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Given a NumPy array A, what is the fastest/most efficient way to apply the same function, f, to every cell?

  1. Suppose that we will assign to A(i,j) the f(A(i,j)).

  2. The function, f, doesn't have a binary output, thus the mask(ing) operations won't help.

Is the "obvious" double loop iteration (through every cell) the optimal solution?

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Tell us more of the function f(). Maybe it has a ufunc. –  cyborg Oct 9 '11 at 23:53

2 Answers 2

You could just vectorize the function and then apply it directly to a Numpy array each time you need it:

def f(x):
    return x * x + 3 * x - 2 if x > 0 else x * 5 + 8

f = numpy.vectorize(f)  # or use a different name if you want to keep the original f

result_array = f(A)  # if A is your Numpy array

It's probably better to specify an explicit output type directly when vectorizing:

f = numpy.vectorize(f, otypes=[numpy.float])

see also http://docs.scipy.org/doc/numpy/reference/generated/numpy.vectorize.html

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That function's already vectorized, isn't it? –  Owen Oct 9 '11 at 5:16
Yes, you are right, that particular function is. It just served as an example. Probably not the best example function, true. –  blubberdiblub Oct 9 '11 at 5:19
I've edited the function now to give a better example. Thank you, good point. –  blubberdiblub Oct 9 '11 at 5:28
I am afraid that the vectorized function cannot be faster than the "manual" double loop iteration and assignment through all the array elements. Especially, because it stores the result to a newly created variable (and not directly to the initial input). Thanks a lot for your reply though:) –  Peter Oct 9 '11 at 7:26
@Peter: Ah, now I see that you have mentioned assigning the result back to the former array in your original question. I'm sorry I missed that when first reading it. Yeah, in that case the double loop must be faster. But have you also tried a single loop on the flattened view of the array? That might be slightly faster, since you save a little loop overhead and Numpy needs to do one less multiplication and addition (for calculating the data offset) at each iteration. Plus it works for arbitrarily dimensioned arrays. Might be slower on very small arrays, tho. –  blubberdiblub Oct 9 '11 at 8:13

A similar question is: Mapping a numpy array in place. If you can find a ufunc for your f(), then you should use the out parameter.

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