGI Fortran Compiler Options

The PGI Fortran compiler driver is called pgfortran. General information on the compiler options which can be passed to pgfortran can be obtained by typing pgfortran -help. To enable targeting NVIDIA GPUs using OpenACC, use pgfortran -ta=tesla. To enable targeting NVIDIA GPUs using CUDA Fortran, use pgfortran -Mcuda. CUDA Fortran is also supported by the PGI Fortran compilers when the filename uses the .cuf extension. Uppercase file extensions, .F90 or .CUF, for example, may also be used, in which case the program is processed by the preprocessor before being compiled.

Other options which are pertinent to the examples in this document are:

  • -⁠-Mcudalib[=cublas|cufft|curand|cusparse]: this option adds the appropriate versions of the CUDA-optimized libraries to the link line. It handles static and dynamic linking, and platform (Linux, Windows, macOS) differences unobtrusively.

  • -⁠-Mcuda=[no]llvm: this option chooses between two choices for the compiler back-end code generator. Currently, using the cuRAND library from device code requires -⁠Mcuda=nollvm.

  • -⁠-ta=tesla:cc35: this option compiles for compute capability 3.5. Certain device functionality, such as dynamic parallelism in the cuBLAS library, requires compute capability 3.5 or higher.

  • -⁠-lcublas_device: this adds the cuBLAS device library to set of linker options. On Windows, use -⁠-defaultlib:cublas_device.

2. BLAS Runtime APIs

This section describes the Fortran interfaces to the CUDA BLAS libraries. There are currently four somewhat separate collections of function entry points which are commonly referred to as the cuBLAS:

  • The original CUDA implementation of the BLAS routines, referred to as the legacy API, which are callable from the host and expect and operate on device data.

  • The newer "v2" CUDA implementation of the BLAS routines, plus some extensions for batched operations. These are also callable from the host and operate on device data. In Fortran terms, these entry points have been changed from subroutines to functions which return status.

  • Another implementation of the BLAS routines using the v2 entry points, callable from device code and which may take advantage of dynamic parallelism.

  • A new cuBLAS XT library which can target multiple GPUs using only host-resident data.

PGI currently ships with five Fortran modules which programmers can use to call into this cuBLAS functionality:

  • cublas, which provides interfaces to into the main cublas library. Both the legacy and v2 names are supported. In this module, the cublas names (such as cublasSaxpy) use the legacy calling conventions. Interfaces to a host BLAS library (for instance libblas.a in the PGI distribution) are also included in the cublas module.

  • cublas_v2, which is similar to the cublas module in most ways except the cublas names (such as cublasSaxpy) use the v2 calling conventions. For instance, instead of a subroutine, cublasSaxpy is a function which takes a handle as the first argument and returns an integer containing the status of the call.

  • cublasxt, which interfaces directly to the cublasXT API.

  • cublas_device, which is useable from CUDA Fortran device code and interfaces into the static cuBLAS Library cublas_device.a. The legacy cuBLAS API is not supported in this library or module.

  • openacc_cublas, which is useable from OpenACC device code and also provides interfaces into cublas_device.a. For convenience, this module marks each function as "!$acc routine seq". The legacy cuBLAS API is not supported in this library or module.

The v2 routines are integer functions that return an error status code; they return a value of CUBLAS_STATUS_SUCCESS if the call was successful, or other cuBLAS status return value if there was an error.

Documented interfaces to the traditional BLAS names in the subsequent sections, which contain the comment ! device or host variable should not be confused with the pointer mode issue from section 1.6. The traditional BLAS names are overloaded generic names in the cublas module. For instance, in this interface

 subroutine scopy(n, x, incx, y, incy)
   integer :: n
   real(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 

The arrays x and y can either both be device arrays, in which case cublasScopy is called via the generic interface, or they can both be host arrays, in which case scopy from the host BLAS library is called. Using CUDA Fortran managed data as actual arguments to scopy poses an interesting case, and calling cublasScopy is chosen by default. If you wish to call the host library version of scopy with managed data, don't expose the generic scopy interface at the call site.

Unless a specific kind is provided, in the following interfaces the plain integer type implies integer(4) and the plain real type implies real(4).

2.1. CUBLAS Definitions and Helper Functions

This section contains definitions and data types used in the cuBLAS library and interfaces to the cuBLAS Helper Functions.

The cublas module contains the following derived type definitions:

TYPE cublasHandle
  TYPE(C_PTR)  :: handle
END TYPE

The cuBLAS module contains the following enumerations:

enum, bind(c)
    enumerator :: CUBLAS_STATUS_SUCCESS         =0
    enumerator :: CUBLAS_STATUS_NOT_INITIALIZED =1
    enumerator :: CUBLAS_STATUS_ALLOC_FAILED    =3
    enumerator :: CUBLAS_STATUS_INVALID_VALUE   =7
    enumerator :: CUBLAS_STATUS_ARCH_MISMATCH   =8
    enumerator :: CUBLAS_STATUS_MAPPING_ERROR   =11
    enumerator :: CUBLAS_STATUS_EXECUTION_FAILED=13
    enumerator :: CUBLAS_STATUS_INTERNAL_ERROR  =14
end enum
enum, bind(c)
    enumerator :: CUBLAS_FILL_MODE_LOWER=0
    enumerator :: CUBLAS_FILL_MODE_UPPER=1
end enum
enum, bind(c)
    enumerator :: CUBLAS_DIAG_NON_UNIT=0
    enumerator :: CUBLAS_DIAG_UNIT=1
end enum
enum, bind(c)
    enumerator :: CUBLAS_SIDE_LEFT =0
    enumerator :: CUBLAS_SIDE_RIGHT=1
end enum
enum, bind(c)
    enumerator :: CUBLAS_OP_N=0
    enumerator :: CUBLAS_OP_T=1
    enumerator :: CUBLAS_OP_C=2
end enum
enum, bind(c)
    enumerator :: CUBLAS_POINTER_MODE_HOST   = 0
    enumerator :: CUBLAS_POINTER_MODE_DEVICE = 1
end enum

2.1.1. cublasCreate

This function initializes the CUBLAS library and creates a handle to an opaque structure holding the CUBLAS library context. It allocates hardware resources on the host and device and must be called prior to making any other CUBLAS library calls. The CUBLAS library context is tied to the current CUDA device. To use the library on multiple devices, one CUBLAS handle needs to be created for each device. Furthermore, for a given device, multiple CUBLAS handles with different configuration can be created. Because cublasCreate allocates some internal resources and the release of those resources by calling cublasDestroy will implicitly call cublasDeviceSynchronize, it is recommended to minimize the number of cublasCreate/cublasDestroy occurences. For multi-threaded applications that use the same device from different threads, the recommended programming model is to create one CUBLAS handle per thread and use that CUBLAS handle for the entire life of the thread.

 integer(4) function cublasCreate(handle)
   type(cublasHandle) :: handle 

2.1.2. cublasDestroy

This function releases hardware resources used by the CUBLAS library. This function is usually the last call with a particular handle to the CUBLAS library. Because cublasCreate allocates some internal resources and the release of those resources by calling cublasDestroy will implicitly call cublasDeviceSynchronize, it is recommended to minimize the number of cublasCreate/cublasDestroy occurences.

 integer(4) function cublasDestroy(handle)
   type(cublasHandle) :: handle 

2.1.3. cublasGetVersion

This function returns the version number of the cuBLAS library.

 integer(4) function cublasGetVersion(handle, version)
   type(cublasHandle) :: handle
   integer(4) :: version 

2.1.4. cublasSetStream

This function sets the cuBLAS library stream, which will be used to execute all subsequent calls to the cuBLAS library functions. If the cuBLAS library stream is not set, all kernels use the default NULL stream. In particular, this routine can be used to change the stream between kernel launches and then to reset the cuBLAS library stream back to NULL.

 integer(4) function cublasSetStream(handle, stream)
   type(cublasHandle) :: handle
   integer(kind=cuda_stream_kind()) :: stream 

2.1.5. cublasGetStream

This function gets the cuBLAS library stream, which is being used to execute all calls to the cuBLAS library functions. If the cuBLAS library stream is not set, all kernels use the default NULL stream.

 integer(4) function cublasGetStream(handle, stream)
   type(cublasHandle) :: handle
   integer(kind=cuda_stream_kind()) :: stream 

2.1.6. cublasGetPointerMode

This function obtains the pointer mode used by the cuBLAS library. In the cublas module, the pointer mode is set and reset on a call-by-call basis depending on the whether the device attribute is set on scalar actual arguments. See section 1.6 for a discussion of pointer modes.

 integer(4) function cublasGetPointerMode(handle, mode)
   type(cublasHandle) :: handle
   integer(4) :: mode 

2.1.7. cublasSetPointerMode

This function sets the pointer mode used by the cuBLAS library. When using the cublas module, the pointer mode is set on a call-by-call basis depending on the whether the device attribute is set on scalar actual arguments. When using the cublas_v2 module with v2 interfaces, it is the programmer's responsibility to make calls to cublasSetPointerMode so scalar arguments are handled correctly by the library. See section 1.6 for a discussion of pointer modes.

 integer(4) function cublasSetPointerMode(handle, mode)
   type(cublasHandle) :: handle
   integer(4) :: mode 

2.1.8. cublasGetAtomicsMode

This function obtains the atomics mode used by the cuBLAS library.

 integer(4) function cublasGetAtomicsMode(handle, mode)
   type(cublasHandle) :: handle
   integer(4) :: mode 

2.1.9. cublasSetAtomicsMode

This function sets the atomics mode used by the cuBLAS library. Some routines in the cuBLAS library have alternate implementations that use atomics to accumulate results. These alternate implementations may run faster but may also generate results which are not identical from one run to the other. The default is to not allow atomics in cuBLAS functions.

 integer(4) function cublasSetAtomicsMode(handle, mode)
   type(cublasHandle) :: handle
   integer(4) :: mode 

2.1.10. cublasGetHandle

This function gets the cuBLAS handle currently in use by a thread. The CUDA Fortran runtime keeps track of a CPU thread's current handle, if you are either using the legacy BLAS API, or do not wish to pass the handle through to low-level functions or subroutines manually.

 type(cublashandle) function cublasGetHandle() 
 integer(4) function cublasGetHandle(handle)
   type(cublasHandle) :: handle 

2.1.11. cublasSetVector

This function copies n elements from a vector x in host memory space to a vector y in GPU memory space. It is assumed that each element requires storage of elemSize bytes. In CUDA Fortran, the type of vector x and y is overloaded to take any data type, but the size of the data type must still be specified in bytes. This functionality can also be implemented using cudaMemcpy or array assignment statements.

 integer(4) function cublassetvector(n, elemsize, x, incx, y, incy)
   integer :: n, elemsize, incx, incy
   integer*1, dimension(*) :: x
   integer*1, device, dimension(*) :: y 

2.1.12. cublasGetVector

This function copies n elements from a vector x in GPU memory space to a vector y in host memory space. It is assumed that each element requires storage of elemSize bytes. In CUDA Fortran, the type of vector x and y is overloaded to take any data type, but the size of the data type must still be specified in bytes. This functionality can also be implemented using cudaMemcpy or array assignment statements.

 integer(4) function cublasgetvector(n, elemsize, x, incx, y, incy)
   integer :: n, elemsize, incx, incy
   integer*1, device, dimension(*) :: x
   integer*1, dimension(*) :: y 

2.1.13. cublasSetMatrix

This function copies a tile of rows x cols elements from a matrix A in host memory space to a matrix B in GPU memory space. It is assumed that each element requires storage of elemSize bytes. In CUDA Fortran, the type of Matrix A and B is overloaded to take any data type, but the size of the data type must still be specified in bytes. This functionality can also be implemented using cudaMemcpy, cudaMemcpy2D, or array assignment statements.

 integer(4) function cublassetmatrix(rows, cols, elemsize, a, lda, b, ldb)
   integer :: rows, cols, elemsize, lda, ldb
   integer*1, dimension(lda, *) :: a
   integer*1, device, dimension(ldb, *) :: b 

2.1.14. cublasGetMatrix

This function copies a tile of rows x cols elements from a matrix A in GPU memory space to a matrix B in host memory space. It is assumed that each element requires storage of elemSize bytes. In CUDA Fortran, the type of Matrix A and B is overloaded to take any data type, but the size of the data type must still be specified in bytes. This functionality can also be implemented using cudaMemcpy, cudaMemcpy2D, or array assignment statements.

 integer(4) function cublasgetmatrix(rows, cols, elemsize, a, lda, b, ldb)
   integer :: rows, cols, elemsize, lda, ldb
   integer*1, device, dimension(lda, *) :: a
   integer*1, dimension(ldb, *) :: b 

2.1.15. cublasSetVectorAsync

This function copies n elements from a vector x in host memory space to a vector y in GPU memory space, asynchronously, on the given CUDA stream. It is assumed that each element requires storage of elemSize bytes. In CUDA Fortran, the type of vector x and y is overloaded to take any data type, but the size of the data type must still be specified in bytes. This functionality can also be implemented using cudaMemcpyAsync.

 integer(4) function cublassetvectorasync(n, elemsize, x, incx, y, incy, stream)
   integer :: n, elemsize, incx, incy
   integer*1, dimension(*) :: x
   integer*1, device, dimension(*) :: y
   integer(kind=cuda_stream_kind()) :: stream 

2.1.16. cublasGetVectorAsync

This function copies n elements from a vector x in host memory space to a vector y in GPU memory space, asynchronously, on the given CUDA stream. It is assumed that each element requires storage of elemSize bytes. In CUDA Fortran, the type of vector x and y is overloaded to take any data type, but the size of the data type must still be specified in bytes. This functionality can also be implemented using cudaMemcpyAsync.

 integer(4) function cublasgetvectorasync(n, elemsize, x, incx, y, incy, stream)
   integer :: n, elemsize, incx, incy
   integer*1, device, dimension(*) :: x
   integer*1, dimension(*) :: y
   integer(kind=cuda_stream_kind()) :: stream 

2.1.17. cublasSetMatrixAsync

This function copies a tile of rows x cols elements from a matrix A in host memory space to a matrix B in GPU memory space, asynchronously using the specified stream. It is assumed that each element requires storage of elemSize bytes. In CUDA Fortran, the type of Matrix A and B is overloaded to take any data type, but the size of the data type must still be specified in bytes. This functionality can also be implemented using cudaMemcpyAsync or cudaMemcpy2DAsync.

 integer(4) function cublassetmatrixasync(rows, cols, elemsize, a, lda, b, ldb, stream)
   integer :: rows, cols, elemsize, lda, ldb
   integer*1, dimension(lda, *) :: a
   integer*1, device, dimension(ldb, *) :: b
   integer(kind=cuda_stream_kind()) :: stream 

2.1.18. cublasGetMatrixAsync

This function copies a tile of rows x cols elements from a matrix A in GPU memory space to a matrix B in host memory space, asynchronously, using the specified stream. It is assumed that each element requires storage of elemSize bytes. In CUDA Fortran, the type of Matrix A and B is overloaded to take any data type, but the size of the data type must still be specified in bytes. This functionality can also be implemented using cudaMemcpyAsync or cudaMemcpy2DAsync.

 integer(4) function cublasgetmatrixasync(rows, cols, elemsize, a, lda, b, ldb, stream)
   integer :: rows, cols, elemsize, lda, ldb
   integer*1, device, dimension(lda, *) :: a
   integer*1, dimension(ldb, *) :: b
   integer(kind=cuda_stream_kind()) :: stream 

2.2. Single Precision Functions and Subroutines

This section contains interfaces to the single precision BLAS and cuBLAS functions and subroutines.

2.2.1. isamax

ISAMAX finds the index of the element having the maximum absolute value.

 integer(4) function isamax(n, x, incx)
   integer :: n
   real(4), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 integer(4) function cublasIsamax(n, x, incx)
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasIsamax_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.2.2. isamin

ISAMIN finds the index of the element having the minimum absolute value.

 integer(4) function isamin(n, x, incx)
   integer :: n
   real(4), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 integer(4) function cublasIsamin(n, x, incx)
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasIsamin_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.2.3. sasum

SASUM takes the sum of the absolute values.

 real(4) function sasum(n, x, incx)
   integer :: n
   real(4), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 real(4) function cublasSasum(n, x, incx)
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasSasum_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx
   real(4), device :: res ! device or host variable 

2.2.4. saxpy

SAXPY constant times a vector plus a vector.

 subroutine saxpy(n, a, x, incx, y, incy)
   integer :: n
   real(4), device :: a ! device or host variable
   real(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasSaxpy(n, a, x, incx, y, incy)
   integer :: n
   real(4), device :: a ! device or host variable
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasSaxpy_v2(h, n, a, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: a ! device or host variable
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.2.5. scopy

SCOPY copies a vector, x, to a vector, y.

 subroutine scopy(n, x, incx, y, incy)
   integer :: n
   real(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasScopy(n, x, incx, y, incy)
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasScopy_v2(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.2.6. sdot

SDOT forms the dot product of two vectors.

 real(4) function sdot(n, x, incx, y, incy)
   integer :: n
   real(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 real(4) function cublasSdot(n, x, incx, y, incy)
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasSdot_v2(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy
   real(4), device :: res ! device or host variable 

2.2.7. snrm2

SNRM2 returns the euclidean norm of a vector via the function name, so that SNRM2 := sqrt( x'*x ).

 real(4) function snrm2(n, x, incx)
   integer :: n
   real(4), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 real(4) function cublasSnrm2(n, x, incx)
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasSnrm2_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx
   real(4), device :: res ! device or host variable 

2.2.8. srot

SROT applies a plane rotation.

 subroutine srot(n, x, incx, y, incy, sc, ss)
   integer :: n
   real(4), device :: sc, ss ! device or host variable
   real(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasSrot(n, x, incx, y, incy, sc, ss)
   integer :: n
   real(4), device :: sc, ss ! device or host variable
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasSrot_v2(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: sc, ss ! device or host variable
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.2.9. srotg

SROTG constructs a Givens plane rotation.

 subroutine srotg(sa, sb, sc, ss)
   real(4), device :: sa, sb, sc, ss ! device or host variable 
 subroutine cublasSrotg(sa, sb, sc, ss)
   real(4), device :: sa, sb, sc, ss ! device or host variable 
 integer(4) function cublasSrotg_v2(h, sa, sb, sc, ss)
   type(cublasHandle) :: h
   real(4), device :: sa, sb, sc, ss ! device or host variable 

2.2.10. srotm

SROTM applies the modified Givens transformation, H, to the 2 by N matrix (SX**T) , where **T indicates transpose. The elements of SX are in (SX**T) SX(LX+I*INCX), I = 0 to N-1, where LX = 1 if INCX .GE. 0, ELSE LX = (-INCX)*N, and similarly for SY using LY and INCY. With SPARAM(1)=SFLAG, H has one of the following forms.. SFLAG=-1.E0 SFLAG=0.E0 SFLAG=1.E0 SFLAG=-2.E0 (SH11 SH12) (1.E0 SH12) (SH11 1.E0) (1.E0 0.E0) H=( ) ( ) ( ) ( ) (SH21 SH22), (SH21 1.E0), (-1.E0 SH22), (0.E0 1.E0). See SROTMG for a description of data storage in SPARAM.

 subroutine srotm(n, x, incx, y, incy, param)
   integer :: n
   real(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasSrotm(n, x, incx, y, incy, param)
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy
   real(4), device :: param(*) ! device or host variable 
 integer(4) function cublasSrotm_v2(h, n, x, incx, y, incy, param)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: param(*) ! device or host variable
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.2.11. srotmg

SROTMG constructs the modified Givens transformation matrix H which zeros the second component of the 2-vector (SQRT(SD1)*SX1,SQRT(SD2)*SY2)**T. With SPARAM(1)=SFLAG, H has one of the following forms.. SFLAG=-1.E0 SFLAG=0.E0 SFLAG=1.E0 SFLAG=-2.E0 (SH11 SH12) (1.E0 SH12) (SH11 1.E0) (1.E0 0.E0) H=( ) ( ) ( ) ( ) (SH21 SH22), (SH21 1.E0), (-1.E0 SH22), (0.E0 1.E0). Locations 2-4 of SPARAM contain SH11,SH21,SH12, and SH22 respectively. (Values of 1.E0, -1.E0, or 0.E0 implied by the value of SPARAM(1) are not stored in SPARAM.)

 subroutine srotmg(d1, d2, x1, y1, param)
   real(4), device :: d1, d2, x1, y1, param(*) ! device or host variable 
 subroutine cublasSrotmg(d1, d2, x1, y1, param)
   real(4), device :: d1, d2, x1, y1, param(*) ! device or host variable 
 integer(4) function cublasSrotmg_v2(h, d1, d2, x1, y1, param)
   type(cublasHandle) :: h
   real(4), device :: d1, d2, x1, y1, param(*) ! device or host variable 

2.2.12. sscal

SSCAL scales a vector by a constant.

 subroutine sscal(n, a, x, incx)
   integer :: n
   real(4), device :: a ! device or host variable
   real(4), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 subroutine cublasSscal(n, a, x, incx)
   integer :: n
   real(4), device :: a ! device or host variable
   real(4), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasSscal_v2(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: a ! device or host variable
   real(4), device, dimension(*) :: x
   integer :: incx 

2.2.13. sswap

SSWAP interchanges two vectors.

 subroutine sswap(n, x, incx, y, incy)
   integer :: n
   real(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasSswap(n, x, incx, y, incy)
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasSswap_v2(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.2.14. sgbmv

SGBMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n band matrix, with kl sub-diagonals and ku super-diagonals.

 subroutine sgbmv(t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, kl, ku, lda, incx, incy
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(*) :: x, y ! device or host variable
   real(4), device :: alpha, beta ! device or host variable 
 subroutine cublasSgbmv(t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, kl, ku, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasSgbmv_v2(h, t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, kl, ku, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha, beta ! device or host variable 

2.2.15. sgemv

SGEMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n matrix.

 subroutine sgemv(t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(*) :: x, y ! device or host variable
   real(4), device :: alpha, beta ! device or host variable 
 subroutine cublasSgemv(t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasSgemv_v2(h, t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha, beta ! device or host variable 

2.2.16. sger

SGER performs the rank 1 operation A := alpha*x*y**T + A, where alpha is a scalar, x is an m element vector, y is an n element vector and A is an m by n matrix.

 subroutine sger(m, n, alpha, x, incx, y, incy, a, lda)
   integer :: m, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(*) :: x, y ! device or host variable
   real(4), device :: alpha ! device or host variable 
 subroutine cublasSger(m, n, alpha, x, incx, y, incy, a, lda)
   integer :: m, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha ! device or host variable 
 integer(4) function cublasSger_v2(h, m, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha ! device or host variable 

2.2.17. ssbmv

SSBMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric band matrix, with k super-diagonals.

 subroutine ssbmv(t, n, k, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: k, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(*) :: x, y ! device or host variable
   real(4), device :: alpha, beta ! device or host variable 
 subroutine cublasSsbmv(t, n, k, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: k, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasSsbmv_v2(h, t, n, k, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: k, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha, beta ! device or host variable 

2.2.18. sspmv

SSPMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric matrix, supplied in packed form.

 subroutine sspmv(t, n, alpha, a, x, incx, beta, y, incy)
   character*1 :: t
   integer :: n, incx, incy
   real(4), device, dimension(*) :: a, x, y ! device or host variable
   real(4), device :: alpha, beta ! device or host variable 
 subroutine cublasSspmv(t, n, alpha, a, x, incx, beta, y, incy)
   character*1 :: t
   integer :: n, incx, incy
   real(4), device, dimension(*) :: a, x, y
   real(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasSspmv_v2(h, t, n, alpha, a, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   real(4), device, dimension(*) :: a, x, y
   real(4), device :: alpha, beta ! device or host variable 

2.2.19. sspr

SSPR performs the symmetric rank 1 operation A := alpha*x*x**T + A, where alpha is a real scalar, x is an n element vector and A is an n by n symmetric matrix, supplied in packed form.

 subroutine sspr(t, n, alpha, x, incx, a)
   character*1 :: t
   integer :: n, incx
   real(4), device, dimension(*) :: a, x ! device or host variable
   real(4), device :: alpha ! device or host variable 
 subroutine cublasSspr(t, n, alpha, x, incx, a)
   character*1 :: t
   integer :: n, incx
   real(4), device, dimension(*) :: a, x
   real(4), device :: alpha ! device or host variable 
 integer(4) function cublasSspr_v2(h, t, n, alpha, x, incx, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx
   real(4), device, dimension(*) :: a, x
   real(4), device :: alpha ! device or host variable 

2.2.20. sspr2

SSPR2 performs the symmetric rank 2 operation A := alpha*x*y**T + alpha*y*x**T + A, where alpha is a scalar, x and y are n element vectors and A is an n by n symmetric matrix, supplied in packed form.

 subroutine sspr2(t, n, alpha, x, incx, y, incy, a)
   character*1 :: t
   integer :: n, incx, incy
   real(4), device, dimension(*) :: a, x, y ! device or host variable
   real(4), device :: alpha ! device or host variable 
 subroutine cublasSspr2(t, n, alpha, x, incx, y, incy, a)
   character*1 :: t
   integer :: n, incx, incy
   real(4), device, dimension(*) :: a, x, y
   real(4), device :: alpha ! device or host variable 
 integer(4) function cublasSspr2_v2(h, t, n, alpha, x, incx, y, incy, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   real(4), device, dimension(*) :: a, x, y
   real(4), device :: alpha ! device or host variable 

2.2.21. ssymv

SSYMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric matrix.

 subroutine ssymv(uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(*) :: x, y ! device or host variable
   real(4), device :: alpha, beta ! device or host variable 
 subroutine cublasSsymv(uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasSsymv_v2(h, uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha, beta ! device or host variable 

2.2.22. ssyr

SSYR performs the symmetric rank 1 operation A := alpha*x*x**T + A, where alpha is a real scalar, x is an n element vector and A is an n by n symmetric matrix.

 subroutine ssyr(t, n, alpha, x, incx, a, lda)
   character*1 :: t
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(*) :: x ! device or host variable
   real(4), device :: alpha ! device or host variable 
 subroutine cublasSsyr(t, n, alpha, x, incx, a, lda)
   character*1 :: t
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x
   real(4), device :: alpha ! device or host variable 
 integer(4) function cublasSsyr_v2(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x
   real(4), device :: alpha ! device or host variable 

2.2.23. ssyr2

SSYR2 performs the symmetric rank 2 operation A := alpha*x*y**T + alpha*y*x**T + A, where alpha is a scalar, x and y are n element vectors and A is an n by n symmetric matrix.

 subroutine ssyr2(t, n, alpha, x, incx, y, incy, a, lda)
   character*1 :: t
   integer :: n, incx, incy, lda
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(*) :: x, y ! device or host variable
   real(4), device :: alpha ! device or host variable 
 subroutine cublasSsyr2(t, n, alpha, x, incx, y, incy, a, lda)
   character*1 :: t
   integer :: n, incx, incy, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha ! device or host variable 
 integer(4) function cublasSsyr2_v2(h, t, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha ! device or host variable 

2.2.24. stbmv

STBMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals.

 subroutine stbmv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(*) :: x ! device or host variable 
 subroutine cublasStbmv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 
 integer(4) function cublasStbmv_v2(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 

2.2.25. stbsv

STBSV solves one of the systems of equations A*x = b, or A**T*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine.

 subroutine stbsv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(*) :: x ! device or host variable 
 subroutine cublasStbsv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 
 integer(4) function cublasStbsv_v2(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 

2.2.26. stpmv

STPMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form.

 subroutine stpmv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   real(4), device, dimension(*) :: a, x ! device or host variable 
 subroutine cublasStpmv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   real(4), device, dimension(*) :: a, x 
 integer(4) function cublasStpmv_v2(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   real(4), device, dimension(*) :: a, x 

2.2.27. stpsv

STPSV solves one of the systems of equations A*x = b, or A**T*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine.

 subroutine stpsv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   real(4), device, dimension(*) :: a, x ! device or host variable 
 subroutine cublasStpsv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   real(4), device, dimension(*) :: a, x 
 integer(4) function cublasStpsv_v2(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   real(4), device, dimension(*) :: a, x 

2.2.28. strmv

STRMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix.

 subroutine strmv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(*) :: x ! device or host variable 
 subroutine cublasStrmv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 
 integer(4) function cublasStrmv_v2(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 

2.2.29. strsv

STRSV solves one of the systems of equations A*x = b, or A**T*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine.

 subroutine strsv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(*) :: x ! device or host variable 
 subroutine cublasStrsv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 
 integer(4) function cublasStrsv_v2(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 

2.2.30. sgemm

SGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 subroutine sgemm(transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(ldb, *) :: b ! device or host variable
   real(4), device, dimension(ldc, *) :: c ! device or host variable
   real(4), device :: alpha, beta ! device or host variable 
 subroutine cublasSgemm(transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasSgemm_v2(h, transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 

2.2.31. ssymm

SSYMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a symmetric matrix and B and C are m by n matrices.

 subroutine ssymm(side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: side, uplo
   integer :: m, n, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(ldb, *) :: b ! device or host variable
   real(4), device, dimension(ldc, *) :: c ! device or host variable
   real(4), device :: alpha, beta ! device or host variable 
 subroutine cublasSsymm(side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: side, uplo
   integer :: m, n, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasSsymm_v2(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 

2.2.32. ssyrk

SSYRK performs one of the symmetric rank k operations C := alpha*A*A**T + beta*C, or C := alpha*A**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A is an n by k matrix in the first case and a k by n matrix in the second case.

 subroutine ssyrk(uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldc
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(ldc, *) :: c ! device or host variable
   real(4), device :: alpha, beta ! device or host variable 
 subroutine cublasSsyrk(uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasSsyrk_v2(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 

2.2.33. ssyr2k

SSYR2K performs one of the symmetric rank 2k operations C := alpha*A*B**T + alpha*B*A**T + beta*C, or C := alpha*A**T*B + alpha*B**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A and B are n by k matrices in the first case and k by n matrices in the second case.

 subroutine ssyr2k(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(ldb, *) :: b ! device or host variable
   real(4), device, dimension(ldc, *) :: c ! device or host variable
   real(4), device :: alpha, beta ! device or host variable 
 subroutine cublasSsyr2k(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasSsyr2k_v2(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 

2.2.34. ssyrkx

SSYRKX performs a variation of the symmetric rank k update C := alpha*A*B**T + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix stored in lower or upper mode, and A and B are n by k matrices. This routine can be used when B is in such a way that the result is guaranteed to be symmetric. See the CUBLAS documentation for more details.

 subroutine ssyrkx(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(ldb, *) :: b ! device or host variable
   real(4), device, dimension(ldc, *) :: c ! device or host variable
   real(4), device :: alpha, beta ! device or host variable 
 subroutine cublasSsyrkx(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasSsyrkx_v2(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 

2.2.35. strmm

STRMM performs one of the matrix-matrix operations B := alpha*op( A )*B, or B := alpha*B*op( A ), where alpha is a scalar, B is an m by n matrix, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T.

 subroutine strmm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(ldb, *) :: b ! device or host variable
   real(4), device :: alpha ! device or host variable 
 subroutine cublasStrmm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device :: alpha ! device or host variable 
 integer(4) function cublasStrmm_v2(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha ! device or host variable 

2.2.36. strsm

STRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T. The matrix X is overwritten on B.

 subroutine strsm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(4), device, dimension(lda, *) :: a ! device or host variable
   real(4), device, dimension(ldb, *) :: b ! device or host variable
   real(4), device :: alpha ! device or host variable 
 subroutine cublasStrsm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device :: alpha ! device or host variable 
 integer(4) function cublasStrsm_v2(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device :: alpha ! device or host variable 

2.2.37. cublasSgetrfBatched

SGETRF computes an LU factorization of a general M-by-N matrix A using partial pivoting with row interchanges. The factorization has the form A = P * L * U where P is a permutation matrix, L is lower triangular with unit diagonal elements (lower trapezoidal if m > n), and U is upper triangular (upper trapezoidal if m < n). This is the right-looking Level 3 BLAS version of the algorithm.

 integer(4) function cublasSgetrfBatched(h, n, Aarray, lda, ipvt, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   integer, device :: info(*)
   integer :: batchCount 

2.2.38. cublasSgetriBatched

SGETRI computes the inverse of a matrix using the LU factorization computed by SGETRF. This method inverts U and then computes inv(A) by solving the system inv(A)*L = inv(U) for inv(A).

 integer(4) function cublasSgetriBatched(h, n, Aarray, lda, ipvt, Carray, ldc, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer, device :: info(*)
   integer :: batchCount 

2.2.39. cublasSgetrsBatched

SGETRS solves a system of linear equations A * X = B or A**T * X = B with a general N-by-N matrix A using the LU factorization computed by SGETRF.

 integer(4) function cublasSgetrsBatched(h, trans, n, nrhs, Aarray, lda, ipvt, Barray, ldb, info, batchCount)
   type(cublasHandle) :: h
   integer :: trans ! integer or character(1) variable
   integer :: n, nrhs
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   integer :: info(*)
   integer :: batchCount 

2.2.40. cublasSgemmBatched

SGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 integer(4) function cublasSgemmBatched(h, transa, transb, m, n, k, alpha, Aarray, lda, Barray, ldb, beta, Carray, ldc, batchCount)
   type(cublasHandle) :: h
   integer :: transa ! integer or character(1) variable
   integer :: transb ! integer or character(1) variable
   integer :: m, n, k
   real(4), device :: alpha ! device or host variable
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   real(4), device :: beta ! device or host variable
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: batchCount 
 integer(4) function cublasSgemmBatched_v2(h, transa, transb, m, n, k, alpha,           Aarray, lda, Barray, ldb, beta, Carray, ldc, batchCount)
   type(cublasHandle) :: h
   integer :: transa
   integer :: transb
   integer :: m, n, k
   real(4), device :: alpha ! device or host variable
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   real(4), device :: beta ! device or host variable
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: batchCount 

2.2.41. cublasStrsmBatched

STRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T. The matrix X is overwritten on B.

 integer(4) function cublasStrsmBatched( h, side, uplo, trans, diag, m, n, alpha, A, lda, B, ldb, batchCount)
   type(cublasHandle) :: h
   integer :: side ! integer or character(1) variable
   integer :: uplo ! integer or character(1) variable
   integer :: trans ! integer or character(1) variable
   integer :: diag ! integer or character(1) variable
   integer :: m, n
   real(4), device :: alpha ! device or host variable
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer :: batchCount 
 integer(4) function cublasStrsmBatched_v2( h, side, uplo, trans, diag, m, n, alpha, A, lda, B, ldb, batchCount)
   type(cublasHandle) :: h
   integer :: side
   integer :: uplo
   integer :: trans
   integer :: diag
   integer :: m, n
   real(4), device :: alpha ! device or host variable
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer :: batchCount 

2.2.42. cublasSmatinvBatched

cublasSmatinvBatched is a short cut of cublasSgetrfBatched plus cublasSgetriBatched. However it only works if n is less than 32. If not, the user has to go through cublasSgetrfBatched and cublasSgetriBatched.

 integer(4) function cublasSmatinvBatched(h, n, Aarray, lda, Ainv, lda_inv, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Ainv(*)
   integer :: lda_inv
   integer, device :: info(*)
   integer :: batchCount 

2.2.43. cublasSgeqrfBatched

SGEQRF computes a QR factorization of a real M-by-N matrix A: A = Q * R.

 integer(4) function cublasSgeqrfBatched(h, m, n, Aarray, lda, Tau, info, batchCount)
   type(cublasHandle) :: h
   integer :: m, n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Tau(*)
   integer :: info(*)
   integer :: batchCount 

2.2.44. cublasSgelsBatched

SGELS solves overdetermined or underdetermined real linear systems involving an M-by-N matrix A, or its transpose, using a QR or LQ factorization of A. It is assumed that A has full rank. The following options are provided: 1. If TRANS = 'N' and m >= n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A*X ||. 2. If TRANS = 'N' and m < n: find the minimum norm solution of an underdetermined system A * X = B. 3. If TRANS = 'T' and m >= n: find the minimum norm solution of an undetermined system A**T * X = B. 4. If TRANS = 'T' and m < n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A**T * X ||. Several right hand side vectors b and solution vectors x can be handled in a single call; they are stored as the columns of the M-by-NRHS right hand side matrix B and the N-by-NRHS solution matrix X.

 integer(4) function cublasSgelsBatched(h, trans, m, n, nrhs, Aarray, lda, Carray, ldc, info, devinfo, batchCount)
   type(cublasHandle) :: h
   integer :: trans ! integer or character(1) variable
   integer :: m, n, nrhs
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: info(*)
   integer, device :: devinfo(*)
   integer :: batchCount 

2.2.45. cublasSgemmStridedBatched

SGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 integer(4) function cublasSgemmStridedBatched(h, transa, transb, m, n, k, alpha, Aarray, lda, strideA, Barray, ldb, strideB, beta, Carray, ldc, strideC, batchCount)
   type(cublasHandle) :: h
   integer :: transa ! integer or character(1) variable
   integer :: transb ! integer or character(1) variable
   integer :: m, n, k
   real(4), device :: alpha ! device or host variable
   real(4), device :: Aarray(*)
   integer :: lda
   integer :: strideA
   real(4), device :: Barray(*)
   integer :: ldb
   integer :: strideB
   real(4), device :: beta ! device or host variable
   real(4), device :: Carray(*)
   integer :: ldc
   integer :: strideC
   integer :: batchCount 
 integer(4) function cublasSgemmStridedBatched_v2(h, transa, transb, m, n, k, alpha,           Aarray, lda, strideA, Barray, ldb, strideB, beta, Carray, ldc, strideC, batchCount)
   type(cublasHandle) :: h
   integer :: transa
   integer :: transb
   integer :: m, n, k
   real(4), device :: alpha ! device or host variable
   real(4), device :: Aarray(*)
   integer :: lda
   integer :: strideA
   real(4), device :: Barray(*)
   integer :: ldb
   integer :: strideB
   real(4), device :: beta ! device or host variable
   real(4), device :: Carray(*)
   integer :: ldc
   integer :: strideC
   integer :: batchCount 

2.3. Double Precision Functions and Subroutines

This section contains interfaces to the double precision BLAS and cuBLAS functions and subroutines.

2.3.1. idamax

IDAMAX finds the the index of the element having the maximum absolute value.

 integer(4) function idamax(n, x, incx)
   integer :: n
   real(8), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 integer(4) function cublasIdamax(n, x, incx)
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasIdamax_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.3.2. idamin

IDAMIN finds the index of the element having the minimum absolute value.

 integer(4) function idamin(n, x, incx)
   integer :: n
   real(8), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 integer(4) function cublasIdamin(n, x, incx)
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasIdamin_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.3.3. dasum

DASUM takes the sum of the absolute values.

 real(8) function dasum(n, x, incx)
   integer :: n
   real(8), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 real(8) function cublasDasum(n, x, incx)
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasDasum_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx
   real(8), device :: res ! device or host variable 

2.3.4. daxpy

DAXPY constant times a vector plus a vector.

 subroutine daxpy(n, a, x, incx, y, incy)
   integer :: n
   real(8), device :: a ! device or host variable
   real(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasDaxpy(n, a, x, incx, y, incy)
   integer :: n
   real(8), device :: a ! device or host variable
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasDaxpy_v2(h, n, a, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: a ! device or host variable
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.3.5. dcopy

DCOPY copies a vector, x, to a vector, y.

 subroutine dcopy(n, x, incx, y, incy)
   integer :: n
   real(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasDcopy(n, x, incx, y, incy)
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasDcopy_v2(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.3.6. ddot

DDOT forms the dot product of two vectors.

 real(8) function ddot(n, x, incx, y, incy)
   integer :: n
   real(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 real(8) function cublasDdot(n, x, incx, y, incy)
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasDdot_v2(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy
   real(8), device :: res ! device or host variable 

2.3.7. dnrm2

DNRM2 returns the euclidean norm of a vector via the function name, so that DNRM2 := sqrt( x'*x )

 real(8) function dnrm2(n, x, incx)
   integer :: n
   real(8), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 real(8) function cublasDnrm2(n, x, incx)
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasDnrm2_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx
   real(8), device :: res ! device or host variable 

2.3.8. drot

DROT applies a plane rotation.

 subroutine drot(n, x, incx, y, incy, sc, ss)
   integer :: n
   real(8), device :: sc, ss ! device or host variable
   real(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasDrot(n, x, incx, y, incy, sc, ss)
   integer :: n
   real(8), device :: sc, ss ! device or host variable
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasDrot_v2(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: sc, ss ! device or host variable
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.3.9. drotg

DROTG constructs a Givens plane rotation.

 subroutine drotg(sa, sb, sc, ss)
   real(8), device :: sa, sb, sc, ss ! device or host variable 
 subroutine cublasDrotg(sa, sb, sc, ss)
   real(8), device :: sa, sb, sc, ss ! device or host variable 
 integer(4) function cublasDrotg_v2(h, sa, sb, sc, ss)
   type(cublasHandle) :: h
   real(8), device :: sa, sb, sc, ss ! device or host variable 

2.3.10. drotm

DROTM applies the modified Givens transformation, H, to the 2 by N matrix (DX**T) , where **T indicates transpose. The elements of DX are in (DX**T) DX(LX+I*INCX), I = 0 to N-1, where LX = 1 if INCX .GE. 0, ELSE LX = (-INCX)*N, and similarly for DY using LY and INCY. With DPARAM(1)=DFLAG, H has one of the following forms.. DFLAG=-1.D0 DFLAG=0.D0 DFLAG=1.D0 DFLAG=-2.D0 (DH11 DH12) (1.D0 DH12) (DH11 1.D0) (1.D0 0.D0) H=( ) ( ) ( ) ( ) (DH21 DH22), (DH21 1.D0), (-1.D0 DH22), (0.D0 1.D0). See DROTMG for a description of data storage in DPARAM.

 subroutine drotm(n, x, incx, y, incy, param)
   integer :: n
   real(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasDrotm(n, x, incx, y, incy, param)
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy
   real(8), device :: param(*) ! device or host variable 
 integer(4) function cublasDrotm_v2(h, n, x, incx, y, incy, param)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: param(*) ! device or host variable
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.3.11. drotmg

DROTMG constructs the modified Givens transformation matrix H which zeros the second component of the 2-vector (SQRT(DD1)*DX1,SQRT(DD2)*DY2)**T. With DPARAM(1)=DFLAG, H has one of the following forms.. DFLAG=-1.D0 DFLAG=0.D0 DFLAG=1.D0 DFLAG=-2.D0 (DH11 DH12) (1.D0 DH12) (DH11 1.D0) (1.D0 0.D0) H=( ) ( ) ( ) ( ) (DH21 DH22), (DH21 1.D0), (-1.D0 DH22), (0.D0 1.D0). Locations 2-4 of DPARAM contain DH11, DH21, DH12, and DH22 respectively. (Values of 1.D0, -1.D0, of 0.D0 implied by the value of DPARAM(1) are not stored in DPARAM.)

 subroutine drotmg(d1, d2, x1, y1, param)
   real(8), device :: d1, d2, x1, y1, param(*) ! device or host variable 
 subroutine cublasDrotmg(d1, d2, x1, y1, param)
   real(8), device :: d1, d2, x1, y1, param(*) ! device or host variable 
 integer(4) function cublasDrotmg_v2(h, d1, d2, x1, y1, param)
   type(cublasHandle) :: h
   real(8), device :: d1, d2, x1, y1, param(*) ! device or host variable 

2.3.12. dscal

DSCAL scales a vector by a constant.

 subroutine dscal(n, a, x, incx)
   integer :: n
   real(8), device :: a ! device or host variable
   real(8), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 subroutine cublasDscal(n, a, x, incx)
   integer :: n
   real(8), device :: a ! device or host variable
   real(8), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasDscal_v2(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: a ! device or host variable
   real(8), device, dimension(*) :: x
   integer :: incx 

2.3.13. dswap

interchanges two vectors.

 subroutine dswap(n, x, incx, y, incy)
   integer :: n
   real(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasDswap(n, x, incx, y, incy)
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasDswap_v2(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.3.14. dgbmv

DGBMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n band matrix, with kl sub-diagonals and ku super-diagonals.

 subroutine dgbmv(t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, kl, ku, lda, incx, incy
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(*) :: x, y ! device or host variable
   real(8), device :: alpha, beta ! device or host variable 
 subroutine cublasDgbmv(t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, kl, ku, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasDgbmv_v2(h, t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, kl, ku, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha, beta ! device or host variable 

2.3.15. dgemv

DGEMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n matrix.

 subroutine dgemv(t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(*) :: x, y ! device or host variable
   real(8), device :: alpha, beta ! device or host variable 
 subroutine cublasDgemv(t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasDgemv_v2(h, t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha, beta ! device or host variable 

2.3.16. dger

DGER performs the rank 1 operation A := alpha*x*y**T + A, where alpha is a scalar, x is an m element vector, y is an n element vector and A is an m by n matrix.

 subroutine dger(m, n, alpha, x, incx, y, incy, a, lda)
   integer :: m, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(*) :: x, y ! device or host variable
   real(8), device :: alpha ! device or host variable 
 subroutine cublasDger(m, n, alpha, x, incx, y, incy, a, lda)
   integer :: m, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha ! device or host variable 
 integer(4) function cublasDger_v2(h, m, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha ! device or host variable 

2.3.17. dsbmv

DSBMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric band matrix, with k super-diagonals.

 subroutine dsbmv(t, n, k, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: k, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(*) :: x, y ! device or host variable
   real(8), device :: alpha, beta ! device or host variable 
 subroutine cublasDsbmv(t, n, k, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: k, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasDsbmv_v2(h, t, n, k, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: k, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha, beta ! device or host variable 

2.3.18. dspmv

DSPMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric matrix, supplied in packed form.

 subroutine dspmv(t, n, alpha, a, x, incx, beta, y, incy)
   character*1 :: t
   integer :: n, incx, incy
   real(8), device, dimension(*) :: a, x, y ! device or host variable
   real(8), device :: alpha, beta ! device or host variable 
 subroutine cublasDspmv(t, n, alpha, a, x, incx, beta, y, incy)
   character*1 :: t
   integer :: n, incx, incy
   real(8), device, dimension(*) :: a, x, y
   real(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasDspmv_v2(h, t, n, alpha, a, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   real(8), device, dimension(*) :: a, x, y
   real(8), device :: alpha, beta ! device or host variable 

2.3.19. dspr

DSPR performs the symmetric rank 1 operation A := alpha*x*x**T + A, where alpha is a real scalar, x is an n element vector and A is an n by n symmetric matrix, supplied in packed form.

 subroutine dspr(t, n, alpha, x, incx, a)
   character*1 :: t
   integer :: n, incx
   real(8), device, dimension(*) :: a, x ! device or host variable
   real(8), device :: alpha ! device or host variable 
 subroutine cublasDspr(t, n, alpha, x, incx, a)
   character*1 :: t
   integer :: n, incx
   real(8), device, dimension(*) :: a, x
   real(8), device :: alpha ! device or host variable 
 integer(4) function cublasDspr_v2(h, t, n, alpha, x, incx, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx
   real(8), device, dimension(*) :: a, x
   real(8), device :: alpha ! device or host variable 

2.3.20. dspr2

DSPR2 performs the symmetric rank 2 operation A := alpha*x*y**T + alpha*y*x**T + A, where alpha is a scalar, x and y are n element vectors and A is an n by n symmetric matrix, supplied in packed form.

 subroutine dspr2(t, n, alpha, x, incx, y, incy, a)
   character*1 :: t
   integer :: n, incx, incy
   real(8), device, dimension(*) :: a, x, y ! device or host variable
   real(8), device :: alpha ! device or host variable 
 subroutine cublasDspr2(t, n, alpha, x, incx, y, incy, a)
   character*1 :: t
   integer :: n, incx, incy
   real(8), device, dimension(*) :: a, x, y
   real(8), device :: alpha ! device or host variable 
 integer(4) function cublasDspr2_v2(h, t, n, alpha, x, incx, y, incy, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   real(8), device, dimension(*) :: a, x, y
   real(8), device :: alpha ! device or host variable 

2.3.21. dsymv

DSYMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric matrix.

 subroutine dsymv(uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(*) :: x, y ! device or host variable
   real(8), device :: alpha, beta ! device or host variable 
 subroutine cublasDsymv(uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasDsymv_v2(h, uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha, beta ! device or host variable 

2.3.22. dsyr

DSYR performs the symmetric rank 1 operation A := alpha*x*x**T + A, where alpha is a real scalar, x is an n element vector and A is an n by n symmetric matrix.

 subroutine dsyr(t, n, alpha, x, incx, a, lda)
   character*1 :: t
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(*) :: x ! device or host variable
   real(8), device :: alpha ! device or host variable 
 subroutine cublasDsyr(t, n, alpha, x, incx, a, lda)
   character*1 :: t
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x
   real(8), device :: alpha ! device or host variable 
 integer(4) function cublasDsyr_v2(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x
   real(8), device :: alpha ! device or host variable 

2.3.23. dsyr2

DSYR2 performs the symmetric rank 2 operation A := alpha*x*y**T + alpha*y*x**T + A, where alpha is a scalar, x and y are n element vectors and A is an n by n symmetric matrix.

 subroutine dsyr2(t, n, alpha, x, incx, y, incy, a, lda)
   character*1 :: t
   integer :: n, incx, incy, lda
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(*) :: x, y ! device or host variable
   real(8), device :: alpha ! device or host variable 
 subroutine cublasDsyr2(t, n, alpha, x, incx, y, incy, a, lda)
   character*1 :: t
   integer :: n, incx, incy, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha ! device or host variable 
 integer(4) function cublasDsyr2_v2(h, t, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha ! device or host variable 

2.3.24. dtbmv

DTBMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals.

 subroutine dtbmv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(*) :: x ! device or host variable 
 subroutine cublasDtbmv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 
 integer(4) function cublasDtbmv_v2(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 

2.3.25. dtbsv

DTBSV solves one of the systems of equations A*x = b, or A**T*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine.

 subroutine dtbsv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(*) :: x ! device or host variable 
 subroutine cublasDtbsv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 
 integer(4) function cublasDtbsv_v2(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 

2.3.26. dtpmv

DTPMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form.

 subroutine dtpmv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   real(8), device, dimension(*) :: a, x ! device or host variable 
 subroutine cublasDtpmv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   real(8), device, dimension(*) :: a, x 
 integer(4) function cublasDtpmv_v2(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   real(8), device, dimension(*) :: a, x 

2.3.27. dtpsv

DTPSV solves one of the systems of equations A*x = b, or A**T*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine.

 subroutine dtpsv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   real(8), device, dimension(*) :: a, x ! device or host variable 
 subroutine cublasDtpsv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   real(8), device, dimension(*) :: a, x 
 integer(4) function cublasDtpsv_v2(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   real(8), device, dimension(*) :: a, x 

2.3.28. dtrmv

DTRMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix.

 subroutine dtrmv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(*) :: x ! device or host variable 
 subroutine cublasDtrmv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 
 integer(4) function cublasDtrmv_v2(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 

2.3.29. dtrsv

DTRSV solves one of the systems of equations A*x = b, or A**T*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine.

 subroutine dtrsv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(*) :: x ! device or host variable 
 subroutine cublasDtrsv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 
 integer(4) function cublasDtrsv_v2(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 

2.3.30. dgemm

DGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 subroutine dgemm(transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(ldb, *) :: b ! device or host variable
   real(8), device, dimension(ldc, *) :: c ! device or host variable
   real(8), device :: alpha, beta ! device or host variable 
 subroutine cublasDgemm(transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasDgemm_v2(h, transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 

2.3.31. dsymm

DSYMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a symmetric matrix and B and C are m by n matrices.

 subroutine dsymm(side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: side, uplo
   integer :: m, n, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(ldb, *) :: b ! device or host variable
   real(8), device, dimension(ldc, *) :: c ! device or host variable
   real(8), device :: alpha, beta ! device or host variable 
 subroutine cublasDsymm(side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: side, uplo
   integer :: m, n, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasDsymm_v2(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 

2.3.32. dsyrk

DSYRK performs one of the symmetric rank k operations C := alpha*A*A**T + beta*C, or C := alpha*A**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A is an n by k matrix in the first case and a k by n matrix in the second case.

 subroutine dsyrk(uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldc
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(ldc, *) :: c ! device or host variable
   real(8), device :: alpha, beta ! device or host variable 
 subroutine cublasDsyrk(uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasDsyrk_v2(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 

2.3.33. dsyr2k

DSYR2K performs one of the symmetric rank 2k operations C := alpha*A*B**T + alpha*B*A**T + beta*C, or C := alpha*A**T*B + alpha*B**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A and B are n by k matrices in the first case and k by n matrices in the second case.

 subroutine dsyr2k(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(ldb, *) :: b ! device or host variable
   real(8), device, dimension(ldc, *) :: c ! device or host variable
   real(8), device :: alpha, beta ! device or host variable 
 subroutine cublasDsyr2k(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasDsyr2k_v2(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 

2.3.34. dsyrkx

DSYRKX performs a variation of the symmetric rank k update C := alpha*A*B**T + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix stored in lower or upper mode, and A and B are n by k matrices. This routine can be used when B is in such a way that the result is guaranteed to be symmetric. See the CUBLAS documentation for more details.

 subroutine dsyrkx(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(ldb, *) :: b ! device or host variable
   real(8), device, dimension(ldc, *) :: c ! device or host variable
   real(8), device :: alpha, beta ! device or host variable 
 subroutine cublasDsyrkx(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasDsyrkx_v2(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 

2.3.35. dtrmm

DTRMM performs one of the matrix-matrix operations B := alpha*op( A )*B, or B := alpha*B*op( A ), where alpha is a scalar, B is an m by n matrix, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T.

 subroutine dtrmm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(ldb, *) :: b ! device or host variable
   real(8), device :: alpha ! device or host variable 
 subroutine cublasDtrmm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device :: alpha ! device or host variable 
 integer(4) function cublasDtrmm_v2(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha ! device or host variable 

2.3.36. dtrsm

DTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T. The matrix X is overwritten on B.

 subroutine dtrsm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(8), device, dimension(lda, *) :: a ! device or host variable
   real(8), device, dimension(ldb, *) :: b ! device or host variable
   real(8), device :: alpha ! device or host variable 
 subroutine cublasDtrsm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device :: alpha ! device or host variable 
 integer(4) function cublasDtrsm_v2(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device :: alpha ! device or host variable 

2.3.37. cublasDgetrfBatched

DGETRF computes an LU factorization of a general M-by-N matrix A using partial pivoting with row interchanges. The factorization has the form A = P * L * U where P is a permutation matrix, L is lower triangular with unit diagonal elements (lower trapezoidal if m > n), and U is upper triangular (upper trapezoidal if m < n). This is the right-looking Level 3 BLAS version of the algorithm.

 integer(4) function cublasDgetrfBatched(h, n, Aarray, lda, ipvt, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   integer, device :: info(*)
   integer :: batchCount 

2.3.38. cublasDgetriBatched

DGETRI computes the inverse of a matrix using the LU factorization computed by DGETRF. This method inverts U and then computes inv(A) by solving the system inv(A)*L = inv(U) for inv(A).

 integer(4) function cublasDgetriBatched(h, n, Aarray, lda, ipvt, Carray, ldc, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer, device :: info(*)
   integer :: batchCount 

2.3.39. cublasDgetrsBatched

DGETRS solves a system of linear equations A * X = B or A**T * X = B with a general N-by-N matrix A using the LU factorization computed by DGETRF.

 integer(4) function cublasDgetrsBatched(h, trans, n, nrhs, Aarray, lda, ipvt, Barray, ldb, info, batchCount)
   type(cublasHandle) :: h
   integer :: trans ! integer or character(1) variable
   integer :: n, nrhs
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   integer :: info(*)
   integer :: batchCount 

2.3.40. cublasDgemmBatched

DGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 integer(4) function cublasDgemmBatched(h, transa, transb, m, n, k, alpha, Aarray, lda, Barray, ldb, beta, Carray, ldc, batchCount)
   type(cublasHandle) :: h
   integer :: transa ! integer or character(1) variable
   integer :: transb ! integer or character(1) variable
   integer :: m, n, k
   real(8), device :: alpha ! device or host variable
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   real(8), device :: beta ! device or host variable
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: batchCount 
 integer(4) function cublasDgemmBatched_v2(h, transa, transb, m, n, k, alpha,           Aarray, lda, Barray, ldb, beta, Carray, ldc, batchCount)
   type(cublasHandle) :: h
   integer :: transa
   integer :: transb
   integer :: m, n, k
   real(8), device :: alpha ! device or host variable
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   real(8), device :: beta ! device or host variable
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: batchCount 

2.3.41. cublasDtrsmBatched

DTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T. The matrix X is overwritten on B.

 integer(4) function cublasDtrsmBatched( h, side, uplo, trans, diag, m, n, alpha, A, lda, B, ldb, batchCount)
   type(cublasHandle) :: h
   integer :: side ! integer or character(1) variable
   integer :: uplo ! integer or character(1) variable
   integer :: trans ! integer or character(1) variable
   integer :: diag ! integer or character(1) variable
   integer :: m, n
   real(8), device :: alpha ! device or host variable
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer :: batchCount 
 integer(4) function cublasDtrsmBatched_v2( h, side, uplo, trans, diag, m, n, alpha, A, lda, B, ldb, batchCount)
   type(cublasHandle) :: h
   integer :: side
   integer :: uplo
   integer :: trans
   integer :: diag
   integer :: m, n
   real(8), device :: alpha ! device or host variable
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer :: batchCount 

2.3.42. cublasDmatinvBatched

cublasDmatinvBatched is a short cut of cublasDgetrfBatched plus cublasDgetriBatched. However it only works if n is less than 32. If not, the user has to go through cublasDgetrfBatched and cublasDgetriBatched.

 integer(4) function cublasDmatinvBatched(h, n, Aarray, lda, Ainv, lda_inv, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Ainv(*)
   integer :: lda_inv
   integer, device :: info(*)
   integer :: batchCount 

2.3.43. cublasDgeqrfBatched

DGEQRF computes a QR factorization of a real M-by-N matrix A: A = Q * R.

 integer(4) function cublasDgeqrfBatched(h, m, n, Aarray, lda, Tau, info, batchCount)
   type(cublasHandle) :: h
   integer :: m, n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Tau(*)
   integer :: info(*)
   integer :: batchCount 

2.3.44. cublasDgelsBatched

DGELS solves overdetermined or underdetermined real linear systems involving an M-by-N matrix A, or its transpose, using a QR or LQ factorization of A. It is assumed that A has full rank. The following options are provided: 1. If TRANS = 'N' and m >= n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A*X ||. 2. If TRANS = 'N' and m < n: find the minimum norm solution of an underdetermined system A * X = B. 3. If TRANS = 'T' and m >= n: find the minimum norm solution of an undetermined system A**T * X = B. 4. If TRANS = 'T' and m < n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A**T * X ||. Several right hand side vectors b and solution vectors x can be handled in a single call; they are stored as the columns of the M-by-NRHS right hand side matrix B and the N-by-NRHS solution matrix X.

 integer(4) function cublasDgelsBatched(h, trans, m, n, nrhs, Aarray, lda, Carray, ldc, info, devinfo, batchCount)
   type(cublasHandle) :: h
   integer :: trans ! integer or character(1) variable
   integer :: m, n, nrhs
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: info(*)
   integer, device :: devinfo(*)
   integer :: batchCount 

cublasDgemmStridedBatched

DGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 integer(4) function cublasDgemmStridedBatched(h, transa, transb, m, n, k, alpha, Aarray, lda, strideA, Barray, ldb, strideB, beta, Carray, ldc, strideC, batchCount)
   type(cublasHandle) :: h
   integer :: transa ! integer or character(1) variable
   integer :: transb ! integer or character(1) variable
   integer :: m, n, k
   real(8), device :: alpha ! device or host variable
   real(8), device :: Aarray(*)
   integer :: lda
   integer :: strideA
   real(8), device :: Barray(*)
   integer :: ldb
   integer :: strideB
   real(8), device :: beta ! device or host variable
   real(8), device :: Carray(*)
   integer :: ldc
   integer :: strideC
   integer :: batchCount 
 integer(4) function cublasDgemmStridedBatched_v2(h, transa, transb, m, n, k, alpha,           Aarray, lda, strideA, Barray, ldb, strideB, beta, Carray, ldc, strideC, batchCount)
   type(cublasHandle) :: h
   integer :: transa
   integer :: transb
   integer :: m, n, k
   real(8), device :: alpha ! device or host variable
   real(8), device :: Aarray(*)
   integer :: lda
   integer :: strideA
   real(8), device :: Barray(*)
   integer :: ldb
   integer :: strideB
   real(8), device :: beta ! device or host variable
   real(8), device :: Carray(*)
   integer :: ldc
   integer :: strideC
   integer :: batchCount 

2.4. Single Precision Complex Functions and Subroutines

This section contains interfaces to the single precision complex BLAS and cuBLAS functions and subroutines.

