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In Python the multiprocessing module can be used to run a function over a range of values in parallel. For example, this produces a list of the first 100000 evaluations of f.

def f(i):
    return i * i

def main():
    import multiprocessing
    pool = multiprocessing.Pool(2)
    ans = pool.map(f, range(100000))

    return ans

Can a similar thing be done when f takes multiple inputs but only one variable is varied? For example, how would you parallelize this:

def f(i, n):
    return i * i + 2*n

def main():
    ans = []
    for i in range(100000):
        ans.append(f(i, 20))

    return ans
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4 Answers 4

up vote 7 down vote accepted

There are several ways to do this. In the example given in the question, you could just define a wrapper function

def g(i):
    return f(i, 20)

and pass this wrapper to map(). A more general approach is to have a wrapper that takes a single tuple argument and unpacks the tuple to multiple arguments

def g(tup):
    return f(*tup)

or use a equivalent lambda expression: lambda tup: f(*tup).

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You can use functools.partial

def f(i, n):
    return i * i + 2*n

def main():
    import multiprocessing
    pool = multiprocessing.Pool(2)
    ans = pool.map(functools.partial(f, n=20), range(100000))

    return ans
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If you use my fork of multiprocessing, called pathos, you can get pools that take multiple arguments… and also take lambda functions. The nice thing about it is that you don't have to alter your programming constructs to fit working in parallel.

>>> def f(i, n):
...   return i * i + 2*n
... 
>>> from itertools import repeat
>>> N = 10000
>>>
>>> from pathos.pools import ProcessPool as Pool
>>> pool = Pool()
>>>
>>> ans = pool.map(f, xrange(1000), repeat(20))
>>> ans[:10]
[40, 41, 44, 49, 56, 65, 76, 89, 104, 121]
>>>
>>> # this also works
>>> ans = pool.map(lambda x: f(x, 20), xrange(1000))
>>> ans[:10]
[40, 41, 44, 49, 56, 65, 76, 89, 104, 121]
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You can use poor man's currying (aka wrap it):

new_f = lambda x: f(x, 20)

then call new_f(i).

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1  
Thils will not work with multiprocessing's map, because that doesn't support functions that aren't "importable" (using the pickle tool) –  Lagerbaer May 22 '13 at 19:30

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