Project Euler and other coding contests often have a maximum time to run or people boast of how fast their particular solution runs. With python, sometimes the approaches are somewhat kludgey - i.e., adding timing code to __main__.

What is a good way to profile how long a python program takes to run?

  • 88
    Project euler programs shouldn't need profiling. Either you have an algorithm that works in under a minute, or you have entirely the wrong algorithm. "Tuning" is rarely appropriate. You generally have to take a fresh approach. – S.Lott Feb 24 '09 at 16:52
  • 69
    S.Lott: Profiling is often a helpful way to determine which subroutines are slow. Subroutines that take a long time are great candidates for algorithmic improvement. – stalepretzel Sep 14 '12 at 3:25
  • 8
    @stalepretzel, Dave: I wrote that comment years ago. I stand corrected, and have since answered a few of my own questions :). However, I still feel cProfile isn't that great. runsnakerun and pycallgraph are easier for me to use. – gatoatigrado Oct 4 '12 at 20:36
  • If you want to know how long something takes, for the purpose of a competition then you shouldn't add any profiling code since that will slow it down. Just use the unix time command and it will tell you how long something took. – dalore Jun 14 '16 at 15:37

23 Answers 23

up vote 1124 down vote accepted

Python includes a profiler called cProfile. It not only gives the total running time, but also times each function separately, and tells you how many times each function was called, making it easy to determine where you should make optimizations.

You can call it from within your code, or from the interpreter, like this:

import cProfile'foo()')

Even more usefully, you can invoke the cProfile when running a script:

python -m cProfile

To make it even easier, I made a little batch file called 'profile.bat':

python -m cProfile %1

So all I have to do is run:


And I get this:

1007 function calls in 0.061 CPU seconds

Ordered by: standard name
ncalls  tottime  percall  cumtime  percall filename:lineno(function)
    1    0.000    0.000    0.061    0.061 <string>:1(<module>)
 1000    0.051    0.000    0.051    0.000<lambda>)
    1    0.005    0.005    0.061    0.061<module>)
    1    0.000    0.000    0.061    0.061 {execfile}
    1    0.002    0.002    0.053    0.053 {map}
    1    0.000    0.000    0.000    0.000 {method 'disable' of '_lsprof.Profiler objects}
    1    0.000    0.000    0.000    0.000 {range}
    1    0.003    0.003    0.003    0.003 {sum}

EDIT: Updated link to a good video resource from PyCon 2013 titled Python Profiling
Also via YouTube.

  • 223
    Also it is useful to sort the results, that can be done by -s switch, example: '-s time'. You can use cumulative/name/time/file sorting options. – Jiri Feb 25 '09 at 17:41
  • 6
    Unfortunately, though, you can't sort percall for either the total or cumulative times, which is a major deficiency IMO. – Joe Shaw Dec 17 '09 at 16:31
  • 14
    It is also worth noting that you can use the cProfile module from ipython using the magic function %prun (profile run). First import your module, and then call the main function with %prun: import euler048; %prun euler048.main() – RussellStewart Mar 31 '14 at 19:58
  • 45
    For visualizing cProfile dumps (created by python -m cProfile -o <out.profile> <script>), RunSnakeRun, invoked as runsnake <out.profile> is invaluable. – ikdc May 5 '14 at 1:33
  • 7
    @NeilG even for python 3, cprofile is still recommended over profile. – trichoplax Jan 4 '15 at 2:43

A while ago I made pycallgraph which generates a visualisation from your Python code. Edit: I've updated the example to work with the latest release.

After a pip install pycallgraph and installing GraphViz you can run it from the command line:

pycallgraph graphviz -- ./

Or, you can profile particular parts of your code:

from pycallgraph import PyCallGraph
from pycallgraph.output import GraphvizOutput

with PyCallGraph(output=GraphvizOutput()):

