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We have 100 large Python objects in memory (each object is mix of dictionaries, Python standard values (e.g., integers), NumPy objects, Python classes), and we need to copy the most of them "by content" ("by value").

Please, advise, how we can do it in parallel or at least faster?

There are a few ways we already considered (as far as we understand them, maybe wrongly):

  1. threading module does not work, because copying is being done with Python native functions, and GIL is a bottleneck.

  2. multiprocessing module and Parallel Python do not work, because it pickles the arguments, and pickling in this case is not better than copying (and this pickling cannot happen in parallel).

  3. PyPy potentially at least can give small improvement (not necessary), but it seems we cannot use it because we use NumPy objects.

Thank you in advance!

Have been searching for the possible solution during these 10 days, but have not found anything. CPython GIL is everywhere the insurmountable obstacle. It seems the easist solution is to switch to numpy objects (arrays) instead of using Python native arrays and dictionaries, because this will allow to copy them in parallel (at least a bit) even using Python threads.

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What do you need to copy the objects for? –  computergeek6 May 11 '13 at 6:19
@computergeek6, to mutate them separately stochastically. –  Yura Perov May 11 '13 at 7:37
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