torch.addbmm
-
torch.addbmm(input, batch1, batch2, *, beta=1, alpha=1, out=None) → Tensor
-
Performs a batch matrix-matrix product of matrices stored in
batch1
andbatch2
, with a reduced add step (all matrix multiplications get accumulated along the first dimension).input
is added to the final result.batch1
andbatch2
must be 3-D tensors each containing the same number of matrices.If
batch1
is a tensor,batch2
is a tensor,input
must be broadcastable with a tensor andout
will be a tensor.If
beta
is 0, theninput
will be ignored, andnan
andinf
in it will not be propagated.For inputs of type
FloatTensor
orDoubleTensor
, argumentsbeta
andalpha
must be real numbers, otherwise they should be integers.This operator supports TensorFloat32.
On certain ROCm devices, when using float16 inputs this module will use different precision for backward.
- Parameters
- Keyword Arguments
Example:
>>> M = torch.randn(3, 5) >>> batch1 = torch.randn(10, 3, 4) >>> batch2 = torch.randn(10, 4, 5) >>> torch.addbmm(M, batch1, batch2) tensor([[ 6.6311, 0.0503, 6.9768, -12.0362, -2.1653], [ -4.8185, -1.4255, -6.6760, 8.9453, 2.5743], [ -3.8202, 4.3691, 1.0943, -1.1109, 5.4730]])
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https://pytorch.org/docs/2.1/generated/torch.addbmm.html