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Here is how I check whether mystring begins with some string:

>>> mystring.lower().startswith("he")

The problem is that mystring is very long (thousands of characters), so the lower() operation takes a lot of time.

QUESTION: Is there a more efficient way?

My unsuccessful attempt:

>>> import re;
>>> mystring.startswith("he", re.I)
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3 Answers 3

up vote 16 down vote accepted

You could use a regular expression as follows:

In [33]: bool(re.match('he', 'Hello', re.I))
Out[33]: True

In [34]: bool(re.match('el', 'Hello', re.I))
Out[34]: False

On a 2000-character string this is about 20x faster than tolower():

In [38]: s = 'A' * 2000

In [39]: %timeit s.lower().startswith('he')
10000 loops, best of 3: 41.3 us per loop

In [40]: %timeit bool(re.match('el', s, re.I))
100000 loops, best of 3: 2.06 us per loop

If you are matching the same prefix repeatedly, precompiling the regex can make a large difference:

In [41]: p = re.compile('he', re.I)

In [42]: %timeit p.match(s)
1000000 loops, best of 3: 351 ns per loop

For short prefixes, slicing the prefix out of the string before converting it to lowercase could be even faster:

In [43]: %timeit s[:2].lower() == 'he'
1000000 loops, best of 3: 287 ns per loop

Relative timings of these approaches will of course depend on the length of the prefix. On my machine the breakeven point seems to be about six characters, which is when the pre-compiled regex becomes the fastest method.

In my experiments, checking every character separately could be even faster:

In [44]: %timeit (s[0] == 'h' or s[0] == 'H') and (s[1] == 'e' or s[1] == 'E')
1000000 loops, best of 3: 189 ns per loop

However, this method only works for prefixes that are known when you're writing the code, and doesn't lend itself to longer prefixes.

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Your test is a bit wrong, as you do not include the time of re.complie() –  BasicWolf Nov 27 '12 at 8:42
@BasicWolf: The key is in "If you are matching the same prefix repeatedly...". What it's saying is that the cost of the compile (~900ns) gets amortised across many matches and becomes negligible. –  NPE Nov 27 '12 at 14:07

How about this:

prefix = 'he'
if myVeryLongStr[:len(prefix)].lower() == prefix.lower()
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Depending on the performance of .lower(), if prefix was small enough it might be faster to check equality multiple times:

s =  'A' * 2000
prefix = 'he'
ch0 = s[0] 
ch1 = s[1]
substr = ch0 == 'h' or ch0 == 'H' and ch1 == 'e' or ch1 == 'E'

Timing (using the same string as NPE):

>>> timeit.timeit("ch0 = s[0]; ch1 = s[1]; ch0 == 'h' or ch0 == 'H' and ch1 == 'e' or ch1 == 'E'", "s = 'A' * 2000")

= 0.25 us per loop

Compared to existing method:

>>> timeit.timeit("s.lower().startswith('he')", "s = 'A' * 2000", number=10000)

= 61.63 us per loop

(This is horrible, of course, but if the code is extremely performance critical then it might be worth it)

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