11

How can you profile a python module that use multiprocessing (multiprocessing.Pool.map) so each spawned process will be also profiled line by line.

Currently I use line_profiler for profiling but it doesn't support multiprocessing. Is there a way to do it manually? Or maybe use some other tool?

0

The recommended way to use line_profiler ist to add @profile to the function being profiled and then run kernprof -v -l script.py. When using this with the multiprocessing module however this leads to errors like:

Can't pickle <class '__main__.Worker'>: attribute lookup Worker on __main__ failed.

To fix this, we have to setup the line_profiler ourselves in the sub-process we want to profile, rather than doing it globally via kernelprof.

As an example lets say we want to profile the run method of one of our worker processes. Here is the setup:

import multiprocessing as mp
import line_profiler

class Worker(mp.Process):

    def run(self):
        prof = line_profiler.LineProfiler()
        # Wrap all functions that you want to be profiled in this process
        # These can be global functions or any class methods
        # Make sure to replace instance methods on a class level, not the bound methods self.run2
        Worker.run2 = prof(Worker.run2)
        ...
        # run the main
        self.run2()
        # store stats in separate file for each process
        prof.dump_stats('worker.lprof')

    def run2(self):
        # real run method renamed
        ...

Now running the script this generates a profile file that we can then visualize with:

python -m line_profiler worker.lprof
-1

you could use memory_profiler like this

from memory_profiler import profile
import multiprocessing as mp
import time, psutil, gc, os


@profile(precision=4)
def array_ops(num):
    gc.collect()
    size1 = 10 ** num
    size2 = 20 ** (num+1)
    x = [1] * size1
    y = [2] * size2
    y *= 2
    del y
    gc.collect()
    z = x * 2
    gc.collect()
    return x

if __name__ == '__main__':
    num_workers = 3
    pool = mp.Pool(num_workers)
    pool.map(array_ops, [4,5,6])
    pool.close()
    pool.join()

This is a sample output

Line #    Mem usage    Increment   Line Contents
================================================
     6  34.4258 MiB  34.4258 MiB   @profile(precision=4)
     7                             def array_ops(num):
     8  34.4258 MiB   0.0000 MiB       gc.collect()
     9  34.4258 MiB   0.0000 MiB       size1 = 10 ** num
    10  34.4258 MiB   0.0000 MiB       size2 = 20 ** (num+1)
    11  34.5586 MiB   0.1328 MiB       x = [1] * size1
    12  58.7852 MiB  24.2266 MiB       y = [2] * size2
    13  83.2539 MiB  24.4688 MiB       y *= 2
    14  34.6055 MiB   0.0000 MiB       del y
    15  34.6055 MiB   0.0000 MiB       gc.collect()
    16  34.6055 MiB   0.0000 MiB       z = x * 2
    17  34.6055 MiB   0.0000 MiB       gc.collect()
    18  34.6055 MiB   0.0000 MiB       return x


Filename: array_ops.py

Line #    Mem usage    Increment   Line Contents
================================================
     6  34.4258 MiB  34.4258 MiB   @profile(precision=4)
     7                             def array_ops(num):
     8  34.4258 MiB   0.0000 MiB       gc.collect()
     9  34.4258 MiB   0.0000 MiB       size1 = 10 ** num
    10  34.4258 MiB   0.0000 MiB       size2 = 20 ** (num+1)
    11  35.0820 MiB   0.6562 MiB       x = [1] * size1
    12 523.3711 MiB 488.2891 MiB       y = [2] * size2
    13 1011.6172 MiB 488.2461 MiB       y *= 2
    14  35.2969 MiB   0.0000 MiB       del y
    15  35.2969 MiB   0.0000 MiB       gc.collect()
    16  36.5703 MiB   1.2734 MiB       z = x * 2
    17  36.5703 MiB   0.0000 MiB       gc.collect()
    18  36.8242 MiB   0.2539 MiB       return x


Filename: array_ops.py

Line #    Mem usage    Increment   Line Contents
================================================
     6  34.4258 MiB  34.4258 MiB   @profile(precision=4)
     7                             def array_ops(num):
     8  34.4258 MiB   0.0000 MiB       gc.collect()
     9  34.4258 MiB   0.0000 MiB       size1 = 10 ** num
    10  34.4258 MiB   0.0000 MiB       size2 = 20 ** (num+1)
    11  42.0391 MiB   7.6133 MiB       x = [1] * size1
    12 9807.7109 MiB 9765.6719 MiB       y = [2] * size2
    13 19573.2109 MiB 9765.5000 MiB       y *= 2
    14  42.1641 MiB   0.0000 MiB       del y
    15  42.1641 MiB   0.0000 MiB       gc.collect()
    16  57.3594 MiB  15.1953 MiB       z = x * 2
    17  57.3594 MiB   0.0000 MiB       gc.collect()
    18  57.3594 MiB   0.0000 MiB       return x
0

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.