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I have identified some long running pytest tests with

py.test --durations=10

I would like to instrument one of those tests now with something like line_profiler or cprofile. I really want to get the profile data from the test itself as the pytest setup or tear down could well be part of what is slow.

However given how line_profiler or cprofile is typically involved it isn't clear to me how to make them work with pytest.

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3 Answers 3

Run pytest like this:

python -m cProfile -o profile $(which py.test)

You can even pass in optional arguments:

python -m cProfile -o profile $(which py.test) \
    tests/worker/test_tasks.py -s campaigns

This will create a binary file called profile in your current directory. This can be analyzed with pstats:

import pstats
p = pstats.Stats('profile')

This will print the 50 lines with the longest cumulative duration.

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To get cProfile and line_profiler to work with py.test code, I did two things:

  1. Extended the py.test test code with a call to pytest.main(), which made it executable with the python interpreter as the main driver:

    # pytest_test.py:
    @profile # for line_profiler only
    def test_example():
        x = 3**32
        assert x == 1853020188851841
    # for profiling with cProfile and line_profiler
    import pytest

    Now you can run this test without py.test as the main driver using other tools:

    $ kernprof.py -l pytest_test.py
    $ python -m line_profiler pytest_test.py.lprof


    $ python -m cProfile pytest_test.py
  2. To profile py.test-specific functions such as pytest_funcarg*() with line_profiler I split them in two to avoid confusion between py.test and line_profiler:

    def pytest_funcarg__foo(request):
        return foo(request)
    def foo(request):

The same method works for memory_profiler.

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Statprof is another wonderful 'lineprofiler'. It counts the time the python interpreter spends at each line in the source files, and returns that list to you at the end. However, since it is bound to python's timer, it cannot measure disk or network i/o.

It is simple to statprof a def.

import statprof
statprof.display(open('filenameForResults', 'w')

A cool little trick I use is to put the .stop() call inside a closure, so that you can kill the interpreter and still get your results.

import signal
import sys
import statprof
def profileMe(fn, args):
    def finishWritingAfterKilled(signum, stackframe): #this is the closure
        statprof.display(open('terminatedResults', 'w'))
    signal.signal(signal.SIGTERM, finishWritingAfterKilleD) #register the closure to 
                            #run if the signal SIGTERM is found
    statprof.display(open('normalResults', 'w'))
profileMe(functionThatTakesALongTime, args)

Thats it! It writes out the stats to a file for you. I believe the results can be manipulated with pstats, but that is something you need to read the pydocs as it is very syntax-dependent.

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I am sorry, but did you bother to read the question before answering it? Have you tried to run statprof with pytest? –  Andrei Jan 27 '14 at 13:10

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