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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.

torch.manual_seed(0)
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.

Answer

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

1

It's quite simple

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

You can find a more general solution in this thread.

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  • 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

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