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I am trying to save many matplotlib figures to png disk files, since the savefig() is slow, i try to improve the speed by using multiprocess module.

Here is my code: (my environment is Windows XP + python_2.6.1 + Matplotlib_1.2.0 + multiprocessing_0.70a1)

import multiprocessing
from figure_creation_mudule import fig_list

def savefig_worker(fig, img_type, folder_path):
    file_name = fig.FM_figname 
    fig.savefig(folder_path+"\\"+file_name+"."+img_type, format=img_type)
    return None

if __name__ == '__main__':
    pool = multiprocessing.Pool()
    for fig in fig_list:
        pool.apply_async(savefig_worker, [fig, 'png', 'D:\\img_folder'])

And fig_list is a list imported from other module and contains matplotlib figure object.

>>> fig_list
[<matplotlib.figure.Figure object at 0x0AAA1670>, <matplotlib.figure.Figure object at 0x0AD2B210>, <matplotlib.figure.Figure object at 0x0B277FD0>]

When I run the code, it meets problems:

Exception in thread Thread-2:
Traceback (most recent call last):
  File "D:\Python\lib\", line 522, in __bootstrap_inner
  File "D:\Python\lib\", line 477, in run
    self.__target(*self.__args, **self.__kwargs)
  File "D:\Python\lib\multiprocessing\", line 225, in _handle_tasks
PicklingError: Can't pickle <type 'function'>: attribute lookup __builtin__.function failed

What does it mean ? How to fix it ?

share|improve this question
I don't have any experience with this, but from the looks of it, pool.apply_async() will internally pickle the task you are sending it so that a separate process/thread can unpickle it and use it(In python the pickle module provides a way to serialize and de-serialize arbitrary objects). Looks like matplotlib figures can't be pickled – entropy Mar 5 '13 at 13:26

1 Answer 1

up vote 1 down vote accepted

I looked into this and indeed, Pool.apply_async() will pickle objects behind the scenes. To confirm this, try this in the REPL:

>>> from multiprocessing import Pool
>>> def test(obj):
...   print obj
>>> class A():
...   def __getstate__(self):
...     print "pickling"
...     return {}
>>> pool = Pool()
>>> pool.apply_async(test, [A()])
<multiprocessing.pool.ApplyResult object at 0x10bbe82d0>

>>> <__main__.A instance at 0x10bbe83b0>

To avoid this, you need to use something other than multiprocessing.Pool to do the job. multiprocessing.Process can work. However, you should take care not to spawn too many processes or you will slow things down instead of speeding things up.

Edit: If you're intent on using multiprocessing.Pool this question/answer should be of help

share|improve this answer
OK, will check it. – bigbug Mar 20 '13 at 13:28

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