# Concatenate two numpy arrays in the 4th dimension

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.

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

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)
``````
• 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
• 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
• More generally, you can use `axis=-1` regardless of the number of dimensions in the original array. – 1'' Mar 11 '15 at 3:25

``````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

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.shape))
``````

but you could also do

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

``````%%timeit
new = np.concatenate([block[..., np.newaxis] for block in blocks],
axis=len(blocks.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
``````
• 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 Nov 23 '16 at 7:00

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

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

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

in the past.