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I have two arrays in numpy. The first is a 2d array, which can be thought of as a list of vectors. The second is a 1d array, which can be thought of as a list of indices into the 2d array.

I want to select elements of the 2d array using the indices of the 1d array. Right now I have been doing

        z=rnd.rand(2,10) # a list of 2d vectors of length 10
        z_idx=rnd.randint(2,size=z.shape[1]) #indices selecting a dimension of the 2d vector

        result=np.array([z[z_idx[i],i] for i in xrange(len(z_idx))])

But this is very slow.

Is there a better way to do this in numpy?

share|improve this question
In numpy, you can select elements of an array using (bool) masks. Have you looked into that? Generally spoken, you can create such a mask from your 1D-array and then apply this mask to the 2D-array. – Jan-Philip Gehrcke Aug 31 '12 at 13:27
up vote 5 down vote accepted

Probably the simplest method:

result = z[z_idx].diagonal()

Maybe a little more efficient would be to use arange:

result = z[z_idx, np.arange(z_idx.size)]

More appropriate but equivalent is np.indices:

result = z[z_idx, np.indices(z_idx.shape)[0]]
share|improve this answer
Note that the first method will create a (len(z_idx), len(z_idx)) temporary array, which might be an issue. – Pierre GM Aug 31 '12 at 14:51
very nice! Thanks – user1149913 Aug 31 '12 at 15:56

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