# Python string comparison pointing to the result

Im trying to compare 2 1000 byte string and would like to know where the difference exactly starts, ie; from which byte the string is different.. Is there any function to determine it?

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It seems like something like this should be in `difflib`, but I can't find it. –  mgilson Oct 11 '12 at 13:31
@mgilson, I gave an answer using difflib, but I think it's pretty clumsy to use compared to the generator expression –  gnibbler Oct 11 '12 at 13:41

I've tried to test the answers given here and I've came up with an other, faster(in usual cases), solution, even though it is less elegant.

First of all let's see how fast are the proposed solutions:

``````>>> def check_genexp(a, b):
return next(idx for idx,c in enumerate(a) if c != b[idx])

>>> timeit.timeit('check_genexp("a"*9999+"b", "a"*9999+"c")',
...               'from __main__ import check_genexp', number=10000)
12.715466209264662
>>> from difflib import SequenceMatcher
>>> def check_matcher(a, b):
return next(SequenceMatcher(a=a, b=b).get_matching_blocks())

>>> timeit.timeit('check_matcher("a"*9999+"b", "a"*9999+"c")', 'from __main__ import check_matcher', number=10000)
127.01123366037902
``````

As you can see the genexp is a lot faster than `difflib`, but this is probably due to the fact that `SequenceMatcher` does a lot more than finding the first non-equal character.

Now, how could we speed things up? Well, we can use ""binary search""!!! The idea is that if two strings are not equal, than either the first halves are different or the second one are different(or both, but in that case we only care for the first half since we want the first differing index).

So we can do something like this:

``````def binary_check(a, b):
if a == b:
return -1
elif len(a) == 1 or len(b) == 1:
return 0
else:
r = binary_check(a[:len(a)//2], b[:len(b)//2])
if r >= 0:
return r
r = binary_check(a[len(a)//2:], b[len(b)//2:])
if r >= 0:
return r + len(a)//2
return r
``````

And the result:

``````>>> timeit.timeit('binary_check("a"*9999+"b", "a"*9999+"c")', 'from __main__ import binary_check', number=10000)
1.0917401415239407
``````

That's ten times faster than the genexp!(*)

Why this works? The comparisons obviously take linear time, so it looks like we are doing a lot more work than before... and that's indeed true but it's done at the "C level", and thus the result is that this method is actually faster.

Note that this is somehow "implementation specific" because implementations such as PyPy could probably optimize the genexp into a single C-for loop and that would beat anything; also on implementations like Jython or IronPython could be a lot slower than with CPython.

NOTE: With very big-strings this method wont scale well, since it takes O(nlogn) operations instead of O(n) operations[plus the overhead of creating/garbage-collecting a lot of strings], but it works well with moderately large strings(like 10k bytes).

This method has the same asymptotic complexity of the other methods, i.e. O(n). The strings are splitted in half at most `log_2(n)` times and each time an equality test is done, which takes linear time. At first sight it may seem a Θ(n * logn) algorithm, but that's not the case. The recurrence equation is:

``````T(n) = T(n//2) + Θ(n) = Σ_{i=0}^{logn}(n/2^i)
= Θ(n(1 + 1/2 + 1/4 + ...)) <= Θ(2n) = Θ(n)
``````

(*) That function probably only deals gracefully with strings of the same length, but the concept can be easily extended to generalize it.

Some more results:

``````>>> timeit.timeit('binary_check("a"*99999+"b", "a"*99999+"c")',
...               'from __main__ import binary_check', number=10000)
8.231982400882316
>>> timeit.timeit('check("a"*99999+"b", "a"*99999+"c")',
...               'from __main__ import check', number=10000)
118.22188008919511
>>> 118/8.23
14.337788578371809
>>> timeit.timeit('binary_check("a"*999999+"b", "a"*999999+"c")',
...               'from __main__ import binary_check', number=100)
1.3853583542929755
>>> timeit.timeit('check("a"*999999+"b", "a"*999999+"c")',
...               'from __main__ import check', number=100)
12.150549202524871
>>> 12.15 / 1.38
8.804347826086957
>>> timeit.timeit('binary_check("a"*1500000+"b", "a"*1500000+"c")',
...               'from __main__ import binary_check', number=100)
2.113901528090537
>>> timeit.timeit('check("a"*1500000+"b", "a"*1500000+"c")',
...               'from __main__ import check', number=100)
18.475372702808954
>>> 18.47/2.11
8.753554502369669
>>> timeit.timeit('binary_check("a"*15000000+"b", "a"*15000000+"c")',
...               'from __main__ import binary_check', number=100)
21.81365609187924
>>> timeit.timeit('check("a"*15000000+"b", "a"*15000000+"c")',
...               'from __main__ import check', number=100)
181.89069153688752
>>> 181.89/21.813
8.338605418786962
``````

As you can see even with huge strings this method is still faster.

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+1 -- clever! The fact that this works so well amuses me. I wonder how long the string can get before this strategy becomes slower. –  senderle Oct 11 '12 at 15:41
@senderle: a lot of. I've added some more "profiling" runs, and you can see that it's quite hard to make it less than 8 times faster. –  Bakuriu Oct 11 '12 at 15:47

Maybe use `next` plus a generator?

``````next(idx for idx,c in enumerate(your_string1) if c != your_string2[idx])
``````

This will give you the index where the difference starts and raise `StopIteration` if they are equal.

