# Why this list comprehension is faster than equivalent generator expression?

I'm using Python 3.3.1 64-bit on Windows and this code snippet:

len ([None for n in range (1, 1000000) if n%3 == 1])


executes in 136ms, compared to this one:

sum (1 for n in range (1, 1000000) if n%3 == 1)


which executes in 146ms. Shouldn't a generator expression be faster or the same speed as the list comprehension in this case?

I quote from Guido van Rossum From List Comprehensions to Generator Expressions:

...both list comprehensions and generator expressions in Python 3 are actually faster than they were in Python 2! (And there is no longer a speed difference between the two.)

EDIT:

I measured the time with timeit. I know that it is not very accurate, but I care only about relative speeds here and I'm getting consistently shorter time for list comprehension version, when I test with different numbers of iterations.

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And how did you measure the speed difference? –  Martijn Pieters Apr 30 '13 at 19:16
A difference of 7% is pretty trivial—especially if you're not timing very accurately. (A typical naive implementation with time or clock instead of timeit for something that takes only 1/8th of a second can easily have an error much, much larger than 7%.) –  abarnert Apr 30 '13 at 19:21
Why are you comparing len with sum? Counting elements is a lot faster than adding their contents. –  Tim Pietzcker Apr 30 '13 at 19:25
Somewhat surprisingly, in PyPy 1.9.0 (which is Python 2.7.2, and doesn't have any of the modern genexp improvements), the genexp version is almost twice as fast (26.6ms vs. 49.7ms). The adding probably doesn't matter there (because in PyPy, adding integers is a few orders of magnitude faster than iterating), but I'm still a bit surprised by the results. –  abarnert Apr 30 '13 at 19:34
@MartijnPieters I use timeit - edited the question. –  Paul Jurczak Apr 30 '13 at 19:47

I believe the difference here is entirely in the cost of 1000000 additions. Testing with 64-bit Python.org 3.3.0 on Mac OS X:

In [698]: %timeit len ([None for n in range (1, 1000000) if n%3 == 1])
10 loops, best of 3: 127 ms per loop
In [699]: %timeit sum (1 for n in range (1, 1000000) if n%3 == 1)
10 loops, best of 3: 138 ms per loop
In [700]: %timeit sum ([1 for n in range (1, 1000000) if n%3 == 1])
10 loops, best of 3: 139 ms per loop


So, it's not that the comprehension is faster than the genexp; they both take about the same time. But calling len on a list is instant, while summing 1M numbers adds another 7% to the total time.

Throwing a few different numbers at it, this seems to hold up unless the list is very tiny (in which case it does seem to get faster), or large enough that memory allocation starts to become a significant factor (which it isn't yet, at 333K).

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This is exactly what I found in my testing with Python 3.3.1 64bit (Win7). +1 –  Tim Pietzcker Apr 30 '13 at 19:26
@TimPietzcker: Since you were apparently writing your comment at the same time I was writing my answer, I'm not surprised we were also running the exact same test simultaneously. :) –  abarnert Apr 30 '13 at 19:28
For the sake of adding data -- with Python 3.2 32bit (Win7) I find the generator expression consistently 2% slower. Trivial, but reproducible. –  Steven Rumbalski Apr 30 '13 at 20:06
I didn't know that len of list is O(1) - I've spent only a few days with Python so far. Thanks for pointing this out. –  Paul Jurczak Apr 30 '13 at 20:14
@PaulJurczak: It's actually surprisingly hard to dig the performance guarantees out of the documentation. However, if you know that a list is just a resizeable array, and that [0,1,2][3] raises an IndexError instead of segfaulting, obviously it must be keeping the length around somewhere, right? (In CPython, it's in the PyVarObject header.) So, it would be silly to not just return it immediately. –  abarnert Apr 30 '13 at 20:25