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I'm currently using method get_close_matches method from difflib to iterate through a list of 15,000 strings to get the closest match against another list of approx 15,000 strings:

a=['blah','pie','apple'...]
b=['jimbo','zomg','pie'...]

for value in a:
    difflib.get_close_matches(value,b,n=1,cutoff=.85)

It takes .58 seconds per value which means it will take 8,714 seconds or 145 minutes to finish the loop. Is there another library/method that might be faster or a way to improve the speed for this method? I've already tried converting both arrays to lower case, but it only resulted in a slight speed increase.

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You can try to remove element from list b after match – user1209304 Jan 28 '14 at 16:00

Try this

https://code.google.com/p/pylevenshtein/

The Levenshtein Python C extension module contains functions for fast computation of - Levenshtein (edit) distance, and edit operations - string similarity - approximate median strings, and generally string averaging - string sequence and set similarity It supports both normal and Unicode strings.

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Perhaps you can build an index of the trigrams (three consecutive letters) that appear in each list. Only check strings in a against strings in b that share a trigram.

You might want to look at the BLAST bioinformatics tool; it does approximate sequence alignments against a sequence database.

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Do you have any example code of how you'd execute this? – ChrisArmstrong Jan 28 '14 at 22:17

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