2.4.1. icamax

ICAMAX finds the index of the element having the maximum absolute value.

 integer(4) function icamax(n, x, incx)
   integer :: n
   complex(4), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 integer(4) function cublasIcamax(n, x, incx)
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasIcamax_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.4.2. icamin

ICAMIN finds the index of the element having the minimum absolute value.

 integer(4) function icamin(n, x, incx)
   integer :: n
   complex(4), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 integer(4) function cublasIcamin(n, x, incx)
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasIcamin_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.4.3. scasum

SCASUM takes the sum of the absolute values of a complex vector and returns a single precision result.

 real(4) function scasum(n, x, incx)
   integer :: n
   complex(4), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 real(4) function cublasScasum(n, x, incx)
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasScasum_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx
   real(4), device :: res ! device or host variable 

2.4.4. caxpy

CAXPY constant times a vector plus a vector.

 subroutine caxpy(n, a, x, incx, y, incy)
   integer :: n
   complex(4), device :: a ! device or host variable
   complex(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasCaxpy(n, a, x, incx, y, incy)
   integer :: n
   complex(4), device :: a ! device or host variable
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasCaxpy_v2(h, n, a, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device :: a ! device or host variable
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.4.5. ccopy

CCOPY copies a vector x to a vector y.

 subroutine ccopy(n, x, incx, y, incy)
   integer :: n
   complex(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasCcopy(n, x, incx, y, incy)
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasCcopy_v2(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.4.6. cdotc

forms the dot product of two vectors, conjugating the first vector.

 complex(4) function cdotc(n, x, incx, y, incy)
   integer :: n
   complex(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 complex(4) function cublasCdotc(n, x, incx, y, incy)
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasCdotc_v2(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy
   complex(4), device :: res ! device or host variable 

2.4.7. cdotu

CDOTU forms the dot product of two vectors.

 complex(4) function cdotu(n, x, incx, y, incy)
   integer :: n
   complex(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 complex(4) function cublasCdotu(n, x, incx, y, incy)
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasCdotu_v2(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy
   complex(4), device :: res ! device or host variable 

2.4.8. scnrm2

SCNRM2 returns the euclidean norm of a vector via the function name, so that SCNRM2 := sqrt( x**H*x )

 real(4) function scnrm2(n, x, incx)
   integer :: n
   complex(4), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 real(4) function cublasScnrm2(n, x, incx)
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasScnrm2_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx
   real(4), device :: res ! device or host variable 

2.4.9. crot

CROT applies a plane rotation, where the cos (C) is real and the sin (S) is complex, and the vectors CX and CY are complex.

 subroutine crot(n, x, incx, y, incy, sc, ss)
   integer :: n
   real(4), device :: sc ! device or host variable
   complex(4), device :: ss ! device or host variable
   complex(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasCrot(n, x, incx, y, incy, sc, ss)
   integer :: n
   real(4), device :: sc ! device or host variable
   complex(4), device :: ss ! device or host variable
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasCrot_v2(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: sc ! device or host variable
   complex(4), device :: ss ! device or host variable
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.4.10. csrot

CSROT applies a plane rotation, where the cos and sin (c and s) are real and the vectors cx and cy are complex.

 subroutine csrot(n, x, incx, y, incy, sc, ss)
   integer :: n
   real(4), device :: sc, ss ! device or host variable
   complex(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasCsrot(n, x, incx, y, incy, sc, ss)
   integer :: n
   real(4), device :: sc, ss ! device or host variable
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasCsrot_v2(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: sc, ss ! device or host variable
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.4.11. crotg

CROTG determines a complex Givens rotation.

 subroutine crotg(sa, sb, sc, ss)
   complex(4), device :: sa, sb, ss ! device or host variable
   real(4), device :: sc ! device or host variable 
 subroutine cublasCrotg(sa, sb, sc, ss)
   complex(4), device :: sa, sb, ss ! device or host variable
   real(4), device :: sc ! device or host variable 
 integer(4) function cublasCrotg_v2(h, sa, sb, sc, ss)
   type(cublasHandle) :: h
   complex(4), device :: sa, sb, ss ! device or host variable
   real(4), device :: sc ! device or host variable 

2.4.12. cscal

CSCAL scales a vector by a constant.

 subroutine cscal(n, a, x, incx)
   integer :: n
   complex(4), device :: a ! device or host variable
   complex(4), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 subroutine cublasCscal(n, a, x, incx)
   integer :: n
   complex(4), device :: a ! device or host variable
   complex(4), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasCscal_v2(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device :: a ! device or host variable
   complex(4), device, dimension(*) :: x
   integer :: incx 

2.4.13. csscal

CSSCAL scales a complex vector by a real constant.

 subroutine csscal(n, a, x, incx)
   integer :: n
   real(4), device :: a ! device or host variable
   complex(4), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 subroutine cublasCsscal(n, a, x, incx)
   integer :: n
   real(4), device :: a ! device or host variable
   complex(4), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasCsscal_v2(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: a ! device or host variable
   complex(4), device, dimension(*) :: x
   integer :: incx 

2.4.14. cswap

CSWAP interchanges two vectors.

 subroutine cswap(n, x, incx, y, incy)
   integer :: n
   complex(4), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasCswap(n, x, incx, y, incy)
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasCswap_v2(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.4.15. cgbmv

CGBMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, or y := alpha*A**H*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n band matrix, with kl sub-diagonals and ku super-diagonals.

 subroutine cgbmv(t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, kl, ku, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x, y ! device or host variable
   complex(4), device :: alpha, beta ! device or host variable 
 subroutine cublasCgbmv(t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, kl, ku, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasCgbmv_v2(h, t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, kl, ku, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 

2.4.16. cgemv

CGEMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, or y := alpha*A**H*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n matrix.

 subroutine cgemv(t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x, y ! device or host variable
   complex(4), device :: alpha, beta ! device or host variable 
 subroutine cublasCgemv(t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasCgemv_v2(h, t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 

2.4.17. cgerc

CGERC performs the rank 1 operation A := alpha*x*y**H + A, where alpha is a scalar, x is an m element vector, y is an n element vector and A is an m by n matrix.

 subroutine cgerc(m, n, alpha, x, incx, y, incy, a, lda)
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x, y ! device or host variable
   complex(4), device :: alpha ! device or host variable 
 subroutine cublasCgerc(m, n, alpha, x, incx, y, incy, a, lda)
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha ! device or host variable 
 integer(4) function cublasCgerc_v2(h, m, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha ! device or host variable 

2.4.18. cgeru

CGERU performs the rank 1 operation A := alpha*x*y**T + A, where alpha is a scalar, x is an m element vector, y is an n element vector and A is an m by n matrix.

 subroutine cgeru(m, n, alpha, x, incx, y, incy, a, lda)
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x, y ! device or host variable
   complex(4), device :: alpha ! device or host variable 
 subroutine cublasCgeru(m, n, alpha, x, incx, y, incy, a, lda)
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha ! device or host variable 
 integer(4) function cublasCgeru_v2(h, m, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha ! device or host variable 

2.4.19. csymv

CSYMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric matrix.

 subroutine csymv(uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x, y ! device or host variable
   complex(4), device :: alpha, beta ! device or host variable 
 subroutine cublasCsymv(uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasCsymv_v2(h, uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 

2.4.20. csyr

CSYR performs the symmetric rank 1 operation A := alpha*x*x**H + A, where alpha is a complex scalar, x is an n element vector and A is an n by n symmetric matrix.

 subroutine csyr(t, n, alpha, x, incx, a, lda)
   character*1 :: t
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x ! device or host variable
   complex(4), device :: alpha ! device or host variable 
 subroutine cublasCsyr(t, n, alpha, x, incx, a, lda)
   character*1 :: t
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x
   complex(4), device :: alpha ! device or host variable 
 integer(4) function cublasCsyr_v2(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x
   complex(4), device :: alpha ! device or host variable 

2.4.21. csyr2

CSYR2 performs the symmetric rank 2 operation A := alpha*x*y' + alpha*y*x' + A, where alpha is a complex scalar, x and y are n element vectors and A is an n by n SY matrix.

 subroutine csyr2(t, n, alpha, x, incx, y, incy, a, lda)
   character*1 :: t
   integer :: n, incx, incy, lda
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x, y ! device or host variable
   complex(4), device :: alpha ! device or host variable 
 subroutine cublasCsyr2(t, n, alpha, x, incx, y, incy, a, lda)
   character*1 :: t
   integer :: n, incx, incy, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha ! device or host variable 
 integer(4) function cublasCsyr2_v2(h, t, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha ! device or host variable 

2.4.22. ctbmv

CTBMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, or x := A**H*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals.

 subroutine ctbmv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x ! device or host variable 
 subroutine cublasCtbmv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 
 integer(4) function cublasCtbmv_v2(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 

2.4.23. ctbsv

CTBSV solves one of the systems of equations A*x = b, or A**T*x = b, or A**H*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine.

 subroutine ctbsv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x ! device or host variable 
 subroutine cublasCtbsv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 
 integer(4) function cublasCtbsv_v2(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 

2.4.24. ctpmv

CTPMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, or x := A**H*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form.

 subroutine ctpmv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x ! device or host variable 
 subroutine cublasCtpmv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x 
 integer(4) function cublasCtpmv_v2(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x 

2.4.25. ctpsv

CTPSV solves one of the systems of equations A*x = b, or A**T*x = b, or A**H*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine.

 subroutine ctpsv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x ! device or host variable 
 subroutine cublasCtpsv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x 
 integer(4) function cublasCtpsv_v2(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x 

2.4.26. ctrmv

CTRMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, or x := A**H*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix.

 subroutine ctrmv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x ! device or host variable 
 subroutine cublasCtrmv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 
 integer(4) function cublasCtrmv_v2(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 

2.4.27. ctrsv

CTRSV solves one of the systems of equations A*x = b, or A**T*x = b, or A**H*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine.

 subroutine ctrsv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x ! device or host variable 
 subroutine cublasCtrsv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 
 integer(4) function cublasCtrsv_v2(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 

2.4.28. chbmv

CHBMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n hermitian band matrix, with k super-diagonals.

 subroutine chbmv(uplo, n, k, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: k, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x, y ! device or host variable
   complex(4), device :: alpha, beta ! device or host variable 
 subroutine cublasChbmv(uplo, n, k, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: k, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasChbmv_v2(h, uplo, n, k, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: k, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 

2.4.29. chemv

CHEMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n hermitian matrix.

 subroutine chemv(uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(*) :: x, y ! device or host variable
   complex(4), device :: alpha, beta ! device or host variable 
 subroutine cublasChemv(uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasChemv_v2(h, uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 

2.4.30. chpmv

CHPMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n hermitian matrix, supplied in packed form.

 subroutine chpmv(uplo, n, alpha, a, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, incx, incy
   complex(4), device, dimension(*) :: a, x, y ! device or host variable
   complex(4), device :: alpha, beta ! device or host variable 
 subroutine cublasChpmv(uplo, n, alpha, a, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, incx, incy
   complex(4), device, dimension(*) :: a, x, y
   complex(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasChpmv_v2(h, uplo, n, alpha, a, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, incx, incy
   complex(4), device, dimension(*) :: a, x, y
   complex(4), device :: alpha, beta ! device or host variable 

2.4.31. cher

CHER performs the hermitian rank 1 operation A := alpha*x*x**H + A, where alpha is a real scalar, x is an n element vector and A is an n by n hermitian matrix.

 subroutine cher(t, n, alpha, x, incx, a, lda)
   character*1 :: t
   integer :: n, incx, lda
   complex(4), device, dimension(*) :: a, x ! device or host variable
   real(4), device :: alpha ! device or host variable 
 subroutine cublasCher(t, n, alpha, x, incx, a, lda)
   character*1 :: t
   integer :: n, incx, lda
   complex(4), device, dimension(*) :: a, x
   real(4), device :: alpha ! device or host variable 
 integer(4) function cublasCher_v2(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   complex(4), device, dimension(*) :: a, x
   real(4), device :: alpha ! device or host variable 

2.4.32. cher2

CHER2 performs the hermitian rank 2 operation A := alpha*x*y**H + conjg( alpha )*y*x**H + A, where alpha is a scalar, x and y are n element vectors and A is an n by n hermitian matrix.

 subroutine cher2(t, n, alpha, x, incx, y, incy, a, lda)
   character*1 :: t
   integer :: n, incx, incy, lda
   complex(4), device, dimension(*) :: a, x, y ! device or host variable
   complex(4), device :: alpha ! device or host variable 
 subroutine cublasCher2(t, n, alpha, x, incx, y, incy, a, lda)
   character*1 :: t
   integer :: n, incx, incy, lda
   complex(4), device, dimension(*) :: a, x, y
   complex(4), device :: alpha ! device or host variable 
 integer(4) function cublasCher2_v2(h, t, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   complex(4), device, dimension(*) :: a, x, y
   complex(4), device :: alpha ! device or host variable 

2.4.33. chpr

CHPR performs the hermitian rank 1 operation A := alpha*x*x**H + A, where alpha is a real scalar, x is an n element vector and A is an n by n hermitian matrix, supplied in packed form.

 subroutine chpr(t, n, alpha, x, incx, a)
   character*1 :: t
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x ! device or host variable
   real(4), device :: alpha ! device or host variable 
 subroutine cublasChpr(t, n, alpha, x, incx, a)
   character*1 :: t
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x
   real(4), device :: alpha ! device or host variable 
 integer(4) function cublasChpr_v2(h, t, n, alpha, x, incx, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x
   real(4), device :: alpha ! device or host variable 

2.4.34. chpr2

CHPR2 performs the hermitian rank 2 operation A := alpha*x*y**H + conjg( alpha )*y*x**H + A, where alpha is a scalar, x and y are n element vectors and A is an n by n hermitian matrix, supplied in packed form.

 subroutine chpr2(t, n, alpha, x, incx, y, incy, a)
   character*1 :: t
   integer :: n, incx, incy
   complex(4), device, dimension(*) :: a, x, y ! device or host variable
   complex(4), device :: alpha ! device or host variable 
 subroutine cublasChpr2(t, n, alpha, x, incx, y, incy, a)
   character*1 :: t
   integer :: n, incx, incy
   complex(4), device, dimension(*) :: a, x, y
   complex(4), device :: alpha ! device or host variable 
 integer(4) function cublasChpr2_v2(h, t, n, alpha, x, incx, y, incy, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   complex(4), device, dimension(*) :: a, x, y
   complex(4), device :: alpha ! device or host variable 

2.4.35. cgemm

CGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T or op( X ) = X**H, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 subroutine cgemm(transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(ldb, *) :: b ! device or host variable
   complex(4), device, dimension(ldc, *) :: c ! device or host variable
   complex(4), device :: alpha, beta ! device or host variable 
 subroutine cublasCgemm(transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasCgemm_v2(h, transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 

2.4.36. csymm

CSYMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a symmetric matrix and B and C are m by n matrices.

 subroutine csymm(side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(ldb, *) :: b ! device or host variable
   complex(4), device, dimension(ldc, *) :: c ! device or host variable
   complex(4), device :: alpha, beta ! device or host variable 
 subroutine cublasCsymm(side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasCsymm_v2(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 

2.4.37. csyrk

CSYRK performs one of the symmetric rank k operations C := alpha*A*A**T + beta*C, or C := alpha*A**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A is an n by k matrix in the first case and a k by n matrix in the second case.

 subroutine csyrk(uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldc
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(ldc, *) :: c ! device or host variable
   complex(4), device :: alpha, beta ! device or host variable 
 subroutine cublasCsyrk(uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasCsyrk_v2(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 

2.4.38. csyr2k

CSYR2K performs one of the symmetric rank 2k operations C := alpha*A*B**T + alpha*B*A**T + beta*C, or C := alpha*A**T*B + alpha*B**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A and B are n by k matrices in the first case and k by n matrices in the second case.

 subroutine csyr2k(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(ldb, *) :: b ! device or host variable
   complex(4), device, dimension(ldc, *) :: c ! device or host variable
   complex(4), device :: alpha, beta ! device or host variable 
 subroutine cublasCsyr2k(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasCsyr2k_v2(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 

2.4.39. csyrkx

CSYRKX performs a variation of the symmetric rank k update C := alpha*A*B**T + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix stored in lower or upper mode, and A and B are n by k matrices. This routine can be used when B is in such a way that the result is guaranteed to be symmetric. See the CUBLAS documentation for more details.

 subroutine csyrkx(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(ldb, *) :: b ! device or host variable
   complex(4), device, dimension(ldc, *) :: c ! device or host variable
   complex(4), device :: alpha, beta ! device or host variable 
 subroutine cublasCsyrkx(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasCsyrkx_v2(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 

2.4.40. ctrmm

CTRMM performs one of the matrix-matrix operations B := alpha*op( A )*B, or B := alpha*B*op( A ) where alpha is a scalar, B is an m by n matrix, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H.

 subroutine ctrmm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(ldb, *) :: b ! device or host variable
   complex(4), device :: alpha ! device or host variable 
 subroutine cublasCtrmm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device :: alpha ! device or host variable 
 integer(4) function cublasCtrmm_v2(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha ! device or host variable 

2.4.41. ctrsm

CTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H. The matrix X is overwritten on B.

 subroutine ctrsm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(ldb, *) :: b ! device or host variable
   complex(4), device :: alpha ! device or host variable 
 subroutine cublasCtrsm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device :: alpha ! device or host variable 
 integer(4) function cublasCtrsm_v2(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device :: alpha ! device or host variable 

2.4.42. chemm

CHEMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is an hermitian matrix and B and C are m by n matrices.

 subroutine chemm(side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(ldb, *) :: b ! device or host variable
   complex(4), device, dimension(ldc, *) :: c ! device or host variable
   complex(4), device :: alpha, beta ! device or host variable 
 subroutine cublasChemm(side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasChemm_v2(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 

2.4.43. cherk

CHERK performs one of the hermitian rank k operations C := alpha*A*A**H + beta*C, or C := alpha*A**H*A + beta*C, where alpha and beta are real scalars, C is an n by n hermitian matrix and A is an n by k matrix in the first case and a k by n matrix in the second case.

 subroutine cherk(uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldc
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(ldc, *) :: c ! device or host variable
   real(4), device :: alpha, beta ! device or host variable 
 subroutine cublasCherk(uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 
 integer(4) function cublasCherk_v2(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 

2.4.44. cher2k

CHER2K performs one of the hermitian rank 2k operations C := alpha*A*B**H + conjg( alpha )*B*A**H + beta*C, or C := alpha*A**H*B + conjg( alpha )*B**H*A + beta*C, where alpha and beta are scalars with beta real, C is an n by n hermitian matrix and A and B are n by k matrices in the first case and k by n matrices in the second case.

 subroutine cher2k(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(ldb, *) :: b ! device or host variable
   complex(4), device, dimension(ldc, *) :: c ! device or host variable
   complex(4), device :: alpha ! device or host variable
   real(4), device :: beta ! device or host variable 
 subroutine cublasCher2k(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha ! device or host variable
   real(4), device :: beta ! device or host variable 
 integer(4) function cublasCher2k_v2(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha ! device or host variable
   real(4), device :: beta ! device or host variable 

2.4.45. cherkx

CHERKX performs a variation of the hermitian rank k operations C := alpha*A*B**H + beta*C, where alpha and beta are real scalars, C is an n by n hermitian matrix stored in lower or upper mode, and A and B are n by k matrices. See the CUBLAS documentation for more details.

 subroutine cherkx(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a ! device or host variable
   complex(4), device, dimension(ldb, *) :: b ! device or host variable
   complex(4), device, dimension(ldc, *) :: c ! device or host variable
   complex(4), device :: alpha ! device or host variable
   real(4), device :: beta ! device or host variable 
 subroutine cublasCherkx(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha ! device or host variable
   real(4), device :: beta ! device or host variable 
 integer(4) function cublasCherkx_v2(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha ! device or host variable
   real(4), device :: beta ! device or host variable 

2.4.46. cublasCgetrfBatched

CGETRF computes an LU factorization of a general M-by-N matrix A using partial pivoting with row interchanges. The factorization has the form A = P * L * U where P is a permutation matrix, L is lower triangular with unit diagonal elements (lower trapezoidal if m > n), and U is upper triangular (upper trapezoidal if m < n). This is the right-looking Level 3 BLAS version of the algorithm.

 integer(4) function cublasCgetrfBatched(h, n, Aarray, lda, ipvt, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   integer, device :: info(*)
   integer :: batchCount 

2.4.47. cublasCgetriBatched

CGETRI computes the inverse of a matrix using the LU factorization computed by CGETRF. This method inverts U and then computes inv(A) by solving the system inv(A)*L = inv(U) for inv(A).

 integer(4) function cublasCgetriBatched(h, n, Aarray, lda, ipvt, Carray, ldc, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer, device :: info(*)
   integer :: batchCount 

2.4.48. cublasCgetrsBatched

CGETRS solves a system of linear equations A * X = B, A**T * X = B, or A**H * X = B with a general N-by-N matrix A using the LU factorization computed by CGETRF.

 integer(4) function cublasCgetrsBatched(h, trans, n, nrhs, Aarray, lda, ipvt, Barray, ldb, info, batchCount)
   type(cublasHandle) :: h
   integer :: trans ! integer or character(1) variable
   integer :: n, nrhs
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   integer :: info(*)
   integer :: batchCount 

2.4.49. cublasCgemmBatched

CGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T or op( X ) = X**H, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 integer(4) function cublasCgemmBatched(h, transa, transb, m, n, k, alpha, Aarray, lda, Barray, ldb, beta, Carray, ldc, batchCount)
   type(cublasHandle) :: h
   integer :: transa ! integer or character(1) variable
   integer :: transb ! integer or character(1) variable
   integer :: m, n, k
   complex(4), device :: alpha ! device or host variable
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   complex(4), device :: beta ! device or host variable
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: batchCount 
 integer(4) function cublasCgemmBatched_v2(h, transa, transb, m, n, k, alpha,           Aarray, lda, Barray, ldb, beta, Carray, ldc, batchCount)
   type(cublasHandle) :: h
   integer :: transa
   integer :: transb
   integer :: m, n, k
   complex(4), device :: alpha ! device or host variable
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   complex(4), device :: beta ! device or host variable
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: batchCount 

2.4.50. cublasCtrsmBatched

CTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H. The matrix X is overwritten on B.

 integer(4) function cublasCtrsmBatched( h, side, uplo, trans, diag, m, n, alpha, A, lda, B, ldb, batchCount)
   type(cublasHandle) :: h
   integer :: side ! integer or character(1) variable
   integer :: uplo ! integer or character(1) variable
   integer :: trans ! integer or character(1) variable
   integer :: diag ! integer or character(1) variable
   integer :: m, n
   complex(4), device :: alpha ! device or host variable
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer :: batchCount 
 integer(4) function cublasCtrsmBatched_v2( h, side, uplo, trans, diag, m, n, alpha, A, lda, B, ldb, batchCount)
   type(cublasHandle) :: h
   integer :: side
   integer :: uplo
   integer :: trans
   integer :: diag
   integer :: m, n
   complex(4), device :: alpha ! device or host variable
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer :: batchCount 

2.4.51. cublasCmatinvBatched

cublasCmatinvBatched is a short cut of cublasCgetrfBatched plus cublasCgetriBatched. However it only works if n is less than 32. If not, the user has to go through cublasCgetrfBatched and cublasCgetriBatched.

 integer(4) function cublasCmatinvBatched(h, n, Aarray, lda, Ainv, lda_inv, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Ainv(*)
   integer :: lda_inv
   integer, device :: info(*)
   integer :: batchCount 

2.4.52. cublasCgeqrfBatched

CGEQRF computes a QR factorization of a complex M-by-N matrix A: A = Q * R.

 integer(4) function cublasCgeqrfBatched(h, m, n, Aarray, lda, Tau, info, batchCount)
   type(cublasHandle) :: h
   integer :: m, n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Tau(*)
   integer :: info(*)
   integer :: batchCount 

2.4.53. cublasCgelsBatched

CGELS solves overdetermined or underdetermined complex linear systems involving an M-by-N matrix A, or its conjugate-transpose, using a QR or LQ factorization of A. It is assumed that A has full rank. The following options are provided: 1. If TRANS = 'N' and m >= n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A*X ||. 2. If TRANS = 'N' and m < n: find the minimum norm solution of an underdetermined system A * X = B. 3. If TRANS = 'C' and m >= n: find the minimum norm solution of an undetermined system A**H * X = B. 4. If TRANS = 'C' and m < n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A**H * X ||. Several right hand side vectors b and solution vectors x can be handled in a single call; they are stored as the columns of the M-by-NRHS right hand side matrix B and the N-by-NRHS solution matrix X.

 integer(4) function cublasCgelsBatched(h, trans, m, n, nrhs, Aarray, lda, Carray, ldc, info, devinfo, batchCount)
   type(cublasHandle) :: h
   integer :: trans ! integer or character(1) variable
   integer :: m, n, nrhs
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: info(*)
   integer, device :: devinfo(*)
   integer :: batchCount 

2.4.54. cublasCgemmStridedBatched

CGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 integer(4) function cublasCgemmStridedBatched(h, transa, transb, m, n, k, alpha, Aarray, lda, strideA, Barray, ldb, strideB, beta, Carray, ldc, strideC, batchCount)
   type(cublasHandle) :: h
   integer :: transa ! integer or character(1) variable
   integer :: transb ! integer or character(1) variable
   integer :: m, n, k
   complex(4), device :: alpha ! device or host variable
   complex(4), device :: Aarray(*)
   integer :: lda
   integer :: strideA
   complex(4), device :: Barray(*)
   integer :: ldb
   integer :: strideB
   complex(4), device :: beta ! device or host variable
   complex(4), device :: Carray(*)
   integer :: ldc
   integer :: strideC
   integer :: batchCount 
 integer(4) function cublasCgemmStridedBatched_v2(h, transa, transb, m, n, k, alpha,           Aarray, lda, strideA, Barray, ldb, strideB, beta, Carray, ldc, strideC, batchCount)
   type(cublasHandle) :: h
   integer :: transa
   integer :: transb
   integer :: m, n, k
   complex(4), device :: alpha ! device or host variable
   complex(4), device :: Aarray(*)
   integer :: lda
   integer :: strideA
   complex(4), device :: Barray(*)
   integer :: ldb
   integer :: strideB
   complex(4), device :: beta ! device or host variable
   complex(4), device :: Carray(*)
   integer :: ldc
   integer :: strideC
   integer :: batchCount 

2.5. Double Precision Complex Functions and Subroutines

This section contains interfaces to the double precision complex BLAS and cuBLAS functions and subroutines.

2.5.1. izamax

IZAMAX finds the index of the element having the maximum absolute value.

 integer(4) function izamax(n, x, incx)
   integer :: n
   complex(8), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 integer(4) function cublasIzamax(n, x, incx)
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasIzamax_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.5.2. izamin

IZAMIN finds the index of the element having the minimum absolute value.

 integer(4) function izamin(n, x, incx)
   integer :: n
   complex(8), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 integer(4) function cublasIzamin(n, x, incx)
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasIzamin_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.5.3. dzasum

DZASUM takes the sum of the absolute values.

 real(8) function dzasum(n, x, incx)
   integer :: n
   complex(8), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 real(8) function cublasDzasum(n, x, incx)
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasDzasum_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx
   real(8), device :: res ! device or host variable 

2.5.4. zaxpy

ZAXPY constant times a vector plus a vector.

 subroutine zaxpy(n, a, x, incx, y, incy)
   integer :: n
   complex(8), device :: a ! device or host variable
   complex(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasZaxpy(n, a, x, incx, y, incy)
   integer :: n
   complex(8), device :: a ! device or host variable
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasZaxpy_v2(h, n, a, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device :: a ! device or host variable
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.5.5. zcopy

ZCOPY copies a vector, x, to a vector, y.

 subroutine zcopy(n, x, incx, y, incy)
   integer :: n
   complex(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasZcopy(n, x, incx, y, incy)
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasZcopy_v2(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.5.6. zdotc

ZDOTC forms the dot product of a vector.

 complex(8) function zdotc(n, x, incx, y, incy)
   integer :: n
   complex(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 complex(8) function cublasZdotc(n, x, incx, y, incy)
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasZdotc_v2(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy
   complex(8), device :: res ! device or host variable 

2.5.7. zdotu

ZDOTU forms the dot product of two vectors.

 complex(8) function zdotu(n, x, incx, y, incy)
   integer :: n
   complex(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 complex(8) function cublasZdotu(n, x, incx, y, incy)
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasZdotu_v2(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy
   complex(8), device :: res ! device or host variable 

2.5.8. dznrm2

DZNRM2 returns the euclidean norm of a vector via the function name, so that DZNRM2 := sqrt( x**H*x )

 real(8) function dznrm2(n, x, incx)
   integer :: n
   complex(8), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 real(8) function cublasDznrm2(n, x, incx)
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasDznrm2_v2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx
   real(8), device :: res ! device or host variable 

2.5.9. zrot

ZROT applies a plane rotation, where the cos (C) is real and the sin (S) is complex, and the vectors CX and CY are complex.

 subroutine zrot(n, x, incx, y, incy, sc, ss)
   integer :: n
   real(8), device :: sc ! device or host variable
   complex(8), device :: ss ! device or host variable
   complex(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasZrot(n, x, incx, y, incy, sc, ss)
   integer :: n
   real(8), device :: sc ! device or host variable
   complex(8), device :: ss ! device or host variable
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasZrot_v2(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: sc ! device or host variable
   complex(8), device :: ss ! device or host variable
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.5.10. zsrot

ZSROT applies a plane rotation, where the cos and sin (c and s) are real and the vectors cx and cy are complex.

 subroutine zsrot(n, x, incx, y, incy, sc, ss)
   integer :: n
   real(8), device :: sc, ss ! device or host variable
   complex(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasZsrot(n, x, incx, y, incy, sc, ss)
   integer :: n
   real(8), device :: sc, ss ! device or host variable
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasZsrot_v2(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: sc, ss ! device or host variable
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.5.11. zrotg

ZROTG determines a double complex Givens rotation.

 subroutine zrotg(sa, sb, sc, ss)
   complex(8), device :: sa, sb, ss ! device or host variable
   real(8), device :: sc ! device or host variable 
 subroutine cublasZrotg(sa, sb, sc, ss)
   complex(8), device :: sa, sb, ss ! device or host variable
   real(8), device :: sc ! device or host variable 
 integer(4) function cublasZrotg_v2(h, sa, sb, sc, ss)
   type(cublasHandle) :: h
   complex(8), device :: sa, sb, ss ! device or host variable
   real(8), device :: sc ! device or host variable 

2.5.12. zscal

ZSCAL scales a vector by a constant.

 subroutine zscal(n, a, x, incx)
   integer :: n
   complex(8), device :: a ! device or host variable
   complex(8), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 subroutine cublasZscal(n, a, x, incx)
   integer :: n
   complex(8), device :: a ! device or host variable
   complex(8), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasZscal_v2(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device :: a ! device or host variable
   complex(8), device, dimension(*) :: x
   integer :: incx 

2.5.13. zdscal

ZDSCAL scales a vector by a constant.

 subroutine zdscal(n, a, x, incx)
   integer :: n
   real(8), device :: a ! device or host variable
   complex(8), device, dimension(*) :: x ! device or host variable
   integer :: incx 
 subroutine cublasZdscal(n, a, x, incx)
   integer :: n
   real(8), device :: a ! device or host variable
   complex(8), device, dimension(*) :: x
   integer :: incx 
 integer(4) function cublasZdscal_v2(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: a ! device or host variable
   complex(8), device, dimension(*) :: x
   integer :: incx 

2.5.14. zswap

ZSWAP interchanges two vectors.

 subroutine zswap(n, x, incx, y, incy)
   integer :: n
   complex(8), device, dimension(*) :: x, y ! device or host variable
   integer :: incx, incy 
 subroutine cublasZswap(n, x, incx, y, incy)
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 
 integer(4) function cublasZswap_v2(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.5.15. zgbmv

ZGBMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, or y := alpha*A**H*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n band matrix, with kl sub-diagonals and ku super-diagonals.

 subroutine zgbmv(t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, kl, ku, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x, y ! device or host variable
   complex(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZgbmv(t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, kl, ku, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZgbmv_v2(h, t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, kl, ku, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 

2.5.16. zgemv

ZGEMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, or y := alpha*A**H*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n matrix.

 subroutine zgemv(t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x, y ! device or host variable
   complex(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZgemv(t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: t
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZgemv_v2(h, t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 

2.5.17. zgerc

ZGERC performs the rank 1 operation A := alpha*x*y**H + A, where alpha is a scalar, x is an m element vector, y is an n element vector and A is an m by n matrix.

 subroutine zgerc(m, n, alpha, x, incx, y, incy, a, lda)
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x, y ! device or host variable
   complex(8), device :: alpha ! device or host variable 
 subroutine cublasZgerc(m, n, alpha, x, incx, y, incy, a, lda)
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha ! device or host variable 
 integer(4) function cublasZgerc_v2(h, m, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha ! device or host variable 

2.5.18. zgeru

ZGERU performs the rank 1 operation A := alpha*x*y**T + A, where alpha is a scalar, x is an m element vector, y is an n element vector and A is an m by n matrix.

 subroutine zgeru(m, n, alpha, x, incx, y, incy, a, lda)
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x, y ! device or host variable
   complex(8), device :: alpha ! device or host variable 
 subroutine cublasZgeru(m, n, alpha, x, incx, y, incy, a, lda)
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha ! device or host variable 
 integer(4) function cublasZgeru_v2(h, m, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha ! device or host variable 

2.5.19. zsymv

ZSYMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric matrix.

 subroutine zsymv(uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x, y ! device or host variable
   complex(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZsymv(uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZsymv_v2(h, uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 

2.5.20. zsyr

ZSYR performs the symmetric rank 1 operation A := alpha*x*x**H + A, where alpha is a complex scalar, x is an n element vector and A is an n by n symmetric matrix.

 subroutine zsyr(t, n, alpha, x, incx, a, lda)
   character*1 :: t
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x ! device or host variable
   complex(8), device :: alpha ! device or host variable 
 subroutine cublasZsyr(t, n, alpha, x, incx, a, lda)
   character*1 :: t
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x
   complex(8), device :: alpha ! device or host variable 
 integer(4) function cublasZsyr_v2(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x
   complex(8), device :: alpha ! device or host variable 

2.5.21. zsyr2

ZSYR2 performs the symmetric rank 2 operation A := alpha*x*y' + alpha*y*x' + A, where alpha is a complex scalar, x and y are n element vectors and A is an n by n SY matrix.

 subroutine zsyr2(t, n, alpha, x, incx, y, incy, a, lda)
   character*1 :: t
   integer :: n, incx, incy, lda
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x, y ! device or host variable
   complex(8), device :: alpha ! device or host variable 
 subroutine cublasZsyr2(t, n, alpha, x, incx, y, incy, a, lda)
   character*1 :: t
   integer :: n, incx, incy, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha ! device or host variable 
 integer(4) function cublasZsyr2_v2(h, t, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha ! device or host variable 

2.5.22. ztbmv

ZTBMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, or x := A**H*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals.

 subroutine ztbmv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x ! device or host variable 
 subroutine cublasZtbmv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 
 integer(4) function cublasZtbmv_v2(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 

2.5.23. ztbsv

ZTBSV solves one of the systems of equations A*x = b, or A**T*x = b, or A**H*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine.

 subroutine ztbsv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x ! device or host variable 
 subroutine cublasZtbsv(u, t, d, n, k, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, k, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 
 integer(4) function cublasZtbsv_v2(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 

2.5.24. ztpmv

ZTPMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, or x := A**H*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form.

 subroutine ztpmv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x ! device or host variable 
 subroutine cublasZtpmv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x 
 integer(4) function cublasZtpmv_v2(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x 

2.5.25. ztpsv

ZTPSV solves one of the systems of equations A*x = b, or A**T*x = b, or A**H*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine.

 subroutine ztpsv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x ! device or host variable 
 subroutine cublasZtpsv(u, t, d, n, a, x, incx)
   character*1 :: u, t, d
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x 
 integer(4) function cublasZtpsv_v2(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x 

2.5.26. ztrmv

ZTRMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, or x := A**H*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix.

 subroutine ztrmv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x ! device or host variable 
 subroutine cublasZtrmv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 
 integer(4) function cublasZtrmv_v2(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 

2.5.27. ztrsv

ZTRSV solves one of the systems of equations A*x = b, or A**T*x = b, or A**H*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine.

 subroutine ztrsv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x ! device or host variable 
 subroutine cublasZtrsv(u, t, d, n, a, lda, x, incx)
   character*1 :: u, t, d
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 
 integer(4) function cublasZtrsv_v2(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 

2.5.28. zhbmv

ZHBMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n hermitian band matrix, with k super-diagonals.

 subroutine zhbmv(uplo, n, k, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: k, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x, y ! device or host variable
   complex(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZhbmv(uplo, n, k, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: k, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZhbmv_v2(h, uplo, n, k, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: k, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 

2.5.29. zhemv

ZHEMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n hermitian matrix.

 subroutine zhemv(uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(*) :: x, y ! device or host variable
   complex(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZhemv(uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZhemv_v2(h, uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 

2.5.30. zhpmv

ZHPMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n hermitian matrix, supplied in packed form.

 subroutine zhpmv(uplo, n, alpha, a, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, incx, incy
   complex(8), device, dimension(*) :: a, x, y ! device or host variable
   complex(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZhpmv(uplo, n, alpha, a, x, incx, beta, y, incy)
   character*1 :: uplo
   integer :: n, incx, incy
   complex(8), device, dimension(*) :: a, x, y
   complex(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZhpmv_v2(h, uplo, n, alpha, a, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, incx, incy
   complex(8), device, dimension(*) :: a, x, y
   complex(8), device :: alpha, beta ! device or host variable 

2.5.31. zher

ZHER performs the hermitian rank 1 operation A := alpha*x*x**H + A, where alpha is a real scalar, x is an n element vector and A is an n by n hermitian matrix.

 subroutine zher(t, n, alpha, x, incx, a, lda)
   character*1 :: t
   integer :: n, incx, lda
   complex(8), device, dimension(*) :: a, x ! device or host variable
   real(8), device :: alpha ! device or host variable 
 subroutine cublasZher(t, n, alpha, x, incx, a, lda)
   character*1 :: t
   integer :: n, incx, lda
   complex(8), device, dimension(*) :: a, x
   real(8), device :: alpha ! device or host variable 
 integer(4) function cublasZher_v2(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   complex(8), device, dimension(*) :: a, x
   real(8), device :: alpha ! device or host variable 

2.5.32. zher2

ZHER2 performs the hermitian rank 2 operation A := alpha*x*y**H + conjg( alpha )*y*x**H + A, where alpha is a scalar, x and y are n element vectors and A is an n by n hermitian matrix.

 subroutine zher2(t, n, alpha, x, incx, y, incy, a, lda)
   character*1 :: t
   integer :: n, incx, incy
   complex(8), device, dimension(*) :: a, x, y ! device or host variable
   complex(8), device :: alpha ! device or host variable 
 subroutine cublasZher2(t, n, alpha, x, incx, y, incy, a, lda)
   character*1 :: t
   integer :: n, incx, incy, lda
   complex(8), device, dimension(*) :: a, x, y
   complex(8), device :: alpha ! device or host variable 
 integer(4) function cublasZher2_v2(h, t, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   complex(8), device, dimension(*) :: a, x, y
   complex(8), device :: alpha ! device or host variable 

2.5.33. zhpr

ZHPR performs the hermitian rank 1 operation A := alpha*x*x**H + A, where alpha is a real scalar, x is an n element vector and A is an n by n hermitian matrix, supplied in packed form.

 subroutine zhpr(t, n, alpha, x, incx, a)
   character*1 :: t
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x ! device or host variable
   real(8), device :: alpha ! device or host variable 
 subroutine cublasZhpr(t, n, alpha, x, incx, a)
   character*1 :: t
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x
   real(8), device :: alpha ! device or host variable 
 integer(4) function cublasZhpr_v2(h, t, n, alpha, x, incx, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x
   real(8), device :: alpha ! device or host variable 

2.5.34. zhpr2

ZHPR2 performs the hermitian rank 2 operation A := alpha*x*y**H + conjg( alpha )*y*x**H + A, where alpha is a scalar, x and y are n element vectors and A is an n by n hermitian matrix, supplied in packed form.

 subroutine zhpr2(t, n, alpha, x, incx, y, incy, a)
   character*1 :: t
   integer :: n, incx, incy
   complex(8), device, dimension(*) :: a, x, y ! device or host variable
   complex(8), device :: alpha ! device or host variable 
 subroutine cublasZhpr2(t, n, alpha, x, incx, y, incy, a)
   character*1 :: t
   integer :: n, incx, incy
   complex(8), device, dimension(*) :: a, x, y
   complex(8), device :: alpha ! device or host variable 
 integer(4) function cublasZhpr2_v2(h, t, n, alpha, x, incx, y, incy, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   complex(8), device, dimension(*) :: a, x, y
   complex(8), device :: alpha ! device or host variable 

2.5.35. zgemm

ZGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T or op( X ) = X**H, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 subroutine zgemm(transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(ldb, *) :: b ! device or host variable
   complex(8), device, dimension(ldc, *) :: c ! device or host variable
   complex(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZgemm(transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZgemm_v2(h, transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 

2.5.36. zsymm

ZSYMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a symmetric matrix and B and C are m by n matrices.

 subroutine zsymm(side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(ldb, *) :: b ! device or host variable
   complex(8), device, dimension(ldc, *) :: c ! device or host variable
   complex(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZsymm(side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZsymm_v2(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 

2.5.37. zsyrk

ZSYRK performs one of the symmetric rank k operations C := alpha*A*A**T + beta*C, or C := alpha*A**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A is an n by k matrix in the first case and a k by n matrix in the second case.

 subroutine zsyrk(uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldc
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(ldc, *) :: c ! device or host variable
   complex(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZsyrk(uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZsyrk_v2(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 

2.5.38. zsyr2k

ZSYR2K performs one of the symmetric rank 2k operations C := alpha*A*B**T + alpha*B*A**T + beta*C, or C := alpha*A**T*B + alpha*B**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A and B are n by k matrices in the first case and k by n matrices in the second case.

 subroutine zsyr2k(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(ldb, *) :: b ! device or host variable
   complex(8), device, dimension(ldc, *) :: c ! device or host variable
   complex(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZsyr2k(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZsyr2k_v2(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 

2.5.39. zsyrkx

ZSYRKX performs a variation of the symmetric rank k update C := alpha*A*B**T + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix stored in lower or upper mode, and A and B are n by k matrices. This routine can be used when B is in such a way that the result is guaranteed to be symmetric. See the CUBLAS documentation for more details.

 subroutine zsyrkx(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(ldb, *) :: b ! device or host variable
   complex(8), device, dimension(ldc, *) :: c ! device or host variable
   complex(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZsyrkx(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZsyrkx_v2(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 

2.5.40. ztrmm

ZTRMM performs one of the matrix-matrix operations B := alpha*op( A )*B, or B := alpha*B*op( A ) where alpha is a scalar, B is an m by n matrix, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H.

 subroutine ztrmm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(ldb, *) :: b ! device or host variable
   complex(8), device :: alpha ! device or host variable 
 subroutine cublasZtrmm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device :: alpha ! device or host variable 
 integer(4) function cublasZtrmm_v2(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha ! device or host variable 

2.5.41. ztrsm

ZTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H. The matrix X is overwritten on B.

 subroutine ztrsm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(ldb, *) :: b ! device or host variable
   complex(8), device :: alpha ! device or host variable 
 subroutine cublasZtrsm(side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   character*1 :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device :: alpha ! device or host variable 
 integer(4) function cublasZtrsm_v2(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device :: alpha ! device or host variable 

2.5.42. zhemm

ZHEMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is an hermitian matrix and B and C are m by n matrices.

 subroutine zhemm(side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(ldb, *) :: b ! device or host variable
   complex(8), device, dimension(ldc, *) :: c ! device or host variable
   complex(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZhemm(side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZhemm_v2(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 

2.5.43. zherk

ZHERK performs one of the hermitian rank k operations C := alpha*A*A**H + beta*C, or C := alpha*A**H*A + beta*C, where alpha and beta are real scalars, C is an n by n hermitian matrix and A is an n by k matrix in the first case and a k by n matrix in the second case.

 subroutine zherk(uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldc
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(ldc, *) :: c ! device or host variable
   real(8), device :: alpha, beta ! device or host variable 
 subroutine cublasZherk(uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 
 integer(4) function cublasZherk_v2(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 

2.5.44. zher2k

ZHER2K performs one of the hermitian rank 2k operations C := alpha*A*B**H + conjg( alpha )*B*A**H + beta*C, or C := alpha*A**H*B + conjg( alpha )*B**H*A + beta*C, where alpha and beta are scalars with beta real, C is an n by n hermitian matrix and A and B are n by k matrices in the first case and k by n matrices in the second case.

 subroutine zher2k(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(ldb, *) :: b ! device or host variable
   complex(8), device, dimension(ldc, *) :: c ! device or host variable
   complex(8), device :: alpha ! device or host variable
   real(8), device :: beta ! device or host variable 
 subroutine cublasZher2k(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha ! device or host variable
   real(8), device :: beta ! device or host variable 
 integer(4) function cublasZher2k_v2(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha ! device or host variable
   real(8), device :: beta ! device or host variable 

2.5.45. zherkx

ZHERKX performs a variation of the hermitian rank k operations C := alpha*A*B**H + beta*C, where alpha and beta are real scalars, C is an n by n hermitian matrix stored in lower or upper mode, and A and B are n by k matrices. See the CUBLAS documentation for more details.

 subroutine zherkx(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a ! device or host variable
   complex(8), device, dimension(ldb, *) :: b ! device or host variable
   complex(8), device, dimension(ldc, *) :: c ! device or host variable
   complex(8), device :: alpha ! device or host variable
   real(8), device :: beta ! device or host variable 
 subroutine cublasZherkx(uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   character*1 :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha ! device or host variable
   real(8), device :: beta ! device or host variable 
 integer(4) function cublasZherkx_v2(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha ! device or host variable
   real(8), device :: beta ! device or host variable 

2.5.46. cublasZgetrfBatched

ZGETRF computes an LU factorization of a general M-by-N matrix A using partial pivoting with row interchanges. The factorization has the form A = P * L * U where P is a permutation matrix, L is lower triangular with unit diagonal elements (lower trapezoidal if m > n), and U is upper triangular (upper trapezoidal if m < n). This is the right-looking Level 3 BLAS version of the algorithm.

 integer(4) function cublasZgetrfBatched(h, n, Aarray, lda, ipvt, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   integer, device :: info(*)
   integer :: batchCount 

2.5.47. cublasZgetriBatched

ZGETRI computes the inverse of a matrix using the LU factorization computed by ZGETRF. This method inverts U and then computes inv(A) by solving the system inv(A)*L = inv(U) for inv(A).

 integer(4) function cublasZgetriBatched(h, n, Aarray, lda, ipvt, Carray, ldc, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer, device :: info(*)
   integer :: batchCount 

2.5.48. cublasZgetrsBatched

ZGETRS solves a system of linear equations A * X = B, A**T * X = B, or A**H * X = B with a general N-by-N matrix A using the LU factorization computed by ZGETRF.

 integer(4) function cublasZgetrsBatched(h, trans, n, nrhs, Aarray, lda, ipvt, Barray, ldb, info, batchCount)
   type(cublasHandle) :: h
   integer :: trans ! integer or character(1) variable
   integer :: n, nrhs
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   integer :: info(*)
   integer :: batchCount 

2.5.49. cublasZgemmBatched

ZGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T or op( X ) = X**H, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 integer(4) function cublasZgemmBatched(h, transa, transb, m, n, k, alpha, Aarray, lda, Barray, ldb, beta, Carray, ldc, batchCount)
   type(cublasHandle) :: h
   integer :: transa ! integer or character(1) variable
   integer :: transb ! integer or character(1) variable
   integer :: m, n, k
   complex(8), device :: alpha ! device or host variable
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   complex(8), device :: beta ! device or host variable
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: batchCount 
 integer(4) function cublasZgemmBatched_v2(h, transa, transb, m, n, k, alpha,           Aarray, lda, Barray, ldb, beta, Carray, ldc, batchCount)
   type(cublasHandle) :: h
   integer :: transa
   integer :: transb
   integer :: m, n, k
   complex(8), device :: alpha ! device or host variable
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   complex(8), device :: beta ! device or host variable
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: batchCount 

2.5.50. cublasZtrsmBatched

ZTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H. The matrix X is overwritten on B.

 integer(4) function cublasZtrsmBatched( h, side, uplo, trans, diag, m, n, alpha, A, lda, B, ldb, batchCount)
   type(cublasHandle) :: h
   integer :: side ! integer or character(1) variable
   integer :: uplo ! integer or character(1) variable
   integer :: trans ! integer or character(1) variable
   integer :: diag ! integer or character(1) variable
   integer :: m, n
   complex(8), device :: alpha ! device or host variable
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer :: batchCount 
 integer(4) function cublasZtrsmBatched_v2( h, side, uplo, trans, diag, m, n, alpha, A, lda, B, ldb, batchCount)
   type(cublasHandle) :: h
   integer :: side
   integer :: uplo
   integer :: trans
   integer :: diag
   integer :: m, n
   complex(8), device :: alpha ! device or host variable
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer :: batchCount 

2.5.51. cublasZmatinvBatched

cublasZmatinvBatched is a short cut of cublasZgetrfBatched plus cublasZgetriBatched. However it only works if n is less than 32. If not, the user has to go through cublasZgetrfBatched and cublasZgetriBatched.

 integer(4) function cublasZmatinvBatched(h, n, Aarray, lda, Ainv, lda_inv, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Ainv(*)
   integer :: lda_inv
   integer, device :: info(*)
   integer :: batchCount 

2.5.52. cublasZgeqrfBatched

ZGEQRF computes a QR factorization of a complex M-by-N matrix A: A = Q * R.

 integer(4) function cublasZgeqrfBatched(h, m, n, Aarray, lda, Tau, info, batchCount)
   type(cublasHandle) :: h
   integer :: m, n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Tau(*)
   integer :: info(*)
   integer :: batchCount 

2.5.53. cublasZgelsBatched

ZGELS solves overdetermined or underdetermined complex linear systems involving an M-by-N matrix A, or its conjugate-transpose, using a QR or LQ factorization of A. It is assumed that A has full rank. The following options are provided: 1. If TRANS = 'N' and m >= n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A*X ||. 2. If TRANS = 'N' and m < n: find the minimum norm solution of an underdetermined system A * X = B. 3. If TRANS = 'C' and m >= n: find the minimum norm solution of an undetermined system A**H * X = B. 4. If TRANS = 'C' and m < n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A**H * X ||. Several right hand side vectors b and solution vectors x can be handled in a single call; they are stored as the columns of the M-by-NRHS right hand side matrix B and the N-by-NRHS solution matrix X.

 integer(4) function cublasZgelsBatched(h, trans, m, n, nrhs, Aarray, lda, Carray, ldc, info, devinfo, batchCount)
   type(cublasHandle) :: h
   integer :: trans ! integer or character(1) variable
   integer :: m, n, nrhs
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: info(*)
   integer, device :: devinfo(*)
   integer :: batchCount 

2.5.54. cublasZgemmStridedBatched

ZGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 integer(4) function cublasZgemmStridedBatched(h, transa, transb, m, n, k, alpha, Aarray, lda, strideA, Barray, ldb, strideB, beta, Carray, ldc, strideC, batchCount)
   type(cublasHandle) :: h
   integer :: transa ! integer or character(1) variable
   integer :: transb ! integer or character(1) variable
   integer :: m, n, k
   complex(8), device :: alpha ! device or host variable
   complex(8), device :: Aarray(*)
   integer :: lda
   integer :: strideA
   complex(8), device :: Barray(*)
   integer :: ldb
   integer :: strideB
   complex(8), device :: beta ! device or host variable
   complex(8), device :: Carray(*)
   integer :: ldc
   integer :: strideC
   integer :: batchCount 
 integer(4) function cublasZgemmStridedBatched_v2(h, transa, transb, m, n, k, alpha,           Aarray, lda, strideA, Barray, ldb, strideB, beta, Carray, ldc, strideC, batchCount)
   type(cublasHandle) :: h
   integer :: transa
   integer :: transb
   integer :: m, n, k
   complex(8), device :: alpha ! device or host variable
   complex(8), device :: Aarray(*)
   integer :: lda
   integer :: strideA
   complex(8), device :: Barray(*)
   integer :: ldb
   integer :: strideB
   complex(8), device :: beta ! device or host variable
   complex(8), device :: Carray(*)
   integer :: ldc
   integer :: strideC
   integer :: batchCount 

2.6. CUBLAS V2 Module Functions

This section contains interfaces to the cuBLAS V2 Module Functions. Users can access this module by inserting the line use cublas_v2 into the program unit. One major difference in the cublas_v2 versus the cublas module is the cublas entry points, such as cublasIsamax are changed to take the handle as the first argument. The second difference in the cublas_v2 module is the v2 entry points, such as cublasIsamax_v2 do not implicitly handle the pointer modes for the user. It is up to the programmer to make calls to cublasSetPointerMode to tell the library if scalar arguments reside on the host or device. The actual interfaces to the v2 entry points do not change, and are not listed in this section.

2.6.1. Single Precision Functions and Subroutines

This section contains the V2 interfaces to the single precision BLAS and cuBLAS functions and subroutines.

