# Sort array's rows by another array in Python

I'm trying to sort the rows of one array by the values of another. For example:

``````import numpy as np
arr1 = np.random.normal(1, 1, 80)
arr2 = np.random.normal(1,1, (80,100))
``````

I want to sort `arr1` in descending order, and to have the current relationship between `arr1` and `arr2` to be maintained (ie, after sorting both, the rows of `arr1[0]` and `arr2[0, :]` are the same).

Use `argsort` as follows:

``````arr1inds = arr1.argsort()
sorted_arr1 = arr1[arr1inds[::-1]]
sorted_arr2 = arr2[arr1inds[::-1]]
``````

This example sorts in descending order.

• Initially this solution was't working with my arrays, but then I realized the `len(arr1)` has to match the rows of `arr2`. For example, I had a (5,) vector and a (2, 5) array, which I wanted to sort column-wise by the first vector. I did this using two transposes like `arr2.T[arr1.argsort()].T`, although there is probably a more elegant solution that doesn't require two transposes. Commented Oct 5, 2018 at 21:41
• Are you sure it sorts in descending order? When I try it, it definitely looks like it's ascending: `arr = np.array([4, 1, 5, 3, 2]); arr[np.argsort(arr)]` gives me the output `[1, 2, 3, 4, 5]`. Commented Oct 6, 2018 at 7:17
• @hellobenallan `argsort` sorts in ascending order, but this solution accesses the indices in reverse order (with `[::-1]`) to give an answer in descending order.
– ZX9
Commented Apr 6, 2019 at 16:48
• @ZX9 You're quite right, and your edits make it much more clear what's going on. Thanks for following up. Commented Apr 8, 2019 at 3:56
• Potentially useful note: to sort like this along an axis, i.e. if you're using `argsort(axis=N)`, you'll have to use numpy's `take_along_axis` instead of advanced slicing to sort. Commented Jun 19, 2021 at 11:32

Use the zip function: `zip( *sorted( zip(arr1, arr2) ) )` This will do what you need.

Now the explanation: `zip(arr1, arr2)` will combine the two lists, so you've got [(0, [...list 0...]), (1, [...list 1...]), ...] Next we run `sorted(...)`, which by default sorts based on the first field in the tuple. Then we run `zip(...)` again, which takes the tuples from sorted, and creates two lists, from the first element in the tuple (from arr1) and the second element (from arr2).