Either of these will generate a pycallgraph.png file similar to the image below:

enter image description here

  • 26
    Are you coloring based on the amount of calls? If so, you should color based on time because the function with the most calls isn't always the one that takes the most time. – red Aug 6 '13 at 12:21
  • 16
    @red You can customise colours however you like, and even independently for each measurement. For example red for calls, blue for time, green for memory usage. – Gerald Kaszuba Aug 6 '13 at 22:18
  • 2
    getting this errorTraceback (most recent call last): /", line 90, in generate output.done() File "/net_downloaded/pycallgraph-develop/pycallgraph/output/", line 94, in done source = self.generate() File "/net_downloaded/pycallgraph-develop/pycallgraph/output/", line 143, in generate indent_join.join(self.generate_attributes()), File "/net_downloaded/pycallgraph-develop/pycallgraph/output/", line 169, in generate_attributes section, self.attrs_from_dict(attrs), ValueError: zero length field name in format – Ciasto piekarz Aug 18 '14 at 11:39
  • 3
    I updated this to mention that you need to install GraphViz for things to work as described. On Ubuntu this is just sudo apt-get install graphviz. – mlissner Nov 18 '15 at 17:55
  • 1
    This requires a bit of work to install here is 3 steps to help. 1. Install via pip, 2. Install GraphViz via exe 3. Set up path variables to GraphViz directory 4. Figure out how to fix all the other errors. 5. Figure out where it saves the png file? – marsh Mar 24 '16 at 17:07

It's worth pointing out that using the profiler only works (by default) on the main thread, and you won't get any information from other threads if you use them. This can be a bit of a gotcha as it is completely unmentioned in the profiler documentation.

If you also want to profile threads, you'll want to look at the threading.setprofile() function in the docs.

You could also create your own threading.Thread subclass to do it:

class ProfiledThread(threading.Thread):
    # Overrides
    def run(self):
        profiler = cProfile.Profile()
            return profiler.runcall(, self)
            profiler.dump_stats('myprofile-%d.profile' % (self.ident,))

and use that ProfiledThread class instead of the standard one. It might give you more flexibility, but I'm not sure it's worth it, especially if you are using third-party code which wouldn't use your class.

  • 1
    I don't see any reference to runcall in the documentation either. Giving a look at, I'm not sure why you use the function nor self as argument. I'd have expected to see a reference to another thread's run method here. – PypeBros Nov 9 '11 at 11:14
  • It's not in the documentation, but it is in the module. See That allows you to profile a specific function call, and in our case we want to profile the Thread's target function, which is what the call executes. But as I said in the answer, it's probably not worth it to subclass Thread, since any third-party code won't use it, and to instead use threading.setprofile(). – Joe Shaw Nov 9 '11 at 14:04
  • 9
    wrapping the code with profiler.enable() and profiler.disable() seems to work quite well, too. That's basically what runcall do and it doesn't enforce any number of argument or similar things. – PypeBros Nov 10 '11 at 10:58
  • 1
    I combined my own… with and it kindof works ;!-) – Dima Tisnek Jul 11 '12 at 15:05
  • 1
    Joe, do you know how the profiler plays with asyncio in Python 3.4? – Nick Chammas Jun 17 '15 at 22:44

The python wiki is a great page for profiling resources:

as is the python docs:

as shown by Chris Lawlor cProfile is a great tool and can easily be used to print to the screen:

python -m cProfile -s time <args>

or to file:

python -m cProfile -o output.file <args>

PS> If you are using Ubuntu, make sure to install python-profile

sudo apt-get install python-profiler 

If you output to file you can get nice visualizations using the following tools

PyCallGraph : a tool to create call graph images

 sudo pip install pycallgraph


 pycallgraph args


 gimp pycallgraph.png

You can use whatever you like to view the png file, I used gimp
Unfortunately I often get

dot: graph is too large for cairo-renderer bitmaps. Scaling by 0.257079 to fit

which makes my images unusably small. So I generally create svg files:

pycallgraph -f svg -o pycallgraph.svg <args>

PS> make sure to install graphviz (which provides the dot program):

sudo pip install graphviz

Alternative Graphing using gprof2dot via @maxy / @quodlibetor :

sudo pip install gprof2dot
python -m cProfile -o profile.pstats
gprof2dot -f pstats profile.pstats | dot -Tsvg -o mine.svg
  • 11
    gprof2dot can do those graphs too. I think the output is a bit nicer (example). – maxy May 13 '12 at 15:19
  • 2
    graphviz is also required if you are using OSX – Vaibhav Mishra Jan 30 '14 at 12:26
  • 1
    On my Ubuntu 14.04 installation, sudo apt-get install gprof2dot results in an E: Unable to locate package gprof2dot error. But if I run sudo pip install gprof2dot it works fine. Are you sure you meant apt-get and not pip install? – Michael Osl Sep 21 '14 at 12:16
  • I made the edit, PS: you might want to look into python virtualenv, or conda if you are using the anaconda distribution of python. They keep it so that you don't have to pollute you make python site packages with package that you are downloading for one single project. – brent.payne Sep 21 '14 at 23:56
  • You are right pip install not apt-get install, I changed it above. – brent.payne Oct 13 '14 at 17:18

@Maxy's comment on this answer helped me out enough that I think it deserves its own answer: I already had cProfile-generated .pstats files and I didn't want to re-run things with pycallgraph, so I used gprof2dot, and got pretty svgs:

$ sudo apt-get install graphviz
$ git clone
$ ln -s "$PWD"/gprof2dot/ ~/bin
$ -f pstats profile.pstats | dot -Tsvg -o callgraph.svg

and BLAM!

