27

I have two numpy arrays with three dimensions (3 x 4 x 5) and I want to concatenate them so the result has four dimensions (3 x 4 x 5 x 2). In Matlab, this can be done with cat(4, a, b), but not in Numpy.

For example:

a = ones((3,4,5))
b = ones((3,4,5))
c = concatenate((a,b), axis=3) # error!

To clarify, I wish c[:,:,:,0] and c[:,:,:,1] to correspond to the original two arrays.

16

What about

c = np.stack((a,b), axis=3)
  • 2
    This function was added in numpy version 1.10 and make this operation more elegant. – Marijn van Vliet Nov 28 '17 at 8:16
28

Here you go:

import numpy as np
a = np.ones((3,4,5))
b = np.ones((3,4,5))
c = np.concatenate((a[...,np.newaxis],b[...,np.newaxis]),axis=3)
  • 3
    Accepting this one for being slightly more readable. Plus it releaved me of my ignorance of the ... operator. – Marijn van Vliet Jan 17 '12 at 17:11
  • 7
    If you have a sequence of arrays that you want to stack this way you can use: c = np.concatenate([aux[..., np.newaxis] for aux in sequence_of_arrays], axis=3) – Tom Pohl Feb 13 '14 at 9:08
  • 6
    More generally, you can use axis=-1 regardless of the number of dimensions in the original array. – 1'' Mar 11 '15 at 3:25
12

How about the following:

c = concatenate((a[:,:,:,None],b[:,:,:,None]), axis=3)

This gives a (3 x 4 x 5 x 2) array, which I believe is laid out in the manner you require.

Here, None is synonymous to np.newaxis: Numpy: Should I use newaxis or None?

edit As suggested by @Joe Kington, the code could be cleaned up a little bit by using an ellipsis:

c = concatenate((a[...,None],b[...,None]), axis=3)
  • beat me by a couple of seconds. . .dammit :-) I'll blame it on typing out np.newaxis, instead of None +1 to you – JoshAdel Jan 17 '12 at 17:08
  • @JoshAdel: LOL, but you've saved on not having to type all those annoying colons! :-) – NPE Jan 17 '12 at 17:09
  • Works like a charm. – Marijn van Vliet Jan 17 '12 at 17:11
8

The accepted answer above is great. But I'll add the following because I'm a math dork and it's a nice use of the fact that a.shape is a.T.shape[::-1]...i.e. taking a transpose reverses the order of the indices of a numpy array. So if you have your building blocks in an array called blocks, then the solution above is:

new = np.concatenate([block[..., np.newaxis] for block in blocks],
                     axis=len(blocks[0].shape))

but you could also do

new2 = np.array([block.T for block in blocks]).T

which I think reads more cleanly. It's worth noting that the already-accepted answer runs more quickly:

%%timeit
new = np.concatenate([block[..., np.newaxis] for block in blocks],
                     axis=len(blocks[0].shape))
1000 loops, best of 3: 321 µs per loop

while

%%timeit
new2 = np.array([block.T for block in blocks]).T
1000 loops, best of 3: 407 µs per loop
  • 1
    That's a lovely, creative solution. – Marijn van Vliet Feb 3 '15 at 12:07
  • This is what I needed and it is agnostic of the total number of dimensions for any numpy array. Thanks! – rayryeng - Reinstate Monica Nov 23 '16 at 7:00
1

This works for me:

 c = numpy.array([a,b])

Though it would be nice if it worked your way, too.

  • I tried that, but it results in a (2 x 3 x 4 x 5) array. Close, but not quite. – Marijn van Vliet Jan 17 '12 at 16:56
0

It's not necessarily the most elegant, but I've used variations of

c = rollaxis(array([a,b]), 0, 4)

in the past.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.