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()
end = timeit.timeit()
print(end - start)
  • 1
    The correct way to use timeit is: >>> t = timeit.Timer('char in text', setup='text = "sample string"; char = "g"') >>> t.timeit() – GY_ Jun 18 '15 at 14:10
  • 2
    Mh. This gives me negative values? Is my code too fast :P – stephanmg Apr 18 at 15:45
  • This question should be clarified : do you want to know the elapsed time (wall-clock time), or the amount of CPU this process consumed ? – Franklin Piat Jul 26 at 9:11

27 Answers 27


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

import time

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

This gives the execution time in seconds.

Another option since 3.3 might be to use perf_counter or process_time, depending on your requirements. Before 3.3 it was recommended to use time.clock (thanks Amber). However, it is currently deprecated:

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.

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.

Deprecated since version 3.3: The behaviour of this function depends on the platform: use perf_counter() or process_time() instead, depending on your requirements, to have a well defined behaviour.

  • 14
    and for microseconds, use datetime.time() – Inca Sep 10 '11 at 9:33
  • 99
    (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
  • 4
    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
  • 4
    Is there a nice way of converting resulting execturion time in seconds to something like HH:MM::SS? – Danijel Feb 4 '16 at 10:05
  • 12
    @Danijel: print(timedelta(seconds=execution_time)). Though it is a separate question. – jfs Apr 6 '16 at 19:15

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) # Time in seconds, e.g. 5.38091952400282

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:

  • 12
    Excellent answer - using timeit will produce far more accurate results since it will automatically account for things like garbage collection and OS differences – lkgarrison Dec 11 '16 at 3:16
  • 1
    This gives time in ms or seconds? – Katie Feb 8 '17 at 16:52
  • 2
    @KhushbooTiwari in fractional seconds. – jfs Feb 8 '17 at 16:59
  • 1
    I think this note from the official documentation needs to be added default_timer() measurations can be affected by other programs running on the same machine, so the best thing to do when accurate timing is necessary is to repeat the timing a few times and use the best time. The -r option is good for this; the default of 3 repetitions is probably enough in most cases. On Unix, you can use time.clock() to measure CPU time. – KGS Jul 6 '17 at 10:00
  • 1
    @KGS: Performance measurement is very tricky in a subtle way (it is easy to mislead yourself). There are many other remarks that could be relevant here. Follow the links in the answer. You might be also interested in the perf module (nonexistent at the time of the answer) that provides the same interface but it sometimes makes different from the timeit module decisions about how to measure time performance. – jfs Jul 6 '17 at 13:52

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

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.

  • 25
    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. – jfs Feb 22 '15 at 14:30
  • 2
    I'm using the implementation suggested by Pierre, are the values given in seconds? – ugotchi Aug 12 '16 at 8:01
  • This answer seems off-topic (well, the question wasn't very specific). There are two "time" measurement : wall-clock time between two points, of the cpu consumption of the process. – Franklin Piat Jul 26 at 9:08

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.


It's fun to do this with a context-manager that automatically remembers the start time upon entry to a with block, then freezes the end time on block exit. With a little trickery, you can even get a running elapsed-time tally inside the block from the same context-manager function.

The core library doesn't have this (but probably ought to). Once in place, you can do things like:

with elapsed_timer() as elapsed:
    # some lengthy code
    print( "midpoint at %.2f seconds" % elapsed() )  # time so far
    # other lengthy code

print( "all done at %.2f seconds" % elapsed() )

Here's contextmanager code sufficient to do the trick:

from contextlib import contextmanager
from timeit import default_timer

def elapsed_timer():
    start = default_timer()
    elapser = lambda: default_timer() - start
    yield lambda: elapser()
    end = default_timer()
    elapser = lambda: end-start

And some runnable demo code:

import time

with elapsed_timer() as elapsed:

Note that by design of this function, the return value of elapsed() is frozen on block exit, and further calls return the same duration (of about 6 seconds in this toy example).


