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Is there any benefit in using compile for regular expressions in Python?

h = re.compile('hello')
h.match('hello world')

vs

re.match('hello', 'hello world')
share|improve this question
3  
Other then the fact that in 2.6 re.sub won't take a flags argument... –  new123456 Jun 6 '11 at 3:27
3  
I just ran into a case where using re.compile gave a 10-50x improvement. The moral is that if you have a lot of regexes (more than MAXCACHE = 100) and you use them a lot of times each (and separated by more than MAXCACHE regexes in between, so that each one gets flushed from the cache: so using the same one a lot of times and then moving on to the next one doesn't count), then it would definitely help to compile them. Otherwise, it doesn't make a difference. –  ShreevatsaR Dec 30 '13 at 14:21

16 Answers 16

up vote 176 down vote accepted

I've had a lot of experience running a compiled regex 1000s of times versus compiling on-the-fly, and have not noticed any perceivable difference. Obviously, this is colloquial, and certainly not a great argument against compiling, but I've found the difference to be negligible.

EDIT: After a quick glance at the actual Python 2.5 library code, I see that Python internally compiles AND CACHES regexes whenever you use them anyway (including calls to re.match()), so you're really only changing WHEN the regex gets compiled, and shouldn't be saving much time at all - only the time it takes to check the cache (a key lookup on an internal dict type).

From module re.py (comments are mine):

def match(pattern, string, flags=0):
    return _compile(pattern, flags).match(string)

def _compile(*key):

    # Does cache check at top of function
    cachekey = (type(key[0]),) + key
    p = _cache.get(cachekey)
    if p is not None: return p

    # ...
    # Does actual compilation on cache miss
    # ...

    # Caches compiled regex
    if len(_cache) >= _MAXCACHE:
        _cache.clear()
    _cache[cachekey] = p
    return p

I still often pre-compile regular expressions, but only to bind them to a nice, reusable name, not for any expected performance gain.

share|improve this answer
8  
Your conclusion is inconsistent with your answer. If regexs are compiled and stored automatically there is no need in most cases to do it by hand. –  J.F. Sebastian Jan 17 '09 at 0:21
33  
J. F. Sebastian, it serves as a signal to the programmer that the regexp in question will be used a lot and is not meant to be a throwaway. –  kaleissin Jan 20 '09 at 14:28
12  
More than that, I'd say that if you don't want to suffer the compile & cache hit at some performance critical part of your application, you're best off to compile them before hand in a non-critical part of your application. –  Eddie Parker Jan 20 '09 at 18:10
8  
I see the main advantage for using compiled regex if your re-using the same regex multiple times, thereby reducing the possibility for typos. If your just calling it once then uncompiled is more readable. –  monkut Mar 19 '09 at 1:00
10  
So, the main difference will be when you are using lots of different regex (more than _MAXCACHE), some of them just once and others lots of times... then it's important to keep your compiled expressions for those that are used more so they're not flushed out of the cache when it's full. –  fortran Jul 6 '09 at 10:36

For me, the biggest benefit to re.compile isn't any kind of premature optimization (which is the root of all evil, anyway). It's being able to separate definition of the regex from its use.

Even a simple expression such as 0|[1-9][0-9]* (integer in base 10 without leading zeros) can be complex enough that you'd rather not have to retype it, check if you made any typos, and later have to recheck if there are typos when you start debugging. Plus, it's nicer to use a variable name such as num or num_b10 than 0|[1-9][0-9]+.

It's certainly possible to store strings and pass them to re.match; however, that's less readable:

num = "..."
# then, much later:
m = re.match(num, input)

Versus compiling:

num = re.compile("...")
# then, much later:
m = num.match(input)

Though it is fairly close, the last line of the second feels more natural and simpler when used repeatedly.

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15  
Ten bonus points if you spotted the typo in the repeated regex before reading this comment! :P –  Roger Pate Jan 17 '09 at 16:50
1  
I agree with this answer; oftentimes using re.compile results in more, not less readable code. –  Carl Meyer Feb 1 '09 at 19:26
    
R.Pate: the first 0, because you said "without leading zeros"? –  Adriano Varoli Piazza Mar 18 '09 at 22:32
2  
No, the leading "0|" is to allow the value "0". The error is + instead of *. –  Roger Pate Jun 8 '09 at 20:35

FWIW:

$ python -m timeit -s "import re" "re.match('hello', 'hello world')"
100000 loops, best of 3: 3.82 usec per loop

$ python -m timeit -s "import re; h=re.compile('hello')" "h.match('hello world')"
1000000 loops, best of 3: 1.26 usec per loop

so, if you're going to be using the same regex a lot, it may be worth it to do re.compile (especially for more complex regexes).

