Fastest way to reorder a numpy array across multiple axes using index arrays

Suppose I have some array `A`, where `A.shape = (x0,...,xn,r)`.

I want to 'unscramble' `A` by reordering it in the dimensions `{x0,...,xn}` according to a corresponding array of indices `ind`, where `ind.shape = (n,A.size)` . The order of the last dimension, `r`, is not specified.

Here's the best way I've come up with so far, but I think you could do much better! Could I, for example, get a reordered view of `A` without copying it?

``````import numpy as np
def make_fake(n=3,r=3):
A = np.array([chr(ii+97) for ii in xrange(n**2)]
).repeat(r).reshape(n,n,r)
ind = np.array([v.repeat(r).ravel() for v in np.mgrid[:n,:n]])
return A,ind

def scramble(A,ind):
order = np.random.permutation(A.size)
ind_shuf = ind[:,order]
A_shuf = A.flat[order].reshape(A.shape)
return A_shuf,ind_shuf

def unscramble(A_shuf,ind_shuf):
A = np.empty_like(A_shuf)
for rr in xrange(A.shape[0]):
for cc in xrange(A.shape[1]):
A[rr,cc,:] = A_shuf.flat[
(ind_shuf[0] == rr)*(ind_shuf[1] == cc)
]
return A
``````

Example:

`````` >>> AS,indS = scramble(*make_fake())
>>> print AS,'\n'*2,indS
[[['e' 'a' 'i']
['a' 'c' 'f']
['i' 'f' 'i']]

[['b' 'd' 'h']
['f' 'c' 'b']
['g' 'h' 'c']]

[['g' 'd' 'b']
['e' 'h' 'd']
['a' 'g' 'e']]]

[[1 0 2 0 0 1 2 1 2 0 1 2 1 0 0 2 2 0 2 1 0 1 2 1 0 2 1]
[1 0 2 0 2 2 2 2 2 1 0 1 2 2 1 0 1 2 0 0 1 1 1 0 0 0 1]]

>>> AU = unscramble(AS,indS)
>>> print AU

[[['a' 'a' 'a']
['b' 'b' 'b']
['c' 'c' 'c']]

[['d' 'd' 'd']
['e' 'e' 'e']
['f' 'f' 'f']]

[['g' 'g' 'g']
['h' 'h' 'h']
['i' 'i' 'i']]]
``````
-
What's `prod`? It can't be numpy's `prod`; do you mean x0*x1*x2*...*xn? – user2357112 Jul 3 '13 at 2:06
Ah, well spotted - that was a mistake! I've corrected the question. – ali_m Jul 3 '13 at 2:12
What do the elements of the index array mean? – user2357112 Jul 3 '13 at 2:14
In this particular case `A` is an array of experimental measurements where dimensions `{x0,...,xN}` correspond to experiment parameters and `r` corresponds to repeat measures. The measurements were recorded in a randomised order, and I want to 'unrandomise' my data by reordering according to each of the experiment parameters. As in the example I gave, `ind` specifies the order of the elements in each dimension of the sorted array. – ali_m Jul 3 '13 at 2:20
in your example: As.shape is (3, 3, 3), this means r = 3, n = 1, x0 = 3, x1 = 3, but indS.shape is (2, 27), this means n = 2, x0*x1*x2 = 27. Which one is correct? – HYRY Jul 3 '13 at 2:49

``````def unscramble(A_shuf,ind_shuf):
You essentially have the rank of each item in the form of n indices, ie a = (0, 0), b = (0, 1), c = (0, 2), d = (1, 0) ... and so on. If you argsort the ranks you'll the the reordering you need to put the items in ascending order. You could use lexsort or you could use `numpy.ravel_multi_index` to get the ranks as integers and apply the argsort on the integer ranks. Let me know if the explanation isn't clear.
Two very good solutions - `np.lexsort` is a new one for me – ali_m Jul 3 '13 at 9:31