It uses dot (the same thing that pycallgraph uses) so output looks similar. I get the impression that gprof2dot loses less information though:

gprof2dot example output

  • 1
    Good approach, works really well as you can view SVG in Chrome etc and scale it up/down. Third line has typo, should be: ln -s pwd/gprof2dot/ $HOME/bin (or use ln -s $PWD/gprof2dot/ ~/bin in most shells - grave accent is taken as formatting in first version). – RichVel Jan 4 '13 at 14:24
  • 2
    Ah, good point. I get ln's argument-order wrong almost every time. – quodlibetor Jan 4 '13 at 15:52
  • 6
    the trick is to remember that ln and cp have the same argument order - think of it as 'copying file1 to file2 or dir2, but making a link' – RichVel Jan 4 '13 at 15:54
  • That makes sense, I think the use of "TARGET" in the manpage throws me. – quodlibetor Jan 4 '13 at 18:11
  • 1
    ln -s from to ;) – Ярослав Рахматуллин Jul 4 '13 at 3:10

I ran into a handy tool called SnakeViz when researching this topic. SnakeViz is a web-based profiling visualization tool. It is very easy to install and use. The usual way I use it is to generate a stat file with %prun and then do analysis in SnakeViz.

The main viz technique used is Sunburst chart as shown below, in which the hierarchy of function calls is arranged as layers of arcs and time info encoded in their angular widths.

The best thing is you can interact with the chart. For example, to zoom in one can click on an arc, and the arc and its descendants will be enlarged as a new sunburst to display more details.

enter image description here

Also worth mentioning is the GUI cProfile dump viewer RunSnakeRun. It allows you to sort and select, thereby zooming in on the relevant parts of the program. The sizes of the rectangles in the picture is proportional to the time taken. If you mouse over a rectangle it highlights that call in the table and everywhere on the map. When you double-click on a rectangle it zooms in on that portion. It will show you who calls that portion and what that portion calls.

The descriptive information is very helpful. It shows you the code for that bit which can be helpful when you are dealing with built-in library calls. It tells you what file and what line to find the code.

Also want to point at that the OP said 'profiling' but it appears he meant 'timing'. Keep in mind programs will run slower when profiled.

enter image description here

I think that cProfile is great for profiling, while kcachegrind is great for visualizing the results. The pyprof2calltree in between handles the file conversion.

python -m cProfile -o script.profile
pyprof2calltree -i script.profile -o script.calltree
kcachegrind script.calltree

To install the required tools (on Ubuntu, at least):

apt-get install kcachegrind
pip install pyprof2calltree

The result:

Screenshot of the result

  • Mac Users install brew install qcachegrind and substitude each kcachegrind with qcachegrind in the description for successful profiling. – Kevin Katzke Dec 17 '17 at 17:58

A nice profiling module is the line_profiler (called using the script It can be downloaded here.

My understanding is that cProfile only gives information about total time spent in each function. So individual lines of code are not timed. This is an issue in scientific computing since often one single line can take a lot of time. Also, as I remember, cProfile didn't catch the time I was spending in say


line_profiler (already presented here) also inspired pprofile, which is described as:

Line-granularity, thread-aware deterministic and statistic pure-python profiler

It provides line-granularity as line_profiler, is pure Python, can be used as a standalone command or a module, and can even generate callgrind-format files that can be easily analyzed with [k|q]cachegrind.


There is also vprof, a Python package described as:

[...] providing rich and interactive visualizations for various Python program characteristics such as running time and memory usage.


Simplest and quickest way to find where all the time is going.

1. pip install snakeviz

2. python -m cProfile -o temp.dat <PROGRAM>.py

3. snakeviz temp.dat

Draws a pie chart in a browser. Biggest piece is the problem function. Very simple.