2.6.1.1. isamax

If you use the cublas_v2 module, the interface for cublasIsamax is changed to the following:

 integer(4) function cublasIsamax(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.6.1.2. isamin

If you use the cublas_v2 module, the interface for cublasIsamin is changed to the following:

 integer(4) function cublasIsamin(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.6.1.3. sasum

If you use the cublas_v2 module, the interface for cublasSasum is changed to the following:

 integer(4) function cublasSasum(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx
   real(4), device :: res ! device or host variable 

2.6.1.4. saxpy

If you use the cublas_v2 module, the interface for cublasSaxpy is changed to the following:

 integer(4) function cublasSaxpy(h, n, a, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: a ! device or host variable
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.1.5. scopy

If you use the cublas_v2 module, the interface for cublasScopy is changed to the following:

 integer(4) function cublasScopy(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.1.6. sdot

If you use the cublas_v2 module, the interface for cublasSdot is changed to the following:

 integer(4) function cublasSdot(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy
   real(4), device :: res ! device or host variable 

2.6.1.7. snrm2

If you use the cublas_v2 module, the interface for cublasSnrm2 is changed to the following:

 integer(4) function cublasSnrm2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx
   real(4), device :: res ! device or host variable 

2.6.1.8. srot

If you use the cublas_v2 module, the interface for cublasSrot is changed to the following:

 integer(4) function cublasSrot(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: sc, ss ! device or host variable
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.1.9. srotg

If you use the cublas_v2 module, the interface for cublasSrotg is changed to the following:

 integer(4) function cublasSrotg(h, sa, sb, sc, ss)
   type(cublasHandle) :: h
   real(4), device :: sa, sb, sc, ss ! device or host variable 

2.6.1.10. srotm

If you use the cublas_v2 module, the interface for cublasSrotm is changed to the following:

 integer(4) function cublasSrotm(h, n, x, incx, y, incy, param)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: param(*) ! device or host variable
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.1.11. srotmg

If you use the cublas_v2 module, the interface for cublasSrotmg is changed to the following:

 integer(4) function cublasSrotmg(h, d1, d2, x1, y1, param)
   type(cublasHandle) :: h
   real(4), device :: d1, d2, x1, y1, param(*) ! device or host variable 

2.6.1.12. sscal

If you use the cublas_v2 module, the interface for cublasSscal is changed to the following:

 integer(4) function cublasSscal(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: a ! device or host variable
   real(4), device, dimension(*) :: x
   integer :: incx 

2.6.1.13. sswap

If you use the cublas_v2 module, the interface for cublasSswap is changed to the following:

 integer(4) function cublasSswap(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.1.14. sgbmv

If you use the cublas_v2 module, the interface for cublasSgbmv is changed to the following:

 integer(4) function cublasSgbmv(h, t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, kl, ku, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha, beta ! device or host variable 

2.6.1.15. sgemv

If you use the cublas_v2 module, the interface for cublasSgemv is changed to the following:

 integer(4) function cublasSgemv(h, t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha, beta ! device or host variable 

2.6.1.16. sger

If you use the cublas_v2 module, the interface for cublasSger is changed to the following:

 integer(4) function cublasSger(h, m, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha ! device or host variable 

2.6.1.17. ssbmv

If you use the cublas_v2 module, the interface for cublasSsbmv is changed to the following:

 integer(4) function cublasSsbmv(h, t, n, k, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: k, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha, beta ! device or host variable 

2.6.1.18. sspmv

If you use the cublas_v2 module, the interface for cublasSspmv is changed to the following:

 integer(4) function cublasSspmv(h, t, n, alpha, a, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   real(4), device, dimension(*) :: a, x, y
   real(4), device :: alpha, beta ! device or host variable 

2.6.1.19. sspr

If you use the cublas_v2 module, the interface for cublasSspr is changed to the following:

 integer(4) function cublasSspr(h, t, n, alpha, x, incx, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx
   real(4), device, dimension(*) :: a, x
   real(4), device :: alpha ! device or host variable 

2.6.1.20. sspr2

If you use the cublas_v2 module, the interface for cublasSspr2 is changed to the following:

 integer(4) function cublasSspr2(h, t, n, alpha, x, incx, y, incy, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   real(4), device, dimension(*) :: a, x, y
   real(4), device :: alpha ! device or host variable 

2.6.1.21. ssymv

If you use the cublas_v2 module, the interface for cublasSsymv is changed to the following:

 integer(4) function cublasSsymv(h, uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha, beta ! device or host variable 

2.6.1.22. ssyr

If you use the cublas_v2 module, the interface for cublasSsyr is changed to the following:

 integer(4) function cublasSsyr(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x
   real(4), device :: alpha ! device or host variable 

2.6.1.23. ssyr2

If you use the cublas_v2 module, the interface for cublasSsyr2 is changed to the following:

 integer(4) function cublasSsyr2(h, t, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4), device :: alpha ! device or host variable 

2.6.1.24. stbmv

If you use the cublas_v2 module, the interface for cublasStbmv is changed to the following:

 integer(4) function cublasStbmv(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 

2.6.1.25. stbsv

If you use the cublas_v2 module, the interface for cublasStbsv is changed to the following:

 integer(4) function cublasStbsv(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 

2.6.1.26. stpmv

If you use the cublas_v2 module, the interface for cublasStpmv is changed to the following:

 integer(4) function cublasStpmv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   real(4), device, dimension(*) :: a, x 

2.6.1.27. stpsv

If you use the cublas_v2 module, the interface for cublasStpsv is changed to the following:

 integer(4) function cublasStpsv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   real(4), device, dimension(*) :: a, x 

2.6.1.28. strmv

If you use the cublas_v2 module, the interface for cublasStrmv is changed to the following:

 integer(4) function cublasStrmv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 

2.6.1.29. strsv

If you use the cublas_v2 module, the interface for cublasStrsv is changed to the following:

 integer(4) function cublasStrsv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 

2.6.1.30. sgemm

If you use the cublas_v2 module, the interface for cublasSgemm is changed to the following:

 integer(4) function cublasSgemm(h, transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 

2.6.1.31. ssymm

If you use the cublas_v2 module, the interface for cublasSsymm is changed to the following:

 integer(4) function cublasSsymm(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 

2.6.1.32. ssyrk

If you use the cublas_v2 module, the interface for cublasSsyrk is changed to the following:

 integer(4) function cublasSsyrk(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 

2.6.1.33. ssyr2k

If you use the cublas_v2 module, the interface for cublasSsyr2k is changed to the following:

 integer(4) function cublasSsyr2k(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 

2.6.1.34. ssyrkx

If you use the cublas_v2 module, the interface for cublasSsyrkx is changed to the following:

 integer(4) function cublasSsyrkx(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 

2.6.1.35. strmm

If you use the cublas_v2 module, the interface for cublasStrmm is changed to the following:

 integer(4) function cublasStrmm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha ! device or host variable 

2.6.1.36. strsm

If you use the cublas_v2 module, the interface for cublasStrsm is changed to the following:

 integer(4) function cublasStrsm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device :: alpha ! device or host variable 

2.6.2. Double Precision Functions and Subroutines

This section contains the V2 interfaces to the double precision BLAS and cuBLAS functions and subroutines.

2.6.2.1. idamax

If you use the cublas_v2 module, the interface for cublasIdamax is changed to the following:

 integer(4) function cublasIdamax(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.6.2.2. idamin

If you use the cublas_v2 module, the interface for cublasIdamin is changed to the following:

 integer(4) function cublasIdamin(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.6.2.3. dasum

If you use the cublas_v2 module, the interface for cublasDasum is changed to the following:

 integer(4) function cublasDasum(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx
   real(8), device :: res ! device or host variable 

2.6.2.4. daxpy

If you use the cublas_v2 module, the interface for cublasDaxpy is changed to the following:

 integer(4) function cublasDaxpy(h, n, a, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: a ! device or host variable
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.2.5. dcopy

If you use the cublas_v2 module, the interface for cublasDcopy is changed to the following:

 integer(4) function cublasDcopy(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.2.6. ddot

If you use the cublas_v2 module, the interface for cublasDdot is changed to the following:

 integer(4) function cublasDdot(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy
   real(8), device :: res ! device or host variable 

2.6.2.7. dnrm2

If you use the cublas_v2 module, the interface for cublasDnrm2 is changed to the following:

 integer(4) function cublasDnrm2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx
   real(8), device :: res ! device or host variable 

2.6.2.8. drot

If you use the cublas_v2 module, the interface for cublasDrot is changed to the following:

 integer(4) function cublasDrot(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: sc, ss ! device or host variable
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.2.9. drotg

If you use the cublas_v2 module, the interface for cublasDrotg is changed to the following:

 integer(4) function cublasDrotg(h, sa, sb, sc, ss)
   type(cublasHandle) :: h
   real(8), device :: sa, sb, sc, ss ! device or host variable 

2.6.2.10. drotm

If you use the cublas_v2 module, the interface for cublasDrotm is changed to the following:

 integer(4) function cublasDrotm(h, n, x, incx, y, incy, param)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: param(*) ! device or host variable
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.2.11. drotmg

If you use the cublas_v2 module, the interface for cublasDrotmg is changed to the following:

 integer(4) function cublasDrotmg(h, d1, d2, x1, y1, param)
   type(cublasHandle) :: h
   real(8), device :: d1, d2, x1, y1, param(*) ! device or host variable 

2.6.2.12. dscal

If you use the cublas_v2 module, the interface for cublasDscal is changed to the following:

 integer(4) function cublasDscal(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: a ! device or host variable
   real(8), device, dimension(*) :: x
   integer :: incx 

2.6.2.13. dswap

If you use the cublas_v2 module, the interface for cublasDswap is changed to the following:

 integer(4) function cublasDswap(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.2.14. dgbmv

If you use the cublas_v2 module, the interface for cublasDgbmv is changed to the following:

 integer(4) function cublasDgbmv(h, t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, kl, ku, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha, beta ! device or host variable 

2.6.2.15. dgemv

If you use the cublas_v2 module, the interface for cublasDgemv is changed to the following:

 integer(4) function cublasDgemv(h, t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha, beta ! device or host variable 

2.6.2.16. dger

If you use the cublas_v2 module, the interface for cublasDger is changed to the following:

 integer(4) function cublasDger(h, m, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha ! device or host variable 

2.6.2.17. dsbmv

If you use the cublas_v2 module, the interface for cublasDsbmv is changed to the following:

 integer(4) function cublasDsbmv(h, t, n, k, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: k, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha, beta ! device or host variable 

2.6.2.18. dspmv

If you use the cublas_v2 module, the interface for cublasDspmv is changed to the following:

 integer(4) function cublasDspmv(h, t, n, alpha, a, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   real(8), device, dimension(*) :: a, x, y
   real(8), device :: alpha, beta ! device or host variable 

2.6.2.19. dspr

If you use the cublas_v2 module, the interface for cublasDspr is changed to the following:

 integer(4) function cublasDspr(h, t, n, alpha, x, incx, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx
   real(8), device, dimension(*) :: a, x
   real(8), device :: alpha ! device or host variable 

2.6.2.20. dspr2

If you use the cublas_v2 module, the interface for cublasDspr2 is changed to the following:

 integer(4) function cublasDspr2(h, t, n, alpha, x, incx, y, incy, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   real(8), device, dimension(*) :: a, x, y
   real(8), device :: alpha ! device or host variable 

2.6.2.21. dsymv

If you use the cublas_v2 module, the interface for cublasDsymv is changed to the following:

 integer(4) function cublasDsymv(h, uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha, beta ! device or host variable 

2.6.2.22. dsyr

If you use the cublas_v2 module, the interface for cublasDsyr is changed to the following:

 integer(4) function cublasDsyr(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x
   real(8), device :: alpha ! device or host variable 

2.6.2.23. dsyr2

If you use the cublas_v2 module, the interface for cublasDsyr2 is changed to the following:

 integer(4) function cublasDsyr2(h, t, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8), device :: alpha ! device or host variable 

2.6.2.24. dtbmv

If you use the cublas_v2 module, the interface for cublasDtbmv is changed to the following:

 integer(4) function cublasDtbmv(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 

2.6.2.25. dtbsv

If you use the cublas_v2 module, the interface for cublasDtbsv is changed to the following:

 integer(4) function cublasDtbsv(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 

2.6.2.26. dtpmv

If you use the cublas_v2 module, the interface for cublasDtpmv is changed to the following:

 integer(4) function cublasDtpmv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   real(8), device, dimension(*) :: a, x 

2.6.2.27. dtpsv

If you use the cublas_v2 module, the interface for cublasDtpsv is changed to the following:

 integer(4) function cublasDtpsv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   real(8), device, dimension(*) :: a, x 

2.6.2.28. dtrmv

If you use the cublas_v2 module, the interface for cublasDtrmv is changed to the following:

 integer(4) function cublasDtrmv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 

2.6.2.29. dtrsv

If you use the cublas_v2 module, the interface for cublasDtrsv is changed to the following:

 integer(4) function cublasDtrsv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 

2.6.2.30. dgemm

If you use the cublas_v2 module, the interface for cublasDgemm is changed to the following:

 integer(4) function cublasDgemm(h, transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 

2.6.2.31. dsymm

If you use the cublas_v2 module, the interface for cublasDsymm is changed to the following:

 integer(4) function cublasDsymm(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 

2.6.2.32. dsyrk

If you use the cublas_v2 module, the interface for cublasDsyrk is changed to the following:

 integer(4) function cublasDsyrk(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 

2.6.2.33. dsyr2k

If you use the cublas_v2 module, the interface for cublasDsyr2k is changed to the following:

 integer(4) function cublasDsyr2k(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 

2.6.2.34. dsyrkx

If you use the cublas_v2 module, the interface for cublasDsyrkx is changed to the following:

 integer(4) function cublasDsyrkx(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 

2.6.2.35. dtrmm

If you use the cublas_v2 module, the interface for cublasDtrmm is changed to the following:

 integer(4) function cublasDtrmm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha ! device or host variable 

2.6.2.36. dtrsm

If you use the cublas_v2 module, the interface for cublasDtrsm is changed to the following:

 integer(4) function cublasDtrsm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device :: alpha ! device or host variable 

2.6.3. Single Precision Complex Functions and Subroutines

This section contains the V2 interfaces to the single precision complex BLAS and cuBLAS functions and subroutines.

2.6.3.1. icamax

If you use the cublas_v2 module, the interface for cublasIcamax is changed to the following:

 integer(4) function cublasIcamax(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.6.3.2. icamin

If you use the cublas_v2 module, the interface for cublasIcamin is changed to the following:

 integer(4) function cublasIcamin(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.6.3.3. scasum

If you use the cublas_v2 module, the interface for cublasScasum is changed to the following:

 integer(4) function cublasScasum(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx
   real(4), device :: res ! device or host variable 

2.6.3.4. caxpy

If you use the cublas_v2 module, the interface for cublasCaxpy is changed to the following:

 integer(4) function cublasCaxpy(h, n, a, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device :: a ! device or host variable
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.3.5. ccopy

If you use the cublas_v2 module, the interface for cublasCcopy is changed to the following:

 integer(4) function cublasCcopy(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.3.6. cdotc

If you use the cublas_v2 module, the interface for cublasCdotc is changed to the following:

 integer(4) function cublasCdotc(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy
   complex(4), device :: res ! device or host variable 

2.6.3.7. cdotu

If you use the cublas_v2 module, the interface for cublasCdotu is changed to the following:

 integer(4) function cublasCdotu(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy
   complex(4), device :: res ! device or host variable 

2.6.3.8. scnrm2

If you use the cublas_v2 module, the interface for cublasScnrm2 is changed to the following:

 integer(4) function cublasScnrm2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx
   real(4), device :: res ! device or host variable 

2.6.3.9. crot

If you use the cublas_v2 module, the interface for cublasCrot is changed to the following:

 integer(4) function cublasCrot(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: sc ! device or host variable
   complex(4), device :: ss ! device or host variable
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.3.10. csrot

If you use the cublas_v2 module, the interface for cublasCsrot is changed to the following:

 integer(4) function cublasCsrot(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: sc, ss ! device or host variable
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.3.11. crotg

If you use the cublas_v2 module, the interface for cublasCrotg is changed to the following:

 integer(4) function cublasCrotg(h, sa, sb, sc, ss)
   type(cublasHandle) :: h
   complex(4), device :: sa, sb, ss ! device or host variable
   real(4), device :: sc ! device or host variable 

2.6.3.12. cscal

If you use the cublas_v2 module, the interface for cublasCscal is changed to the following:

 integer(4) function cublasCscal(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device :: a ! device or host variable
   complex(4), device, dimension(*) :: x
   integer :: incx 

2.6.3.13. csscal

If you use the cublas_v2 module, the interface for cublasCsscal is changed to the following:

 integer(4) function cublasCsscal(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   real(4), device :: a ! device or host variable
   complex(4), device, dimension(*) :: x
   integer :: incx 

2.6.3.14. cswap

If you use the cublas_v2 module, the interface for cublasCswap is changed to the following:

 integer(4) function cublasCswap(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.3.15. cgbmv

If you use the cublas_v2 module, the interface for cublasCgbmv is changed to the following:

 integer(4) function cublasCgbmv(h, t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, kl, ku, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 

2.6.3.16. cgemv

If you use the cublas_v2 module, the interface for cublasCgemv is changed to the following:

 integer(4) function cublasCgemv(h, t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 

2.6.3.17. cgerc

If you use the cublas_v2 module, the interface for cublasCgerc is changed to the following:

 integer(4) function cublasCgerc(h, m, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha ! device or host variable 

2.6.3.18. cgeru

If you use the cublas_v2 module, the interface for cublasCgeru is changed to the following:

 integer(4) function cublasCgeru(h, m, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha ! device or host variable 

2.6.3.19. csymv

If you use the cublas_v2 module, the interface for cublasCsymv is changed to the following:

 integer(4) function cublasCsymv(h, uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 

2.6.3.20. csyr

If you use the cublas_v2 module, the interface for cublasCsyr is changed to the following:

 integer(4) function cublasCsyr(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x
   complex(4), device :: alpha ! device or host variable 

2.6.3.21. csyr2

If you use the cublas_v2 module, the interface for cublasCsyr2 is changed to the following:

 integer(4) function cublasCsyr2(h, t, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha ! device or host variable 

2.6.3.22. ctbmv

If you use the cublas_v2 module, the interface for cublasCtbmv is changed to the following:

 integer(4) function cublasCtbmv(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 

2.6.3.23. ctbsv

If you use the cublas_v2 module, the interface for cublasCtbsv is changed to the following:

 integer(4) function cublasCtbsv(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 

2.6.3.24. ctpmv

If you use the cublas_v2 module, the interface for cublasCtpmv is changed to the following:

 integer(4) function cublasCtpmv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x 

2.6.3.25. ctpsv

If you use the cublas_v2 module, the interface for cublasCtpsv is changed to the following:

 integer(4) function cublasCtpsv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x 

2.6.3.26. ctrmv

If you use the cublas_v2 module, the interface for cublasCtrmv is changed to the following:

 integer(4) function cublasCtrmv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 

2.6.3.27. ctrsv

If you use the cublas_v2 module, the interface for cublasCtrsv is changed to the following:

 integer(4) function cublasCtrsv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 

2.6.3.28. chbmv

If you use the cublas_v2 module, the interface for cublasChbmv is changed to the following:

 integer(4) function cublasChbmv(h, uplo, n, k, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: k, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 

2.6.3.29. chemv

If you use the cublas_v2 module, the interface for cublasChemv is changed to the following:

 integer(4) function cublasChemv(h, uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4), device :: alpha, beta ! device or host variable 

2.6.3.30. chpmv

If you use the cublas_v2 module, the interface for cublasChpmv is changed to the following:

 integer(4) function cublasChpmv(h, uplo, n, alpha, a, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, incx, incy
   complex(4), device, dimension(*) :: a, x, y
   complex(4), device :: alpha, beta ! device or host variable 

2.6.3.31. cher

If you use the cublas_v2 module, the interface for cublasCher is changed to the following:

 integer(4) function cublasCher(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   complex(4), device, dimension(*) :: a, x
   real(4), device :: alpha ! device or host variable 

2.6.3.32. cher2

If you use the cublas_v2 module, the interface for cublasCher2 is changed to the following:

 integer(4) function cublasCher2(h, t, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   complex(4), device, dimension(*) :: a, x, y
   complex(4), device :: alpha ! device or host variable 

2.6.3.33. chpr

If you use the cublas_v2 module, the interface for cublasChpr is changed to the following:

 integer(4) function cublasChpr(h, t, n, alpha, x, incx, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x
   real(4), device :: alpha ! device or host variable 

2.6.3.34. chpr2

If you use the cublas_v2 module, the interface for cublasChpr2 is changed to the following:

 integer(4) function cublasChpr2(h, t, n, alpha, x, incx, y, incy, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   complex(4), device, dimension(*) :: a, x, y
   complex(4), device :: alpha ! device or host variable 

2.6.3.35. cgemm

If you use the cublas_v2 module, the interface for cublasCgemm is changed to the following:

 integer(4) function cublasCgemm(h, transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 

2.6.3.36. csymm

If you use the cublas_v2 module, the interface for cublasCsymm is changed to the following:

 integer(4) function cublasCsymm(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 

2.6.3.37. csyrk

If you use the cublas_v2 module, the interface for cublasCsyrk is changed to the following:

 integer(4) function cublasCsyrk(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 

2.6.3.38. csyr2k

If you use the cublas_v2 module, the interface for cublasCsyr2k is changed to the following:

 integer(4) function cublasCsyr2k(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 

2.6.3.39. csyrkx

If you use the cublas_v2 module, the interface for cublasCsyrkx is changed to the following:

 integer(4) function cublasCsyrkx(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 

2.6.3.40. ctrmm

If you use the cublas_v2 module, the interface for cublasCtrmm is changed to the following:

 integer(4) function cublasCtrmm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha ! device or host variable 

2.6.3.41. ctrsm

If you use the cublas_v2 module, the interface for cublasCtrsm is changed to the following:

 integer(4) function cublasCtrsm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device :: alpha ! device or host variable 

2.6.3.42. chemm

If you use the cublas_v2 module, the interface for cublasChemm is changed to the following:

 integer(4) function cublasChemm(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha, beta ! device or host variable 

2.6.3.43. cherk

If you use the cublas_v2 module, the interface for cublasCherk is changed to the following:

 integer(4) function cublasCherk(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldc, *) :: c
   real(4), device :: alpha, beta ! device or host variable 

2.6.3.44. cher2k

If you use the cublas_v2 module, the interface for cublasCher2k is changed to the following:

 integer(4) function cublasCher2k(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha ! device or host variable
   real(4), device :: beta ! device or host variable 

2.6.3.45. cherkx

If you use the cublas_v2 module, the interface for cublasCherkx is changed to the following:

 integer(4) function cublasCherkx(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4), device :: alpha ! device or host variable
   real(4), device :: beta ! device or host variable 

2.6.4. Double Precision Complex Functions and Subroutines

This section contains the V2 interfaces to the double precision complex BLAS and cuBLAS functions and subroutines.

2.6.4.1. izamax

If you use the cublas_v2 module, the interface for cublasIzamax is changed to the following:

 integer(4) function cublasIzamax(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.6.4.2. izamin

If you use the cublas_v2 module, the interface for cublasIzamin is changed to the following:

 integer(4) function cublasIzamin(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx
   integer, device :: res ! device or host variable 

2.6.4.3. dzasum

If you use the cublas_v2 module, the interface for cublasDzasum is changed to the following:

 integer(4) function cublasDzasum(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx
   real(8), device :: res ! device or host variable 

2.6.4.4. zaxpy

If you use the cublas_v2 module, the interface for cublasZaxpy is changed to the following:

 integer(4) function cublasZaxpy(h, n, a, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device :: a ! device or host variable
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.4.5. zcopy

If you use the cublas_v2 module, the interface for cublasZcopy is changed to the following:

 integer(4) function cublasZcopy(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.4.6. zdotc

If you use the cublas_v2 module, the interface for cublasZdotc is changed to the following:

 integer(4) function cublasZdotc(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy
   complex(8), device :: res ! device or host variable 

2.6.4.7. zdotu

If you use the cublas_v2 module, the interface for cublasZdotu is changed to the following:

 integer(4) function cublasZdotu(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy
   complex(8), device :: res ! device or host variable 

2.6.4.8. dznrm2

If you use the cublas_v2 module, the interface for cublasDznrm2 is changed to the following:

 integer(4) function cublasDznrm2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx
   real(8), device :: res ! device or host variable 

2.6.4.9. zrot

If you use the cublas_v2 module, the interface for cublasZrot is changed to the following:

 integer(4) function cublasZrot(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: sc ! device or host variable
   complex(8), device :: ss ! device or host variable
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.4.10. zsrot

If you use the cublas_v2 module, the interface for cublasZsrot is changed to the following:

 integer(4) function cublasZsrot(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: sc, ss ! device or host variable
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.4.11. zrotg

If you use the cublas_v2 module, the interface for cublasZrotg is changed to the following:

 integer(4) function cublasZrotg(h, sa, sb, sc, ss)
   type(cublasHandle) :: h
   complex(8), device :: sa, sb, ss ! device or host variable
   real(8), device :: sc ! device or host variable 

2.6.4.12. zscal

If you use the cublas_v2 module, the interface for cublasZscal is changed to the following:

 integer(4) function cublasZscal(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device :: a ! device or host variable
   complex(8), device, dimension(*) :: x
   integer :: incx 

2.6.4.13. zdscal

If you use the cublas_v2 module, the interface for cublasZdscal is changed to the following:

 integer(4) function cublasZdscal(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   real(8), device :: a ! device or host variable
   complex(8), device, dimension(*) :: x
   integer :: incx 

2.6.4.14. zswap

If you use the cublas_v2 module, the interface for cublasZswap is changed to the following:

 integer(4) function cublasZswap(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.6.4.15. zgbmv

If you use the cublas_v2 module, the interface for cublasZgbmv is changed to the following:

 integer(4) function cublasZgbmv(h, t, m, n, kl, ku, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, kl, ku, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 

2.6.4.16. zgemv

If you use the cublas_v2 module, the interface for cublasZgemv is changed to the following:

 integer(4) function cublasZgemv(h, t, m, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 

2.6.4.17. zgerc

If you use the cublas_v2 module, the interface for cublasZgerc is changed to the following:

 integer(4) function cublasZgerc(h, m, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha ! device or host variable 

2.6.4.18. zgeru

If you use the cublas_v2 module, the interface for cublasZgeru is changed to the following:

 integer(4) function cublasZgeru(h, m, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha ! device or host variable 

2.6.4.19. zsymv

If you use the cublas_v2 module, the interface for cublasZsymv is changed to the following:

 integer(4) function cublasZsymv(h, uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 

2.6.4.20. zsyr

If you use the cublas_v2 module, the interface for cublasZsyr is changed to the following:

 integer(4) function cublasZsyr(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x
   complex(8), device :: alpha ! device or host variable 

2.6.4.21. zsyr2

If you use the cublas_v2 module, the interface for cublasZsyr2 is changed to the following:

 integer(4) function cublasZsyr2(h, t, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha ! device or host variable 

2.6.4.22. ztbmv

If you use the cublas_v2 module, the interface for cublasZtbmv is changed to the following:

 integer(4) function cublasZtbmv(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 

2.6.4.23. ztbsv

If you use the cublas_v2 module, the interface for cublasZtbsv is changed to the following:

 integer(4) function cublasZtbsv(h, u, t, d, n, k, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 

2.6.4.24. ztpmv

If you use the cublas_v2 module, the interface for cublasZtpmv is changed to the following:

 integer(4) function cublasZtpmv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x 

2.6.4.25. ztpsv

If you use the cublas_v2 module, the interface for cublasZtpsv is changed to the following:

 integer(4) function cublasZtpsv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x 

2.6.4.26. ztrmv

If you use the cublas_v2 module, the interface for cublasZtrmv is changed to the following:

 integer(4) function cublasZtrmv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 

2.6.4.27. ztrsv

If you use the cublas_v2 module, the interface for cublasZtrsv is changed to the following:

 integer(4) function cublasZtrsv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 

2.6.4.28. zhbmv

If you use the cublas_v2 module, the interface for cublasZhbmv is changed to the following:

 integer(4) function cublasZhbmv(h, uplo, n, k, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: k, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 

2.6.4.29. zhemv

If you use the cublas_v2 module, the interface for cublasZhemv is changed to the following:

 integer(4) function cublasZhemv(h, uplo, n, alpha, a, lda, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8), device :: alpha, beta ! device or host variable 

2.6.4.30. zhpmv

If you use the cublas_v2 module, the interface for cublasZhpmv is changed to the following:

 integer(4) function cublasZhpmv(h, uplo, n, alpha, a, x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: uplo
   integer :: n, incx, incy
   complex(8), device, dimension(*) :: a, x, y
   complex(8), device :: alpha, beta ! device or host variable 

2.6.4.31. zher

If you use the cublas_v2 module, the interface for cublasZher is changed to the following:

 integer(4) function cublasZher(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   complex(8), device, dimension(*) :: a, x
   real(8), device :: alpha ! device or host variable 

2.6.4.32. zher2

If you use the cublas_v2 module, the interface for cublasZher2 is changed to the following:

 integer(4) function cublasZher2(h, t, n, alpha, x, incx, y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   complex(8), device, dimension(*) :: a, x, y
   complex(8), device :: alpha ! device or host variable 

2.6.4.33. zhpr

If you use the cublas_v2 module, the interface for cublasZhpr is changed to the following:

 integer(4) function cublasZhpr(h, t, n, alpha, x, incx, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x
   real(8), device :: alpha ! device or host variable 

2.6.4.34. zhpr2

If you use the cublas_v2 module, the interface for cublasZhpr2 is changed to the following:

 integer(4) function cublasZhpr2(h, t, n, alpha, x, incx, y, incy, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   complex(8), device, dimension(*) :: a, x, y
   complex(8), device :: alpha ! device or host variable 

2.6.4.35. zgemm

If you use the cublas_v2 module, the interface for cublasZgemm is changed to the following:

 integer(4) function cublasZgemm(h, transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 

2.6.4.36. zsymm

If you use the cublas_v2 module, the interface for cublasZsymm is changed to the following:

 integer(4) function cublasZsymm(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 

2.6.4.37. zsyrk

If you use the cublas_v2 module, the interface for cublasZsyrk is changed to the following:

 integer(4) function cublasZsyrk(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 

2.6.4.38. zsyr2k

If you use the cublas_v2 module, the interface for cublasZsyr2k is changed to the following:

 integer(4) function cublasZsyr2k(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 

2.6.4.39. zsyrkx

If you use the cublas_v2 module, the interface for cublasZsyrkx is changed to the following:

 integer(4) function cublasZsyrkx(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 

2.6.4.40. ztrmm

If you use the cublas_v2 module, the interface for cublasZtrmm is changed to the following:

 integer(4) function cublasZtrmm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha ! device or host variable 

2.6.4.41. ztrsm

If you use the cublas_v2 module, the interface for cublasZtrsm is changed to the following:

 integer(4) function cublasZtrsm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device :: alpha ! device or host variable 

2.6.4.42. zhemm

If you use the cublas_v2 module, the interface for cublasZhemm is changed to the following:

 integer(4) function cublasZhemm(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha, beta ! device or host variable 

2.6.4.43. zherk

If you use the cublas_v2 module, the interface for cublasZherk is changed to the following:

 integer(4) function cublasZherk(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldc, *) :: c
   real(8), device :: alpha, beta ! device or host variable 

2.6.4.44. zher2k

If you use the cublas_v2 module, the interface for cublasZher2k is changed to the following:

 integer(4) function cublasZher2k(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha ! device or host variable
   real(8), device :: beta ! device or host variable 

2.6.4.45. zherkx

If you use the cublas_v2 module, the interface for cublasZherkx is changed to the following:

 integer(4) function cublasZherkx(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8), device :: alpha ! device or host variable
   real(8), device :: beta ! device or host variable 

2.7. CUBLAS XT Module Functions

This section contains interfaces to the cuBLAS XT Module Functions. Users can access this module by inserting the line use cublasXt into the program unit. The cublasXt library is a host-side library, which supports multiple GPUs. Here is an example:

subroutine testxt(n)
use cublasXt
complex*16 :: a(n,n), b(n,n), c(n,n), alpha, beta
type(cublasXtHandle) :: h
integer ndevices(1)
a = cmplx(1.0d0,0.0d0)
b = cmplx(2.0d0,0.0d0)
c = cmplx(-1.0d0,0.0d0)
alpha = cmplx(1.0d0,0.0d0)
beta = cmplx(0.0d0,0.0d0)
istat = cublasXtCreate(h)
if (istat .ne. CUBLAS_STATUS_SUCCESS) print *,istat
ndevices(1) = 0
istat = cublasXtDeviceSelect(h, 1, ndevices)
if (istat .ne. CUBLAS_STATUS_SUCCESS) print *,istat
istat = cublasXtZgemm(h, CUBLAS_OP_N, CUBLAS_OP_N, &
                      n, n, n, &
                      alpha, A, n, B, n, beta, C, n)
if (istat .ne. CUBLAS_STATUS_SUCCESS) print *,istat
istat = cublasXtDestroy(h)
if (istat .ne. CUBLAS_STATUS_SUCCESS) print *,istat
if (all(dble(c).eq.2.0d0*n)) then
    print *,"Test PASSED"
else
    print *,"Test FAILED"
endif
end

The cublasXt module contains all the types and definitions from the cublas module, and these additional types and enumerations:

TYPE cublasXtHandle
  TYPE(C_PTR)  :: handle
END TYPE
! Pinned memory mode
enum, bind(c)
    enumerator :: CUBLASXT_PINNING_DISABLED=0
    enumerator :: CUBLASXT_PINNING_ENABLED=1
end enum 
! cublasXtOpType
enum, bind(c)
    enumerator :: CUBLASXT_FLOAT=0
    enumerator :: CUBLASXT_DOUBLE=1
    enumerator :: CUBLASXT_COMPLEX=2
    enumerator :: CUBLASXT_DOUBLECOMPLEX=3
end enum 
! cublasXtBlasOp
enum, bind(c)
    enumerator :: CUBLASXT_GEMM=0
    enumerator :: CUBLASXT_SYRK=1
    enumerator :: CUBLASXT_HERK=2
    enumerator :: CUBLASXT_SYMM=3
    enumerator :: CUBLASXT_HEMM=4
    enumerator :: CUBLASXT_TRSM=5
    enumerator :: CUBLASXT_SYR2K=6
    enumerator :: CUBLASXT_HER2K=7
    enumerator :: CUBLASXT_SPMM=8
    enumerator :: CUBLASXT_SYRKX=9
    enumerator :: CUBLASXT_HERKX=10
    enumerator :: CUBLASXT_TRMM=11
    enumerator :: CUBLASXT_ROUTINE_MAX=12
end enum

2.7.1. cublasXtCreate

This function initializes the cublasXt API and creates a handle to an opaque structure holding the cublasXT library context. It allocates hardware resources on the host and device and must be called prior to making any other cublasXt API library calls.

 integer(4) function cublasXtcreate(h)
   type(cublasXtHandle) :: h 

2.7.2. cublasXtDestroy

This function releases hardware resources used by the cublasXt API context. This function is usually the last call with a particular handle to the cublasXt API.

 integer(4) function cublasXtdestroy(h)
   type(cublasXtHandle) :: h 

2.7.3. cublasXtDeviceSelect

This function allows the user to provide the number of GPU devices and their respective Ids that will participate to the subsequent cublasXt API math function calls. This function will create a cuBLAS context for every GPU provided in that list. Currently the device configuration is static and cannot be changed between math function calls. In that regard, this function should be called only once after cublasXtCreate. To be able to run multiple configurations, multiple cublasXt API contexts should be created.

 integer(4) function cublasXtdeviceselect(h, ndevices, deviceid)
   type(cublasXtHandle) :: h
   integer :: ndevices
   integer, dimension(*) :: deviceid 

2.7.4. cublasXtSetBlockDim

This function allows the user to set the block dimension used for the tiling of the matrices for the subsequent Math function calls. Matrices are split in square tiles of blockDim x blockDim dimension. This function can be called anytime and will take effect for the following math function calls. The block dimension should be chosen in a way to optimize the math operation and to make sure that the PCI transfers are well overlapped with the computation.

 integer(4) function cublasXtsetblockdim(h, blockdim)
   type(cublasXtHandle) :: h
   integer :: blockdim 

2.7.5. cublasXtGetBlockDim

This function allows the user to query the block dimension used for the tiling of the matrices.

 integer(4) function cublasXtgetblockdim(h, blockdim)
   type(cublasXtHandle) :: h
   integer :: blockdim 

2.7.6. cublasXtSetCpuRoutine

This function allows the user to provide a CPU implementation of the corresponding BLAS routine. This function can be used with the function cublasXtSetCpuRatio() to define an hybrid computation between the CPU and the GPUs. Currently the hybrid feature is only supported for the xGEMM routines.

 integer(4) function cublasXtsetcpuroutine(h, blasop, blastype)
   type(cublasXtHandle) :: h
   integer :: blasop, blastype 

2.7.7. cublasXtSetCpuRatio

This function allows the user to define the percentage of workload that should be done on a CPU in the context of an hybrid computation. This function can be used with the function cublasXtSetCpuRoutine() to define an hybrid computation between the CPU and the GPUs. Currently the hybrid feature is only supported for the xGEMM routines.

 integer(4) function cublasXtsetcpuratio(h, blasop, blastype, ratio)
   type(cublasXtHandle) :: h
   integer :: blasop, blastype
   real(4) :: ratio 

2.7.8. cublasXtSetPinningMemMode

This function allows the user to enable or disable the Pinning Memory mode. When enabled, the matrices passed in subsequent cublasXt API calls will be pinned/unpinned using the CUDART routine cudaHostRegister and cudaHostUnregister respectively if the matrices are not already pinned. If a matrix happened to be pinned partially, it will also not be pinned. Pinning the memory improve PCI transfer performace and allows to overlap PCI memory transfer with computation. However pinning/unpinning the memory takes some time which might not be amortized. It is advised that the user pins the memory on its own using cudaMallocHost or cudaHostRegister and unpins it when the computation sequence is completed. By default, the Pinning Memory mode is disabled.

 integer(4) function cublasXtsetpinningmemmode(h, mode)
   type(cublasXtHandle) :: h
   integer :: mode 

2.7.9. cublasXtGetPinningMemMode

This function allows the user to query the Pinning Memory mode. By default, the Pinning Memory mode is disabled.

 integer(4) function cublasXtgetpinningmemmode(h, mode)
   type(cublasXtHandle) :: h
   integer :: mode 

2.7.10. cublasXtSgemm

SGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 integer(4) function cublasXtsgemm(h, transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: transa, transb
   integer(kind=c_intptr_t) :: m, n, k, lda, ldb, ldc
   real(4), dimension(lda, *) :: a
   real(4), dimension(ldb, *) :: b
   real(4), dimension(ldc, *) :: c
   real(4) :: alpha, beta 

2.7.11. cublasXtSsymm

SSYMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a symmetric matrix and B and C are m by n matrices.

 integer(4) function cublasXtssymm(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo
   integer(kind=c_intptr_t) :: m, n, lda, ldb, ldc
   real(4), dimension(lda, *) :: a
   real(4), dimension(ldb, *) :: b
   real(4), dimension(ldc, *) :: c
   real(4) :: alpha, beta 

2.7.12. cublasXtSsyrk

SSYRK performs one of the symmetric rank k operations C := alpha*A*A**T + beta*C, or C := alpha*A**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A is an n by k matrix in the first case and a k by n matrix in the second case.

 integer(4) function cublasXtssyrk(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldc
   real(4), dimension(lda, *) :: a
   real(4), dimension(ldc, *) :: c
   real(4) :: alpha, beta 

2.7.13. cublasXtSsyr2k

SSYR2K performs one of the symmetric rank 2k operations C := alpha*A*B**T + alpha*B*A**T + beta*C, or C := alpha*A**T*B + alpha*B**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A and B are n by k matrices in the first case and k by n matrices in the second case.

 integer(4) function cublasXtssyr2k(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldb, ldc
   real(4), dimension(lda, *) :: a
   real(4), dimension(ldb, *) :: b
   real(4), dimension(ldc, *) :: c
   real(4) :: alpha, beta 

2.7.14. cublasXtSsyrkx

SSYRKX performs a variation of the symmetric rank k update C := alpha*A*B**T + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix stored in lower or upper mode, and A and B are n by k matrices. This routine can be used when B is in such a way that the result is guaranteed to be symmetric. See the CUBLAS documentation for more details.

 integer(4) function cublasXtssyrkx(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldb, ldc
   real(4), dimension(lda, *) :: a
   real(4), dimension(ldb, *) :: b
   real(4), dimension(ldc, *) :: c
   real(4) :: alpha, beta 

2.7.15. cublasXtStrmm

STRMM performs one of the matrix-matrix operations B := alpha*op( A )*B, or B := alpha*B*op( A ), where alpha is a scalar, B is an m by n matrix, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T.

 integer(4) function cublasXtstrmm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo, transa, diag
   integer(kind=c_intptr_t) :: m, n, lda, ldb, ldc
   real(4), dimension(lda, *) :: a
   real(4), dimension(ldb, *) :: b
   real(4), dimension(ldc, *) :: c
   real(4) :: alpha 

2.7.16. cublasXtStrsm

STRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T. The matrix X is overwritten on B.

 integer(4) function cublasXtstrsm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   type(cublasXtHandle) :: h
   integer :: side, uplo, transa, diag
   integer(kind=c_intptr_t) :: m, n, lda, ldb
   real(4), dimension(lda, *) :: a
   real(4), dimension(ldb, *) :: b
   real(4) :: alpha 

2.7.17. cublasXtSspmm

SSPMM performs one of the symmetric packed matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a n by n symmetric matrix stored in packed format, and B and C are m by n matrices.

 integer(4) function cublasXtsspmm(h, side, uplo, m, n, alpha, ap, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo
   integer(kind=c_intptr_t) :: m, n, ldb, ldc
   real(4), dimension(*) :: ap
   real(4), dimension(ldb, *) :: b
   real(4), dimension(ldc, *) :: c
   real(4) :: alpha, beta 

2.7.18. cublasXtCgemm

CGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T or op( X ) = X**H, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 integer(4) function cublasXtcgemm(h, transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: transa, transb
   integer(kind=c_intptr_t) :: m, n, k, lda, ldb, ldc
   complex(4), dimension(lda, *) :: a
   complex(4), dimension(ldb, *) :: b
   complex(4), dimension(ldc, *) :: c
   complex(4) :: alpha, beta 

2.7.19. cublasXtChemm

CHEMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is an hermitian matrix and B and C are m by n matrices.

 integer(4) function cublasXtchemm(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo
   integer(kind=c_intptr_t) :: m, n, lda, ldb, ldc
   complex(4), dimension(lda, *) :: a
   complex(4), dimension(ldb, *) :: b
   complex(4), dimension(ldc, *) :: c
   complex(4) :: alpha, beta 

2.7.20. cublasXtCherk

CHERK performs one of the hermitian rank k operations C := alpha*A*A**H + beta*C, or C := alpha*A**H*A + beta*C, where alpha and beta are real scalars, C is an n by n hermitian matrix and A is an n by k matrix in the first case and a k by n matrix in the second case.

 integer(4) function cublasXtcherk(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldc
   complex(4), dimension(lda, *) :: a
   complex(4), dimension(ldc, *) :: c
   real(4) :: alpha, beta 

2.7.21. cublasXtCher2k

CHER2K performs one of the hermitian rank 2k operations C := alpha*A*B**H + conjg( alpha )*B*A**H + beta*C, or C := alpha*A**H*B + conjg( alpha )*B**H*A + beta*C, where alpha and beta are scalars with beta real, C is an n by n hermitian matrix and A and B are n by k matrices in the first case and k by n matrices in the second case.

 integer(4) function cublasXtcher2k(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldb, ldc
   complex(4), dimension(lda, *) :: a
   complex(4), dimension(ldb, *) :: b
   complex(4), dimension(ldc, *) :: c
   complex(4) :: alpha
   real(4) :: beta 

2.7.22. cublasXtCherkx

CHERKX performs a variation of the hermitian rank k operations C := alpha*A*B**H + beta*C, where alpha and beta are real scalars, C is an n by n hermitian matrix stored in lower or upper mode, and A and B are n by k matrices. See the CUBLAS documentation for more details.

 integer(4) function cublasXtcherkx(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldb, ldc
   complex(4), dimension(lda, *) :: a
   complex(4), dimension(ldb, *) :: b
   complex(4), dimension(ldc, *) :: c
   complex(4) :: alpha
   real(4) :: beta 

2.7.23. cublasXtCsymm

CSYMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a symmetric matrix and B and C are m by n matrices.

 integer(4) function cublasXtcsymm(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo
   integer(kind=c_intptr_t) :: m, n, lda, ldb, ldc
   complex(4), dimension(lda, *) :: a
   complex(4), dimension(ldb, *) :: b
   complex(4), dimension(ldc, *) :: c
   complex(4) :: alpha, beta 

2.7.24. cublasXtCsyrk

CSYRK performs one of the symmetric rank k operations C := alpha*A*A**T + beta*C, or C := alpha*A**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A is an n by k matrix in the first case and a k by n matrix in the second case.

 integer(4) function cublasXtcsyrk(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldc
   complex(4), dimension(lda, *) :: a
   complex(4), dimension(ldc, *) :: c
   complex(4) :: alpha, beta 

2.7.25. cublasXtCsyr2k

CSYR2K performs one of the symmetric rank 2k operations C := alpha*A*B**T + alpha*B*A**T + beta*C, or C := alpha*A**T*B + alpha*B**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A and B are n by k matrices in the first case and k by n matrices in the second case.

 integer(4) function cublasXtcsyr2k(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldb, ldc
   complex(4), dimension(lda, *) :: a
   complex(4), dimension(ldb, *) :: b
   complex(4), dimension(ldc, *) :: c
   complex(4) :: alpha, beta 

2.7.26. cublasXtCsyrkx

CSYRKX performs a variation of the symmetric rank k update C := alpha*A*B**T + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix stored in lower or upper mode, and A and B are n by k matrices. This routine can be used when B is in such a way that the result is guaranteed to be symmetric. See the CUBLAS documentation for more details.

 integer(4) function cublasXtcsyrkx(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldb, ldc
   complex(4), dimension(lda, *) :: a
   complex(4), dimension(ldb, *) :: b
   complex(4), dimension(ldc, *) :: c
   complex(4) :: alpha, beta 

2.7.27. cublasXtCtrmm

CTRMM performs one of the matrix-matrix operations B := alpha*op( A )*B, or B := alpha*B*op( A ) where alpha is a scalar, B is an m by n matrix, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H.

 integer(4) function cublasXtctrmm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo, transa, diag
   integer(kind=c_intptr_t) :: m, n, lda, ldb, ldc
   complex(4), dimension(lda, *) :: a
   complex(4), dimension(ldb, *) :: b
   complex(4), dimension(ldc, *) :: c
   complex(4) :: alpha 

2.7.28. cublasXtCtrsm

CTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H. The matrix X is overwritten on B.

 integer(4) function cublasXtctrsm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   type(cublasXtHandle) :: h
   integer :: side, uplo, transa, diag
   integer(kind=c_intptr_t) :: m, n, lda, ldb
   complex(4), dimension(lda, *) :: a
   complex(4), dimension(ldb, *) :: b
   complex(4) :: alpha 

2.7.29. cublasXtCspmm

CSPMM performs one of the symmetric packed matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a n by n symmetric matrix stored in packed format, and B and C are m by n matrices.

 integer(4) function cublasXtcspmm(h, side, uplo, m, n, alpha, ap, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo
   integer(kind=c_intptr_t) :: m, n, ldb, ldc
   complex(4), dimension(*) :: ap
   complex(4), dimension(ldb, *) :: b
   complex(4), dimension(ldc, *) :: c
   complex(4) :: alpha, beta 

2.7.30. cublasXtDgemm

DGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 integer(4) function cublasXtdgemm(h, transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: transa, transb
   integer(kind=c_intptr_t) :: m, n, k, lda, ldb, ldc
   real(8), dimension(lda, *) :: a
   real(8), dimension(ldb, *) :: b
   real(8), dimension(ldc, *) :: c
   real(8) :: alpha, beta 

2.7.31. cublasXtDsymm

DSYMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a symmetric matrix and B and C are m by n matrices.

 integer(4) function cublasXtdsymm(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo
   integer(kind=c_intptr_t) :: m, n, lda, ldb, ldc
   real(8), dimension(lda, *) :: a
   real(8), dimension(ldb, *) :: b
   real(8), dimension(ldc, *) :: c
   real(8) :: alpha, beta 

2.7.32. cublasXtDsyrk

DSYRK performs one of the symmetric rank k operations C := alpha*A*A**T + beta*C, or C := alpha*A**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A is an n by k matrix in the first case and a k by n matrix in the second case.

 integer(4) function cublasXtdsyrk(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldc
   real(8), dimension(lda, *) :: a
   real(8), dimension(ldc, *) :: c
   real(8) :: alpha, beta 

2.7.33. cublasXtDsyr2k

DSYR2K performs one of the symmetric rank 2k operations C := alpha*A*B**T + alpha*B*A**T + beta*C, or C := alpha*A**T*B + alpha*B**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A and B are n by k matrices in the first case and k by n matrices in the second case.

 integer(4) function cublasXtdsyr2k(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldb, ldc
   real(8), dimension(lda, *) :: a
   real(8), dimension(ldb, *) :: b
   real(8), dimension(ldc, *) :: c
   real(8) :: alpha, beta 

2.7.34. cublasXtDsyrkx

DSYRKX performs a variation of the symmetric rank k update C := alpha*A*B**T + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix stored in lower or upper mode, and A and B are n by k matrices. This routine can be used when B is in such a way that the result is guaranteed to be symmetric. See the CUBLAS documentation for more details.

 integer(4) function cublasXtdsyrkx(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldb, ldc
   real(8), dimension(lda, *) :: a
   real(8), dimension(ldb, *) :: b
   real(8), dimension(ldc, *) :: c
   real(8) :: alpha, beta 

2.7.35. cublasXtDtrmm

DTRMM performs one of the matrix-matrix operations B := alpha*op( A )*B, or B := alpha*B*op( A ), where alpha is a scalar, B is an m by n matrix, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T.

 integer(4) function cublasXtdtrmm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo, transa, diag
   integer(kind=c_intptr_t) :: m, n, lda, ldb, ldc
   real(8), dimension(lda, *) :: a
   real(8), dimension(ldb, *) :: b
   real(8), dimension(ldc, *) :: c
   real(8) :: alpha 

2.7.36. cublasXtDtrsm

DTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T. The matrix X is overwritten on B.

 integer(4) function cublasXtdtrsm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   type(cublasXtHandle) :: h
   integer :: side, uplo, transa, diag
   integer(kind=c_intptr_t) :: m, n, lda, ldb
   real(8), dimension(lda, *) :: a
   real(8), dimension(ldb, *) :: b
   real(8) :: alpha 

2.7.37. cublasXtDspmm

DSPMM performs one of the symmetric packed matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a n by n symmetric matrix stored in packed format, and B and C are m by n matrices.

 integer(4) function cublasXtdspmm(h, side, uplo, m, n, alpha, ap, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo
   integer(kind=c_intptr_t) :: m, n, ldb, ldc
   real(8), dimension(*) :: ap
   real(8), dimension(ldb, *) :: b
   real(8), dimension(ldc, *) :: c
   real(8) :: alpha, beta 

2.7.38. cublasXtZgemm

ZGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T or op( X ) = X**H, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix.

 integer(4) function cublasXtzgemm(h, transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: transa, transb
   integer(kind=c_intptr_t) :: m, n, k, lda, ldb, ldc
   complex(8), dimension(lda, *) :: a
   complex(8), dimension(ldb, *) :: b
   complex(8), dimension(ldc, *) :: c
   complex(8) :: alpha, beta 

2.7.39. cublasXtZhemm

ZHEMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is an hermitian matrix and B and C are m by n matrices.

 integer(4) function cublasXtzhemm(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo
   integer(kind=c_intptr_t) :: m, n, lda, ldb, ldc
   complex(8), dimension(lda, *) :: a
   complex(8), dimension(ldb, *) :: b
   complex(8), dimension(ldc, *) :: c
   complex(8) :: alpha, beta 

2.7.40. cublasXtZherk

ZHERK performs one of the hermitian rank k operations C := alpha*A*A**H + beta*C, or C := alpha*A**H*A + beta*C, where alpha and beta are real scalars, C is an n by n hermitian matrix and A is an n by k matrix in the first case and a k by n matrix in the second case.

 integer(4) function cublasXtzherk(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldc
   complex(8), dimension(lda, *) :: a
   complex(8), dimension(ldc, *) :: c
   real(8) :: alpha, beta 

2.7.41. cublasXtZher2k

ZHER2K performs one of the hermitian rank 2k operations C := alpha*A*B**H + conjg( alpha )*B*A**H + beta*C, or C := alpha*A**H*B + conjg( alpha )*B**H*A + beta*C, where alpha and beta are scalars with beta real, C is an n by n hermitian matrix and A and B are n by k matrices in the first case and k by n matrices in the second case.

 integer(4) function cublasXtzher2k(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldb, ldc
   complex(8), dimension(lda, *) :: a
   complex(8), dimension(ldb, *) :: b
   complex(8), dimension(ldc, *) :: c
   complex(8) :: alpha
   real(8) :: beta 

2.7.42. cublasXtZherkx

ZHERKX performs a variation of the hermitian rank k operations C := alpha*A*B**H + beta*C, where alpha and beta are real scalars, C is an n by n hermitian matrix stored in lower or upper mode, and A and B are n by k matrices. See the CUBLAS documentation for more details.

 integer(4) function cublasXtzherkx(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldb, ldc
   complex(8), dimension(lda, *) :: a
   complex(8), dimension(ldb, *) :: b
   complex(8), dimension(ldc, *) :: c
   complex(8) :: alpha
   real(8) :: beta 

2.7.43. cublasXtZsymm

ZSYMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a symmetric matrix and B and C are m by n matrices.

 integer(4) function cublasXtzsymm(h, side, uplo, m, n, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo
   integer(kind=c_intptr_t) :: m, n, lda, ldb, ldc
   complex(8), dimension(lda, *) :: a
   complex(8), dimension(ldb, *) :: b
   complex(8), dimension(ldc, *) :: c
   complex(8) :: alpha, beta 

2.7.44. cublasXtZsyrk

ZSYRK performs one of the symmetric rank k operations C := alpha*A*A**T + beta*C, or C := alpha*A**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A is an n by k matrix in the first case and a k by n matrix in the second case.

 integer(4) function cublasXtzsyrk(h, uplo, trans, n, k, alpha, a, lda, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldc
   complex(8), dimension(lda, *) :: a
   complex(8), dimension(ldc, *) :: c
   complex(8) :: alpha, beta 

2.7.45. cublasXtZsyr2k

ZSYR2K performs one of the symmetric rank 2k operations C := alpha*A*B**T + alpha*B*A**T + beta*C, or C := alpha*A**T*B + alpha*B**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A and B are n by k matrices in the first case and k by n matrices in the second case.

 integer(4) function cublasXtzsyr2k(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldb, ldc
   complex(8), dimension(lda, *) :: a
   complex(8), dimension(ldb, *) :: b
   complex(8), dimension(ldc, *) :: c
   complex(8) :: alpha, beta 

2.7.46. cublasXtZsyrkx

ZSYRKX performs a variation of the symmetric rank k update C := alpha*A*B**T + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix stored in lower or upper mode, and A and B are n by k matrices. This routine can be used when B is in such a way that the result is guaranteed to be symmetric. See the CUBLAS documentation for more details.

 integer(4) function cublasXtzsyrkx(h, uplo, trans, n, k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: uplo, trans
   integer(kind=c_intptr_t) :: n, k, lda, ldb, ldc
   complex(8), dimension(lda, *) :: a
   complex(8), dimension(ldb, *) :: b
   complex(8), dimension(ldc, *) :: c
   complex(8) :: alpha, beta 

2.7.47. cublasXtZtrmm

ZTRMM performs one of the matrix-matrix operations B := alpha*op( A )*B, or B := alpha*B*op( A ) where alpha is a scalar, B is an m by n matrix, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H.

 integer(4) function cublasXtztrmm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo, transa, diag
   integer(kind=c_intptr_t) :: m, n, lda, ldb, ldc
   complex(8), dimension(lda, *) :: a
   complex(8), dimension(ldb, *) :: b
   complex(8), dimension(ldc, *) :: c
   complex(8) :: alpha 

2.7.48. cublasXtZtrsm

ZTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H. The matrix X is overwritten on B.

 integer(4) function cublasXtztrsm(h, side, uplo, transa, diag, m, n, alpha, a, lda, b, ldb)
   type(cublasXtHandle) :: h
   integer :: side, uplo, transa, diag
   integer(kind=c_intptr_t) :: m, n, lda, ldb
   complex(8), dimension(lda, *) :: a
   complex(8), dimension(ldb, *) :: b
   complex(8) :: alpha 

2.7.49. cublasXtZspmm

ZSPMM performs one of the symmetric packed matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a n by n symmetric matrix stored in packed format, and B and C are m by n matrices.

 integer(4) function cublasXtzspmm(h, side, uplo, m, n, alpha, ap, b, ldb, beta, c, ldc)
   type(cublasXtHandle) :: h
   integer :: side, uplo
   integer(kind=c_intptr_t) :: m, n, ldb, ldc
   complex(8), dimension(*) :: ap
   complex(8), dimension(ldb, *) :: b
   complex(8), dimension(ldc, *) :: c
   complex(8) :: alpha, beta 

2.8. CUBLAS DEVICE Module Functions

This section contains interfaces to the cuBLAS functions accessible from device code. CUDA Fortran users can access this module by inserting the line use cublas_device into the program unit. OpenACC users can access this module by inserting the line use openacc_cublas into the program unit. Examples for making cuBLAS calls from device code are included in Chapter 6.

The cublas_device module and the openacc_cublas module contain all the types and definitions from the cublas module:

TYPE cublasHandle
  TYPE(C_PTR)  :: handle
END TYPE

Each device module contains the following enumerations:

enum, bind(c)
    enumerator :: CUBLAS_STATUS_SUCCESS         =0
    enumerator :: CUBLAS_STATUS_NOT_INITIALIZED =1
    enumerator :: CUBLAS_STATUS_ALLOC_FAILED    =3
    enumerator :: CUBLAS_STATUS_INVALID_VALUE   =7
    enumerator :: CUBLAS_STATUS_ARCH_MISMATCH   =8
    enumerator :: CUBLAS_STATUS_MAPPING_ERROR   =11
    enumerator :: CUBLAS_STATUS_EXECUTION_FAILED=13
    enumerator :: CUBLAS_STATUS_INTERNAL_ERROR  =14
end enum
enum, bind(c)
    enumerator :: CUBLAS_FILL_MODE_LOWER=0
    enumerator :: CUBLAS_FILL_MODE_UPPER=1
end enum
enum, bind(c)
    enumerator :: CUBLAS_DIAG_NON_UNIT=0
    enumerator :: CUBLAS_DIAG_UNIT=1
end enum
enum, bind(c)
    enumerator :: CUBLAS_SIDE_LEFT =0
    enumerator :: CUBLAS_SIDE_RIGHT=1
end enum
enum, bind(c)
    enumerator :: CUBLAS_OP_N=0
    enumerator :: CUBLAS_OP_T=1
    enumerator :: CUBLAS_OP_C=2
end enum
enum, bind(c)
    enumerator :: CUBLAS_POINTER_MODE_HOST   = 0
    enumerator :: CUBLAS_POINTER_MODE_DEVICE = 1
end enum

2.8.1. Device Library Helper Functions

This section contains the cuBLAS interfaces to the device-side single precision BLAS and cuBLAS functions and subroutines.

2.8.1.1. cublasCreate

This function initializes the CUBLAS library and creates a handle to an opaque structure holding the CUBLAS library context. It allocates hardware resources on the host and device and must be called prior to making any other CUBLAS library calls. The CUBLAS library context is tied to the current CUDA device. To use the library on multiple devices, one CUBLAS handle needs to be created for each device. Furthermore, for a given device, multiple CUBLAS handles with different configuration can be created. Because cublasCreate allocates some internal resources and the release of those resources by calling cublasDestroy will implicitly call cublasDeviceSynchronize, it is recommended to minimize the number of cublasCreate/cublasDestroy occurences. For multi-threaded applications that use the same device from different threads, the recommended programming model is to create one CUBLAS handle per thread and use that CUBLAS handle for the entire life of the thread. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasCreate(handle)
   type(cublasHandle) :: handle 

2.8.1.2. cublasDestroy

This function releases hardware resources used by the CUBLAS library. This function is usually the last call with a particular handle to the CUBLAS library. Because cublasCreate allocates some internal resources and the release of those resources by calling cublasDestroy will implicitly call cublasDeviceSynchronize, it is recommended to minimize the number of cublasCreate/cublasDestroy occurences. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasDestroy(handle)
   type(cublasHandle) :: handle 

2.8.1.3. cublasGetVersion

This function returns the version number of the cuBLAS library. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasGetVersion(handle, version)
   type(cublasHandle) :: handle
   integer(4) :: version 

2.8.1.4. cublasSetStream

This function sets the cuBLAS library stream, which will be used to execute all subsequent calls to the cuBLAS library functions. If the cuBLAS library stream is not set, all kernels use the default NULL stream. In particular, this routine can be used to change the stream between kernel launches and then to reset the cuBLAS library stream back to NULL. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasSetStream(handle, stream)
   type(cublasHandle) :: handle
   integer(kind=cuda_stream_kind()) :: stream 

2.8.1.5. cublasGetStream

This function gets the cuBLAS library stream, which is being used to execute all calls to the cuBLAS library functions. If the cuBLAS library stream is not set, all kernels use the default NULL stream. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasGetStream(handle, stream)
   type(cublasHandle) :: handle
   integer(kind=cuda_stream_kind()) :: stream 

2.8.2. Single Precision Functions and Subroutines

This section contains the cuBLAS interfaces to the device-side single precision BLAS and cuBLAS functions and subroutines.

