# Sort 3D array by specific dimension and element

if I have a 3D array; such as:

``````[
[
[10,2],
[5,3],
[4,4]
],
[
[7,6],
[4,2],
[5,8]
]
]
``````

I want to sort them according to 3rd dim & 1st value.

It means, the result should be

``````[
[
[4,4],
[5,3],
[10,2]
],
[
[4,2],
[5,8],
[7,6]
]
]
``````

How could I make it in python?

Thx

## 2 Answers

A way to do this is by using the list.sort method or the sorted function together with an appropriate value of the key parameter (see the documentation:howto/sorting).

The Python documentation does a great job explaining the purpose of key parameter:

"Both list.sort() and sorted() have a key parameter to specify a function to be called on each list element prior to making comparisons."

For example, let us sort the first item of your list:

``````first=[[10, 2], [5, 3], [4, 4]]

def by_first(element):

"""
Sort a two-dimensional list by the first element

Param: element of the list i.e [10, 2]
Return: first item of element
"""

return element
``````

So, to sort the above list we do this

``````sorted(first,key=by_first)
``````

Finally, to solve the initial problem(three-dimensional list) we just have to do the above for each item of your list

``````list_numbers = [[[10, 2], [5, 3], [4, 4]], [[7, 6], [4, 2], [5, 8]]]

[sorted(entry, key=by_first) for entry in list_numbers]
``````

If you are looking for something more related to arrays (not lists) you can try the following:

``````import numpy as np

a = np.array([[[10,2],
[5,3],
[4,4]],

[[7,6],
[4,2],
[5,8]]])
b = np.zeros(a.shape)

sorted_idx = np.argsort(a, axis=1)

for i in range(a.shape):
for j in range(a.shape):
b[i, j] = a[i, sorted_idx[i, j, 0]]

print(b.astype(int))

# [[[ 4  4]
#   [ 5  3]
#   [10  2]]
#
#  [[ 4  2]
#   [ 5  8]
#   [ 7  6]]]
``````

Note that actually, according to your expected output, you need to sort by the first element of `axis=1` not the last axis.