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Referring to this Python List Comprehension Vs. Map question, can someone explain why List Comprehensions gives better results over map when list comprehension does not call a function, even when there is no lambda function in the map but gives the worst result when calling a function?

import timeit

print timeit.Timer('''[i**2 for i in xrange(100)]''').timeit(number = 100000)

print timeit.Timer('''map(lambda i: i**2, xrange(100))''').timeit(number = 100000)

print timeit.Timer(setup="""def my_pow(i):
    return i**2
""",stmt="""map(my_pow, xrange(100))""").timeit(number = 100000)

print timeit.Timer(setup="""def my_pow(i):
    return i**2
""",stmt='''[my_pow(i) for i in xrange(100)]''').timeit(number = 100000)


1.03697046805 <-- list comprehension without function call
1.96599485313 <-- map with lambda function
1.92951520483 <-- map with function call
2.23419570042 <-- list comprehension with function call
share|improve this question
It doesn't matter whether the function called in map is a lambda or a regular function, the overhead is still there. No idea why a list comprehension with a function call would be slower than map() though. – millimoose Jul 23 '12 at 16:31
@millimoose but the lambda function gets declared for each itetaration, does this make any change? – zenpoy Jul 23 '12 at 16:34
@zenpoy: Function call arguments are evaluated before the function is called, so the function is declared only once. – Sven Marnach Jul 23 '12 at 16:38
cannot delete comments on my phine :( – Joel Cornett Jul 23 '12 at 16:43
@SvenMarnach i think he/she's talking about my_pow definition being interpreted only once for the whole timeit execution (in setup) and lambda being defined for each iteration. It's a valid question, and lambda probably contributes to it's version being slightly slower. – soulcheck Jul 23 '12 at 16:49
up vote 10 down vote accepted

All your timing results can be explained by theses facts:

  1. CPython has a rather high function call overhead.

  2. map(f, it) is slightly faster than [f(x) for x in it].

The first version of your code does not define a function at all, so there is no function call overhead. The second version needs to define a function, ,so there is function call overhead in every iteration. The third version is completely equivalent to the second one – functions and lambda expressions are the same thing. And the last version is even slower according to fact 2.

share|improve this answer
I can think of two possible reasons for fact (2): map's loop takes place directly in C and so has slightly less overhead in the looping, and the reference to name f only needs to be resolved once for map but on each iteration for the list comprehension. The second feels more important to me, but any way to tell which one contributes more? – Dougal Jul 23 '12 at 16:46
@Dougal: This is not the first time someone mention the loop taking place in C, but I never found a reference or something to substain that it should be faster. – Rik Poggi Jul 23 '12 at 17:11
@RikPoggi I tried checking the Python sources, and map in 3.x actually returns an iterator, and works on using the arguments' iterators, which makes that theory pretty unlikely. There might still be some savings from all of these being C-based, but there is no mythical "loop in C". It might be interesting (if not conclusive of anything) to compare the performance of 2.x and 3.x in this regard actually. – millimoose Jul 23 '12 at 17:51
@millimoose: Things like "the loop is entirely done in C" usually mean that no Python byte-code evaluation is necessary to perform the loop. – Sven Marnach Jul 23 '12 at 19:29
@SvenMarnach Fair enough, but would that distinction make a significant difference? The runtime still has to deal with all the overhead of manipulating the interpreter state; it doesn't seem to me that bytecode dispatch in and of itself would be the main contributor to the slowdown. – millimoose Jul 23 '12 at 20:45

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