Combine NumPy Arrays by Reference

I want to combine two arrays into a new array in O(1). Then, I want to change the values in this new array to change the values in the old arrays.

This is in the context of PyGame's surfarray module, which does not have a function that returns an RGBA (n*m*4) array--only RGB (n*m*3) and A (n*m) arrays separately. Ideally, I would create a new array "RGBA" in O(1) that references the "RGB" and "A" arrays. Changing "RGBA" would change both "RGB" and "A", and so change the surface.

I don't know if this is possible, since I can't think of a way to do it with C. However, I can think of some ideas. For example, maybe there's a numpy array type that encapsulates some subarrays, and internally redirects indexing to the correct one at the C level. This would be fine.

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I'm not familiar with PyGame, but from a quick look at the docs, it seems to internally keep RGBA values as 2D array's of 32 bit ints. Have you tried if using pixels2d and modifying the 8 MSB (or LSB, not sure which) of your resulting array gets what you are after? –  Jaime Jan 8 '13 at 1:50
The only way I know of doing this would be to subclass ndarray - See docs.scipy.org/doc/numpy/user/basics.subclassing.html –  Andrew Marshall Jan 8 '13 at 2:08
If by RGBA, you mean a continuous block of memory, when starting from a two independent blocks (RGB and A as returned by PyGame), then there's no way to do this in O(1). But why do you need RGBA to be a single array? Or, can you start with a continuous block RGBA and give this to PyGame in two pieces (RGB and A)? –  tom10 Jan 8 '13 at 2:13
Jaime: that's a great idea; I had thought that it returned an array of RGB triples, but it seems it returns a 2D array of RGBA ints. tom10: the array needs to be in one piece because it's going to a callback that needs it. So, is there a way to get the 2D array of RGBA ints as a 3D array of bytes in O(1)? –  Ian Mallett Jan 8 '13 at 2:32
The .reshape creates a new array, so I'm using .resize instead. It's actually harder because the pixels that pixels2D returns are an array of columns, not vice versa. Anyway, for people of the future, the code to create a BGRA array is: pastebin.com/KLgsFFrU. It would be nice to make it RGBA, maybe there's a way to get a view for that too? –  Ian Mallett Jan 8 '13 at 4:52

You can create your own class that will manage the referencing procedures, as shown in the example below. You should work further on this to include slicing capabilities with __getslice__, __add__, __mul__, and so forth.

import numpy as np
a1 = np.arange(1,11)
a2 = np.arange(101,111)
class Combiner():
def __init__(self, *args):
self.arrays = [arg for arg in args]
self.lens = [len(arg) for arg in args]
def __getitem__(self,i):
if i >=0:
shift = 0
acc = 0
for j,l in enumerate(self.lens):
acc += l
if i<acc:
return self.arrays[j][i-shift]
shift += l
if i<0:
shift = 0
acc = 0
for j in xrange(len(self.lens)-1,-1,-1):
l = self.lens[j]
acc -= l
if i>=acc:
return self.arrays[j][i+shift]
shift += l

def __setitem__(self,i,v):
if i >=0:
shift = 0
acc = 0.
for j,l in enumerate(self.lens):
acc += l
if i<acc:
self.arrays[j][i-shift] = v
return
shift += l
if i<0:
shift = 0
acc = 0
for j in xrange(len(self.lens)-1,-1,-1):
l = self.lens[j]
acc -= l
if i>=acc:
self.arrays[j][i+shift] = v
return
shift += l

a3 = Combiner(a1,a2)
print a3[-10]
# 101
a3[-2] = 22222
a3[ 4] = 11111
print a1
#[    1     2     3     4 11111     6     7     8     9    10]
print a2
#[  101   102   103   104   105   106   107   108 22222   110]

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