The standard arguments against premature optimization apply, but I don't think you really lose much clarity/straightforwardness by using re.compile if you suspect that your regexps may become a performance bottleneck.

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1  
Major problems with your methodology here, since the setup argument is NOT including in the timing. Thus, you've removed the compilation time from the second example, and just average it out in the first example. This doesn't mean the first example compiles every time. –  Triptych Jan 16 '09 at 22:12
1  
Yes, I agree that this is not a fair comparison of the two cases. –  Kiv Jan 16 '09 at 22:15
4  
I see what you mean, but isn't that exactly what would happen in an actual application where the regexp is used many times? –  dF. Jan 17 '09 at 0:05
    
@dF: You're right, IF you only care about performance in one particular part of your code, and you're able to pre-compile the regex in another part. Otherwise, you need to time the re.compile call and include that in the second number for it to be a fair comparison. –  Carl Meyer Feb 1 '09 at 19:25
11  
@Triptych, @Kiv: The whole point of compiling regexps separate from use is to minimize compilation; removing it from the timing is exactly what dF should have done, because it represents real-world use most accurately. Compilation time is especially irrelevant with the way timeit.py does its timings here; it does several runs and only reports the shortest one, at which point the compiled regexp is cached. The extra cost you're seeing here is not the cost of compiling the regexp, but the cost of looking it up in the compiled regexp cache (a dictionary). –  jemfinch Apr 14 '10 at 11:47

Here's a simple test case:

~$ for x in 1 10 100 1000 10000 100000 1000000; do python -m timeit -n $x -s 'import re' 're.match("[0-9]{3}-[0-9]{3}-[0-9]{4}", "123-123-1234")'; done
1 loops, best of 3: 3.1 usec per loop
10 loops, best of 3: 2.41 usec per loop
100 loops, best of 3: 2.24 usec per loop
1000 loops, best of 3: 2.21 usec per loop
10000 loops, best of 3: 2.23 usec per loop
100000 loops, best of 3: 2.24 usec per loop
1000000 loops, best of 3: 2.31 usec per loop

~$ for x in 1 10 100 1000 10000 100000 1000000; do python -m timeit -n $x -s 'import re; r = re.compile("[0-9]{3}-[0-9]{3}-[0-9]{4}")' 'r.match("123-123-1234")'; done
1 loops, best of 3: 1.91 usec per loop
10 loops, best of 3: 0.691 usec per loop
100 loops, best of 3: 0.701 usec per loop
1000 loops, best of 3: 0.684 usec per loop
10000 loops, best of 3: 0.682 usec per loop
100000 loops, best of 3: 0.694 usec per loop
1000000 loops, best of 3: 0.702 usec per loop

So it would seem to compiling is faster with this simple case, even if you only match once.

share|improve this answer
    
You might want to add a conclusion here, as this answer has been flagged as being incomplete. –  Tim Post Nov 30 '12 at 10:05
    
Which version of Python is this? –  Kyle Strand Jul 11 at 16:42
    
it doesn't really matter, the point is to try the benchmark in the environment where you'll be running the code –  david king Oct 6 at 17:27

I just tried this myself. For the simple case of parsing a number out of a string and summing it, using a compiled regular expression object is about twice as fast as using the re methods.

As others have pointed out, the re methods (including re.compile) look up the regular expression string in a cache of previously compiled expressions. Therefore, in the normal case, the extra cost of using the re methods is simply the cost of the cache lookup.

However, examination of the code, shows the cache is limited to 100 expressions. This begs the question, how painful is it to overflow the cache? The code contains an internal interface to the regular expression compiler, re.sre_compile.compile. If we call it, we bypass the cache. It turns out to be about two orders of magnitude slower for a basic regular expression, such as r'\w+\s+([0-9_]+)\s+\w*'.