  • this is the best answer and works on windows like a charm. Thanks! – echo Jun 28 at 1:55

Following Joe Shaw's answer about multi-threaded code not to work as expected, I figured that the runcall method in cProfile is merely doing self.enable() and self.disable() calls around the profiled function call, so you can simply do that yourself and have whatever code you want in-between with minimal interference with existing code.

  • 3
    Excellent tip! A quick peek at's source code reveals that's exactly what runcall() does. Being more specific, after creating a Profile instance with prof = cprofile.Profile(), immediately call prof.disable(), and then just add prof.enable() and prof.disable() calls around the section of code you want profiled. – martineau Oct 21 '12 at 21:39
  • This is very helpful, but it seems the code that is actually between enable and disable is not profiled -- only the functions it calls. Do I have this right? I'd have to wrap that code in a function call for it to count toward any of the numbers in print_stats(). – Bob Stein May 9 '17 at 13:18

There's a lot of great answers but they either use command line or some external program for profiling and/or sorting the results.

I really missed some way I could use in my IDE (eclipse-PyDev) without touching the command line or installing anything. So here it is.

Profiling without command line

def count():
    from math import sqrt
    for x in range(10**5):

if __name__ == '__main__':
    import cProfile, pstats"count()", "{}.profile".format(__file__))
    s = pstats.Stats("{}.profile".format(__file__))

See docs or other answers for more info.

  • for example, the profile prints {map} or {xxx} . how do I know the method {xxx} is called from which file? my profile prints {method 'compress' of 'zlib.Compress' objects} takes most of time, but I don't use any zlib , so I guess some call numpy function may use it . How do I know which is the exactly file and line takes much time? – machen Oct 28 '17 at 13:05

In Virtaal's source there's a very useful class and decorator that can make profiling (even for specific methods/functions) very easy. The output can then be viewed very comfortably in KCacheGrind.

  • 1
    Thank you for this gem. FYI: This can be used as a standalone module with any code, Virtaal code base is not required. Just save the file to and import the profile_func(). Use @profile_func() as a decorator to any function you need to profile and viola. :) – Amjith Oct 6 '11 at 5:23

cProfile is great for quick profiling but most of the time it was ending for me with the errors. Function runctx solves this problem by initializing correctly the environment and variables, hope it can be useful for someone:

import cProfile
cProfile.runctx('foo()', None, locals())

My way is to use yappi ( It's especially useful combined with an RPC server where (even just for debugging) you register method to start, stop and print profiling information, e.g. in this way:

def startProfiler():

def stopProfiler():

def printProfiler():
    stats = yappi.get_stats(yappi.SORTTYPE_TTOT, yappi.SORTORDER_DESC, 20)
    statPrint = '\n'
    namesArr = [len(str(stat[0])) for stat in stats.func_stats]
    log.debug("namesArr %s", str(namesArr))
    maxNameLen = max(namesArr)
    log.debug("maxNameLen: %s", maxNameLen)

    for stat in stats.func_stats:
        nameAppendSpaces = [' ' for i in range(maxNameLen - len(stat[0]))]
        log.debug('nameAppendSpaces: %s', nameAppendSpaces)
        blankSpace = ''
        for space in nameAppendSpaces:
            blankSpace += space

        log.debug("adding spaces: %s", len(nameAppendSpaces))
        statPrint = statPrint + str(stat[0]) + blankSpace + " " + str(stat[1]).ljust(8) + "\t" + str(
            round(stat[2], 2)).ljust(8 - len(str(stat[2]))) + "\t" + str(round(stat[3], 2)) + "\n"

    log.log(1000, "\nname" + ''.ljust(maxNameLen - 4) + " ncall \tttot \ttsub")
    log.log(1000, statPrint)

Then when your program work you can start profiler at any time by calling the startProfiler RPC method and dump profiling information to a log file by calling printProfiler (or modify the rpc method to return it to the caller) and get such output:

