torch.std_mean#
- torch.std_mean(input, dim=None, *, correction=1, keepdim=False, out=None)#
Calculates the standard deviation and mean over the dimensions specified by
dim.dimcan be a single dimension, list of dimensions, orNoneto reduce over all dimensions.The standard deviation () is calculated as
where is the sample set of elements, is the sample mean, is the number of samples and is the
correction.If
keepdimisTrue, the output tensor is of the same size asinputexcept in the dimension(s)dimwhere it is of size 1. Otherwise,dimis squeezed (seetorch.squeeze()), resulting in the output tensor having 1 (orlen(dim)) fewer dimension(s).- Parameters
- Keyword Arguments
correction (int) –
difference between the sample size and sample degrees of freedom. Defaults to Bessel’s correction,
correction=1.Changed in version 2.0: Previously this argument was called
unbiasedand was a boolean withTruecorresponding tocorrection=1andFalsebeingcorrection=0.keepdim (bool, optional) – whether the output tensor has
dimretained or not. Default:False.out (Tensor, optional) – the output tensor.
- Returns
A tuple (std, mean) containing the standard deviation and mean.
Example
>>> a = torch.tensor( ... [[ 0.2035, 1.2959, 1.8101, -0.4644], ... [ 1.5027, -0.3270, 0.5905, 0.6538], ... [-1.5745, 1.3330, -0.5596, -0.6548], ... [ 0.1264, -0.5080, 1.6420, 0.1992]] ... ) # fmt: skip >>> torch.std_mean(a, dim=0, keepdim=True) (tensor([[1.2620, 1.0028, 1.0957, 0.6038]]), tensor([[ 0.0645, 0.4485, 0.8707, -0.0665]]))