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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

share|improve this question
    
Will vector be sorted? If not, will it hurt to sort it, or do you need to keep the original order? –  Sven Marnach Mar 16 '12 at 23:07
    
Will the intervals defined by start and end be sorted and non-overlapping? –  Sven Marnach Mar 16 '12 at 23:10
    
The order of vector must be maintained. –  Memolo Mar 16 '12 at 23:23
    
And the intervals defined by start and end cannot be sorted and they can overlap –  Memolo Mar 16 '12 at 23:25
    
So the order of the output values matters, and values that are contained in multiple intervals should be contained in multiple output lists? –  Sven Marnach Mar 16 '12 at 23:27

1 Answer 1

up vote 1 down vote accepted

If vector is sorted this should be quite fast:

import numpy as np
from itertools import izip

vector = np.array([2.0, 2.24, 3.1, 4.768, 16.8, 16.9,23.5,24.0])
start = np.array([3.0,4.5,6.5,15.2])
end = np.array([7.3,16.2,17.7,25.8])
start_i = vector.searchsorted(start, 'left')
end_i = vector.searchsorted(end, 'right')
output = [vector[s:e] for s, e in izip(start_i, end_i)]
print output
[array([ 3.1  ,  4.768]), array([ 4.768]), array([ 16.8,  16.9]), array([ 16.8,  16.9,  23.5,  24. ])]

You can also so something similar in pure python, it's not quite as fast but it doesn't require numpy:

from bisect import bisect_left, bisect_right
from itertools import izip

vector = [2.0, 2.24, 3.1, 4.768, 16.8, 16.9,23.5,24.0]
start = [3.0,4.5,6.5,15.2]
end = [7.3,16.2,17.7,25.8]
se = izip(start, end)
output = [vector[bisect_left(vector, s):bisect_right(vector, e)] for s, e in se]
print output
[[3.1, 4.768], [4.768], [16.8, 16.9], [16.8, 16.9, 23.5, 24.0]]
share|improve this answer
    
No, vector list should not be repeated. Vector is: [1,2,3,4,5,6,7,8,9,10] and output should be: [[1,2],[4,5,6,7],[9]] when start is [1,4,9] and end is [2,7,9]. –  Memolo Mar 17 '12 at 12:59
    
This is a more realistic example: In case vector is [2.0, 2.24, 3.1, 4.768, 16.8, 16.9,23.5,24.0], start is [3.0,4.5,6.5,15.2] and end is [7.3,16.2,17.7,25.8]; output must be [[2.0,2.24,3.1,4.768],[4.768],[16.8,16.9],[16.8,24.0]]. –  Memolo Mar 17 '12 at 13:16
    
Notice that the code you gave us doesn't produce the output you gave, it produces: [[3.1, 4.768], [4.768], [16.8, 16.9], [16.8, 16.9, 23.5, 24.0]] Also in your more realistic example vector is sorted. This makes a big difference, can we assume that vector will always be sorted. That's what I was trying to get at with this question. If you make what you need more clear we can try to write a good answer. –  Bi Rico Mar 17 '12 at 15:43
    
Good catch. Thanks for the clarification. Vector will always be sorted. –  Memolo Mar 17 '12 at 16:24
    
Thanks Bago, it works perfectly and it's really fast. I appreciate the support. -Regards- –  Memolo Mar 18 '12 at 12:20

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