I was wondering if there is any more efficient alternative for the below code, without using the "for" loop in the 4th line?

import torch
n, d = 37700, 7842
k = 4
sample = torch.cat([torch.randperm(d)[:k] for _ in range(n)]).view(n, k)
mask = torch.zeros(n, d, dtype=torch.bool)
mask.scatter_(dim=1, index=sample, value=True)

Basically, what I am trying to do is to create an n by d mask tensor, such that in each row exactly k random elements are True.

1 Answer 1


Here's a way to do this with no loop. Let's start with a random matrix where all elements are drawn iid, in this case uniformly on [0,1]. Then we take the k'th quantile for each row and set all smaller or equal elements to True and the rest to False on each row:

rand_mat = torch.rand(n, d)
k_th_quant = torch.topk(rand_mat, k, largest = False)[0][:,-1:]
mask = rand_mat <= k_th_quant

No loop needed :) x2.1598 faster than the code you attached on my CPU.

  • Nice answer, however, I think I should have provided you with the real values for n, d, and k which I am actually using in my code (I edit the question). With n=37700, d=7842, and k=4, my own code runs around 5s on my CPU, while yours takes around 18s.
    – sisaman
    Oct 2, 2020 at 17:59
  • 1
    Thanks, so I've updated it and now it is even better and faster for your new values of n,d and k. Mine takes 2.44s while yours takes 5.27s.
    – Gil Pinsky
    Oct 2, 2020 at 18:40

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