# Selecting indices for a 2d array in numpy

This works quite well in 1 dimension:

``````# This will sort bar by the order of the values in foo
(Pdb) bar = np.array([1,2,3])
(Pdb) foo = np.array([5,4,6])
(Pdb) bar[np.argsort(foo)]
array([2, 1, 3])
``````

But how do I do that in two dimensions? Argsort works nicely, but the select no longer works:

``````(Pdb) foo = np.array([[5,4,6], [9,8,7]])
(Pdb) bar = np.array([[1,2,3], [1,2,3]])
(Pdb)  bar[np.argsort(foo)]
*** IndexError: index (2) out of range (0<=index<=1) in dimension 0
(Pdb)
``````

I would expect this to output:

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

Any clue how to do it?

Thanks! /YGA

Edit: `take()` would seem to do the right thing, but it really only takes elements from the first row (super confusing).

You can see that if I change the values of bar:

``````(Pdb) bar = np.array([["1","2","3"], ["A", "B", "C"]])
(Pdb) bar.take(np.argsort(foo))
array([['2', '1', '3'],
['3', '2', '1']],
dtype='|S1')
(Pdb)
``````
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`bar[[[0],[1]], np.argsort(foo)]` seems to do what you want, though. – Alok Singhal Jan 7 '10 at 2:34
@Alok: yes, but the strategy seemed to fail on a more complicated example (I also have to say I find it somewhat cryptic). – YGA Jan 7 '10 at 21:15
@YGA: Can you tell us what the complicated example is? I will explain the method in more detail later today, if you would like. – Alok Singhal Jan 7 '10 at 21:21

`bar.take(np.argsort(foo))` produced your desired output, so you should take a look at its documentation to make sure it actually does what you think you want.

Edit:

Try this: `bar.take(np.argsort(foo.ravel()).reshape(foo.shape))`

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(tried to add a comment, but it was misformatted because you can't have code in comments. See edit above) – YGA Jan 7 '10 at 1:16
Right you are - it takes based on the flattened dimensions, and 0, 1, and 2 all lie in the first row of that array. Here, this might work... – kwatford Jan 7 '10 at 1:41
Very nice! Thanks! – YGA Jan 7 '10 at 21:14
Does not work, always gives the 1st row of `bar` re-ordered differently. – Ηλίας Jun 15 '11 at 9:49

You want

``````bar[[[0],[1]], np.argsort(foo)]
``````

This is because you need two indices to index `bar`. The `[[0], [1]]` is to get correct broadcasting. See this post on numpy-discussion mailing list for exactly the same question and the answer.

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A nice generic solution (with n rows to sort) is offered at this post, i.e.,

``````bar[np.arange(foo.shape[0])[:,None], np.argsort(foo)]
``````
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