# 2D Sorting with NumPy - sort 1 row and have the other follow the sorting

Say I have a NumPy array:

``````[[4 9 2]
[5 1 3]]
``````

I want to sort the bottom row of this array, but have the top row follow the sorting, such that I get:

``````[[9 2 4]
[1 3 5]]
``````

I know that you can sort like this using the sorted() function, but that requires input and output of lists.

Any ideas? Thanks so much!

-

``````import numpy as np
a = np.array([[4,9,2],[5,1,3]])
idx = np.argsort(a[1])
``````

Now you can use idx to index your array:

``````b=a[:,idx]
``````
-
Awesome, thanks so much! That solution was a lot simpler than I was expecting. I was reading through the numpy argsort() examples, and was probably over-thinking this problem. –  woodstock Oct 26 '11 at 22:57

The only (efficient) solution I can think of needs a copy of the original array.

``````import numpy as np
a = np.array([[4,9,2],[5,1,3]])
idx = np.argsort(a[1])
``````

So, that `idx` is the index of the sorted column.

``````c = a.copy()
for i in range(len(idx)):
a[:,i] = c[:,idx[i]]
``````

That should be reasonably fast, but, of course, wastes some memory.

-