# Update 2D numpy array values

Is there a more efficient way to update the values of a multidimensional numpy array?
For example, I have a loop

``````        for i in np.arange(5):
for j in np.arange(5):
if (i + j) % 2 == 0:
v[i,j] = v[i,j] + v[i, j + 1]
``````

I was thinking on parallelizing this process later (with `multiprocessing` and `Pool`) but I can't imagine how. Maybe defining a function and using `map` but this is a 2D array and the operations depend on the element indexes.

-

Basically you are doing this:

You can do this in two lines using slice indexing:

``````v[0:5:2,0:5:2] += v[0:5:2,1:6:2]    # even rows
v[1:5:2,1:5:2] += v[1:5:2,2:6:2]    # odd rows
``````
-
Your answer left even rows unchanged. Should have another statement dealing with that. –  Ray Dec 22 '13 at 2:38
@Ray yep, I think I've fixed it now –  ali_m Dec 22 '13 at 2:55
Seen. +1 for graphical illustration. –  Ray Dec 22 '13 at 2:56
Thanks for your answer. Is this the only way for doing this kind of computations? I have more complex operations on my code (that's why I said in my question this was an example), but basically, the even squares updates are independent of the odd squares updates. What I wanted was to parallelize all those computations. If I use your answer, the code is lengthier than doing the for loops, but maybe is faster. If I don't get more ideas I'll mark your idea as accepted, thanks again. –  David Winchester Dec 22 '13 at 3:13
Parallelization is usually the last tool you want to reach for in these situations. It's way more of a pain to implement well, it adds a lot more complexity and overhead, and for simple operations like this you will probably see little (if any) performance benefit. You're much better off learning to make the best of vectorization in numpy. –  ali_m Dec 22 '13 at 8:30