nvidia.dali.fn.reductions.rms#
- nvidia.dali.fn.reductions.rms(
 - __input,
 - /,
 - *,
 - axes=None,
 - axis_names=None,
 - bytes_per_sample_hint=[0],
 - dtype=None,
 - keep_dims=False,
 - preserve=False,
 - seed=-1,
 - device=None,
 - name=None,
 Gets root mean square of elements along provided axes.
- Supported backends
 ‘cpu’
‘gpu’
- Parameters:
 __input (TensorList) – Input to the operator.
- Keyword Arguments:
 axes (int or list of int, optional) –
Axis or axes along which reduction is performed.
Accepted range is [-ndim, ndim-1]. Negative indices are counted from the back.
Not providing any axis results in reduction of all elements.
:keyword axis_names : layout str, optional: Name(s) of the axis or axes along which the reduction is performed.
The input layout is used to translate the axis names to axis indices, for example
axis_names="HW"with input layout “FHWC” is equivalent to specifyingaxes=[1,2]. This argument cannot be used together withaxes.- Keyword Arguments:
 bytes_per_sample_hint (int or list of int, optional, default = [0]) –
Output size hint, in bytes per sample.
If specified, the operator’s outputs residing in GPU or page-locked host memory will be preallocated to accommodate a batch of samples of this size.
dtype (
nvidia.dali.types.DALIDataType, optional) – Output data type. This type is used to accumulate the result.keep_dims (bool, optional, default = False) – If True, maintains original input dimensions.
preserve (bool, optional, default = False) – Prevents the operator from being removed from the graph even if its outputs are not used.
seed (int, optional, default = -1) –
Random seed.
If not provided, it will be populated based on the global seed of the pipeline.