# Permuting numpy's 2d array indexes

are there any numpy function or clever use of views to accomplish what the following function do?

`````` import numpy as np

def permuteIndexes(array, perm):
newarray = np.empty_like(array)
max_i, max_j = newarray.shape
for i in xrange(max_i):
for j in xrange(max_j):
newarray[i,j] = array[perm[i], perm[j]]
return newarray
``````

That is, for a given permutation of the indexes of the matrix in a list `perm`, this function calculates the result of applying this permutation to the indexes of a matrix.

-

``````def permutateIndexes(array, perm):
return array[perm][:, perm]
``````

Actually, this is better as it does it in a single go:

``````def permutateIndexes(array, perm):
return array[np.ix_(perm, perm)]
``````

To work with non-square arrays:

``````def permutateIndexes(array, perm):
return array[np.ix_(*(perm[:s] for s in array.shape))]
``````
-
hummm! I must to learn how to use those views properly. Is there any guide around? –  Rafael S. Calsaverini Aug 24 '12 at 18:42
@RafaelS.Calsaverini definitely read the Tentative NumPy Tutorial if you haven't already. –  ecatmur Aug 24 '12 at 18:48