I have a program which a use a lot. Therefore I wish to make it faster and trying to do multiprocessing. It kind of worked fine when I made the program use a low resolution (I am doing a power spectrum; low resolution means it will be done fast but it will not be very accurate). I got a ~2x speed up, but when doing a high resolution I terminated it before it was finish, after it had runned for a longer time than with the single processor.
My main file is something like this (I have defined
import multiprocessing as mp from ast_power import power_spectrum tasks = mp.cpu_count() bound = mp.Queue() res = mp.Queue() mint = [mp.Process(target=power_spectrum,args=(t,f,bound,res)) for i in range(tasks)] DF = (f_max-f_min)/tasks for i in mint: i.start() for i in range(1,tasks+1): a = i*f_min b = a+DF c = df d = 1 bound.put([a,b,c,d]) for i in mint: i.join() fr,p = , while tasks: frp,pp = res.get() frp,pp = list(frp),list(pp) fr += frp p += pp tasks -= 1
ast_power look like this
import numpy as np def power_spectrum(time, data, param, R='None' ): if R == 'None': #Normal f_min = param f_max = param df = param w = param else: # Multiprocessing f_min,f_max,df,w = param.get() freq = np.arange(f_min,f_max,df) for i in xrange( len(freq) ): # Do the power spectrum... # will produce; power, alfa, beta if R == 'None': #Normal return freq,power,alfa,beta else: #Multiprocessing R.put([freq,power,alfa,beta])
Is I doing it right? I think it is very strange that it works for high
df (low res.) and not for low
df (high res.)
Any help is very preciated.