Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I happened to find myself having a basic filtering need: I have a list and I have to filter it by an attribute of the items.

My code looked like this:

my_list = [i for i in my_list if i.attribute == value]

But then i thought, wouldn't it be better to write it like this?

filter(lambda x: x.attribute == value, my_list)

It's more readable, and if needed for performance the lambda could be taken out to gain something.

Question is: are there any caveats in using the second way? Any performance difference? Am I missing the Pythonic Way™ entirely and should do it in yet another way (such as using itemgetter instead of the lambda)?

share|improve this question
@Ignacio Vazquez-Abrams, good call –  John La Rooy - AKA gnibbler Jun 10 '10 at 10:18
@Ignacio thanks for the note, and everybody please excuse the poor variable name. I edited the variable names I had in my snippet to have a more generic example... but I went too far. list has been replaced with my_list –  Agos Jun 11 '10 at 8:05
A better example would be a case where you already had a nicely named function to use as your predicate. In that case, I think a lot more people would agree that filter was more readable. When you have a simple expression that can be used as-is in a listcomp, but has to be wrapped in a lambda (or similarly constructed out of partial or operator functions, etc.) to pass to filter, that's when listcomps win. –  abarnert Jul 31 '13 at 19:15

8 Answers 8

up vote 96 down vote accepted

It is strange how much beauty varies for different people. I find the list comprehension much clearer than the ugly filter+lambda, but use whichever you find easier. However, do stop giving your variables names already used for builtins, that's just ugly, and not open for discussion.

There are two things that may slow down your use of filter.

The first is the function call overhead: as soon as you use a Python function (whether created by def or lambda) it is likely that filter will be slower than the list comprehension. It almost certainly is not enough to matter, and you shouldn't think much about performance until you've timed your code and found it to be a bottleneck, but the difference will be there.

The other overhead that might apply is that the lambda is being forced to access a scoped variable (value). That is slower than accessing a local variable and in Python 2.x the list comprehension only accesses local variables. If you are using Python 3.x the list comprehension runs in a separate function so it will also be accessing value through a closure and this difference won't apply.

The other option to consider is to use a generator instead of a list comprehension:

def filterbyvalue(seq, value):
   for el in seq:
       if el.attribute==value: yield el

Then in your main code (which is where readability really matters) you've replaced both list comprehension and filter with a hopefully meaningful function name.

share|improve this answer
+1 for the generator. I have a link at home to a presentation that shows how amazing generators can be. You can also replace the list comprehension with a generator expression just by changing [] to (). Also, I agree that the list comp is more beautiful. –  Wayne Werner Jun 10 '10 at 13:03
Thanks for the answer and the insight; Sorry for the variable name (it has been edited now). The generator is indeed really nice! –  Agos Jun 11 '10 at 8:07

This is a somewhat religious issue in Python. Even though Guido considered removing map, filter and reduce from Python 3, there was enough of a backlash that in the end only reduce was moved from built-ins to functools.reduce.

Personally I find list comprehensions easier to read. It is more explicit what is happening from the expression [i for i in list if i.attribute == value] as all the behaviour is on the surface not inside the filter function.

I would not worry too much about the performance difference between the two approaches as it is marginal. I would really only optimise this if it proved to be the bottleneck in your application which is unlikely.

Also since the BDFL wanted filter gone from the language then surely that automatically makes list comprehensions more Pythonic ;-)

share|improve this answer
reduce was really only demoted from __buildins__ to the functools module –  Dan D. Nov 4 '10 at 17:37
@Dan D, thanks for the correction Dan! –  Tendayi Mawushe Nov 4 '10 at 17:42
Thanks for the links to Guido's input, if nothing else for me it means I will try not to use them any more, so that I won't get the habit, and I won't become supportive of that religion :) –  dashesy Jun 12 '13 at 1:17
but reduce is the most complex to do with simple tools! map and filter are trivial to replace with comprehensions! –  njzk2 May 30 '14 at 20:22

Although filter may be the "faster way", the "Pythonic way" would be not to care about such things unless performance is absolutely critical (in which case you wouldn't be using Python!).

share|improve this answer

Since any speed difference is bound to be miniscule, whether to use filters or list comprehensions comes down to a matter of taste. In general I'm inclined to use comprehensions (which seems to agree with most other answers here), but there is one case where I prefer filter.

A very frequent use case is pulling out the values of some iterable X subject to a predicate P(x):

[x for x in X if P(x)]

but sometimes you want to apply some function to the values first:

[f(x) for x in X if P(x)]

As a specific example, consider

primes_cubed = [x*x*x for x in range(1000) if prime(x)]

I think this looks slightly better than using filter. But now consider

prime_cubes = [x*x*x for x in range(1000) if prime(x*x*x)]

In this case we want to filter against the post-computed value. Besides the issue of computing the cube twice (imagine a more expensive calculation), there is the issue of writing the expression twice, violating the DRY aesthetic. In this case I'd be apt to use

prime_cubes = filter(prime, [x*x*x for x in range(1000)])
share|improve this answer

I find the second way more readable. It tells you exactly what the intention is: filter the list.
PS: do not use 'list' as a variable name

share|improve this answer

generally filter is slightly faster if using a builtin function.

I would expect the list comprehension to be slightly faster in your case

share|improve this answer
python -m timeit 'filter(lambda x: x in [1,2,3,4,5], range(10000000))' 10 loops, best of 3: 1.44 sec per loop python -m timeit '[x for x in range(10000000) if x in [1,2,3,4,5]]' 10 loops, best of 3: 860 msec per loop Not really?! –  sepdau Nov 27 '14 at 16:27
@sepdau, lambda functions are not builtins. List comprehensions have improved over the past 4 years - now the difference is negligible anyway even with builtin functions –  John La Rooy - AKA gnibbler Nov 27 '14 at 21:08

An important difference is that list comprehension will return a list while the filter returns a filter, which you cannot manipulate like a list (ie: call len on it, which does not work with the return of filter).

My own self-learning brought me to some similar issue.

That being said, if there is a way to have the resulting list from a filter, a bit like you would do in .NET when you do lst.Where(i => i.something()).ToList(), I am curious to know it.

share|improve this answer

My take

def filter_list(list, key, value, limit=None):
    return [i for i in list if i[key] == value][:limit]
share|improve this answer
i was never said to be a dict, and there isn't a need for limit. Other than that, how is this different than what the OP suggested, and how does it answer the question? –  Evert Jan 9 '14 at 11:16

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.