I prefer this. timeit doc is far too confusing.

from datetime import datetime 

start_time = datetime.now() 


time_elapsed = datetime.now() - start_time 

print('Time elapsed (hh:mm:ss.ms) {}'.format(time_elapsed))

Note, that there isn't any formatting going on here, I just wrote hh:mm:ss into the printout so one can interpret time_elapsed

  • I was told that timeit calculates the CPU time, does datetime also take into account CPU time used? Are these the same thing? – Sreehari R Dec 29 '17 at 7:21
  • It's risky to measure elapsed time this way because datetime.now() can change between the two calls for reasons like network time syncing, daylight savings switchover or the user twiddling the clock. – user1318499 Jul 22 at 2:20

Measuring time in seconds:

from timeit import default_timer as timer
from datetime import timedelta

start = timer()
end = timer()


  • 1
    I keep coming back to this page, to search for this specific example. – Dave Liu Sep 24 at 20:30

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.


Here is a tiny timer class that returns "hh:mm:ss" string:

class Timer:
  def __init__(self):
    self.start = time.time()

  def restart(self):
    self.start = time.time()

  def get_time_hhmmss(self):
    end = time.time()
    m, s = divmod(end - self.start, 60)
    h, m = divmod(m, 60)
    time_str = "%02d:%02d:%02d" % (h, m, s)
    return time_str


# Start timer
my_timer = Timer()

# ... do something

# Get time string:
time_hhmmss = my_timer.get_time_hhmmss()
print("Time elapsed: %s" % time_hhmmss )

# ... use the timer again

# ... do something

# Get time:
time_hhmmss = my_timer.get_time_hhmmss()

# ... etc

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.

  • All this is fine, but AFAICT this still measures CPU time, not wall clock time. – ShreevatsaR Apr 10 '14 at 14:34
  • 1
    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
  • FYI: If you get python -m pstats timeStats.profile ValueError: bad marshal data (unknown type code) check your python version you are running. I got this when i ran python3 -m cProfile... and python -m pstats. My mistake but got me for a second, so, I wanted to share don't forget consistency. =) – JayRizzo Oct 26 '18 at 5:51

Here's another context manager for timing code -


from benchmark import benchmark

with benchmark("Test 1+1"):
Test 1+1 : 1.41e-06 seconds

or, if you need the time value

with benchmark("Test 1+1") as b:
Test 1+1 : 7.05e-07 seconds


from timeit import default_timer as timer

class benchmark(object):

    def __init__(self, msg, fmt="%0.3g"):
        self.msg = msg
        self.fmt = fmt

    def __enter__(self):
        self.start = timer()
        return self

    def __exit__(self, *args):
        t = timer() - self.start
        print(("%s : " + self.fmt + " seconds") % (self.msg, t))
        self.time = t

Adapted from http://dabeaz.blogspot.fr/2010/02/context-manager-for-timing-benchmarks.html


It's 2019 now. Let's do it with a conciser way:

from ttictoc import TicToc
t = TicToc() ## TicToc("name")
# your code ...

Advantages of using this approch instead of others:

  1. Concise and straightforward. it doesn't requre programmer to write extra variables like:
    t1 = time()
    t2 = time()
    elapsed = t2 - t1
  2. With nesting
t = TicToc(nested=True)
some code1...
some code2...
some code3...
print(t.toc()) # Prints time for code 3 
print(t.toc()) # Prints time for code 2 with code 3
print(t.toc()) # Prints time for code 1 with code 2 and 3
  1. Preserve names of your tictoc.
t = TicToc("save user")

Please refer to this link for more detailed instructions.

