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Is it possible to speed up this mapping function by dividing the lookups between multiple processes or threads?

for k, v in map_dict.iteritems():
    result_arr[k]=input_arr[v]

Note: k, v are tuples as result_arr and input_arr are 2 dimensional.

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As a rule of thumb, Python usually doesn't gain from parallel processing unless the amount of data is huge and there is little shared data. The reason for this is because threads don't execute fully in parallel due to the GIL, and processes can't efficiently share data. –  orlp Dec 30 '13 at 14:36
    
Thanks I am aware of this but in this case the amount of data is huge. I will consider moving to C but for now I would like to finish a prototype in python. I would be grateful for any speed improvements. –  user759885 Dec 30 '13 at 14:39
    
What types are result_arr and input_arr? If they're numpy arrays (which your reference to their being two dimensional suggests), result_arr[map_dict.keys()] = input_arr[map_dict.values()] will probably be faster than any explicit loop, and it may be parallelized by numpy. –  Blckknght Dec 30 '13 at 14:41
    
it is possible? yes, sorting and then splitting the dictionary among a pool (e.g. stackoverflow.com/questions/3842237/…). Does it speeds up the whole process? it depends on many factors (size of data and overheads above all). –  furins Dec 30 '13 at 14:43
    
Blckknght both are image arrays in the format (width, height, color). The dictionary contains the [x1,y1] keys to lookup from one image and where to place them value [x2,y2] in the output image. –  user759885 Dec 30 '13 at 15:07

1 Answer 1

you may consider Theano or Cython and, capitalizing on Blckknght comment, using this syntax:

result_arr[map_dict.keys()] = input_arr[map_dict.values()]

trying to split the original keys list in parts, and assigning each part to a different multiprocessing Pool (as suggested by me in a comment) may hardly improve it more, even on huge sets of points.

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Thanks I am already using Cython. And 'result_arr[map_dict.keys()] = input_arr[map_dict.values()]' is not producing the same results for some reason the data is scrambled perhaps because of some sorting problem. If there was a way to break the process up that would be good. Because I want to scale it a lot further with either multiple cores or even computers. –  user759885 Jan 3 '14 at 22:45

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