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Is there a reason to prefer using map() over list comprehension or vice versa? Is one generally more effecient or generally considered more pythonic than the other?

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Note that PyLint warns if you use map instead of list comprehension, see message W0141. –  lumbric Oct 31 '13 at 10:37

8 Answers 8

up vote 219 down vote accepted

map may be microscopically faster in some cases (when you're NOT making a lambda for the purpose, but using the same function in map and a listcomp). List comprehensions may be faster in other cases and most (not all) pythonistas consider them more direct and clearer.

An example of the tiny speed advantage of map when using exactly the same function:

$ python -mtimeit -s'xs=range(10)' 'map(hex, xs)'
100000 loops, best of 3: 4.86 usec per loop
$ python -mtimeit -s'xs=range(10)' '[hex(x) for x in xs]'
100000 loops, best of 3: 5.58 usec per loop

An example of how performance comparison gets completely reversed when map needs a lambda:

$ python -mtimeit -s'xs=range(10)' 'map(lambda x: x+2, xs)'
100000 loops, best of 3: 4.24 usec per loop
$ python -mtimeit -s'xs=range(10)' '[x+2 for x in xs]'
100000 loops, best of 3: 2.32 usec per loop
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12  
Yep, indeed our internal Python style guide at work explicitly recomments listcomps against map and filter (not even mentioning the tiny but measurable performance improvement map can give in some cases;-). –  Alex Martelli Aug 8 '09 at 3:55
19  
Not to kibash on Alex's infinite style points, but sometimes map seems easier to read to me: data = map(str, some_list_of_objects). Some other ones... operator.attrgetter, operator.itemgetter, etc. –  Gregg Lind Aug 8 '09 at 16:06
23  
map(operator.attrgetter('foo'), objs) easier to read than [o.foo for foo in objs] ?! –  Alex Martelli Aug 8 '09 at 18:42
21  
@Alex: I prefer not to introduce unnecessary names, like o here, and your examples show why. –  Reid Barton Jan 22 '10 at 20:38
13  
I think that @GreggLind has a point, with his str() example, though. –  EOL Oct 5 '11 at 7:55

Cases

  • Common case: Almost always, you will want to use a list comprehension in python because it will be more obvious what you're doing to novice programmers reading your code. (This does not apply to other languages, where other idioms may apply.)
  • Less-common case: However if you already have a function defined, it is often reasonable to use map, though it is considered 'unpythonic'. For example, map(sum, myLists) is more elegant/terse than [sum(x) for x in myLists]. You gain the elegance of not having to make up a dummy variable (e.g. sum(x) for x... or sum(_) for _... or sum(readableName) for readableName...) which you have to type twice, just to iterate. The same argument holds for filter and reduce and anything from the itertools module: if you already have a function handy, go ahead and do some functional programming. This gains readability in some situations, and loses it in others (e.g. novice programmers, multiple arguments)... but the readability of your code highly depends on your comments anyway.
  • Almost never: You may want to use the map function as a pure abstract function while doing functional programming, where you're mapping map, or currying map, or otherwise benefit from talking about map as a function. In Haskell for example, a functor interface called fmap generalizes mapping over any data structure. This is very uncommon in python because the python grammar compels you to use generator-style to talk about iteration; you can't generalize it easily. (This is sometimes good and sometimes bad.) You can probably come up with rare python examples where map(f, *lists) is a reasonable thing to do. The closest example I can come up with would be sumEach = partial(map,sum), which is a one-liner that is very roughly equivalent to:

def sumEach(myLists):
    return [sum(_) for _ in myLists]

"Pythonism"

I dislike the word "pythonic" because I don't find that pythonic is always elegant in my eyes. Nevertheless, map and filter and similar functions (like the very useful itertools module) are probably considered unpythonic in terms of style.

Laziness

In terms of efficiency, like most functional programming constructs, MAP CAN BE LAZY, and in fact is lazy in python. That means you can do this (in python3) and your computer will not run out of memory and lose all your unsaved data:

>>> map(str, range(10**100))
<map object at 0x2201d50>

Try doing that with a list comprehension:

>>> [str(n) for n in range(10**100)]
# DO NOT TRY THIS AT HOME OR YOU WILL BE SAD #

Do note that list comprehensions are also inherently lazy, but python has chosen to implement them as non-lazy. Nevertheless, python does support lazy list comprehensions in the form of generator expressions, as follows:

>>> (str(n) for n in range(10**100))
<generator object <genexpr> at 0xacbdef>

You can basically think of the [...] syntax as passing in a generator expression to the list constructor, like list(x for x in range(5)).

