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I am searching a more efficient way to sum-up the ASCII values of all characters in a given string, using only standard python (2.7 is preferable).

Currently I have:

print sum(ord(ch) for ch in text)

I want to emphasize that my main focus and aspect of this question is what I wrote above.

The following is somewhat less important aspect of this question and should be treated as such:

So why I am asking it?! I have compared this approach vs embedding a simple C-code function which does the same here using PyInline, and it seems that a simple C embedded function is 17 times faster.

If there is no Python approach faster than what I have suggested (using only standard Python), it seems strange that the Python developers haven't added such an implementation in the core.

Current results for suggested answers. On my Windows 7, i-7, Python 2.7:

 text = "aaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaa"
 sum(ord(ch) for ch in text)
 >> 0.00521324663262
 sum(array.array("B", text))
 >> 0.0010040770317
 sum(map(ord, text ))
 >> 0.00427160369234
 sum(bytearray(text))
 >> 0.000864669402933

 C-code embedded:
 >> 0.000272828426841
share|improve this question
7  
Why should such a function be part of the Python core? I fail to see its general usefulness... –  Tim Pietzcker Sep 19 '12 at 9:40
    
@Tim Pietzcker: sum of ascii values of a string is frequently used when hashing a string, for example rolling hash function –  Michael Sep 19 '12 at 9:41
5  
@Michael Only a very poor hash would do a straight sum of the values, there's usually a weighting involved. And, as pointed out, it seems better to have the higher-level interface (like hash()) instead, then that can be in C. –  unwind Sep 19 '12 at 9:44
5  
@Michael: I wasn't disagreeing, I was just asking why such a function would be useful enough to be included in the core language. –  Tim Pietzcker Sep 19 '12 at 9:48
1  
This question has two contentious claims: one, it compares Python-only code with embedded C code, where the embedded C code doesn't even handle a simple overflow. This comparison is therefore useless and detracts from the question. Second, the suggestion to include such a summing function in the language without giving a single use case is downright silly. (The hash use case doesn't count for reasons unwind explained.) Every addition to the Python core carries the maintenance and teaching burden for the foreseeable future, and needs to be covered by demonstrable use cases. –  user4815162342 Sep 19 '12 at 10:25

3 Answers 3

up vote 14 down vote accepted

You can use an intermediate bytearray to speed things up:

>>> sum(bytearray("abcdefgh"))
804

This is not 17 times faster than the generator—it involves the creation of an intermediate bytearray and sum still has to iterate over Python integer objects—but on my machine it does speed up summing an 8-character string from 2μs to about 700ns. If this ballpark is too inefficient for your use case, you should probably write the speed-critical parts of your application in C anyway.

If your strings are sufficiently large, and if you can use numpy, you can avoid creating temporary copies by directly referring to the string's buffer using numpy.frombuffer:

>>> import numpy as np
>>> np.frombuffer("abcdefgh", "uint8").sum()
804

For smaller strings this is slower than a temporary array because of the complexities in numpy's view creation machinery. However, for sufficiently large strings, the frombuffer approach starts to pay off, and it of course always creates less garbage. On my machine the cutoff point is string size of about 200 characters.

Also, see Guido's classic essay Python Optimization Anecdote. While some of its specific techniques may by now be obsolete, the general lesson of how to think about Python optimization is still quite relevant.


You can time the different approaches with the timeit module:

$ python -m timeit -s 's = "a" * 20' 'sum(ord(ch) for ch in s)' 
100000 loops, best of 3: 3.85 usec per loop
$ python -m timeit -s 's = "a" * 20' 'sum(bytearray(s))'
1000000 loops, best of 3: 1.05 usec per loop
$ python -m timeit -s 'from numpy import frombuffer; s = "a" * 20' \
                      'frombuffer(s, "uint8").sum()' 
100000 loops, best of 3: 4.8 usec per loop
share|improve this answer
    
+1 , thanks, this type of answers i searched for , i will check it now –  Michael Sep 19 '12 at 9:52
    
I have tested it, it is faster then i suggested, therefore it is good answer, it still slower then the embedded c-version. –  Michael Sep 19 '12 at 9:55
    
Same thing works in python 3, you just have to use a bytes literal: sum(array.array("B", b"abcdefgh")). –  Mu Mind Sep 19 '12 at 9:56
    
Any Python solution will always be slower than embedded C because the embedded C version is completely unsafe. In theory, the numpy-based solutions could be as fast, but in practice they have to allocate numpy's array objects which is reasonably cheap, but not free. –  user4815162342 Sep 19 '12 at 10:05
2  
You can avoid import array and sum(array.array('B', 'abcdefgh')) and just write sum(bytearray('abcdefgh')) when using 2.7 –  Jon Clements Sep 19 '12 at 10:24

In Python 3, you can sum the byte values of a bytes string directly:

>>> sum(b"123")
150

But not the codepoints of a (Unicode) str:

>>> sum(ord(c) for c in "123")
150
>>> sum("123")
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
TypeError: unsupported operand type(s) for +: 'int' and 'str'

Why this should work can be explained by the fact that bytes is just a container for byte values, i.e. 8-bit integers:

>>> b"123"[0]
49

Which is very different from how str behaves in either 2.x or 3.x (and unicode in 2.x).


Some timings:

>>> import timeit
>>> timeit.timeit(stmt="sum(b'123')")
0.23246187149505826
>>> timeit.timeit(stmt="sum(ord(c) for c in '123')")
1.0226797077267378
share|improve this answer
    
+1 , It is interesting, i have to download python 3 in-order to compare performance, but as i said i am interested more in a python 2.7 –  Michael Sep 19 '12 at 9:44
    
Wow, interesting, are you sure there is no such functionality in python 2.7? –  Michael Sep 19 '12 at 9:50
    
@Michael: I've certainly never seen it. But then I've never went looking for it either. Note that in Python 3, indexing a byte string gives a byte's numeric value (b"123"[0] == 49) which is very different from how str works in either version. That explains why sum should work for bytes but not str. –  larsmans Sep 19 '12 at 9:53
    
My answer covers equivalent functionality in Python 2, which is array.array("B"). However, it does entail copying string data, which loses for large strings. numpy.frombuffer doesn't copy anything, but it is a complex object whose creation takes some time, so it loses for small strings. And all of them are being compared with an unsafe hand-coded loop in C that doesn't handle overflows. –  user4815162342 Sep 19 '12 at 10:14
1  
@Michael sum(bytearray('123')) == 150 –  Jon Clements Sep 19 '12 at 10:25

You can speed it up a bit (~40% ish, but nowhere near as fast as native C) by removing the creation of the generator...

Instead of:

sum(ord(c) for c in string)

Do:

sum(map(ord, string))

Timings:

>>> timeit.timeit(stmt="sum(map(ord, 'abcdefgh'))")
# TP: 1.5709713941578798
# JC: 1.425781011581421
>>> timeit.timeit(stmt="sum(ord(c) for c in 'abcdefgh')")
# TP: 1.7807035140629637
# JC: 1.9981679916381836
share|improve this answer
    
+1 , Your right, it is slightly faster, but the array method is fastest, i have edited the question to present the current results. –  Michael Sep 19 '12 at 10:06

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