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I'm having troubles with the multiprocessing module. I'm using a Pool of workers with its map method to load data from lots of files and for each of them I analyze data with with a custom function. Each time a file has been processed I would like to have a counter updated so that I can keep track of how many files remains to be processed. Here is sample code:

def analyze_data( args ):
    # do something 
    counter += 1
    print counter


if __name__ == '__main__':

    list_of_files = os.listdir(some_directory)

    global counter
    counter = 0

    p = Pool()
    p.map(analyze_data, list_of_files)

I can't find a solution for this.

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Did jkp answer your question? If so please accept it. –  jberryman Feb 16 '13 at 23:56
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2 Answers 2

up vote 23 down vote accepted

The problem is that the counter variable is not shared between your processes: each separate process is creating it's own local instance and incrementing that.

See this section of the documentation for some techniques you can employ to share state between your processes. In your case you might want to share a Value instance between your workers

Here's a working version of your example (with some dummy input data). Note it uses global values which I would really try to avoid in practice:

from multiprocessing import Pool, Value
from time import sleep

counter = None

def init(args):
    ''' store the counter for later use '''
    global counter
    counter = args

def analyze_data(args):
    ''' increment the global counter, do something with the input '''
    global counter
    counter.value += 1
    print counter.value
    return args * 10

if __name__ == '__main__':
    #inputs = os.listdir(some_directory)

    #
    # initialize a cross-process counter and the input lists
    #
    counter = Value('i', 0)
    inputs = [1, 2, 3, 4]

    #
    # create the pool of workers, ensuring each one receives the counter 
    # as it starts. 
    #
    p = Pool(initializer = init, initargs = (counter, ))
    i = p.map_async(analyze_data, inputs, chunksize = 1)
    i.wait()
    print i.get()
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Great answer! I had the same problem in IronPython, and while multiprocessing.Value is not available you can do something similar with clr.Reference and System.Threading.Interlocked: stackoverflow.com/questions/2255461/… –  Greg Bray Feb 22 '10 at 22:48
2  
@jkp, how would you do it without the global variable? - I'm trying to use a class, but it is not as easy as it seems. See stackoverflow.com/questions/1816958/… –  Anna Dec 16 '11 at 14:05
7  
Unfortunately, this example appears to be flawed, since counter.value += 1 is not atomic between processes, so the value will be wrong if run long enough with a few processes –  Eli Bendersky Dec 31 '11 at 10:25
    
In line with what Eli said, a Lock must surround the counter value += 1 statement. See stackoverflow.com/questions/1233222/… –  A-B-B Jul 17 '12 at 19:32
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Counter class without the race-condition bug:

class Counter(object):
    def __init__(self):
        self.val = multiprocessing.Value('i', 0)

    def increment(self, n=1):
        with self.val.get_lock():
            self.val.value += n

    @property
    def value(self):
        return self.val.value
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