Here's my test:

#!/usr/bin/env python
import re
import time

def timed(func):
    def wrapper(*args):
        t = time.time()
        result = func(*args)
        t = time.time() - t
        print '%s took %.3f seconds.' % (func.func_name, t)
        return result
    return wrapper

regularExpression = r'\w+\s+([0-9_]+)\s+\w*'
testString = "average    2 never"

@timed
def noncompiled():
    a = 0
    for x in xrange(1000000):
        m = re.match(regularExpression, testString)
        a += int(m.group(1))
    return a

@timed
def compiled():
    a = 0
    rgx = re.compile(regularExpression)
    for x in xrange(1000000):
        m = rgx.match(testString)
        a += int(m.group(1))
    return a

@timed
def reallyCompiled():
    a = 0
    rgx = re.sre_compile.compile(regularExpression)
    for x in xrange(1000000):
        m = rgx.match(testString)
        a += int(m.group(1))
    return a


@timed
def compiledInLoop():
    a = 0
    for x in xrange(1000000):
        rgx = re.compile(regularExpression)
        m = rgx.match(testString)
        a += int(m.group(1))
    return a

@timed
def reallyCompiledInLoop():
    a = 0
    for x in xrange(10000):
        rgx = re.sre_compile.compile(regularExpression)
        m = rgx.match(testString)
        a += int(m.group(1))
    return a

r1 = noncompiled()
r2 = compiled()
r3 = reallyCompiled()
r4 = compiledInLoop()
r5 = reallyCompiledInLoop()
print "r1 = ", r1
print "r2 = ", r2
print "r3 = ", r3
print "r4 = ", r4
print "r5 = ", r5

And here is the output on my machine:

$ regexTest.py 
noncompiled took 4.555 seconds.
compiled took 2.323 seconds.
reallyCompiled took 2.325 seconds.
compiledInLoop took 4.620 seconds.
reallyCompiledInLoop took 4.074 seconds.
r1 =  2000000
r2 =  2000000
r3 =  2000000
r4 =  2000000
r5 =  20000

The 'reallyCompiled' methods use the internal interface, which bypasses the cache. Note the one that compiles on each loop iteration is only iterated 10,000 times, not one million.

share|improve this answer

In general, I find it is easier to use flags (at least easier to remember how), like re.I when compiling patterns than to use flags inline.

>>> foo_pat = re.compile('foo',re.I)
>>> foo_pat.findall('some string FoO bar')
['FoO']

vs

>>> re.findall('(?i)foo','some string FoO bar')
['FoO']
share|improve this answer

Interestingly, compiling does prove more efficient for me (Python 2.5.2 on Win XP):

import re
import time

rgx = re.compile('(\w+)\s+[0-9_]?\s+\w*')
str = "average    2 never"
a = 0

t = time.time()

for i in xrange(1000000):
    if re.match('(\w+)\s+[0-9_]?\s+\w*', str):
    #~ if rgx.match(str):
        a += 1

print time.time() - t

Running the above code once as is, and once with the two if lines commented the other way around, the compiled regex is twice as fast

share|improve this answer
1  
Same issue as with dF's performance comparison. It's not really fair unless you include the performance cost of the compile statement itself. –  Carl Meyer Feb 1 '09 at 19:27
4  
Carl, I disagree. The compile is only executed once, while the matching loop is executed a million times –  Eli Bendersky Feb 1 '09 at 20:19
    
@eliben: I agree with Carl Meyer. The compilation takes place in both cases. Triptych mentions that caching is involved, so in an optimal case (re stays in cache) both approaches are O(n+1), although the +1 part is kind of hidden when you don't use re.compile explicitly. –  paprika Feb 19 '09 at 4:02
1  
Don't write your own benchmarking code. Learn to use timeit.py, which is included in the standard distribution. –  jemfinch Apr 14 '10 at 11:48
    
How much of that time are you recreating the pattern string in the for loop. This overhead can't be trivial. –  IceArdor Apr 24 at 8:16

I ran this test before stumbling upon the discussion here. However, having run it I thought I'd at least post my results.

I stole and bastardized the example in Jeff Friedl's "Mastering Regular Expressions". This is on a macbook running OSX 10.6 (2Ghz intel core 2 duo, 4GB ram). Python version is 2.6.1.

