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I have something like

m = array([[1, 2],
            [4, 5],
            [7, 8],
            [6, 2]])


select = array([0,1,0,0])

My target is

result = array([1, 5, 7, 6])

I tried _ix as I read at Simplfy row AND column extraction, numpy, but this did not result in what I wanted.

p.s. Please change the title of this question if you can think of a more precise one.

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I'd suggest "Filtering 2D array by a list" as a title. – Adobe Mar 27 '12 at 8:30

5 Answers 5

up vote 2 down vote accepted

What about using python?

result = array([subarray[index] for subarray, index in zip(m, select)])
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The numpy way to do this is by using np.choose or fancy indexing/take (see below):

m = array([[1, 2],
           [4, 5],
           [7, 8],
           [6, 2]])
select = array([0,1,0,0])

result = np.choose(select, m.T)

So there is no need for python loops, or anything, with all the speed advantages numpy gives you. m.T is just needed because choose is really more a choise between the two arrays np.choose(select, (m[:,0], m[:1])), but its straight forward to use it like this.

Using fancy indexing:

result = m[np.arange(len(select)), select]

And if speed is very important np.take, which works on a 1D view (its quite a bit faster for some reason, but maybe not for these tiny arrays):

result = m.take(select+np.arange(0, len(select) * m.shape[1], m.shape[1]))
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As of this writing (np 1.9.2), np.choose() may have a serious limitation of a maximum of 32 elements. If the longer dimension of m exceeds this value, then I receive a "ValueError: Need between 2 and (32) array objects (inclusive)." – hodgkin-huxley Jun 12 at 12:57

I prefer to use NP.where for indexing tasks of this sort (rather than NP.ix_)

What is not mentioned in the OP is whether the result is selected by location (row/col in the source array) or by some condition (e.g., m >= 5). In any event, the code snippet below covers both scenarios.

Three steps:

  1. create the condition array;

  2. generate an index array by calling NP.where, passing in this condition array; and

  3. apply this index array against the source array

>>> import numpy as NP

>>> cnd = (m==1) | (m==5) | (m==7) | (m==6)
>>> cnd
  matrix([[ True, False],
          [False,  True],
          [ True, False],
          [ True, False]], dtype=bool)

>>> # generate the index array/matrix 
>>> # by calling NP.where, passing in the condition (cnd)
>>> ndx = NP.where(cnd)
>>> ndx
  (matrix([[0, 1, 2, 3]]), matrix([[0, 1, 0, 0]]))

>>> # now apply it against the source array   
>>> m[ndx]
  matrix([[1, 5, 7, 6]])

The argument passed to NP.where, cnd, is a boolean array, which in this case, is the result from a single expression comprised of compound conditional expressions (first line above)

If constructing such a value filter doesn't apply to your particular use case, that's fine, you just need to generate the actual boolean matrix (the value of cnd) some other way (or create it directly).

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result = array([m[j][0] if i==0 else m[j][1] for i,j in zip(select, range(0, len(m)))])
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IMHO, this is simplest variant:

m[np.arange(4), select]
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