I'm trying to get slices of data (based on the array values) for very big arrays (len>1000000). See next python code for an example to what I'm trying to do in pure python:
vector=[1,2,3,4,5,6,7,8,9,10] start=[1,4,9] # start and end lists have the same length end=[2,7,9] output=[]*len(start) for indx1 in range(len(start)): temp= for indx2 in range(len(vector)): if ( (vector[indx2]>=start[indx1]) and (vector[indx2]<=end[indx1]) ): temp.append(vector[indx2]) output[indx1]=temp print output
vector list has normally 25E+6 elements while start and end lists have like 1E6 elements, that's why doing this on pure python is very slow.
Do you know a why to use numpy to avoid for loops to solve this problem?
Thanks for your time