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I have a sorted list of numbers (10 million) that are in character format, and each entry is constant length of 15 characters. Think like:

100000000000000
100000000000001
...
100000010000000

Now I want to create a regular breakdown in this list, to see how entries are being accumulated in different ranges. The output could be like this:

100000000xxxxxx, 523121 entries
100000001xxxxxx, 32231 entries

Currently I have tried reading the whole list to a set, and search through it. I have tried both, string and int format. The integer version is 3 times faster than the string version currently. The codes look like:

collection_str = set(line.strip() for line in open(inputfile)
collection_int = set(int(line.strip()) for line in open(sys.argv[1]))

def find_str(look_for, ourset):
    count = 0
    for entry in ourset:
            if entry.startswith(look_for):
                    count += 1
    return count

def find_int(look_for, ourset):
    search_min = int(str(look_for) + "000000")
    search_max = int(str(look_for+1) + "000000")

    count = 0
    for entry in ourset:
            if entry >= search_min and entry < search_max:
                    count += 1
    return count

The results look like this:

"int version"
100000100 27401 (0.515992sec)
100000101 0 (0.511334sec)
100000102 0 (0.510956sec)
100000103 0 (0.510467sec)
100000104 0 (0.512834sec)
100000105 0 (0.511501sec)

"string version"
100000100 27401 (1.794804sec)
100000101 0 (1.794449sec)
100000102 0 (1.802035sec)
100000103 0 (1.797590sec)
100000104 0 (1.793691sec)
100000105 0 (1.796785sec)

I wonder if I could somehow make it even faster ? Even with 0,5s / range, this still takes time if I want run this often to create some periodic statistics... From searches around I see that some people use bisect for something similar, but I can't seem to get my head around how it should work.

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Can you upload the sample file? I would like to try this. –  thefourtheye Oct 11 '13 at 3:02
    
bisect is for binary searching. –  thefourtheye Oct 11 '13 at 3:02
    
for ranges: sort first, then binary searching. for elements: use a dict and use in operator. –  SaltyEgg Oct 11 '13 at 3:07
    
I suppose could generate something.. but the data is employers property ;) Hang on –  julumme Oct 11 '13 at 3:07
    
@SaltyEgg, Ah - sorry, indeed I have pre-sorted the list. Added that to the question –  julumme Oct 11 '13 at 3:07

2 Answers 2

up vote 2 down vote accepted

Put it into a numpy array. Then you can use vectorisation which is nice and fast :)

from random import randint
import numpy
ip = numpy.array(['1{0:014d}'.format(randint(0, 10000000)) for x in xrange(10000000)], dtype=numpy.int64)

numpy.sum(ip <= 100000000010000)
# 9960
%timeit numpy.sum(ip <= 100000000010000)
# 10 loops, best of 3: 35 ms per loop

Putting this in terms of your search functions:

import numpy

def find_numpy(look_for, ourset):
    search_min = int('{0:0<15s}'.format(str(look_for)))
    search_max = int('{0:0<15s}'.format(str(look_for+1)))
    return numpy.sum((ourset >= search_min) & (ourset < search_max))

with open('path/to/your/file.txt', 'r') as f:
    ip = numpy.array([line.strip() for line in f], dtype=numpy.int64)

find_numpy(1000000001, ip)
# 99686
%timeit find_numpy(1000000001, ip)
# 10 loops, best of 3: 86.6 ms per loop
share|improve this answer
    
Can you explain your code a bit ? You're trying to run sum (according to manual "sum of array elemenst over a given axis" on elements that are smaller than 100000000010000? Wouldn't 100000000010001 give wrong result then ? I seem to always get 0 as a result... –  julumme Oct 11 '13 at 3:43
    
Just edited for more clarity and put in terms of your other search functions. –  Josha Inglis Oct 11 '13 at 3:54
    
Essentially, we're reading your list in to a numpy array of dtype=numpy.int64 which will convert all of your strings to integers. Now we can essentially follow the logic of your integer search, but using numpy's vectorisation rather than looping. –  Josha Inglis Oct 11 '13 at 3:56
    
To read your file in: numpy.array([line.strip() for line in open(file)], dtype=numpy.int64) –  Josha Inglis Oct 11 '13 at 4:00
2  
ip <= 100000000010000 produces an array of True/False values and sum() treats True as one and False as zero. –  wwii Oct 11 '13 at 4:08

If the list is sorted, bisect will find the index that meets your criteria using a bisection search. It looks like bisect is much faster than using a numpy array.

import numpy as np
import bisect
from random import randint
from timeit import Timer

ip = ['1{0:014d}'.format(randint(0, 10000000)) for x in xrange(10000000)]
ip = sorted(ip)
print bisect.bisect(ip, '100000000010000')
# 9869
t = Timer("bisect.bisect(ip, '100000000010000')", 'from __main__ import bisect, ip')
print t.timeit(100)
# 0.000268309933485 seconds

ip_int = map(int, ip)
print bisect.bisect(ip_int, 100000000010000)
# 9869
t = Timer("bisect.bisect(ip_int, 100000000010000)", 'from __main__ import bisect, ip_int')
print t.timeit(100)
# 0.000137443078672 seconds

ip_numpy = np.array(ip_int)
print np.sum(ip_numpy <= 100000000010000)
# 9869
t = Timer("np.sum(ip_numpy <= 100000000010000)", 'from __main__ import np, ip_numpy')
print t.timeit(100)
# 8.23690123071 seconds

Binary search algorithm

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