Run 1 - using re.compile

import re 
import time 
import fpformat
Regex1 = re.compile('^(a|b|c|d|e|f|g)+$') 
Regex2 = re.compile('^[a-g]+$')
TimesToDo = 1000
TestString = "" 
for i in range(1000):
    TestString += "abababdedfg"
StartTime = time.time() 
for i in range(TimesToDo):
    Regex1.search(TestString) 
Seconds = time.time() - StartTime 
print "Alternation takes " + fpformat.fix(Seconds,3) + " seconds"

StartTime = time.time() 
for i in range(TimesToDo):
    Regex2.search(TestString) 
Seconds = time.time() - StartTime 
print "Character Class takes " + fpformat.fix(Seconds,3) + " seconds"

Alternation takes 2.299 seconds
Character Class takes 0.107 seconds

Run 2 - Not using re.compile

import re 
import time 
import fpformat

TimesToDo = 1000
TestString = "" 
for i in range(1000):
    TestString += "abababdedfg"
StartTime = time.time() 
for i in range(TimesToDo):
    re.search('^(a|b|c|d|e|f|g)+$',TestString) 
Seconds = time.time() - StartTime 
print "Alternation takes " + fpformat.fix(Seconds,3) + " seconds"

StartTime = time.time() 
for i in range(TimesToDo):
    re.search('^[a-g]+$',TestString) 
Seconds = time.time() - StartTime 
print "Character Class takes " + fpformat.fix(Seconds,3) + " seconds"

Alternation takes 2.508 seconds
Character Class takes 0.109 seconds
share|improve this answer

I agree with Honest Abe that the match(...) in the given examples are different. They are not a one-to-one comparisons and thus, outcomes are vary. To simplify my reply, I use A, B, C, D for those functions in question. Oh yes, we are dealing with 4 functions in re.py instead of 3.

Running this piece of code:

h = re.compile('hello')                   # (A)
h.match('hello world')                    # (B)

is same as running this code:

re.match('hello', 'hello world')          # (C)

Because, when looked into the source re.py, (A + B) means:

h = re._compile('hello')                  # (D)
h.match('hello world')

and (C) is actually:

re._compile('hello').match('hello world')

So, (C) is not the same as (B). In fact, (C) calls (B) after calling (D) which is also called by (A). In other words, (C) = (A) + (B). Therefore, comparing (A + B) inside a loop has same result as (C) inside a loop.

George's regexTest.py proved this for us.

noncompiled took 4.555 seconds.           # (C) in a loop
compiledInLoop took 4.620 seconds.        # (A + B) in a loop
compiled took 2.323 seconds.              # (A) once + (B) in a loop

Everyone's interest is, how to get the result of 2.323 seconds. In order to make sure compile(...) only get called once, we need to store the compiled regex object in memory. If we are using a class, we could store the object and reuse when every time our function get called.

class Foo:
    regex = re.compile('hello')
    def my_function(text)
        return regex.match(text)

If we are not using class (which is my request today), then I have no comment. I'm still learning to use global variable in Python, and I know global variable is a bad thing.

One more point, I believe that using (A) + (B) approach has an upper hand. Here are some facts as I observed (please correct me if I'm wrong):

  1. Calls A once, it will do one search in the _cache followed by one sre_compile.compile() to create a regex object. Calls A twice, it will do two searches and one compile (because the regex object is cached).

  2. If the _cache get flushed in between, then the regex object is released from memory and Python need to compile again. (someone suggest that Python won't recompile.)

  3. If we keep the regex object by using (A), the regex object will still get into _cache and get flushed somehow. But our code keep a reference on it and the regex object will not be released from memory. Those, Python need not to compile again.

  4. The 2 seconds differences in George's test compiledInLoop vs compiled is mainly the time required to build the key and search the _cache. It doesn't mean the compile time of regex.

  5. George's reallycompile test show what happen if it really re-do the compile every time: it will be 100x slower (he reduced the loop from 1,000,000 to 10,000).

Here are the only cases that (A + B) is better than (C):

  1. If we can cache a reference of the regex object inside a class.
  2. If we need to calls (B) repeatedly (inside a loop or multiple times), we must cache the reference to regex object outside the loop.

Case that (C) is good enough:

  1. We cannot cache a reference.
  2. We only use it once in a while.
  3. In overall, we don't have too many regex (assume the compiled one never get flushed)

Just a recap, here are the A B C:

h = re.compile('hello')                   # (A)
h.match('hello world')                    # (B)
re.match('hello', 'hello world')          # (C)

Thanks for reading.

share|improve this answer

This is a good question. You often see people use re.compile without reason. It lessens readability. But sure there are lots of times when pre-compiling the expression is called for. Like when you use it repeated times in a loop or some such.

