161

I have the following code in a python script:

def fun(): 
  #Code here

fun()

I want to execute this script and also find out how much time it took to execute in minutes. How do I find out how much time it took for this script to execute ? An example would be really appreciated.

2
293
from datetime import datetime
startTime = datetime.now()

#do something

#Python 2: 
print datetime.now() - startTime 

#Python 3: 
print(datetime.now() - startTime)
5
  • 8
    New to Python, working in 3.6.1. FYI datetime no longer has a now attribute. Sep 14 '17 at 17:25
  • 10
    @WizzleWuzzle datetime.now() works if you do from datetime import datetime, not just import datetime (just confirmed on Python 3.6.4). Feb 13 '18 at 13:47
  • Same case in Python 3.8 it's just the library's absurdity module datetime has datetime class in it... I'm kinda surprised the datetime class doesn't have datetime attribute in it -_- .....
    – jave.web
    Feb 2 '21 at 17:39
  • What is neat: datetime(class) has implemented __str__ with an ISO format, so if you convert your datetime instance to str()ing or print() it, the format will be YYYY-MM-DD HH:MM:SS.mmmmmm, it is an equivalent of calling your_datetime.isoformat(sep=' ') ref: docs.python.org/3/library/…
    – jave.web
    Feb 2 '21 at 17:45
  • I think time.perf_counter() is better than this, added it as an answer. I am unsure, so I asked about this here.
    – zabop
    Dec 5 '21 at 11:34
148

Do you execute the script from the command line on Linux or UNIX? In that case, you could just use

time ./script.py
5
  • 2
    time -p ./script.py -p flag for pipeline
    – Joy
    Jul 26 '18 at 17:31
  • 4
    and what does pipeline helps us with?
    – ak3191
    Dec 19 '19 at 21:45
  • 1
    time python myScript.py for windows The out put will be Execution time in seconds: 38.509970903396606 real 0m38.792s user 0m0.015s sys 0m0.046s Jun 30 '20 at 14:47
  • 1
    @Joy I think you misread the help time => "-p print the timing summary in the portable Posix format" I think here time [-p] pipeline you've confused an option with argument :) pipeline is an argument (not an option) - the pipeline itself. "Execute PIPELINE and print a summary of the real time, user CPU time, and system CPU time spent executing PIPELINE when it terminates" so it's pipeline by default, -p doesn't have anything to do with it :)
    – jave.web
    Feb 2 '21 at 19:11
  • + PIPE(|)LINE RUNS IN PARALEL (not serially as I and I think many others thought :) ) so e.g. time sleep 5 | sleep 10 will only measure 10 seconds, since those sleeps actually run in paralel and the whole pipeline finishes in about 10s.
    – jave.web
    Feb 2 '21 at 20:25
76
import time
start = time.time()

fun()

# python 2
print 'It took', time.time()-start, 'seconds.'

# python 3
print('It took', time.time()-start, 'seconds.')
3
  • 6
    Last line should probably read print('It took {0:0.1f} seconds'.format(time.time() - start)) in python 3.x. Feb 3 '16 at 19:24
  • 3
    @ChrisMueller I was working in python2.7. I'll leave the comment here though so people can see both versions.
    – Double AA
    Feb 3 '16 at 19:25
  • time.perf_counter() is I believe better than time.time(). Added such an answer.
    – zabop
    Dec 5 '21 at 11:32
17

What I usually do is use clock() or time() from the time library. clock measures interpreter time, while time measures system time. Additional caveats can be found in the docs.

For example,

def fn():
    st = time()
    dostuff()
    print 'fn took %.2f seconds' % (time() - st)

Or alternatively, you can use timeit. I often use the time approach due to how fast I can bang it out, but if you're timing an isolate-able piece of code, timeit comes in handy.

From the timeit docs,

def test():
    "Stupid test function"
    L = []
    for i in range(100):
        L.append(i)

if __name__=='__main__':
    from timeit import Timer
    t = Timer("test()", "from __main__ import test")
    print t.timeit()

Then to convert to minutes, you can simply divide by 60. If you want the script runtime in an easily readable format, whether it's seconds or days, you can convert to a timedelta and str it:

runtime = time() - st
print 'runtime:', timedelta(seconds=runtime)

and that'll print out something of the form [D day[s], ][H]H:MM:SS[.UUUUUU]. You can check out the timedelta docs.

And finally, if what you're actually after is profiling your code, Python makes available the profile library as well.

16
import time 

startTime = time.time()
# Your code here !
print ('The script took {0} second !'.format(time.time() - startTime))

The previous code works for me with no problem !

15
import sys
import timeit

start = timeit.default_timer()

#do some nice things...

stop = timeit.default_timer()
total_time = stop - start

# output running time in a nice format.
mins, secs = divmod(total_time, 60)
hours, mins = divmod(mins, 60)

sys.stdout.write("Total running time: %d:%d:%d.\n" % (hours, mins, secs))
1
  • 1
    the print out for 50 seconds is "0:0:50"
    – htzfun
    Nov 2 '19 at 0:39
10

Use the timeit module. It's very easy. Run your example.py file so it is active in the Python Shell, you should now be able to call your function in the shell. Try it out to check it works

>>>fun(input)
output

Good, that works, now import timeit and set up a timer

>>>import timeit
>>>t = timeit.Timer('example.fun(input)','import example')
>>>

Now we have our timer set up we can see how long it takes

>>>t.timeit(number=1)
some number here

And there we go, it will tell you how many seconds (or less) it took to execute that function. If it's a simple function then you can increase it to t.timeit(number=1000) (or any number!) and then divide the answer by the number to get the average.

I hope this helps.

1

Pure Python

Better yet is time.perf_counter():

t0 = time.perf_counter()
fun()
t1 = time.perf_counter()
print(t1-t0)

# and if you really want your answer in minutes:
print(f"In minutes: {(t1-t0)/60}")

Recommended by this guy as well (5:30).

Docs:

time.perf_counter()→ float

Return the value (in fractional seconds) of a performance counter, i.e. a clock with the highest available resolution to measure a short duration. It does include time elapsed during sleep and is system-wide. The reference point of the returned value is undefined, so that only the difference between the results of two calls is valid.

Use perf_counter_ns() to avoid the precision loss caused by the float type.

New in version 3.3.

Changed in version 3.10: On Windows, the function is now system-wide.


Jupyter Notebook: %timeit & %time magic

If you are working in a Jupyter Notebook (such as Google Colab), you can use IPython Magic Commands.

Example:

import time
import numpy as np
np.random.seed(42)

def fun(): 
    time.sleep(0.1+np.random.rand()*0.05)

Then in a separate cell, to time the function multiple times:

%timeit fun()

Output:

10 loops, best of 5: 120 ms per loop

To time the function only once:

%time fun()

Output:

CPU times: user 0 ns, sys: 621 µs, total: 621 µs
Wall time: 114 ms

You can find more about Magic Commands here.

0

use the time and datetime packages.

if anybody want to execute this script and also find out how much time it took to execute in minutes

import time
from time import strftime
from datetime import datetime 
from time import gmtime

def start_time_():    
    #import time
    start_time = time.time()
    return(start_time)

def end_time_():
    #import time
    end_time = time.time()
    return(end_time)

def Execution_time(start_time_,end_time_):
   #import time
   #from time import strftime
   #from datetime import datetime 
   #from time import gmtime
   return(strftime("%H:%M:%S",gmtime(int('{:.0f}'.format(float(str((end_time-start_time))))))))

start_time = start_time_()
# your code here #
[i for i in range(0,100000000)]
# your code here #
end_time = end_time_()
print("Execution_time is :", Execution_time(start_time,end_time))

The above code works for me. I hope this helps.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.