2014-02-19 16:32:24,128-|SVR-MAIN  |-(Thread-3   )-Level 1000: 
name                                                                                                                                      ncall     ttot    tsub
2014-02-19 16:32:24,128-|SVR-MAIN  |-(Thread-3   )-Level 1000: 
C:\Python27\lib\                                                                                                           22        0.11    0.05
M:\02_documents\_repos\09_aheadRepos\apps\ahdModbusSrv\pyAheadRpcSrv\                                                22        0.11    0.0
M:\02_documents\_repos\09_aheadRepos\apps\ahdModbusSrv\                                                    22        0.11    0.0
M:\02_documents\_repos\09_aheadRepos\apps\ahdModbusSrv\pyAheadRpcSrv\                                       1         0.0     0.0
C:\Python27\lib\                                                                                    1         0.0     0.0
c:\users\zasiec~1\appdata\local\temp\easy_install-hwcsr1\psutil-1.1.2-py2.7-win32.egg.tmp\psutil\     4         0.0     0.0
C:\Python27\lib\                                                                          1         0.0     0.0
c:\users\zasiec~1\appdata\local\temp\easy_install-hwcsr1\psutil-1.1.2-py2.7-win32.egg.tmp\psutil\ 4         0.0     0.0
<string>.__new__:8                                                                                                                        220       0.0     0.0
C:\Python27\lib\                                                                                                       4         0.0     0.0
C:\Python27\lib\                                                                                                 1         0.0     0.0
<string>.__new__:8                                                                                                                        4         0.0     0.0
C:\Python27\lib\                                                                                                   1         0.0     0.0
C:\Python27\lib\                                                                                                   4         0.0     0.0
C:\Python27\lib\                                                                                  1         0.0     0.0
C:\Python27\lib\                                                                                                      3         0.0     0.0
C:\Python27\lib\                                                                                         1         0.0     0.0
C:\Python27\lib\                                                                               1         0.0     0.0
C:\Python27\lib\                                                                                         1         0.0     0.0
c:\users\zasiec~1\appdata\local\temp\easy_install-hwcsr1\psutil-1.1.2-py2.7-win32.egg.tmp\psutil\               4         0.0     0.0 

It may not be very useful for short scripts but helps to optimize server-type processes especially given the printProfiler method can be called multiple times over time to profile and compare e.g. different program usage scenarios.

I recently created tuna for visualizing Python runtime and import profiles; this may be helpful here.

enter image description here

Install with

pip3 install tuna

Create a runtime profile

python -mcProfile -o

or an import profile (Python 3.7+ required)

python -X importprofile 2> import.log

Then just run tuna on the file


Ever want to know what the hell that python script is doing? Enter the Inspect Shell. Inspect Shell lets you print/alter globals and run functions without interrupting the running script. Now with auto-complete and command history (only on linux).

Inspect Shell is not a pdb-style debugger.

You could use that (and your wristwatch).

To add on to,

I wrote this module that allows you to use cProfile and view its output easily. More here:

$ python -m cprofilev /your/python/program
# Go to http://localhost:4000 to view collected statistics.

Also see: on how to make sense of the collected statistics.

A new tool to handle profiling in Python is PyVmMonitor:

It has some unique features such as

  • Attach profiler to a running (CPython) program
  • On demand profiling with Yappi integration
  • Profile on a different machine
  • Multiple processes support (multiprocessing, django...)
  • Live sampling/CPU view (with time range selection)
  • Deterministic profiling through cProfile/profile integration
  • Analyze existing PStats results
  • Open DOT files
  • Programatic API access
  • Group samples by method or line
  • PyDev integration
  • PyCharm integration

Note: it's commercial, but free for open source.

It would depend on what you want to see out of profiling. Simple time metrics can be given by (bash).

time python

Even '/usr/bin/time' can output detailed metrics by using '--verbose' flag.

To check time metrics given by each function and to better understand how much time is spent on functions, you can use the inbuilt cProfile in python.

Going into more detailed metrics like performance, time is not the only metric. You can worry about memory, threads etc.
Profiling options:
1. line_profiler is another profiler used commonly to find out timing metrics line-by-line.
2. memory_profiler is a tool to profile memory usage.
3. heapy (from project Guppy) Profile how objects in the heap are used.

These are some of the common ones I tend to use. But if you want to find out more, try reading this book It is a pretty good book on starting out with performance in mind. You can move onto advanced topics on using Cython and JIT(Just-in-time) compiled python.

There's also a statistical profiler called statprof. It's a sampling profiler, so it adds minimal overhead to your code and gives line-based (not just function-based) timings. It's more suited to soft real-time applications like games, but may be have less precision than cProfile.

The version in pypi is a bit old, so can install it with pip by specifying the git repository:

pip install git+git://

You can run it like this:

import statprof

with statprof.profile():

See also

When i'm not root on the server, I use and run my program like this:

python -o callgrind.1

Then I can open the report with any callgrind-compatible software, like qcachegrind

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