Efficiency comparison for python3

map is now lazy:

% python3 -mtimeit -s 'xs=range(1000)' 'f=lambda x:x' 'z=map(f,xs)'
1000000 loops, best of 3: 0.336 usec per loop            ^^^^^^^^^

Therefore if you will not be using all your data, or do not know ahead of time how much data you need, map in python3 (and generator expressions in python2 or python3) will avoid calculating their values until the last moment necessary. Usually this will usually outweigh any overhead from using map. The downside is that this is very limited in python as opposed to most functional languages: you only get this benefit if you access your data left-to-right "in order", because python generator expressions can only be evaluated the order x[0], x[1], x[2], ....

However let's say that we have a pre-made function f we'd like to map, and we ignore the laziness of map by immediately forcing evaluation with list(...). We get some very interesting results:

% python3 -mtimeit -s 'xs=range(1000)' 'f=lambda x:x' 'z=list(map(f,xs))'                                                                                                                                                
10000 loops, best of 3: 165/124/135 usec per loop        ^^^^^^^^^^^^^^^
                    for list(<map object>)

% python3 -mtimeit -s 'xs=range(1000)' 'f=lambda x:x' 'z=[f(x) for x in xs]'                                                                                                                                      
10000 loops, best of 3: 181/118/123 usec per loop        ^^^^^^^^^^^^^^^^^^
                    for list(<generator>), probably optimized

% python3 -mtimeit -s 'xs=range(1000)' 'f=lambda x:x' 'z=list(f(x) for x in xs)'                                                                                                                                    
1000 loops, best of 3: 215/150/150 usec per loop         ^^^^^^^^^^^^^^^^^^^^^^
                    for list(<generator>)

In results are in the form AAA/BBB/CCC where A was performed with on a circa-2010 Intel workstation with python 3.?.?, and B and C were performed with a circa-2013 AMD workstation with python 3.2.1, with extremely different hardware. The result seems to be that map and list comprehensions are comparable in performance, which is most strongly affected by other random factors. The only thing we can tell seems to be that, oddly, while we expect list comprehensions [...] to perform better than generator expressions (...), map is ALSO more efficient that generator expressions (again assuming that all values are evaluated/used).

It is important to realize that these tests assume a very simple function (the identity function); however this is fine because if the function were complicated, then performance overhead would be negligible compared to other factors in the program. (It may still be interesting to test with other simple things like f=lambda x:x+x)

If you're skilled at reading python assembly, you can use the dis module to see if that's actually what's going on behind the scenes:

>>> listComp = compile('[f(x) for x in xs]', 'listComp', 'eval')
>>> dis.dis(listComp)
  1           0 LOAD_CONST               0 (<code object <listcomp> at 0x2511a48, file "listComp", line 1>) 
              3 MAKE_FUNCTION            0 
              6 LOAD_NAME                0 (xs) 
              9 GET_ITER             
             10 CALL_FUNCTION            1 
             13 RETURN_VALUE         
>>> listComp.co_consts
(<code object <listcomp> at 0x2511a48, file "listComp", line 1>,)
>>> dis.dis(listComp.co_consts[0])
  1           0 BUILD_LIST               0 
              3 LOAD_FAST                0 (.0) 
        >>    6 FOR_ITER                18 (to 27) 
              9 STORE_FAST               1 (x) 
             12 LOAD_GLOBAL              0 (f) 
             15 LOAD_FAST                1 (x) 
             18 CALL_FUNCTION            1 
             21 LIST_APPEND              2 
             24 JUMP_ABSOLUTE            6 
        >>   27 RETURN_VALUE

 

>>> listComp2 = compile('list(f(x) for x in xs)', 'listComp2', 'eval')
>>> dis.dis(listComp2)
  1           0 LOAD_NAME                0 (list) 
              3 LOAD_CONST               0 (<code object <genexpr> at 0x255bc68, file "listComp2", line 1>) 
              6 MAKE_FUNCTION            0 
              9 LOAD_NAME                1 (xs) 
             12 GET_ITER             
             13 CALL_FUNCTION            1 
             16 CALL_FUNCTION            1 
             19 RETURN_VALUE         
>>> listComp2.co_consts
(<code object <genexpr> at 0x255bc68, file "listComp2", line 1>,)
>>> dis.dis(listComp2.co_consts[0])
  1           0 LOAD_FAST                0 (.0) 
        >>    3 FOR_ITER                17 (to 23) 
              6 STORE_FAST               1 (x) 
              9 LOAD_GLOBAL              0 (f) 
             12 LOAD_FAST                1 (x) 
             15 CALL_FUNCTION            1 
             18 YIELD_VALUE          
             19 POP_TOP              
             20 JUMP_ABSOLUTE            3 
        >>   23 LOAD_CONST               0 (None) 
             26 RETURN_VALUE

