Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

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?

share|improve this question
No, it has to do with the fact that your cache is depleted. –  Ignacio Vazquez-Abrams Mar 28 '12 at 19:45
Have you profiled your code? –  Daenyth Mar 28 '12 at 19:52
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]
share|improve this answer
Or, even more succinctly, derive from dict and overwrite __missing__(). –  Sven Marnach Mar 28 '12 at 20:15
@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
share|improve this answer
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.

share|improve this answer

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 = {}


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.

share|improve this answer
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

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.