# How to stack numpy arrays alternately/slicewise along a specific axis?

How can I stack arrays in an alternating fashion? Consider the following example with three arrays:

``````import numpy as np
one = np.ones((5, 2, 2))
two =  np.ones((5, 2, 2))*2
three = np.ones((5, 2, 2))*3
``````

I would like to create a new array `result` with shape `(15, 2, 2)` which is formed by alternately taking a slice from each of the given arrays, i.e. the result should look like:

``````result = one
result = two
result = three
result = one
result = two
result = three
result = one
etc...
``````

The arrays above are just an example to illustrate the question, I am not looking for a way to create this specific result array. What is the easiest way to achieve this, at best with specifying a stacking axis?

Of course, it is possible to do some loops but it seems rather inconvenient...

• or `np.concatenate((ones, twos, threes), 1).reshape(15,2,2)` – Mstaino Aug 1 at 14:13

With `np.hstack` and then reshape (with -1 for the first axis appended with the lengths along last two axes for a generic solution) -

``````np.hstack([one,two,three]).reshape((-1,)+one.shape[1:])
``````

You may wanne take a look at `np.stack()` i.e.:

``````np.stack([one, two, three], axis=1).reshape(15, 2, 2)
``````

I think you are looking for np.vstack

``````np.vstack((one,two,three))
``````

With selectable axis:

``````# example arrays
a,b,c = np.multiply.outer([1,2,3],np.ones((5,2,2)))
# axis
k = 1

np.stack([a,b,c],k+1).reshape(*(-(k==j) or s for j,s in enumerate(a.shape)))
# array([[[1., 1.],
#         [2., 2.],
#         [3., 3.],
#         [1., 1.],
#         [2., 2.],
#         [3., 3.]],
#
#        [[1., 1.],
...
``````