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Let's say I want to do an element-wise sum of a list of numpy arrays:

tosum = [rand(100,100) for n in range(10)]

I've been looking for the best way to do this. It seems like numpy.sum is awful:

timeit.timeit('sum(array(tosum), axis=0)',
              setup='from numpy import sum; from __main__ import tosum, array',
timeit.timeit('sum(tosum, axis=0)',
              setup='from numpy import sum; from __main__ import tosum',

Reduce is much faster (to the tune of nearly two orders of magnitude):

              setup='from numpy import add; from __main__ import tosum',

It looks like reduce even has a meaningful lead over the non-numpy sum (note that these are for 1e6 runs rather than 1e4 for the above times):

              setup='from numpy import add; from __main__ import tosum',

              setup='from __main__ import tosum',

Are there other methods I should try? Can anyone explain the rankings?


numpy.sum is definitely faster if the list is turned into a numpy array first:

tosum2 = array(tosum)
timeit.timeit('sum(tosum2, axis=0)',
              setup='from numpy import sum; from __main__ import tosum2',

However, I'm only interested in doing a sum once, so turning the array into a numpy array would still incur a real performance penalty.

share|improve this question
I'm guessing that np.sum first creates and array and then sums it which would explain it's poor performance... I'm guessing it would be the fastest if you had passed a np.ndarray to begin with. – mgilson Dec 17 '13 at 17:09
And I'd expect reduce to beat sum by about 1/11 since it skips the 0 + tosum[0] that is implicit in sum. – mgilson Dec 17 '13 at 17:13
That makes sense. I start with a bunch of separate arrays, so turning them into a numpy array first would incur the same performance penalty as having sum do it for me (since I'm only doing the sum once). – lnmaurer Dec 17 '13 at 17:14

The following is competitive with reduce, and is faster if the tosum list is long enough. However, it's not a lot faster, and it is more code. (reduce(add, tosum) sure is pretty.)

def loop_inplace_sum(arrlist):
    # assumes len(arrlist) > 0
    sum = arrlist[0].copy()
    for a in arrlist[1:]:
        sum += a
    return sum

Timing for the original tosum. reduce(add, tosum) is faster:

In [128]: tosum = [rand(100,100) for n in range(10)]

In [129]: %timeit reduce(add, tosum)
10000 loops, best of 3: 73.5 µs per loop

In [130]: %timeit loop_inplace_sum(tosum)
10000 loops, best of 3: 78 µs per loop

Timing for a much longer list of arrays. Now loop_inplace_sum is faster.

In [131]: tosum = [rand(100,100) for n in range(500)]

In [132]: %timeit reduce(add, tosum)
100 loops, best of 3: 5.09 ms per loop

In [133]: %timeit loop_inplace_sum(tosum)
100 loops, best of 3: 4.4 ms per loop
share|improve this answer
Interesting. Do you have thoughts on where the speedup comes from? Maybe it has less overhead than reduce? (I'm just adding ~10 large arrays together, so I'll probably stick with reduce, but this method is good to know for the future.) – lnmaurer Dec 18 '13 at 16:26
Yes, less overhead: the in-place addition eliminates some object creation. If you replace sum +=a with sum = sum + a, it becomes a bit slower than reduce. – Warren Weckesser Dec 19 '13 at 4:11

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