I am using numpy and i want to generate an array of size n with random integers from a to b [upper bound exclusive] that are not in the array arr (if it helps, all values in arr are unique). I want the probability to be distributed uniformly among the other possible values. I am aware I can do it in this way:

randlist = np.random.randint(a, b, n)
while np.intersect1d(randlist, arr).size > 0:
    randlist = np.random.randint(a, b, n)

But this seems really inefficent. What would be the fastest way to do this?

  • 1
    Try keeping the excluded elements in a set instead. – Alex Hall Aug 22 at 12:42
  • How would that help? @AlexHall – ѕняєє ѕιиgнι Aug 22 at 12:44

Simplest vectorized way would be with np.setdiff1d + np.random.choice -

c = np.setdiff1d(np.arange(a,b),arr)
out = np.random.choice(c,n)

Another way with masking -

mask = np.ones(b-a,dtype=bool)
mask[arr-a] = 0
idx = np.flatnonzero(mask)+a
out = idx[np.random.randint(0,len(idx),n)]
  • Which method would be faster? – ѕняєє ѕιиgнι Aug 22 at 13:00
  • 1
    @ѕняєєѕιиgнι Would depend a lot on your a,b and arr values and their lengths. So, can you test out with your dataset? – Divakar Aug 22 at 13:02
  • Shouldn't that be out = a + idx ...? – Paul Panzer Aug 22 at 13:08
  • @PaulPanzer Yup, thanks! Fixed it. – Divakar Aug 22 at 13:10

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