Motivated by discussion on this question, I decided to try some performance testing. The task I have set is somewhat simpler - given a source list A
, we wish to create a lazy iterable that repeats each element of A, N times:
def test(implementation):
A, N = list('abc'), 3
assert list(implementation(A, N)) == list('aaabbbccc')
I came up with several implementations, and tested them thus:
from itertools import chain, repeat, starmap
from timeit import timeit
flatten = chain.from_iterable
def consume(iterable):
for _ in iterable:
pass
# FAST approaches
def tools(original, count):
return flatten(map(repeat, original, repeat(count)))
def tools_star(original, count):
return flatten(starmap(repeat, zip(original, repeat(count))))
def mixed(original, count):
return flatten(repeat(a, count) for a in original)
# SLOW approaches
def mixed2(original, count):
return (x for a in original for x in repeat(a, count))
def explicit(original, count):
for a in original:
for _ in range(count):
yield a
def generator(original, count):
return (a for a in original for _ in range(count))
def mixed3(original, count):
return flatten((a for _ in range(count)) for a in original)
if __name__ == '__main__':
for impl in (tools, tools_star, mixed, mixed2, explicit, generator, mixed3):
for consumption in (consume, list):
to_time = lambda: consumption(impl(list(range(1000)), 1000))
elapsed = timeit(to_time, number=100)
print(f'{consumption.__name__}({impl.__name__}): {elapsed:.2f}')
Here are three examples of timing results on my machine:
consume(tools): 1.10
list(tools): 2.96
consume(tools_star): 1.10
list(tools_star): 2.97
consume(mixed): 1.11
list(mixed): 2.91
consume(mixed2): 4.60
list(mixed2): 6.53
consume(explicit): 5.45
list(explicit): 8.09
consume(generator): 5.98
list(generator): 7.62
consume(mixed3): 5.75
list(mixed3): 7.67
consume(tools): 1.10
list(tools): 2.88
consume(tools_star): 1.10
list(tools_star): 2.89
consume(mixed): 1.11
list(mixed): 2.87
consume(mixed2): 4.56
list(mixed2): 6.39
consume(explicit): 5.42
list(explicit): 7.24
consume(generator): 5.91
list(generator): 7.48
consume(mixed3): 5.80
list(mixed3): 7.61
consume(tools): 1.14
list(tools): 2.98
consume(tools_star): 1.10
list(tools_star): 2.90
consume(mixed): 1.11
list(mixed): 2.92
consume(mixed2): 4.76
list(mixed2): 6.49
consume(explicit): 5.69
list(explicit): 7.38
consume(generator): 5.68
list(generator): 7.52
consume(mixed3): 5.75
list(mixed3): 7.86
And from this I draw the following conclusions:
The
itertools
tools offer a large performance boost, but only if we use them both to "flatten" the iterator (itertools.chain.from_iterable
rather than flattening via a nestedfor
expression) and to produce the sub-sequences (itertools.repeat
rather thanrange
). Using onlyrepeat
offers only a minor improvement, and using onlychain.from_iterable
actually seems to make things worse.For the full
itertools
implementation, it does not seem to matter how we iterate over the input sequence - whether by using a generator expression, usingmap
, or usingitertools.starmap
. (This is unsurprising, since only O(len(A)) operations occur here rather than O(len(A) * N). Thestarmap
approach is unwieldy and definitely not what I'd recommend, but I included it because the code from the original motivating discussion used it.)The amount of overhead added by creating a list from the iterable seems to vary wildly, both across methods and across timing runs (note the difference in
list(explicit)
results across the two runs) - though they seem to be more consistent for the fast methods. This is especially strange since I am summing up results from multiple list creations in each test.
What all is going on under the hood of itertools
? How can we explain these timing results? It's especially strange the way that chain.from_iterable
and repeat
don't offer incremental performance benefits here, but rely on each other entirely. And what is going on with the list construction? Isn't the added overhead the same in each case (repeatedly append the same sequence of elements to an empty list)?