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I wrote a function to modify a passed in dictionary. However, when I parallelized the code using the multiprocessing module, it exhibits different behavior then when run in serial. The dictionary is not modified.

Attached below is a toy example of my issue. The dictionary is not modified when run using map_async, but is modified when run in a for loop. Thanks for clarifying my confusion!

#!/usr/bin/env python

from multiprocessing import Pool

def main1(x):
  x['a'] = 1
  print x

  return 1

def main2(x):
  x['b'] = 2
  print x

p = Pool(2)
d = {1:{}, 2:{}}
r = p.map_async(main1, d.values())
print r.get()
print "main1", d

for x in d.values():
  main2(x)

print "main2", d
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1  
I tried running your code and it filled up my ram and crashed my computer. lol. I am on a win7 machine, I assume you are on Linux? –  Onlyjus Sep 11 '12 at 22:41
    
@Onlyjus Yup, I'm running this on OSX. Sorry about that! I didn't include a if __name__ == '__main__', which apparently causes unintended side effects in windows. –  user449511 Sep 11 '12 at 23:30
    
Yep that will do it. –  Onlyjus Sep 11 '12 at 23:52

2 Answers 2

up vote 1 down vote accepted

r = p.map_async(main1, d.values()) does this:

1) Evaluate d.values() - that's [{}, {}]
2) Execute main1(item) for each item in that list on a worker from the pool
3) Gather the results from those calls into a list - [1, 1] - because that's what main1 returns
4) Assign that list to r

So it does exactly what the builtin function map() does, but in a parallelized way.

This means, your dict d never makes it into any of the worker processes, because it's not a reference to d that's passed to map_async, and therefore main1.

And even if you would pass in a reference to d - it wouldn't work for the reasons explained by @Roland Smith.

The point is: You shouldn't modify the dictionary in the first place. It's not even very good style in conventional programming for functions to modify their arguments, even if they can. For parallel programming it's absolutely crucial to follow a functional programming style, which in this context means:

Functions should do the computation on their input, and return a result that is further processed.

The functions map and reduce are very common in functional programming, and combined together they form a pattern that is suited very well for distributed computing. From the Wikipedia article on MapReduce:

"Map" step: The master node takes the input, divides it into smaller sub-problems, and distributes them to worker nodes. A worker node may do this again in turn, leading to a multi-level tree structure. The worker node processes the smaller problem, and passes the answer back to its master node.

"Reduce" step: The master node then collects the answers to all the sub-problems and combines them in some way to form the output – the answer to the problem it was originally trying to solve.

So in order to effectively parallelize your program it helps to try to think of your problem in terms of those functions.

For a very concrete example, see the Article The Trouble With Multicore in IEEE Spectrum. It describes a method of parallelizing the computation of PI that could easily be implemented with map/reduce.

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Thanks for the clarification! I initially wrote it so that data was passed around, but the dictionary is rather large so I wanted to modify it in place, it seems like I'll have to rethink the structure of my program. –  user449511 Sep 11 '12 at 23:31
1  
@user449511 I fleshed out my answer some more with details about map/reduce. –  Lukas Graf Sep 11 '12 at 23:51
    
thanks so much for this! I didn't even consider map-reduce initially, but it actually sounds like a very good fit for my current problem and easy to scale if it ever actually gets big. This paper is awesome as well. –  user449511 Sep 12 '12 at 0:11

You are changing a mutable argument in main1. But that happens in a different process from the one running the pool. They don't share data.

When map_async is run, python copies the data from each iteration to the worker processes, which then executes the function, gathers the return values and passes that back to the process running map_async. It doesn't pass any modfied arguments back.

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