# Higher Order Functions vs loops - running time & memory efficiency?

Does using Higher Order Functions & Lambdas make running time & memory efficiency better or worse? For example, to multiply all numbers in a list :

``````nums = [1,2,3,4,5]
prod = 1
for n in nums:
prod*=n
``````

vs

``````prod2 = reduce(lambda x,y:x*y , nums)
``````

Does the HOF version have any advantage over the loop version other than it's lesser lines of code/uses a functional approach?

EDIT:

I am not able to add this as an answer as I don't have the required reputation. I tied to profile the loop & HOF approach using timeit as suggested by @DSM

``````def test1():
s= """
nums = [a for a in range(1,1001)]
prod = 1
for n in nums:
prod*=n
"""
t = timeit.Timer(stmt=s)
return t.repeat(repeat=10,number=100)

def test2():
s="""
nums = [a for a in range(1,1001)]
prod2 = reduce(lambda x,y:x*y , nums)
"""
t = timeit.Timer(stmt=s)
return t.repeat(repeat=10,number=100)
``````

And this is my result:

``````Loop:
[0.08340786340144211, 0.07211491653462579, 0.07162720686361926, 0.06593182661083438, 0.06399049758613146, 0.06605228229559557, 0.06419744588664211, 0.0671893658461038, 0.06477527090075941, 0.06418023793167627]
test1 average: 0.0644778902685
HOF:
[0.0759414223099324, 0.07616920129277016, 0.07570730355421262, 0.07604965128984942, 0.07547092059389193, 0.07544737286604364, 0.075532959799953, 0.0755039779810629, 0.07567424616704144, 0.07542563650187661]
test2 average: 0.0754917512762
``````

On an average loop approach seems to be faster than using HOFs.

-
Are you familiar with the timeit module? You can test the performance yourself. –  DSM Jan 28 '12 at 1:28
No, I am not familiar it. I will google for timeit. I guess that a profiling tool. But still I'd like to know the advantage of HOFs from a theoretical perspective. –  RBK Jan 28 '12 at 1:30
@RBK The problem is that the theoretical perspective won't answer your question (running time & memory efficiency). –  Icarus Jan 28 '12 at 1:36
See Alex Martelli's answer to Making a flat list out of list of lists in Python for a nice way to compare. –  Johnsyweb Jan 28 '12 at 1:43
@DSM, I've tried out profiling with timeit. I am not able to answer my own question as I am 1 reputation point short of being allowed to answer my own question. I shall post my findings as an answer soon. –  RBK Jan 28 '12 at 2:06

Higher-order functions can be very fast.

For example, `map(ord, somebigstring)` is much faster than the equivalent list comprehension `[ord(c) for c in somebigstring]`. The former wins for three reasons:

• map() pre-sizes the result string to the length of somebigstring. In contrast, the list-comprehension must make many calls to realloc() as it grows.

• map() only has to do one lookup for ord, first checking globals, then checking and finding it in builtins. The list comprehension has to repeat this work on every iteration.

• The inner loop for map runs at C speed. The loop body for the list comprehension is a series of pure Python steps that each need to be dispatched or handled by the eval-loop.

Here are some timings to confirm the prediction:

``````>>> from timeit import Timer
>>> print min(Timer('map(ord, s)', 's="x"*10000').repeat(7, 1000))
0.808364152908
>>> print min(Timer('[ord(c) for c in s]', 's="x"*10000').repeat(7, 1000))
1.2946639061
``````
-
Oh, I see that map() does many things more efficiently than other ways. I guess the speed would depend on what we are trying to accomplish. The discussions for Making a flat list out of list of lists in Python seems to suggest HOFs aren't the fastest. –  RBK Jan 28 '12 at 2:34
The use HOF is incidental to that discussion. The timings there are dominated by other factors such as function call overhead. –  Raymond Hettinger Jan 28 '12 at 3:52
Yes, map seems to be faster. I tried your profiling code and got the same results. I am going to do some more profiling to convince myself :) –  RBK Jan 28 '12 at 5:17