2.8.2.1. cublasIsamax

ISAMAX finds the index of the first element having maximum absolute value. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasisamax(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx
   integer :: res 

2.8.2.2. cublasIsamin

ISAMIN finds the index of the first element having minimum absolute value. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasisamin(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx
   integer :: res 

2.8.2.3. cublasSasum

SASUM takes the sum of the absolute values. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassasum(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx
   real(4) :: res 

2.8.2.4. cublasSaxpy

SAXPY constant times a vector plus a vector. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassaxpy(h, n, a, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(4) :: a
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.2.5. cublasScopy

SCOPY copies a vector, x, to a vector, y. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasscopy(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.2.6. cublasSdot

SDOT forms the dot product of two vectors. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassdot(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy
   real(4) :: res 

2.8.2.7. cublasSnrm2

SNRM2 returns the euclidean norm of a vector via the function name, so that SNRM2 := sqrt( x'*x ). Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassnrm2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x
   integer :: incx
   real(4) :: res 

2.8.2.8. cublasSrot

SROT applies a plane rotation. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassrot(h, n, x, incx, y, incy, sc, ss)
   type(cublasHandle) :: h
   integer :: n
   real(4) :: sc, ss
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.2.9. cublasSrotg

SROTG constructs a Givens plane rotation. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassrotg(h, sa, sb, sc, ss)
   type(cublasHandle) :: h
   real(4) :: sa, sb, sc, ss 

2.8.2.10. cublasSrotm

SROTM applies the modified Givens transformation, H, to the 2 by N matrix (SX**T) , where **T indicates transpose. The elements of SX are in (SX**T) SX(LX+I*INCX), I = 0 to N-1, where LX = 1 if INCX .GE. 0, ELSE LX = (-INCX)*N, and similarly for SY using LY and INCY. With SPARAM(1)=SFLAG, H has one of the following forms.. SFLAG=-1.E0 SFLAG=0.E0 SFLAG=1.E0 SFLAG=-2.E0 (SH11 SH12) (1.E0 SH12) (SH11 1.E0) (1.E0 0.E0) H=( ) ( ) ( ) ( ) (SH21 SH22), (SH21 1.E0), (-1.E0 SH22), (0.E0 1.E0). See SROTMG for a description of data storage in SPARAM. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassrotm(h, n, x, incx, y, incy, param)
   type(cublasHandle) :: h
   integer :: n
   real(4) :: param(*)
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.2.11. cublasSrotmg

SROTMG constructs the modified Givens transformation matrix H which zeros the second component of the 2-vector (SQRT(SD1)*SX1,SQRT(SD2)*SY2)**T. With SPARAM(1)=SFLAG, H has one of the following forms..
       SFLAG=-1.E0     SFLAG=0.E0        SFLAG=1.E0     SFLAG=-2.E0
   
         (SH11  SH12)    (1.E0  SH12)    (SH11  1.E0)    (1.E0  0.E0)
       H=(          )    (          )    (          )    (          )
         (SH21  SH22),   (SH21  1.E0),   (-1.E0 SH22),   (0.E0  1.E0).
       
Locations 2-4 of SPARAM contain SH11,SH21,SH12, and SH22 respectively. (Values of 1.E0, -1.E0, or 0.E0 implied by the value of SPARAM(1) are not stored in SPARAM.) Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.
 integer(4) function cublassrotmg(h, d1, d2, x1, y1, param)
   type(cublasHandle) :: h
   real(4) :: d1, d2, x1, y1, param(*) 

2.8.2.12. cublasSscal

SSCAL scales a vector by a constant. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassscal(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   real(4) :: a
   real(4), device, dimension(*) :: x
   integer :: incx 

2.8.2.13. cublasSswap

SSWAP interchanges two vectors. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassswap(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.2.14. cublasSgbmv

SGBMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n band matrix, with kl sub-diagonals and ku super-diagonals. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassgbmv(h, t, m, n, kl, ku, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, kl, ku, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4) :: alpha, beta 

2.8.2.15. cublasSgemv

SGEMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassgemv(h, t, m, n, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4) :: alpha, beta 

2.8.2.16. cublasSger

SGER performs the rank 1 operation A := alpha*x*y**T + A, where alpha is a scalar, x is an m element vector, y is an n element vector and A is an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassger(h, m, n, alpha, x, incx, y, incy,                          a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4) :: alpha 

2.8.2.17. cublasSsbmv

SSBMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric band matrix, with k super-diagonals. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasssbmv(h, t, n, k, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: k, n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4) :: alpha, beta 

2.8.2.18. cublasSspmv

SSPMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassspmv(h, t, n, alpha, a, x, incx,                          beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   real(4), device, dimension(*) :: a, x, y
   real(4) :: alpha, beta 

2.8.2.19. cublasSspr

SSPR performs the symmetric rank 1 operation A := alpha*x*x**T + A, where alpha is a real scalar, x is an n element vector and A is an n by n symmetric matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassspr(h, t, n, alpha, x, incx, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx
   real(4), device, dimension(*) :: a, x
   real(4) :: alpha 

2.8.2.20. cublasSspr2

SSPR2 performs the symmetric rank 2 operation A := alpha*x*y**T + alpha*y*x**T + A, where alpha is a scalar, x and y are n element vectors and A is an n by n symmetric matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassspr2(h, t, n, alpha, x, incx,                          y, incy, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   real(4), device, dimension(*) :: a, x, y
   real(4) :: alpha 

2.8.2.21. cublasSsymv

SSYMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasssymv(h, t, n, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, lda, incx, incy
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4) :: alpha, beta 

2.8.2.22. cublasSsyr

SSYR performs the symmetric rank 1 operation A := alpha*x*x**T + A, where alpha is a real scalar, x is an n element vector and A is an n by n symmetric matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasssyr(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x
   real(4) :: alpha 

2.8.2.23. cublasSsyr2

SSYR2 performs the symmetric rank 2 operation A := alpha*x*y**T + alpha*y*x**T + A, where alpha is a scalar, x and y are n element vectors and A is an n by n symmetric matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasssyr2(h, t, n, alpha, x, incx,                          y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x, y
   real(4) :: alpha 

2.8.2.24. cublasStbmv

STBMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasstbmv(h, u, t, d, n, k, a, lda,                          x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 

2.8.2.25. cublasStbsv

STBSV solves one of the systems of equations A*x = b, or A**T*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasstbsv(h, u, t, d, n, k, a, lda,                          x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 

2.8.2.26. cublasStpmv

STPMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasstpmv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   real(4), device, dimension(*) :: a, x 

2.8.2.27. cublasStpsv

STPSV solves one of the systems of equations A*x = b, or A**T*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasstpsv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   real(4), device, dimension(*) :: a, x 

2.8.2.28. cublasStrmv

STRMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasstrmv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 

2.8.2.29. cublasStrsv

STRSV solves one of the systems of equations A*x = b, or A**T*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasstrsv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(*) :: x 

2.8.2.30. cublasSgemm

SGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublassgemm(h, transa, transb, m, n,                                       k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4) :: alpha, beta 

2.8.2.31. cublasSsymm

SSYMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a symmetric matrix and B and C are m by n matrices. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasssymm(h, side, uplo, m, n,                                      alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4) :: alpha, beta 

2.8.2.32. cublasSsyrk

SSYRK performs one of the symmetric rank k operations C := alpha*A*A**T + beta*C, or C := alpha*A**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A is an n by k matrix in the first case and a k by n matrix in the second case. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasssyrk(h, uplo, trans, n, k,                                               alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldc, *) :: c
   real(4) :: alpha, beta 

2.8.2.33. cublasSsyr2k

SSYR2K performs one of the symmetric rank 2k operations C := alpha*A*B**T + alpha*B*A**T + beta*C, or C := alpha*A**T*B + alpha*B**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A and B are n by k matrices in the first case and k by n matrices in the second case. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasssyr2k(h, uplo, trans, n, k,                                        alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4) :: alpha, beta 

2.8.2.34. cublasStrmm

STRMM performs one of the matrix-matrix operations B := alpha*op( A )*B, or B := alpha*B*op( A ), where alpha is a scalar, B is an m by n matrix, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasstrmm(h, side, uplo, transa,                                  diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb, ldc
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4), device, dimension(ldc, *) :: c
   real(4) :: alpha 

2.8.2.35. cublasStrsm

STRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T. The matrix X is overwritten on B. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasstrsm(h, side, uplo, transa,                                          diag, m, n, alpha, a, lda, b, ldb)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(4), device, dimension(lda, *) :: a
   real(4), device, dimension(ldb, *) :: b
   real(4) :: alpha 

2.8.2.36. cublasSgemmBatched

SGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasSgemmBatched(h, transa, transb,                 m, n, k, alpha, Aarray, lda, Barray, ldb, beta, Carray, ldc, batchCount)
   type(cublasHandle) :: h
   integer :: transa
   integer :: transb
   integer :: m, n, k
   real(4) :: alpha
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   real(4) :: beta
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: batchCount 

2.8.2.37. cublasSgetrfBatched

SGETRF computes an LU factorization of a general M-by-N matrix A using partial pivoting with row interchanges. The factorization has the form A = P * L * U where P is a permutation matrix, L is lower triangular with unit diagonal elements (lower trapezoidal if m > n), and U is upper triangular (upper trapezoidal if m < n). This is the right-looking Level 3 BLAS version of the algorithm. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasSgetrfBatched(h, n, Aarray, lda,                                                      ipvt, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   integer, device :: info(*)
   integer :: batchCount 

2.8.2.38. cublasSgetriBatched

SGETRI computes the inverse of a matrix using the LU factorization computed by SGETRF. This method inverts U and then computes inv(A) by solving the system inv(A)*L = inv(U) for inv(A). Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasSgetriBatched(h, n, Aarray, lda,                                         ipvt, Carray, ldc, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer, device :: info(*)
   integer :: batchCount 

2.8.2.39. cublasSgetrsBatched

SGETRS solves a system of linear equations A * X = B or A**T * X = B with a general N-by-N matrix A using the LU factorization computed by SGETRF. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasSgetrsBatched(h, trans, n, nrhs,                                      A, lda, ipvt, B, ldb, info, batchCount)
   type(cublasHandle) :: h
   integer :: trans
   integer :: n, nrhs
   type(c_devptr), device :: A(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer, device :: info(*)
   integer :: batchCount 

2.8.2.40. cublasStrsmBatched

STRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T. The matrix X is overwritten on B. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasStrsmBatched(h, side, uplo,                               trans, diag, m, n, alpha, A, lda, B, ldb, batchCount)
   type(cublasHandle) :: h
   integer :: side
   integer :: uplo
   integer :: trans
   integer :: diag
   integer :: m, n
   real(4) :: alpha
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer :: batchCount 

2.8.2.41. cublasSmatinvBatched

cublasSmatinvBatched is a short cut of cublasSgetrfBatched plus cublasSgetriBatched. However it only works if n is less than 32. If not, the user has to go through cublasSgetrfBatched and cublasSgetriBatched. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasSmatinvBatched(h, n, A, lda,                                         Ainv, lda_inv, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: Ainv(*)
   integer :: lda_inv
   integer, device :: info(*)
   integer :: batchCount 

2.8.2.42. cublasSgeqrfBatched

SGEQRF computes a QR factorization of a real M-by-N matrix A: A = Q * R. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasSgeqrfBatched(h, m, n,                                     A, lda, Tau, info, batchCount)
   type(cublasHandle) :: h
   integer :: m, n
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: Tau(*)
   integer, device :: info(*)
   integer :: batchCount 

2.8.2.43. cublasSgelsBatched

SGELS solves overdetermined or underdetermined real linear systems involving an M-by-N matrix A, or its transpose, using a QR or LQ factorization of A. It is assumed that A has full rank. The following options are provided: 1. If TRANS = 'N' and m >= n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A*X ||. 2. If TRANS = 'N' and m < n: find the minimum norm solution of an underdetermined system A * X = B. 3. If TRANS = 'T' and m >= n: find the minimum norm solution of an undetermined system A**T * X = B. 4. If TRANS = 'T' and m < n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A**T * X ||. Several right hand side vectors b and solution vectors x can be handled in a single call; they are stored as the columns of the M-by-NRHS right hand side matrix B and the N-by-NRHS solution matrix X. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasSgelsBatched(h, trans, m, n,                           nrhs, A, lda, C, ldc, info, dinfo, batchCount)
   type(cublasHandle) :: h
   integer :: trans
   integer :: m, n, nrhs
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: C(*)
   integer :: ldc
   integer, device :: info(*)
   integer, device :: dinfo(*)
   integer :: batchCount 

2.8.3. Single Precision Complex Functions and Subroutines

This section contains the cuBLAS interfaces to the device-side single precision complex BLAS and cuBLAS functions and subroutines.

2.8.3.1. cublasCaxpy

CAXPY constant times a vector plus a vector. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascaxpy(h, n, a, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(4) :: a
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.3.2. cublasCcopy

CCOPY copies a vector x to a vector y. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasccopy(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.3.3. cublasCdotc

forms the dot product of two vectors, conjugating the first vector. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascdotc(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy
   complex(4) :: res 

2.8.3.4. cublasCdotu

CDOTU forms the dot product of two vectors. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascdotu(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy
   complex(4) :: res 

2.8.3.5. cublasCrot

CROT applies a plane rotation, where the cos (C) is real and the sin (S) is complex, and the vectors CX and CY are complex. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascrot(h, n, x, incx, y, incy, sc, cs)
   type(cublasHandle) :: h
   integer :: n
   real(4) :: sc
   complex(4) :: cs
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.3.6. cublasCscal

CSCAL scales a vector by a constant. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascscal(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   complex(4) :: a
   complex(4), device, dimension(*) :: x
   integer :: incx 

2.8.3.7. cublasCsscal

CSSCAL scales a complex vector by a real constant. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascsscal(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   real(4) :: a
   complex(4), device, dimension(*) :: x
   integer :: incx 

2.8.3.8. cublasCswap

CSWAP interchanges two vectors. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascswap(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.3.9. cublasIcamax

ICAMAX finds the index of the first element having maximum absolute value. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasicamax(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx
   integer :: res 

2.8.3.10. cublasIcamin

ICAMIN finds the index of the first element having minimum absolute value. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasicamin(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx
   integer :: res 

2.8.3.11. cublasScasum

SCASUM takes the sum of the absolute values of a complex vector and returns a single precision result. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasscasum(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx
   real(4) :: res 

2.8.3.12. cublasScnrm2

SCNRM2 returns the euclidean norm of a vector via the function name, so that SCNRM2 := sqrt( x**H*x ) Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasscnrm2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(4), device, dimension(*) :: x
   integer :: incx
   real(4) :: res 

2.8.3.13. cublasCgbmv

CGBMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, or y := alpha*A**H*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n band matrix, with kl sub-diagonals and ku super-diagonals. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascgbmv(h, t, m, n, kl, ku, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, kl, ku, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4) :: alpha, beta 

2.8.3.14. cublasCgemv

CGEMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, or y := alpha*A**H*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascgemv(h, t, m, n, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4) :: alpha, beta 

2.8.3.15. cublasCgerc

CGERC performs the rank 1 operation A := alpha*x*y**H + A, where alpha is a scalar, x is an m element vector, y is an n element vector and A is an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascgerc(h, m, n, alpha, x, incx, y, incy,                          a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4) :: alpha 

2.8.3.16. cublasCgeru

CGERU performs the rank 1 operation A := alpha*x*y**T + A, where alpha is a scalar, x is an m element vector, y is an n element vector and A is an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascgeru(h, m, n, alpha, x, incx, y, incy,                          a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4) :: alpha 

2.8.3.17. cublasChbmv

CHBMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n hermitian band matrix, with k super-diagonals. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaschbmv(h, t, n, k, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: k, n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4) :: alpha, beta 

2.8.3.18. cublasChemv

CHEMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n hermitian matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaschemv(h, t, n, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, lda, incx, incy
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4) :: alpha, beta 

2.8.3.19. cublasCher

CHER performs the hermitian rank 1 operation A := alpha*x*x**H + A, where alpha is a real scalar, x is an n element vector and A is an n by n hermitian matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascher(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x
   real(4) :: alpha 

2.8.3.20. cublasCher2

CHER2 performs the hermitian rank 2 operation A := alpha*x*y**H + conjg( alpha )*y*x**H + A, where alpha is a scalar, x and y are n element vectors and A is an n by n hermitian matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascher2(h, t, n, alpha, x, incx, y, incy,                                       a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x, y
   complex(4) :: alpha 

2.8.3.21. cublasChpmv

CHPMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n hermitian matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaschpmv(h, t, n, alpha, a, x, incx,                          beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   complex(4), device, dimension(*) :: a, x, y
   complex(4) :: alpha, beta 

2.8.3.22. cublasChpr

CHPR performs the hermitian rank 1 operation A := alpha*x*x**H + A, where alpha is a real scalar, x is an n element vector and A is an n by n hermitian matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaschpr(h, t, n, alpha, x, incx, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x
   real(4) :: alpha 

2.8.3.23. cublasChpr2

CHPR2 performs the hermitian rank 2 operation A := alpha*x*y**H + conjg( alpha )*y*x**H + A, where alpha is a scalar, x and y are n element vectors and A is an n by n hermitian matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaschpr2(h, t, n, alpha, x, incx,                          y, incy, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   complex(4), device, dimension(*) :: a, x, y
   complex(4) :: alpha 

2.8.3.24. cublasCtbmv

CTBMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, or x := A**H*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasctbmv(h, u, t, d, n, k, a, lda,                          x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 

2.8.3.25. cublasCtbsv

CTBSV solves one of the systems of equations A*x = b, or A**T*x = b, or A**H*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasctbsv(h, u, t, d, n, k, a, lda,                          x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 

2.8.3.26. cublasCtpmv

CTPMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, or x := A**H*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasctpmv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x 

2.8.3.27. cublasCtpsv

CTPSV solves one of the systems of equations A*x = b, or A**T*x = b, or A**H*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasctpsv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   complex(4), device, dimension(*) :: a, x 

2.8.3.28. cublasCtrmv

CTRMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, or x := A**H*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasctrmv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 

2.8.3.29. cublasCtrsv

CTRSV solves one of the systems of equations A*x = b, or A**T*x = b, or A**H*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasctrsv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(*) :: x 

2.8.3.30. cublasCgemm

CGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T or op( X ) = X**H, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascgemm(h, transa, transb, m, n,                                       k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4) :: alpha, beta 

2.8.3.31. cublasChemm

CHEMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is an hermitian matrix and B and C are m by n matrices. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaschemm(h, side, uplo, m, n,                                      alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4) :: alpha, beta 

2.8.3.32. cublasCherk

CHERK performs one of the hermitian rank k operations C := alpha*A*A**H + beta*C, or C := alpha*A**H*A + beta*C, where alpha and beta are real scalars, C is an n by n hermitian matrix and A is an n by k matrix in the first case and a k by n matrix in the second case. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascherk(h, uplo, trans, n, k,                                               alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldc, *) :: c
   real(4) :: alpha, beta 

2.8.3.33. cublasCher2k

CHER2K performs one of the hermitian rank 2k operations C := alpha*A*B**H + conjg( alpha )*B*A**H + beta*C, or C := alpha*A**H*B + conjg( alpha )*B**H*A + beta*C, where alpha and beta are scalars with beta real, C is an n by n hermitian matrix and A and B are n by k matrices in the first case and k by n matrices in the second case. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascher2k(h, uplo, trans, n, k,                                        alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4) :: alpha
   real(4) :: beta 

2.8.3.34. cublasCsymm

CSYMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a symmetric matrix and B and C are m by n matrices. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascsymm(h, side, uplo, m, n,                                      alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4) :: alpha, beta 

2.8.3.35. cublasCsyrk

CSYRK performs one of the symmetric rank k operations C := alpha*A*A**T + beta*C, or C := alpha*A**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A is an n by k matrix in the first case and a k by n matrix in the second case. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascsyrk(h, uplo, trans, n, k,                                               alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldc, *) :: c
   complex(4) :: alpha, beta 

2.8.3.36. cublasCsyr2k

CSYR2K performs one of the symmetric rank 2k operations C := alpha*A*B**T + alpha*B*A**T + beta*C, or C := alpha*A**T*B + alpha*B**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A and B are n by k matrices in the first case and k by n matrices in the second case. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublascsyr2k(h, uplo, trans, n, k,                                        alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4) :: alpha, beta 

2.8.3.37. cublasCtrmm

CTRMM performs one of the matrix-matrix operations B := alpha*op( A )*B, or B := alpha*B*op( A ) where alpha is a scalar, B is an m by n matrix, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasctrmm(h, side, uplo, transa,                                  diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb, ldc
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4), device, dimension(ldc, *) :: c
   complex(4) :: alpha 

2.8.3.38. cublasCtrsm

CTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H. The matrix X is overwritten on B. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasctrsm(h, side, uplo, transa,                                          diag, m, n, alpha, a, lda, b, ldb)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(4), device, dimension(lda, *) :: a
   complex(4), device, dimension(ldb, *) :: b
   complex(4) :: alpha 

2.8.3.39. cublasCgemmBatched

CGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T or op( X ) = X**H, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasCgemmBatched(h, transa, transb,                 m, n, k, alpha, Aarray, lda, Barray, ldb, beta, Carray, ldc, batchCount)
   type(cublasHandle) :: h
   integer :: transa
   integer :: transb
   integer :: m, n, k
   complex(4) :: alpha
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   complex(4) :: beta
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: batchCount 

2.8.3.40. cublasCgetrfBatched

CGETRF computes an LU factorization of a general M-by-N matrix A using partial pivoting with row interchanges. The factorization has the form A = P * L * U where P is a permutation matrix, L is lower triangular with unit diagonal elements (lower trapezoidal if m > n), and U is upper triangular (upper trapezoidal if m < n). This is the right-looking Level 3 BLAS version of the algorithm. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasCgetrfBatched(h, n, Aarray, lda,                                                      ipvt, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   integer, device :: info(*)
   integer :: batchCount 

2.8.3.41. cublasCgetriBatched

CGETRI computes the inverse of a matrix using the LU factorization computed by CGETRF. This method inverts U and then computes inv(A) by solving the system inv(A)*L = inv(U) for inv(A). Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasCgetriBatched(h, n, Aarray, lda,                                         ipvt, Carray, ldc, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer, device :: info(*)
   integer :: batchCount 

2.8.3.42. cublasCgetrsBatched

CGETRS solves a system of linear equations A * X = B, A**T * X = B, or A**H * X = B with a general N-by-N matrix A using the LU factorization computed by CGETRF. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasCgetrsBatched(h, trans, n, nrhs,                                      A, lda, ipvt, B, ldb, info, batchCount)
   type(cublasHandle) :: h
   integer :: trans
   integer :: n, nrhs
   type(c_devptr), device :: A(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer, device :: info(*)
   integer :: batchCount 

2.8.3.43. cublasCtrsmBatched

CTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H. The matrix X is overwritten on B. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasCtrsmBatched(h, side, uplo,                               trans, diag, m, n, alpha, A, lda, B, ldb, batchCount)
   type(cublasHandle) :: h
   integer :: side
   integer :: uplo
   integer :: trans
   integer :: diag
   integer :: m, n
   complex(4) :: alpha
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer :: batchCount 

2.8.3.44. cublasCmatinvBatched

cublasCmatinvBatched is a short cut of cublasCgetrfBatched plus cublasCgetriBatched. However it only works if n is less than 32. If not, the user has to go through cublasCgetrfBatched and cublasCgetriBatched. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasCmatinvBatched(h, n, A, lda,                                         Ainv, lda_inv, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: Ainv(*)
   integer :: lda_inv
   integer, device :: info(*)
   integer :: batchCount 

2.8.3.45. cublasCgeqrfBatched

CGEQRF computes a QR factorization of a complex M-by-N matrix A: A = Q * R. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasCgeqrfBatched(h, m, n,                                     A, lda, Tau, info, batchCount)
   type(cublasHandle) :: h
   integer :: m, n
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: Tau(*)
   integer, device :: info(*)
   integer :: batchCount 

2.8.3.46. cublasCgelsBatched

CGELS solves overdetermined or underdetermined complex linear systems involving an M-by-N matrix A, or its conjugate-transpose, using a QR or LQ factorization of A. It is assumed that A has full rank. The following options are provided: 1. If TRANS = 'N' and m >= n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A*X ||. 2. If TRANS = 'N' and m < n: find the minimum norm solution of an underdetermined system A * X = B. 3. If TRANS = 'C' and m >= n: find the minimum norm solution of an undetermined system A**H * X = B. 4. If TRANS = 'C' and m < n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A**H * X ||. Several right hand side vectors b and solution vectors x can be handled in a single call; they are stored as the columns of the M-by-NRHS right hand side matrix B and the N-by-NRHS solution matrix X. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasCgelsBatched(h, trans, m, n,                           nrhs, A, lda, C, ldc, info, dinfo, batchCount)
   type(cublasHandle) :: h
   integer :: trans
   integer :: m, n, nrhs
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: C(*)
   integer :: ldc
   integer, device :: info(*)
   integer, device :: dinfo(*)
   integer :: batchCount 

2.8.4. Double Precision Functions and Subroutines

This section contains the cuBLAS interfaces to the device-side double precision BLAS and cuBLAS functions and subroutines.

2.8.4.1. cublasIdamax

IDAMAX finds the the index of the first element having maximum absolute value. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasidamax(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx
   integer :: res 

2.8.4.2. cublasIdamin

IDAMIN finds the index of the first element having minimum absolute value. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasidamin(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx
   integer :: res 

2.8.4.3. cublasDasum

DASUM takes the sum of the absolute values. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdasum(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx
   real(8) :: res 

2.8.4.4. cublasDaxpy

DAXPY constant times a vector plus a vector. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdaxpy(h, n, a, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(8) :: a
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.4.5. cublasDcopy

DCOPY copies a vector, x, to a vector, y. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdcopy(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.4.6. cublasDdot

DDOT forms the dot product of two vectors. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasddot(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy
   real(8) :: res 

2.8.4.7. cublasDnrm2

DNRM2 returns the euclidean norm of a vector via the function name, so that DNRM2 := sqrt( x'*x ) Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdnrm2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x
   integer :: incx
   real(8) :: res 

2.8.4.8. cublasDrot

DROT applies a plane rotation. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdrot(h, n, x, incx, y, incy, dc, ds)
   type(cublasHandle) :: h
   integer :: n
   real(8) :: dc, ds
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.4.9. cublasDrotg

DROTG constructs a Givens plane rotation. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdrotg(h, sa, sb, sc, ss)
   type(cublasHandle) :: h
   real(8) :: sa, sb, sc, ss 

2.8.4.10. cublasDrotm

DROTM applies the modified Givens transformation, H, to the 2 by N matrix (DX**T) , where **T indicates transpose. The elements of DX are in (DX**T) DX(LX+I*INCX), I = 0 to N-1, where LX = 1 if INCX .GE. 0, ELSE LX = (-INCX)*N, and similarly for DY using LY and INCY. With DPARAM(1)=DFLAG, H has one of the following forms.. DFLAG=-1.D0 DFLAG=0.D0 DFLAG=1.D0 DFLAG=-2.D0 (DH11 DH12) (1.D0 DH12) (DH11 1.D0) (1.D0 0.D0) H=( ) ( ) ( ) ( ) (DH21 DH22), (DH21 1.D0), (-1.D0 DH22), (0.D0 1.D0). See DROTMG for a description of data storage in DPARAM. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdrotm(h, n, x, incx, y, incy, param)
   type(cublasHandle) :: h
   integer :: n
   real(8) :: param(*)
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.4.11. cublasDrotmg

DROTMG constructs the modified Givens transformation matrix H which zeros the second component of the 2-vector (SQRT(DD1)*DX1,SQRT(DD2)*DY2)**T. With DPARAM(1)=DFLAG, H has one of the following forms..
       DFLAG=-1.D0     DFLAG=0.D0        DFLAG=1.D0     DFLAG=-2.D0
   
         (DH11  DH12)    (1.D0  DH12)    (DH11  1.D0)    (1.D0  0.D0)
       H=(          )    (          )    (          )    (          )
         (DH21  DH22),   (DH21  1.D0),   (-1.D0 DH22),   (0.D0  1.D0).
       
Locations 2-4 of DPARAM contain DH11, DH21, DH12, and DH22 respectively. (Values of 1.D0, -1.D0, of 0.D0 implied by the value of DPARAM(1) are not stored in DPARAM.) Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.
 integer(4) function cublasdrotmg(h, d1, d2, x1, y1, param)
   type(cublasHandle) :: h
   real(8) :: d1, d2, x1, y1, param(*) 

2.8.4.12. cublasDscal

DSCAL scales a vector by a constant. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdscal(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   real(8) :: a
   real(8), device, dimension(*) :: x
   integer :: incx 

2.8.4.13. cublasDswap

interchanges two vectors. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdswap(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   real(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.4.14. cublasDgbmv

DGBMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n band matrix, with kl sub-diagonals and ku super-diagonals. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdgbmv(h, t, m, n, kl, ku, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, kl, ku, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8) :: alpha, beta 

2.8.4.15. cublasDgemv

DGEMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdgemv(h, t, m, n, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8) :: alpha, beta 

2.8.4.16. cublasDger

DGER performs the rank 1 operation A := alpha*x*y**T + A, where alpha is a scalar, x is an m element vector, y is an n element vector and A is an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdger(h, m, n, alpha, x, incx, y, incy,                          a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8) :: alpha 

2.8.4.17. cublasDsbmv

DSBMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric band matrix, with k super-diagonals. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdsbmv(h, t, n, k, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: k, n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8) :: alpha, beta 

2.8.4.18. cublasDspmv

DSPMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdspmv(h, t, n, alpha, a, x, incx,                          beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   real(8), device, dimension(*) :: a, x, y
   real(8) :: alpha, beta 

2.8.4.19. cublasDspr

DSPR performs the symmetric rank 1 operation A := alpha*x*x**T + A, where alpha is a real scalar, x is an n element vector and A is an n by n symmetric matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdspr(h, t, n, alpha, x, incx, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx
   real(8), device, dimension(*) :: a, x
   real(8) :: alpha 

2.8.4.20. cublasDspr2

DSPR2 performs the symmetric rank 2 operation A := alpha*x*y**T + alpha*y*x**T + A, where alpha is a scalar, x and y are n element vectors and A is an n by n symmetric matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdspr2(h, t, n, alpha, x, incx,                          y, incy, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   real(8), device, dimension(*) :: a, x, y
   real(8) :: alpha 

2.8.4.21. cublasDsymv

DSYMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n symmetric matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdsymv(h, t, n, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, lda, incx, incy
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8) :: alpha, beta 

2.8.4.22. cublasDsyr

DSYR performs the symmetric rank 1 operation A := alpha*x*x**T + A, where alpha is a real scalar, x is an n element vector and A is an n by n symmetric matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdsyr(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x
   real(8) :: alpha 

2.8.4.23. cublasDsyr2

DSYR2 performs the symmetric rank 2 operation A := alpha*x*y**T + alpha*y*x**T + A, where alpha is a scalar, x and y are n element vectors and A is an n by n symmetric matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdsyr2(h, t, n, alpha, x, incx,                          y, incy, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x, y
   real(8) :: alpha 

2.8.4.24. cublasDtbmv

DTBMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdtbmv(h, u, t, d, n, k, a, lda,                          x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 

2.8.4.25. cublasDtbsv

DTBSV solves one of the systems of equations A*x = b, or A**T*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdtbsv(h, u, t, d, n, k, a, lda,                          x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 

2.8.4.26. cublasDtpmv

DTPMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdtpmv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   real(8), device, dimension(*) :: a, x 

2.8.4.27. cublasDtpsv

DTPSV solves one of the systems of equations A*x = b, or A**T*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdtpsv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   real(8), device, dimension(*) :: a, x 

2.8.4.28. cublasDtrmv

DTRMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdtrmv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 

2.8.4.29. cublasDtrsv

DTRSV solves one of the systems of equations A*x = b, or A**T*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdtrsv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(*) :: x 

2.8.4.30. cublasDgemm

DGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdgemm(h, transa, transb, m, n,                                       k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8) :: alpha, beta 

2.8.4.31. cublasDsymm

DSYMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a symmetric matrix and B and C are m by n matrices. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdsymm(h, side, uplo, m, n,                                      alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8) :: alpha, beta 

2.8.4.32. cublasDsyrk

DSYRK performs one of the symmetric rank k operations C := alpha*A*A**T + beta*C, or C := alpha*A**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A is an n by k matrix in the first case and a k by n matrix in the second case. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdsyrk(h, uplo, trans, n, k,                                               alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldc, *) :: c
   real(8) :: alpha, beta 

2.8.4.33. cublasDsyr2k

DSYR2K performs one of the symmetric rank 2k operations C := alpha*A*B**T + alpha*B*A**T + beta*C, or C := alpha*A**T*B + alpha*B**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A and B are n by k matrices in the first case and k by n matrices in the second case. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdsyr2k(h, uplo, trans, n, k,                                        alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8) :: alpha, beta 

2.8.4.34. cublasDtrmm

DTRMM performs one of the matrix-matrix operations B := alpha*op( A )*B, or B := alpha*B*op( A ), where alpha is a scalar, B is an m by n matrix, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdtrmm(h, side, uplo, transa,                                  diag, m, n, alpha, a, lda, b, ldb, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb, ldc
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8), device, dimension(ldc, *) :: c
   real(8) :: alpha 

2.8.4.35. cublasDtrsm

DTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T. The matrix X is overwritten on B. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdtrsm(h, side, uplo, transa,                                          diag, m, n, alpha, a, lda, b, ldb)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   real(8), device, dimension(lda, *) :: a
   real(8), device, dimension(ldb, *) :: b
   real(8) :: alpha 

2.8.4.36. cublasDgemmBatched

DGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasDgemmBatched(h, transa, transb,                 m, n, k, alpha, Aarray, lda, Barray, ldb, beta, Carray, ldc, batchCount)
   type(cublasHandle) :: h
   integer :: transa
   integer :: transb
   integer :: m, n, k
   real(8) :: alpha
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   real(8) :: beta
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: batchCount 

2.8.4.37. cublasDgetrfBatched

DGETRF computes an LU factorization of a general M-by-N matrix A using partial pivoting with row interchanges. The factorization has the form A = P * L * U where P is a permutation matrix, L is lower triangular with unit diagonal elements (lower trapezoidal if m > n), and U is upper triangular (upper trapezoidal if m < n). This is the right-looking Level 3 BLAS version of the algorithm. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasDgetrfBatched(h, n, Aarray, lda,                                                      ipvt, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   integer, device :: info(*)
   integer :: batchCount 

2.8.4.38. cublasDgetriBatched

DGETRI computes the inverse of a matrix using the LU factorization computed by DGETRF. This method inverts U and then computes inv(A) by solving the system inv(A)*L = inv(U) for inv(A). Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasDgetriBatched(h, n, Aarray, lda,                                         ipvt, Carray, ldc, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer, device :: info(*)
   integer :: batchCount 

2.8.4.39. cublasDgetrsBatched

DGETRS solves a system of linear equations A * X = B or A**T * X = B with a general N-by-N matrix A using the LU factorization computed by DGETRF. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasDgetrsBatched(h, trans, n, nrhs,                                      A, lda, ipvt, B, ldb, info, batchCount)
   type(cublasHandle) :: h
   integer :: trans
   integer :: n, nrhs
   type(c_devptr), device :: A(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer, device :: info(*)
   integer :: batchCount 

2.8.4.40. cublasDtrsmBatched

DTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T. The matrix X is overwritten on B. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasDtrsmBatched(h, side, uplo,                               trans, diag, m, n, alpha, A, lda, B, ldb, batchCount)
   type(cublasHandle) :: h
   integer :: side
   integer :: uplo
   integer :: trans
   integer :: diag
   integer :: m, n
   real(8) :: alpha
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer :: batchCount 

2.8.4.41. cublasDmatinvBatched

cublasDmatinvBatched is a short cut of cublasDgetrfBatched plus cublasDgetriBatched. However it only works if n is less than 32. If not, the user has to go through cublasDgetrfBatched and cublasDgetriBatched. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasDmatinvBatched(h, n, A, lda,                                         Ainv, lda_inv, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: Ainv(*)
   integer :: lda_inv
   integer, device :: info(*)
   integer :: batchCount 

2.8.4.42. cublasDgeqrfBatched

DGEQRF computes a QR factorization of a real M-by-N matrix A: A = Q * R. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasDgeqrfBatched(h, m, n,                                     A, lda, Tau, info, batchCount)
   type(cublasHandle) :: h
   integer :: m, n
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: Tau(*)
   integer, device :: info(*)
   integer :: batchCount 

2.8.4.43. cublasDgelsBatched

DGELS solves overdetermined or underdetermined real linear systems involving an M-by-N matrix A, or its transpose, using a QR or LQ factorization of A. It is assumed that A has full rank. The following options are provided: 1. If TRANS = 'N' and m >= n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A*X ||. 2. If TRANS = 'N' and m < n: find the minimum norm solution of an underdetermined system A * X = B. 3. If TRANS = 'T' and m >= n: find the minimum norm solution of an undetermined system A**T * X = B. 4. If TRANS = 'T' and m < n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A**T * X ||. Several right hand side vectors b and solution vectors x can be handled in a single call; they are stored as the columns of the M-by-NRHS right hand side matrix B and the N-by-NRHS solution matrix X. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasDgelsBatched(h, trans, m, n,                           nrhs, A, lda, C, ldc, info, dinfo, batchCount)
   type(cublasHandle) :: h
   integer :: trans
   integer :: m, n, nrhs
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: C(*)
   integer :: ldc
   integer, device :: info(*)
   integer, device :: dinfo(*)
   integer :: batchCount 

2.8.5. Double Precision Complex Functions and Subroutines

This section contains the cuBLAS interfaces to the device-side double precision complex BLAS and cuBLAS functions and subroutines.

2.8.5.1. cublasDzasum

DZASUM takes the sum of the absolute values. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdzasum(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx
   real(8) :: res 

2.8.5.2. cublasDznrm2

DZNRM2 returns the euclidean norm of a vector via the function name, so that DZNRM2 := sqrt( x**H*x ) Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasdznrm2(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx
   real(8) :: res 

2.8.5.3. cublasIzamax

IZAMAX finds the index of the first element having maximum absolute value. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasizamax(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx
   integer :: res 

2.8.5.4. cublasIzamin

IZAMIN finds the index of the first element having minimum absolute value. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasizamin(h, n, x, incx, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x
   integer :: incx
   integer :: res 

2.8.5.5. cublasZaxpy

ZAXPY constant times a vector plus a vector. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszaxpy(h, n, a, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(8) :: a
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.5.6. cublasZcopy

ZCOPY copies a vector, x, to a vector, y. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszcopy(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.5.7. cublasZdotc

ZDOTC forms the dot product of a vector. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszdotc(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy
   complex(8) :: res 

2.8.5.8. cublasZdotu

ZDOTU forms the dot product of two vectors. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszdotu(h, n, x, incx, y, incy, res)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy
   complex(8) :: res 

2.8.5.9. cublasZdrot

Applies a plane rotation, where the cos and sin (c and s) are real and the vectors cx and cy are complex. jack dongarra, linpack, 3/11/78. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszdrot(h, n, x, incx, y, incy, sc, cs)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy
   real(8) :: sc, cs 

2.8.5.10. cublasZrot

ZROT applies a plane rotation, where the cos (C) is real and the sin (S) is complex, and the vectors CX and CY are complex. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszrot(h, n, x, incx, y, incy, sc, cs)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy
   real(8) :: sc
   complex(4) :: cs 

2.8.5.11. cublasZscal

ZSCAL scales a vector by a constant. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszscal(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   complex(8) :: a
   complex(8), device, dimension(*) :: x
   integer :: incx 

2.8.5.12. cublasZdscal

ZDSCAL scales a vector by a constant. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszdscal(h, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: n
   real(8) :: a
   complex(8), device, dimension(*) :: x
   integer :: incx 

2.8.5.13. cublasZswap

ZSWAP interchanges two vectors. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszswap(h, n, x, incx, y, incy)
   type(cublasHandle) :: h
   integer :: n
   complex(8), device, dimension(*) :: x, y
   integer :: incx, incy 

2.8.5.14. cublasZgbmv

ZGBMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, or y := alpha*A**H*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n band matrix, with kl sub-diagonals and ku super-diagonals. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszgbmv(h, t, m, n, kl, ku, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, kl, ku, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8) :: alpha, beta 

2.8.5.15. cublasZgemv

ZGEMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, or y := alpha*A**H*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszgemv(h, t, m, n, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8) :: alpha, beta 

2.8.5.16. cublasZgerc

ZGERC performs the rank 1 operation A := alpha*x*y**H + A, where alpha is a scalar, x is an m element vector, y is an n element vector and A is an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszgerc(h, m, n, alpha, x, incx, y, incy,                          a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8) :: alpha 

2.8.5.17. cublasZgeru

ZGERU performs the rank 1 operation A := alpha*x*y**T + A, where alpha is a scalar, x is an m element vector, y is an n element vector and A is an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszgeru(h, m, n, alpha, x, incx, y, incy,                          a, lda)
   type(cublasHandle) :: h
   integer :: m, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8) :: alpha 

2.8.5.18. cublasZhbmv

ZHBMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n hermitian band matrix, with k super-diagonals. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszhbmv(h, t, n, k, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: k, n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8) :: alpha, beta 

2.8.5.19. cublasZhemv

ZHEMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n hermitian matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszhemv(h, t, n, alpha, a, lda,                          x, incx, beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, lda, incx, incy
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8) :: alpha, beta 

2.8.5.20. cublasZher

ZHER performs the hermitian rank 1 operation A := alpha*x*x**H + A, where alpha is a real scalar, x is an n element vector and A is an n by n hermitian matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszher(h, t, n, alpha, x, incx, a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x
   real(8) :: alpha 

2.8.5.21. cublasZher2

ZHER2 performs the hermitian rank 2 operation A := alpha*x*y**H + conjg( alpha )*y*x**H + A, where alpha is a scalar, x and y are n element vectors and A is an n by n hermitian matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszher2(h, t, n, alpha, x, incx, y, incy,                                       a, lda)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x, y
   complex(8) :: alpha 

2.8.5.22. cublasZhpmv

ZHPMV performs the matrix-vector operation y := alpha*A*x + beta*y, where alpha and beta are scalars, x and y are n element vectors and A is an n by n hermitian matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszhpmv(h, t, n, alpha, a, x, incx,                          beta, y, incy)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   complex(8), device, dimension(*) :: a, x, y
   complex(8) :: alpha, beta 

2.8.5.23. cublasZhpr

ZHPR performs the hermitian rank 1 operation A := alpha*x*x**H + A, where alpha is a real scalar, x is an n element vector and A is an n by n hermitian matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszhpr(h, t, n, alpha, x, incx, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x
   real(8) :: alpha 

2.8.5.24. cublasZhpr2

ZHPR2 performs the hermitian rank 2 operation A := alpha*x*y**H + conjg( alpha )*y*x**H + A, where alpha is a scalar, x and y are n element vectors and A is an n by n hermitian matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszhpr2(h, t, n, alpha, x, incx,                          y, incy, a)
   type(cublasHandle) :: h
   integer :: t
   integer :: n, incx, incy
   complex(8), device, dimension(*) :: a, x, y
   complex(8) :: alpha 

2.8.5.25. cublasZtbmv

ZTBMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, or x := A**H*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasztbmv(h, u, t, d, n, k, a, lda,                          x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 

2.8.5.26. cublasZtbsv

ZTBSV solves one of the systems of equations A*x = b, or A**T*x = b, or A**H*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular band matrix, with ( k + 1 ) diagonals. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasztbsv(h, u, t, d, n, k, a, lda,                          x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, k, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 

2.8.5.27. cublasZtpmv

ZTPMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, or x := A**H*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasztpmv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x 

2.8.5.28. cublasZtpsv

ZTPSV solves one of the systems of equations A*x = b, or A**T*x = b, or A**H*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix, supplied in packed form. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasztpsv(h, u, t, d, n, a, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx
   complex(8), device, dimension(*) :: a, x 

2.8.5.29. cublasZtrmv

ZTRMV performs one of the matrix-vector operations x := A*x, or x := A**T*x, or x := A**H*x, where x is an n element vector and A is an n by n unit, or non-unit, upper or lower triangular matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasztrmv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 

2.8.5.30. cublasZtrsv

ZTRSV solves one of the systems of equations A*x = b, or A**T*x = b, or A**H*x = b, where b and x are n element vectors and A is an n by n unit, or non-unit, upper or lower triangular matrix. No test for singularity or near-singularity is included in this routine. Such tests must be performed before calling this routine. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasztrsv(h, u, t, d, n, a, lda, x, incx)
   type(cublasHandle) :: h
   integer :: u, t, d
   integer :: n, incx, lda
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(*) :: x 

2.8.5.31. cublasZgemm

ZGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T or op( X ) = X**H, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszgemm(h, transa, transb, m, n,                                       k, alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: transa, transb
   integer :: m, n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8) :: alpha, beta 

2.8.5.32. cublasZhemm

ZHEMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is an hermitian matrix and B and C are m by n matrices. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszhemm(h, side, uplo, m, n,                                      alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8) :: alpha, beta 

2.8.5.33. cublasZherk

ZHERK performs one of the hermitian rank k operations C := alpha*A*A**H + beta*C, or C := alpha*A**H*A + beta*C, where alpha and beta are real scalars, C is an n by n hermitian matrix and A is an n by k matrix in the first case and a k by n matrix in the second case. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszherk(h, uplo, trans, n, k,                                               alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldc, *) :: c
   real(8) :: alpha, beta 

2.8.5.34. cublasZher2k

ZHER2K performs one of the hermitian rank 2k operations C := alpha*A*B**H + conjg( alpha )*B*A**H + beta*C, or C := alpha*A**H*B + conjg( alpha )*B**H*A + beta*C, where alpha and beta are scalars with beta real, C is an n by n hermitian matrix and A and B are n by k matrices in the first case and k by n matrices in the second case. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszher2k(h, uplo, trans, n, k,                                        alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8) :: alpha
   real(8) :: beta 

2.8.5.35. cublasZsymm

ZSYMM performs one of the matrix-matrix operations C := alpha*A*B + beta*C, or C := alpha*B*A + beta*C, where alpha and beta are scalars, A is a symmetric matrix and B and C are m by n matrices. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszsymm(h, side, uplo, m, n,                                      alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8) :: alpha, beta 

2.8.5.36. cublasZsyrk

ZSYRK performs one of the symmetric rank k operations C := alpha*A*A**T + beta*C, or C := alpha*A**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A is an n by k matrix in the first case and a k by n matrix in the second case. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszsyrk(h, uplo, trans, n, k,                                               alpha, a, lda, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldc, *) :: c
   complex(8) :: alpha, beta 

2.8.5.37. cublasZsyr2k

ZSYR2K performs one of the symmetric rank 2k operations C := alpha*A*B**T + alpha*B*A**T + beta*C, or C := alpha*A**T*B + alpha*B**T*A + beta*C, where alpha and beta are scalars, C is an n by n symmetric matrix and A and B are n by k matrices in the first case and k by n matrices in the second case. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublaszsyr2k(h, uplo, trans, n, k,                                        alpha, a, lda, b, ldb, beta, c, ldc)
   type(cublasHandle) :: h
   integer :: uplo, trans
   integer :: n, k, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8) :: alpha, beta 

2.8.5.38. cublasZtrmm

ZTRMM performs one of the matrix-matrix operations B := alpha*op( A )*B, or B := alpha*B*op( A ) where alpha is a scalar, B is an m by n matrix, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasztrmm(h, side, uplo, transa,                                                  diag, m, n, alpha, a, lda,                                                             b, ldb, c, ldc)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb, ldc
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8), device, dimension(ldc, *) :: c
   complex(8) :: alpha 

2.8.5.39. cublasZtrsm

ZTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H. The matrix X is overwritten on B. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasztrsm(h, side, uplo, transa,                                          diag, m, n, alpha, a, lda, b, ldb)
   type(cublasHandle) :: h
   integer :: side, uplo, transa, diag
   integer :: m, n, lda, ldb
   complex(8), device, dimension(lda, *) :: a
   complex(8), device, dimension(ldb, *) :: b
   complex(8) :: alpha 

2.8.5.40. cublasZgemmBatched

ZGEMM performs one of the matrix-matrix operations C := alpha*op( A )*op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T or op( X ) = X**H, alpha and beta are scalars, and A, B and C are matrices, with op( A ) an m by k matrix, op( B ) a k by n matrix and C an m by n matrix. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasZgemmBatched(h, transa, transb,                 m, n, k, alpha, Aarray, lda, Barray, ldb, beta, Carray, ldc, batchCount)
   type(cublasHandle) :: h
   integer :: transa
   integer :: transb
   integer :: m, n, k
   complex(8) :: alpha
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   type(c_devptr), device :: Barray(*)
   integer :: ldb
   complex(8) :: beta
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer :: batchCount 

2.8.5.41. cublasZgetrfBatched

ZGETRF computes an LU factorization of a general M-by-N matrix A using partial pivoting with row interchanges. The factorization has the form A = P * L * U where P is a permutation matrix, L is lower triangular with unit diagonal elements (lower trapezoidal if m > n), and U is upper triangular (upper trapezoidal if m < n). This is the right-looking Level 3 BLAS version of the algorithm. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasZgetrfBatched(h, n, Aarray, lda,                                                      ipvt, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   integer, device :: info(*)
   integer :: batchCount 

2.8.5.42. cublasZgetriBatched

ZGETRI computes the inverse of a matrix using the LU factorization computed by ZGETRF. This method inverts U and then computes inv(A) by solving the system inv(A)*L = inv(U) for inv(A). Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasZgetriBatched(h, n, Aarray, lda,                                         ipvt, Carray, ldc, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: Aarray(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: Carray(*)
   integer :: ldc
   integer, device :: info(*)
   integer :: batchCount 

2.8.5.43. cublasZgetrsBatched

ZGETRS solves a system of linear equations A * X = B, A**T * X = B, or A**H * X = B with a general N-by-N matrix A using the LU factorization computed by ZGETRF. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasZgetrsBatched(h, trans, n, nrhs,                                      A, lda, ipvt, B, ldb, info, batchCount)
   type(cublasHandle) :: h
   integer :: trans
   integer :: n, nrhs
   type(c_devptr), device :: A(*)
   integer :: lda
   integer, device :: ipvt(*)
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer, device :: info(*)
   integer :: batchCount 

2.8.5.44. cublasZtrsmBatched

ZTRSM solves one of the matrix equations op( A )*X = alpha*B, or X*op( A ) = alpha*B, where alpha is a scalar, X and B are m by n matrices, A is a unit, or non-unit, upper or lower triangular matrix and op( A ) is one of op( A ) = A or op( A ) = A**T or op( A ) = A**H. The matrix X is overwritten on B. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasZtrsmBatched(h, side, uplo,                               trans, diag, m, n, alpha, A, lda, B, ldb, batchCount)
   type(cublasHandle) :: h
   integer :: side
   integer :: uplo
   integer :: trans
   integer :: diag
   integer :: m, n
   complex(8) :: alpha
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: B(*)
   integer :: ldb
   integer :: batchCount 

2.8.5.45. cublasZmatinvBatched

cublasZmatinvBatched is a short cut of cublasZgetrfBatched plus cublasZgetriBatched. However it only works if n is less than 32. If not, the user has to go through cublasZgetrfBatched and cublasZgetriBatched. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasZmatinvBatched(h, n, A, lda,                                         Ainv, lda_inv, info, batchCount)
   type(cublasHandle) :: h
   integer :: n
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: Ainv(*)
   integer :: lda_inv
   integer, device :: info(*)
   integer :: batchCount 

2.8.5.46. cublasZgeqrfBatched

ZGEQRF computes a QR factorization of a complex M-by-N matrix A: A = Q * R. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasZgeqrfBatched(h, m, n,                                     A, lda, Tau, info, batchCount)
   type(cublasHandle) :: h
   integer :: m, n
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: Tau(*)
   integer, device :: info(*)
   integer :: batchCount 

2.8.5.47. cublasZgelsBatched

ZGELS solves overdetermined or underdetermined complex linear systems involving an M-by-N matrix A, or its conjugate-transpose, using a QR or LQ factorization of A. It is assumed that A has full rank. The following options are provided: 1. If TRANS = 'N' and m >= n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A*X ||. 2. If TRANS = 'N' and m < n: find the minimum norm solution of an underdetermined system A * X = B. 3. If TRANS = 'C' and m >= n: find the minimum norm solution of an undetermined system A**H * X = B. 4. If TRANS = 'C' and m < n: find the least squares solution of an overdetermined system, i.e., solve the least squares problem minimize || B - A**H * X ||. Several right hand side vectors b and solution vectors x can be handled in a single call; they are stored as the columns of the M-by-NRHS right hand side matrix B and the N-by-NRHS solution matrix X. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function cublasZgelsBatched(h, trans, m, n,                           nrhs, A, lda, C, ldc, info, dinfo, batchCount)
   type(cublasHandle) :: h
   integer :: trans
   integer :: m, n, nrhs
   type(c_devptr), device :: A(*)
   integer :: lda
   type(c_devptr), device :: C(*)
   integer :: ldc
   integer, device :: info(*)
   integer, device :: dinfo(*)
   integer :: batchCount 

3. FFT Runtime Library APIs

This section describes the Fortran interfaces to the cuFFT library. The FFT functions are only accessible from host code. All of the runtime API routines are integer functions that return an error code; they return a value of CUFFT_SUCCESS if the call was successful, or another cuFFT status return value if there was an error.

Unless a specific kind is provided in the following interfaces, the plain integer type implies integer(4) and the plain real type implies real(4).

3.1. CUFFT Definitions and Helper Functions

This section contains definitions and data types used in the cuFFT library and interfaces to the cuFFT helper functions.

The cuFFT module contains the following constants and enumerations:

integer, parameter :: CUFFT_FORWARD = -1
integer, parameter :: CUFFT_INVERSE = 1
! CUFFT Status
enum, bind(C)
    enumerator :: CUFFT_SUCCESS        = 0
    enumerator :: CUFFT_INVALID_PLAN   = 1
    enumerator :: CUFFT_ALLOC_FAILED   = 2
    enumerator :: CUFFT_INVALID_TYPE   = 3
    enumerator :: CUFFT_INVALID_VALUE  = 4
    enumerator :: CUFFT_INTERNAL_ERROR = 5
    enumerator :: CUFFT_EXEC_FAILED    = 6
    enumerator :: CUFFT_SETUP_FAILED   = 7
    enumerator :: CUFFT_INVALID_SIZE   = 8
    enumerator :: CUFFT_UNALIGNED_DATA = 9
end enum
! CUFFT Transform Types
enum, bind(C)
    enumerator :: CUFFT_R2C = z'2a'     ! Real to Complex (interleaved)
    enumerator :: CUFFT_C2R = z'2c'     ! Complex (interleaved) to Real
    enumerator :: CUFFT_C2C = z'29'     ! Complex to Complex, interleaved
    enumerator :: CUFFT_D2Z = z'6a'     ! Double to Double-Complex
    enumerator :: CUFFT_Z2D = z'6c'     ! Double-Complex to Double
    enumerator :: CUFFT_Z2Z = z'69'     ! Double-Complex to Double-Complex
end enum
! CUFFT Data Layouts
enum, bind(C)
    enumerator :: CUFFT_COMPATIBILITY_NATIVE          = 0
    enumerator :: CUFFT_COMPATIBILITY_FFTW_PADDING    = 1
    enumerator :: CUFFT_COMPATIBILITY_FFTW_ASYMMETRIC = 2
    enumerator :: CUFFT_COMPATIBILITY_FFTW_ALL        = 3
end enum
integer, parameter :: CUFFT_COMPATIBILITY_DEFAULT = CUFFT_COMPATIBILITY_FFTW_PADDING

3.1.1. cufftSetCompatibilityMode

This function configures the layout of cuFFT output in FFTW-compatible modes.

 integer(4) function cufftSetCompatibilityMode( plan, mode )
   integer :: plan
   integer :: mode 

3.1.2. cufftSetStream

This function sets the stream to be used by the cuFFT library to execute its routines.

 integer(4) function cufftSetStream(plan, stream)
   integer :: plan
   integer(kind=cuda_stream_kind()) :: stream 

3.1.3. cufftGetVersion

This function returns the version number of cuFFT.

 integer(4) function cufftGetVersion( version )
   integer :: version 

3.1.4. cufftSetAutoAllocation

This function indicates that the caller intends to allocate and manage work areas for plans that have been generated. cuFFT default behavior is to allocate the work area at plan generation time. If cufftSetAutoAllocation() has been called with autoAllocate set to 0 prior to one of the cufftMakePlan*() calls, cuFFT does not allocate the work area. This is the preferred sequence for callers wishing to manage work area allocation.

 integer(4) function cufftSetAutoAllocation(plan, autoAllocate)
   integer(4) :: plan, autoallocate 

3.1.5. cufftSetWorkArea

This function overrides the work area pointer associated with a plan. If the work area was auto-allocated, cuFFT frees the auto-allocated space. The cufftExecute*() calls assume that the work area pointer is valid and that it points to a contiguous region in device memory that does not overlap with any other work area. If this is not the case, results are indeterminate.

 integer(4) function cufftSetWorkArea(plan, workArea)
   integer(4) :: plan
   integer, device :: workArea(*) 

3.1.6. cufftDestroy

This function frees all GPU resources associated with a cuFFT plan and destroys the internal plan data structure.

 integer(4) function cufftDestroy( plan )
   integer :: plan 

3.2. CUFFT Plans and Estimated Size Functions

This section contains functions from the cuFFT library used to create plans and estimate work buffer size.

