PaddlePaddle Release 23.01
The NVIDIA container image for PaddlePaddle, release 23.01, is available on NGC.
Contents of the PaddlePaddle container
This container image includes the complete source of the NVIDIA version of PaddlePaddle in
/opt/paddlepaddle. It is prebuilt and installed as a system Python module.
The container includes the following:
- Ubuntu 20.04 including Python 3.8
- NVIDIA CUDA 12.0.1
- cuTENSOR 220.127.116.11
- NVIDIA cuDNN 8.7.0
- NVIDIA NCCL 2.16.5
- rdma-core 36.0
- OpenMPI 4.1.4+
- GDRCopy 2.3
- Nsight Systems 2022.5.1
- Nsight Compute 2022.4.1.6
- NVIDIA HPC-X 2.13
- TensorRT 18.104.22.168 for x64 Linux
- Paddle-TRT 2.3.2
- SHARP 3.0.2
- DALI 1.21.0
Release 23.01 is based on CUDA 12.0.1, which requires NVIDIA Driver release 525 or later. However, if you are running on a data center GPU (for example, T4 or any other data center GPU), you can use NVIDIA driver release 450.51 (or later R450), 470.57 (or later R470), 510.47 (or later R510), 515.65 (or later R515), or 525.85 (or later R525). The CUDA driver's compatibility package only supports particular drivers. Thus, users should upgrade from all R418, R440, and R460 drivers, which are not forward-compatible with CUDA 12.0. For a complete list of supported drivers, see the CUDA Application Compatibility topic. For more information, see CUDA Compatibility and Upgrades.
Key Features and Enhancements
This PaddlePaddle release includes the following key features and enhancements.
- The PaddlePaddle container image version 23.01 is based on v2.3.2.
- Paddle-TRT is now included.
Paddle-TRT is the TensorRT integration for PaddlePaddle and brings the capabilities of TensorRT to PadddlePaddle in a few lines in the Python and C++ APIs.
NVIDIA PaddlePaddle Container Versions
The following table shows what versions of Ubuntu, CUDA, PaddlePaddle, and TensorRT are supported in each of the NVIDIA containers for PaddlePaddle. For older container versions, refer to the Frameworks Support Matrix.
|Container Version||Ubuntu||CUDA Toolkit||PaddlePaddle||TensorRT|
|23.01||22.04||NVIDIA CUDA 12.0.1||2.3.2||TensorRT 22.214.171.124|
|22.12||NVIDIA CUDA 11.8.0||TensorRT 8.5.1|
|22.08||NVIDIA CUDA 11.7.1||2.3.1||TensorRT 126.96.36.199|
|22.07||NVIDIA CUDA 11.7 Update 1 Preview||2.3.0||TensorRT 8.4.1|
|22.05||NVIDIA CUDA 11.7|
Automatic Mixed Precision (AMP)
Automatic Mixed Precision (AMP) for PaddlePaddle is available in this container through the native implementation. AMP enables users to try mixed precision training by adding only 3 lines of Python to an existing FP32 (default) script. AMP will select an optimal set of operations to cast to FP16. FP16 operations require 2X reduced memory bandwidth (resulting in a 2X speedup for bandwidth-bound operations like most pointwise ops) and 2X reduced memory storage for intermediates (reducing the overall memory consumption of your model). Additionally, GEMMs and convolutions with FP16 inputs can run on Tensor Cores, which provide an 8X increase in computational throughput over FP32 arithmetic.
For more information about AMP, see the Training With Mixed Precision Guide.
Tensor Core Examples
The tensor core examples provided in GitHub and NGC focus on achieving the best performance and convergence from NVIDIA Volta™ tensor cores by using the latest deep learning example networks and model scripts for training. Each example model trains with mixed precision Tensor Cores on Volta and NVIDIA Turing™, so you can get results much faster than training without Tensor Cores. This model is tested against each NGC monthly container release to ensure consistent accuracy and performance over time.
- ResNet50 v1.5 model: This model is a modified version of the regular ResNet model that was introduced in the Deep Residual Learning for Image Recognition paper.
The v1.5 has
stride = 2in the 3x3 convolution instead of 1x1 convolution. This model script is available on GitHub.
- BERT model:This model is a new method of pre-training language representations that obtains state-of-the-art results on a wide array of Natural Language Processing (NLP) tasks that was introduced in the BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding paper.
This model script is available on GitHub.
- In rare cases, using the adam optimizer with multi-threading might cause segmentation fault. Setting the environment variable
FLAGS_inner_op_parallelismto 1 can disable the multi-threading feature and resolve this issue.