For one off string searches, is it faster to simply use str.find/rfind than to use re.match/search?

That is, for a given string, s, should I use:

if s.find('lookforme') > -1:
    do something

or

if re.match('lookforme',s):
    do something else

?

  • 3
    For a one off, I'm pretty sure regex would be slower, because of the extra overhead. – Thomas K Feb 4 '11 at 18:35
  • 1
    You should be careful comparing the two, as they have different functionality. Find searches the entire string, whereas match matches the beginning only (i.e. it can exit early, depending on the data). So you're comparing apples and oranges there. – Zoran Pavlovic Jun 1 '16 at 11:16
up vote 111 down vote accepted

The question: which is faster is best answered by using timeit.

from timeit import timeit
import re

def find(string, text):
    if string.find(text) > -1:
        pass

def re_find(string, text):
    if re.match(text, string):
        pass

def best_find(string, text):
    if text in string:
       pass

print timeit("find(string, text)", "from __main__ import find; string='lookforme'; text='look'")  
print timeit("re_find(string, text)", "from __main__ import re_find; string='lookforme'; text='look'")  
print timeit("best_find(string, text)", "from __main__ import best_find; string='lookforme'; text='look'")  

The output is:

0.441393852234
2.12302494049
0.251421928406

So not only should you use the in operator because it is easier to read, but because it is faster also.

  • 3
    Micro-optimizations at best to choose based on time. However, +1 since you specified the most readable case... – ircmaxell Feb 4 '11 at 18:37
  • 5
    You certainly answered the question properly, sukhbir. Agreed, though +1 for readability and that you proved the answer is the "pythonic" one. – Mike Caron Feb 4 '11 at 18:49
  • 4
    Clearly you led the automatic jury by calling one "best_find" ;-) – Thomas K Feb 4 '11 at 18:51
  • 17
    Just so you know, the main thing slowing down the regexp here is having to compile the pattern every time. If the pattern is precompiled and used over and over again, matching is only about 25% slower than using find. – Justin Peel Feb 4 '11 at 23:30
  • 2
    Is re.match() still slower than (consecutive) ins for patterns with many possibilities? e.g. a|b|c|d|e|f (pre-compiled pattern). – Aralox Aug 14 '17 at 7:14

Use this:

if 'lookforme' in s:
    do something

Regex need to be compiled first, which adds some overhead. Python's normal string search is very efficient anyways.

If you search the same term a lot or when you do something more complex then regex become more useful.

  • 4
    +1 First be pythonic - then, if performance becomes an issue, explore different implementations to see if they improve performance. – Andrew Hare Feb 4 '11 at 18:30

re.compile speeds up regexs a lot if you are searching for the same thing over and over. But I just got a huge speedup by using "in" to cull out bad cases before I match. Anecdotal, I know. ~Ben

I've had the same problem. I used Jupyter's %timeit to check:

import re
sent = "a sentence for measuring a find function"
sent_list = sent.split()
print("x in sentence")
%timeit "function" in sent
print("x in token list")
%timeit "function" in sent_list

print("regex search")
%timeit bool(re.match(".*function.*", sent))
print("compiled regex search")
regex = re.compile(".*function.*")
%timeit bool(regex.match(sent))

x in sentence 61.3 ns ± 3 ns per loop (mean ± std. dev. of 7 runs, 10000000 loops each)

x in token list 93.3 ns ± 1.26 ns per loop (mean ± std. dev. of 7 runs, 10000000 loops each)

regex search 772 ns ± 8.42 ns per loop (mean ± std. dev. of 7 runs, 1000000 loops each)

compiled regex search 420 ns ± 7.68 ns per loop (mean ± std. dev. of 7 runs, 1000000 loops each)

Compiling is fast but the simple in is better.

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