 

>>> evalledMap = compile('list(map(f,xs))', 'evalledMap', 'eval')
>>> dis.dis(evalledMap)
  1           0 LOAD_NAME                0 (list) 
              3 LOAD_NAME                1 (map) 
              6 LOAD_NAME                2 (f) 
              9 LOAD_NAME                3 (xs) 
             12 CALL_FUNCTION            2 
             15 CALL_FUNCTION            1 
             18 RETURN_VALUE 

It seems it is better to use [...] syntax than list(...). Sadly the map class is a bit opaque to disassembly, but we can make due with our speed test.

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2  
+1 Your first generator is missing a closing paren (in the "Laziness" section). –  Dennis Williamson Jan 21 '12 at 15:15
3  
Believe it or not, some "novice programmers" students learn a functional language first. Not necessarily a bad thing. –  MarcH Aug 1 '12 at 21:57
    
"the very useful itertools module [is] probably considered unpythonic in terms of style". Hmm. I don't like the term "Pythonic" either, so in some sense I don't care what it means, but I don't think it's fair to those who do use it, to say that according to "Pythonicness" builtins map and filter along with standard library itertools are inherently bad style. Unless GvR actually says they were either a terrible mistake or solely for performance, the only natural conclusion if that's what "Pythonicness" says is to forget about it as stupid ;-) –  Steve Jessop Feb 13 at 17:53

You should use map and filter instead of list comprehensions.

An objective reason why you should prefer them even though they're not "Pythonic" is this:
They require functions/lambdas as arguments, which introduce a new scope.

I've gotten bitten by this more than once:

for x, y in somePoints:
    # (several lines of code here)
    squared = [x ** 2 for x in numbers]
    # Oops, x was silently overwritten!

but if instead I had said:

for x, y in somePoints:
    # (several lines of code here)
    squared = map(lambda x: x ** 2, numbers)

then everything would've been fine.

You could say I was being silly for using the same variable name in the same scope.

I wasn't. The code was fine originally -- the two xs weren't in the same scope.
It was only after I moved the inner block to a different section of the code that the problem came up (read: problem during maintenance, not development), and I didn't expect it.

Yes, if you never make this mistake then list comprehensions are more elegant.
But from personal experience (and from seeing others make the same mistake) I've seen it happen enough times that I think it's not worth the pain you have to go through when these bugs creep into your code.

Conclusion:

Use map and filter. They prevent subtle hard-to-diagnose scope-related bugs.

Side note:

Don't forget to consider using imap and ifilter (in itertools) if they are appropriate for your situation!

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2  
Thanks for pointing this out. It hadn't explicitly occurred to me that list comprehension was in the same scope and could be an issue. With that said, I think some of the other answers make it clear that list comprehension should be the default approach most of the time but that this is something to remember. This is also a good general reminder to keep functions (and thus scope) small and have thorough unit tests and use assert statements. –  TimothyAWiseman Nov 21 '12 at 19:00
16  
This bug is fixed in Python 3 –  sindikat Jan 8 '13 at 13:51
    
Or always use generator and when you cannot, you could still use list(x+2 for x in objs). Right? –  JeromeJ Aug 21 '13 at 21:35
    
In my opinion, this one reason is a petty example for making such a bold claim in the first line. It's a completely invalid rationale in python 3, and even in 2.x it is not exactly a subtle bug for anyone that has used python more than a few months. It's probably the most well-known trap, after the mutable default –  wim Dec 17 '13 at 23:39
2  
@wim: This was only about Python 2, although it applies to Python 3 if you want to stay backwards-compatible. I knew about it and I'd been using Python for a while now (yes, more than just a few months), and yet it happened to me. I've seen others who are smarter than me fall into the same trap. If you're so bright and/or experienced that this isn't a problem for you then I'm happy for you, I don't think most people are like you. If they were, there wouldn't be such an urge to fix it in Python 3. –  Mehrdad Dec 17 '13 at 23:48

I find list comprehensions are generally more expressive of what I'm trying to do than map - they both get it done, but the former saves the mental load of trying to understand what could be a complex lambda expression.