  • 1
    It would be good to explain the advantage of using this library over other approaches. – hlg Jul 8 at 5:50
  • The nested functionality is actually broken. I opened an issue describing where the problem in the code is but the repo hasn't been maintained in a year so I wouldn't expect a change. – PetarMI Jul 10 at 14:04
  • I find the nesting a little confusing. If I were to come across t.tic() buried in the code, it's up to me the developer to keep a mental list of where in the series I should expect this to be. Do you find yourself setting up nests or just multiple tictocs? – ScottieB 23 hours ago

Use profiler module. It gives a very detailed profile.

import profile

it outputs something like:

          5 function calls in 0.047 seconds

   Ordered by: standard name

   ncalls  tottime  percall  cumtime  percall filename:lineno(function)
        1    0.000    0.000    0.000    0.000 :0(exec)
        1    0.047    0.047    0.047    0.047 :0(setprofile)
        1    0.000    0.000    0.000    0.000 <string>:1(<module>)
        0    0.000             0.000          profile:0(profiler)
        1    0.000    0.000    0.047    0.047 profile:0(main())
        1    0.000    0.000    0.000    0.000 two_sum.py:2(twoSum)

I've found it very informative.

  • What is main()? Would be more useful if you could provide a simple code example. – not2qubit Sep 26 '18 at 10:17

Here are my findings after going through many good answers here as well as few other articles.

First, you always want to use timeit and not time.time (and in many cases perf counter APIs) because

  1. timeit selects the best timer available on your OS and Python version.
  2. timeit disables garbage collection however this is not something you may or may not want.

Now the problem is that timeit is not that simple to use because it needs setup and things get ugly when you have bunch of imports. Ideally you just want a decorator or use with block and measure time. Unfortunately there is nothing built-in available for this so I created below little utility module.

Timing Utility Module

# utils.py
from functools import wraps
import gc
import timeit

def MeasureTime(f):
    def _wrapper(*args, **kwargs):
        gcold = gc.isenabled()
        start_time = timeit.default_timer()
            result = f(*args, **kwargs)
            elapsed = timeit.default_timer() - start_time
            if gcold:
            print('Function "{}": {}s'.format(f.__name__, elapsed))
        return result
    return _wrapper

class MeasureBlockTime:
    def __init__(self,name="(block)", no_print = False, disable_gc = True):
        self.name = name
        self.no_print = no_print
        self.disable_gc = disable_gc
    def __enter__(self):
        if self.disable_gc:
            self.gcold = gc.isenabled()
        self.start_time = timeit.default_timer()
    def __exit__(self,ty,val,tb):
        self.elapsed = timeit.default_timer() - self.start_time
        if self.disable_gc and self.gcold:
        if not self.no_print:
            print('Function "{}": {}s'.format(self.name, self.elapsed))
        return False #re-raise any exceptions

How to Time Functions

Now you can time any function just by putting a decorator in front of it:

import utils

def MyBigFunc():
    #do something time consuming
    for i in range(10000):

How to Time Code Blocks

If you want to time portion of code then just put it inside with block:

import utils

#somewhere in my code

with utils.MeasureBlockTime("MyBlock"):
    #do something time consuming
    for i in range(10000):

# rest of my code


There are several half-backed versions floating around so I want to point out few highlights:

  1. Use timer from timeit instead of time.time for reasons described earlier.
  2. Disable GC during timing.
  3. Decorator accepts functions with named or unnamed params.
  4. Ability to disable printing in block timing (use with utils.MeasureBlockTime() as t and then t.elapsed).
  5. Ability to keep gc enabled for block timing.

(With Ipython only) 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
  • 3
    It worth to mention it is possible to pass flags to %timeit, for example -n specifies how many times the code should be repeated. – raacer Dec 15 '16 at 12:50

on python3:

from time import sleep, perf_counter as pc
t0 = pc()

elegant and short.

  • what is this? ms? – KIC Sep 11 at 16:47

I like it simple (python 3):

from timeit import timeit

timeit(lambda: print("hello"))

Output is microseconds for a single execution:


Explanation: timeit executes the anonymous function 1 million times by default and the result is given in seconds. Therefore the result for 1 single execution is the same amount but in microseconds on average.

For slow operations add a lower number of iterations or you could be waiting forever:

import time

timeit(lambda: time.sleep(1.5), number=1)

Output is always in seconds for the total number of iterations:


Kind of a super later response, but maybe it serves a purpose for someone. This is a way to do it which I think is super clean.

import time

def timed(fun, *args):
    s = time.time()
    r = fun(*args)
    print('{} execution took {} seconds.'.format(fun.__name__, time.time()-s))

timed(print, "Hello")

Keep in mind that "print" is a function in Python 3 and not Python 2.7. However, it works with any other function. Cheers!

