# Get indices for all elements in an array in numpy

I'm trying to get a list of the indices for all the elements in an array so for an array of 1000 x 1000 I end up with [(0,0), (0,1),...,(999,999)].

I made a function to do this which is below:

``````def indices(alist):
results = []
ele = alist.size
counterx = 0
countery = 0
x = alist.shape[0]
y = alist.shape[1]
while counterx < x:
while countery < y:
results.append((counterx,countery))
countery += 1
counterx += 1
countery = 0
return results
``````

After I timed it, it seemed quite slow as it was taking about 650 ms to run (granted on a slow laptop). So, figuring that numpy must have a way to do this faster than my mediocre coding, I took a look at the documentation and tried:

``````indices = [k for k in numpy.ndindex(q.shape)]
which took about 4.5 SECONDS (wtf?)
indices = [x for x,i in numpy.ndenumerate(q)]
better, but 1.5 seconds!
``````

Is there a faster way to do this?

Thanks

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how about `np.ndindex`?

``````np.ndindex(1000,1000)
``````

This returns an iterable object:

``````>>> ix = numpy.ndindex(1000,1000)
>>> next(ix)
(0, 0)
>>> next(ix)
(0, 1)
>>> next(ix)
(0, 2)
``````

In general, if you have an array, you can build the index iterable via:

``````index_iterable = np.ndindex(*arr.shape)
``````

Of course, there's always `np.ndenumerate` as well which could be implemented like this:

``````def ndenumerate(arr):
for ix in np.ndindex(*arr.shape):
yield ix,arr[ix]
``````
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Out of idle curiosity, how do the timings for these compare to the timings made by the OP? –  tripleee Jun 29 '13 at 9:02

Have you thought of using itertools? It will generate an iterator for your results, and will almost certainly be optimally fast:

``````import itertools

a = range(1000)
b = range(1000)

product = itertools.product(a, b)

for x in product:
print x

# (0, 0)
# (0, 1)
# ...
# (999, 999)
``````

Notice this didn't require the dependency on `numpy`. Also, notice the fun use of `range` to create a list from 0 to 999.

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good answer assuming it is a true 2d array and not a list of variably sized list (+1) –  Joran Beasley Jun 28 '13 at 20:13
Ah, hmm. Yes. Well, I answered the question the OP asked. I can expand if the question is more general. –  theJollySin Jun 28 '13 at 20:14
From 650 ms down to 326 now thanks! –  Jason White Jun 28 '13 at 20:27

Ahha!

Using numpy to build an array of all combinations of two arrays

Runs in 41 ms as opposed to the 330ms using the itertool.product one!

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