There's also an interview out there somewhere (I can't find it offhand) where Guido lists lambdas and the functional functions as the thing he most regrets about accepting into Python, so you could make the argument that they're un-Pythonic by virtue of that.

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8  
Yeah, sigh, but Guido's original intention to remove lambda altogether in Python 3 got a barrage of lobbying against it, so he went back on it despite my stout support -- ah well, guess lambda's just too handy in many SIMPLE cases, the only problem is when it exceeds the bounds of SIMPLE or gets assigned to a name (in which latter case it's a silly hobbled duplicate of def!-). –  Alex Martelli Aug 8 '09 at 3:58
1  
The interview you are thinking about is this one: amk.ca/python/writing/gvr-interview, where Guido says "Sometimes I've been too quick in accepting contributions, and later realized that it was a mistake. One example would be some of the functional programming features, such as lambda functions. lambda is a keyword that lets you create a small anonymous function; built-in functions such as map, filter, and reduce run a function over a sequence type, such as a list." –  Jesse Taylor Mar 24 '11 at 4:30
1  
@Alex, I don't have your years of experience, but I've seen far more over-complicated list comprehensions than lambdas. Of course, abusing language features is always a difficult temptation to resist. It's interesting that list comprehensions (empirically) seem more prone to abuse than lambdas, though I'm not sure why that should be the case. I'll also point out that "hobbled" isn't always a bad thing. Reducing the scope of "things this line might be doing" can sometimes make it easier on the reader. For example, the const keyword in C++ is a great triumph along these lines. –  superbatfish Mar 25 '13 at 15:02

Here is one possible case:

map(lambda op1,op2: op1*op2, list1, list2)

versus:

[op1*op2 for op1,op2 in zip(list1,list2)]

I am guessing the zip() is an unfortunate and unnecessary overhead you need to indulge in if you insist on using list comprehensions instead of the map. Would be great if someone clarifies this whether affirmatively or negatively.

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"[op1*op2 from op1,op2 in zip(list1,list2)]" | s/form/for/ And an equivalent list with out zip: (less readable)[list1[i]*list2[i] for i in range(len(list1))] –  weakish Aug 9 '10 at 2:45
2  
Should be "for" not "from" in your second code quote, @andz, and in @weakish's comment too. I thought I had discovered a new syntactical approach to list comprehensions... Darn. –  physicsmichael Oct 12 '10 at 13:12
2  
to add a very late comment, you can make zip lazy by using itertools.izip –  tcaswell Dec 17 '12 at 21:09
    
@tcaswell No longer needed in Python 3000. –  JeromeJ Aug 21 '13 at 21:38
    
@JeromeJ 2.x will be around for a long time. –  tcaswell Aug 21 '13 at 21:44

Another reason to use list comprehension over map() and filter() is that Psyco can't compile these functions.

See http://psyco.sourceforge.net/

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1  
the link appears to be broken –  robert king Jan 14 '12 at 20:55
7  
According to Psyco's website, the project is unmaintained and dead as of 12 March 2012. They recommend looking at PyPy (pypy.org). –  astay13 Jul 2 '12 at 20:42

Actually, map and list comprehensions behave quite differently in the Python 3 language. Take a look at the following Python 3 program:

def square(x):
    return x*x
squares = map(square, [1, 2, 3])
print(list(squares))
print(list(squares))

You might expect it to print the line "[1, 4, 9]" twice, but instead it prints "[1, 4, 9]" followed by "[]". The first time you look at squares it seems to behave as a sequence of three elements, but the second time as an empty one.

In the Python 2 language map returns a plain old list, just like list comprehensions do in both languages. The crux is that the return value of map in Python 3 (and imap in Python 2) is not a list - it's an iterator!

The elements are consumed when you iterate over an iterator unlike when you iterate over a list. This is why squares looks empty in the last print(list(squares)) line.

To summarize:

  • When dealing with iterators you have to remember that they are stateful and that they mutate as you traverse them.
  • Lists are more predictable since they only change when you explicitly mutate them; they are containers.
  • And a bonus: numbers, strings, and tuples are even more predictable since they cannot change at all; they are values.
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If you plan on writing any asynchronous, parallel, or distributed code, you will probably prefer map over a list comprehension -- as most asynchronous, parallel, or distributed packages provide a map function to overload python's map. Then by passing the appropriate map function to the rest of your code, you may not have to modify your original serial code to have it run in parallel (etc).

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