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It seems that handlers from the logging module and multiprocessing jobs do not mix:

import functools
import logging
import multiprocessing as mp

logger = logging.getLogger( 'myLogger' )
handler = logging.FileHandler( 'logFile' )

def worker( x, handler ) :
    print x ** 2

pWorker = functools.partial( worker, handler=handler )

#
if __name__ == '__main__' :
    pool = mp.Pool( processes=1 )
    pool.map( pWorker, range(3) )
    pool.close()
    pool.join()

Out:

cPickle.PicklingError: Can't pickle <type 'thread.lock'>: attribute lookup thread.lock failed

If I replace pWorker be either one of the following methods, no error is raised

# this works
def pWorker( x ) :
    worker( x, handler )

# this works too
pWorker = functools.partial( worker, handler=open( 'logFile' ) )

I don't really understand the PicklingError. Is it because objects of class logging.FileHandler are not pickable? (I googled it but didn't find anything)

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1 Answer 1

up vote 0 down vote accepted

The FileHandler object internally uses a threading.Lock to synchronize writes between threads. However, the thread.lock object returned by threading.Lock can't be pickled, which means it can't be sent between processes, which is required to send it to the child via pool.map.

There is a section in the multiprocessing docs that talks about how logging with multiprocessing works here. Basically, you need to let the child process inherit the parent process' logger, rather than trying to explicitly pass loggers or handlers via calls to map.

Note, though, that on Linux, you can do this:

from multiprocessing import Pool
import logging

logger = logging.getLogger( 'myLogger' )


def worker(x):
    print handler
    print x **2 

def initializer(handle):
    global handler
    handler = handle

if __name__ == "__main__":
    handler = logging.FileHandler( 'logFile' )
    #pWorker = functools.partial( worker, handler=handler )
    pool = Pool(processes=4, initializer=initializer, initargs=(handler,))
    pool.map(worker, range(3))
    pool.close()
    pool.join

initializer/initargs are used to run a method once in each of the pool's child processes as soon as they start. On Linux this allows the handler to be into the child via inheritance, thanks to the way os.fork works. However, this won't work on Windows; because it lacks support for os.fork, it would still need to pickle handler to pass it via initargs.

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