It's like everything about programming (everything in life actually). Apply common sense.

share|improve this answer
    
As far as I can tell from my brief flick through, Python in a Nutshell doesn't mention use without re.compile(), which made me curious. –  Mat Jan 16 '09 at 21:55
1  
-1 How does it lessen readability? –  Cris Stringfellow Mar 2 '12 at 10:34
    
The regex object adds one more object to the context. As I said, there exists many situations where re.compile() has its place. The example given by the OP is not one of them. –  PEZ Mar 4 '12 at 19:46

Using the given examples:

h = re.compile('hello')
h.match('hello world')

The match method in the example above is not the same as the one used below:

re.match('hello', 'hello world')

re.compile() returns a regular expression object, which means h is a regex object.

The regex object has its own match method with the optional pos and endpos parameters:

regex.match(string[, pos[, endpos]])

pos

The optional second parameter pos gives an index in the string where the search is to start; it defaults to 0. This is not completely equivalent to slicing the string; the '^' pattern character matches at the real beginning of the string and at positions just after a newline, but not necessarily at the index where the search is to start.

endpos

The optional parameter endpos limits how far the string will be searched; it will be as if the string is endpos characters long, so only the characters from pos to endpos - 1 will be searched for a match. If endpos is less than pos, no match will be found; otherwise, if rx is a compiled regular expression object, rx.search(string, 0, 50) is equivalent to rx.search(string[:50], 0).

The regex object's search, findall, and finditer methods also support these parameters.

re.match(pattern, string, flags=0) does not support them as you can see,
nor does its search, findall, and finditer counterparts.

A match object has attributes that complement these parameters:

match.pos

The value of pos which was passed to the search() or match() method of a regex object. This is the index into the string at which the RE engine started looking for a match.

match.endpos

The value of endpos which was passed to the search() or match() method of a regex object. This is the index into the string beyond which the RE engine will not go.


A regex object has two unique, possibly useful, attributes:

regex.groups

The number of capturing groups in the pattern.

regex.groupindex

A dictionary mapping any symbolic group names defined by (?P) to group numbers. The dictionary is empty if no symbolic groups were used in the pattern.


And finally, a match object has this attribute:

match.re

The regular expression object whose match() or search() method produced this match instance.

share|improve this answer

Performance difference aside, using re.compile and using the compiled regular expression object to do match (whatever regular expression related operations) makes the semantics clearer to Python run-time.

I had some painful experience of debugging some simple code:

compare = lambda s, p: re.match(p, s)

and later I'd use compare in

[x for x in data if compare(patternPhrases, x[columnIndex])]

where patternPhrases is supposed to be a variable containing regular expression string, x[columnIndex] is a variable containing string.

I had trouble that patternPhrases did not match some expected string!

But if I used the re.compile form:

compare = lambda s, p: p.match(s)

then in

[x for x in data if compare(patternPhrases, x[columnIndex])]

Python would have complained that "string does not have attribute of match", as by positional argument mapping in compare, x[columnIndex] is used as regular expression!, when I actually meant

compare = lambda p, s: p.match(s)

In my case, using re.compile is more explicit of the purpose of regular expression, when it's value is hidden to naked eyes, thus I could get more help from Python run-time checking.

So the moral of my lesson is that when the regular expression is not just literal string, then I should use re.compile to let Python to help me to assert my assumption.

share|improve this answer

Regular Expressions are compiled before being used when using the second version. If you are going to executing it many times it is definatly better to compile it first. If not compiling every time you match for one off's is fine.

share|improve this answer

(months later) it's easy to add your own cache around re.match, or anything else for that matter --

""" Re.py: Re.match = re.match + cache  
    efficiency: re.py does this already (but what's _MAXCACHE ?)
    readability, inline / separate: matter of taste
"""

import re

cache = {}
_re_type = type( re.compile( "" ))

def match( pattern, str, *opt ):
    """ Re.match = re.match + cache re.compile( pattern ) 
    """
    if type(pattern) == _re_type:
        cpat = pattern
    elif pattern in cache:
        cpat = cache[pattern]
    else:
        cpat = cache[pattern] = re.compile( pattern, *opt )
    return cpat.match( str )

# def search ...

A wibni, wouldn't it be nice if: cachehint( size= ), cacheinfo() -> size, hits, nclear ...