  • How can I print very small times? I kind of am getting 0.0sec always – Rowland Mtetezi Nov 27 '17 at 9:26
  • You can turn this into a decorator; this looks even better to me. – Daniel Moskovich Oct 10 '18 at 8:04

One more way to use timeit:

from timeit import timeit

def func():
    return 1 + 1

time = timeit(func, number=1)

We can also convert time into human-readable time.

import time, datetime

start = time.clock()

def num_multi1(max):
    result = 0
    for num in range(0, 1000):
        if (num % 3 == 0 or num % 5 == 0):
            result += num

    print "Sum is %d " % result


end = time.clock()
value = end - start
timestamp = datetime.datetime.fromtimestamp(value)
print timestamp.strftime('%Y-%m-%d %H:%M:%S')

I made a library for this, if you want to measure a function you can just do it like this

from pythonbenchmark import compare, measure
import time

a,b,c,d,e = 10,10,10,10,10
something = [a,b,c,d,e]

def myFunction(something):

def myOptimizedFunction(something):




To get insight on every function calls recursively, do:

%load_ext snakeviz

It just takes those 2 lines of code in a Jupyter notebook, and it generates a nice interactive diagram. For example:

enter image description here

Here is the code. Again, the 2 lines starting with % are the only extra lines of code needed to use snakeviz:

# !pip install snakeviz
%load_ext snakeviz
import glob
import hashlib


files = glob.glob('*.txt')
def print_files_hashed(files):
    for file in files:
        with open(file) as f:

It also seems possible to run snakeviz outside notebooks. More info on the snakeviz website.


You can use timeit.

Here is an example on how to test naive_func that takes parameter using Python REPL:

>>> import timeit                                                                                         

>>> def naive_func(x):                                                                                    
...     a = 0                                                                                             
...     for i in range(a):                                                                                
...         a += i                                                                                        
...     return a                                                                                          

>>> def wrapper(func, *args, **kwargs):                                                                   
...     def wrapper():                                                                                    
...         return func(*args, **kwargs)                                                                  
...     return wrapper                                                                                    

>>> wrapped = wrapper(naive_func, 1_000)                                                                  

>>> timeit.timeit(wrapped, number=1_000_000)                                                              

You don't need wrapper function if function doesn't have any parameters.


The only way I can think of is using time.time().

import time
start = time.time()
sleep(5) #just to give it some delay to show it working
finish = time.time()
elapsed = finish - start

Hope that will help.


This unique class-based approach offers a printable string representation, customizable rounding, and convenient access to the elapsed time as a string or a float. It was developed with Python 3.7.

import datetime
import timeit

class Timer:
    """Measure time used."""
    # Ref: https://stackoverflow.com/a/57931660/

    def __init__(self, round_ndigits: int = 0):
        self._round_ndigits = round_ndigits
        self._start_time = timeit.default_timer()

    def __call__(self) -> float:
        return timeit.default_timer() - self._start_time

    def __str__(self) -> str:
        return str(datetime.timedelta(seconds=round(self(), self._round_ndigits)))


>>> timer = Timer()

>>> # Access as a string
>>> print(f'Time elapsed is {timer}.')
Time elapsed is 0:00:03.
>>> print(f'Time elapsed is {timer}.')
Time elapsed is 0:00:04.

>>> # Access as a float
>>> timer()
>>> timer()

In addition to %timeit in ipython you can also use %%timeit for multi-line code snippets:

In [1]: %%timeit
   ...: complex_func()
   ...: 2 + 2 == 5

1 s ± 1.93 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)

Also it can be used in jupyter notebook the same way, just put magic %%timeit at the beginning of cell.


Better use timeit simply: (it run multiple runs for the same command and give you the results).

Example is given below:

%timeit import pandas as pd

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