# sampling integers uniformly efficiently in python using numpy/scipy

I have a problem where depending on the result of a random coin flip, I have to sample a random starting position from a string. If the sampling of this random position is uniform over the string, I thought of two approaches to do it: one using multinomial from numpy.random, the other using the simple randint function of Python standard lib. I tested this as follows:

``````from numpy import *
from numpy.random import multinomial
from random import randint
import time

def use_multinomial(length, num_points):
probs = ones(length)/float(length)
for n in range(num_points):
result = multinomial(1, probs)

def use_rand(length, num_points):
for n in range(num_points):
rand(1, length)

def main():
length = 1700
num_points = 50000

t1 = time.time()
use_multinomial(length, num_points)
t2 = time.time()
print "Multinomial took: %s seconds" %(t2 - t1)

t1 = time.time()
use_rand(length, num_points)
t2 = time.time()
print "Rand took: %s seconds" %(t2 - t1)

if __name__ == '__main__':
main()
``````

The output is:

Multinomial took: 6.58072400093 seconds Rand took: 2.35189199448 seconds

it seems like randint is faster, but it still seems very slow to me. Is there a vectorized way to get this to be much faster, using numpy or scipy?

thanks.

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I changed your code to actually return values (and used `randint` instead of `rand` - isn't that what you meant?) like this...

``````def use_multinomial(length, num_points):
probs = ones(length)/float(length)
return multinomial(1, probs, num_points)

def use_rand(length, num_points):
return [randint(1,length) for _ in range(num_points)]
``````

Then I tried my own version, using `numpy.random.randint` to generate a numpy array of random points on the string:

``````def use_np_randint(length, num_point):
return nprandint(1, length, num_points)
``````

The results:

``````Multinomial took: 13.6279997826 seconds
Rand took: 0.185000181198 seconds
NP randint took: 0.00100016593933 seconds
``````

Multinomial is obviously really slow comparitively, but is that even what you want? I thought you said you wanted a uniform distribution? Using numpy's randint is clearly the fastest of the bunch.

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