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?
noloop()
being faster (by ~15%) thanloop()
regardless...loop
being faster, as OP suggests (by 28% in my machine). Python 3.4.1 | Anaconda 2.1.0, IPython 2.2.0noloop()
takes just as long as before (60-70 ms), whileloop()
takes a few ms longer thannoloop()
, i.e. significantly slower than in the QT console.noloop()
is ~10% faster on my machine.