# Return common element indices between two numpy arrays

I have two arrays, a1 and a2. Assume `len(a2) >> len(a1)`, and that a1 is a subset of a2.

I would like a quick way to return the a2 indices of all elements in a1. The time-intensive way to do this is obviously:

``````from operator import indexOf
indices = []
for i in a1:
indices.append(indexOf(a2,i))
``````

This of course takes a long time where a2 is large. I could also use numpy.where() instead (although each entry in a1 will appear just once in a2), but I'm not convinced it will be quicker. I could also traverse the large array just once:

``````for i in xrange(len(a2)):
if a2[i] in a1:
indices.append(i)
``````

But I'm sure there is a faster, more 'numpy' way - I've looked through the numpy method list, but cannot find anything appropriate.

D

-

``````numpy.nonzero(numpy.setmember1d(a2, a1))[0]
``````

This should be fast. From my basic testing, it's about 7 times faster than your second code snippet for `len(a2) == 100`, `len(a1) == 10000`, and only one common element at index 45. This assumes that both `a1` and `a2` have no repeating elements.

-
I compared your solution to Dave Kirby's above, with this one being approx 1.35X faster for len(a2) == 12347424, len(a1) == 1338, so this solution get's my vote - thanks! – Dave Feb 25 '10 at 11:57
For anyone reading this: it seems like `setmember1d` has been renamed to `in1d` since numpy 1.4. – Alok Singhal Oct 16 '12 at 16:26
``````index = in1d(a2,a1)
result = a2[index]
``````
-

``````wanted = set(a1)