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I am presently writing a Python script to process some 10,000 or so input documents. Based on the script's progress output I notice that the first 400+ documents get processed really fast and then the script slows down although the input documents all are approximately the same size.

I am assuming this may have to do with the fact that most of the document processing is done with regexes that I do not save as regex objects once they have been compiled. Instead, I recompile the regexes whenever I need them.

Since my script has about 10 different functions all of which use about 10 - 20 different regex patterns I am wondering what would be a more efficient way in Python to avoid re-compiling the regex patterns over and over again (in Perl I could simply include a modifier //o).

My assumption is that if I store the regex objects in the individual functions using

pattern = re.compile()

the resulting regex object will not be retained until the next invocation of the function for the next iteration (each function is called but once per document).

Creating a global list of pre-compiled regexes seems an unattractive option since I would need to store the list of regexes in a different location in my code than where they are actually used.

Any advice here on how to handle this neatly and efficiently?

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2  
No, it has to do with the fact that your cache is depleted. –  Ignacio Vazquez-Abrams Mar 28 '12 at 19:45
1  
Have you profiled your code? –  Daenyth Mar 28 '12 at 19:52
1  
are all functions applied to all documents? because if so, @larsmans answer, while good, does not seem to explain the slowdown after 400 documents. i would suggest profiling rather than guessing... –  andrew cooke Mar 28 '12 at 20:07
    
Have you checked how much memory you are using? –  John Machin Mar 28 '12 at 20:09
    
Sorry, I am not familiar with profiling ... how does it work and what does it do for me? –  Pat Mar 30 '12 at 20:06

4 Answers 4

Last time I looked, re.compile maintained a rather small cache, and when it filled up, just emptied it. DIY with no limit:

class MyRECache(object):
    def __init__(self):
        self.cache = {}
    def compile(self, regex_string):
        if regex_string not in self.cache:
            self.cache[regex_string] = re.compile(regex_string)
        return self.cache[regex_string]
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4  
Or, even more succinctly, derive from dict and overwrite __missing__(). –  Sven Marnach Mar 28 '12 at 20:15
1  
@SvenMarnach: The code that I wrote can be understood by the person without the need to look up the __voodoo__ docs. –  John Machin Mar 29 '12 at 11:27
    
It would be interesting to know how the cache is cleared when its capacity is used up ... are all entries flushed or just a few? –  Pat Mar 30 '12 at 20:07
    
@Pat: If you don't believe that "emptied" means "flushed all entries", find re.py in your Python installation (mine is C:\Python27\Lib\re.py) and look for occurrences of _cache ... you should find _cache = {} and _cache.clear() –  John Machin Mar 30 '12 at 21:33

The re module caches compiled regex patterns. The cache is cleared when it reaches a size of re._MAXCACHE which by default is 100. (Since you have 10 functions with 10-20 regexes each (i.e. 100-200 regexes), your observed slow-down makes sense with the clearing of the cache.)

If you are okay with changing private variables, a quick and dirty fix to your program might be to set re._MAXCACHE to a higher value:

import re
re._MAXCACHE = 1000
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This is cool .... thanks for this hint. –  Pat Mar 30 '12 at 20:15

Compiled regular expression are automatically cached by re.compile, re.search and re.match, but the maximum cache size is 100 in Python 2.7, so you're overflowing the cache.

Creating a global list of pre-compiled regexes seems an unattractive option since I would need to store the list of regexes in a different location in my code than where they are actually used.

You can define them near the place where they are used: just before the functions that use them. If you reuse the same RE in a different place, then it would have been a good idea to define it globally anyway to avoid having to modify it in multiple places.

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In the spirit of "simple is better" I'd use a little helper function like this:

def rc(pattern, flags=0):
    key = pattern, flags
    if key not in rc.cache:
        rc.cache[key] = re.compile(pattern, flags)
    return rc.cache[key]

rc.cache = {}

Usage:

rc('[a-z]').sub...
rc('[a-z]').findall <- no compilation here

I also recommend you to try regex. Among many other advantages over the stock re, its MAXCACHE is 500 by default and won't get dropped completely on overflow.

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Thanks to everyone who bothered to reply to my query. I will follow up on the many helpful pointers. Your support is much appreciated!. –  Pat Mar 30 '12 at 20:17
    
@Pat: please accept the answer that helped you most. –  georg Mar 31 '12 at 8:23

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