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I'm developing a data analysis worker in python using numpy and pandas. I will deploy lots of these workers so I want to keep it lightweight.

I tried checking with this code:

import logging
import resource
logging.basicConfig(level=logging.DEBUG)

def printmemory(msg):
    currentmemory = resource.getrusage(resource.RUSAGE_SELF).ru_maxrss
    logging.debug(msg+': total memory:%r Mb' % (int(currentmemory)/1000000.))

printmemory('begin')

#from numpy import array, nan, mean, std, sqrt, square
import numpy  as np
printmemory('numpy')

import pandas  as pd
printmemory('numpy')

and I found out that simply loading them to memory will make my worker pretty heavy. Is there a way to reduce the memory footprint of numpy and pandas?

Otherwise, any suggestion on a better solution?

share|improve this question
2  
You can reduce it a bit by only importing the methods and classes you need from each library. EG. if I'm only using pandas DataFrame, then instead of "import pandas" use "from pandas import DataFrame". –  Ryan G Jan 22 '14 at 19:07
    
why do you give msg as argument, while you dont do anything with it? –  usethedeathstar Jan 23 '14 at 13:23
    
Edited. It was a copy/paste from a previous edit. @RyanG As you can see there's a commented line that does exactly that, but it didn't seem to affect memory usage at all... –  Fra Jan 23 '14 at 20:21
    
Then there is no way to reduce the memory usage if the select methods/classes are also importing the entire library/other libraries as well. The only option you may have is to setup your data structures to be light weight so each worker isn't boated by redundant copies of the same data or excessive amounts of data which might be better off split across different workers. Of course this will depend on your environment. If you have more cores then more smaller workers will make sense, but if you have a high amount of memory, then bulking wouldn't hurt. –  Ryan G Jan 27 '14 at 15:45
4  
I think with a modern computer with reasonable ram loading the entire numpy library along with pandas should be the least of your concerns. I guess if you really want to make it more lightweight, you need to think about how to get only the data into the ram you are actually using. I've heard that pytables are actually really good at that although I've not worked with those myself. If you "just" want to make use of parralelization you might want to look into Cython where you can use the "prange" that will parallelize your loops and it will give you C-speed. –  Magellan88 Feb 4 '14 at 21:01

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