3.2.1. cufftPlan1d

This function creates a 1D FFT plan configuration for a specified signal size and data type. Nx is the size of the transform; batch is the number of transforms of size nx.

 integer(4) function cufftPlan1d(plan, nx, ffttype, batch)
   integer :: plan
   integer :: nx
   integer :: ffttype
   integer :: batch 

3.2.2. cufftPlan2d

This function creates a 2D FFT plan configuration according to a specified signal size and data type. Nx is the size of the of the 1st dimension in the transform; ny is the size of the 2nd dimension.

 integer(4) function cufftPlan2d( plan, nx, ny, ffttype )
   integer :: plan
   integer :: nx, ny
   integer :: ffttype 

3.2.3. cufftPlan3d

This function creates a 3D FFT plan configuration according to a specified signal size and data type. Nx is the size of the of the 1st dimension in the transform; ny is the size of the 2nd dimension; nz is the size of the 3rd dimension.

 integer(4) function cufftPlan3d( plan, nx, ny, nz, ffttype )
   integer :: plan
   integer :: nx, ny, nz
   integer :: ffttype 

3.2.4. cufftPlanMany

This function creates an FFT plan configuration of dimension rank, with sizes specified in the array n. Batch is the number of transforms to configure. This function supports more complicated input and output data layouts using the arguments inembed, istride, idist, onembed, ostride, and odist. In the C function, if inembed and onembed are set to NULL, all other stride information is ignored. Fortran programmers can pass NULL when using the PGI cufft module by setting an F90 pointer to null(), either through direct assignment, using c_f_pointer() with c_null_ptr as the first argument, or the nullify statement, then passing the nullified F90 pointer as the actual argument for the inembed and onembed dummies.

 integer(4) function cufftPlanMany(plan, rank, n, inembed, istride, idist, onembed, ostride, odist, ffttype, batch )
   integer :: plan
   integer :: rank
   integer :: n
   integer :: inembed, onembed
   integer :: istride, idist, ostride, odist
   integer :: ffttype, batch 

3.2.5. cufftCreate

This function creates an opaque handle for further cuFFT calls and allocates some small data structures on the host. In C, the handle type is currently typedef'ed to an int, so in Fortran we use an integer*4 to hold the plan.

 integer(4) function cufftCreate(plan)
   integer(4) :: plan 

3.2.6. cufftMakePlan1d

Following a call to cufftCreate(), this function creates a 1D FFT plan configuration for a specified signal size and data type. Nx is the size of the transform; batch is the number of transforms of size nx.

 integer(4) function cufftMakePlan1d(plan, nx, ffttype, batch, worksize)
   integer(4) :: plan
   integer(4) :: nx
   integer(4) :: ffttype
   integer(4) :: batch
   integer(kind=int_ptr_kind()) :: workSize 

3.2.7. cufftMakePlan2d

Following a call to cufftCreate(), this function creates a 2D FFT plan configuration according to a specified signal size and data type. Nx is the size of the of the 1st dimension in the transform; ny is the size of the 2nd dimension.

 integer(4) function cufftMakePlan2d(plan, nx, ny, ffttype, workSize)
   integer(4) :: plan
   integer(4) :: nx, ny
   integer(4) :: ffttype
   integer(kind=int_ptr_kind()) :: workSize 

3.2.8. cufftMakePlan3d

Following a call to cufftCreate(), this function creates a 3D FFT plan configuration according to a specified signal size and data type. Nx is the size of the of the 1st dimension in the transform; ny is the size of the 2nd dimension; nz is the size of the 3rd dimension.

 integer(4) function cufftMakePlan3d(plan, nx, ny, nz, ffttype, workSize)
   integer(4) :: plan
   integer(4) :: nx, ny, nz
   integer(4) :: ffttype
   integer(kind=int_ptr_kind()) :: workSize 

3.2.9. cufftMakePlanMany

Following a call to cufftCreate(), this function creates an FFT plan configuration of dimension rank, with sizes specified in the array n. Batch is the number of transforms to configure. This function supports more complicated input and output data layouts using the arguments inembed, istride, idist, onembed, ostride, and odist. In the C function, if inembed and onembed are set to NULL, all other stride information is ignored. Fortran programmers can pass NULL when using the PGI cufft module by setting an F90 pointer to null(), either through direct assignment, using c_f_pointer() with c_null_ptr as the first argument, or the nullify statement, then passing the nullified F90 pointer as the actual argument for the inembed and onembed dummies.

 integer(4) function cufftMakePlanMany(plan, rank, n, inembed, istride, idist, onembed, ostride, odist, ffttype, batch, workSize)
   integer(4) :: plan
   integer(4) :: rank
   integer :: n
   integer :: inembed, onembed
   integer(4) :: istride, idist, ostride, odist
   integer(4) :: ffttype, batch
   integer(kind=int_ptr_kind()) :: workSize 

3.2.10. cufftEstimate1d

This function returns an estimate for the size of the work area required, in bytes, given the specified size and data type, and assuming default plan settings.

 integer(4) function cufftEstimate1d(nx, ffttype, batch, workSize)
   integer(4) :: nx
   integer(4) :: ffttype
   integer(4) :: batch
   integer(kind=int_ptr_kind()) :: workSize 

3.2.11. cufftEstimate2d

This function returns an estimate for the size of the work area required, in bytes, given the specified size and data type, and assuming default plan settings.

 integer(4) function cufftEstimate2d(nx, ny, ffttype, workSize)
   integer(4) :: nx, ny
   integer(4) :: ffttype
   integer(kind=int_ptr_kind()) :: workSize 

3.2.12. cufftEstimate3d

This function returns an estimate for the size of the work area required, in bytes, given the specified size and data type, and assuming default plan settings.

 integer(4) function cufftEstimate3d(nx, ny, nz, ffttype, workSize)
   integer(4) :: nx, ny, nz
   integer(4) :: ffttype
   integer(kind=int_ptr_kind()) :: workSize 

3.2.13. cufftEstimateMany

This function returns an estimate for the size of the work area required, in bytes, given the specified size and data type, and assuming default plan settings.

 integer(4) function cufftEstimateMany(rank, n, inembed, istride, idist, onembed, ostride, odist, ffttype, batch, workSize)
   integer(4) :: rank, istride, idist, ostride, odist
   integer :: n, inembed, onembed
   integer(4) :: ffttype
   integer(4) :: batch
   integer(kind=int_ptr_kind()) :: workSize 

3.2.14. cufftGetSize1d

This function gives a more accurate estimate than cufftEstimate1d() of the size of the work area required, in bytes, given the specified plan parameters and taking into account any plan settings which may have been made.

 integer(4) function cufftGetSize1d(plan, nx, ffttype, batch, workSize)
   integer(4) :: plan, nx, ffttype, batch
   integer(kind=int_ptr_kind()) :: workSize 

3.2.15. cufftGetSize2d

This function gives a more accurate estimate than cufftEstimate2d() of the size of the work area required, in bytes, given the specified plan parameters and taking into account any plan settings which may have been made.

 integer(4) function cufftGetSize2d(plan, nx, ny, ffttype, workSize)
   integer(4) :: plan, nx, ny, ffttype
   integer(kind=int_ptr_kind()) :: workSize 

3.2.16. cufftGetSize3d

This function gives a more accurate estimate than cufftEstimate3d() of the size of the work area required, in bytes, given the specified plan parameters and taking into account any plan settings which may have been made.

 integer(4) function cufftGetSize3d(plan, nx, ny, nz, ffttype, workSize)
   integer(4) :: plan, nx, ny, nz, ffttype
   integer(kind=int_ptr_kind()) :: workSize 

3.2.17. cufftGetSizeMany

This function gives a more accurate estimate than cufftEstimateMany() of the size of the work area required, in bytes, given the specified plan parameters and taking into account any plan settings which may have been made.

 integer(4) function cufftGetSizeMany(plan, rank, n, inembed, istride, idist, onembed, ostride, odist, ffttype, batch, workSize)
   integer(4) :: plan, rank, istride, idist, ostride, odist
   integer :: n, inembed, onembed
   integer(4) :: ffttype
   integer(4) :: batch
   integer(kind=int_ptr_kind()) :: workSize 

3.2.18. cufftGetSize

Once plan generation has been done, either with the original API or the extensible API, this call returns the actual size of the work area required, in bytes, to support the plan. Callers who choose to manage work area allocation within their application must use this call after plan generation, and after any cufftSet*() calls subsequent to plan generation, if those calls might alter the required work space size.

 integer(4) function cufftGetSize(plan, workSize)
   integer(4) :: plan
   integer(kind=int_ptr_kind()) :: workSize 

3.3. CUFFT Execution Functions

This section contains definitions and data types used in the cuFFT library and interfaces to the cuFFT helper functions.

3.3.1. cufftExecC2C

This function executes a single precision complex-to-complex transform plan in the transform direction as specified by the direction parameter. If idata and odata are the same, this function does an in-place transform.

 integer(4) function cufftExecC2C( plan, idata, odata, direction )
   integer :: plan
   complex(4), device, dimension(*) :: idata, odata
   integer :: direction 

3.3.2. cufftExecR2C

This function executes a single precision real-to-complex, implicity forward, cuFFT transform plan. If idata and odata are the same, this function does an in-place transform, but note there are data layout differences between in-place and out-of-place transforms for real-to- complex FFTs in cuFFT.

 integer(4) function cufftExecR2C( plan, idata, odata )
   integer :: plan
   real(4), device, dimension(*) :: idata
   complex(4), device, dimension(*) :: odata 

3.3.3. cufftExecC2R

This function executes a single precision complex-to-real, implicity inverse, cuFFT transform plan. If idata and odata are the same, this function does an in-place transform.

 integer(4) function cufftExecC2R( plan, idata, odata )
   integer :: plan
   complex(4), device, dimension(*) :: idata
   real(4), device, dimension(*) :: odata 

3.3.4. cufftExecZ2Z

This function executes a double precision complex-to-complex transform plan in the transform direction as specified by the direction parameter. If idata and odata are the same, this function does an in-place transform.

 integer(4) function cufftExecZ2Z( plan, idata, odata, direction )
   integer :: plan
   complex(8), device, dimension(*) :: idata, odata
   integer :: direction 

3.3.5. cufftExecD2Z

This function executes a double precision real-to-complex, implicity forward, cuFFT transform plan. If idata and odata are the same, this function does an in-place transform, but note there are data layout differences between in-place and out-of-place transforms for real-to- complex FFTs in cuFFT.

 integer(4) function cufftExecD2Z( plan, idata, odata )
   integer :: plan
   real(8), device, dimension(*) :: idata
   complex(8), device, dimension(*) :: odata 

3.3.6. cufftExecZ2D

This function executes a double precision complex-to-real, implicity inverse, cuFFT transform plan. If idata and odata are the same, this function does an in-place transform.

 integer(4) function cufftExecZ2D( plan, idata, odata )
   integer :: plan
   complex(8), device, dimension(*) :: idata
   real(8), device, dimension(*) :: odata 

4. Random Number Runtime Library APIs

This section describes the Fortran interfaces to the CUDA cuRAND library. The cuRAND functionality is accessible from both host and device code. In the host library, all of the runtime API routines are integer functions that return an error code; they return a value of CURAND_STATUS_SUCCESS if the call was successful, or other cuRAND return status value if there was an error. The host library routines are meant to produce a series or array of random numbers. In the device library, the init routines are subroutines and the generator functions return the type of the value being generated. The device library routines are meant for producing a single value per thread per call.

Unless a specific kind is provided, the plain integer type implies integer(4) and the plain real type implies real(4).

4.1. CURAND Definitions and Helper Functions

This section contains definitions and data types used in the cuRAND library and interfaces to the cuRAND helper functions.

The curand module contains the following derived type definitions:

TYPE curandGenerator
  TYPE(C_PTR)  :: handle
END TYPE

The curand module contains the following enumerations:

! CURAND Status
enum, bind(c)
    enumerator :: CURAND_STATUS_SUCCESS                   = 0
    enumerator :: CURAND_STATUS_VERSION_MISMATCH          = 100
    enumerator :: CURAND_STATUS_NOT_INITIALIZED           = 101
    enumerator :: CURAND_STATUS_ALLOCATION_FAILED         = 102
    enumerator :: CURAND_STATUS_TYPE_ERROR                = 103
    enumerator :: CURAND_STATUS_OUT_OF_RANGE              = 104
    enumerator :: CURAND_STATUS_LENGTH_NOT_MULTIPLE       = 105
    enumerator :: CURAND_STATUS_DOUBLE_PRECISION_REQUIRED = 106
    enumerator :: CURAND_STATUS_LAUNCH_FAILURE            = 201
    enumerator :: CURAND_STATUS_PREEXISTING_FAILURE       = 202
    enumerator :: CURAND_STATUS_INITIALIZATION_FAILED     = 203
    enumerator :: CURAND_STATUS_ARCH_MISMATCH             = 204
    enumerator :: CURAND_STATUS_INTERNAL_ERROR            = 999
end enum
! CURAND Generator Types
enum, bind(c)
    enumerator :: CURAND_RNG_TEST                    = 0
    enumerator :: CURAND_RNG_PSEUDO_DEFAULT          = 100
    enumerator :: CURAND_RNG_PSEUDO_XORWOW           = 101
    enumerator :: CURAND_RNG_PSEUDO_MRG32K3A         = 121
    enumerator :: CURAND_RNG_PSEUDO_MTGP32           = 141
    enumerator :: CURAND_RNG_PSEUDO_MT19937          = 142
    enumerator :: CURAND_RNG_PSEUDO_PHILOX4_32_10    = 161
    enumerator :: CURAND_RNG_QUASI_DEFAULT           = 200
    enumerator :: CURAND_RNG_QUASI_SOBOL32           = 201
    enumerator :: CURAND_RNG_QUASI_SCRAMBLED_SOBOL32 = 202
    enumerator :: CURAND_RNG_QUASI_SOBOL64           = 203
    enumerator :: CURAND_RNG_QUASI_SCRAMBLED_SOBOL64 = 204
end enum
! CURAND Memory Ordering
enum, bind(c)
    enumerator :: CURAND_ORDERING_PSEUDO_BEST    = 100
    enumerator :: CURAND_ORDERING_PSEUDO_DEFAULT = 101
    enumerator :: CURAND_ORDERING_PSEUDO_SEEDED  = 102
    enumerator :: CURAND_ORDERING_QUASI_DEFAULT  = 201
end enum
! CURAND Direction Vectors
enum, bind(c)
    enumerator :: CURAND_DIRECTION_VECTORS_32_JOEKUO6           = 101
    enumerator :: CURAND_SCRAMBLED_DIRECTION_VECTORS_32_JOEKUO6 = 102
    enumerator :: CURAND_DIRECTION_VECTORS_64_JOEKUO6           = 103
    enumerator :: CURAND_SCRAMBLED_DIRECTION_VECTORS_64_JOEKUO6 = 104
end enum
! CURAND Methods
enum, bind(c)
    enumerator :: CURAND_CHOOSE_BEST    = 0
    enumerator :: CURAND_ITR            = 1
    enumerator :: CURAND_KNUTH          = 2
    enumerator :: CURAND_HITR           = 3
    enumerator :: CURAND_M1             = 4
    enumerator :: CURAND_M2             = 5
    enumerator :: CURAND_BINARY_SEARCH  = 6
    enumerator :: CURAND_DISCRETE_GAUSS = 7
    enumerator :: CURAND_REJECTION      = 8
    enumerator :: CURAND_DEVICE_API     = 9
    enumerator :: CURAND_FAST_REJECTION = 10
    enumerator :: CURAND_3RD            = 11
    enumerator :: CURAND_DEFINITION     = 12
    enumerator :: CURAND_POISSON        = 13
end enum

4.1.1. curandCreateGenerator

This function creates a new random number generator of type rng. See the beginning of this section for valid values of rng.

 integer(4) function curandCreateGenerator(generator, rng)
   type(curandGenerator) :: generator
   integer :: rng 

4.1.2. curandCreateGeneratorHost

This function creates a new host CPU random number generator of type rng. See the beginning of this section for valid values of rng.

 integer(4) function curandCreateGeneratorHost(generator, rng)
   type(curandGenerator) :: generator
   integer :: rng 

4.1.3. curandDestroyGenerator

This function destroys an existing random number generator.

 integer(4) function curandDestroyGenerator(generator)
   type(curandGenerator) :: generator 

4.1.4. curandGetVersion

This function returns the version number of the cuRAND library.

 integer(4) function curandGetVersion(version)
   integer(4) :: version 

4.1.5. curandSetStream

This function sets the current stream for the cuRAND kernel launches.

 integer(4) function curandSetStream(generator, stream)
   type(curandGenerator) :: generator
   integer(kind=c_intptr_t) :: stream 

4.1.6. curandSetPseudoRandomGeneratorSeed

This function sets the seed value of the pseudo-random number generator.

 integer(4) function curandSetPseudoRandomGeneratorSeed(generator, seed)
   type(curandGenerator) :: generator
   integer(8) :: seed 

4.1.7. curandSetGeneratorOffset

This function sets the absolute offset of the pseudo or quasirandom number generator.

 integer(4) function curandSetGeneratorOffset(generator, offset)
   type(curandGenerator) :: generator
   integer(8) :: offset 

4.1.8. curandSetGeneratorOrdering

This function sets the ordering of results of the pseudo or quasirandom number generator.

 integer(4) function curandSetGeneratorOrdering(generator, order)
   type(curandGenerator) :: generator
   integer(4) :: order 

4.1.9. curandSetQuasiRandomGeneratorDimensions

This function sets number of dimensions of the quasirandom number generator.

 integer(4) function curandSetQuasiRandomGeneratorDimensions(generator, num)
   type(curandGenerator) :: generator
   integer(4) :: num 

4.2. CURAND Generator Functions

This section contains interfaces for the cuRAND generator functions.

4.2.1. curandGenerate

This function generates 32-bit pseudo or quasirandom numbers.

 integer(4) function curandGenerate(generator, array, num )
   type(curandGenerator) :: generator
   integer(4), device :: array(*) ! Host or device depending on the generator
   integer(kind=c_intptr_t) :: num 

4.2.2. curandGenerateLongLong

This function generates 64-bit integer quasirandom numbers. The function curandGenerate() has also been overloaded to accept these function arguments.

 integer(4) function curandGenerateLongLong(generator, array, num )
   type(curandGenerator) :: generator
   integer(8), device :: array(*) ! Host or device depending on the generator
   integer(kind=c_intptr_t) :: num 

4.2.3. curandGenerateUniform

This function generates 32-bit floating point uniformly distributed random numbers. The function curandGenerate() has also been overloaded to accept these function arguments.

 integer(4) function curandGenerateUniform(generator, array, num )
   type(curandGenerator) :: generator
   real(4), device :: array(*) ! Host or device depending on the generator
   integer(kind=c_intptr_t) :: num 

4.2.4. curandGenerateUniformDouble

This function generates 64-bit floating point uniformly distributed random numbers. The function curandGenerate() has also been overloaded to accept these function arguments.

 integer(4) function curandGenerateUniformDouble(generator, array, num )
   type(curandGenerator) :: generator
   real(8), device :: array(*) ! Host or device depending on the generator
   integer(kind=c_intptr_t) :: num 

4.2.5. curandGenerateNormal

This function generates 32-bit floating point normally distributed random numbers. The function curandGenerate() has also been overloaded to accept these function arguments.

 integer(4) function curandGenerateNormal(generator, array, num, mean, stddev )
   type(curandGenerator) :: generator
   real(4), device :: array(*) ! Host or device depending on the generator
   integer(kind=c_intptr_t) :: num
   real(4) :: mean, stddev 

4.2.6. curandGenerateNormalDouble

This function generates 64-bit floating point normally distributed random numbers. The function curandGenerate() has also been overloaded to accept these function arguments.

 integer(4) function curandGenerateNormalDouble(generator, array, num, mean, stddev )
   type(curandGenerator) :: generator
   real(8), device :: array(*) ! Host or device depending on the generator
   integer(kind=c_intptr_t) :: num
   real(8) :: mean, stddev 

4.2.7. curandGeneratePoisson

This function generates Poisson-distributed random numbers. The function curandGenerate() has also been overloaded to accept these function arguments.

 integer(4) function curandGeneratePoisson(generator, array, num, lambda )
   type(curandGenerator) :: generator
   real(8), device :: array(*) ! Host or device depending on the generator
   integer(kind=c_intptr_t) :: num
   real(8) :: lambda 

4.2.8. curandGenerateSeeds

This function sets the starting state of the generator.

 integer(4) function curandGenerateSeeds(generator)
   type(curandGenerator) :: generator 

4.2.9. curandGenerateLogNormal

This function generates 32-bit floating point log-normally distributed random numbers.

 integer(4) function curandGenerateLogNormal(generator, array, num, mean, stddev )
   type(curandGenerator) :: generator
   real(4), device :: array(*) ! Host or device depending on the generator
   integer(kind=c_intptr_t) :: num
   real(4) :: mean, stddev 

4.2.10. curandGenerateLogNormalDouble

This function generates 64-bit floating point log-normally distributed random numbers.

 integer(4) function curandGenerateLogNormalDouble(generator, array, num, mean, stddev )
   type(curandGenerator) :: generator
   real(8), device :: array(*) ! Host or device depending on the generator
   integer(kind=c_intptr_t) :: num
   real(8) :: mean, stddev 

4.3. CURAND Device Definitions and Functions

This section contains definitions and data types used in the cuRAND device library and interfaces to the cuRAND functions.

The curand device module contains the following derived type definitions:

TYPE curandStateXORWOW
    integer(4) :: d
    integer(4) :: v(5)
    integer(4) :: boxmuller_flag
    integer(4) :: boxmuller_flag_double
    real(4)    :: boxmuller_extra
    real(8)    :: boxmuller_extra_double
END TYPE curandStateXORWOW
TYPE curandStateMRG32k3a
    real(8)    :: s1(3)
    real(8)    :: s2(3)
    integer(4) :: boxmuller_flag
    integer(4) :: boxmuller_flag_double
    real(4)    :: boxmuller_extra
    real(8)    :: boxmuller_extra_double
END TYPE curandStateMRG32k3a
TYPE curandStateSobol32
    integer(4) :: d
    integer(4) :: x
    integer(4) :: c
    integer(4) :: direction_vectors(32)
END TYPE curandStateSobol32
TYPE curandStateScrambledSobol32
    integer(4) :: d
    integer(4) :: x
    integer(4) :: c
    integer(4) :: direction_vectors(32)
END TYPE curandStateScrambledSobol32
TYPE curandStateSobol64
    integer(8) :: d
    integer(8) :: x
    integer(8) :: c
    integer(8) :: direction_vectors(32)
END TYPE curandStateSobol64
TYPE curandStateScrambledSobol64
    integer(8) :: d
    integer(8) :: x
    integer(8) :: c
    integer(8) :: direction_vectors(32)
END TYPE curandStateScrambledSobol64
TYPE curandStateMtgp32
    integer(4) :: s(MTGP32_STATE_SIZE)
    integer(4) :: offset
    integer(4) :: pIdx
    integer(kind=int_ptr_kind()) :: k
    integer(4) :: precise_double_flag
END TYPE curandStateMtgp32
TYPE curandStatePhilox4_32_10
    integer(4) :: ctr
    integer(4) :: output
    integer(2) :: key
    integer(4) :: state
    integer(4) :: boxmuller_flag
    integer(4) :: boxmuller_flag_double
    real(4)    :: boxmuller_extra
    real(8)    :: boxmuller_extra_double
END TYPE curandStatePhilox4_32_10

4.3.1. curand_Init

This overloaded device subroutine initializes the state for the random number generator. These device subroutines are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

4.3.1.1. curandInitXORWOW

This function initializes the state for the XORWOW random number generator. The function curand_init() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 subroutine curandInitXORWOW(seed, sequence, offset, state)
   integer(8) :: seed
   integer(8) :: sequence
   integer(8) :: offset
   TYPE(curandStateXORWOW) :: state 

4.3.1.2. curandInitMRG32k3a

This function initializes the state for the MRG32k3a random number generator. The function curand_init() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 subroutine curandInitMRG32k3a(seed, sequence, offset, state)
   integer(8) :: seed
   integer(8) :: sequence
   integer(8) :: offset
   TYPE(curandStateMRG32k3a) :: state 

4.3.1.3. curandInitPhilox4_32_10

This function initializes the state for the Philox4_32_10 random number generator. The function curand_init() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 subroutine curandInitPhilox4_32_10(seed, sequence, offset, state)
   integer(8) :: seed
   integer(8) :: sequence
   integer(8) :: offset
   TYPE(curandStatePhilox4_32_10) :: state 

4.3.1.4. curandInitSobol32

This function initializes the state for the Sobol32 random number generator. The function curand_init() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 subroutine curandInitSobol32(direction_vectors, offset, state)
   integer :: direction_vectors(*)
   integer(4) :: offset
   TYPE(curandStateSobol32) :: state 

4.3.1.5. curandInitScrambledSobol32

This function initializes the state for the scrambled Sobol32 random number generator. The function curand_init() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 subroutine curandInitScrambledSobol32(direction_vectors, scramble, offset, state)
   integer :: direction_vectors(*)
   integer(4) :: scramble
   integer(4) :: offset
   TYPE(curandStateScrambledSobol32) :: state 

4.3.1.6. curandInitSobol64

This function initializes the state for the Sobol64 random number generator. The function curand_init() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 subroutine curandInitSobol64(direction_vectors, offset, state)
   integer :: direction_vectors(*)
   integer(8) :: offset
   TYPE(curandStateSobol64) :: state 

4.3.1.7. curandInitScrambledSobol64

This function initializes the state for the scrambled Sobol64 random number generator. The function curand_init() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 subroutine curandInitScrambledSobol64(direction_vectors, scramble, offset, state)
   integer :: direction_vectors(*)
   integer(8) :: scramble
   integer(8) :: offset
   TYPE(curandStateScrambledSobol64) :: state 

4.3.2. curand

This overloaded device function returns 32 or 64 bits or random data based on the state argument. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

4.3.2.1. curandGetXORWOW

This function returns 32 bits of pseudorandomness from the XORWOW random number generator. The function curand() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function curandGetXORWOW(state)
   TYPE(curandStateXORWOW) :: state 

4.3.2.2. curandGetMRG32k3a

This function returns 32 bits of pseudorandomness from the MRG32k3a random number generator. The function curand() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function curandGetMRG32k3a(state)
   TYPE(curandStateMRG32k3a) :: state 

4.3.2.3. curandGetPhilox4_32_10

This function returns 32 bits of pseudorandomness from the Philox4_32_10 random number generator. The function curand() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function curandGetPhilox4_32_10(state)
   TYPE(curandStatePhilox4_32_10) :: state 

4.3.2.4. curandGetSobol32

This function returns 32 bits of quasirandomness from the Sobol32 random number generator. The function curand() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function curandGetSobol32(state)
   TYPE(curandStateSobol32) :: state 

4.3.2.5. curandGetScrambledSobol32

This function returns 32 bits of quasirandomness from the scrambled Sobol32 random number generator. The function curand() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function curandGetScrambledSobol32(state)
   TYPE(curandStateScrambledSobol32) :: state 

4.3.2.6. curandGetSobol64

This function returns 64 bits of quasirandomness from the Sobol64 random number generator. The function curand() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function curandGetSobol64(state)
   TYPE(curandStateSobol64) :: state 

4.3.2.7. curandGetScrambledSobol64

This function returns 64 bits of quasirandomness from the scrambled Sobol64 random number generator. The function curand() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 integer(4) function curandGetScrambledSobol64(state)
   TYPE(curandStateScrambledSobol64) :: state 

4.3.3. Curand_Normal

This overloaded device function returns a 32-bit floating point normally distributed random number. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

4.3.3.1. curandNormalXORWOW

This function returns a 32-bit floating point normally distributed random number from an XORWOW generator. The function curand_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandNormalXORWOW(state)
   TYPE(curandStateXORWOW) :: state 

4.3.3.2. curandNormalMRG32k3a

This function returns a 32-bit floating point normally distributed random number from an MRG32k3a generator. The function curand_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandNormalMRG32k3a(state)
   TYPE(curandStateMRG32k3a) :: state 

4.3.3.3. curandNormalPhilox4_32_10

This function returns a 32-bit floating point normally distributed random number from a Philox4_32_10 generator. The function curand_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandNormalPhilox4_32_10(state)
   TYPE(curandStatePhilox4_32_10) :: state 

4.3.3.4. curandNormalSobol32

This function returns a 32-bit floating point normally distributed random number from an Sobol32 generator. The function curand_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandNormalSobol32(state)
   TYPE(curandStateSobol32) :: state 

4.3.3.5. curandNormalScrambledSobol32

This function returns a 32-bit floating point normally distributed random number from an scrambled Sobol32 generator. The function curand_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandNormalScrambledSobol32(state)
   TYPE(curandStateScrambledSobol32) :: state 

4.3.3.6. curandNormalSobol64

This function returns a 32-bit floating point normally distributed random number from an Sobol64 generator. The function curand_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandNormalSobol64(state)
   TYPE(curandStateSobol64) :: state 

4.3.3.7. curandNormalScrambledSobol64

This function returns a 32-bit floating point normally distributed random number from an scrambled Sobol64 generator. The function curand_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandNormalScrambledSobol64(state)
   TYPE(curandStateScrambledSobol64) :: state 

4.3.4. Curand_Normal_Double

This overloaded device function returns a 64-bit floating point normally distributed random number. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

4.3.4.1. curandNormalDoubleXORWOW

This function returns a 64-bit floating point normally distributed random number from an XORWOW generator. The function curand_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandNormalDoubleXORWOW(state)
   TYPE(curandStateXORWOW) :: state 

4.3.4.2. curandNormalDoubleMRG32k3a

This function returns a 64-bit floating point normally distributed random number from an MRG32k3a generator. The function curand_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandNormalDoubleMRG32k3a(state)
   TYPE(curandStateMRG32k3a) :: state 

4.3.4.3. curandNormalDoublePhilox4_32_10

This function returns a 64-bit floating point normally distributed random number from a Philox4_32_10 generator. The function curand_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandNormalDoublePhilox4_32_10(state)
   TYPE(curandStatePhilox4_32_10) :: state 

4.3.4.4. curandNormalDoubleSobol32

This function returns a 64-bit floating point normally distributed random number from an Sobol32 generator. The function curand_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandNormalDoubleSobol32(state)
   TYPE(curandStateSobol32) :: state 

4.3.4.5. curandNormalDoubleScrambledSobol32

This function returns a 64-bit floating point normally distributed random number from an scrambled Sobol32 generator. The function curand_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandNormalDoubleScrambledSobol32(state)
   TYPE(curandStateScrambledSobol32) :: state 

4.3.4.6. curandNormalDoubleSobol64

This function returns a 64-bit floating point normally distributed random number from an Sobol64 generator. The function curand_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandNormalDoubleSobol64(state)
   TYPE(curandStateSobol64) :: state 

4.3.4.7. curandNormalDoubleScrambledSobol64

This function returns a 64-bit floating point normally distributed random number from an scrambled Sobol64 generator. The function curand_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandNormalDoubleScrambledSobol64(state)
   TYPE(curandStateScrambledSobol64) :: state 

4.3.5. Curand_Log_Normal

This overloaded device function returns a 32-bit floating point log-normally distributed random number. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

4.3.5.1. curandLogNormalXORWOW

This function returns a 32-bit floating point log-normally distributed random number from an XORWOW generator. The function curand_log_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandLogNormalXORWOW(state)
   TYPE(curandStateXORWOW) :: state 

4.3.5.2. curandLogNormalMRG32k3a

This function returns a 32-bit floating point log-normally distributed random number from an MRG32k3a generator. The function curand_log_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandLogNormalMRG32k3a(state)
   TYPE(curandStateMRG32k3a) :: state 

4.3.5.3. curandLogNormalPhilox4_32_10

This function returns a 32-bit floating point log-normally distributed random number from a Philox4_32_10 generator. The function curand_log_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandLogNormalPhilox4_32_10(state)
   TYPE(curandStatePhilox4_32_10) :: state 

4.3.5.4. curandLogNormalSobol32

This function returns a 32-bit floating point log-normally distributed random number from an Sobol32 generator. The function curand_log_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandLogNormalSobol32(state)
   TYPE(curandStateSobol32) :: state 

4.3.5.5. curandLogNormalScrambledSobol32

This function returns a 32-bit floating point log-normally distributed random number from an scrambled Sobol32 generator. The function curand_log_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandLogNormalScrambledSobol32(state)
   TYPE(curandStateScrambledSobol32) :: state 

4.3.5.6. curandLogNormalSobol64

This function returns a 32-bit floating point log-normally distributed random number from an Sobol64 generator. The function curand_log_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandLogNormalSobol64(state)
   TYPE(curandStateSobol64) :: state 

4.3.5.7. curandLogNormalScrambledSobol64

This function returns a 32-bit floating point log-normally distributed random number from an scrambled Sobol64 generator. The function curand_log_normal() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandLogNormalScrambledSobol64(state)
   TYPE(curandStateScrambledSobol64) :: state 

4.3.6. Curand_Log_Normal_Double

This overloaded device function returns a 64-bit floating point log-normally distributed random number. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

4.3.6.1. curandLogNormalDoubleXORWOW

This function returns a 64-bit floating point log-normally distributed random number from an XORWOW generator. The function curand_log_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandLogNormalDoubleXORWOW(state)
   TYPE(curandStateXORWOW) :: state 

4.3.6.2. curandLogNormalDoubleMRG32k3a

This function returns a 64-bit floating point log-normally distributed random number from an MRG32k3a generator. The function curand_log_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandLogNormalDoubleMRG32k3a(state)
   TYPE(curandStateMRG32k3a) :: state 

4.3.6.3. curandLogNormalDoublePhilox4_32_10

This function returns a 64-bit floating point log-normally distributed random number from a Philox4_32_10 generator. The function curand_log_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandLogNormalDoublePhilox4_32_10(state)
   TYPE(curandStatePhilox4_32_10) :: state 

4.3.6.4. curandLogNormalDoubleSobol32

This function returns a 64-bit floating point log-normally distributed random number from an Sobol32 generator. The function curand_log_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandLogNormalDoubleSobol32(state)
   TYPE(curandStateSobol32) :: state 

4.3.6.5. curandLogNormalDoubleScrambledSobol32

This function returns a 64-bit floating point log-normally distributed random number from an scrambled Sobol32 generator. The function curand_log_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandLogNormalDoubleScrambledSobol32(state)
   TYPE(curandStateScrambledSobol32) :: state 

4.3.6.6. curandLogNormalDoubleSobol64

This function returns a 64-bit floating point log-normally distributed random number from an Sobol64 generator. The function curand_log_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandLogNormalDoubleSobol64(state)
   TYPE(curandStateSobol64) :: state 

4.3.6.7. curandLogNormalDoubleScrambledSobol64

This function returns a 64-bit floating point log-normally distributed random number from an scrambled Sobol64 generator. The function curand_log_normal_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandLogNormalDoubleScrambledSobol64(state)
   TYPE(curandStateScrambledSobol64) :: state 

4.3.7. Curand_Uniform

This overloaded device function returns a 32-bit floating point uniformly distributed random number. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

4.3.7.1. curandUniformXORWOW

This function returns a 32-bit floating point uniformly distributed random number from an XORWOW generator. The function curand_uniform() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandUniformXORWOW(state)
   TYPE(curandStateXORWOW) :: state 

4.3.7.2. curandUniformMRG32k3a

This function returns a 32-bit floating point uniformly distributed random number from an MRG32k3a generator. The function curand_uniform() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandUniformMRG32k3a(state)
   TYPE(curandStateMRG32k3a) :: state 

4.3.7.3. curandUniformPhilox4_32_10

This function returns a 32-bit floating point uniformly distributed random number from a Philox4_32_10 generator. The function curand_uniform() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandUniformPhilox4_32_10(state)
   TYPE(curandStatePhilox4_32_10) :: state 

4.3.7.4. curandUniformSobol32

This function returns a 32-bit floating point uniformly distributed random number from an Sobol32 generator. The function curand_uniform() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandUniformSobol32(state)
   TYPE(curandStateSobol32) :: state 

4.3.7.5. curandUniformScrambledSobol32

This function returns a 32-bit floating point uniformly distributed random number from an scrambled Sobol32 generator. The function curand_uniform() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandUniformScrambledSobol32(state)
   TYPE(curandStateScrambledSobol32) :: state 

4.3.7.6. curandUniformSobol64

This function returns a 32-bit floating point uniformly distributed random number from an Sobol64 generator. The function curand_uniform() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandUniformSobol64(state)
   TYPE(curandStateSobol64) :: state 

4.3.7.7. curandUniformScrambledSobol64

This function returns a 32-bit floating point uniformly distributed random number from an scrambled Sobol64 generator. The function curand_uniform() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(4) function curandUniformScrambledSobol64(state)
   TYPE(curandStateScrambledSobol64) :: state 

4.3.8. Curand_Uniform_Double

This overloaded device function returns a 64-bit floating point uniformly distributed random number. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

4.3.8.1. curandUniformDoubleXORWOW

This function returns a 64-bit floating point uniformly distributed random number from an XORWOW generator. The function curand_uniform_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandUniformDoubleXORWOW(state)
   TYPE(curandStateXORWOW) :: state 

4.3.8.2. curandUniformDoubleMRG32k3a

This function returns a 64-bit floating point uniformly distributed random number from an MRG32k3a generator. The function curand_uniform_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandUniformDoubleMRG32k3a(state)
   TYPE(curandStateMRG32k3a) :: state 

4.3.8.3. curandUniformDoublePhilox4_32_10

This function returns a 64-bit floating point uniformly distributed random number from a Philox4_32_10 generator. The function curand_uniform_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandUniformDoublePhilox4_32_10(state)
   TYPE(curandStatePhilox4_32_10) :: state 

4.3.8.4. curandUniformDoubleSobol32

This function returns a 64-bit floating point uniformly distributed random number from an Sobol32 generator. The function curand_uniform_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandUniformDoubleSobol32(state)
   TYPE(curandStateSobol32) :: state 

4.3.8.5. curandUniformDoubleScrambledSobol32

This function returns a 64-bit floating point uniformly distributed random number from an scrambled Sobol32 generator. The function curand_uniform_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandUniformDoubleScrambledSobol32(state)
   TYPE(curandStateScrambledSobol32) :: state 

4.3.8.6. curandUniformDoubleSobol64

This function returns a 64-bit floating point uniformly distributed random number from an Sobol64 generator. The function curand_uniform_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandUniformDoubleSobol64(state)
   TYPE(curandStateSobol64) :: state 

4.3.8.7. curandUniformDoubleScrambledSobol64

This function returns a 64-bit floating point uniformly distributed random number from an scrambled Sobol64 generator. The function curand_uniform_double() has also been overloaded to accept these function arguments, as in CUDA C++. Device Functions are declared "attributes(device)" in CUDA Fortran and "!$acc routine() seq" in OpenACC.

 real(8) function curandUniformDoubleScrambledSobol64(state)
   TYPE(curandStateScrambledSobol64) :: state 

5. SPARSE Matrix Runtime Library APIs

This section describes the Fortran interfaces to the CUDA cuSPARSE library. The cuSPARSE functions are only accessible from host code. All of the runtime API routines are integer functions that return an error code; they return a value of CUSPARSE_STATUS_SUCCESS if the call was successful, or another cuSPARSE status return value if there was an error.

Chapter 6 contains examples of accessing the cuSPARSE library routines from OpenACC and CUDA Fortran. In both cases, the interfaces to the library can be exposed by adding the line
use cusparse
to your program unit.

A number of the function interfaces listed in this chapter can take host or device scalar arguments. Those functions have an additional v2 interface, which does not implicitly manage the pointer mode for these calls. See section 1.6 for further discussion on the handling of pointer modes.

Unless a specific kind is provided, the plain integer type used in the interfaces implies integer(4) and the plain real type implies real(4).

5.1. CUSPARSE Definitions and Helper Functions

This section contains definitions and data types used in the cuSPARSE library and interfaces to the cuSPARSE helper functions.

The cuSPARSE module contains the following derived type definitions:

type cusparseHandle
  type(c_ptr) :: handle
end type cusparseHandle
type :: cusparseMatDescr
     type(c_ptr) :: descr
end type cusparseMatDescr
type cusparseSolveAnalysisInfo
     type(c_ptr) :: info
end type cusparseSolveAnalysisInfo
type cusparseHybMat
     type(c_ptr) :: mat
end type cusparseHybMat
type cusparseCsrsv2Info
     type(c_ptr) :: info
end type cusparseCsrsv2Info
type cusparseCsric02Info
     type(c_ptr) :: info
end type cusparseCsric02Info
type cusparseCsrilu02Info
     type(c_ptr) :: info
end type cusparseCsrilu02Info
type cusparseBsrsv2Info
     type(c_ptr) :: info
end type cusparseBsrsv2Info
type cusparseBsric02Info
     type(c_ptr) :: info
end type cusparseBsric02Info
type cusparseBsrilu02Info
     type(c_ptr) :: info
end type cusparseBsrilu02Info
type cusparseBsrsm2Info
     type(c_ptr) :: info
end type cusparseBsrsm2Info
type cusparseCsrgemm2Info
     type(c_ptr) :: info
end type cusparseCsrgemm2Info
type cusparseColorInfo
     type(c_ptr) :: info
end type cusparseColorInfo
type cusparseCsru2csrInfo
     type(c_ptr) :: info
end type cusparseCsru2csrInfo

The cuSPARSE module contains the following enumerations:

! cuSPARSE status return values
enum, bind(C) ! cusparseStatus_t
    enumerator :: CUSPARSE_STATUS_SUCCESS=0
    enumerator :: CUSPARSE_STATUS_NOT_INITIALIZED=1
    enumerator :: CUSPARSE_STATUS_ALLOC_FAILED=2
    enumerator :: CUSPARSE_STATUS_INVALID_VALUE=3
    enumerator :: CUSPARSE_STATUS_ARCH_MISMATCH=4
    enumerator :: CUSPARSE_STATUS_MAPPING_ERROR=5
    enumerator :: CUSPARSE_STATUS_EXECUTION_FAILED=6
    enumerator :: CUSPARSE_STATUS_INTERNAL_ERROR=7
    enumerator :: CUSPARSE_STATUS_MATRIX_TYPE_NOT_SUPPORTED=8
end enum
enum, bind(c) ! cusparsePointerMode_t
    enumerator :: CUSPARSE_POINTER_MODE_HOST = 0  
    enumerator :: CUSPARSE_POINTER_MODE_DEVICE = 1        
end enum
enum, bind(c) ! cusparseAction_t
    enumerator :: CUSPARSE_ACTION_SYMBOLIC = 0
    enumerator :: CUSPARSE_ACTION_NUMERIC = 1        
end enum
enum, bind(C) ! cusparseMatrixType_t
    enumerator :: CUSPARSE_MATRIX_TYPE_GENERAL = 0 
    enumerator :: CUSPARSE_MATRIX_TYPE_SYMMETRIC = 1     
    enumerator :: CUSPARSE_MATRIX_TYPE_HERMITIAN = 2 
    enumerator :: CUSPARSE_MATRIX_TYPE_TRIANGULAR = 3 
end enum
enum, bind(C) ! cusparseFillMode_t
    enumerator :: CUSPARSE_FILL_MODE_LOWER = 0
    enumerator :: CUSPARSE_FILL_MODE_UPPER = 1
end enum
enum, bind(C) ! cusparseDiagType_t
    enumerator :: CUSPARSE_DIAG_TYPE_NON_UNIT = 0 
    enumerator :: CUSPARSE_DIAG_TYPE_UNIT = 1
end enum
enum, bind(C) ! cusparseIndexBase_t
    enumerator :: CUSPARSE_INDEX_BASE_ZERO = 0
    enumerator :: CUSPARSE_INDEX_BASE_ONE = 1
end enum
enum, bind(C) ! cusparseOperation_t
    enumerator :: CUSPARSE_OPERATION_NON_TRANSPOSE = 0
    enumerator :: CUSPARSE_OPERATION_TRANSPOSE = 1
    enumerator :: CUSPARSE_OPERATION_CONJUGATE_TRANSPOSE = 2  
end enum
enum, bind(C) ! cusparseDirection_t
    enumerator :: CUSPARSE_DIRECTION_ROW = 0
    enumerator :: CUSPARSE_DIRECTION_COLUMN = 1  
end enum
enum, bind(C) ! cusparseHybPartition_t
    enumerator :: CUSPARSE_HYB_PARTITION_AUTO = 0 
    enumerator :: CUSPARSE_HYB_PARTITION_USER = 1 
    enumerator :: CUSPARSE_HYB_PARTITION_MAX = 2  
end enum
enum, bind(C) ! cusparseSolvePolicy_t
    enumerator :: CUSPARSE_SOLVE_POLICY_NO_LEVEL = 0
    enumerator :: CUSPARSE_SOLVE_POLICY_USE_LEVEL = 1
end enum

5.1.1. cusparseCreate

This function initializes the cuSPARSE library and creates a handle on the cuSPARSE context. It must be called before any other cuSPARSE API function is invoked. It allocates hardware resources necessary for accessing the GPU.

 integer(4) function cusparseCreate(handle)
   type(cusparseHandle) :: handle 

5.1.2. cusparseDestroy

This function releases CPU-side resources used by the cuSPARSE library. The release of GPU-side resources may be deferred until the application shuts down.

 integer(4) function cusparseDestroy(handle)
   type(cusparseHandle) :: handle 

5.1.3. cusparseGetVersion

This function returns the version number of the cuSPARSE library.

 integer(4) function cusparseGetVersion(handle, version)
   type(cusparseHandle) :: handle
   integer(c_int) :: version 

5.1.4. cusparseSetStream

This function sets the stream to be used by the cuSPARSE library to execute its routines.

 integer(4) function cusparseSetStream(handle, stream)
   type(cusparseHandle) :: handle
   integer(cuda_stream_kind) :: stream 

5.1.5. cusparseGetPointerMode

This function obtains the pointer mode used by the cuSPARSE library. Please see section 1.6 for more details on pointer modes.

 integer(4) function cusparseGetPointerMode(handle, mode)
   type(cusparseHandle) :: handle
   integer(c_int) :: mode 

5.1.6. cusparseSetPointerMode

This function sets the pointer mode used by the cuSPARSE library. In these Fortran interfaces, this only has an effect when using the *_v2 interfaces. The default is for the values to be passed by reference on the host. Please see section 1.6 for more details on pointer modes.

 integer(4) function cusparseSetPointerMode(handle, mode)
   type(cusparseHandle) :: handle
   integer(4) :: mode 

5.1.7. cusparseCreateMatDescr

This function initializes the matrix descriptor. It sets the fields MatrixType and IndexBase to the default values CUSPARSE_MATRIX_TYPE_GENERAL and CUSPARSE_INDEX_BASE_ZERO , respectively, while leaving other fields uninitialized.

 integer(4) function cusparseCreateMatDescr(descrA)
   type(cusparseMatDescr) :: descrA 

5.1.8. cusparseDestroyMatDescr

This function releases the memory allocated for the matrix descriptor.

 integer(4) function cusparseDestroyMatDescr(descrA)
   type(cusparseMatDescr) :: descrA 

5.1.9. cusparseSetMatType

This function sets the MatrixType of the matrix descriptor descrA.

 integer(4) function cusparseSetMatType(descrA, type)
   type(cusparseMatDescr) :: descrA
   integer(4) :: type 

5.1.10. cusparseGetMatType

This function returns the MatrixType of the matrix descriptor descrA.

 integer(4) function cusparseGetMatType(descrA)
   type(cusparseMatDescr) :: descrA 

5.1.11. cusparseSetMatFillMode

This function sets the FillMode field of the matrix descriptor descrA.

 integer(4) function cusparseSetMatFillMode(descrA, mode)
   type(cusparseMatDescr) :: descrA
   integer(4) :: mode 

5.1.12. cusparseGetMatFillMode

This function returns the FillMode field of the matrix descriptor descrA.

 integer(4) function cusparseGetMatFillMode(descrA)
   type(cusparseMatDescr) :: descrA 

5.1.13. cusparseSetMatDiagType

This function sets the DiagType of the matrix descriptor descrA.

 integer(4) function cusparseSetMatDiagType(descrA, type)
   type(cusparseMatDescr) :: descrA
   integer(4) :: type 

5.1.14. cusparseGetMatDiagType

This function returns the DiagType of the matrix descriptor descrA.

 integer(4) function cusparseGetMatDiagType(descrA)
   type(cusparseMatDescr) :: descrA 

5.1.15. cusparseSetMatIndexBase

This function sets the IndexBase field of the matrix descriptor descrA.

 integer(4) function cusparseSetMatIndexBase(descrA, base)
   type(cusparseMatDescr) :: descrA
   integer(4) :: base 

5.1.16. cusparseGetMatIndexBase

This function returns the IndexBase field of the matrix descriptor descrA.

 integer(4) function cusparseGetMatIndexBase(descrA)
   type(cusparseMatDescr) :: descrA 

5.1.17. cusparseCreateSolveAnalysisInfo

This function creates and initializes the solve and analysis structure to default values.

 integer(4) function cusparseCreateSolveAnalysisInfo(info)
   type(cusparseSolveAnalysisinfo) :: info 

5.1.18. cusparseDestroySolveAnalysisInfo

This function destroys and releases any memory required by the structure.

 integer(4) function cusparseDestroySolveAnalysisInfo(info)
   type(cusparseSolveAnalysisinfo) :: info 

5.1.19. cusparseGetLevelInfo

This function returns the number of levels and the assignment of rows into the levels computed by either the csrsv_analysis, csrsm_analysis or hybsv_analysis routines.

 integer(4) function cusparseGetLevelInfo(handle, info, nlevels, levelPtr, levelInd)
   type(cusparseHandle) :: handle
   type(cusparseSolveAnalysisinfo) :: info
   integer(c_int) :: nlevels
   type(c_ptr) :: levelPtr
   type(c_ptr) :: levelInd 

5.1.20. cusparseCreateHybMat

This function creates and initializes the hybA opaque data structure.

 integer(4) function cusparseCreateHybMat(hybA)
   type(cusparseHybMat) :: hybA 

5.1.21. cusparseDestroyHybMat

This function destroys and releases any memory required by the hybA structure.

 integer(4) function cusparseDestroyHybMat(hybA)
   type(cusparseHybMat) :: hybA 

5.1.22. cusparseCreateCsrsv2Info

This function creates and initializes the solve and analysis structure of csrsv2 to default values.

 integer(4) function cusparseCreateCsrsv2Info(info)
   type(cusparseCsrsv2Info) :: info 

5.1.23. cusparseDestroyCsrsv2Info

This function destroys and releases any memory required by the structure.

 integer(4) function cusparseDestroyCsrsv2Info(info)
   type(cusparseCsrsv2Info) :: info 

5.1.24. cusparseCreateCsric02Info

This function creates and initializes the solve and analysis structure of incomplete Cholesky to default values.

 integer(4) function cusparseCreateCsric02Info(info)
   type(cusparseCsric02Info) :: info 

5.1.25. cusparseDestroyCsric02Info

This function destroys and releases any memory required by the structure.

 integer(4) function cusparseDestroyCsric02Info(info)
   type(cusparseCsric02Info) :: info 

5.1.26. cusparseCreateCsrilu02Info

This function creates and initializes the solve and analysis structure of incomplete LU to default values.

 integer(4) function cusparseCreateCsrilu02Info(info)
   type(cusparseCsrilu02Info) :: info 

5.1.27. cusparseDestroyCsrilu02Info

This function destroys and releases any memory required by the structure.

 integer(4) function cusparseDestroyCsrilu02Info(info)
   type(cusparseCsrilu02Info) :: info 

5.1.28. cusparseCreateBsrsv2Info

This function creates and initializes the solve and analysis structure of bsrsv2 to default values.

 integer(4) function cusparseCreateBsrsv2Info(info)
   type(cusparseBsrsv2Info) :: info 

5.1.29. cusparseDestroyBsrsv2Info

This function destroys and releases any memory required by the structure.

 integer(4) function cusparseDestroyBsrsv2Info(info)
   type(cusparseBsrsv2Info) :: info 

5.1.30. cusparseCreateBsric02Info

This function creates and initializes the solve and analysis structure of block incomplete Cholesky to default values.

 integer(4) function cusparseCreateBsric02Info(info)
   type(cusparseBsric02Info) :: info 

5.1.31. cusparseDestroyBsric02Info

This function destroys and releases any memory required by the structure.

 integer(4) function cusparseDestroyBsric02Info(info)
   type(cusparseBsric02Info) :: info 

5.1.32. cusparseCreateBsrilu02Info

This function creates and initializes the solve and analysis structure of block incomplete LU to default values.

 integer(4) function cusparseCreateBsrilu02Info(info)
   type(cusparseBsrilu02Info) :: info 

5.1.33. cusparseDestroyBsrilu02Info

This function destroys and releases any memory required by the structure.

 integer(4) function cusparseDestroyBsrilu02Info(info)
   type(cusparseBsrilu02Info) :: info 

5.1.34. cusparseCreateBsrsm2Info

This function creates and initializes the solve and analysis structure of bsrsm2 to default values.

 integer(4) function cusparseCreateBsrsm2Info(info)
   type(cusparseBsrsm2Info) :: info 

5.1.35. cusparseDestroyBsrsm2Info

This function destroys and releases any memory required by the structure.

 integer(4) function cusparseDestroyBsrsm2Info(info)
   type(cusparseBsrsm2Info) :: info 

5.1.36. cusparseCreateCsrgemm2Info

This function creates and initializes the analysis structure of general sparse matrix-matrix multiplication.

 integer(4) function cusparseCreateCsrgemm2Info(info)
   type(cusparseCsrgemm2Info) :: info 

5.1.37. cusparseDestroyCsrgemm2Info

This function destroys and releases any memory required by the structure.

 integer(4) function cusparseDestroyCsrgemm2Info(info)
   type(cusparseCsrgemm2Info) :: info 

5.1.38. cusparseCreateColorInfo

This function creates coloring information used in calls like CSRCOLOR.

 integer(4) function cusparseCreateColorInfo(info)
   type(cusparseColorInfo) :: info 

5.1.39. cusparseDestroyColorInfo

This function destroys coloring information used in calls like CSRCOLOR.

 integer(4) function cusparseDestroyColorInfo(info)
   type(cusparseColorInfo) :: info 

5.1.40. cusparseCreateCsru2csrInfo

This function creates sorting information used in calls like CSRU2CSR.

 integer(4) function cusparseCreateCsru2csrInfo(info)
   type(cusparseCsru2csrInfo) :: info 

5.1.41. cusparseDestroyCsru2csrInfo

This function creates sorting information used in calls like CSRU2CSR.

 integer(4) function cusparseDestroyCsru2csrInfo(info)
   type(cusparseCsru2csrInfo) :: info 

5.2. CUSPARSE Level 1 Functions

This section contains interfaces for the level 1 sparse linear algebra functions that perform operations between dense and sparse vectors.

