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I'm trying to time some code. First I used a timing decorator:

#!/usr/bin/env python

import time
from itertools import izip
from random import shuffle

def timing_val(func):
    def wrapper(*arg, **kw):
        '''source: http://www.daniweb.com/code/snippet368.html'''
        t1 = time.time()
        res = func(*arg, **kw)
        t2 = time.time()
        return (t2 - t1), res, func.__name__
    return wrapper

def time_izip(alist, n):
    i = iter(alist)
    return [x for x in izip(*[i] * n)]

def time_indexing(alist, n):
    return [alist[i:i + n] for i in range(0, len(alist), n)]

func_list = [locals()[key] for key in locals().keys()
             if callable(locals()[key]) and key.startswith('time')]
shuffle(func_list)  # Shuffle, just in case the order matters

alist = range(1000000)
times = []
for f in func_list:
    times.append(f(alist, 31))

times.sort(key=lambda x: x[0])
for (time, result, func_name) in times:
    print '%s took %0.3fms.' % (func_name, time * 1000.)


% test.py
time_indexing took 73.230ms.
time_izip took 122.057ms.

And here I use timeit:

%  python - m timeit - s '' 'alist=range(1000000);[alist[i:i+31] for i in range(0, len(alist), 31)]'
10 loops, best of 3:
    64 msec per loop
% python - m timeit - s 'from itertools import izip' 'alist=range(1000000);i=iter(alist);[x for x in izip(*[i]*31)]'
10 loops, best of 3:
    66.5 msec per loop

Using timeit the results are virtually the same, but using the timing decorator it appears time_indexing is faster than time_izip.

What accounts for this difference?

Should either method be believed?

If so, which?

share|improve this question
By the way, the func_name attribute is not reliably available for methods, only for functions, so __name__ may be more preferable instead. Try it with time.sleep. – A-B-B Jun 12 '14 at 16:27
@A-B-B: Thanks for the correction. – unutbu Jun 14 '14 at 16:21
up vote 10 down vote accepted

Use timeit. Running the test more than once gives me much better results.

func_list=[locals()[key] for key in locals().keys() 
           if callable(locals()[key]) and key.startswith('time')]

for f in func_list:
    n = 10
    times.append( min(  t for t,_,_ in (f(alist,31) for i in range(n)))) 

for (time,func_name) in zip(times, func_list):
    print '%s took %0.3fms.' % (func_name, time*1000.)


<function wrapper at 0x01FCB5F0> took 39.000ms.
<function wrapper at 0x01FCB670> took 41.000ms.
share|improve this answer
Yes, that appears to be the reason. Thanks! – unutbu Oct 26 '09 at 13:27
As an FYI, timeit also disables garbage collection for the duration of the test. This can be another gotcha. – Charles Merriam Mar 11 '10 at 22:22

I would use a timing decorator, because you can use annotations to sprinkle the timing around your code rather than making you code messy with timing logic.

import time

def timeit(f):

    def timed(*args, **kw):

        ts = time.time()
        result = f(*args, **kw)
        te = time.time()

        print 'func:%r args:[%r, %r] took: %2.4f sec' % \
          (f.__name__, args, kw, te-ts)
        return result

    return timed

Using the decorator is easy either use annotations.

def compute_magic(n):
     #function definition

Or re-alias the function you want to time.

compute_magic = timeit(compute_magic)
share|improve this answer
I believe using functools.wraps here would be a small improvement – kuzzooroo Aug 23 '14 at 1:40
Out of curiosity was this answer copied from here?: andreas-jung.com/contents/… – emschorsch Mar 22 at 22:44

Use wrapping from functools to improve Matt Alcock's answer.

from functools import wraps
from time import time

def timing(f):
    def wrap(*args, **kw):
        ts = time()
        result = f(*args, **kw)
        te = time()
        print 'func:%r args:[%r, %r] took: %2.4f sec' % \
          (f.__name__, args, kw, te-ts)
        return result
    return wrap

In an example:

def f(a):
    for _ in range(a):
        i = 0
    return -1

Invoking method f wrapped with @timing:

func:'f' args:[(100000000,), {}] took: 14.2240 sec

The advantage of this is that it preserves attributes of the original function; that is, metadata like the function name and docstring is correctly preserved on the returned function.

share|improve this answer

I got tired of from __main__ import foo, now use this -- for simple args, for which %r works, and not in Ipython.
(Why does timeit works only on strings, not thunks / closures i.e. timefunc( f, arbitrary args ) ?)

import timeit

def timef( funcname, *args, **kwargs ):
    """ timeit a func with args, e.g.
            for window in ( 3, 31, 63, 127, 255 ):
                timef( "filter", window, 0 )
    This doesn't work in ipython;
    see Martelli, "ipython plays weird tricks with __main__" in Stackoverflow        
    argstr = ", ".join([ "%r" % a for a in args]) if args  else ""
    kwargstr = ", ".join([ "%s=%r" % (k,v) for k,v in kwargs.items()]) \
        if kwargs  else ""
    comma = ", " if (argstr and kwargstr)  else ""
    fargs = "%s(%s%s%s)" % (funcname, argstr, comma, kwargstr)
        # print "test timef:", fargs
    t = timeit.Timer( fargs, "from __main__ import %s" % funcname )
    ntime = 3
    print "%.0f usec %s" % (t.timeit( ntime ) * 1e6 / ntime, fargs)

if __name__ == "__main__":
    def f( *args, **kwargs ):

        from __main__ import f
        print "ipython plays weird tricks with __main__, timef won't work"
    timef( "f")
    timef( "f", 1 )
    timef( "f", """ a b """ )
    timef( "f", 1, 2 )
    timef( "f", x=3 )
    timef( "f", x=3 )
    timef( "f", 1, 2, x=3, y=4 )

Added: see also "ipython plays weird tricks with main", Martelli in running-doctests-through-ipython

share|improve this answer
Thank you! This certainly makes it easier to drop functions into timeit. You could omit argstr,kwargstr,comma if you use fargs='%s(*%s,**%s)'%(funcname,args,kwargs), but perhaps it makes fargs a little harder to read. – unutbu Oct 28 '09 at 12:26
This doesn't work with large NumPy arrays. – Phillip Cloud Mar 13 '12 at 22:07

Just a guess, but could the difference be the order of magnitude of difference in range() values?

From your original source:


From your timeit example:


For what it's worth, here are the results on my system with the range set to 1 million:

$ python -V
Python 2.6.4rc2

$ python -m timeit -s 'from itertools import izip' 'alist=range(1000000);i=iter(alist);[x for x in izip(*[i]*31)]'
10 loops, best of 3: 69.6 msec per loop

$ python -m timeit -s '' 'alist=range(1000000);[alist[i:i+31] for i in range(0, len(alist), 31)]'
10 loops, best of 3: 67.6 msec per loop

I wasn't able to get your other code to run, since I could not import the "decorator" module on my system.

Update - I see the same discrepancy you do when I run your code without the decorator involved.

$ ./test.py
time_indexing took 84.846ms.
time_izip took 132.574ms.

Thanks for posting this question; I learned something today. =)

share|improve this answer
I've removed the decorator module so my code is easier to run. Would you give it a try? Do you see a distinct difference in speed when you run the script? Also, I changed the range from 10^5 --> 10^6, so the comparison is more equal. Thanks. – unutbu Oct 26 '09 at 12:44
Updated, for what it's worth, but it seems like you got your answer now. No prob. – Mike Oct 26 '09 at 15:53

regardless of this particular exercise, I'd imagine that using timeit is much safer and reliable option. it is also cross-platform, unlike your solution.

share|improve this answer

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