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?