5.2.1. cusparseSaxpyi

SAXPY performs constant times a vector plus a vector. This function multiplies the vector x in sparse format by the constant alpha and adds the result to the vector y in dense format, i.e. y = y + alpha * xVal(xInd)

 integer(4) function cusparseSaxpyi(handle, nnz, alpha, xVal, xInd, y, idxBase)
   type(cusparseHandle) :: handle
   integer :: nnz
   real(4), device :: alpha ! device or host variable
   real(4), device :: xVal(*)
   integer(4), device :: xInd(*)
   real(4), device :: y(*)
   integer :: idxBase 

5.2.2. cusparseDaxpyi

DAXPY performs constant times a vector plus a vector. This function multiplies the vector x in sparse format by the constant alpha and adds the result to the vector y in dense format, i.e. y = y + alpha * xVal(xInd)

 integer(4) function cusparseDaxpyi(handle, nnz, alpha, xVal, xInd, y, idxBase)
   type(cusparseHandle) :: handle
   integer :: nnz
   real(8), device :: alpha ! device or host variable
   real(8), device :: xVal(*)
   integer(4), device :: xInd(*)
   real(8), device :: y(*)
   integer :: idxBase 

5.2.3. cusparseCaxpyi

CAXPY performs constant times a vector plus a vector. This function multiplies the vector x in sparse format by the constant alpha and adds the result to the vector y in dense format, i.e. y = y + alpha * xVal(xInd)

 integer(4) function cusparseCaxpyi(handle, nnz, alpha, xVal, xInd, y, idxBase)
   type(cusparseHandle) :: handle
   integer :: nnz
   complex(4), device :: alpha ! device or host variable
   complex(4), device :: xVal(*)
   integer(4), device :: xInd(*)
   complex(4), device :: y(*)
   integer :: idxBase 

5.2.4. cusparseZaxpyi

ZAXPY performs constant times a vector plus a vector. This function multiplies the vector x in sparse format by the constant alpha and adds the result to the vector y in dense format, i.e. y = y + alpha * xVal(xInd)

 integer(4) function cusparseZaxpyi(handle, nnz, alpha, xVal, xInd, y, idxBase)
   type(cusparseHandle) :: handle
   integer :: nnz
   complex(8), device :: alpha ! device or host variable
   complex(8), device :: xVal(*)
   integer(4), device :: xInd(*)
   complex(8), device :: y(*)
   integer :: idxBase 

5.2.5. cusparseSdoti

SDOT forms the dot product of two vectors. This function returns the dot product of a vector x in sparse format and vector y in dense format, i.e. res = sum(y * xVal(xInd))

 integer(4) function cusparseSdoti(handle, nnz, xVal, xInd, y, res, idxBase)
   type(cusparseHandle) :: handle
   integer :: nnz
   real(4), device :: xVal(*)
   integer(4), device :: xInd(*)
   real(4), device :: y(*)
   real(4), device :: res ! device or host variable
   integer :: idxBase 

5.2.6. cusparseDdoti

DDOT forms the dot product of two vectors. This function returns the dot product of a vector x in sparse format and vector y in dense format, i.e. res = sum(y * xVal(xInd))

 integer(4) function cusparseDdoti(handle, nnz, xVal, xInd, y, res, idxBase)
   type(cusparseHandle) :: handle
   integer :: nnz
   real(8), device :: xVal(*)
   integer(4), device :: xInd(*)
   real(8), device :: y(*)
   real(8), device :: res ! device or host variable
   integer :: idxBase 

5.2.7. cusparseCdoti

CDOT forms the dot product of two vectors. This function returns the dot product of a vector x in sparse format and vector y in dense format, i.e. res = sum(y * xVal(xInd))

 integer(4) function cusparseCdoti(handle, nnz, xVal, xInd, y, res, idxBase)
   type(cusparseHandle) :: handle
   integer :: nnz
   complex(4), device :: xVal(*)
   integer(4), device :: xInd(*)
   complex(4), device :: y(*)
   complex(4), device :: res ! device or host variable
   integer :: idxBase 

5.2.8. cusparseZdoti

ZDOT forms the dot product of two vectors. This function returns the dot product of a vector x in sparse format and vector y in dense format, i.e. res = sum(y * xVal(xInd))

 integer(4) function cusparseZdoti(handle, nnz, xVal, xInd, y, res, idxBase)
   type(cusparseHandle) :: handle
   integer :: nnz
   complex(8), device :: xVal(*)
   integer(4), device :: xInd(*)
   complex(8), device :: y(*)
   complex(8), device :: res ! device or host variable
   integer :: idxBase 

5.2.9. cusparseCdotci

CDOTC forms the dot product of two vectors, conjugating the first vector. This function returns the dot product of a vector x in sparse format and vector y in dense format, i.e. res = sum(y * conjg(xVal(xInd))

 integer(4) function cusparseCdotci(handle, nnz, xVal, xInd, y, res, idxBase)
   type(cusparseHandle) :: handle
   integer :: nnz
   complex(4), device :: xVal(*)
   integer(4), device :: xInd(*)
   complex(4), device :: y(*)
   complex(4), device :: res ! device or host variable
   integer :: idxBase 

5.2.10. cusparseZdotci

ZDOTC forms the dot product of two vectors, conjugating the first vector. This function returns the dot product of a vector x in sparse format and vector y in dense format, i.e. res = sum(y * conjg(xVal(xInd))

 integer(4) function cusparseZdotci(handle, nnz, xVal, xInd, y, res, idxBase)
   type(cusparseHandle) :: handle
   integer :: nnz
   complex(8), device :: xVal(*)
   integer(4), device :: xInd(*)
   complex(8), device :: y(*)
   complex(8), device :: res ! device or host variable
   integer :: idxBase 

5.2.11. cusparseSgthr

This function gathers the elements of the vector y listed in the index array xInd into data array xVal, i.e. xVal = y(xInd) Fortran programmers should normally use idxBase == 1.

 integer(4) function cusparseSgthr(handle, nnz, y, xVal, xInd, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz
   real(4), device :: y(*)
   real(4), device :: xVal(*)
   integer(4), device :: xInd(*)
   integer(4) :: idxBase 

5.2.12. cusparseDgthr

This function gathers the elements of the vector y listed in the index array xInd into data array xVal, i.e. xVal = y(xInd) Fortran programmers should normally use idxBase == 1.

 integer(4) function cusparseDgthr(handle, nnz, y, xVal, xInd, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz
   real(8), device :: y(*)
   real(8), device :: xVal(*)
   integer(4), device :: xInd(*)
   integer(4) :: idxBase 

5.2.13. cusparseCgthr

This function gathers the elements of the vector y listed in the index array xInd into data array xVal, i.e. xVal = y(xInd) Fortran programmers should normally use idxBase == 1.

 integer(4) function cusparseCgthr(handle, nnz, y, xVal, xInd, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz
   complex(4), device :: y(*)
   complex(4), device :: xVal(*)
   integer(4), device :: xInd(*)
   integer(4) :: idxBase 

5.2.14. cusparseZgthr

This function gathers the elements of the vector y listed in the index array xInd into data array xVal, i.e. xVal = y(xInd) Fortran programmers should normally use idxBase == 1.

 integer(4) function cusparseZgthr(handle, nnz, y, xVal, xInd, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz
   complex(8), device :: y(*)
   complex(8), device :: xVal(*)
   integer(4), device :: xInd(*)
   integer(4) :: idxBase 

5.2.15. cusparseSgthrz

This function gathers the elements of the vector y listed in the index array xInd into data array xVal, i.e. xVal = y(xInd); y(xInd) = 0.0 Fortran programmers should normally use idxBase == 1.

 integer(4) function cusparseSgthrz(handle, nnz, y, xVal, xInd, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz
   real(4), device :: y(*)
   real(4), device :: xVal(*)
   integer(4), device :: xInd(*)
   integer(4) :: idxBase 

5.2.16. cusparseDgthrz

This function gathers the elements of the vector y listed in the index array xInd into data array xVal, i.e. xVal = y(xInd); y(xInd) = 0.0 Fortran programmers should normally use idxBase == 1.

 integer(4) function cusparseDgthrz(handle, nnz, y, xVal, xInd, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz
   real(8), device :: y(*)
   real(8), device :: xVal(*)
   integer(4), device :: xInd(*)
   integer(4) :: idxBase 

5.2.17. cusparseCgthrz

This function gathers the elements of the vector y listed in the index array xInd into data array xVal, i.e. xVal = y(xInd); y(xInd) = 0.0 Fortran programmers should normally use idxBase == 1.

 integer(4) function cusparseCgthrz(handle, nnz, y, xVal, xInd, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz
   complex(4), device :: y(*)
   complex(4), device :: xVal(*)
   integer(4), device :: xInd(*)
   integer(4) :: idxBase 

5.2.18. cusparseZgthrz

This function gathers the elements of the vector y listed in the index array xInd into data array xVal, i.e. xVal = y(xInd); y(xInd) = 0.0 Fortran programmers should normally use idxBase == 1.

 integer(4) function cusparseZgthrz(handle, nnz, y, xVal, xInd, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz
   complex(8), device :: y(*)
   complex(8), device :: xVal(*)
   integer(4), device :: xInd(*)
   integer(4) :: idxBase 

5.2.19. cusparseSsctr

This function scatters the elements of the dense format vector x into the vector y in sparse format, i.e. y(xInd) = x Fortran programmers should normally use idxBase == 1.

 integer(4) function cusparseSsctr(handle, nnz, xVal, xInd, y, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz
   real(4), device :: xVal(*)
   integer(4), device :: xInd(*)
   real(4), device :: y(*)
   integer(4) :: idxBase 

5.2.20. cusparseDsctr

This function scatters the elements of the dense format vector x into the vector y in sparse format, i.e. y(xInd) = x Fortran programmers should normally use idxBase == 1.

 integer(4) function cusparseDsctr(handle, nnz, xVal, xInd, y, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz
   real(8), device :: xVal(*)
   integer(4), device :: xInd(*)
   real(8), device :: y(*)
   integer(4) :: idxBase 

5.2.21. cusparseCsctr

This function scatters the elements of the dense format vector x into the vector y in sparse format, i.e. y(xInd) = x Fortran programmers should normally use idxBase == 1.

 integer(4) function cusparseCsctr(handle, nnz, xVal, xInd, y, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz
   complex(4), device :: xVal(*)
   integer(4), device :: xInd(*)
   complex(4), device :: y(*)
   integer(4) :: idxBase 

5.2.22. cusparseZsctr

This function scatters the elements of the dense format vector x into the vector y in sparse format, i.e. y(xInd) = x Fortran programmers should normally use idxBase == 1.

 integer(4) function cusparseZsctr(handle, nnz, xVal, xInd, y, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz
   complex(8), device :: xVal(*)
   integer(4), device :: xInd(*)
   complex(8), device :: y(*)
   integer(4) :: idxBase 

5.2.23. cusparseSroti

SROT applies a plane rotation. X is a sparse vector and Y is dense.

 integer(4) function cusparseSroti(handle, nnz, xVal, xInd, y, c, s, idxBase)
   type(cusparseHandle) :: handle
   integer :: nnz
   real(4), device :: xVal(*)
   integer(4), device :: xInd(*)
   real(4), device :: y(*)
   real(4), device :: c, s ! device or host variable
   integer :: idxBase 

5.2.24. cusparseDroti

DROT applies a plane rotation. X is a sparse vector and Y is dense.

 integer(4) function cusparseDroti(handle, nnz, xVal, xInd, y, c, s, idxBase)
   type(cusparseHandle) :: handle
   integer :: nnz
   real(8), device :: xVal(*)
   integer(4), device :: xInd(*)
   real(8), device :: y(*)
   real(8), device :: c, s ! device or host variable
   integer :: idxBase 

5.3. CUSPARSE Level 2 Functions

This section contains interfaces for the level 2 sparse linear algebra functions that perform operations between sparse matrices and dense vectors.

5.3.1. cusparseSbsrmv

BSRMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an (mb*blockDim) x (nb*blockDim) sparse matrix that is defined in BSR storage format by the three arrays bsrVal, bsrRowPtr, and bsrColInd

 integer(4) function cusparseSbsrmv(handle, dir, trans, mb, nb, nnzb, alpha, descr, bsrVal, bsrRowPtr, bsrColInd, blockDim, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: dir
   integer :: trans
   integer :: mb, nb, nnzb
   real(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   real(4), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*)
   integer(4), device :: bsrColInd(*)
   integer :: blockDim
   real(4), device :: x(*)
   real(4), device :: beta ! device or host variable
   real(4), device :: y(*) 

5.3.2. cusparseDbsrmv

BSRMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an (mb*blockDim) x (nb*blockDim) sparse matrix that is defined in BSR storage format by the three arrays bsrVal, bsrRowPtr, and bsrColInd

 integer(4) function cusparseDbsrmv(handle, dir, trans, mb, nb, nnzb, alpha, descr, bsrVal, bsrRowPtr, bsrColInd, blockDim, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: dir
   integer :: trans
   integer :: mb, nb, nnzb
   real(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   real(8), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*)
   integer(4), device :: bsrColInd(*)
   integer :: blockDim
   real(8), device :: x(*)
   real(8), device :: beta ! device or host variable
   real(8), device :: y(*) 

5.3.3. cusparseCbsrmv

BSRMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an (mb*blockDim) x (nb*blockDim) sparse matrix that is defined in BSR storage format by the three arrays bsrVal, bsrRowPtr, and bsrColInd

 integer(4) function cusparseCbsrmv(handle, dir, trans, mb, nb, nnzb, alpha, descr, bsrVal, bsrRowPtr, bsrColInd, blockDim, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: dir
   integer :: trans
   integer :: mb, nb, nnzb
   complex(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   complex(4), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*)
   integer(4), device :: bsrColInd(*)
   integer :: blockDim
   complex(4), device :: x(*)
   complex(4), device :: beta ! device or host variable
   complex(4), device :: y(*) 

5.3.4. cusparseZbsrmv

BSRMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an (mb*blockDim) x (nb*blockDim) sparse matrix that is defined in BSR storage format by the three arrays bsrVal, bsrRowPtr, and bsrColInd

 integer(4) function cusparseZbsrmv(handle, dir, trans, mb, nb, nnzb, alpha, descr, bsrVal, bsrRowPtr, bsrColInd, blockDim, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: dir
   integer :: trans
   integer :: mb, nb, nnzb
   complex(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   complex(8), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*)
   integer(4), device :: bsrColInd(*)
   integer :: blockDim
   complex(8), device :: x(*)
   complex(8), device :: beta ! device or host variable
   complex(8), device :: y(*) 

5.3.5. cusparseSbsrxmv

BSRXMV performs a BSRMV and a mask operation.

 integer(4) function cusparseSbsrxmv(handle, dir, trans, sizeOfMask, mb, nb, nnzb, alpha, descr, bsrVal, bsrMaskPtr, bsrRowPtr, bsrEndPtr, bsrColInd, blockDim, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: dir
   integer :: trans
   integer :: sizeOfMask
   integer :: mb, nb, nnzb
   real(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   real(4), device :: bsrVal(*)
   integer(4), device :: bsrMaskPtr(*), bsrRowPtr(*), bsrEndPtr(*)
   integer(4), device :: bsrColInd(*)
   integer :: blockDim
   real(4), device :: x(*)
   real(4), device :: beta ! device or host variable
   real(4), device :: y(*) 

5.3.6. cusparseDbsrxmv

BSRXMV performs a BSRMV and a mask operation.

 integer(4) function cusparseDbsrxmv(handle, dir, trans, sizeOfMask, mb, nb, nnzb, alpha, descr, bsrVal, bsrMaskPtr, bsrRowPtr, bsrEndPtr, bsrColInd, blockDim, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: dir
   integer :: trans
   integer :: sizeOfMask
   integer :: mb, nb, nnzb
   real(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   real(8), device :: bsrVal(*)
   integer(4), device :: bsrMaskPtr(*), bsrRowPtr(*), bsrEndPtr(*)
   integer(4), device :: bsrColInd(*)
   integer :: blockDim
   real(8), device :: x(*)
   real(8), device :: beta ! device or host variable
   real(8), device :: y(*) 

5.3.7. cusparseCbsrxmv

BSRXMV performs a BSRMV and a mask operation.

 integer(4) function cusparseCbsrxmv(handle, dir, trans, sizeOfMask, mb, nb, nnzb, alpha, descr, bsrVal, bsrMaskPtr, bsrRowPtr, bsrEndPtr, bsrColInd, blockDim, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: dir
   integer :: trans
   integer :: sizeOfMask
   integer :: mb, nb, nnzb
   complex(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   complex(4), device :: bsrVal(*)
   integer(4), device :: bsrMaskPtr(*), bsrRowPtr(*), bsrEndPtr(*)
   integer(4), device :: bsrColInd(*)
   integer :: blockDim
   complex(4), device :: x(*)
   complex(4), device :: beta ! device or host variable
   complex(4), device :: y(*) 

5.3.8. cusparseZbsrxmv

BSRXMV performs a BSRMV and a mask operation.

 integer(4) function cusparseZbsrxmv(handle, dir, trans, sizeOfMask, mb, nb, nnzb, alpha, descr, bsrVal, bsrMaskPtr, bsrRowPtr, bsrEndPtr, bsrColInd, blockDim, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: dir
   integer :: trans
   integer :: sizeOfMask
   integer :: mb, nb, nnzb
   complex(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   complex(8), device :: bsrVal(*)
   integer(4), device :: bsrMaskPtr(*), bsrRowPtr(*), bsrEndPtr(*)
   integer(4), device :: bsrColInd(*)
   integer :: blockDim
   complex(8), device :: x(*)
   complex(8), device :: beta ! device or host variable
   complex(8), device :: y(*) 

5.3.9. cusparseScsrmv

CSRMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m x n sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA

 integer(4) function cusparseScsrmv(handle, trans, m, n, nnz, alpha, descr, csrVal, csrRowPtr, csrColInd, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: trans
   integer :: m, n, nnz
   real(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   real(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*)
   integer(4), device :: csrColInd(*)
   real(4), device :: x(*)
   real(4), device :: beta ! device or host variable
   real(4), device :: y(*) 

5.3.10. cusparseDcsrmv

CSRMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m x n sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA

 integer(4) function cusparseDcsrmv(handle, trans, m, n, nnz, alpha, descr, csrVal, csrRowPtr, csrColInd, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: trans
   integer :: m, n, nnz
   real(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   real(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*)
   integer(4), device :: csrColInd(*)
   real(8), device :: x(*)
   real(8), device :: beta ! device or host variable
   real(8), device :: y(*) 

5.3.11. cusparseCcsrmv

CSRMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m x n sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA

 integer(4) function cusparseCcsrmv(handle, trans, m, n, nnz, alpha, descr, csrVal, csrRowPtr, csrColInd, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: trans
   integer :: m, n, nnz
   complex(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   complex(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*)
   integer(4), device :: csrColInd(*)
   complex(4), device :: x(*)
   complex(4), device :: beta ! device or host variable
   complex(4), device :: y(*) 

5.3.12. cusparseZcsrmv

CSRMV performs one of the matrix-vector operations y := alpha*A*x + beta*y, or y := alpha*A**T*x + beta*y, where alpha and beta are scalars, x and y are vectors and A is an m x n sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA

 integer(4) function cusparseZcsrmv(handle, trans, m, n, nnz, alpha, descr, csrVal, csrRowPtr, csrColInd, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: trans
   integer :: m, n, nnz
   complex(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   complex(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*)
   integer(4), device :: csrColInd(*)
   complex(8), device :: x(*)
   complex(8), device :: beta ! device or host variable
   complex(8), device :: y(*) 

5.3.13. cusparseScsrsv_analysis

This function performs the analysis phase of csrsv.

 integer(4) function cusparseScsrsv_analysis(handle, trans, m, nnz, descr, csrVal, csrRowPtr, csrColInd, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descr
   real(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*)
   integer(4), device :: csrColInd(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.3.14. cusparseDcsrsv_analysis

This function performs the analysis phase of csrsv.

 integer(4) function cusparseDcsrsv_analysis(handle, trans, m, nnz, descr, csrVal, csrRowPtr, csrColInd, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descr
   real(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*)
   integer(4), device :: csrColInd(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.3.15. cusparseCcsrsv_analysis

This function performs the analysis phase of csrsv.

 integer(4) function cusparseCcsrsv_analysis(handle, trans, m, nnz, descr, csrVal, csrRowPtr, csrColInd, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descr
   complex(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*)
   integer(4), device :: csrColInd(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.3.16. cusparseZcsrsv_analysis

This function performs the analysis phase of csrsv.

 integer(4) function cusparseZcsrsv_analysis(handle, trans, m, nnz, descr, csrVal, csrRowPtr, csrColInd, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descr
   complex(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*)
   integer(4), device :: csrColInd(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.3.17. cusparseScsrsv_solve

This function performs the solve phase of csrsv.

 integer(4) function cusparseScsrsv_solve(handle, trans, m, alpha, descr, csrVal, csrRowPtr, csrColInd, info, x, y)
   type(cusparseHandle) :: handle
   integer :: trans
   integer :: m
   real(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   real(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*)
   integer(4), device :: csrColInd(*)
   type(cusparseSolveAnalysisInfo) :: info
   real(4), device :: x(*)
   real(4), device :: y(*) 

5.3.18. cusparseDcsrsv_solve

This function performs the solve phase of csrsv.

 integer(4) function cusparseDcsrsv_solve(handle, trans, m, alpha, descr, csrVal, csrRowPtr, csrColInd, info, x, y)
   type(cusparseHandle) :: handle
   integer :: trans
   integer :: m
   real(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   real(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*)
   integer(4), device :: csrColInd(*)
   type(cusparseSolveAnalysisInfo) :: info
   real(8), device :: x(*)
   real(8), device :: y(*) 

5.3.19. cusparseCcsrsv_solve

This function performs the solve phase of csrsv.

 integer(4) function cusparseCcsrsv_solve(handle, trans, m, alpha, descr, csrVal, csrRowPtr, csrColInd, info, x, y)
   type(cusparseHandle) :: handle
   integer :: trans
   integer :: m
   complex(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   complex(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*)
   integer(4), device :: csrColInd(*)
   type(cusparseSolveAnalysisInfo) :: info
   complex(4), device :: x(*)
   complex(4), device :: y(*) 

5.3.20. cusparseZcsrsv_solve

This function performs the solve phase of csrsv.

 integer(4) function cusparseZcsrsv_solve(handle, trans, m, alpha, descr, csrVal, csrRowPtr, csrColInd, info, x, y)
   type(cusparseHandle) :: handle
   integer :: trans
   integer :: m
   complex(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   complex(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*)
   integer(4), device :: csrColInd(*)
   type(cusparseSolveAnalysisInfo) :: info
   complex(8), device :: x(*)
   complex(8), device :: y(*) 

5.3.21. cusparseShybmv

HYBMV performs the matrix-vector operations y := alpha*A*x + beta*y where alpha and beta are scalars, x and y are vectors and A is an m x n sparse matrix that is defined in the HYB storage format.

 integer(4) function cusparseShybmv(handle, trans, alpha, descr, hyb, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: trans
   real(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   type(cusparseHybMat) :: hyb
   real(4), device :: x(*)
   real(4), device :: beta ! device or host variable
   real(4), device :: y(*) 

5.3.22. cusparseDhybmv

HYBMV performs the matrix-vector operations y := alpha*A*x + beta*y where alpha and beta are scalars, x and y are vectors and A is an m x n sparse matrix that is defined in the HYB storage format.

 integer(4) function cusparseDhybmv(handle, trans, alpha, descr, hyb, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: trans
   real(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   type(cusparseHybMat) :: hyb
   real(8), device :: x(*)
   real(8), device :: beta ! device or host variable
   real(8), device :: y(*) 

5.3.23. cusparseChybmv

HYBMV performs the matrix-vector operations y := alpha*A*x + beta*y where alpha and beta are scalars, x and y are vectors and A is an m x n sparse matrix that is defined in the HYB storage format.

 integer(4) function cusparseChybmv(handle, trans, alpha, descr, hyb, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: trans
   complex(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   type(cusparseHybMat) :: hyb
   complex(4), device :: x(*)
   complex(4), device :: beta ! device or host variable
   complex(4), device :: y(*) 

5.3.24. cusparseZhybmv

HYBMV performs the matrix-vector operations y := alpha*A*x + beta*y where alpha and beta are scalars, x and y are vectors and A is an m x n sparse matrix that is defined in the HYB storage format.

 integer(4) function cusparseZhybmv(handle, trans, alpha, descr, hyb, x, beta, y)
   type(cusparseHandle) :: handle
   integer :: trans
   complex(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   type(cusparseHybMat) :: hyb
   complex(8), device :: x(*)
   complex(8), device :: beta ! device or host variable
   complex(8), device :: y(*) 

5.3.25. cusparseShybsv_analysis

This function performs the analysis phase of hybsv.

 integer(4) function cusparseShybsv_analysis(handle, trans, descr, hyb, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans
   type(cusparseMatDescr) :: descr
   type(cusparseHybMat) :: hyb
   type(cusparseSolveAnalysisInfo) :: info 

5.3.26. cusparseDhybsv_analysis

This function performs the analysis phase of hybsv.

 integer(4) function cusparseDhybsv_analysis(handle, trans, descr, hyb, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans
   type(cusparseMatDescr) :: descr
   type(cusparseHybMat) :: hyb
   type(cusparseSolveAnalysisInfo) :: info 

5.3.27. cusparseChybsv_analysis

This function performs the analysis phase of hybsv.

 integer(4) function cusparseChybsv_analysis(handle, trans, descr, hyb, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans
   type(cusparseMatDescr) :: descr
   type(cusparseHybMat) :: hyb
   type(cusparseSolveAnalysisInfo) :: info 

5.3.28. cusparseZhybsv_analysis

This function performs the analysis phase of hybsv.

 integer(4) function cusparseZhybsv_analysis(handle, trans, descr, hyb, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans
   type(cusparseMatDescr) :: descr
   type(cusparseHybMat) :: hyb
   type(cusparseSolveAnalysisInfo) :: info 

5.3.29. cusparseShybsv_solve

This function performs the solve phase of hybsv.

 integer(4) function cusparseShybsv_solve(handle, trans, alpha, descr, hyb, info, x, y)
   type(cusparseHandle) :: handle
   integer :: trans
   real(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   type(cusparseHybMat) :: hyb
   type(cusparseSolveAnalysisInfo) :: info
   real(4), device :: x(*)
   real(4), device :: y(*) 

5.3.30. cusparseDhybsv_solve

This function performs the solve phase of hybsv.

 integer(4) function cusparseDhybsv_solve(handle, trans, alpha, descr, hyb, info, x, y)
   type(cusparseHandle) :: handle
   integer :: trans
   real(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   type(cusparseHybMat) :: hyb
   type(cusparseSolveAnalysisInfo) :: info
   real(8), device :: x(*)
   real(8), device :: y(*) 

5.3.31. cusparseChybsv_solve

This function performs the solve phase of hybsv.

 integer(4) function cusparseChybsv_solve(handle, trans, alpha, descr, hyb, info, x, y)
   type(cusparseHandle) :: handle
   integer :: trans
   complex(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   type(cusparseHybMat) :: hyb
   type(cusparseSolveAnalysisInfo) :: info
   complex(4), device :: x(*)
   complex(4), device :: y(*) 

5.3.32. cusparseZhybsv_solve

This function performs the solve phase of hybsv.

 integer(4) function cusparseZhybsv_solve(handle, trans, alpha, descr, hyb, info, x, y)
   type(cusparseHandle) :: handle
   integer :: trans
   complex(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descr
   type(cusparseHybMat) :: hyb
   type(cusparseSolveAnalysisInfo) :: info
   complex(8), device :: x(*)
   complex(8), device :: y(*) 

5.3.33. cusparseSbsrsv2_bufferSize

This function returns the size of the buffer used in bsrsv2.

 integer(4) function cusparseSbsrsv2_bufferSize(handle, dirA, transA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrsv2Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.3.34. cusparseDbsrsv2_bufferSize

This function returns the size of the buffer used in bsrsv2.

 integer(4) function cusparseDbsrsv2_bufferSize(handle, dirA, transA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrsv2Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.3.35. cusparseCbsrsv2_bufferSize

This function returns the size of the buffer used in bsrsv2.

 integer(4) function cusparseCbsrsv2_bufferSize(handle, dirA, transA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrsv2Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.3.36. cusparseZbsrsv2_bufferSize

This function returns the size of the buffer used in bsrsv2.

 integer(4) function cusparseZbsrsv2_bufferSize(handle, dirA, transA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrsv2Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.3.37. cusparseSbsrsv2_analysis

This function performs the analysis phase of bsrsv2.

 integer(4) function cusparseSbsrsv2_analysis(handle, dirA, transA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrsv2Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.3.38. cusparseDbsrsv2_analysis

This function performs the analysis phase of bsrsv2.

 integer(4) function cusparseDbsrsv2_analysis(handle, dirA, transA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrsv2Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.3.39. cusparseCbsrsv2_analysis

This function performs the analysis phase of bsrsv2.

 integer(4) function cusparseCbsrsv2_analysis(handle, dirA, transA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrsv2Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.3.40. cusparseZbsrsv2_analysis

This function performs the analysis phase of bsrsv2.

 integer(4) function cusparseZbsrsv2_analysis(handle, dirA, transA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrsv2Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.3.41. cusparseSbsrsv2_solve

This function performs the solve phase of bsrsv2.

 integer(4) function cusparseSbsrsv2_solve(handle, dirA, transA, mb, nnzb, alpha, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, x, y, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer :: dirA, transA, mb, nnzb
   real(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: blockDim
   type(cusparseBsrsv2Info) :: info
   real(4), device :: x(*), y(*)
   integer :: policy
   character, device :: pBuffer(*) 

5.3.42. cusparseDbsrsv2_solve

This function performs the solve phase of bsrsv2.

 integer(4) function cusparseDbsrsv2_solve(handle, dirA, transA, mb, nnzb, alpha, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, x, y, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer :: dirA, transA, mb, nnzb
   real(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: blockDim
   type(cusparseBsrsv2Info) :: info
   real(8), device :: x(*), y(*)
   integer :: policy
   character, device :: pBuffer(*) 

5.3.43. cusparseCbsrsv2_solve

This function performs the solve phase of bsrsv2.

 integer(4) function cusparseCbsrsv2_solve(handle, dirA, transA, mb, nnzb, alpha, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, x, y, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer :: dirA, transA, mb, nnzb
   complex(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: blockDim
   type(cusparseBsrsv2Info) :: info
   complex(4), device :: x(*), y(*)
   integer :: policy
   character, device :: pBuffer(*) 

5.3.44. cusparseZbsrsv2_solve

This function performs the solve phase of bsrsv2.

 integer(4) function cusparseZbsrsv2_solve(handle, dirA, transA, mb, nnzb, alpha, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, x, y, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer :: dirA, transA, mb, nnzb
   complex(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: blockDim
   type(cusparseBsrsv2Info) :: info
   complex(8), device :: x(*), y(*)
   integer :: policy
   character, device :: pBuffer(*) 

5.3.45. cusparseXbsrsv2_zeroPivot

This function returns an error code equal to CUSPARSE_STATUS_ZERO_PIVOT and sets position to j when A(j,j) is either structural zero or numerical zero. Otherwise, position is set to -1.

 integer(4) function cusparseXbsrsv2_zeroPivot(handle, info, position)
   type(cusparseHandle) :: handle
   type(cusparseBsrsv2Info) :: info
   integer(4), device :: position ! device or host variable 

5.3.46. cusparseScsrsv2_bufferSize

This function returns the size of the buffer used in csrsv2.

 integer(4) function cusparseScsrsv2_bufferSize(handle, transA, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: transA, m, nnz
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrsv2Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.3.47. cusparseDcsrsv2_bufferSize

This function returns the size of the buffer used in csrsv2.

 integer(4) function cusparseDcsrsv2_bufferSize(handle, transA, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: transA, m, nnz
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrsv2Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.3.48. cusparseCcsrsv2_bufferSize

This function returns the size of the buffer used in csrsv2.

 integer(4) function cusparseCcsrsv2_bufferSize(handle, transA, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: transA, m, nnz
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrsv2Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.3.49. cusparseZcsrsv2_bufferSize

This function returns the size of the buffer used in csrsv2.

 integer(4) function cusparseZcsrsv2_bufferSize(handle, transA, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: transA, m, nnz
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrsv2Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.3.50. cusparseScsrsv2_analysis

This function performs the analysis phase of csrsv2.

 integer(4) function cusparseScsrsv2_analysis(handle, transA, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: transA, m, nnz
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrsv2Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.3.51. cusparseDcsrsv2_analysis

This function performs the analysis phase of csrsv2.

 integer(4) function cusparseDcsrsv2_analysis(handle, transA, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: transA, m, nnz
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrsv2Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.3.52. cusparseCcsrsv2_analysis

This function performs the analysis phase of csrsv2.

 integer(4) function cusparseCcsrsv2_analysis(handle, transA, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: transA, m, nnz
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrsv2Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.3.53. cusparseZcsrsv2_analysis

This function performs the analysis phase of csrsv2.

 integer(4) function cusparseZcsrsv2_analysis(handle, transA, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: transA, m, nnz
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrsv2Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.3.54. cusparseScsrsv2_solve

This function performs the solve phase of csrsv2.

 integer(4) function cusparseScsrsv2_solve(handle, transA, m, nnz, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, info, x, y, policy, pBuffer)
   type(cusparseHandle) :: handle
   real(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*), x(*), y(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrsv2Info) :: info
   integer :: policy
   character, device :: pBuffer(*) 

5.3.55. cusparseDcsrsv2_solve

This function performs the solve phase of csrsv2.

 integer(4) function cusparseDcsrsv2_solve(handle, transA, m, nnz, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, info, x, y, policy, pBuffer)
   type(cusparseHandle) :: handle
   real(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*), x(*), y(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrsv2Info) :: info
   integer :: policy
   character, device :: pBuffer(*) 

5.3.56. cusparseCcsrsv2_solve

This function performs the solve phase of csrsv2.

 integer(4) function cusparseCcsrsv2_solve(handle, transA, m, nnz, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, info, x, y, policy, pBuffer)
   type(cusparseHandle) :: handle
   complex(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*), x(*), y(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrsv2Info) :: info
   integer :: policy
   character, device :: pBuffer(*) 

5.3.57. cusparseZcsrsv2_solve

This function performs the solve phase of csrsv2.

 integer(4) function cusparseZcsrsv2_solve(handle, transA, m, nnz, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, info, x, y, policy, pBuffer)
   type(cusparseHandle) :: handle
   complex(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*), x(*), y(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrsv2Info) :: info
   integer :: policy
   character, device :: pBuffer(*) 

5.3.58. cusparseXcsrsv2_zeroPivot

This function returns an error code equal to CUSPARSE_STATUS_ZERO_PIVOT and sets position to j when A(j,j) is either structural zero or numerical zero. Otherwise, position is set to -1.

 integer(4) function cusparseXcsrsv2_zeroPivot(handle, info, position)
   type(cusparseHandle) :: handle
   type(cusparseCsrsv2Info) :: info
   integer(4), device :: position ! device or host variable 

5.4. CUSPARSE Level 3 Functions

This section contains interfaces for the level 3 sparse linear algebra functions that perform operations between sparse and dense matrices.

5.4.1. cusparseScsrmm

CSRMM performs one of the matrix-matrix operations C := alpha*op( A ) * B + beta*C, where op( A ) is one of op( A ) = A or op( A ) = A**T, alpha and beta are scalars. A is an m x k sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA. B and C are dense matrices.

 integer(4) function cusparseScsrmm(handle, transA, m, n, k, nnz, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, B, ldb, beta, C, ldc)
   type(cusparseHandle) :: handle
   integer :: transA, m, n, k, nnz
   real(4), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*), B(*), C(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   integer :: ldb, ldc 

5.4.2. cusparseDcsrmm

CSRMM performs one of the matrix-matrix operations C := alpha*op( A ) * B + beta*C, where op( A ) is one of op( A ) = A or op( A ) = A**T, alpha and beta are scalars. A is an m x k sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA. B and C are dense matrices.

 integer(4) function cusparseDcsrmm(handle, transA, m, n, k, nnz, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, B, ldb, beta, C, ldc)
   type(cusparseHandle) :: handle
   integer :: transA, m, n, k, nnz
   real(8), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*), B(*), C(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   integer :: ldb, ldc 

5.4.3. cusparseCcsrmm

CSRMM performs one of the matrix-matrix operations C := alpha*op( A ) * B + beta*C, where op( A ) is one of op( A ) = A or op( A ) = A**T, alpha and beta are scalars. A is an m x k sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA. B and C are dense matrices.

 integer(4) function cusparseCcsrmm(handle, transA, m, n, k, nnz, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, B, ldb, beta, C, ldc)
   type(cusparseHandle) :: handle
   integer :: transA, m, n, k, nnz
   complex(4), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*), B(*), C(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   integer :: ldb, ldc 

5.4.4. cusparseZcsrmm

CSRMM performs one of the matrix-matrix operations C := alpha*op( A ) * B + beta*C, where op( A ) is one of op( A ) = A or op( A ) = A**T, alpha and beta are scalars. A is an m x k sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA. B and C are dense matrices.

 integer(4) function cusparseZcsrmm(handle, transA, m, n, k, nnz, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, B, ldb, beta, C, ldc)
   type(cusparseHandle) :: handle
   integer :: transA, m, n, k, nnz
   complex(8), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*), B(*), C(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   integer :: ldb, ldc 

5.4.5. cusparseScsrmm2

CSRMM2 performs one of the matrix-matrix operations C := alpha*op( A ) * op( B ) + beta*C, where op( A ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars. A is an m x k sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA. B and C are dense matrices.

 integer(4) function cusparseScsrmm2(handle, transA, transB, m, n, k, nnz, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, B, ldb, beta, C, ldc)
   type(cusparseHandle) :: handle
   integer :: transA, transB, m, n, k, nnz
   real(4), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*), B(*), C(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   integer :: ldb, ldc 

5.4.6. cusparseDcsrmm2

CSRMM2 performs one of the matrix-matrix operations C := alpha*op( A ) * op( B ) + beta*C, where op( A ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars. A is an m x k sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA. B and C are dense matrices.

 integer(4) function cusparseDcsrmm2(handle, transA, transB, m, n, k, nnz, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, B, ldb, beta, C, ldc)
   type(cusparseHandle) :: handle
   integer :: transA, transB, m, n, k, nnz
   real(8), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*), B(*), C(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   integer :: ldb, ldc 

5.4.7. cusparseCcsrmm2

CSRMM2 performs one of the matrix-matrix operations C := alpha*op( A ) * op( B ) + beta*C, where op( A ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars. A is an m x k sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA. B and C are dense matrices.

 integer(4) function cusparseCcsrmm2(handle, transA, transB, m, n, k, nnz, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, B, ldb, beta, C, ldc)
   type(cusparseHandle) :: handle
   integer :: transA, transB, m, n, k, nnz
   complex(4), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*), B(*), C(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   integer :: ldb, ldc 

5.4.8. cusparseZcsrmm2

CSRMM2 performs one of the matrix-matrix operations C := alpha*op( A ) * op( B ) + beta*C, where op( A ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars. A is an m x k sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA. B and C are dense matrices.

 integer(4) function cusparseZcsrmm2(handle, transA, transB, m, n, k, nnz, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, B, ldb, beta, C, ldc)
   type(cusparseHandle) :: handle
   integer :: transA, transB, m, n, k, nnz
   complex(8), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*), B(*), C(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   integer :: ldb, ldc 

5.4.9. cusparseScsrsm_analysis

This function performs the analysis phase of csrsm.

 integer(4) function cusparseScsrsm_analysis(handle, transA, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info)
   type(cusparseHandle) :: handle
   integer(4) :: transA, m, nnz
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.4.10. cusparseDcsrsm_analysis

This function performs the analysis phase of csrsm.

 integer(4) function cusparseDcsrsm_analysis(handle, transA, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info)
   type(cusparseHandle) :: handle
   integer(4) :: transA, m, nnz
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.4.11. cusparseCcsrsm_analysis

This function performs the analysis phase of csrsm.

 integer(4) function cusparseCcsrsm_analysis(handle, transA, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info)
   type(cusparseHandle) :: handle
   integer(4) :: transA, m, nnz
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.4.12. cusparseZcsrsm_analysis

This function performs the analysis phase of csrsm.

 integer(4) function cusparseZcsrsm_analysis(handle, transA, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info)
   type(cusparseHandle) :: handle
   integer(4) :: transA, m, nnz
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.4.13. cusparseScsrsm_solve

This function performs the solve phase of csrsm.

 integer(4) function cusparseScsrsm_solve(handle, transA, m, n, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, info, X, ldx, Y, ldy)
   type(cusparseHandle) :: handle
   integer :: transA, m, n
   real(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info
   real(4), device :: X(*), Y(*)
   integer :: ldx, ldy 

5.4.14. cusparseDcsrsm_solve

This function performs the solve phase of csrsm.

 integer(4) function cusparseDcsrsm_solve(handle, transA, m, n, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, info, X, ldx, Y, ldy)
   type(cusparseHandle) :: handle
   integer :: transA, m, n
   real(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info
   real(8), device :: X(*), Y(*)
   integer :: ldx, ldy 

5.4.15. cusparseCcsrsm_solve

This function performs the solve phase of csrsm.

 integer(4) function cusparseCcsrsm_solve(handle, transA, m, n, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, info, X, ldx, Y, ldy)
   type(cusparseHandle) :: handle
   integer :: transA, m, n
   complex(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info
   complex(4), device :: X(*), Y(*)
   integer :: ldx, ldy 

5.4.16. cusparseZcsrsm_solve

This function performs the solve phase of csrsm.

 integer(4) function cusparseZcsrsm_solve(handle, transA, m, n, alpha, descrA, csrValA, csrRowPtrA, csrColIndA, info, X, ldx, Y, ldy)
   type(cusparseHandle) :: handle
   integer :: transA, m, n
   complex(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info
   complex(8), device :: X(*), Y(*)
   integer :: ldx, ldy 

5.4.17. cusparseSbsrmm

BSRMM performs one of the matrix-matrix operations C := alpha*op( A ) * op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars. A is an mb x kb sparse matrix that is defined in BSR storage format by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA. B and C are dense matrices.

 integer(4) function cusparseSbsrmm(handle, dirA, transA, transB, mb, n, kb, nnzb, alpha, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, B, ldb, beta, C, ldc)
   type(cusparseHandle) :: handle
   integer :: dirA, transA, transB, mb, n, kb, nnzb, blockDim
   real(4), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*), B(*), C(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: ldb, ldc 

5.4.18. cusparseDbsrmm

BSRMM performs one of the matrix-matrix operations C := alpha*op( A ) * op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars. A is an mb x kb sparse matrix that is defined in BSR storage format by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA. B and C are dense matrices.

 integer(4) function cusparseDbsrmm(handle, dirA, transA, transB, mb, n, kb, nnzb, alpha, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, B, ldb, beta, C, ldc)
   type(cusparseHandle) :: handle
   integer :: dirA, transA, transB, mb, n, kb, nnzb, blockDim
   real(8), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*), B(*), C(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: ldb, ldc 

5.4.19. cusparseCbsrmm

BSRMM performs one of the matrix-matrix operations C := alpha*op( A ) * op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars. A is an mb x kb sparse matrix that is defined in BSR storage format by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA. B and C are dense matrices.

 integer(4) function cusparseCbsrmm(handle, dirA, transA, transB, mb, n, kb, nnzb, alpha, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, B, ldb, beta, C, ldc)
   type(cusparseHandle) :: handle
   integer :: dirA, transA, transB, mb, n, kb, nnzb, blockDim
   complex(4), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*), B(*), C(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: ldb, ldc 

5.4.20. cusparseZbsrmm

BSRMM performs one of the matrix-matrix operations C := alpha*op( A ) * op( B ) + beta*C, where op( X ) is one of op( X ) = X or op( X ) = X**T, alpha and beta are scalars. A is an mb x kb sparse matrix that is defined in BSR storage format by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA. B and C are dense matrices.

 integer(4) function cusparseZbsrmm(handle, dirA, transA, transB, mb, n, kb, nnzb, alpha, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, B, ldb, beta, C, ldc)
   type(cusparseHandle) :: handle
   integer :: dirA, transA, transB, mb, n, kb, nnzb, blockDim
   complex(8), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*), B(*), C(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: ldb, ldc 

5.4.21. cusparseSbsrsm2_bufferSize

This function returns the size of the buffer used in bsrsm2.

 integer(4) function cusparseSbsrsm2_bufferSize(handle, dirA, transA, transX, mb, n, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA, transX, mb, n, nnzb, blockDim
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   type(cusparseBsrsm2Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.4.22. cusparseDbsrsm2_bufferSize

This function returns the size of the buffer used in bsrsm2.

 integer(4) function cusparseDbsrsm2_bufferSize(handle, dirA, transA, transX, mb, n, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA, transX, mb, n, nnzb, blockDim
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   type(cusparseBsrsm2Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.4.23. cusparseCbsrsm2_bufferSize

This function returns the size of the buffer used in bsrsm2.

 integer(4) function cusparseCbsrsm2_bufferSize(handle, dirA, transA, transX, mb, n, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA, transX, mb, n, nnzb, blockDim
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   type(cusparseBsrsm2Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.4.24. cusparseZbsrsm2_bufferSize

This function returns the size of the buffer used in bsrsm2.

 integer(4) function cusparseZbsrsm2_bufferSize(handle, dirA, transA, transX, mb, n, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA, transX, mb, n, nnzb, blockDim
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   type(cusparseBsrsm2Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.4.25. cusparseSbsrsm2_analysis

This function performs the analysis phase of bsrsm2.

 integer(4) function cusparseSbsrsm2_analysis(handle, dirA, transA, transX, mb, n, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA, transX, mb, n, nnzb, blockDim
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   type(cusparseBsrsm2Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.4.26. cusparseDbsrsm2_analysis

This function performs the analysis phase of bsrsm2.

 integer(4) function cusparseDbsrsm2_analysis(handle, dirA, transA, transX, mb, n, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA, transX, mb, n, nnzb, blockDim
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   type(cusparseBsrsm2Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.4.27. cusparseCbsrsm2_analysis

This function performs the analysis phase of bsrsm2.

 integer(4) function cusparseCbsrsm2_analysis(handle, dirA, transA, transX, mb, n, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA, transX, mb, n, nnzb, blockDim
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   type(cusparseBsrsm2Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.4.28. cusparseZbsrsm2_analysis

This function performs the analysis phase of bsrsm2.

 integer(4) function cusparseZbsrsm2_analysis(handle, dirA, transA, transX, mb, n, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, transA, transX, mb, n, nnzb, blockDim
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   type(cusparseBsrsm2Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.4.29. cusparseSbsrsm2_solve

This function performs the solve phase of bsrsm2.

 integer(4) function cusparseSbsrsm2_solve(handle, dirA, transA, transX, mb, n, nnzb, alpha, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, x, ldx, y, ldy, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer :: dirA, transA, transX, mb, n, nnzb
   real(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*), x(*), y(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: blockDim, policy, ldx, ldy
   type(cusparseBsrsm2Info) :: info
   character, device :: pBuffer(*) 

5.4.30. cusparseDbsrsm2_solve

This function performs the solve phase of bsrsm2.

 integer(4) function cusparseDbsrsm2_solve(handle, dirA, transA, transX, mb, n, nnzb, alpha, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, x, ldx, y, ldy, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer :: dirA, transA, transX, mb, n, nnzb
   real(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*), x(*), y(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: blockDim, policy, ldx, ldy
   type(cusparseBsrsm2Info) :: info
   character, device :: pBuffer(*) 

5.4.31. cusparseCbsrsm2_solve

This function performs the solve phase of bsrsm2.

 integer(4) function cusparseCbsrsm2_solve(handle, dirA, transA, transX, mb, n, nnzb, alpha, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, x, ldx, y, ldy, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer :: dirA, transA, transX, mb, n, nnzb
   complex(4), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*), x(*), y(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: blockDim, policy, ldx, ldy
   type(cusparseBsrsm2Info) :: info
   character, device :: pBuffer(*) 

5.4.32. cusparseZbsrsm2_solve

This function performs the solve phase of bsrsm2.

 integer(4) function cusparseZbsrsm2_solve(handle, dirA, transA, transX, mb, n, nnzb, alpha, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, x, ldx, y, ldy, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer :: dirA, transA, transX, mb, n, nnzb
   complex(8), device :: alpha ! device or host variable
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*), x(*), y(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: blockDim, policy, ldx, ldy
   type(cusparseBsrsm2Info) :: info
   character, device :: pBuffer(*) 

5.4.33. cusparseXbsrsm2_zeroPivot

This function returns an error code equal to CUSPARSE_STATUS_ZERO_PIVOT and sets position to j when A(j,j) is either structural zero or numerical zero. Otherwise, position is set to -1.

 integer(4) function cusparseXbsrsm2_zeroPivot(handle, info, position)
   type(cusparseHandle) :: handle
   type(cusparseBsrsm2Info) :: info
   integer(4), device :: position ! device or host variable 

5.5. CUSPARSE Extra Functions

This section contains interfaces for the extra functions that are used to manipulate sparse matrices.

5.5.1. cusparseXcsrgeamNnz

cusparseXcsrgeamNnz computes the number of nonzero elements which will be produced by CSRGEAM.

 integer(4) function cusparseXcsrgeamNnz(handle, m, n, descrA, nnzA, csrRowPtrA, csrColIndA, descrB, nnzB, csrRowPtrB, csrColIndB, descrC, csrRowPtrC, nnzTotalDevHostPtr)
   type(cusparseHandle) :: handle
   integer :: m, n, nnzA, nnzB
   type(cusparseMatDescr) :: descrA, descrB, descrC
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrC(*)
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable 

5.5.2. cusparseScsrgeam

CSRGEAM performs the matrix-matrix operation C := alpha * A + beta * B, alpha and beta are scalars. A, B, and C are m x n sparse matrices that are defined in CSR storage format by the three arrays csrVal{A|B|C}, csrRowPtr{A|B|C}, and csrColInd{A|B|C}. cusparseXcsrgeamNnz should be used to determine csrRowPtrC and the number of nonzero elements in the result.

 integer(4) function cusparseScsrgeam(handle, m, n,        alpha, descrA, nnzA, csrValA, csrRowPtrA, csrColIndA,        beta, descrB, nnzB, csrValB, csrRowPtrB, csrColIndB, descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer :: m, n, nnzA, nnzB
   real(4), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr):: descrA, descrB, descrC
   real(4), device :: csrValA(*), csrValB(*), csrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrC(*), csrColIndC(*) 

5.5.3. cusparseDcsrgeam

CSRGEAM performs the matrix-matrix operation C := alpha * A + beta * B, alpha and beta are scalars. A, B, and C are m x n sparse matrices that are defined in CSR storage format by the three arrays csrVal{A|B|C}, csrRowPtr{A|B|C}, and csrColInd{A|B|C}. cusparseXcsrgeamNnz should be used to determine csrRowPtrC and the number of nonzero elements in the result.

 integer(4) function cusparseDcsrgeam(handle, m, n,        alpha, descrA, nnzA, csrValA, csrRowPtrA, csrColIndA,        beta, descrB, nnzB, csrValB, csrRowPtrB, csrColIndB, descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer :: m, n, nnzA, nnzB
   real(8), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr):: descrA, descrB, descrC
   real(8), device :: csrValA(*), csrValB(*), csrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrC(*), csrColIndC(*) 

5.5.4. cusparseCcsrgeam

CSRGEAM performs the matrix-matrix operation C := alpha * A + beta * B, alpha and beta are scalars. A, B, and C are m x n sparse matrices that are defined in CSR storage format by the three arrays csrVal{A|B|C}, csrRowPtr{A|B|C}, and csrColInd{A|B|C}. cusparseXcsrgeamNnz should be used to determine csrRowPtrC and the number of nonzero elements in the result.

 integer(4) function cusparseCcsrgeam(handle, m, n,        alpha, descrA, nnzA, csrValA, csrRowPtrA, csrColIndA,        beta, descrB, nnzB, csrValB, csrRowPtrB, csrColIndB, descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer :: m, n, nnzA, nnzB
   complex(4), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr):: descrA, descrB, descrC
   complex(4), device :: csrValA(*), csrValB(*), csrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrC(*), csrColIndC(*) 

5.5.5. cusparseZcsrgeam

CSRGEAM performs the matrix-matrix operation C := alpha * A + beta * B, alpha and beta are scalars. A, B, and C are m x n sparse matrices that are defined in CSR storage format by the three arrays csrVal{A|B|C}, csrRowPtr{A|B|C}, and csrColInd{A|B|C}. cusparseXcsrgeamNnz should be used to determine csrRowPtrC and the number of nonzero elements in the result.

 integer(4) function cusparseZcsrgeam(handle, m, n,        alpha, descrA, nnzA, csrValA, csrRowPtrA, csrColIndA,        beta, descrB, nnzB, csrValB, csrRowPtrB, csrColIndB, descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer :: m, n, nnzA, nnzB
   complex(8), device :: alpha, beta ! device or host variable
   type(cusparseMatDescr):: descrA, descrB, descrC
   complex(8), device :: csrValA(*), csrValB(*), csrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrC(*), csrColIndC(*) 

5.5.6. cusparseXcsrgemmNnz

cusparseXcsrgemmNnz computes the number of nonzero elements which will be produced by CSRGEMM.

 integer(4) function cusparseXcsrgemmNnz(handle, transA, transB, m, n, k,        descrA, nnzA, csrRowPtrA, csrColIndA,        descrB, nnzB, csrRowPtrB, csrColIndB, descrC, csrRowPtrC, nnzTotalDevHostPtr)
   type(cusparseHandle) :: handle
   integer :: transA, transB, m, n, k, nnzA, nnzB
   type(cusparseMatDescr) :: descrA, descrB, descrC
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrC(*)
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable 

5.5.7. cusparseScsrgemm

CSRGEMM performs the matrix-matrix operation C := op( A ) * op( B ), where op( X ) is one of op( X ) = X or op( X ) = X**T, A, B, and C are m x k, k x n, and m x n sparse matrices that are defined in CSR storage format by the three arrays csrVal{A|B|C}, csrRowPtr{A|B|C}, and csrColInd{A|B|C}. cusparseXcsrgemmNnz should be used to determine csrRowPtrC and the number of nonzero elements in the result.

 integer(4) function cusparseScsrgemm(handle, transA, transB, m, n, k,           descrA, nnzA, csrValA, csrRowPtrA, csrColIndA,           descrB, nnzB, csrValB, csrRowPtrB, csrColIndB,           descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: transA, transB, m, n, k, nnzA, nnzB
   type(cusparseMatDescr) :: descrA, descrB, descrC
   real(4), device :: csrValA(*), csrValB(*), csrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrC(*), csrColIndC(*) 

5.5.8. cusparseDcsrgemm

CSRGEMM performs the matrix-matrix operation C := op( A ) * op( B ), where op( X ) is one of op( X ) = X or op( X ) = X**T, A, B, and C are m x k, k x n, and m x n sparse matrices that are defined in CSR storage format by the three arrays csrVal{A|B|C}, csrRowPtr{A|B|C}, and csrColInd{A|B|C}. cusparseXcsrgemmNnz should be used to determine csrRowPtrC and the number of nonzero elements in the result.

 integer(4) function cusparseDcsrgemm(handle, transA, transB, m, n, k,           descrA, nnzA, csrValA, csrRowPtrA, csrColIndA,           descrB, nnzB, csrValB, csrRowPtrB, csrColIndB,           descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: transA, transB, m, n, k, nnzA, nnzB
   type(cusparseMatDescr) :: descrA, descrB, descrC
   real(8), device :: csrValA(*), csrValB(*), csrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrC(*), csrColIndC(*) 

5.5.9. cusparseCcsrgemm

CSRGEMM performs the matrix-matrix operation C := op( A ) * op( B ), where op( X ) is one of op( X ) = X or op( X ) = X**T, A, B, and C are m x k, k x n, and m x n sparse matrices that are defined in CSR storage format by the three arrays csrVal{A|B|C}, csrRowPtr{A|B|C}, and csrColInd{A|B|C}. cusparseXcsrgemmNnz should be used to determine csrRowPtrC and the number of nonzero elements in the result.

 integer(4) function cusparseCcsrgemm(handle, transA, transB, m, n, k,           descrA, nnzA, csrValA, csrRowPtrA, csrColIndA,           descrB, nnzB, csrValB, csrRowPtrB, csrColIndB,           descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: transA, transB, m, n, k, nnzA, nnzB
   type(cusparseMatDescr) :: descrA, descrB, descrC
   complex(4), device :: csrValA(*), csrValB(*), csrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrC(*), csrColIndC(*) 

5.5.10. cusparseZcsrgemm

CSRGEMM performs the matrix-matrix operation C := op( A ) * op( B ), where op( X ) is one of op( X ) = X or op( X ) = X**T, A, B, and C are m x k, k x n, and m x n sparse matrices that are defined in CSR storage format by the three arrays csrVal{A|B|C}, csrRowPtr{A|B|C}, and csrColInd{A|B|C}. cusparseXcsrgemmNnz should be used to determine csrRowPtrC and the number of nonzero elements in the result.

 integer(4) function cusparseZcsrgemm(handle, transA, transB, m, n, k,           descrA, nnzA, csrValA, csrRowPtrA, csrColIndA,           descrB, nnzB, csrValB, csrRowPtrB, csrColIndB,           descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: transA, transB, m, n, k, nnzA, nnzB
   type(cusparseMatDescr) :: descrA, descrB, descrC
   complex(8), device :: csrValA(*), csrValB(*), csrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrC(*), csrColIndC(*) 

5.5.11. cusparseScsrgemm2_bufferSizeExt

This function returns the size of the buffer used in csrgemm2.

 integer(4) function cusparseScsrgemm2_bufferSizeExt(handle, m, n, k,        alpha,        descrA, nnzA, csrRowPtrA, csrColIndA,        descrB, nnzB, csrRowPtrB, csrColIndB,        beta,        descrD, nnzD, csrRowPtrD, csrColIndD, info, pBufferSizeInBytes)
   type(cusparseHandle) :: handle
   real(4), device :: alpha, beta ! device or host variable
   integer :: m, n, k, nnzA, nnzB, nnzD
   type(cusparseMatDescr) :: descrA, descrB, descrD
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrD(*), csrColIndD(*)
   type(cusparseCsrgemm2Info) :: info
   integer(8) :: pBufferSizeInBytes 

5.5.12. cusparseDcsrgemm2_bufferSizeExt

This function returns the size of the buffer used in csrgemm2.

 integer(4) function cusparseDcsrgemm2_bufferSizeExt(handle, m, n, k,        alpha,        descrA, nnzA, csrRowPtrA, csrColIndA,        descrB, nnzB, csrRowPtrB, csrColIndB,        beta,        descrD, nnzD, csrRowPtrD, csrColIndD, info, pBufferSizeInBytes)
   type(cusparseHandle) :: handle
   real(8), device :: alpha, beta ! device or host variable
   integer :: m, n, k, nnzA, nnzB, nnzD
   type(cusparseMatDescr) :: descrA, descrB, descrD
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrD(*), csrColIndD(*)
   type(cusparseCsrgemm2Info) :: info
   integer(8) :: pBufferSizeInBytes 

5.5.13. cusparseCcsrgemm2_bufferSizeExt

This function returns the size of the buffer used in csrgemm2.

 integer(4) function cusparseCcsrgemm2_bufferSizeExt(handle, m, n, k,        alpha,        descrA, nnzA, csrRowPtrA, csrColIndA,        descrB, nnzB, csrRowPtrB, csrColIndB,        beta,        descrD, nnzD, csrRowPtrD, csrColIndD, info, pBufferSizeInBytes)
   type(cusparseHandle) :: handle
   complex(4), device :: alpha, beta ! device or host variable
   integer :: m, n, k, nnzA, nnzB, nnzD
   type(cusparseMatDescr) :: descrA, descrB, descrD
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrD(*), csrColIndD(*)
   type(cusparseCsrgemm2Info) :: info
   integer(8) :: pBufferSizeInBytes 

5.5.14. cusparseZcsrgemm2_bufferSizeExt

This function returns the size of the buffer used in csrgemm2.

 integer(4) function cusparseZcsrgemm2_bufferSizeExt(handle, m, n, k,        alpha,        descrA, nnzA, csrRowPtrA, csrColIndA,        descrB, nnzB, csrRowPtrB, csrColIndB,        beta,        descrD, nnzD, csrRowPtrD, csrColIndD, info, pBufferSizeInBytes)
   type(cusparseHandle) :: handle
   complex(8), device :: alpha, beta ! device or host variable
   integer :: m, n, k, nnzA, nnzB, nnzD
   type(cusparseMatDescr) :: descrA, descrB, descrD
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), csrRowPtrB(*), csrColIndB(*), csrRowPtrD(*), csrColIndD(*)
   type(cusparseCsrgemm2Info) :: info
   integer(8) :: pBufferSizeInBytes 

5.5.15. cusparseXcsrgemm2Nnz

cusparseXcsrgemm2Nnz computes the number of nonzero elements which will be produced by CSRGEMM2.

 integer(4) function cusparseXcsrgemm2Nnz(handle,           m, n, k,           descrA, nnzA, csrRowPtrA, csrColIndA,           descrB, nnzB, csrRowPtrB, csrColIndB,           descrD, nnzD, csrRowPtrD, csrColIndD,           descrC, csrRowPtrC, nnzTotalDevHostPtr, info, pBuffer)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA, descrB, descrD, descrC
   type(cusparseCsrgemm2Info) :: info
   integer(4) :: m, n, k, nnzA, nnzB, nnzD
   integer(4), device :: csrRowPtrA(*), csrColIndA(*),             csrRowPtrB(*), csrColIndB(*), csrRowPtrD(*), csrColIndD(*), csrRowPtrC(*)
   integer(c_int) :: nnzTotalDevHostPtr
   character(c_char), device :: pBuffer(*) 

5.5.16. cusparseScsrgemm2

CSRGEMM2 performs the matrix-matrix operation C := alpha * A * B + beta * D alpha and beta are scalars. A, B, and C are m x k, k x n, and m x n sparse matrices that are defined in CSR storage format by the three arrays csrVal{A|B|C|D}, csrRowPtr{A|B|C|D}, and csrColInd{A|B|C|D}. cusparseXcsrgemm2Nnz should be used to determine csrRowPtrC and the number of nonzero elements in the result.

 integer(4) function cusparseScsrgemm2(handle,        m, n, k, alpha,        descrA, nnzA, csrValA, csrRowPtrA, csrColIndA,        descrB, nnzB, csrValB, csrRowPtrB, csrColIndB,        beta,        descrD, nnzD, csrValD, csrRowPtrD, csrColIndD,        descrC, csrValC, csrRowPtrC, csrColIndC, info, pBuffer)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA, descrB, descrD, descrC
   type(cusparseCsrgemm2Info) :: info
   integer :: m, n, k, nnzA, nnzB, nnzD
   integer(4), device :: csrRowPtrA(*), csrColIndA(*),          csrRowPtrB(*), csrColIndB(*),          csrRowPtrD(*), csrColIndD(*), csrRowPtrC(*), csrColIndC(*)
   real(4), device :: csrValA(*), csrValB(*), csrValD(*), csrValC(*)
   real(4), device :: alpha, beta ! device or host variable
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable
   character, device :: pBuffer(*) 

5.5.17. cusparseDcsrgemm2

CSRGEMM2 performs the matrix-matrix operation C := alpha * A * B + beta * D alpha and beta are scalars. A, B, and C are m x k, k x n, and m x n sparse matrices that are defined in CSR storage format by the three arrays csrVal{A|B|C|D}, csrRowPtr{A|B|C|D}, and csrColInd{A|B|C|D}. cusparseXcsrgemm2Nnz should be used to determine csrRowPtrC and the number of nonzero elements in the result.

 integer(4) function cusparseDcsrgemm2(handle,        m, n, k, alpha,        descrA, nnzA, csrValA, csrRowPtrA, csrColIndA,        descrB, nnzB, csrValB, csrRowPtrB, csrColIndB,        beta,        descrD, nnzD, csrValD, csrRowPtrD, csrColIndD,        descrC, csrValC, csrRowPtrC, csrColIndC, info, pBuffer)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA, descrB, descrD, descrC
   type(cusparseCsrgemm2Info) :: info
   integer :: m, n, k, nnzA, nnzB, nnzD
   integer(4), device :: csrRowPtrA(*), csrColIndA(*),          csrRowPtrB(*), csrColIndB(*),          csrRowPtrD(*), csrColIndD(*), csrRowPtrC(*), csrColIndC(*)
   real(8), device :: csrValA(*), csrValB(*), csrValD(*), csrValC(*)
   real(8), device :: alpha, beta ! device or host variable
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable
   character, device :: pBuffer(*) 

5.5.18. cusparseCcsrgemm2

CSRGEMM2 performs the matrix-matrix operation C := alpha * A * B + beta * D alpha and beta are scalars. A, B, and C are m x k, k x n, and m x n sparse matrices that are defined in CSR storage format by the three arrays csrVal{A|B|C|D}, csrRowPtr{A|B|C|D}, and csrColInd{A|B|C|D}. cusparseXcsrgemm2Nnz should be used to determine csrRowPtrC and the number of nonzero elements in the result.

 integer(4) function cusparseCcsrgemm2(handle,        m, n, k, alpha,        descrA, nnzA, csrValA, csrRowPtrA, csrColIndA,        descrB, nnzB, csrValB, csrRowPtrB, csrColIndB,        beta,        descrD, nnzD, csrValD, csrRowPtrD, csrColIndD,        descrC, csrValC, csrRowPtrC, csrColIndC, info, pBuffer)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA, descrB, descrD, descrC
   type(cusparseCsrgemm2Info) :: info
   integer :: m, n, k, nnzA, nnzB, nnzD
   integer(4), device :: csrRowPtrA(*), csrColIndA(*),          csrRowPtrB(*), csrColIndB(*),          csrRowPtrD(*), csrColIndD(*), csrRowPtrC(*), csrColIndC(*)
   complex(4), device :: csrValA(*), csrValB(*), csrValD(*), csrValC(*)
   complex(4), device :: alpha, beta ! device or host variable
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable
   character, device :: pBuffer(*) 

5.5.19. cusparseZcsrgemm2

CSRGEMM2 performs the matrix-matrix operation C := alpha * A * B + beta * D alpha and beta are scalars. A, B, and C are m x k, k x n, and m x n sparse matrices that are defined in CSR storage format by the three arrays csrVal{A|B|C|D}, csrRowPtr{A|B|C|D}, and csrColInd{A|B|C|D}. cusparseXcsrgemm2Nnz should be used to determine csrRowPtrC and the number of nonzero elements in the result.

 integer(4) function cusparseZcsrgemm2(handle,        m, n, k, alpha,        descrA, nnzA, csrValA, csrRowPtrA, csrColIndA,        descrB, nnzB, csrValB, csrRowPtrB, csrColIndB,        beta,        descrD, nnzD, csrValD, csrRowPtrD, csrColIndD,        descrC, csrValC, csrRowPtrC, csrColIndC, info, pBuffer)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA, descrB, descrD, descrC
   type(cusparseCsrgemm2Info) :: info
   integer :: m, n, k, nnzA, nnzB, nnzD
   integer(4), device :: csrRowPtrA(*), csrColIndA(*),          csrRowPtrB(*), csrColIndB(*),          csrRowPtrD(*), csrColIndD(*), csrRowPtrC(*), csrColIndC(*)
   complex(8), device :: csrValA(*), csrValB(*), csrValD(*), csrValC(*)
   complex(8), device :: alpha, beta ! device or host variable
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable
   character, device :: pBuffer(*) 

5.6. CUSPARSE Preconditioning Functions

This section contains interfaces for the preconditioning functions that are used in processing sparse matrices.

