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What I want is to start counting time somewhere in my code and then get the passed time, to measure the time it took to execute few function. I think I'm using the timeit module wrong, but the docs are just confusing for me.

import timeit

start = timeit.timeit()
print "hello"
end = timeit.timeit()
print end - start
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Not sure what exactly you want. What is confusing? –  phaedrus Sep 10 '11 at 9:29
possible duplicate of accurately measure time python function takes –  Ciro Santilli Mar 25 '14 at 8:02

7 Answers 7

If you just want to measure the elapsed wall-clock time between two points, you could use time.time():

import time

start = time.time()
print "hello"
end = time.time()
print end - start

This gives the execution time in seconds.

edit A better option might be to use time.clock (thanks @Amber):

On Unix, return the current processor time as a floating point number expressed in seconds. The precision, and in fact the very definition of the meaning of “processor time”, depends on that of the C function of the same name, but in any case, this is the function to use for benchmarking Python or timing algorithms.

On Windows, this function returns wall-clock seconds elapsed since the first call to this function, as a floating point number, based on the Win32 function QueryPerformanceCounter(). The resolution is typically better than one microsecond.

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and for microseconds, use datetime.time() –  Inca Sep 10 '11 at 9:33
(For performance measurement, time.clock() is actually preferred, since it can't be interfered with if the system clock gets messed with, but .time() does mostly accomplish the same purpose.) –  Amber Sep 10 '11 at 9:34
I think that python -mtimeit is way better as it runs more times and it is build as a native way to measure time in python –  Visgean Skeloru Feb 3 '14 at 22:06

Given a function you'd like to time,


def foo(): 
    # print "hello"   
    return "hello"

the easiest way to use timeit is to call it from the command line:

% python -mtimeit -s'import test' 'test.foo()'
1000000 loops, best of 3: 0.254 usec per loop

Do not try to use time.time or time.clock (naively) to compare the speed of functions. They can give misleading results.

PS. Do not put print statements in a function you wish to time; otherwise the time measured will depend on the speed of the terminal.

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+1 for the terminal issue and native argument –  Visgean Skeloru Feb 3 '14 at 22:04

Using time.time to measure execution gives you the overall execution time of your commands including running time spent by other processes on your computer. It is the time the user notices, but is not good if you want to compare different code snippets / algorithms / functions / ...

More information on timeit:

If you want a deeper insight into profiling:

Update: I used http://pythonhosted.org/line_profiler/ a lot during the last year and find it very helpfull and recommend to use it instead of Pythons profile module.

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Python 3 only:

Since time.clock() is deprecated as of Python 3.3, you will want to use time.perf_counter() for system-wide timing, or time.process_time() for process-wide timing, just the way you used to use time.clock():

import time.process_time

t = time.process_time()
#do some stuff
elapsed_time = time.process_time() - t

The new function process_time will not include time elapsed during sleep.

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Use timeit.default_timer instead of time.perf_counter. The former will choose the appropriate timer to measure the time performance tuned for your platform and Python version. process_time() does not include the time during sleep and therefore it is not appropriate to measure elapsed time. –  J.F. Sebastian Feb 22 at 14:30

The python cProfile and pstats modules offer great support for measuring time elapsed in certain functions without having to add any code around the existing functions.

For example if you have a python script timeFunctions.py:

import time

def hello():
    print "Hello :)"

def thankyou():
    print "Thank you!"

for idx in range(10):

for idx in range(100):

To run the profiler and generate stats for the file you can just run:

python -m cProfile -o timeStats.profile timeFunctions.py

What this is doing is using the cProfile module to profile all functions in timeFunctions.py and collecting the stats in the timeStats.profile file. Note that we did not have to add any code to existing module (timeFunctions.py) and this can be done with any module.

Once you have the stats file you can run the pstats module as follows:

python -m pstats timeStats.profile

This runs the interactive statistics browser which gives you a lot of nice functionality. For your particular use case you can just check the stats for your function. In our example checking stats for both functions shows us the following:

Welcome to the profile statistics browser.
timeStats.profile% stats hello
<timestamp>    timeStats.profile

         224 function calls in 6.014 seconds

   Random listing order was used
   List reduced from 6 to 1 due to restriction <'hello'>

   ncalls  tottime  percall  cumtime  percall filename:lineno(function)
       10    0.000    0.000    1.001    0.100 timeFunctions.py:3(hello)

timeStats.profile% stats thankyou
<timestamp>    timeStats.profile

         224 function calls in 6.014 seconds

   Random listing order was used
   List reduced from 6 to 1 due to restriction <'thankyou'>

   ncalls  tottime  percall  cumtime  percall filename:lineno(function)
      100    0.002    0.000    5.012    0.050 timeFunctions.py:7(thankyou)

The dummy example does not do much but give you an idea of what can be done. The best part about this approach is that I dont have to edit any of my existing code to get these numbers and obviously help with profiling.

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All this is fine, but AFAICT this still measures CPU time, not wall clock time. –  ShreevatsaR Apr 10 '14 at 14:34
Actually there is some confusion; it appears cProfile does look at wall-clock time by default. I've upvoted your answer. –  ShreevatsaR Apr 10 '14 at 14:42

Use timeit.default_timer instead of timeit.timeit. The former provides the best clock available on your platform and version of Python automatically:

from timeit import default_timer as timer

start = timer()
# ...
end = timer()
print(end - start)      

timeit.default_timer is assigned to time.time() or time.clock() depending on OS. On Python 3.3+ default_timer is time.perf_counter() on all platforms. See Python - time.clock() vs. time.time() - accuracy?

See also:

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@unutbu: OP uses (incorrectly) timeit.timeit. See the code example in the question. –  J.F. Sebastian Dec 23 '14 at 15:49

you can use %timeit to measure average processing time:

def foo():
    print "hello"

and then:

%timeit foo()

the result is something like:

10000 loops, best of 3: 27 µs per loop
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With Ipyhon only. –  guneysus Dec 11 '14 at 17:49

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