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cpython/Tools/stringbench
2012-10-05 02:48:46 +02:00
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README
stringbench.py #16135: Removal of OS/2 support (Remove OS2 and OS/2 references) 2012-10-05 02:48:46 +02:00

stringbench is a set of performance tests comparing byte string
operations with unicode operations.  The two string implementations
are loosely based on each other and sometimes the algorithm for one is
faster than the other.

These test set was started at the Need For Speed sprint in Reykjavik
to identify which string methods could be sped up quickly and to
identify obvious places for improvement.

Here is an example of a benchmark


@bench('"Andrew".startswith("A")', 'startswith single character', 1000)
def startswith_single(STR):
    s1 = STR("Andrew")
    s2 = STR("A")
    s1_startswith = s1.startswith
    for x in _RANGE_1000:
        s1_startswith(s2)

The bench decorator takes three parameters.  The first is a short
description of how the code works.  In most cases this is Python code
snippet.  It is not the code which is actually run because the real
code is hand-optimized to focus on the method being tested.

The second parameter is a group title.  All benchmarks with the same
group title are listed together.  This lets you compare different
implementations of the same algorithm, such as "t in s"
vs. "s.find(t)".

The last is a count.  Each benchmark loops over the algorithm either
100 or 1000 times, depending on the algorithm performance.  The output
time is the time per benchmark call so the reader needs a way to know
how to scale the performance.

These parameters become function attributes.


Here is an example of the output


========== count newlines
38.54   41.60   92.7    ...text.with.2000.newlines.count("\n") (*100)
========== early match, single character
1.14    1.18    96.8    ("A"*1000).find("A") (*1000)
0.44    0.41    105.6   "A" in "A"*1000 (*1000)
1.15    1.17    98.1    ("A"*1000).index("A") (*1000)

The first column is the run time in milliseconds for byte strings.
The second is the run time for unicode strings.  The third is a
percentage; byte time / unicode time.  It's the percentage by which
unicode is faster than byte strings.

The last column contains the code snippet and the repeat count for the
internal benchmark loop.

The times are computed with 'timeit.py' which repeats the test more
and more times until the total time takes over 0.2 seconds, returning
the best time for a single iteration.

The final line of the output is the cumulative time for byte and
unicode strings, and the overall performance of unicode relative to
bytes.  For example

4079.83 5432.25 75.1    TOTAL

However, this has no meaning as it evenly weights every test.