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Randn_like

Usage

torch_randn_like(
  input,
  dtype = NULL,
  layout = NULL,
  device = NULL,
  requires_grad = FALSE,
  memory_format = torch_preserve_format()
)

Arguments

input

(Tensor) the size of input will determine size of the output tensor.

dtype

(torch.dtype, optional) the desired data type of returned Tensor. Default: if NULL, defaults to the dtype of input.

layout

(torch.layout, optional) the desired layout of returned tensor. Default: if NULL, defaults to the layout of input.

device

(torch.device, optional) the desired device of returned tensor. Default: if NULL, defaults to the device of input.

requires_grad

(bool, optional) If autograd should record operations on the returned tensor. Default: FALSE.

memory_format

(torch.memory_format, optional) the desired memory format of returned Tensor. Default: torch_preserve_format.

randn_like(input, dtype=NULL, layout=NULL, device=NULL, requires_grad=False, memory_format=torch.preserve_format) -> Tensor

Returns a tensor with the same size as input that is filled with random numbers from a normal distribution with mean 0 and variance 1. torch_randn_like(input) is equivalent to torch_randn(input.size(), dtype=input.dtype, layout=input.layout, device=input.device).