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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',
              number=10000)
75.02289700508118
timeit.timeit('sum(tosum, axis=0)',
              setup='from numpy import sum; from __main__ import tosum',
              number=10000)
78.99106407165527

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

timeit.timeit('reduce(add,tosum)',
              setup='from numpy import add; from __main__ import tosum',
              number=10000)
1.131795883178711

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):

timeit.timeit('reduce(add,tosum)',
              setup='from numpy import add; from __main__ import tosum',
              number=1000000)
109.98814797401428

timeit.timeit('sum(tosum)',
              setup='from __main__ import tosum',
              number=1000000)
125.52461504936218

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


Edit

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',
              number=10000)
1.1545608043670654

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
2  
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
1  
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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