Do you know if there is a way to get python's
random.sample to work with a generator object. I am trying to get a random sample from a very large text corpus. The problem is that
random.sample() raises the following error.
TypeError: object of type 'generator' has no len()
I was thinking that maybe there is some way of doing this with something from
itertools but couldn't find anything with a bit of searching.
A somewhat made up example:
import random def list_item(ls): for item in ls: yield item random.sample( list_item(range(100)), 20 )
MartinPieters's request I did some timing of the currently proposed three methods. The results are as follows.
Sampling 1000 from 10000 Using iterSample 0.0163 s Using sample_from_iterable 0.0098 s Using iter_sample_fast 0.0148 s Sampling 10000 from 100000 Using iterSample 0.1786 s Using sample_from_iterable 0.1320 s Using iter_sample_fast 0.1576 s Sampling 100000 from 1000000 Using iterSample 3.2740 s Using sample_from_iterable 1.9860 s Using iter_sample_fast 1.4586 s Sampling 200000 from 1000000 Using iterSample 7.6115 s Using sample_from_iterable 3.0663 s Using iter_sample_fast 1.4101 s Sampling 500000 from 1000000 Using iterSample 39.2595 s Using sample_from_iterable 4.9994 s Using iter_sample_fast 1.2178 s Sampling 2000000 from 5000000 Using iterSample 798.8016 s Using sample_from_iterable 28.6618 s Using iter_sample_fast 6.6482 s
So it turns out that the
array.insert has a serious drawback when it comes to large sample sizes. The code I used to time the methods
from heapq import nlargest import random import timeit def iterSample(iterable, samplesize): results =  for i, v in enumerate(iterable): r = random.randint(0, i) if r < samplesize: if i < samplesize: results.insert(r, v) # add first samplesize items in random order else: results[r] = v # at a decreasing rate, replace random items if len(results) < samplesize: raise ValueError("Sample larger than population.") return results def sample_from_iterable(iterable, samplesize): return (x for _, x in nlargest(samplesize, ((random.random(), x) for x in iterable))) def iter_sample_fast(iterable, samplesize): results =  iterator = iter(iterable) # Fill in the first samplesize elements: for _ in xrange(samplesize): results.append(iterator.next()) random.shuffle(results) # Randomize their positions for i, v in enumerate(iterator, samplesize): r = random.randint(0, i) if r < samplesize: results[r] = v # at a decreasing rate, replace random items if len(results) < samplesize: raise ValueError("Sample larger than population.") return results if __name__ == '__main__': pop_sizes = [int(10e+3),int(10e+4),int(10e+5),int(10e+5),int(10e+5),int(10e+5)*5] k_sizes = [int(10e+2),int(10e+3),int(10e+4),int(10e+4)*2,int(10e+4)*5,int(10e+5)*2] for pop_size, k_size in zip(pop_sizes, k_sizes): pop = xrange(pop_size) k = k_size t1 = timeit.Timer(stmt='iterSample(pop, %i)'%(k_size), setup='from __main__ import iterSample,pop') t2 = timeit.Timer(stmt='sample_from_iterable(pop, %i)'%(k_size), setup='from __main__ import sample_from_iterable,pop') t3 = timeit.Timer(stmt='iter_sample_fast(pop, %i)'%(k_size), setup='from __main__ import iter_sample_fast,pop') print 'Sampling', k, 'from', pop_size print 'Using iterSample', '%1.4f s'%(t1.timeit(number=100) / 100.0) print 'Using sample_from_iterable', '%1.4f s'%(t2.timeit(number=100) / 100.0) print 'Using iter_sample_fast', '%1.4f s'%(t3.timeit(number=100) / 100.0) print ''
I also ran a test to check that all the methods indeed do take an unbiased sample of the generator. So for all methods I sampled
1000 elements from
100000 times and computed the average frequency of occurrence of each item in the population which turns out to be
~.1 as one would expect for all three methods.