# combining 2D arrays to 3D arrays

Hello I have 3 numpy arrays as given below.

``````>>> print A
[[ 1.  0.  0.]
[ 3.  0.  0.]
[ 5.  2.  0.]
[ 2.  0.  0.]
[ 1.  2.  1.]]
>>> print B
[[  5.   9.   9.]
[ 37.   8.   9.]
[ 49.   8.   3.]
[  3.   3.   1.]
[  4.   4.   5.]]
>>>
>>> print C
[[ 0.  0.  0.]
[ 0.  6.  0.]
[ 1.  4.  6.]
[ 6.  2.  0.]
[ 0.  5.  4.]]
``````

I would like to combine them as

``````[[[ 1.  0.  0.]
[ 5.   9.   9.]
[ 0.  0.  0.]]

[[ 3.  0.  0.]
[ 37.   8.   9.]
[ 0.  6.  0.]]

[[ 5.  2.  0.]
[ 49.   8.   3.]
[ 1.  4.  6.]]

[[ 2.  0.  0.]
[  3.   3.   1.]
[ 6.  2.  0.]

[[ 1.  2.  1.]
[ 4.   4.   5.]
[ 0.  5.  4.]]]
``````

That is I would like to take one row from each array. Could anyone tell me a simple way to do it? I already tried `hstack`, `vstack`. But they are not giving the desired result.

Thanks !

-

A solution using numpy `dstack`:

``````>>> import numpy as np
>>> np.dstack((a,b,c)).swapaxes(1,2)
array([[[[  1.  0.  0.],
[  5.  9.  9.],
[  0.  0.  0.]],

[[  3.  0.  0.],
[ 37.  8.  9.],
[  0.  6.  0.]],

[[  5.  2.  0.],
[ 49.  8.  3.],
[  1.  4.  6.]],

[[  2.  0.  0.],
[  3.  3.  1.],
[  6.  2.  0.],

[[  1.  2.  1.],
[  4.  4.  5.],
[  0.  5.  4.]]])
``````
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oh great it works ! thanks ! – Raj Sep 3 '13 at 15:05
``````>>> np.hstack([a,b,c]).reshape((5,3,3))
array([[[  1.,   0.,   0.],
[  5.,   9.,   9.],
[  0.,   0.,   0.]],

[[  3.,   0.,   0.],
[ 37.,   8.,   9.],
[  0.,   6.,   0.]],

[[  5.,   2.,   0.],
[ 49.,   8.,   3.],
[  1.,   4.,   6.]],

[[  2.,   0.,   0.],
[  3.,   3.,   1.],
[  6.,   2.,   0.]],

[[  1.,   2.,   1.],
[  4.,   4.,   5.],
[  0.,   5.,   4.]]])
``````
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This is roughly twice as fast as my answer, +1! – Ophion Sep 3 '13 at 20:20

I think I got something that works :

``````>>> print np.hstack([A[:, None, :], B[:, None, :], C[:, None, :]])
[[[ 1  0  0]
[ 5  9  9]
[ 0  0  0]]

[[ 3  0  0]
[37  8  9]
[ 0  6  0]]

[[ 5  2  0]
[49  8  3]
[ 1  4  6]]

[[ 2  0  0]
[ 3  3  1]
[ 6  2  0]]

[[ 1  2  1]
[ 4  4  5]
[ 0  5  4]]]
``````
-
``````>>> import numpy as np
>>> A = np.array([[1,0,0],[3,0,0],[5,2,0],[2,0,0],[1,2,1]])
>>> B = np.array([[5,9,9],[37,8,9],[49,8,3],[3,3,1],[4,4,5]])
>>> C = np.array([[0,0,0],[0,6,0],[1,4,6],[6,2,0],[0,5,4]])
>>> np.array([A,B,C]).swapaxes(1,0)

array([[[ 1,  0,  0],
[ 5,  9,  9],
[ 0,  0,  0]],

[[ 3,  0,  0],
[37,  8,  9],
[ 0,  6,  0]],

[[ 5,  2,  0],
[49,  8,  3],
[ 1,  4,  6]],

[[ 2,  0,  0],
[ 3,  3,  1],
[ 6,  2,  0]],

[[ 1,  2,  1],
[ 4,  4,  5],
[ 0,  5,  4]]])
``````

I did a comparison of the answers using Ipython `%%timeit`:

``````np.array([A,B,C]).swapaxes(1,0)
100000 loops, best of 3: 18.2 us per loop

np.dstack((A,B,C)).swapaxes(1,2)
100000 loops, best of 3: 19.8 us per loop

np.hstack([A,B,C]).reshape((5,3,3))
100000 loops, best of 3: 14.8 us per loop

np.hstack([A[:, None, :], B[:, None, :], C[:, None, :]])
100000 loops, best of 3: 17.2 us per loop
``````

It looks like @Viktor Kerkez's answer is fastest.

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It does work for me - Can you double check? I've updated with the numbers given in the question. – atomh33ls Sep 4 '13 at 7:53

No need to use `vstack`, `hstack`. Just swap the axis using `np.swapaxes`:

``````>>> d=array([a, b, c])
>>> d
array([[[ 1,  0,  0],
[ 3,  0,  0],
[ 5,  2,  0],
[ 2,  0,  0],
[ 1,  2,  1]],

[[ 5,  9,  9],
[37,  8,  9],
[49,  8,  3],
[ 3,  3,  1],
[ 4,  4,  5]],

[[ 0,  0,  0],
[ 0,  6,  0],
[ 1,  4,  6],
[ 6,  2,  0],
[ 0,  5,  4]]])
>>> swapaxes(d, 0, 1)
array([[[ 1,  0,  0],
[ 5,  9,  9],
[ 0,  0,  0]],

[[ 3,  0,  0],
[37,  8,  9],
[ 0,  6,  0]],

[[ 5,  2,  0],
[49,  8,  3],
[ 1,  4,  6]],

[[ 2,  0,  0],
[ 3,  3,  1],
[ 6,  2,  0]],

[[ 1,  2,  1],
[ 4,  4,  5],
[ 0,  5,  4]]])
``````
-