Is there a built in function to calculate efficiently all pairwaise dot products of two tensors in Pytorch? e.g.
input - tensor A (shape NxD)
tensor B (shape NxD)

output - tensor C (shape NxN) such that C_i,j = torch.dot(A_i, B_j) ?


Isn't it simply

C = torch.mm(A, B.T)  # same as C = A @ B.T

A very flexible tool for matrix/vector/tensor dot products is torch.einsum:

C = torch.einsum('id,jd->ij', A, B)
  • 1
    Did you mean torch.mm(A, B.T)?
    – Ivan
    Jan 28 at 11:26
  • @Ivan is there a difference between torch.mm, torch.bmm and torch.dot for 2d tensors?
    – Shai
    Jan 28 at 11:29
  • @Ivan one can always use the more general torch.tensordot and my personal favorite torch.einsum...
    – Shai
    Jan 28 at 11:30
  • I believe torch.dot only works with 1D tensors. As for torch.bmm, it expects a batch axis, i.e. a third axis.
    – Ivan
    Jan 28 at 11:32
  • @Ivan thanks for correcting me. updated the answer
    – Shai
    Jan 28 at 11:34

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.