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Is the cache in a standard memoize decorator process-safe?

For example, suppose I define the following decorator:

import functools

def memoize(func):
    cache = {}
    def memoized(*args):
        result = None
        if args in cache:
            result = cache[args]
            result = func(*args)
            cache[args] = result
        return result
    return memoized

and suppose I am trying to use it to speed up computation of a recursive function, say:

def fib(n):
    result = 1
    if n > 1:
        result = fib(n-1) + fib(n-2)
    return result

Now I wonder if two processes calculating fib() could ever clash? For example:

if __name__ == "__main__":
    from multiprocessing import Process
    p1 = Process(target=fib, args=(19,))
    p2 = Process(target=fib, args=(23,))

My first thought was that the cache is saved in the context of fib, so it is shared between the processes and that could lead to race conditions. But then, I think that the worst that could happen is that they would both think that, say, fib(17) has not been calculated, and will both go ahead and calculated it in parallel and store the same result one after the other- not ideal, but not horrible, I guess. But I still wonder if there is a way to do it in a process-safe way.

EDIT: I added a print statement in each of the branches of memoized(), and it seems that each process re-calculates all the fib values in the cache. Perhaps the cache is not shared, after all? If it is not shared, I wounder if there is a process-safe way to share it (to save some more computations).

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1 Answer

up vote 0 down vote accepted

By default, multiprocess programs in Python share very little between processes. The few things that are shared are pickled, which comes with some limitations of its own. The fib function in your example is nominally shared, but pickle stores functions by name, not by value. That is why its cache doesn't get shared.

If you want to have a synchronized cache for your memoize decorator, you'll need to add synchronization to it, such as a multiprocessing.Queue or multiprocessing.Array. This may be slower than simply letting each process recalculate the values though, since it introduces a lot of overhead as the processes pass the updates back and forth.

Alternatively, if you don't need your separate processes to be tightly synchronized while they're running, you could come up with a method of passing the cache to and from the processes when they start and stop (e.g. using an extra argument and return value), so that sequential calls could benefit from the memoization, even if parallel calls do not.

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