It might even be slightly more elegant with `itertools.izip`:

``````next(idx for idx,(c1,c2) in enumerate(izip(s1,s2)) if c1 != c2)
``````

Example:

``````>>> from itertools import izip
>>> s1 = 'stop at the bus'
>>> s2 = 'stop at the car'
>>> next(idx for idx,(c1,c2) in enumerate(izip(s1,s2)) if c1 != c2)
12
>>> s1[12]
'b'
>>> s2[12]
'c'
``````
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Thanks much..it worked –  user1050619 Oct 11 '12 at 13:55
One of my favorite patterns in Python. I've often wondered whether this was foreseen when genexes were introduced, or whether it's just the natural result of good design. –  senderle Oct 11 '12 at 15:47
@senderle -- Yeah, I'm not completely sure. I'd guess that it was forseen, but I suppose to know for sure we'd need to ask Guido and the python devs. It's quickly becoming one of my favorite patterns as well. Very useful. –  mgilson Oct 11 '12 at 16:35

If you want something more complex, you can have a look at SequenceMatcher

It is a bit hairy, but very powerful. If you simply want to answer your question, then :

``````from  difflib import SequenceMatcher

s1 = 'stop at the bus'
s2 = 'stop at the car'

s = SequenceMatcher(None, s1, s2)

print s.get_matching_blocks()[0].size
``````

returns the solution :)

But if you want all the matches :

Small example:

``````from  difflib import SequenceMatcher

s1 = 'stop at the bus'
s2 = 'stop at the car'

s = SequenceMatcher(None, s1, s2)

print s.get_matching_blocks()
``````

returns

``````[Match(a=0, b=0, size=12), Match(a=15, b=15, size=0)]
``````

which means that the longest match in your strings is of size 12, and starts at the beginning (0). But there is another match, starting at s1[15], and of size 0 . . .

For big strings like yours, this is something that could be really interesting. :)

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``````for i, (x, y) in enumerate(zip(a, b)):
if x != y:
print('First index where strings are different:', i)
break
else:
print('Strings are identical.')
``````

In Python 2.x, `zip()` returns a list of tuples, not a iterator. As gnibbler pointed out, if you're using Python 2.x, it might be worth your while to use `izip` rather than `zip` (`izip` returns a nice, memory efficient iterator that avoids evaluating all of the values at once). As I said in the commments though, in Python 3, `izip` has been renamed `zip` and the old `zip` is gone.

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I think you need a parenthesis around `x,y` since enumerate will yield tuples of the form `(idx, (aval,bval))` –  mgilson Oct 11 '12 at 13:26
Might be worth using `izip` since the strings are quite long, unless you expect the differences to always be near the end –  gnibbler Oct 11 '12 at 13:59
@gnibbler: You're right. I originally tested this in Python 3, where `zip==izip`. –  Joel Cornett Oct 11 '12 at 20:58
``````>>> s1 = 'stop at the bus'
>>> s2 = 'stop at the car'
>>> import difflib
>>> next(difflib.SequenceMatcher(a=s1, b=s2).get_matching_blocks())
Match(a=0, b=0, size=12)
``````

This means the the first matching block is 12 characters long.

If either a or b isn't 0, the strings differ right from the beginning

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Indeed. This question made me discover a really interesting lib. –  jlengrand Oct 11 '12 at 13:41
@jlengrand, yes it's very powerful, but not very clean for this particular question. –  gnibbler Oct 11 '12 at 13:43
@gnibbler -- I've not used `difflib` much, so it's nice to see this example. Thanks. (and +1 -- I think it's reasonably clean -- Certainly not much worse than `next( ... enumerate(izip(s1,s2)) ...)`) –  mgilson Oct 11 '12 at 13:47
@gnibbler Funny that the guy with more points gets the +1, even though the other one posted before with the same solution :D. Why would you call it unclean? Better use a standard lib than custom code that could be buggy, isn't it ? –  jlengrand Oct 11 '12 at 13:49
@jlengrand, because in this case you can't just check the size to get the result. you have to do something like `match.size if match.a==match.b==0 else 0` –  gnibbler Oct 11 '12 at 13:57
show 1 more comment

This might be overkill, but since you seem to be concerned about speed, you could consider using numpy. There are probably improvements to be made (for some reason inlining made a 25 us difference for me), but this is a first step:

``````>>> def diff_index(s1, s2):
...     s1 = numpy.fromstring(s1, dtype=numpy.uint8)
...     s2 = numpy.fromstring(s2, dtype=numpy.uint8)
...     return (~(s1 == s2)).nonzero()[0][0]
...
>>> base = string.lowercase * 385
>>> s1 = base + 'a'
>>> s2 = base + 'z'
>>> diff_index(s1, s2)
10010
``````

For differences at the end, this is a lot faster than a genex:

``````>>> %timeit next(idx for idx,(c1,c2) in enumerate(izip(s1,s2)) if c1 != c2)
1000 loops, best of 3: 1.46 ms per loop
>>> %timeit diff_index(s1, s2)
10000 loops, best of 3: 87.6 us per loop
``````

It's a lot slower for differences at the very beginning...

``````>>> s1 = 'a' + base
>>> s2 = 'z' + base
>>> %timeit next(idx for idx,(c1,c2) in enumerate(izip(s1,s2)) if c1 != c2)
100000 loops, best of 3: 2.12 us per loop
>>> %timeit diff_index(s1, s2)
10000 loops, best of 3: 87.5 us per loop
``````

But on average, it wins by an order of magnitude:

``````>>> s1 = base[:5000] + 'a' + base[5000:]
>>> s2 = base[:5000] + 'z' + base[5000:]
>>> %timeit next(idx for idx,(c1,c2) in enumerate(izip(s1,s2)) if c1 != c2)
1000 loops, best of 3: 724 us per loop
>>> %timeit diff_index(s1, s2)
10000 loops, best of 3: 87.2 us per loop
``````

If speed is not a concern, though, then I'd personally go for mgilson's answer.

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Nice! Even though this solution requires a third-party library. –  Bakuriu Oct 11 '12 at 15:50