4

I have a class that is implemented in cython containing c-pointers which I'm trying to use together with python's multiprocessing module. The class takes a DLL-file to return an instance of the class.

The problem I have is that while the instances preserve their data type, they seem to be empty, i.e. I can access all their class functions but they've lost all their instance values I set before they entered. The code containing special_class is very big so I'm not able to include it.

import time
import multiprocessing as mp
from special_module import special_class

def run_task(tasks,nr):
    obj = tasks[nr]['data']
    print obj.get_name()



if __name__ == "__main__":

    m1 = special_class("a.dll")
    m2 = special_class("b.dll")


    tasks = dict()

    tasks[1] = {'data': m1}
    tasks[2] = {'data': m2}


    process1 = mp.Process(target = run_task, name = 'process1', args = (tasks, 1))
    process2 = mp.Process(target = run_task, name = 'process2', args = (tasks, 2))

    process1.start()

    time.sleep(0.2)

    process2.start()

    process1.join()
    process2.join()

Above script gives me the output

None
None

The correct output should be in the style of

name.a
name.b

If I create the instances inside the function run_task it will work fine, but I'm looking for a way to make it work by creating the instances in the main process. Is this possible?

3
  • Try using a custom pickler.
    – Phillip
    Dec 1, 2016 at 15:52
  • Every windows(OS) class access required a registered point on Python. You access a DLL but how to set all data access procedure. Need using pythoncom.CoInitialize(). check this
    – dsgdfg
    Dec 2, 2016 at 8:12
  • 1
    Umm... import special_class followed by m1 = special_class("a.dll") isn't legal; you can't call a module. I assume it's slightly different in the real code, but either way, the Cython class definition is important here; you can't omit it. Dec 5, 2016 at 20:46

3 Answers 3

2
+50

The multiprocessing library works by pickling objects and then piping the data to other spawned processes. The issue is that your special_class is unpicklable.

If I create the instances inside the function run_task it will work fine

This works because then the object does not need to be pickled, which works around the issue.


You need to make your special_class picklable. This can be done in various ways. They are all documented here: https://docs.python.org/3/library/pickle.html#pickle-inst

Basically, there are 3 mechanisms:

  • Use a custom pickler
  • Implement a __reduce__ method on special_class
  • Implement __getstate__ and __setstate__ methods on special_class (if your class instances have states)

I have a feeling that you have a reference to an external object in your special_class. In that case, refer to: https://docs.python.org/3/library/pickle.html#persistence-of-external-objects

2

I believe multiprocessing.Process pickles all its arguments. So you need to tell Python how to pickle special_class. You just need to implement method special_class.__reduce__ so that the data can be pickled properly.

0

It seems as if you are making m1 and m2 both the full special_class module. If you are trying to make them a certain class, either do:

from special_class import *

(which I recommend) or

m1 = special_class.special_class("a.dll")
m2 = special_class.special_class("b.dll")

The None is probably appearing because the methods you input m1 and m2 into also accept the module, for some reason. I would suggest trying from special_class import * and work it out.

1
  • No, the None appears because it's not able to pickle the object. If I dont use the multiprocessing module I dont get this problem.
    – Chicony
    Dec 7, 2016 at 8:27

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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