Suppose I have a list of indices and wish to modify an existing array with this list. Currently the only way I can do this is by using a for loop as follows. Just wondering if there is a faster/ efficient way.

a = torch.randn(5,3)
idx = torch.Tensor([[1,2], [3,2]], dtype=torch.long)
for i,j in idx:
    a[i,j] = 1

I initially assumed that gather or index_select would go some way in answering this question, but looking at documentation this doesn't seem to be the answer.

In my particular case, a is a 5 dimensional vector and idx is a Nx5 vector. So the output (after subscripting with something like a[idx]) I'd expect is a (N,) shaped vector.


Thanks to @shai below, the answer that I was seeking was: a[idx.t().chunk(chunks=2,dim=0)]. Taken from this SO answer.

1 Answer 1


It's quite simple

a[idx[:,0], idx[:,1]] = 1

You can find a more general solution in this thread.

  • Would this scale even if say a had 5 dimensions. Will wait to see if there is a more general answer before accepting. Sorry for adding the additional requirement late.
    – sachinruk
    Oct 22, 2018 at 8:50
  • 1
    @sachinruk please see the added link.
    – Shai
    Oct 22, 2018 at 9:59

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.