Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have a set of functions:

functions=set(...)

All the functions need one parameter x.

What is the most efficient way in python of doing something similar to:

for function in functions:
   function(x)
share|improve this question
8  
What is wrong with the code you have there? – Roger Pate Nov 23 '09 at 20:54
    
If the rules for making the set allow, I would be tempted to write a dispatch function that would make the appropriate calls in order. That is a more explicit approach. – Stan Graves Nov 23 '09 at 21:20
    
See also: stackoverflow.com/questions/897362/… – Stephan202 Nov 28 '09 at 19:47
up vote 7 down vote accepted

The code you give,

for function in functions:
    function(x)

...does not appear to do anything with the result of calling function(x). If that is indeed so, meaning that these functions are called for their side-effects, then there is no more pythonic alternative. Just leave your code as it is. The point to take home here, specifically, is

                               Avoid functions with side-effects in list-comprehensions.

As for efficiency: I expect that using anything else instead of your simple loop will not improve runtime. When in doubt, use timeit. For example, the following tests seem to indicate that a regular for-loop is faster than a list-comprehension. (I would be reluctant to draw any general conclusions from this test, thought):

>>> timeit.Timer('[f(20) for f in functions]', 'functions = [lambda n: i * n for i in range(100)]').repeat()
[44.727972984313965, 44.752119779586792, 44.577917814254761]
>>> timeit.Timer('for f in functions: f(20)', 'functions = [lambda n: i * n for i in range(100)]').repeat()
[40.320928812026978, 40.491761207580566, 40.303879022598267]

But again, even if these tests would have indicated that list-comprehensions are faster, the point remains that you should not use them when side-effects are involved, for readability's sake.


  : Well, I'd write for f in functions, so that the difference beteen function and functions is more pronounced. But that's not what this question is about.

share|improve this answer
3  
+1 for the "Avoid functions with side-effects in list-comprehensions" reminder. – Stan Graves Nov 23 '09 at 21:18
    
Especially since the order of iterating over set members is not defined – Ber Nov 23 '09 at 22:10

Edit: I redid the test using timeit

My new test code:

import timeit

def func(i):
    return i;

a = b = c = d = e = f = func

functions = [a, b, c, d, e, f]

timer = timeit.Timer("[f(2) for f in functions]", "from __main__ import functions")
print (timer.repeat())

timer = timeit.Timer("map(lambda f: f(2), functions)", "from __main__ import functions")
print (timer.repeat())

timer = timeit.Timer("for f in functions: f(2)", "from __main__ import functions")
print (timer.repeat())

Here is the results from this timing.

testing list comprehension
[1.7169530391693115, 1.7683839797973633, 1.7840299606323242]

testing map(f, l)
[2.5285000801086426, 2.5957231521606445, 2.6551258563995361]    

testing plain loop
[1.1665718555450439, 1.1711149215698242, 1.1652190685272217]

My original, time.time() based timings are pretty much inline with this testing, plain for loops seem to be the most efficient.

share|improve this answer

I'm somewhat doubtful of how much of an impact this will have on the total running time of your program, but I guess you could do something like this:

[func(x) for func in functions]

The downside is that you will create a new list that you immediatly toss away, but it should be slightly faster than just the for-loop.

In any case, make sure you profile your code to confirm that this really is a bottleneck that you need to take care of.

share|improve this answer
    
There's no particular reason that a list comprehension should be faster than the for loop. Such claims require benchmarks. – Greg Hewgill Nov 23 '09 at 21:09
    
wiki.python.org/moin/PythonSpeed/PerformanceTips#Loops seems to indicate that there is a particular reason, namely that the loop gets pushed into compiled C code. True, there are other factors that also contribute, which is why I told him to profile. – Epcylon Nov 26 '09 at 15:36

If you need the output, a list comprehension would work.

[func(x) for func in functions]
share|improve this answer

Your Answer

 
discard

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.