# Select One Element in Each Row of a Numpy Array by Column Indices

Is there a better way to get the "output_array" from the "input_array" and "select_id" ?

Can we get rid of `range( input_array.shape[0] )` ?

``````>>> input_array = numpy.array( [ [3,14], [12, 5], [75, 50] ] )
>>> select_id = [0, 1, 1]
>>> print input_array
[[ 3 14]
[12  5]
[75 50]]

>>> output_array = input_array[  range( input_array.shape[0] ), select_id ]
>>> print output_array
[ 3  5 50]
``````
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It's a sick way of doing it, and definitely not better than what you have, but `np.diagonal(input_array[:, select_id])` will also get you `array([ 3, 5, 50])`. –  Jaime Jun 12 '13 at 20:58

You can choose from given array using `numpy.choose` which constructs an array from an index array (in your case `select_id`) and a set of arrays (in your case `input_array`) to choose from. However you may first need to transpose `input_array` to match dimensions. The following shows a small example:

``````In [101]: input_array
Out[101]:
array([[ 3, 14],
[12,  5],
[75, 50]])

In [102]: input_array.shape
Out[102]: (3, 2)

In [103]: select_id
Out[103]: [0, 1, 1]

In [104]: output_array = np.choose(select_id, input_array.T)

In [105]: output_array
Out[105]: array([ 3,  5, 50])
``````
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I think enumerate is handy.

``````[input_array[enum, item] for enum, item in enumerate(select_id)]
``````
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time-saving by in-line loop is always nice. i really need numpy for processing a lot of data though... –  Bystander Jun 13 '13 at 19:03

``````[input_array[x,y] for x,y in zip(range(len(input_array[:,0])),select_id)]