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I have a function that is side effect free and I would like to run for every element in an array and return an array with all of the results. I'm wondering if python has something built into to generate all of the values.

Thank you.

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do you mean map as in map-reduce? can you give an example of an input and an output row? –  Simon Apr 1 '10 at 18:44
    
No, I do not mean map reduce. Since I want all of the data from each individual function returned. It's just that each value can be calculated independently of one another. Although, since I think that I want the max of the set, maybe I can use map reduce here... –  Sandro Apr 1 '10 at 20:28
    
map() would do what you say, operate on each element independently (with the GIL caveats mentioned below) –  Adam Nelson Apr 1 '10 at 22:17

5 Answers 5

up vote 10 down vote accepted

Try the Pool.map function from multiprocessing:

http://docs.python.org/library/multiprocessing.html#using-a-pool-of-workers

It's not multithreaded per-se, but that's actually good since multithreading is severely crippled in Python by the GIL.

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Very cool, that last line sold me. I saw this multiprocessing library before but I thought that it was too heavy weight for my needs. I think that I see the light now :) Thank you. –  Sandro Apr 1 '10 at 23:58

You can use the multiprocessing python package (http://docs.python.org/library/multiprocessing.html). The cloud python package, available from PiCloud (http://www.picloud.com), offers a multi-processing map() function as well, which can offload your map to the cloud.

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I would think there would be no reason to have such a function. All Python threads have to execute on the same CPU. Assuming your map function has no I/O component, you would not see any speedup in processing (and would probably see a slowdown due to context switching).

Other posters have mentioned multiprocessing - that is probably a better idea.

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So is python multithreading really that bad? Do you have any sources on this info? –  Sandro Apr 1 '10 at 20:44
1  
It is not a question of "bad" vs "good" - I have mentioned something specific and concrete, which is that the Python interpreter will not allow threads to execute simultaneously on multiple processors. The result, given that a processor can only be doing one thing at a time, is that CPU operations from different threads must be interleaved on a single processor. Executing all of the instructions from one thread followed by all of the instructions from another thread can be no slower than executing instructions in round-robin fashion (and will indeed be faster, as in the first case there –  danben Apr 1 '10 at 20:59
    
would only be a single context switch). –  danben Apr 1 '10 at 21:00
    
I think your assumption (no I/O in the function) is unreasonable. You could warn the OP, warning them about the GIL, but saying "there would be no reason to have such a function" is far too broad. –  Yaniv Aknin Dec 30 '12 at 9:57

This functionality is not built in. However, someone has already implemented it.

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Maybe try the Unladen Swallow Python 3 implementation? That might be a major project, and not guaranteed to be stable, but if you're inclined it could work. Then list or set comprehensions seem like the proper functional structure to use.

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