Tensors
Tensors are similar to NumPy’s ndarrays, with the addition being that Tensors can also be used on a GPU to accelerate computing.
Construct a 5x3 matrix, uninitialized:
Construct a randomly initialized matrix:
Construct a matrix filled zeros and of dtype long:
Construct a tensor directly from data:
or create a tensor based on an existing tensor. These methods will reuse properties of the input tensor, e.g. dtype, unless new values are provided by user
Get its size:
Note:
Operations
Addition: syntax 1
Addition: syntax 2
Addition: providing an output tensor as argument
Addition: in-place
Note:
You can use standard NumPy-like indexing
Resizing: If you want to resize/reshape tensor, you can use torch.view:
Out:
If you have a one element tensor, use .item() to get the value as a Python number
Numpy Bridge
The Torch Tensor and NumPy array will share their underlying memory locations, and changing one will change the other.
Converting a Torch Tensor to a NumPy Array
Out:
Converting NumPy Array to Torch Tensor
out:
All the Tensors on the CPU except a CharTensor support converting to NumPy and back.
CUDA Tensors
Tensors can be moved onto any device using the .to method.
out: