114

I want to create a python function to test the time spent in each function and print its name with its time, how i can print the function name and if there is another way to do so please tell me

def measureTime(a):
    start = time.clock() 
    a()
    elapsed = time.clock()
    elapsed = elapsed - start
    print "Time spent in (function name) is: ", elapsed
  • Python profiling tools can show you function names and time spent in each one. Read here: docs.python.org/library/profile.html – Roadmaster Mar 29 '11 at 20:15
  • Better use timeit for the measuring. It's not perfect, but it beats your stab at it by far and it's much easier to use timeit than to whip up something better yourself. – user395760 Mar 29 '11 at 20:15
  • related: Measure time elapsed in Python? – jfs Feb 25 '16 at 13:38
225

First and foremost, I highly suggest using a profiler or atleast use timeit.

However if you wanted to write your own timing method strictly to learn, here is somewhere to get started using a decorator.

Python 2:

def timing(f):
    def wrap(*args):
        time1 = time.time()
        ret = f(*args)
        time2 = time.time()
        print '%s function took %0.3f ms' % (f.func_name, (time2-time1)*1000.0)
        return ret
    return wrap

And the usage is very simple, just use the @timing decorator:

@timing
def do_work():
  #code

Python 3:

def timing(f):
    def wrap(*args):
        time1 = time.time()
        ret = f(*args)
        time2 = time.time()
        print('{:s} function took {:.3f} ms'.format(f.__name__, (time2-time1)*1000.0))

        return ret
    return wrap

Note I'm calling f.func_name to get the function name as a string(in Python 2), or f.__name__ in Python 3.

  • 4
    exactly what i want :) ... but you guys convinced me to use the python profiler – Islam Wazery Mar 29 '11 at 20:31
  • 3
    Looks like this assumes that the time.time() reports time in microseconds since the epoch? The documentation says it reports time in seconds docs.python.org/2/library/time.html#time.time. – Rahul Jha Dec 13 '14 at 1:02
  • This can't take effect, after using yield in func. How can I still using this method and can use yield? – jiamo May 3 '15 at 12:05
  • def timing(f): def wrap(*args, **kwargs): time1 = time.time() ret = f(*args, **kwargs) time2 = time.time() print '%s function took %0.3f ms' % (f.func_name, (time2-time1)*1000) return ret return wrap – Vivek Bagaria Jul 10 '16 at 22:37
  • what's the disadvantage of writing it yourself? Isn't storing a list of elapsed times and examining their distribution simple enough? – Mike Palmice Jan 17 '18 at 16:36
44

After playing with the timeit module, I don't like its interface, which is not so elegant compared to the following two method.

The following code is in Python 3.

The decorator method

This is almost the same with @Mike's method. Here I add kwargs and functools wrap to make it better.

def timeit(func):
    @functools.wraps(func)
    def newfunc(*args, **kwargs):
        startTime = time.time()
        func(*args, **kwargs)
        elapsedTime = time.time() - startTime
        print('function [{}] finished in {} ms'.format(
            func.__name__, int(elapsedTime * 1000)))
    return newfunc

@timeit
def foobar():
    mike = Person()
    mike.think(30)

The context manager method

from contextlib import contextmanager

@contextmanager
def timeit_context(name):
    startTime = time.time()
    yield
    elapsedTime = time.time() - startTime
    print('[{}] finished in {} ms'.format(name, int(elapsedTime * 1000)))

For example, you can use it like:

with timeit_context('My profiling code'):
    mike = Person()
    mike.think()

And the code within the with block will be timed.

Conclusion

Using the first method, you can eaily comment out the decorator to get the normal code. However, it can only time a function. If you have some part of code that you don't what to make it a function, then you can choose the second method.

For example, now you have

images = get_images()
bigImage = ImagePacker.pack(images, width=4096)
drawer.draw(bigImage)

Now you want to time the bigImage = ... line. If you change it to a function, it will be:

images = get_images()
bitImage = None
@timeit
def foobar():
    nonlocal bigImage
    bigImage = ImagePacker.pack(images, width=4096)
drawer.draw(bigImage)

Looks not so great...What if you are in Python 2, which has no nonlocal keyword.

Instead, using the second method fits here very well:

images = get_images()
with timeit_context('foobar'):
    bigImage = ImagePacker.pack(images, width=4096)
drawer.draw(bigImage)
  • Interesting contribution, however I find it useless that in the decorator method you mentioned, you had to change timeit interface and use the wraps() function of the functools module. I mean all that extra code is not necessary. – Billal Begueradj Feb 22 '17 at 8:20
  • Needs import functools – Guillaume Chevalier Mar 9 '17 at 16:13
  • Note that your decorator looses the return value of the original function – Marc Van Daele Dec 13 '17 at 11:27
11

I don't see what the problem with the timeit module is. This is probably the simplest way to do it.

import timeit
timeit.timeit(a, number=1)

Its also possible to send arguments to the functions. All you need is to wrap your function up using decorators. More explanation here: http://www.pythoncentral.io/time-a-python-function/

The only case where you might be interested in writing your own timing statements is if you want to run a function only once and are also want to obtain its return value.

The advantage of using the timeit module is that it lets you repeat the number of executions. This might be necessary because other processes might interfere with your timing accuracy. So, you should run it multiple times and look at the lowest value.

  • 2
    Sending arguments to the function using wrappers and decorators? Why not timeit.timeit(lambda: func(a,b,c), number=1)? I use this when doing tests on a hypothetical solution in a terminal. – Jack Apr 3 '15 at 22:36
9

Timeit has two big flaws: it doesn't return the return value of the function, and it uses eval, which requires passing in extra setup code for imports. This solves both problems simply and elegantly:

def timed(f):
  start = time.time()
  ret = f()
  elapsed = time.time() - start
  return ret, elapsed

timed(lambda: database.foo.execute('select count(*) from source.apachelog'))
(<sqlalchemy.engine.result.ResultProxy object at 0x7fd6c20fc690>, 4.07547402381897)
  • Thanks! timeit doesn't work well with Apache Spark because you have to import all the Spark dependencies, and who wants to make a big old string that does that? This solution is much simpler and more flexible. – Paul Dec 4 '15 at 17:05
3

Decorator method using decorator Python library:

import decorator

@decorator
def timing(func, *args, **kwargs):
    '''Function timing wrapper
        Example of using:
        ``@timing()``
    '''

    fn = '%s.%s' % (func.__module__, func.__name__)

    timer = Timer()
    with timer:
        ret = func(*args, **kwargs)

    log.info(u'%s - %0.3f sec' % (fn, timer.duration_in_seconds()))
    return ret

See post on my Blog:

post on mobilepro.pl Blog

my post on Google Plus

3

There is an easy tool for timing. https://github.com/RalphMao/PyTimer

It can work like a decorator:

from pytimer import Timer
@Timer(average=False)      
def matmul(a,b, times=100):
    for i in range(times):
        np.dot(a,b)        

Output:

matmul:0.368434
matmul:2.839355

It can also work like a plug-in timer with namespace control(helpful if you are inserting it to a function which has a lot of codes and may be called anywhere else).

timer = Timer()                                           
def any_function():                                       
    timer.start()                                         

    for i in range(10):                                   

        timer.reset()                                     
        np.dot(np.ones((100,1000)), np.zeros((1000,500)))
        timer.checkpoint('block1')                        

        np.dot(np.ones((100,1000)), np.zeros((1000,500)))
        np.dot(np.ones((100,1000)), np.zeros((1000,500)))
        timer.checkpoint('block2')                        
        np.dot(np.ones((100,1000)), np.zeros((1000,1000)))

    for j in range(20):                                   
        np.dot(np.ones((100,1000)), np.zeros((1000,500)))
    timer.summary()                                       

for i in range(2):                                        
    any_function()                                        

Output:

========Timing Summary of Default Timer========
block2:0.065062
block1:0.032529
========Timing Summary of Default Timer========
block2:0.065838
block1:0.032891

Hope it will help

2

My way of doing it:

from time import time

def printTime(start):
    end = time()
    duration = end - start
    if duration < 60:
        return "used: " + str(round(duration, 2)) + "s."
    else:
        mins = int(duration / 60)
        secs = round(duration % 60, 2)
        if mins < 60:
            return "used: " + str(mins) + "m " + str(secs) + "s."
        else:
            hours = int(duration / 3600)
            mins = mins % 60
            return "used: " + str(hours) + "h " + str(mins) + "m " + str(secs) + "s."

Set a variable as start = time() before execute the function/loops, and printTime(start) right after the block.

and you got the answer.

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