5.6.1. cusparseScsric0

CSRIC0 computes the incomplete-Cholesky factorization with zero fill-in and no pivoting. A is an m x n Hermitian/symmetric positive definite sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA.

 integer(4) function cusparseScsric0(handle, trans, m,           descrA, csrValM, csrRowPtrA, csrColIndA, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans, m
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValM(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.6.2. cusparseDcsric0

CSRIC0 computes the incomplete-Cholesky factorization with zero fill-in and no pivoting. A is an m x n Hermitian/symmetric positive definite sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA.

 integer(4) function cusparseDcsric0(handle, trans, m,           descrA, csrValM, csrRowPtrA, csrColIndA, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans, m
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValM(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.6.3. cusparseCcsric0

CSRIC0 computes the incomplete-Cholesky factorization with zero fill-in and no pivoting. A is an m x n Hermitian/symmetric positive definite sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA.

 integer(4) function cusparseCcsric0(handle, trans, m,           descrA, csrValM, csrRowPtrA, csrColIndA, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans, m
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValM(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.6.4. cusparseZcsric0

CSRIC0 computes the incomplete-Cholesky factorization with zero fill-in and no pivoting. A is an m x n Hermitian/symmetric positive definite sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA.

 integer(4) function cusparseZcsric0(handle, trans, m,           descrA, csrValM, csrRowPtrA, csrColIndA, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans, m
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValM(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.6.5. cusparseScsrilu0

CSRILU0 computes the incomplete-LU factorization with zero fill-in and no pivoting. A is an m x n sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA.

 integer(4) function cusparseScsrilu0(handle, trans, m,           descrA, csrValM, csrRowPtrA, csrColIndA, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans, m
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValM(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.6.6. cusparseDcsrilu0

CSRILU0 computes the incomplete-LU factorization with zero fill-in and no pivoting. A is an m x n sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA.

 integer(4) function cusparseDcsrilu0(handle, trans, m,           descrA, csrValM, csrRowPtrA, csrColIndA, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans, m
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValM(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.6.7. cusparseCcsrilu0

CSRILU0 computes the incomplete-LU factorization with zero fill-in and no pivoting. A is an m x n sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA.

 integer(4) function cusparseCcsrilu0(handle, trans, m,           descrA, csrValM, csrRowPtrA, csrColIndA, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans, m
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValM(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.6.8. cusparseZcsrilu0

CSRILU0 computes the incomplete-LU factorization with zero fill-in and no pivoting. A is an m x n sparse matrix that is defined in CSR storage format by the three arrays csrValA, csrRowPtrA, and csrColIndA.

 integer(4) function cusparseZcsrilu0(handle, trans, m,           descrA, csrValM, csrRowPtrA, csrColIndA, info)
   type(cusparseHandle) :: handle
   integer(4) :: trans, m
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValM(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseSolveAnalysisInfo) :: info 

5.6.9. cusparseSgtsv

GTSV computes the solution of a tridiagonal linear system with multiple right hand sides: A * Y = a * x The coefficient matrix A of this tri-diagonal linear system is defined with three vectors corresponding to its lower (dl), main (d), and upper (du) matrix diagonals; the right-hand sides are stored in the dense matrix X. The solution Y overwrites the righthand-side matrix X on exit.

 integer(4) function cusparseSgtsv(handle, m, n, dl, d, du, B, ldb)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, ldb
   real(4), device :: dl(*), d(*), du(*), B(*) 

5.6.10. cusparseDgtsv

GTSV computes the solution of a tridiagonal linear system with multiple right hand sides: A * Y = a * x The coefficient matrix A of this tri-diagonal linear system is defined with three vectors corresponding to its lower (dl), main (d), and upper (du) matrix diagonals; the right-hand sides are stored in the dense matrix X. The solution Y overwrites the righthand-side matrix X on exit.

 integer(4) function cusparseDgtsv(handle, m, n, dl, d, du, B, ldb)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, ldb
   real(8), device :: dl(*), d(*), du(*), B(*) 

5.6.11. cusparseCgtsv

GTSV computes the solution of a tridiagonal linear system with multiple right hand sides: A * Y = a * x The coefficient matrix A of this tri-diagonal linear system is defined with three vectors corresponding to its lower (dl), main (d), and upper (du) matrix diagonals; the right-hand sides are stored in the dense matrix X. The solution Y overwrites the righthand-side matrix X on exit.

 integer(4) function cusparseCgtsv(handle, m, n, dl, d, du, B, ldb)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, ldb
   complex(4), device :: dl(*), d(*), du(*), B(*) 

5.6.12. cusparseZgtsv

GTSV computes the solution of a tridiagonal linear system with multiple right hand sides: A * Y = a * x The coefficient matrix A of this tri-diagonal linear system is defined with three vectors corresponding to its lower (dl), main (d), and upper (du) matrix diagonals; the right-hand sides are stored in the dense matrix X. The solution Y overwrites the righthand-side matrix X on exit.

 integer(4) function cusparseZgtsv(handle, m, n, dl, d, du, B, ldb)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, ldb
   complex(8), device :: dl(*), d(*), du(*), B(*) 

5.6.13. cusparseSgtsv_nopivot

GTSV computes the solution of a tridiagonal linear system with multiple right hand sides: A * Y = a * x The coefficient matrix A of this tri-diagonal linear system is defined with three vectors corresponding to its lower (dl), main (d), and upper (du) matrix diagonals; the right-hand sides are stored in the dense matrix X. The solution Y overwrites the righthand-side matrix X on exit. This function does not perform pivoting.

 integer(4) function cusparseSgtsv_nopivot(handle, m, n, dl, d, du, B, ldb)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, ldb
   real(4), device :: dl(*), d(*), du(*), B(*) 

5.6.14. cusparseDgtsv_nopivot

GTSV computes the solution of a tridiagonal linear system with multiple right hand sides: A * Y = a * x The coefficient matrix A of this tri-diagonal linear system is defined with three vectors corresponding to its lower (dl), main (d), and upper (du) matrix diagonals; the right-hand sides are stored in the dense matrix X. The solution Y overwrites the righthand-side matrix X on exit. This function does not perform pivoting.

 integer(4) function cusparseDgtsv_nopivot(handle, m, n, dl, d, du, B, ldb)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, ldb
   real(8), device :: dl(*), d(*), du(*), B(*) 

5.6.15. cusparseCgtsv_nopivot

GTSV computes the solution of a tridiagonal linear system with multiple right hand sides: A * Y = a * x The coefficient matrix A of this tri-diagonal linear system is defined with three vectors corresponding to its lower (dl), main (d), and upper (du) matrix diagonals; the right-hand sides are stored in the dense matrix X. The solution Y overwrites the righthand-side matrix X on exit. This function does not perform pivoting.

 integer(4) function cusparseCgtsv_nopivot(handle, m, n, dl, d, du, B, ldb)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, ldb
   complex(4), device :: dl(*), d(*), du(*), B(*) 

5.6.16. cusparseZgtsv_nopivot

GTSV computes the solution of a tridiagonal linear system with multiple right hand sides: A * Y = a * x The coefficient matrix A of this tri-diagonal linear system is defined with three vectors corresponding to its lower (dl), main (d), and upper (du) matrix diagonals; the right-hand sides are stored in the dense matrix X. The solution Y overwrites the righthand-side matrix X on exit. This function does not perform pivoting.

 integer(4) function cusparseZgtsv_nopivot(handle, m, n, dl, d, du, B, ldb)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, ldb
   complex(8), device :: dl(*), d(*), du(*), B(*) 

5.6.17. cusparseSgtsvStridedBatch

GTSVStridedBatch computes the solution of multiple tridiagonal linear systems with multiple right hand sides: A * Y = a * x The coefficient matrix A of each tri-diagonal linear system is defined with three vectors corresponding to its lower (dl), main (d), and upper (du) matrix diagonals; the right-hand sides are stored in the dense matrix X. The solution Y overwrites the righthand-side matrix X on exit.

 integer(4) function cusparseSgtsvStridedBatch(handle, m, dl, d, du, x, batchCount, batchStride)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, batchCount, batchStride
   real(4), device :: dl(*), d(*), du(*), x(*) 

5.6.18. cusparseDgtsvStridedBatch

GTSVStridedBatch computes the solution of multiple tridiagonal linear systems with multiple right hand sides: A * Y = a * x The coefficient matrix A of each tri-diagonal linear system is defined with three vectors corresponding to its lower (dl), main (d), and upper (du) matrix diagonals; the right-hand sides are stored in the dense matrix X. The solution Y overwrites the righthand-side matrix X on exit.

 integer(4) function cusparseDgtsvStridedBatch(handle, m, dl, d, du, x, batchCount, batchStride)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, batchCount, batchStride
   real(8), device :: dl(*), d(*), du(*), x(*) 

5.6.19. cusparseCgtsvStridedBatch

GTSVStridedBatch computes the solution of multiple tridiagonal linear systems with multiple right hand sides: A * Y = a * x The coefficient matrix A of each tri-diagonal linear system is defined with three vectors corresponding to its lower (dl), main (d), and upper (du) matrix diagonals; the right-hand sides are stored in the dense matrix X. The solution Y overwrites the righthand-side matrix X on exit.

 integer(4) function cusparseCgtsvStridedBatch(handle, m, dl, d, du, x, batchCount, batchStride)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, batchCount, batchStride
   complex(4), device :: dl(*), d(*), du(*), x(*) 

5.6.20. cusparseZgtsvStridedBatch

GTSVStridedBatch computes the solution of multiple tridiagonal linear systems with multiple right hand sides: A * Y = a * x The coefficient matrix A of each tri-diagonal linear system is defined with three vectors corresponding to its lower (dl), main (d), and upper (du) matrix diagonals; the right-hand sides are stored in the dense matrix X. The solution Y overwrites the righthand-side matrix X on exit.

 integer(4) function cusparseZgtsvStridedBatch(handle, m, dl, d, du, x, batchCount, batchStride)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, batchCount, batchStride
   complex(8), device :: dl(*), d(*), du(*), x(*) 

5.6.21. cusparseScsric02_bufferSize

This function returns the size of the buffer used in csric02.

 integer(4) function cusparseScsric02_bufferSize(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsric02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.22. cusparseDcsric02_bufferSize

This function returns the size of the buffer used in csric02.

 integer(4) function cusparseDcsric02_bufferSize(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsric02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.23. cusparseCcsric02_bufferSize

This function returns the size of the buffer used in csric02.

 integer(4) function cusparseCcsric02_bufferSize(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsric02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.24. cusparseZcsric02_bufferSize

This function returns the size of the buffer used in csric02.

 integer(4) function cusparseZcsric02_bufferSize(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsric02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.25. cusparseScsric02_analysis

This function performs the analysis phase of csric02.

 integer(4) function cusparseScsric02_analysis(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.26. cusparseDcsric02_analysis

This function performs the analysis phase of csric02.

 integer(4) function cusparseDcsric02_analysis(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.27. cusparseCcsric02_analysis

This function performs the analysis phase of csric02.

 integer(4) function cusparseCcsric02_analysis(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.28. cusparseZcsric02_analysis

This function performs the analysis phase of csric02.

 integer(4) function cusparseZcsric02_analysis(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.29. cusparseScsric02

CSRIC02 performs the solve phase of computing the incomplete-Cholesky factorization with zero fill-in and no pivoting.

 integer(4) function cusparseScsric02(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.30. cusparseDcsric02

CSRIC02 performs the solve phase of computing the incomplete-Cholesky factorization with zero fill-in and no pivoting.

 integer(4) function cusparseDcsric02(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.31. cusparseCcsric02

CSRIC02 performs the solve phase of computing the incomplete-Cholesky factorization with zero fill-in and no pivoting.

 integer(4) function cusparseCcsric02(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.32. cusparseZcsric02

CSRIC02 performs the solve phase of computing the incomplete-Cholesky factorization with zero fill-in and no pivoting.

 integer(4) function cusparseZcsric02(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.33. cusparseXcsric02_zeroPivot

This function returns an error code equal to CUSPARSE_STATUS_ZERO_PIVOT and sets position to j when A(j,j) is either structural zero or numerical zero. Otherwise, position is set to -1.

 integer(4) function cusparseXcsric02_zeroPivot(handle, info, position)
   type(cusparseHandle) :: handle
   type(cusparseCsric02Info) :: info
   integer(4), device :: position ! device or host variable 

5.6.34. cusparseScsrilu02_numericBoost

This function boosts the value to replace a numerical value in incomplete LU factorization, based on the tol input argument.

 integer(4) function cusparseScsrilu02_numericBoost(handle, info, enable_boost, tol, boost_val)
   type(cusparseHandle) :: handle
   type(cusparseCsrilu02Info) :: info
   integer :: enable_boost
   real(8), device :: tol ! device or host variable
   real(4), device :: boost_val ! device or host variable 

5.6.35. cusparseDcsrilu02_numericBoost

This function boosts the value to replace a numerical value in incomplete LU factorization, based on the tol input argument.

 integer(4) function cusparseDcsrilu02_numericBoost(handle, info, enable_boost, tol, boost_val)
   type(cusparseHandle) :: handle
   type(cusparseCsrilu02Info) :: info
   integer :: enable_boost
   real(8), device :: tol ! device or host variable
   real(8), device :: boost_val ! device or host variable 

5.6.36. cusparseCcsrilu02_numericBoost

This function boosts the value to replace a numerical value in incomplete LU factorization, based on the tol input argument.

 integer(4) function cusparseCcsrilu02_numericBoost(handle, info, enable_boost, tol, boost_val)
   type(cusparseHandle) :: handle
   type(cusparseCsrilu02Info) :: info
   integer :: enable_boost
   real(8), device :: tol ! device or host variable
   complex(4), device :: boost_val ! device or host variable 

5.6.37. cusparseZcsrilu02_numericBoost

This function boosts the value to replace a numerical value in incomplete LU factorization, based on the tol input argument.

 integer(4) function cusparseZcsrilu02_numericBoost(handle, info, enable_boost, tol, boost_val)
   type(cusparseHandle) :: handle
   type(cusparseCsrilu02Info) :: info
   integer :: enable_boost
   real(8), device :: tol ! device or host variable
   complex(8), device :: boost_val ! device or host variable 

5.6.38. cusparseScsrilu02_bufferSize

This function returns the size of the buffer used in csrilu02.

 integer(4) function cusparseScsrilu02_bufferSize(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrilu02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.39. cusparseDcsrilu02_bufferSize

This function returns the size of the buffer used in csrilu02.

 integer(4) function cusparseDcsrilu02_bufferSize(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrilu02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.40. cusparseCcsrilu02_bufferSize

This function returns the size of the buffer used in csrilu02.

 integer(4) function cusparseCcsrilu02_bufferSize(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrilu02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.41. cusparseZcsrilu02_bufferSize

This function returns the size of the buffer used in csrilu02.

 integer(4) function cusparseZcsrilu02_bufferSize(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrilu02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.42. cusparseScsrilu02_analysis

This function performs the analysis phase of csrilu02.

 integer(4) function cusparseScsrilu02_analysis(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.43. cusparseDcsrilu02_analysis

This function performs the analysis phase of csrilu02.

 integer(4) function cusparseDcsrilu02_analysis(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.44. cusparseCcsrilu02_analysis

This function performs the analysis phase of csrilu02.

 integer(4) function cusparseCcsrilu02_analysis(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.45. cusparseZcsrilu02_analysis

This function performs the analysis phase of csrilu02.

 integer(4) function cusparseZcsrilu02_analysis(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.46. cusparseScsrilu02

CSRILU02 performs the solve phase of the incomplete-LU factorization with zero fill-in and no pivoting. A is an m x m sparse matrix that is defined in CSR storage format by the three arrays csrValA_valM, csrRowPtrA, and csrColIndA.

 integer(4) function cusparseScsrilu02(handle, m, nnz, descrA,
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.47. cusparseDcsrilu02

CSRILU02 performs the solve phase of the incomplete-LU factorization with zero fill-in and no pivoting. A is an m x m sparse matrix that is defined in CSR storage format by the three arrays csrValA_valM, csrRowPtrA, and csrColIndA.

 integer(4) function cusparseDcsrilu02(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.48. cusparseCcsrilu02

CSRILU02 performs the solve phase of the incomplete-LU factorization with zero fill-in and no pivoting. A is an m x m sparse matrix that is defined in CSR storage format by the three arrays csrValA_valM, csrRowPtrA, and csrColIndA.

 integer(4) function cusparseCcsrilu02(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.49. cusparseZcsrilu02

CSRILU02 performs the solve phase of the incomplete-LU factorization with zero fill-in and no pivoting. A is an m x m sparse matrix that is defined in CSR storage format by the three arrays csrValA_valM, csrRowPtrA, and csrColIndA.

 integer(4) function cusparseZcsrilu02(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, nnz
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseCsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.50. cusparseXcsrilu02_zeroPivot

This function returns an error code equal to CUSPARSE_STATUS_ZERO_PIVOT and sets position to j when A(j,j) is either structural zero or numerical zero. Otherwise, position is set to -1.

 integer(4) function cusparseXcsrilu02_zeroPivot(handle, info, position)
   type(cusparseHandle) :: handle
   type(cusparseCsrilu02Info) :: info
   integer(4), device :: position ! device or host variable 

5.6.51. cusparseSbsric02_bufferSize

This function returns the size of the buffer used in bsric02.

 integer(4) function cusparseSbsric02_bufferSize(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsric02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.52. cusparseDbsric02_bufferSize

This function returns the size of the buffer used in bsric02.

 integer(4) function cusparseDbsric02_bufferSize(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsric02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.53. cusparseCbsric02_bufferSize

This function returns the size of the buffer used in bsric02.

 integer(4) function cusparseCbsric02_bufferSize(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsric02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.54. cusparseZbsric02_bufferSize

This function returns the size of the buffer used in bsric02.

 integer(4) function cusparseZbsric02_bufferSize(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsric02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.55. cusparseSbsric02_analysis

This function performs the analysis phase of bsric02.

 integer(4) function cusparseSbsric02_analysis(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.56. cusparseDbsric02_analysis

This function performs the analysis phase of bsric02.

 integer(4) function cusparseDbsric02_analysis(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.57. cusparseCbsric02_analysis

This function performs the analysis phase of bsric02.

 integer(4) function cusparseCbsric02_analysis(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.58. cusparseZbsric02_analysis

This function performs the analysis phase of bsric02.

 integer(4) function cusparseZbsric02_analysis(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.59. cusparseSbsric02

BSRIC02 performs the solve phase of the incomplete-Cholesky factorization with zero fill-in and no pivoting. A is an (mb*blockDim) x (mb*blockDim) sparse matrix that is defined in BSR storage format by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA.

 integer(4) function cusparseSbsric02(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.60. cusparseDbsric02

BSRIC02 performs the solve phase of the incomplete-Cholesky factorization with zero fill-in and no pivoting. A is an (mb*blockDim) x (mb*blockDim) sparse matrix that is defined in BSR storage format by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA.

 integer(4) function cusparseDbsric02(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.61. cusparseCbsric02

BSRIC02 performs the solve phase of the incomplete-Cholesky factorization with zero fill-in and no pivoting. A is an (mb*blockDim) x (mb*blockDim) sparse matrix that is defined in BSR storage format by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA.

 integer(4) function cusparseCbsric02(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.62. cusparseZbsric02

BSRIC02 performs the solve phase of the incomplete-Cholesky factorization with zero fill-in and no pivoting. A is an (mb*blockDim) x (mb*blockDim) sparse matrix that is defined in BSR storage format by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA.

 integer(4) function cusparseZbsric02(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsric02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.63. cusparseXbsric02_zeroPivot

This function returns an error code equal to CUSPARSE_STATUS_ZERO_PIVOT and sets position to j when A(j,j) is either structural zero or numerical zero. Otherwise, position is set to -1.

 integer(4) function cusparseXbsric02_zeroPivot(handle, info, position)
   type(cusparseHandle) :: handle
   type(cusparseBsric02Info) :: info
   integer(4), device :: position ! device or host variable 

5.6.64. cusparseSbsrilu02_numericBoost

This function boosts the value to replace a numerical value in incomplete LU factorization, based on the tol input argument.

 integer(4) function cusparseSbsrilu02_numericBoost(handle, info, enable_boost, tol, boost_val)
   type(cusparseHandle) :: handle
   type(cusparseBsrilu02Info) :: info
   integer :: enable_boost
   real(8), device :: tol ! device or host variable
   real(4), device :: boost_val ! device or host variable 

5.6.65. cusparseDbsrilu02_numericBoost

This function boosts the value to replace a numerical value in incomplete LU factorization, based on the tol input argument.

 integer(4) function cusparseDbsrilu02_numericBoost(handle, info, enable_boost, tol, boost_val)
   type(cusparseHandle) :: handle
   type(cusparseBsrilu02Info) :: info
   integer :: enable_boost
   real(8), device :: tol ! device or host variable
   real(8), device :: boost_val ! device or host variable 

5.6.66. cusparseCbsrilu02_numericBoost

This function boosts the value to replace a numerical value in incomplete LU factorization, based on the tol input argument.

 integer(4) function cusparseCbsrilu02_numericBoost(handle, info, enable_boost, tol, boost_val)
   type(cusparseHandle) :: handle
   type(cusparseBsrilu02Info) :: info
   integer :: enable_boost
   real(8), device :: tol ! device or host variable
   complex(4), device :: boost_val ! device or host variable 

5.6.67. cusparseZbsrilu02_numericBoost

This function boosts the value to replace a numerical value in incomplete LU factorization, based on the tol input argument.

 integer(4) function cusparseZbsrilu02_numericBoost(handle, info, enable_boost, tol, boost_val)
   type(cusparseHandle) :: handle
   type(cusparseBsrilu02Info) :: info
   integer :: enable_boost
   real(8), device :: tol ! device or host variable
   complex(8), device :: boost_val ! device or host variable 

5.6.68. cusparseSbsrilu02_bufferSize

This function returns the size of the buffer used in bsrilu02.

 integer(4) function cusparseSbsrilu02_bufferSize(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrilu02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.69. cusparseDbsrilu02_bufferSize

This function returns the size of the buffer used in bsrilu02.

 integer(4) function cusparseDbsrilu02_bufferSize(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrilu02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.70. cusparseCbsrilu02_bufferSize

This function returns the size of the buffer used in bsrilu02.

 integer(4) function cusparseCbsrilu02_bufferSize(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrilu02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.71. cusparseZbsrilu02_bufferSize

This function returns the size of the buffer used in bsrilu02.

 integer(4) function cusparseZbsrilu02_bufferSize(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrilu02Info) :: info
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.6.72. cusparseSbsrilu02_analysis

This function performs the analysis phase of bsrilu02.

 integer(4) function cusparseSbsrilu02_analysis(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.73. cusparseDbsrilu02_analysis

This function performs the analysis phase of bsrilu02.

 integer(4) function cusparseDbsrilu02_analysis(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.74. cusparseCbsrilu02_analysis

This function performs the analysis phase of bsrilu02.

 integer(4) function cusparseCbsrilu02_analysis(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.75. cusparseZbsrilu02_analysis

This function performs the analysis phase of bsrilu02.

 integer(4) function cusparseZbsrilu02_analysis(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.76. cusparseSbsrilu02

BSRILU02 performs the solve phase of the incomplete-LU factorization with zero fill-in and no pivoting. A is an (mb*blockDim) x (mb*blockDim) sparse matrix that is defined in BSR storage format by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA.

 integer(4) function cusparseSbsrilu02(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.77. cusparseDbsrilu02

BSRILU02 performs the solve phase of the incomplete-LU factorization with zero fill-in and no pivoting. A is an (mb*blockDim) x (mb*blockDim) sparse matrix that is defined in BSR storage format by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA.

 integer(4) function cusparseDbsrilu02(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.78. cusparseCbsrilu02

BSRILU02 performs the solve phase of the incomplete-LU factorization with zero fill-in and no pivoting. A is an (mb*blockDim) x (mb*blockDim) sparse matrix that is defined in BSR storage format by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA.

 integer(4) function cusparseCbsrilu02(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.79. cusparseZbsrilu02

BSRILU02 performs the solve phase of the incomplete-LU factorization with zero fill-in and no pivoting. A is an (mb*blockDim) x (mb*blockDim) sparse matrix that is defined in BSR storage format by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA.

 integer(4) function cusparseZbsrilu02(handle, dirA, mb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, info, policy, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dirA
   integer(4) :: mb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: blockDim
   type(cusparseBsrilu02Info) :: info
   integer(4) :: policy
   character(c_char), device :: pBuffer(*) 

5.6.80. cusparseXbsrilu02_zeroPivot

This function returns an error code equal to CUSPARSE_STATUS_ZERO_PIVOT and sets position to j when A(j,j) is either structural zero or numerical zero. Otherwise, position is set to -1.

 integer(4) function cusparseXbsrilu02_zeroPivot(handle, info, position)
   type(cusparseHandle) :: handle
   type(cusparseBsrilu02Info) :: info
   integer(4), device :: position ! device or host variable 

5.7. CUSPARSE Reordering Functions

This section contains interfaces for the reordering functions that are used to manipulate sparse matrices.

5.7.1. cusparseScsrColor

This function performs the coloring of the adjacency graph associated with the matrix A stored in CSR format.

 integer(4) function cusparseScsrColor(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, fractionToColor, ncolors, coloring, reordering, info)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseColorInfo) :: info
   integer :: m, nnz
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), coloring(*), reordering(*)
   real(4), device :: fractionToColor ! device or host variable
   integer(4), device :: ncolors ! device or host variable 

5.7.2. cusparseDcsrColor

This function performs the coloring of the adjacency graph associated with the matrix A stored in CSR format.

 integer(4) function cusparseDcsrColor(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, fractionToColor, ncolors, coloring, reordering, info)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseColorInfo) :: info
   integer :: m, nnz
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), coloring(*), reordering(*)
   real(8), device :: fractionToColor ! device or host variable
   integer(4), device :: ncolors ! device or host variable 

5.7.3. cusparseCcsrColor

This function performs the coloring of the adjacency graph associated with the matrix A stored in CSR format.

 integer(4) function cusparseCcsrColor(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, fractionToColor, ncolors, coloring, reordering, info)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseColorInfo) :: info
   integer :: m, nnz
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), coloring(*), reordering(*)
   real(4), device :: fractionToColor ! device or host variable
   integer(4), device :: ncolors ! device or host variable 

5.7.4. cusparseZcsrColor

This function performs the coloring of the adjacency graph associated with the matrix A stored in CSR format.

 integer(4) function cusparseZcsrColor(handle, m, nnz, descrA, csrValA, csrRowPtrA, csrColIndA, fractionToColor, ncolors, coloring, reordering, info)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseColorInfo) :: info
   integer :: m, nnz
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), coloring(*), reordering(*)
   real(8), device :: fractionToColor ! device or host variable
   integer(4), device :: ncolors ! device or host variable 

5.8. CUSPARSE Format Conversion Functions

This section contains interfaces for the conversion functions that are used to switch between different sparse and dense matrix storage formats.

5.8.1. cusparseSbsr2csr

This function converts a sparse matrix in BSR format that is defined by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA into a sparse matrix in CSR format that is defined by the arrays csrValC, csrRowPtrC, and csrColIndC.

 integer(4) function cusparseSbsr2csr(handle, dirA, nm, nb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, mb, nb, blockDim
   type(cusparseMatDescr) :: descrA, descrC
   real(4), device :: bsrValA(*), csrValC(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*), csrRowPtrC(*), csrColIndC(*) 

5.8.2. cusparseDbsr2csr

This function converts a sparse matrix in BSR format that is defined by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA into a sparse matrix in CSR format that is defined by the arrays csrValC, csrRowPtrC, and csrColIndC.

 integer(4) function cusparseDbsr2csr(handle, dirA, nm, nb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, mb, nb, blockDim
   type(cusparseMatDescr) :: descrA, descrC
   real(8), device :: bsrValA(*), csrValC(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*), csrRowPtrC(*), csrColIndC(*) 

5.8.3. cusparseCbsr2csr

This function converts a sparse matrix in BSR format that is defined by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA into a sparse matrix in CSR format that is defined by the arrays csrValC, csrRowPtrC, and csrColIndC.

 integer(4) function cusparseCbsr2csr(handle, dirA, nm, nb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, mb, nb, blockDim
   type(cusparseMatDescr) :: descrA, descrC
   complex(4), device :: bsrValA(*), csrValC(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*), csrRowPtrC(*), csrColIndC(*) 

5.8.4. cusparseZbsr2csr

This function converts a sparse matrix in BSR format that is defined by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA into a sparse matrix in CSR format that is defined by the arrays csrValC, csrRowPtrC, and csrColIndC.

 integer(4) function cusparseZbsr2csr(handle, dirA, nm, nb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, blockDim, descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, mb, nb, blockDim
   type(cusparseMatDescr) :: descrA, descrC
   complex(8), device :: bsrValA(*), csrValC(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*), csrRowPtrC(*), csrColIndC(*) 

5.8.5. cusparseXcoo2csr

This function converts the array containing the uncompressed row indices (corresponding to COO format) into an array of compressed row pointers (corresponding to CSR format).

 integer(4) function cusparseXcoo2csr(handle, cooRowInd, nnz, m, csrRowPtr, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz, m, idxBase
   integer(4), device :: cooRowInd(*), csrRowPtr(*) 

5.8.6. cusparseScsc2dense

This function converts the sparse matrix in CSC format that is defined by the three arrays cscValA, cscColPtrA, and cscRowIndA into the matrix A in dense format. The dense matrix A is filled in with the values of the sparse matrix and with zeros elsewhere.

 integer(4) function cusparseScsc2dense(handle, m, n, descrA, cscValA, cscRowIndA, cscColPtrA, A, lda)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   real(4), device :: cscValA(*), A(*)
   integer(4), device :: cscRowIndA(*), cscColPtrA(*) 

5.8.7. cusparseDcsc2dense

This function converts the sparse matrix in CSC format that is defined by the three arrays cscValA, cscColPtrA, and cscRowIndA into the matrix A in dense format. The dense matrix A is filled in with the values of the sparse matrix and with zeros elsewhere.

 integer(4) function cusparseDcsc2dense(handle, m, n, descrA, cscValA, cscRowIndA, cscColPtrA, A, lda)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   real(8), device :: cscValA(*), A(*)
   integer(4), device :: cscRowIndA(*), cscColPtrA(*) 

5.8.8. cusparseCcsc2dense

This function converts the sparse matrix in CSC format that is defined by the three arrays cscValA, cscColPtrA, and cscRowIndA into the matrix A in dense format. The dense matrix A is filled in with the values of the sparse matrix and with zeros elsewhere.

 integer(4) function cusparseCcsc2dense(handle, m, n, descrA, cscValA, cscRowIndA, cscColPtrA, A, lda)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   complex(4), device :: cscValA(*), A(*)
   integer(4), device :: cscRowIndA(*), cscColPtrA(*) 

5.8.9. cusparseZcsc2dense

This function converts the sparse matrix in CSC format that is defined by the three arrays cscValA, cscColPtrA, and cscRowIndA into the matrix A in dense format. The dense matrix A is filled in with the values of the sparse matrix and with zeros elsewhere.

 integer(4) function cusparseZcsc2dense(handle, m, n, descrA, cscValA, cscRowIndA, cscColPtrA, A, lda)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   complex(8), device :: cscValA(*), A(*)
   integer(4), device :: cscRowIndA(*), cscColPtrA(*) 

5.8.10. cusparseScsc2hyb

This function converts the sparse matrix in CSC format that is defined by the three arrays cscValA, cscColPtrA, and cscRowIndA into the sparse matrix A in HYB format.

 integer(4) function cusparseScsc2hyb(handle, m, n, descrA, cscValA, cscRowIndA, cscColPtrA, hybA, userEllWidth, partitionType)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, userEllWidth, partitionType
   type(cusparseMatDescr) :: descrA
   real(4), device :: cscValA(*)
   integer(4), device :: cscRowIndA(*), cscColPtrA(*)
   type(cusparseHybMat) :: hybA 

5.8.11. cusparseDcsc2hyb

This function converts the sparse matrix in CSC format that is defined by the three arrays cscValA, cscColPtrA, and cscRowIndA into the sparse matrix A in HYB format.

 integer(4) function cusparseDcsc2hyb(handle, m, n, descrA, cscValA, cscRowIndA, cscColPtrA, hybA, userEllWidth, partitionType)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, userEllWidth, partitionType
   type(cusparseMatDescr) :: descrA
   real(8), device :: cscValA(*)
   integer(4), device :: cscRowIndA(*), cscColPtrA(*)
   type(cusparseHybMat) :: hybA 

5.8.12. cusparseCcsc2hyb

This function converts the sparse matrix in CSC format that is defined by the three arrays cscValA, cscColPtrA, and cscRowIndA into the sparse matrix A in HYB format.

 integer(4) function cusparseCcsc2hyb(handle, m, n, descrA, cscValA, cscRowIndA, cscColPtrA, hybA, userEllWidth, partitionType)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, userEllWidth, partitionType
   type(cusparseMatDescr) :: descrA
   complex(4), device :: cscValA(*)
   integer(4), device :: cscRowIndA(*), cscColPtrA(*)
   type(cusparseHybMat) :: hybA 

5.8.13. cusparseZcsc2hyb

This function converts the sparse matrix in CSC format that is defined by the three arrays cscValA, cscColPtrA, and cscRowIndA into the sparse matrix A in HYB format.

 integer(4) function cusparseZcsc2hyb(handle, m, n, descrA, cscValA, cscRowIndA, cscColPtrA, hybA, userEllWidth, partitionType)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, userEllWidth, partitionType
   type(cusparseMatDescr) :: descrA
   complex(8), device :: cscValA(*)
   integer(4), device :: cscRowIndA(*), cscColPtrA(*)
   type(cusparseHybMat) :: hybA 

5.8.14. cusparseXcsr2bsrNnz

cusparseXcsrgeamNnz computes the number of nonzero elements which will be produced by CSRGEAM.

 integer(4) function cusparseXcsr2bsrNnz(handle, dirA, m, n, descrA, csrRowPtrA, csrColIndA, blockDim, descrC, bsrRowPtrC, nnzTotalDevHostPtr)
   type(cusparseHandle) :: handle
   integer :: dirA, m, n, blockdim
   type(cusparseMatDescr) :: descrA, descrC
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), bsrRowPtrC(*)
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable 

5.8.15. cusparseScsr2bsr

This function converts a sparse matrix in CSR storage format that is defined by the three arrays csrValA, csrRowPtrA, and csrColIndA into a sparse matrix in BSR format that is defined by arrays bsrValC, bsrRowPtrC, and bsrColIndC.

 integer(4) function cusparseScsr2bsr(handle, dirA, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, blockDim, descrC, bsrValC, bsrRowPtrC, bsrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, m, n, blockdim
   type(cusparseMatDescr) :: descrA, descrC
   real(4), device :: csrValA(*), bsrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), bsrRowPtrC(*), bsrColIndC(*) 

5.8.16. cusparseDcsr2bsr

This function converts a sparse matrix in CSR storage format that is defined by the three arrays csrValA, csrRowPtrA, and csrColIndA into a sparse matrix in BSR format that is defined by arrays bsrValC, bsrRowPtrC, and bsrColIndC.

 integer(4) function cusparseDcsr2bsr(handle, dirA, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, blockDim, descrC, bsrValC, bsrRowPtrC, bsrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, m, n, blockdim
   type(cusparseMatDescr) :: descrA, descrC
   real(8), device :: csrValA(*), bsrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), bsrRowPtrC(*), bsrColIndC(*) 

5.8.17. cusparseCcsr2bsr

This function converts a sparse matrix in CSR storage format that is defined by the three arrays csrValA, csrRowPtrA, and csrColIndA into a sparse matrix in BSR format that is defined by arrays bsrValC, bsrRowPtrC, and bsrColIndC.

 integer(4) function cusparseCcsr2bsr(handle, dirA, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, blockDim, descrC, bsrValC, bsrRowPtrC, bsrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, m, n, blockdim
   type(cusparseMatDescr) :: descrA, descrC
   complex(4), device :: csrValA(*), bsrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), bsrRowPtrC(*), bsrColIndC(*) 

5.8.18. cusparseZcsr2bsr

This function converts a sparse matrix in CSR storage format that is defined by the three arrays csrValA, csrRowPtrA, and csrColIndA into a sparse matrix in BSR format that is defined by arrays bsrValC, bsrRowPtrC, and bsrColIndC.

 integer(4) function cusparseZcsr2bsr(handle, dirA, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, blockDim, descrC, bsrValC, bsrRowPtrC, bsrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: dirA, m, n, blockdim
   type(cusparseMatDescr) :: descrA, descrC
   complex(8), device :: csrValA(*), bsrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*), bsrRowPtrC(*), bsrColIndC(*) 

5.8.19. cusparseXcsr2coo

This function converts the array containing the compressed row pointers (corresponding to CSR format) into an array of uncompressed row indices (corresponding to COO format).

 integer(4) function cusparseXcsr2coo(handle, csrRowPtr, nnz, m, cooRowInd, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: nnz, m, idxBase
   integer(4), device :: csrRowPtr(*), cooRowInd(*) 

5.8.20. cusparseScsr2csc

This function converts a sparse matrix in CSR storage format that is defined by the three arrays csrVal, csrRowPtr, and csrColInd into a sparse matrix in CSC format that is defined by arrays cscVal, cscRowInd, and cscColPtr.

 integer(4) function cusparseScsr2csc(handle, m, n, nnz, csrVal, csrRowPtr, csrColInd, cscVal, cscRowInd, cscColPtr, copyValues, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz, copyValues, idxBase
   real(4), device :: csrVal(*), cscVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*), cscRowInd(*), cscColPtr(*) 

5.8.21. cusparseDcsr2csc

This function converts a sparse matrix in CSR storage format that is defined by the three arrays csrVal, csrRowPtr, and csrColInd into a sparse matrix in CSC format that is defined by arrays cscVal, cscRowInd, and cscColPtr.

 integer(4) function cusparseDcsr2csc(handle, m, n, nnz, csrVal, csrRowPtr, csrColInd, cscVal, cscRowInd, cscColPtr, copyValues, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz, copyValues, idxBase
   real(8), device :: csrVal(*), cscVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*), cscRowInd(*), cscColPtr(*) 

5.8.22. cusparseCcsr2csc

This function converts a sparse matrix in CSR storage format that is defined by the three arrays csrVal, csrRowPtr, and csrColInd into a sparse matrix in CSC format that is defined by arrays cscVal, cscRowInd, and cscColPtr.

 integer(4) function cusparseCcsr2csc(handle, m, n, nnz, csrVal, csrRowPtr, csrColInd, cscVal, cscRowInd, cscColPtr, copyValues, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz, copyValues, idxBase
   complex(4), device :: csrVal(*), cscVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*), cscRowInd(*), cscColPtr(*) 

5.8.23. cusparseZcsr2csc

This function converts a sparse matrix in CSR storage format that is defined by the three arrays csrVal, csrRowPtr, and csrColInd into a sparse matrix in CSC format that is defined by arrays cscVal, cscRowInd, and cscColPtr.

 integer(4) function cusparseZcsr2csc(handle, m, n, nnz, csrVal, csrRowPtr, csrColInd, cscVal, cscRowInd, cscColPtr, copyValues, idxBase)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz, copyValues, idxBase
   complex(8), device :: csrVal(*), cscVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*), cscRowInd(*), cscColPtr(*) 

5.8.24. cusparseScsr2dense

This function converts the sparse matrix in CSR format that is defined by the three arrays cscValA, cscRowPtrA, and cscColIndA into the matrix A in dense format. The dense matrix A is filled in with the values of the sparse matrix and with zeros elsewhere.

 integer(4) function cusparseScsr2dense(handle, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, A, lda)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*), A(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*) 

5.8.25. cusparseDcsr2dense

This function converts the sparse matrix in CSR format that is defined by the three arrays cscValA, cscRowPtrA, and cscColIndA into the matrix A in dense format. The dense matrix A is filled in with the values of the sparse matrix and with zeros elsewhere.

 integer(4) function cusparseDcsr2dense(handle, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, A, lda)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*), A(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*) 

5.8.26. cusparseCcsr2dense

This function converts the sparse matrix in CSR format that is defined by the three arrays cscValA, cscRowPtrA, and cscColIndA into the matrix A in dense format. The dense matrix A is filled in with the values of the sparse matrix and with zeros elsewhere.

 integer(4) function cusparseCcsr2dense(handle, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, A, lda)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*), A(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*) 

5.8.27. cusparseZcsr2dense

This function converts the sparse matrix in CSR format that is defined by the three arrays cscValA, cscRowPtrA, and cscColIndA into the matrix A in dense format. The dense matrix A is filled in with the values of the sparse matrix and with zeros elsewhere.

 integer(4) function cusparseZcsr2dense(handle, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, A, lda)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*), A(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*) 

5.8.28. cusparseScsr2hyb

This function converts the sparse matrix in CSR format that is defined by the three arrays cscValA, cscRowPtrA, and cscColIndA into a sparse matrix in HYB format.

 integer(4) function cusparseScsr2hyb(handle, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, hybA, userEllWidth, partitionType)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, userEllWidth, partitionType
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*) 

5.8.29. cusparseDcsr2hyb

This function converts the sparse matrix in CSR format that is defined by the three arrays cscValA, cscRowPtrA, and cscColIndA into a sparse matrix in HYB format.

 integer(4) function cusparseDcsr2hyb(handle, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, hybA, userEllWidth, partitionType)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, userEllWidth, partitionType
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*) 

5.8.30. cusparseCcsr2hyb

This function converts the sparse matrix in CSR format that is defined by the three arrays cscValA, cscRowPtrA, and cscColIndA into a sparse matrix in HYB format.

 integer(4) function cusparseCcsr2hyb(handle, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, hybA, userEllWidth, partitionType)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, userEllWidth, partitionType
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*) 

5.8.31. cusparseZcsr2hyb

This function converts the sparse matrix in CSR format that is defined by the three arrays cscValA, cscRowPtrA, and cscColIndA into a sparse matrix in HYB format.

 integer(4) function cusparseZcsr2hyb(handle, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, hybA, userEllWidth, partitionType)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, userEllWidth, partitionType
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*) 

5.8.32. cusparseSdense2csc

This function converts the matrix A in dense format into a sparse matrix in CSC format.

 integer(4) function cusparseSdense2csc(handle, m, n, descrA, A, lda, nnzPerCol, cscValA, cscRowIndA, cscColPtrA)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   real(4), device :: A(*), cscValA(*)
   integer(4), device :: nnzPerCol(*), cscRowIndA(*), cscColPtrA(*) 

5.8.33. cusparseDdense2csc

This function converts the matrix A in dense format into a sparse matrix in CSC format.

 integer(4) function cusparseDdense2csc(handle, m, n, descrA, A, lda, nnzPerCol, cscValA, cscRowIndA, cscColPtrA)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   real(8), device :: A(*), cscValA(*)
   integer(4), device :: nnzPerCol(*), cscRowIndA(*), cscColPtrA(*) 

5.8.34. cusparseCdense2csc

This function converts the matrix A in dense format into a sparse matrix in CSC format.

 integer(4) function cusparseCdense2csc(handle, m, n, descrA, A, lda, nnzPerCol, cscValA, cscRowIndA, cscColPtrA)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   complex(4), device :: A(*), cscValA(*)
   integer(4), device :: nnzPerCol(*), cscRowIndA(*), cscColPtrA(*) 

5.8.35. cusparseZdense2csc

This function converts the matrix A in dense format into a sparse matrix in CSC format.

 integer(4) function cusparseZdense2csc(handle, m, n, descrA, A, lda, nnzPerCol, cscValA, cscRowIndA, cscColPtrA)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   complex(8), device :: A(*), cscValA(*)
   integer(4), device :: nnzPerCol(*), cscRowIndA(*), cscColPtrA(*) 

5.8.36. cusparseSdense2csr

This function converts the matrix A in dense format into a sparse matrix in CSR format.

 integer(4) function cusparseSdense2csr(handle, m, n, descrA, A, lda, nnzPerRow, csrValA, csrRowPtrA, csrColIndA)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   real(4), device :: A(*), csrValA(*)
   integer(4), device :: nnzPerRow(*), csrRowPtrA(*), csrColIndA(*) 

5.8.37. cusparseDdense2csr

This function converts the matrix A in dense format into a sparse matrix in CSR format.

 integer(4) function cusparseDdense2csr(handle, m, n, descrA, A, lda, nnzPerRow, csrValA, csrRowPtrA, csrColIndA)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   real(8), device :: A(*), csrValA(*)
   integer(4), device :: nnzPerRow(*), csrRowPtrA(*), csrColIndA(*) 

5.8.38. cusparseCdense2csr

This function converts the matrix A in dense format into a sparse matrix in CSR format.

 integer(4) function cusparseCdense2csr(handle, m, n, descrA, A, lda, nnzPerRow, csrValA, csrRowPtrA, csrColIndA)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   complex(4), device :: A(*), csrValA(*)
   integer(4), device :: nnzPerRow(*), csrRowPtrA(*), csrColIndA(*) 

5.8.39. cusparseZdense2csr

This function converts the matrix A in dense format into a sparse matrix in CSR format.

 integer(4) function cusparseZdense2csr(handle, m, n, descrA, A, lda, nnzPerRow, csrValA, csrRowPtrA, csrColIndA)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda
   type(cusparseMatDescr) :: descrA
   complex(8), device :: A(*), csrValA(*)
   integer(4), device :: nnzPerRow(*), csrRowPtrA(*), csrColIndA(*) 

5.8.40. cusparseSdense2hyb

This function converts the matrix A in dense format into a sparse matrix in HYB format.

 integer(4) function cusparseSdense2hyb(handle, m, n, descrA, A, lda, nnzPerRow, hybA, userEllWidth, partitionType)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda, userEllWidth, partitionType
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   real(4), device :: A(*)
   integer(4), device :: nnzPerRow(*) 

5.8.41. cusparseDdense2hyb

This function converts the matrix A in dense format into a sparse matrix in HYB format.

 integer(4) function cusparseDdense2hyb(handle, m, n, descrA, A, lda, nnzPerRow, hybA, userEllWidth, partitionType)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda, userEllWidth, partitionType
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   real(8), device :: A(*)
   integer(4), device :: nnzPerRow(*) 

5.8.42. cusparseCdense2hyb

This function converts the matrix A in dense format into a sparse matrix in HYB format.

 integer(4) function cusparseCdense2hyb(handle, m, n, descrA, A, lda, nnzPerRow, hybA, userEllWidth, partitionType)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda, userEllWidth, partitionType
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   complex(4), device :: A(*)
   integer(4), device :: nnzPerRow(*) 

5.8.43. cusparseZdense2hyb

This function converts the matrix A in dense format into a sparse matrix in HYB format.

 integer(4) function cusparseZdense2hyb(handle, m, n, descrA, A, lda, nnzPerRow, hybA, userEllWidth, partitionType)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, lda, userEllWidth, partitionType
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   complex(8), device :: A(*)
   integer(4), device :: nnzPerRow(*) 

5.8.44. cusparseShyb2csc

This function converts the sparse matrix A in HYB format into a sparse matrix in CSC format.

 integer(4) function cusparseShyb2csc(handle, descrA, hybA, cscValA, cscRowIndA, cscColPtrA)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   real(4), device :: cscValA(*)
   integer(4), device :: cscRowIndA(*), cscColPtrA(*) 

5.8.45. cusparseDhyb2csc

This function converts the sparse matrix A in HYB format into a sparse matrix in CSC format.

 integer(4) function cusparseDhyb2csc(handle, descrA, hybA, cscValA, cscRowIndA, cscColPtrA)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   real(8), device :: cscValA(*)
   integer(4), device :: cscRowIndA(*), cscColPtrA(*) 

5.8.46. cusparseChyb2csc

This function converts the sparse matrix A in HYB format into a sparse matrix in CSC format.

 integer(4) function cusparseChyb2csc(handle, descrA, hybA, cscValA, cscRowIndA, cscColPtrA)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   complex(4), device :: cscValA(*)
   integer(4), device :: cscRowIndA(*), cscColPtrA(*) 

5.8.47. cusparseZhyb2csc

This function converts the sparse matrix A in HYB format into a sparse matrix in CSC format.

 integer(4) function cusparseZhyb2csc(handle, descrA, hybA, cscValA, cscRowIndA, cscColPtrA)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   complex(8), device :: cscValA(*)
   integer(4), device :: cscRowIndA(*), cscColPtrA(*) 

5.8.48. cusparseShyb2csr

This function converts the sparse matrix A in HYB format into a sparse matrix in CSR format.

 integer(4) function cusparseShyb2csr(handle, descrA, hybA, csrValA, csrRowPtrA, csrColIndA)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   real(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*) 

5.8.49. cusparseDhyb2csr

This function converts the sparse matrix A in HYB format into a sparse matrix in CSR format.

 integer(4) function cusparseDhyb2csr(handle, descrA, hybA, csrValA, csrRowPtrA, csrColIndA)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   real(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*) 

5.8.50. cusparseChyb2csr

This function converts the sparse matrix A in HYB format into a sparse matrix in CSR format.

 integer(4) function cusparseChyb2csr(handle, descrA, hybA, csrValA, csrRowPtrA, csrColIndA)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   complex(4), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*) 

5.8.51. cusparseZhyb2csr

This function converts the sparse matrix A in HYB format into a sparse matrix in CSR format.

 integer(4) function cusparseZhyb2csr(handle, descrA, hybA, csrValA, csrRowPtrA, csrColIndA)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   complex(8), device :: csrValA(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*) 

5.8.52. cusparseShyb2dense

This function converts the sparse matrix in HYB format into the matrix A in dense format. The dense matrix A is filled in with the values of the sparse matrix and with zeros elsewhere.

 integer(4) function cusparseShyb2dense(handle, descrA, hybA, A, lda)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   real(4), device :: A(*)
   integer(4) :: lda 

5.8.53. cusparseDhyb2dense

This function converts the sparse matrix in HYB format into the matrix A in dense format. The dense matrix A is filled in with the values of the sparse matrix and with zeros elsewhere.

 integer(4) function cusparseDhyb2dense(handle, descrA, hybA, A, lda)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   real(8), device :: A(*)
   integer(4) :: lda 

5.8.54. cusparseChyb2dense

This function converts the sparse matrix in HYB format into the matrix A in dense format. The dense matrix A is filled in with the values of the sparse matrix and with zeros elsewhere.

 integer(4) function cusparseChyb2dense(handle, descrA, hybA, A, lda)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   complex(4), device :: A(*)
   integer(4) :: lda 

5.8.55. cusparseZhyb2dense

This function converts the sparse matrix in HYB format into the matrix A in dense format. The dense matrix A is filled in with the values of the sparse matrix and with zeros elsewhere.

 integer(4) function cusparseZhyb2dense(handle, descrA, hybA, A, lda)
   type(cusparseHandle) :: handle
   type(cusparseMatDescr) :: descrA
   type(cusparseHybMat) :: hybA
   complex(8), device :: A(*)
   integer(4) :: lda 

5.8.56. cusparseSnnz

This function computes the number of nonzero elements per row or column and the total number of nonzero elements in a dense matrix.

 integer(4) function cusparseSnnz(handle, dirA, m, n, descrA, A, lda, nnzPerRowColumn, nnzTotalDevHostPtr)
   type(cusparseHandle) :: handle
   integer :: dirA, m, n, lda
   type(cusparseMatDescr) :: descrA
   real(4), device :: A(*)
   integer(4), device :: nnzPerRowColumn(*)
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable 

5.8.57. cusparseDnnz

This function computes the number of nonzero elements per row or column and the total number of nonzero elements in a dense matrix.

 integer(4) function cusparseDnnz(handle, dirA, m, n, descrA, A, lda, nnzPerRowColumn, nnzTotalDevHostPtr)
   type(cusparseHandle) :: handle
   integer :: dirA, m, n, lda
   type(cusparseMatDescr) :: descrA
   real(8), device :: A(*)
   integer(4), device :: nnzPerRowColumn(*)
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable 

5.8.58. cusparseCnnz

This function computes the number of nonzero elements per row or column and the total number of nonzero elements in a dense matrix.

 integer(4) function cusparseCnnz(handle, dirA, m, n, descrA, A, lda, nnzPerRowColumn, nnzTotalDevHostPtr)
   type(cusparseHandle) :: handle
   integer :: dirA, m, n, lda
   type(cusparseMatDescr) :: descrA
   complex(4), device :: A(*)
   integer(4), device :: nnzPerRowColumn(*)
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable 

5.8.59. cusparseZnnz

This function computes the number of nonzero elements per row or column and the total number of nonzero elements in a dense matrix.

 integer(4) function cusparseZnnz(handle, dirA, m, n, descrA, A, lda, nnzPerRowColumn, nnzTotalDevHostPtr)
   type(cusparseHandle) :: handle
   integer :: dirA, m, n, lda
   type(cusparseMatDescr) :: descrA
   complex(8), device :: A(*)
   integer(4), device :: nnzPerRowColumn(*)
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable 

5.8.60. cusparseSgebsr2gebsc_bufferSize

This function returns the size of the buffer used in gebsr2gebsc.

 integer(4) function cusparseSgebsr2gebsc_bufferSize(handle, mb, nb, nnzb, bsrVal, bsrRowPtr, bsrColInd, rowBlockDim, colBlockDim, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: mb, nb, nnzb
   real(4), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*), bsrColInd(*)
   integer(4) :: rowBlockDim, colBlockDim
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.8.61. cusparseDgebsr2gebsc_bufferSize

This function returns the size of the buffer used in gebsr2gebsc.

 integer(4) function cusparseDgebsr2gebsc_bufferSize(handle, mb, nb, nnzb, bsrVal, bsrRowPtr, bsrColInd, rowBlockDim, colBlockDim, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: mb, nb, nnzb
   real(8), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*), bsrColInd(*)
   integer(4) :: rowBlockDim, colBlockDim
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.8.62. cusparseCgebsr2gebsc_bufferSize

This function returns the size of the buffer used in gebsr2gebsc.

 integer(4) function cusparseCgebsr2gebsc_bufferSize(handle, mb, nb, nnzb, bsrVal, bsrRowPtr, bsrColInd, rowBlockDim, colBlockDim, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: mb, nb, nnzb
   complex(4), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*), bsrColInd(*)
   integer(4) :: rowBlockDim, colBlockDim
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.8.63. cusparseZgebsr2gebsc_bufferSize