share|improve this answer

i'd like to motivate that pre-compiling is both conceptually and 'literately' (as in 'literate programming') advantageous. have a look at this code snippet:

from re import compile as _Re

class TYPO:

  def text_has_foobar( self, text ):
    return self._text_has_foobar_re_search( text ) is not None
  _text_has_foobar_re_search = _Re( r"""(?i)foobar""" ).search

TYPO = TYPO()

in your application, you'd write:

from TYPO import TYPO
print( TYPO.text_has_foobar( 'FOObar ) )

this is about as simple in terms of functionality as it can get. because this is example is so short, i conflated the way to get _text_has_foobar_re_search all in one line. the disadvantage of this code is that it occupies a little memory for whatever the lifetime of the TYPO library object is; the advantage is that when doing a foobar search, you'll get away with two function calls and two class dictionary lookups. how many regexes are cached by re and the overhead of that cache are irrelevant here.

compare this with the more usual style, below:

import re

class Typo:

  def text_has_foobar( self, text ):
    return re.compile( r"""(?i)foobar""" ).search( text ) is not None

In the application:

typo = Typo()
print( typo.text_has_foobar( 'FOObar ) )

I readily admit that my style is highly unusual for python, maybe even debatable. however, in the example that more closely matches how python is mostly used, in order to do a single match, we must instantiate an object, do three instance dictionary lookups, and perform three function calls; additionally, we might get into re caching troubles when using more than 100 regexes. also, the regular expression gets hidden inside the method body, which most of the time is not such a good idea.

be it said that every subset of measures---targeted, aliased import statements; aliased methods where applicable; reduction of function calls and object dictionary lookups---can help reduce computational and conceptual complexity.

share|improve this answer
1  
WTF. Not only you dugg out an old, answered question. Your code is non-idiomatic as well and wrong on so many levels - (ab)using classes as namespaces where a module is enough, capitalizing class names, etc... See pastebin.com/iTAXAWen for better implementations. Not to mention the regex you use is broken, too. Overall, -1 –  delnan Nov 6 '10 at 20:34
1  
guilty. this is an old question, but i don't mind being #100 in a slowed-down conversation. the question has not been closed. i did warn my code could be adversary to some tastes. i think if you could view it as a mere demonstration of what is doable in python, like: if we take everything , everything we believe, as optional, and then tinker together in what any way, what do the things look like that we can get? i am sure you can discern merits and dismerits of this solution and can complain more articulatedly. otherwise i must conclude your claim of wrongness relies on little more than PEP008 –  flow Nov 6 '10 at 22:14
1  
No, it's not about PEP8. That's just naming conventions, and I'd never downvote for not following those. I downvoted you because the code you showed is simply poorly written. It defies conventions and idioms for no reason, and is an incarnation of permature optimization: You'd have to optimize the living daylight out of all other code for this to become a bottleneck, and even then the third rewrite I offered is shorter, more idiomatic and just as fast by your reasoning (same number of attribute access). –  delnan Nov 7 '10 at 16:09
    
"poorly written"--like why exactly? "defies conventions and idioms"--i warned you. "for no reason"--yes i do have a reason: simplify where complexity serves no purpose; "incarnation of premature optimization"--i'm very much for a programming style that chooses a balance of readability and efficiency; OP asked for elicitation of "benefit in using re.compile", which i understand as a question about efficiency. "(ab)using classes as namespaces"--it is your words that are abusive. class is there so you have a "self" point-of-reference. i tried using modules for this purpose, classes work better. –  flow Nov 9 '10 at 13:36
    
"capitalizing class names", "No, it's not about PEP8"--you're apparently so outrageously angry you can't even tell about what to bicker first. "WTF", "wrong"---see how emotional you are? more objectivity and less froth please. –  flow Nov 9 '10 at 14:19

My understanding is that those two examples are effectively equivalent. The only difference is that in the first, you can reuse the compiled regular expression elsewhere without causing it to be compiled again.

Here's a reference for you: http://diveintopython3.ep.io/refactoring.html

Calling the compiled pattern object's search function with the string 'M' accomplishes the same thing as calling re.search with both the regular expression and the string 'M'. Only much, much faster. (In fact, the re.search function simply compiles the regular expression and calls the resulting pattern object's search method for you.)

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i didn't downvote you, but technically this is wrong: Python won't recompile anyway –  Triptych Jan 16 '09 at 22:21

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