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Consider the following two functions, which essentially multiply every number in a small sequence with every number in a larger sequence to build up a 2D array, and then doubles all the values in the array. noloop() uses direct multiplication of 2D numpy arrays and returns the result, whereas loop() uses a for loop to iterate over arr1 and gradually build up an output array.

import numpy as np

arr1 = np.random.rand(100, 1)
arr2 = np.random.rand(1, 100000)

def noloop():
    return (arr1*arr2)*2

def loop():
    out = np.empty((arr1.size, arr2.size))
    for i in range(arr1.size):
        tmp = (arr1[i]*arr2)*2
        out[i] = tmp.reshape(tmp.size)
    return out

I expected noloop to be much faster even for a small number of iterations, but for the array sizes above, loop is actually faster:

>>> %timeit noloop()
10 loops, best of 3: 64.7 ms per loop
>>> %timeit loop()
10 loops, best of 3: 41.6 ms per loop

And interestingly, if I remove *2 in both functions, noloop is faster, but only slightly:

>>> %timeit noloop()
10 loops, best of 3: 29.4 ms per loop
>>> %timeit loop()
10 loops, best of 3: 34.4 ms per loop

Is there a good explanation for these results, and is there a notably faster way to perform the same task?

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  • 2
    I get noloop() being faster (by ~15%) than loop() regardless... Jan 21, 2015 at 11:10
  • I also get the reverse on both python2 and python3. Jan 21, 2015 at 11:26
  • 1
    I get loop being faster, as OP suggests (by 28% in my machine). Python 3.4.1 | Anaconda 2.1.0, IPython 2.2.0
    – Roberto
    Jan 21, 2015 at 11:37
  • The OP values are from Spyder, i.e. a QT IPython console. I get the same results using a QT IPython console outside of Spyder. Strangely, it seems that in a normal IPython console, noloop() takes just as long as before (60-70 ms), while loop() takes a few ms longer than noloop(), i.e. significantly slower than in the QT console.
    – cmeeren
    Jan 21, 2015 at 11:40
  • Same here, noloop() is ~10% faster on my machine.
    – memecs
    Jan 21, 2015 at 15:19

1 Answer 1

0

I wasn't able to reproduce your results, but I did find that I could get substantial speed up (factor of 2) using numpy.multiply. By using the out argument you can take advantage of the fact that the memory is already allocated and eliminate the copying of tmp to out.

def out_loop():
    out = np.empty((arr1.size, arr2.size))
    for i in range(arr1.size):
        np.multiply(arr1[i], arr2, out=out[i].reshape((1, arr2.size)))
        out[i] *= 2
    return out

Results on my machine:

In [32]: %timeit out_loop()
100 loops, best of 3: 17.7 ms per loop

In [33]: %timeit loop()
10 loops, best of 3: 28.3 ms per loop

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