# Python Numpy 2-dimensional array iteration

Would like to build a list of indices into a 2 dimensional bool_ array, where True.

``````import numpy
arr = numpy.zeros((6,6), numpy.bool_)
arr[2,3] = True
arr[5,1] = True
results1 = [[(x,y) for (y,cell) in enumerate(arr[x].flat) if cell] for x in xrange(6)]
results2 = [(x,y) for (y,cell) in enumerate(arr[x].flat) if cell for x in xrange(6)]
``````

results 1:

``````[[], [], [(2, 3)], [], [], [(5, 1)]]
``````

results 2 is completely wrong

Goal:

``````[(2, 3),(5, 1)]
``````

Any way to do this without flattening the list afterwards, or any better way to do this in general?

-

I think the function you're looking for is numpy.where. Here's an example:

``````>>> import numpy
>>> arr = numpy.zeros((6,6), numpy.bool_)
>>> arr[2,3] = True
>>> arr[5,1] = True
>>> numpy.where(arr)
(array([2, 5]), array([3, 1]))
``````

You can turn this back into an index like this:

``````>>> numpy.array(numpy.where(arr)).T
array([[2, 3],
[5, 1]])
``````
-
Oh dear, hadn't heard of that. zip(*numpy.where(arr)) is working nicely. I'll leave this open for awhile to hear if anyone else has alternatives. –  user1012037 Nov 14 '11 at 17:51
`np.where()` with a single argument is equivalent to `np.nonzero()`. To transform to the OP's format: `np.transpose(np.nonzero(a))` that is equivalent to `np.argwhere(a)`. –  J.F. Sebastian Nov 15 '11 at 9:20
``````>>> import numpy as np