torch.normal¶
-
torch.
normal
(mean, std, *, generator=None, out=None) → Tensor¶ Returns a tensor of random numbers drawn from separate normal distributions whose mean and standard deviation are given.
The
mean
is a tensor with the mean of each output element’s normal distributionThe
std
is a tensor with the standard deviation of each output element’s normal distributionThe shapes of
mean
andstd
don’t need to match, but the total number of elements in each tensor need to be the same.Note
When the shapes do not match, the shape of
mean
is used as the shape for the returned output tensor- Parameters
- Keyword Arguments
generator (
torch.Generator
, optional) – a pseudorandom number generator for samplingout (Tensor, optional) – the output tensor.
Example:
>>> torch.normal(mean=torch.arange(1., 11.), std=torch.arange(1, 0, -0.1)) tensor([ 1.0425, 3.5672, 2.7969, 4.2925, 4.7229, 6.2134, 8.0505, 8.1408, 9.0563, 10.0566])
-
torch.
normal
(mean=0.0, std, *, out=None) → Tensor
Similar to the function above, but the means are shared among all drawn elements.
- Parameters
- Keyword Arguments
out (Tensor, optional) – the output tensor.
Example:
>>> torch.normal(mean=0.5, std=torch.arange(1., 6.)) tensor([-1.2793, -1.0732, -2.0687, 5.1177, -1.2303])
-
torch.
normal
(mean, std=1.0, *, out=None) → Tensor
Similar to the function above, but the standard-deviations are shared among all drawn elements.
- Parameters
- Keyword Arguments
out (Tensor, optional) – the output tensor
Example:
>>> torch.normal(mean=torch.arange(1., 6.)) tensor([ 1.1552, 2.6148, 2.6535, 5.8318, 4.2361])
-
torch.
normal
(mean, std, size, *, out=None) → Tensor
Similar to the function above, but the means and standard deviations are shared among all drawn elements. The resulting tensor has size given by
size
.- Parameters
- Keyword Arguments
out (Tensor, optional) – the output tensor.
Example:
>>> torch.normal(2, 3, size=(1, 4)) tensor([[-1.3987, -1.9544, 3.6048, 0.7909]])