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While writing a script I discovered the numpy.random.choice function. I implemented it because it was was much cleaner than the equivalent if statement. However, after running the script I realized it is significantly slower than the if statement.

The following is a MWE. The first method takes 0.0 s, while the second takes 7.2 s. If you scale up the i loop, you will see how fast random.choice slows down.

Can anyone comment on why random.choice is so much slower?

import numpy as np
import numpy.random as rand
import time as tm


tStart = tm.time()
for i in xrange(100):
    for j in xrange(1000):
        tmp = rand.rand()
        if tmp < 0.25:
            var = 1
        elif tmp < 0.5:
            var = -1
print('Time: %.1f s' %(tm.time() - tStart))


tStart = tm.time()
for i in xrange(100):
    for j in xrange(1000):
        var = rand.choice([-1, 0, 1], p = [0.25, 0.5, 0.25])
print('Time: %.1f s' %(tm.time() - tStart))
share|improve this question
That's not really a fair comparison. Each time, numpy has to take the cumulative sum of the p list, put that into a new vector, and then iterate over it. You're effectively doing preprocessing by knowing that there are only three variables, and that the sum of the first and third is .5. Beyond that, as noted below, numpy is optimized for vectorized operations, not for doing a single simple operation thousands of times. – David Robinson Sep 4 '13 at 20:11
Also, use timeit, not time on its own. – Marcin Sep 4 '13 at 20:37
up vote 11 down vote accepted

You're using it wrong. Vectorize the operation, or numpy will offer no benefit:

var = numpy.random.choice([-1, 0, 1], size=1000, p=[0.25, 0.5, 0.25])

Timing data:

>>> timeit.timeit('''numpy.random.choice([-1, 0, 1],
...                                      size=1000,
...                                      p=[0.25, 0.5, 0.25])''',
...               'import numpy', number=10000)

>>> timeit.timeit('''
... var = []
... for i in xrange(1000):
...     tmp = rand.rand()
...     if tmp < 0.25:
...         var.append(1)
...     elif tmp < 0.5:
...         var.append(-1)
...     else:
...         var.append(0)''',
... setup='import numpy.random as rand', number=10000)
share|improve this answer
+1 This is about 7x faster than the first loop. – Phillip Cloud Sep 4 '13 at 20:08
As written, are you comparing apples to apples? The first one computes 10^3 * 10^4 = 10^7 random numbers, but the second computes 10^2 * 10^3 * 10^4 = 10^9 random numbers, no? – DSM Sep 4 '13 at 20:13
@DSM: Whoops. Copied the wrong thing to time. Fixing... – user2357112 Sep 4 '13 at 20:14
I figured I was using it wrong, your example is great! – Blink Sep 4 '13 at 20:48

I suspect the generality of np.random.choice is slowing it down, more so for small samples than large ones.

A crude vectorization of the if version is:

def foo(n):
    x = np.random.rand(n)
    var = np.zeros(n)
    var[x<.25] = -1
    var[x>.75] = 1
    return var

Running in ipython I get:

timeit np.random.choice([-1,0,1],size=1000,p=[.25,.5,.25])
1000 loops, best of 3: 293 us per loop

timeit foo(1000)
10000 loops, best of 3: 83.4 us per loop

timeit np.random.choice([-1,0,1],size=100000,p=[.25,.5,.25])
100 loops, best of 3: 11 ms per loop

timeit foo(100000)
100 loops, best of 3: 8.12 ms per loop

So for the 1000 size, choice is 3-4x slower, but with larger vectors, the difference starts to disappear.

share|improve this answer

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