This function returns the size of the buffer used in gebsr2gebsc.

 integer(4) function cusparseZgebsr2gebsc_bufferSize(handle, mb, nb, nnzb, bsrVal, bsrRowPtr, bsrColInd, rowBlockDim, colBlockDim, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: mb, nb, nnzb
   complex(8), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*), bsrColInd(*)
   integer(4) :: rowBlockDim, colBlockDim
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.8.64. cusparseSgebsr2gebsc

This function converts a sparse matrix in general block-CSR storage format to a sparse matrix in general block-CSC storage format.

 integer(4) function cusparseSgebsr2gebsc(handle, mb, nb, nnzb, bsrVal, bsrRowPtr, bsrColInd, rowBlockDim, colBlockDim, bscVal, bscRowInd, bscColPtr, copyValues, baseIdx, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: mb, nb, nnzb
   real(4), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*), bsrColInd(*)
   integer(4) :: rowBlockDim, colBlockDim
   real(4), device :: bscVal(*)
   integer(4), device :: bscRowInd(*), bscColPtr(*)
   integer(4) :: copyValues, baseIdx
   character(c_char), device :: pBuffer(*) 

5.8.65. cusparseDgebsr2gebsc

This function converts a sparse matrix in general block-CSR storage format to a sparse matrix in general block-CSC storage format.

 integer(4) function cusparseDgebsr2gebsc(handle, mb, nb, nnzb, bsrVal, bsrRowPtr, bsrColInd, rowBlockDim, colBlockDim, bscVal, bscRowInd, bscColPtr, copyValues, baseIdx, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: mb, nb, nnzb
   real(8), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*), bsrColInd(*)
   integer(4) :: rowBlockDim, colBlockDim
   real(8), device :: bscVal(*)
   integer(4), device :: bscRowInd(*), bscColPtr(*)
   integer(4) :: copyValues, baseIdx
   character(c_char), device :: pBuffer(*) 

5.8.66. cusparseCgebsr2gebsc

This function converts a sparse matrix in general block-CSR storage format to a sparse matrix in general block-CSC storage format.

 integer(4) function cusparseCgebsr2gebsc(handle, mb, nb, nnzb, bsrVal, bsrRowPtr, bsrColInd, rowBlockDim, colBlockDim, bscVal, bscRowInd, bscColPtr, copyValues, baseIdx, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: mb, nb, nnzb
   complex(4), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*), bsrColInd(*)
   integer(4) :: rowBlockDim, colBlockDim
   complex(4), device :: bscVal(*)
   integer(4), device :: bscRowInd(*), bscColPtr(*)
   integer(4) :: copyValues, baseIdx
   character(c_char), device :: pBuffer(*) 

5.8.67. cusparseZgebsr2gebsc

This function converts a sparse matrix in general block-CSR storage format to a sparse matrix in general block-CSC storage format.

 integer(4) function cusparseZgebsr2gebsc(handle, mb, nb, nnzb, bsrVal, bsrRowPtr, bsrColInd, rowBlockDim, colBlockDim, bscVal, bscRowInd, bscColPtr, copyValues, baseIdx, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: mb, nb, nnzb
   complex(8), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*), bsrColInd(*)
   integer(4) :: rowBlockDim, colBlockDim
   complex(8), device :: bscVal(*)
   integer(4), device :: bscRowInd(*), bscColPtr(*)
   integer(4) :: copyValues, baseIdx
   character(c_char), device :: pBuffer(*) 

5.8.68. cusparseSgebsr2gebsr_bufferSize

This function returns the size of the buffer used in gebsr2gebsrnnz and gebsr2gebsr.

 integer(4) function cusparseSgebsr2gebsr_bufferSize(handle, mb, nb, nnzb, bsrVal, bsrRowPtr, bsrColInd, rowBlockDimA, colBlockDimA, rowBlockDimC, colBlockDimC, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: mb, nb, nnzb
   real(4), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*), bsrColInd(*)
   integer(4) :: rowBlockDimA, colBlockDimA, rowBlockDimC, colBlockDimC
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.8.69. cusparseDgebsr2gebsr_bufferSize

This function returns the size of the buffer used in gebsr2gebsrnnz and gebsr2gebsr.

 integer(4) function cusparseDgebsr2gebsr_bufferSize(handle, mb, nb, nnzb, bsrVal, bsrRowPtr, bsrColInd, rowBlockDimA, colBlockDimA, rowBlockDimC, colBlockDimC, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: mb, nb, nnzb
   real(8), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*), bsrColInd(*)
   integer(4) :: rowBlockDimA, colBlockDimA, rowBlockDimC, colBlockDimC
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.8.70. cusparseCgebsr2gebsr_bufferSize

This function returns the size of the buffer used in gebsr2gebsrnnz and gebsr2gebsr.

 integer(4) function cusparseCgebsr2gebsr_bufferSize(handle, mb, nb, nnzb, bsrVal, bsrRowPtr, bsrColInd, rowBlockDimA, colBlockDimA, rowBlockDimC, colBlockDimC, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: mb, nb, nnzb
   complex(4), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*), bsrColInd(*)
   integer(4) :: rowBlockDimA, colBlockDimA, rowBlockDimC, colBlockDimC
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.8.71. cusparseZgebsr2gebsr_bufferSize

This function returns the size of the buffer used in gebsr2gebsrnnz and gebsr2gebsr.

 integer(4) function cusparseZgebsr2gebsr_bufferSize(handle, mb, nb, nnzb, bsrVal, bsrRowPtr, bsrColInd, rowBlockDimA, colBlockDimA, rowBlockDimC, colBlockDimC, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: mb, nb, nnzb
   complex(8), device :: bsrVal(*)
   integer(4), device :: bsrRowPtr(*), bsrColInd(*)
   integer(4) :: rowBlockDimA, colBlockDimA, rowBlockDimC, colBlockDimC
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.8.72. cusparseXgebsr2gebsrNnz

cusparseXcsrgeamNnz computes the number of nonzero elements which will be produced by CSRGEAM.

 integer(4) function cusparseXgebsr2gebsrNnz(handle, dir, mb, nb, nnzb, descrA, bsrRowPtrA, bsrColIndA, rowBlockDimA, colBlockDimA, descrC, bsrRowPtrC, rowBlockDimC, colBlockDimC, nnzTotalDevHostPtr, pBuffer)
   type(cusparseHandle) :: handle
   integer :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer :: rowBlockDimA, colBlockDimA
   type(cusparseMatDescr) :: descrC
   integer(4), device :: bsrRowPtrC(*)
   integer :: rowBlockDimC, colBlockDimC
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable
   character, device :: pBuffer(*) 

5.8.73. cusparseSgebsr2gebsr

This function converts a sparse matrix in general BSR storage format that is defined by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA into a sparse matrix in another general BSR format that is defined by arrays bsrValC, bsrRowPtrC, and bsrColIndC.

 integer(4) function cusparseSgebsr2gebsr(handle, dir, mb, nb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, rowBlockDimA, colBlockDimA, descrC, bsrValC, bsrRowPtrC, bsrColIndC, rowBlockDimC, colBlockDimC, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*), bsrValC(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: rowBlockDimA, colBlockDimA
   type(cusparseMatDescr) :: descrC
   integer(4), device :: bsrRowPtrC(*), bsrColIndC(*)
   integer(4) :: rowBlockDimC, colBlockDimC
   character(c_char), device :: pBuffer(*) 

5.8.74. cusparseDgebsr2gebsr

This function converts a sparse matrix in general BSR storage format that is defined by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA into a sparse matrix in another general BSR format that is defined by arrays bsrValC, bsrRowPtrC, and bsrColIndC.

 integer(4) function cusparseDgebsr2gebsr(handle, dir, mb, nb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, rowBlockDimA, colBlockDimA, descrC, bsrValC, bsrRowPtrC, bsrColIndC, rowBlockDimC, colBlockDimC, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*), bsrValC(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: rowBlockDimA, colBlockDimA
   type(cusparseMatDescr) :: descrC
   integer(4), device :: bsrRowPtrC(*), bsrColIndC(*)
   integer(4) :: rowBlockDimC, colBlockDimC
   character(c_char), device :: pBuffer(*) 

5.8.75. cusparseCgebsr2gebsr

This function converts a sparse matrix in general BSR storage format that is defined by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA into a sparse matrix in another general BSR format that is defined by arrays bsrValC, bsrRowPtrC, and bsrColIndC.

 integer(4) function cusparseCgebsr2gebsr(handle, dir, mb, nb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, rowBlockDimA, colBlockDimA, descrC, bsrValC, bsrRowPtrC, bsrColIndC, rowBlockDimC, colBlockDimC, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*), bsrValC(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: rowBlockDimA, colBlockDimA
   type(cusparseMatDescr) :: descrC
   integer(4), device :: bsrRowPtrC(*), bsrColIndC(*)
   integer(4) :: rowBlockDimC, colBlockDimC
   character(c_char), device :: pBuffer(*) 

5.8.76. cusparseZgebsr2gebsr

This function converts a sparse matrix in general BSR storage format that is defined by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA into a sparse matrix in another general BSR format that is defined by arrays bsrValC, bsrRowPtrC, and bsrColIndC.

 integer(4) function cusparseZgebsr2gebsr(handle, dir, mb, nb, nnzb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, rowBlockDimA, colBlockDimA, descrC, bsrValC, bsrRowPtrC, bsrColIndC, rowBlockDimC, colBlockDimC, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*), bsrValC(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: rowBlockDimA, colBlockDimA
   type(cusparseMatDescr) :: descrC
   integer(4), device :: bsrRowPtrC(*), bsrColIndC(*)
   integer(4) :: rowBlockDimC, colBlockDimC
   character(c_char), device :: pBuffer(*) 

5.8.77. cusparseSgebsr2csr

This function converts a sparse matrix in general BSR storage format that is defined by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA into a sparse matrix in CSR format that is defined by arrays csrValC, csrRowPtrC, and csrColIndC.

 integer(4) function cusparseSgebsr2csr(handle, dir, mb, nb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, rowBlockDimA, colBlockDimA, descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   real(4), device :: bsrValA(*), csrValC(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: rowBlockDimA, colBlockDimA
   type(cusparseMatDescr) :: descrC
   integer(4), device :: csrRowPtrC(*), csrColIndC(*) 

5.8.78. cusparseDgebsr2csr

This function converts a sparse matrix in general BSR storage format that is defined by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA into a sparse matrix in CSR format that is defined by arrays csrValC, csrRowPtrC, and csrColIndC.

 integer(4) function cusparseDgebsr2csr(handle, dir, mb, nb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, rowBlockDimA, colBlockDimA, descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   real(8), device :: bsrValA(*), csrValC(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: rowBlockDimA, colBlockDimA
   type(cusparseMatDescr) :: descrC
   integer(4), device :: csrRowPtrC(*), csrColIndC(*) 

5.8.79. cusparseCgebsr2csr

This function converts a sparse matrix in general BSR storage format that is defined by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA into a sparse matrix in CSR format that is defined by arrays csrValC, csrRowPtrC, and csrColIndC.

 integer(4) function cusparseCgebsr2csr(handle, dir, mb, nb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, rowBlockDimA, colBlockDimA, descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(4), device :: bsrValA(*), csrValC(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: rowBlockDimA, colBlockDimA
   type(cusparseMatDescr) :: descrC
   integer(4), device :: csrRowPtrC(*), csrColIndC(*) 

5.8.80. cusparseZgebsr2csr

This function converts a sparse matrix in general BSR storage format that is defined by the three arrays bsrValA, bsrRowPtrA, and bsrColIndA into a sparse matrix in CSR format that is defined by arrays csrValC, csrRowPtrC, and csrColIndC.

 integer(4) function cusparseZgebsr2csr(handle, dir, mb, nb, descrA, bsrValA, bsrRowPtrA, bsrColIndA, rowBlockDimA, colBlockDimA, descrC, csrValC, csrRowPtrC, csrColIndC)
   type(cusparseHandle) :: handle
   integer(4) :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(8), device :: bsrValA(*), csrValC(*)
   integer(4), device :: bsrRowPtrA(*), bsrColIndA(*)
   integer(4) :: rowBlockDimA, colBlockDimA
   type(cusparseMatDescr) :: descrC
   integer(4), device :: csrRowPtrC(*), csrColIndC(*) 

5.8.81. cusparseScsr2gebsr_bufferSize

This function returns the size of the buffer used in csr2gebsrnnz and csr2gebsr.

 integer(4) function cusparseScsr2gebsr_bufferSize(handle, dir, m, n, descrA, csrVal, csrRowPtr, csrColInd, rowBlockDim, colBlockDim, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dir, m, n
   real(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   integer(4) :: rowBlockDim, colBlockDim
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.8.82. cusparseDcsr2gebsr_bufferSize

This function returns the size of the buffer used in csr2gebsrnnz and csr2gebsr.

 integer(4) function cusparseDcsr2gebsr_bufferSize(handle, dir, m, n, descrA, csrVal, csrRowPtr, csrColInd, rowBlockDim, colBlockDim, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dir, m, n
   real(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   integer(4) :: rowBlockDim, colBlockDim
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.8.83. cusparseCcsr2gebsr_bufferSize

This function returns the size of the buffer used in csr2gebsrnnz and csr2gebsr.

 integer(4) function cusparseCcsr2gebsr_bufferSize(handle, dir, m, n, descrA, csrVal, csrRowPtr, csrColInd, rowBlockDim, colBlockDim, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dir, m, n
   complex(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   integer(4) :: rowBlockDim, colBlockDim
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.8.84. cusparseZcsr2gebsr_bufferSize

This function returns the size of the buffer used in csr2gebsrnnz and csr2gebsr.

 integer(4) function cusparseZcsr2gebsr_bufferSize(handle, dir, m, n, descrA, csrVal, csrRowPtr, csrColInd, rowBlockDim, colBlockDim, pBufferSize)
   type(cusparseHandle) :: handle
   integer(4) :: dir, m, n
   complex(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   integer(4) :: rowBlockDim, colBlockDim
   integer(4) :: pBufferSize ! integer(8) also accepted 

5.8.85. cusparseXcsr2gebsrNnz

cusparseXcsrgeamNnz computes the number of nonzero elements which will be produced by CSRGEAM.

 integer(4) function cusparseXcsr2gebsrNnz(handle, dir, m, n, descrA, csrRowPtrA, csrColIndA, descrC, bsrRowPtrC, rowBlockDimC, colBlockDimC, nnzTotalDevHostPtr, pBuffer)
   type(cusparseHandle) :: handle
   integer :: dir, m, n
   type(cusparseMatDescr) :: descrA
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseMatDescr) :: descrC
   integer(4), device :: bsrRowPtrC(*)
   integer :: rowBlockDimC, colBlockDimC
   integer(4), device :: nnzTotalDevHostPtr ! device or host variable
   character, device :: pBuffer(*) 

5.8.86. cusparseScsr2gebsr

This function converts a sparse matrix in CSR storage format that is defined by the three arrays csrValA, csrRowPtrA, and csrColIndA into a sparse matrix in general BSR format that is defined by arrays bsrValC, bsrRowPtrC, and bsrColIndC.

 integer(4) function cusparseScsr2gebsr(handle, dir, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, descrC, bsrValC, bsrRowPtrC, bsrColIndC, rowBlockDimC, colBlockDimC, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrValA(*), bsrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseMatDescr) :: descrC
   integer(4), device :: bsrRowPtrC(*), bsrColIndC(*)
   integer(4) :: rowBlockDimC, colBlockDimC
   character(c_char), device :: pBuffer(*) 

5.8.87. cusparseDcsr2gebsr

This function converts a sparse matrix in CSR storage format that is defined by the three arrays csrValA, csrRowPtrA, and csrColIndA into a sparse matrix in general BSR format that is defined by arrays bsrValC, bsrRowPtrC, and bsrColIndC.

 integer(4) function cusparseDcsr2gebsr(handle, dir, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, descrC, bsrValC, bsrRowPtrC, bsrColIndC, rowBlockDimC, colBlockDimC, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrValA(*), bsrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseMatDescr) :: descrC
   integer(4), device :: bsrRowPtrC(*), bsrColIndC(*)
   integer(4) :: rowBlockDimC, colBlockDimC
   character(c_char), device :: pBuffer(*) 

5.8.88. cusparseCcsr2gebsr

This function converts a sparse matrix in CSR storage format that is defined by the three arrays csrValA, csrRowPtrA, and csrColIndA into a sparse matrix in general BSR format that is defined by arrays bsrValC, bsrRowPtrC, and bsrColIndC.

 integer(4) function cusparseCcsr2gebsr(handle, dir, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, descrC, bsrValC, bsrRowPtrC, bsrColIndC, rowBlockDimC, colBlockDimC, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrValA(*), bsrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseMatDescr) :: descrC
   integer(4), device :: bsrRowPtrC(*), bsrColIndC(*)
   integer(4) :: rowBlockDimC, colBlockDimC
   character(c_char), device :: pBuffer(*) 

5.8.89. cusparseZcsr2gebsr

This function converts a sparse matrix in CSR storage format that is defined by the three arrays csrValA, csrRowPtrA, and csrColIndA into a sparse matrix in general BSR format that is defined by arrays bsrValC, bsrRowPtrC, and bsrColIndC.

 integer(4) function cusparseZcsr2gebsr(handle, dir, m, n, descrA, csrValA, csrRowPtrA, csrColIndA, descrC, bsrValC, bsrRowPtrC, bsrColIndC, rowBlockDimC, colBlockDimC, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: dir, mb, nb, nnzb
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrValA(*), bsrValC(*)
   integer(4), device :: csrRowPtrA(*), csrColIndA(*)
   type(cusparseMatDescr) :: descrC
   integer(4), device :: bsrRowPtrC(*), bsrColIndC(*)
   integer(4) :: rowBlockDimC, colBlockDimC
   character(c_char), device :: pBuffer(*) 

5.8.90. cusparseCreateIdentityPermutation

This function creates an identity map. The output parameter p represents such map by p = 0:1:(n-1). This function is typically used with coosort, csrsort, cscsort, and csr2csc_indexOnly.

 integer(4) function cusparseCreateIdentityPermutation(handle, n, p)
   type(cusparseHandle) :: handle
   integer(4) :: n
   integer(4), device :: p(*) 

5.8.91. cusparseXcoosort_bufferSize

This function returns the size of the buffer used in coosort.

 integer(4) function cusparseXcoosort_bufferSize(handle, m, n, nnz, cooRows, cooCols, pBufferSizeInBytes)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   integer(4), device :: cooRows(*), cooCols(*)
   integer(8) :: pBufferSizeInBytes 

5.8.92. cusparseXcoosortByRow

This function sorts the sparse matrix stored in COO format.

 integer(4) function cusparseXcoosortByRow(handle, m, n, nnz, cooRows, cooCols, P, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   integer(4), device :: cooRows(*), cooCols(*), P(*)
   character(c_char), device :: pBuffer(*) 

5.8.93. cusparseXcoosortByColumn

This function sorts the sparse matrix stored in COO format.

 integer(4) function cusparseXcoosortByColumn(handle, m, n, nnz, cooRows, cooCols, P, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   integer(4), device :: cooRows(*), cooCols(*), P(*)
   character(c_char), device :: pBuffer(*) 

5.8.94. cusparseXcsrsort_bufferSize

This function returns the size of the buffer used in csrsort.

 integer(4) function cusparseXcsrsort_bufferSize(handle, m, n, nnz, csrRowInd, csrColInd, pBufferSizeInBytes)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   integer(4), device :: csrRowInd(*), csrColInd(*)
   integer(8) :: pBufferSizeInBytes 

5.8.95. cusparseXcsrsort

This function sorts the sparse matrix stored in CSR format.

 integer(4) function cusparseXcsrsort(handle, m, n, nnz, csrRowInd, csrColInd, P, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   integer(4), device :: csrRowInd(*), csrColInd(*), P(*)
   character(c_char), device :: pBuffer(*) 

5.8.96. cusparseXcscsort_bufferSize

This function returns the size of the buffer used in cscsort.

 integer(4) function cusparseXcscsort_bufferSize(handle, m, n, nnz, cscColPtr, cscRowInd, pBufferSizeInBytes)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   integer(4), device :: cscColPtr(*), cscRowInd(*)
   integer(8) :: pBufferSizeInBytes 

5.8.97. cusparseXcscsort

This function sorts the sparse matrix stored in CSC format.

 integer(4) function cusparseXcscsort(handle, m, n, nnz, cscColPtr, cscRowInd, P, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   integer(4), device :: cscColPtr(*), cscRowInd(*), P(*)
   character(c_char), device :: pBuffer(*) 

5.8.98. cusparseScsru2csr_bufferSize

This function returns the size of the buffer used in csru2csr.

 integer(4) function cusparseScsru2csr_bufferSize(handle, m, n, nnz, csrVal, csrRowPtr, csrColInd, info, pBufferSizeInBytes)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   real(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   type(cusparseCsru2csrInfo) :: info
   integer(8) :: pBufferSizeInBytes 

5.8.99. cusparseDcsru2csr_bufferSize

This function returns the size of the buffer used in csru2csr.

 integer(4) function cusparseDcsru2csr_bufferSize(handle, m, n, nnz, csrVal, csrRowPtr, csrColInd, info, pBufferSizeInBytes)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   real(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   type(cusparseCsru2csrInfo) :: info
   integer(8) :: pBufferSizeInBytes 

5.8.100. cusparseCcsru2csr_bufferSize

This function returns the size of the buffer used in csru2csr.

 integer(4) function cusparseCcsru2csr_bufferSize(handle, m, n, nnz, csrVal, csrRowPtr, csrColInd, info, pBufferSizeInBytes)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   complex(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   type(cusparseCsru2csrInfo) :: info
   integer(8) :: pBufferSizeInBytes 

5.8.101. cusparseZcsru2csr_bufferSize

This function returns the size of the buffer used in csru2csr.

 integer(4) function cusparseZcsru2csr_bufferSize(handle, m, n, nnz, csrVal, csrRowPtr, csrColInd, info, pBufferSizeInBytes)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   complex(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   type(cusparseCsru2csrInfo) :: info
   integer(8) :: pBufferSizeInBytes 

5.8.102. cusparseScsru2csr

This function transfers unsorted CSR format to CSR format.

 integer(4) function cusparseScsru2csr(handle, m, n, nnz, descrA, csrVal, csrRowPtr, csrColInd, info, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   type(cusparseCsru2csrInfo) :: info
   character(c_char), device :: pBuffer(*) 

5.8.103. cusparseDcsru2csr

This function transfers unsorted CSR format to CSR format.

 integer(4) function cusparseDcsru2csr(handle, m, n, nnz, descrA, csrVal, csrRowPtr, csrColInd, info, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   type(cusparseCsru2csrInfo) :: info
   character(c_char), device :: pBuffer(*) 

5.8.104. cusparseCcsru2csr

This function transfers unsorted CSR format to CSR format.

 integer(4) function cusparseCcsru2csr(handle, m, n, nnz, descrA, csrVal, csrRowPtr, csrColInd, info, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   type(cusparseCsru2csrInfo) :: info
   character(c_char), device :: pBuffer(*) 

5.8.105. cusparseZcsru2csr

This function transfers unsorted CSR format to CSR format.

 integer(4) function cusparseZcsru2csr(handle, m, n, nnz, descrA, csrVal, csrRowPtr, csrColInd, info, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   type(cusparseCsru2csrInfo) :: info
   character(c_char), device :: pBuffer(*) 

5.8.106. cusparseScsr2csru

This function performs the backwards transformation from sorted CSR format to unsorted CSR format.

 integer(4) function cusparseScsr2csru(handle, m, n, nnz, descrA, csrVal, csrRowPtr, csrColInd, info, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   type(cusparseMatDescr) :: descrA
   real(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   type(cusparseCsru2csrInfo) :: info
   character(c_char), device :: pBuffer(*) 

5.8.107. cusparseDcsr2csru

This function performs the backwards transformation from sorted CSR format to unsorted CSR format.

 integer(4) function cusparseDcsr2csru(handle, m, n, nnz, descrA, csrVal, csrRowPtr, csrColInd, info, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   type(cusparseMatDescr) :: descrA
   real(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   type(cusparseCsru2csrInfo) :: info
   character(c_char), device :: pBuffer(*) 

5.8.108. cusparseCcsr2csru

This function performs the backwards transformation from sorted CSR format to unsorted CSR format.

 integer(4) function cusparseCcsr2csru(handle, m, n, nnz, descrA, csrVal, csrRowPtr, csrColInd, info, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   type(cusparseMatDescr) :: descrA
   complex(4), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   type(cusparseCsru2csrInfo) :: info
   character(c_char), device :: pBuffer(*) 

5.8.109. cusparseZcsr2csru

This function performs the backwards transformation from sorted CSR format to unsorted CSR format.

 integer(4) function cusparseZcsr2csru(handle, m, n, nnz, descrA, csrVal, csrRowPtr, csrColInd, info, pBuffer)
   type(cusparseHandle) :: handle
   integer(4) :: m, n, nnz
   type(cusparseMatDescr) :: descrA
   complex(8), device :: csrVal(*)
   integer(4), device :: csrRowPtr(*), csrColInd(*)
   type(cusparseCsru2csrInfo) :: info
   character(c_char), device :: pBuffer(*) 

6. Examples

This section contains examples with source code.

6.1. Using cuBLAS from OpenACC Host Code

This example demonstrates the use of the cublas module, the cublasHandle type, and several forms of blas calls from OpenACC data regions.

Simple OpenACC BLAS Test

program testcublas
! compile with pgfortran -ta=tesla -Mcudalib=cublas -Mcuda testcublas.f90
call testcu1(1000)
call testcu2(1000)
end
!
subroutine testcu1(n)
use openacc
use cublas
integer :: a(n), b(n)
type(cublasHandle) :: h
istat = cublasCreate(h)
! Force OpenACC kernels and cuBLAS to use the OpenACC stream.
istat = cublasSetStream(h, acc_get_cuda_stream(acc_async_sync))
!$acc data copyout(a, b)
!$acc kernels 
a = 1
b = 2
!$acc end kernels
! No host_data, we are lexically inside a data region
! sswap will accept any kind(4) data type
call sswap(n, a, 1, b, 1)
call cublasSswap(n, a, 1, b, 1)
!$acc end data
if (all(a.eq.1).and.all(b.eq.2)) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
end
!
subroutine testcu2(n)
use openacc
use cublas
real(8) :: a(n), b(n)
a = 1.0d0
b = 2.0d0
!$acc data copy(a, b)
!$acc host_data use_device(a,b)
call dswap(n, a, 1, b, 1)
call cublasDswap(n, a, 1, b, 1)
!$acc end host_data
!$acc end data
if (all(a.eq.1.0d0).and.all(b.eq.2.0d0)) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
end

CUBLASXT BLAS Test

This example demonstrates the use of the cublasxt module

program testcublasxt
call testxt1(1000)
call testxt2(1000)
end
!
subroutine testxt1(n)
use cublasxt
real(4) :: a(n,n), b(n,n), c(n,n), alpha, beta
type(cublasXtHandle) :: h
integer ndevices(1)
a = 1.0
b = 2.0
c = -1.0
alpha = 1.0
beta = 0.0
istat = cublasXtCreate(h)
if (istat .ne. CUBLAS_STATUS_SUCCESS) print *,istat
ndevices(1) = 0
istat = cublasXtDeviceSelect(h, 1, ndevices)
if (istat .ne. CUBLAS_STATUS_SUCCESS) print *,istat
istat = cublasXtSgemm(h, CUBLAS_OP_N, CUBLAS_OP_N, &
                      n, n, n, &
                      alpha, A, n, B, n, beta, C, n)
if (istat .ne. CUBLAS_STATUS_SUCCESS) print *,istat
istat = cublasXtDestroy(h)
if (istat .ne. CUBLAS_STATUS_SUCCESS) print *,istat
if (all(c.eq.2.0*n)) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
print *,c(1,1),c(n,n)
end
!
subroutine testxt2(n)
use cublasxt
real(8) :: a(n,n), b(n,n), c(n,n), alpha, beta
type(cublasXtHandle) :: h
integer ndevices(1)
a = 1.0d0
b = 2.0d0
c = -1.0d0
alpha = 1.0d0
beta = 0.0
istat = cublasXtCreate(h)
if (istat .ne. CUBLAS_STATUS_SUCCESS) print *,istat
ndevices(1) = 0
istat = cublasXtDeviceSelect(h, 1, ndevices)
if (istat .ne. CUBLAS_STATUS_SUCCESS) print *,istat
istat = cublasXtDgemm(h, CUBLAS_OP_N, CUBLAS_OP_N, &
                      n, n, n, &
                      alpha, A, n, B, n, beta, C, n)
if (istat .ne. CUBLAS_STATUS_SUCCESS) print *,istat
istat = cublasXtDestroy(h)
if (istat .ne. CUBLAS_STATUS_SUCCESS) print *,istat
if (all(c.eq.2.0d0*n)) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
print *,c(1,1),c(n,n)
end

6.2. Using cuBLAS from OpenACC Device Code

This example demonstrates the use of the openacc_cublas module from within an OpenACC kernel.

Simple BLAS Test from Device Code

module mtests
  integer, parameter :: n = 100
  contains
    subroutine testcu( a, b )
    use openacc_cublas
    real :: a(n), b(n)
    type(cublasHandle) :: h
    !$acc parallel num_gangs(1) copy(a,b,h)
    j = cublasCreate(h)
    j = cublasSswap(h,n,a,1,b,1)
    j = cublasDestroy(h)
    !$acc end parallel
    return
    end subroutine
end module mtests

program t
! compile with pgfortran -ta=tesla:cc35 -Mcuda t.f90 -lcublas_device
use mtests
real :: a(n), b(n), c(n)
logical passing
a = 1.0
b = 2.0
passing = .true.
call testcu(a,b)
print *,"Should all be 2.0"
print *,a
passing = passing .and. all(a.eq.2.0)
print *,"Should all be 1.0"
print *,b
passing = passing .and. all(b.eq.1.0)
if (passing) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
end program

6.3. Using cuBLAS from CUDA Fortran Host Code

This example demonstrates the use of the cublas module, the cublasHandle type, and several forms of blas calls.

Simple BLAS Test

program testisamax
! Compile with "pgfortran testisamax.cuf -Mcudalib=cublas -lblas"
! Use the PGI cudafor and cublas modules
use cudafor
use cublas
!
real*4, device, allocatable :: xd(:)
real*4 x(1000)
integer, device :: kd
type(cublasHandle) :: h

call random_number(x)

! F90 way
i = maxloc(x,dim=1)
print *,i
print *,x(i-1),x(i),x(i+1)

! Host way
j = isamax(1000,x,1)
print *,j
print *,x(j-1),x(j),x(j+1)

! CUDA Generic BLAS way
allocate(xd(1000))
xd = x
k = isamax(1000,xd,1)
print *,k
print *,x(k-1),x(k),x(k+1)

! CUDA Specific BLAS way
k = cublasIsamax(1000,xd,1)
print *,k
print *,x(k-1),x(k),x(k+1)

! CUDA V2 Host Specific BLAS way
istat = cublasCreate(h)
if (istat .ne. 0) print *,"cublasCreate returned ",istat
k = 0
istat = cublasIsamax_v2(h, 1000, xd, 1, k)
if (istat .ne. 0) print *,"cublasIsamax 1 returned ",istat
print *,k
print *,x(k-1),x(k),x(k+1)

! CUDA V2 Device Specific BLAS way
k = 0
istat = cublasIsamax_v2(h, 1000, xd, 1, kd)
if (istat .ne. 0) print *,"cublasIsamax 2 returned ",istat
k = kd
print *,k
print *,x(k-1),x(k),x(k+1)

istat = cublasDestroy(h)
if (istat .ne. 0) print *,"cublasDestroy returned ",istat

end program

Multi-threaded BLAS Test

This example demonstrates the use of the cublas module in a multi-threaded code. Each thread will attach to a different GPU, create a context, and combine the results at the end.

program tsgemm
!
! Multi-threaded example calling sgemm from cuda fortran.
! Compile with "pgfortran -mp tsgemm.cuf -Mcudalib=cublas"
! Set OMP_NUM_THREADS=number of GPUs in your system.
!
use cublas
use cudafor
use omp_lib
!
! Size this according to number of GPUs
!
! Small
!integer, parameter :: K = 2500
!integer, parameter :: M = 2000
!integer, parameter :: N = 2000
! Large
integer, parameter :: K = 10000
integer, parameter :: M = 10000
integer, parameter :: N = 10000
integer, parameter :: NTIMES = 10
!
real*4, device, allocatable :: a_d(:,:), b_d(:,:), c_d(:,:)
!$omp THREADPRIVATE(a_d,b_d,c_d)
real*4 a(m,k), b(k,n), c(m,n)
real*4 alpha, beta
integer, allocatable :: offs(:)
type(cudaEvent) :: start, stop

a = 1.0; b = 0.0; c = 0.0
do i = 1, N
  b(i,i) = 1.0
end do
alpha = 1.0; beta  = 1.0

! Break up the B and C array into sections
nthr = omp_get_max_threads()
nsec = N / nthr
print *,"Running with ",nthr," threads, each section = ",nsec
allocate(offs(nthr))
offs = (/ (i*nsec,i=0,nthr-1) /)

! Allocate and initialize the arrays
! Each thread connects to a device and creates a CUDA context.
!$omp PARALLEL private(i,istat)
    i = omp_get_thread_num() + 1
    istat = cudaSetDevice(i-1)
    allocate(a_d(M,K), b_d(K,nsec), c_d(M,nsec))
    a_d = a
    b_d = b(:,offs(i)+1:offs(i)+nsec)
    c_d = c(:,offs(i)+1:offs(i)+nsec)
!$omp end parallel

istat = cudaEventCreate(start)
istat = cudaEventCreate(stop)

time = 0.0
istat = cudaEventRecord(start, 0)
! Run the traditional blas kernel
!$omp PARALLEL private(j,istat)
    do j = 1, NTIMES
      call sgemm('n','n', M, N/nthr, K, alpha, a_d, M, b_d, K, beta, c_d, M)
    end do
    istat = cudaDeviceSynchronize()
!$omp end parallel

istat = cudaEventRecord(stop, 0)
istat = cudaEventElapsedTime(time, start, stop)
time = time / (NTIMES*1.0e3)
!$omp PARALLEL private(i)
    i = omp_get_thread_num() + 1
    c(:,offs(i)+1:offs(i)+nsec) = c_d
!$omp end parallel
nerrors = 0
do j = 1, N
    do i = 1, M
        if (c(i,j) .ne. NTIMES) nerrors = nerrors + 1
    end do
end do
print *,"Number of Errors:",nerrors
gflops = 2.0 * N * M * K/time/1e9
write (*,901) m,k,k,N,time*1.0e3,gflops
901 format(i0,'x',i0,' * ',i0,'x',i0,':\t',f8.3,' ms\t',f12.3,' GFlops/s')
end

6.4. Using cuBLAS from CUDA Fortran Device Code

This example demonstrates the use of the cublas_device module from a CUDA Fortran global subroutines.

Simple BLAS Test from Device Code

module mtests
  use cublas_device
  contains
    attributes(global) subroutine testb( a, b, n )
    real, device :: a(*), b(*)
    integer, value :: n
    type(cublasHandle) :: h
    i = threadIdx%x
    if (i.eq.1) then
      j = cublasCreate(h)
      j = cublasSswap(h,n,a,1,b,1)
      j = cublasDestroy(h)
    end if
    return
    end subroutine
end module mtests

program tdev
! Compile and link with "pgfortran -Mcuda=cc35 tdev.cuf -lcublas_device"
use mtests
integer, parameter :: nt = 128
real, device :: a(nt), b(nt)
real c(nt)
a = 1.0
b = 2.0
call testb<<<1,nt>>> (a,b,nt)
c = a
print *,"Should be 2.0",all(c.eq.2.0)
c = b
print *,"Should be 1.0",all(c.eq.1.0)
end
end program

6.5. Using cuFFT from OpenACC Host Code

This example demonstrates the use of the cufft module, the cufftHandle type, and several cuFFT library calls.

Simple cuFFT Test

program cufft2dTest
  use cufft
  use openacc
  integer, parameter :: m=768, n=512
  complex, allocatable  :: a(:,:),b(:,:),c(:,:)
  real, allocatable     :: r(:,:),q(:,:)
  integer :: iplan1, iplan2, iplan3, ierr

  allocate(a(m,n),b(m,n),c(m,n))
  allocate(r(m,n),q(m,n))

  a = 1; r = 1
  xmx = -99.0

  ierr = cufftPlan2D(iplan1,m,n,CUFFT_C2C)
  ierr = ierr + cufftSetStream(iplan1,acc_get_cuda_stream(acc_async_sync))
  !$acc host_data use_device(a,b,c)
  ierr = ierr + cufftExecC2C(iplan1,a,b,CUFFT_FORWARD)
  ierr = ierr + cufftExecC2C(iplan1,b,c,CUFFT_INVERSE)
  !$acc end host_data

  ! scale c
  !$acc kernels
  c = c / (m*n)
  !$acc end kernels

  ! Check forward answer
  write(*,*) 'Max error C2C FWD: ', cmplx(maxval(real(b)) - sum(real(b)), &
                                          maxval(imag(b)))
  ! Check inverse answer
  write(*,*) 'Max error C2C INV: ', maxval(abs(a-c))

  ! Real transform
  ierr = ierr + cufftPlan2D(iplan2,m,n,CUFFT_R2C)
  ierr = ierr + cufftPlan2D(iplan3,m,n,CUFFT_C2R)
  ierr = ierr + cufftSetStream(iplan2,acc_get_cuda_stream(acc_async_sync))
  ierr = ierr + cufftSetStream(iplan3,acc_get_cuda_stream(acc_async_sync))

  !$acc host_data use_device(r,b,q)
  ierr = ierr + cufftExecR2C(iplan2,r,b)
  ierr = ierr + cufftExecC2R(iplan3,b,q)
  !$acc end host_data

  !$acc kernels
  xmx = maxval(abs(r-q/(m*n)))
  !$acc end kernels

  ! Check R2C + C2R answer
  write(*,*) 'Max error R2C/C2R: ', xmx

  ierr = ierr + cufftDestroy(iplan1)
  ierr = ierr + cufftDestroy(iplan2)
  ierr = ierr + cufftDestroy(iplan3)

  if (ierr.eq.0) then
    print *,"test PASSED"
  else
    print *,"test FAILED"
  endif

end program cufft2dTest

6.6. Using cuFFT from CUDA Fortran Host Code

This example demonstrates the use of the cuFFT module, the cufftHandle type, and several cuFFT library calls.

Simple cuFFT Test

program cufft2dTest
  use cudafor
  use cufft
  implicit none
  integer, parameter :: m=768, n=512
  complex, managed :: a(m,n),b(m,n)
  real, managed :: ar(m,n),br(m,n)
  real    x
  integer plan, ierr
  logical passing

  a = 1; ar = 1

  ierr = cufftPlan2D(plan,m,n,CUFFT_C2C)
  ierr = ierr + cufftExecC2C(plan,a,b,CUFFT_FORWARD)
  ierr = ierr + cufftExecC2C(plan,b,b,CUFFT_INVERSE)
  ierr = ierr + cudaDeviceSynchronize()
  x = maxval(abs(a-b/(m*n)))
  write(*,*) 'Max error C2C: ', x
  passing = x .le. 1.0e-5

  ierr = ierr + cufftPlan2D(plan,m,n,CUFFT_R2C)
  ierr = ierr + cufftExecR2C(plan,ar,b)
  ierr = ierr + cufftPlan2D(plan,m,n,CUFFT_C2R)
  ierr = ierr + cufftExecC2R(plan,b,br)
  ierr = ierr + cudaDeviceSynchronize()
  x = maxval(abs(ar-br/(m*n)))
  write(*,*) 'Max error R2C/C2R: ', x
  passing = passing .and. (x .le. 1.0e-5)

  ierr = ierr + cufftDestroy(plan)
  print *,ierr
  passing = passing .and. (ierr .eq. 0)
  if (passing) then
    print *,"Test PASSED"
  else
    print *,"Test FAILED"
  endif
end program cufft2dTest

6.7. Using cuRAND from OpenACC Host Code

This example demonstrates the use of the curand module, the curandHandle type, and several forms of rand calls.

Simple cuRAND Tests

program testcurand
! compile with the flags -ta=tesla -Mcuda -Mcudalib=curand
call cur1(1000, .true.); call cur1(1000, .false.)
call cur2(1000, .true.); call cur2(1000, .false.)
call cur3(1000, .true.); call cur3(1000, .false.)
end
!
subroutine cur1(n, onhost)
use curand
integer :: a(n)
type(curandGenerator) :: g
integer(8) nbits
logical onhost, passing
a = 0
passing = .true.
if (onhost) then
  istat = curandCreateGeneratorHost(g,CURAND_RNG_PSEUDO_XORWOW)
  istat = curandGenerate(g, a, n)
  istat = curandDestroyGenerator(g)
else
  !$acc data copy(a)
  istat = curandCreateGenerator(g,CURAND_RNG_PSEUDO_XORWOW)
  !$acc host_data use_device(a)
  istat = curandGenerate(g, a, n)
  !$acc end host_data
  istat = curandDestroyGenerator(g)
  !$acc end data
endif
nbits = 0
do i = 1, n
  if (i.lt.10) print *,i,a(i)
  nbits = nbits + popcnt(a(i))
end do
print *,"Should be roughly half the bits set"
nbits = nbits / n
if ((nbits .lt. 12) .or. (nbits .gt. 20)) then
  passing = .false.
else
  print *,"nbits is ",nbits," which passes"
endif
if (passing) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
end
!
subroutine cur2(n, onhost)
use curand
real :: a(n)
type(curandGenerator) :: g
logical onhost, passing
a = 0.0
passing = .true.
if (onhost) then
  istat = curandCreateGeneratorHost(g,CURAND_RNG_PSEUDO_XORWOW)
  istat = curandGenerate(g, a, n)
  istat = curandDestroyGenerator(g)
else
  !$acc data copy(a)
  istat = curandCreateGenerator(g,CURAND_RNG_PSEUDO_XORWOW)
  !$acc host_data use_device(a)
  istat = curandGenerate(g, a, n)
  !$acc end host_data
  istat = curandDestroyGenerator(g)
  !$acc end data
endif
print *,"Should be uniform around 0.5"
do i = 1, n
  if (i.lt.10) print *,i,a(i)
  if ((a(i).lt.0.0) .or. (a(i).gt.1.0)) passing = .false.
end do
rmean = sum(a)/n
if ((rmean .lt. 0.4) .or. (rmean .gt. 0.6)) then
  passing = .false.
else
  print *,"Mean is ",rmean," which passes"
endif
if (passing) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
end
!
subroutine cur3(n, onhost)
use curand
real(8) :: a(n)
type(curandGenerator) :: g
logical onhost, passing
a = 0.0d0
passing = .true.
if (onhost) then
  istat = curandCreateGeneratorHost(g,CURAND_RNG_PSEUDO_XORWOW)
  istat = curandGenerate(g, a, n)
  istat = curandDestroyGenerator(g)
else
  !$acc data copy(a)
  istat = curandCreateGenerator(g,CURAND_RNG_PSEUDO_XORWOW)
  !$acc host_data use_device(a)
  istat = curandGenerate(g, a, n)
  !$acc end host_data
  istat = curandDestroyGenerator(g)
  !$acc end data
endif
do i = 1, n
  if (i.lt.10) print *,i,a(i)
  if ((a(i).lt.0.0d0) .or. (a(i).gt.1.0d0)) passing = .false.
end do
rmean = sum(a)/n
if ((rmean .lt. 0.4d0) .or. (rmean .gt. 0.6d0)) then
  passing = .false.
else
  print *,"Mean is ",rmean," which passes"
endif
if (passing) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
end

6.8. Using cuRAND from OpenACC Device Code

This example demonstrates the use of the curand_device module from a CUDA Fortran global subroutines.

Simple cuRAND Test from OpenACC Device Code

module mtests
  integer, parameter :: n = 1000
  contains
    subroutine testrand( a, b )
    use openacc_curand
    real :: a(n), b(n)
    type(curandStateXORWOW) :: h
    integer(8) :: seed, seq, offset

    !$acc parallel num_gangs(1) vector_length(1) copy(a,b) private(h)
    seed = 12345
    seq = 0
    offset = 0
    call curand_init(seed, seq, offset, h)
    !$acc loop seq
    do i = 1, n
      a(i) = curand_uniform(h)
      b(i) = curand_normal(h)
    end do
    !$acc end parallel
    return
    end subroutine
end module mtests

program t
use mtests
real :: a(n), b(n), c(n)
logical passing
a = 1.0
b = 2.0
passing = .true.
call testrand(a,b)
c = a
print *,"Should be uniform around 0.5"
do i = 1, n
  if (i.lt.10) print *,i,c(i)
  if ((c(i).lt.0.0) .or. (c(i).gt.1.0)) passing = .false.
end do
rmean = sum(c)/n
if ((rmean .lt. 0.4) .or. (rmean .gt. 0.6)) then
  passing = .false.
else
  print *,"Mean is ",rmean," which passes"
endif
c = b
print *,"Should be normal around 0.0"
nc1 = 0;
nc2 = 0;
do i = 1, n
  if (i.lt.10) print *,i,c(i)
  if ((c(i) .gt. -4.0) .and. (c(i) .lt. 0.0)) nc1 = nc1 + 1
  if ((c(i) .gt.  0.0) .and. (c(i) .lt. 4.0)) nc2 = nc2 + 1
end do
print *,"Found on each side of zero ",nc1,nc2
if (abs(nc1-nc2) .gt. (n/10)) npassing = .false.
rmean = sum(c,mask=abs(c).lt.4.0)/n
if ((rmean .lt. -0.1) .or. (rmean .gt. 0.1)) then
  passing = .false.
else
  print *,"Mean is ",rmean," which passes"
endif

if (passing) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
end program

6.9. Using cuRAND from CUDA Fortran Host Code

This example demonstrates the use of the curand module, the curandHandle type, and several forms of rand calls.

Simple cuRAND Test

program testcurand1
call testr1(1000)
call testr2(1000)
call testr3(1000)
end
!
subroutine testr1(n)
use cudafor
use curand
integer, managed :: a(n)
type(curandGenerator) :: g
integer(8) nbits
logical passing
a = 0
passing = .true.
istat = curandCreateGenerator(g,CURAND_RNG_PSEUDO_XORWOW)
istat = curandGenerate(g, a, n)
istat = cudaDeviceSynchronize()
istat = curandDestroyGenerator(g)
nbits = 0
do i = 1, n
  if (i.lt.10) print *,i,a(i)
  nbits = nbits + popcnt(a(i))
end do
print *,"Should be roughly half the bits set"
nbits = nbits / n
if ((nbits .lt. 12) .or. (nbits .gt. 20)) then
  passing = .false.
else
  print *,"nbits is ",nbits," which passes"
endif
if (passing) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
end
!
subroutine testr2(n)
use cudafor
use curand
real, managed :: a(n)
type(curandGenerator) :: g
logical passing
a = 0.0
passing = .true.
istat = curandCreateGenerator(g,CURAND_RNG_PSEUDO_XORWOW)
istat = curandGenerate(g, a, n)
istat = cudaDeviceSynchronize()
istat = curandDestroyGenerator(g)
print *,"Should be uniform around 0.5"
do i = 1, n
  if (i.lt.10) print *,i,a(i)
  if ((a(i).lt.0.0) .or. (a(i).gt.1.0)) passing = .false.
end do
rmean = sum(a)/n
if ((rmean .lt. 0.4) .or. (rmean .gt. 0.6)) then
  passing = .false.
else
  print *,"Mean is ",rmean," which passes"
endif
if (passing) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
end
!
subroutine testr3(n)
use cudafor
use curand
real(8), managed :: a(n)
type(curandGenerator) :: g
logical passing
a = 0.0d0
passing = .true.
istat = curandCreateGenerator(g,CURAND_RNG_PSEUDO_XORWOW)
istat = curandGenerate(g, a, n)
istat = cudaDeviceSynchronize()
istat = curandDestroyGenerator(g)
do i = 1, n
  if (i.lt.10) print *,i,a(i)
  if ((a(i).lt.0.0d0) .or. (a(i).gt.1.0d0)) passing = .false.
end do
rmean = sum(a)/n
if ((rmean .lt. 0.4d0) .or. (rmean .gt. 0.6d0)) then
  passing = .false.
else
  print *,"Mean is ",rmean," which passes"
endif
if (passing) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
end
end program

6.10. Using cuRAND from CUDA Fortran Device Code

This example demonstrates the use of the curand_device module from a CUDA Fortran global subroutines.

Simple cuRAND Test from Device Code

module mtests
  use curand_device
  integer, parameter :: n = 10000
  contains
    attributes(global) subroutine testr( a, b )
    real, device :: a(n), b(n)
    type(curandStateXORWOW) :: h
    integer(8) :: seed, seq, offset
    integer :: iam
    iam = threadIdx%x
    seed = iam*64 + 12345
    seq = 0
    offset = 0
    call curand_init(seed, seq, offset, h)
    do i = iam, n, blockdim%x
      a(i) = curand_uniform(h)
      b(i) = curand_normal(h)
    end do
    return
    end subroutine
end module mtests

program t
use mtests
real, allocatable, device :: a(:), b(:)
real c(n), rmean
logical passing
allocate(a(n))
allocate(b(n))
a = 0.0
b = 0.0
passing = .true.
call testr<<<1,32>>> (a,b)
c = a
print *,"Should be uniform around 0.5"
do i = 1, n
  if (i.lt.10) print *,i,c(i)
  if ((c(i).lt.0.0) .or. (c(i).gt.1.0)) passing = .false.
end do
rmean = sum(c)/n
if ((rmean .lt. 0.4) .or. (rmean .gt. 0.6)) then
  passing = .false.
else
  print *,"Mean is ",rmean," which passes"
endif

c = b
print *,"Should be normal around 0.0"
nc1 = 0;
nc2 = 0;
do i = 1, n
  if (i.lt.10) print *,i,c(i)
  if ((c(i) .gt. -4.0) .and. (c(i) .lt. 0.0)) nc1 = nc1 + 1
  if ((c(i) .gt.  0.0) .and. (c(i) .lt. 4.0)) nc2 = nc2 + 1
end do
print *,"Found on each side of zero ",nc1,nc2
if (abs(nc1-nc2) .gt. (n/10)) npassing = .false.
rmean = sum(c,mask=abs(c).lt.4.0)/n
if ((rmean .lt. -0.1) .or. (rmean .gt. 0.1)) then
  passing = .false.
else
  print *,"Mean is ",rmean," which passes"
endif

if (passing) then
  print *,"Test PASSED"
else
  print *,"Test FAILED"
endif
end
end program

6.11. Using cuSPARSE from OpenACC Host Code

This example demonstrates the use of the cuSPARSE module, the cusparseHandle type, and several calls to the cuSPARSE library.

Simple BLAS Test

program sparseMatVec
    integer n
    n = 25 ! # rows/cols in dense matrix
    call sparseMatVecSub1(n)
    n = 45 ! # rows/cols in dense matrix
    call sparseMatVecSub1(n)
end program

subroutine sparseMatVecSub1(n)
  use openacc
  use cusparse

  implicit none

  integer n

  ! dense data
  real(4), allocatable :: Ade(:,:), x(:), y(:)
  
  ! sparse CSR arrays
  real(4), allocatable :: csrValA(:) 
  integer, allocatable :: nnzPerRowA(:), csrRowPtrA(:), csrColIndA(:)

  allocate(Ade(n,n), x(n), y(n))
  allocate(csrValA(n))
  allocate(nnzPerRowA(n), csrRowPtrA(n+1), csrColIndA(n))

  call sparseMatVecSub2(Ade, x, y, csrValA, nnzPerRowA, csrRowPtrA, &
                                                         csrColIndA, n)
  deallocate(Ade)
  deallocate(x)
  deallocate(y)
  deallocate(csrValA)
  deallocate(nnzPerRowA)
  deallocate(csrRowPtrA)
  deallocate(csrColIndA)
end subroutine

subroutine sparseMatVecSub2(Ade, x, y, csrValA, nnzPerRowA, csrRowPtrA, &
                                                             csrColIndA, n)
  use openacc
  use cusparse

  implicit none

  ! dense data
  real(4) :: Ade(n,n), x(n), y(n)
  
  ! sparse CSR arrays
  real(4) :: csrValA(n) 
  integer :: nnzPerRowA(n), csrRowPtrA(n+1), csrColIndA(n)

  integer :: n, nnz, status, i
  type(cusparseHandle) :: h
  type(cusparseMatDescr) :: descrA

  ! parameters
  real(4) :: alpha, beta

  ! result
  real(4) :: xerr
  
  ! initalize CUSPARSE and matrix descriptor  
  status = cusparseCreate(h)
  if (status /= CUSPARSE_STATUS_SUCCESS) &
       write(*,*) 'cusparseCreate error: ', status
  status = cusparseCreateMatDescr(descrA)
  status = cusparseSetMatType(descrA, &
       CUSPARSE_MATRIX_TYPE_GENERAL)
  status = cusparseSetMatIndexBase(descrA, &
       CUSPARSE_INDEX_BASE_ONE)
  status = cusparseSetStream(h, acc_get_cuda_stream(acc_async_sync))
  
  !$acc data create(Ade, x, y, csrValA, nnzPerRowA, csrRowPtrA, csrColIndA)

  ! Initialize matrix (upper circular shift matrix)
  !$acc kernels
  Ade = 0.0  
  do i = 1, n-1
     Ade(i,i+1) = 1.0          
  end do
  Ade(n,1) = 1.0

  ! Initialize vectors and constants
  do i = 1, n
     x(i) = i
  enddo
  y = 0.0
  !$acc end kernels

  !$acc update host(x)
  write(*,*) 'Original vector:'
  write(*,'(5(1x,f7.2))') x

  ! convert matrix from dense to csr format
  !$acc host_data use_device(Ade, nnzPerRowA, csrValA, csrRowPtrA, csrColIndA)
  status = cusparseSnnz_v2(h, CUSPARSE_DIRECTION_ROW, &
       n, n, descrA, Ade, n, nnzPerRowA, nnz) 
  status = cusparseSdense2csr(h, n, n, descrA, Ade, n, &
       nnzPerRowA, csrValA, csrRowPtrA, csrColIndA)
  !$acc end host_data

  ! A is upper circular shift matrix
  ! y = alpha*A*x + beta*y
  alpha = 1.0
  beta = 0.0
  !$acc host_data use_device(csrValA, csrRowPtrA, csrColIndA, x, y)
  status = cusparseScsrmv(h, CUSPARSE_OPERATION_NON_TRANSPOSE, &
       n, n, n, alpha, descrA, csrValA, csrRowPtrA, &
       csrColIndA, x, beta, y)
  !$acc end host_data

  !$acc wait
  write(*,*) 'Shifted vector:'
  write(*,'(5(1x,f7.2))') y

  ! shift-down y and add original x
  ! A' is lower circular shift matrix
  ! x = alpha*A'*y + beta*x
  beta = -1.0
  !$acc host_data use_device(csrValA, csrRowPtrA, csrColIndA, x, y)
  status = cusparseScsrmv(h, CUSPARSE_OPERATION_TRANSPOSE, &
       n, n, n, alpha, descrA, csrValA, csrRowPtrA, &
       csrColIndA, y, beta, x)
  !$acc end host_data

  !$acc kernels
  xerr = maxval(abs(x))
  !$acc end kernels
  !$acc end data

  write(*,*) 'Max error = ', xerr
  if (xerr.le.1.e-5) then
    write(*,*) 'Test PASSED'
  else
    write(*,*) 'Test FAILED'
  endif

end subroutine

6.12. Using cuSPARSE from CUDA Fortran Host Code

This example demonstrates the use of the cuSPARSE module, the cusparseHandle type, and several forms of cusparse calls.

Simple BLAS Test

program sparseMatVec
  use cudafor
  use cusparse

  implicit none

  integer, parameter :: n = 25 ! # rows/cols in dense matrix

  type(cusparseHandle) :: h
  type(cusparseMatDescr) :: descrA

  ! dense data
  real(4), managed :: Ade(n,n), x(n), y(n)
  
  ! sparse CSR arrays
  real(4), managed :: csrValA(n) 
  integer, managed :: nnzPerRowA(n), &
       csrRowPtrA(n+1), csrColIndA(n)
  integer :: nnz, status, i

  ! parameters
  real(4) :: alpha, beta
  
  ! initalize CUSPARSE and matrix descriptor  
  status = cusparseCreate(h)
  if (status /= CUSPARSE_STATUS_SUCCESS) &
       write(*,*) 'cusparseCreate error: ', status
  status = cusparseCreateMatDescr(descrA)
  status = cusparseSetMatType(descrA, &
       CUSPARSE_MATRIX_TYPE_GENERAL)
  status = cusparseSetMatIndexBase(descrA, &
       CUSPARSE_INDEX_BASE_ONE)
  
  ! Initialize matrix (upper circular shift matrix)
  Ade = 0.0  
  do i = 1, n-1
     Ade(i,i+1) = 1.0          
  end do
  Ade(n,1) = 1.0

  ! Initialize vectors and constants
  x = [(i,i=1,n)]
  y = 0.0

  write(*,*) 'Original vector:'
  write(*,'(5(1x,f7.2))') x

  ! convert matrix from dense to csr format
  status = cusparseSnnz_v2(h, CUSPARSE_DIRECTION_ROW, &
       n, n, descrA, Ade, n, nnzPerRowA, nnz) 
  status = cusparseSdense2csr(h, n, n, descrA, Ade, n, &
       nnzPerRowA, csrValA, csrRowPtrA, csrColIndA)

  ! A is upper circular shift matrix
  ! y = alpha*A*x + beta*y
  alpha = 1.0
  beta = 0.0
  status = cusparseScsrmv(h, CUSPARSE_OPERATION_NON_TRANSPOSE, &
       n, n, n, alpha, descrA, csrValA, csrRowPtrA, &
       csrColIndA, x, beta, y)

  ! shift-down y and add original x
  ! A' is lower circular shift matrix
  ! x = alpha*A'*y + beta*x
  beta = -1.0
  status = cusparseScsrmv(h, CUSPARSE_OPERATION_TRANSPOSE, &
       n, n, n, alpha, descrA, csrValA, csrRowPtrA, &
       csrColIndA, y, beta, x)

  status = cudaDeviceSynchronize()

  write(*,*) 'Shifted vector:'
  write(*,'(5(1x,f7.2))') y
  
  write(*,*) 'Max error = ', maxval(abs(x))

  if (maxval(abs(x)).le.1.e-5) then
    write(*,*) 'Test PASSED'
  else
    write(*,*) 'Test FAILED'
  endif

end program sparseMatVec

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