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pybench
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README
________________________________________________________________________
PYBENCH - A Python Benchmark Suite
________________________________________________________________________
 Extendable suite of of low-level benchmarks for measuring
 the performance of the Python implementation 
 (interpreter, compiler or VM).
pybench is a collection of tests that provides a standardized way to
measure the performance of Python implementations. It takes a very
close look at different aspects of Python programs and let's you
decide which factors are more important to you than others, rather
than wrapping everything up in one number, like the other performance
tests do (e.g. pystone which is included in the Python Standard
Library).
pybench has been used in the past by several Python developers to
track down performance bottlenecks or to demonstrate the impact of
optimizations and new features in Python.
The command line interface for pybench is the file pybench.py. Run
this script with option '--help' to get a listing of the possible
options. Without options, pybench will simply execute the benchmark
and then print out a report to stdout.
Micro-Manual
------------
Run 'pybench.py -h' to see the help screen. Run 'pybench.py' to run
the benchmark suite using default settings and 'pybench.py -f <file>'
to have it store the results in a file too.
It is usually a good idea to run pybench.py multiple times to see
whether the environment, timers and benchmark run-times are suitable
for doing benchmark tests. 
You can use the comparison feature of pybench.py ('pybench.py -c
<file>') to check how well the system behaves in comparison to a
reference run. 
If the differences are well below 10% for each test, then you have a
system that is good for doing benchmark testings. Of you get random
differences of more than 10% or significant differences between the
values for minimum and average time, then you likely have some
background processes running which cause the readings to become
inconsistent. Examples include: web-browsers, email clients, RSS
readers, music players, backup programs, etc.
If you are only interested in a few tests of the whole suite, you can
use the filtering option, e.g. 'pybench.py -t string' will only
run/show the tests that have 'string' in their name.
This is the current output of pybench.py --help:
"""
------------------------------------------------------------------------
PYBENCH - a benchmark test suite for Python interpreters/compilers.
------------------------------------------------------------------------
Synopsis:
 pybench.py [option] files...
Options and default settings:
 -n arg number of rounds (10)
 -f arg save benchmark to file arg ()
 -c arg compare benchmark with the one in file arg ()
 -s arg show benchmark in file arg, then exit ()
 -w arg set warp factor to arg (10)
 -t arg run only tests with names matching arg ()
 -C arg set the number of calibration runs to arg (20)
 -d hide noise in comparisons (0)
 -v verbose output (not recommended) (0)
 --with-gc enable garbage collection (0)
 --with-syscheck use default sys check interval (0)
 --timer arg use given timer (time.time)
 -h show this help text
 --help show this help text
 --debug enable debugging
 --copyright show copyright
 --examples show examples of usage
Version:
 2.0
The normal operation is to run the suite and display the
results. Use -f to save them for later reuse or comparisons.
Available timers:
 time.time
 time.clock
 systimes.processtime
Examples:
python2.1 pybench.py -f p21.pybench
python2.5 pybench.py -f p25.pybench
python pybench.py -s p25.pybench -c p21.pybench
"""
License
-------
See LICENSE file.
Sample output
-------------
"""
-------------------------------------------------------------------------------
PYBENCH 2.0
-------------------------------------------------------------------------------
* using Python 2.4.2
* disabled garbage collection
* system check interval set to maximum: 2147483647
* using timer: time.time
Calibrating tests. Please wait...
Running 10 round(s) of the suite at warp factor 10:
* Round 1 done in 6.388 seconds.
* Round 2 done in 6.485 seconds.
* Round 3 done in 6.786 seconds.
...
* Round 10 done in 6.546 seconds.
-------------------------------------------------------------------------------
Benchmark: 2006年06月12日 12:09:25
-------------------------------------------------------------------------------
 Rounds: 10
 Warp: 10
 Timer: time.time
 Machine Details:
 Platform ID: Linux-2.6.8-24.19-default-x86_64-with-SuSE-9.2-x86-64
 Processor: x86_64
 Python:
 Executable: /usr/local/bin/python
 Version: 2.4.2
 Compiler: GCC 3.3.4 (pre 3.3.5 20040809)
 Bits: 64bit
 Build: Oct 1 2005 15:24:35 (#1)
 Unicode: UCS2
Test minimum average operation overhead
-------------------------------------------------------------------------------
 BuiltinFunctionCalls: 126ms 145ms 0.28us 0.274ms
 BuiltinMethodLookup: 124ms 130ms 0.12us 0.316ms
 CompareFloats: 109ms 110ms 0.09us 0.361ms
 CompareFloatsIntegers: 100ms 104ms 0.12us 0.271ms
 CompareIntegers: 137ms 138ms 0.08us 0.542ms
 CompareInternedStrings: 124ms 127ms 0.08us 1.367ms
 CompareLongs: 100ms 104ms 0.10us 0.316ms
 CompareStrings: 111ms 115ms 0.12us 0.929ms
 CompareUnicode: 108ms 128ms 0.17us 0.693ms
 ConcatStrings: 142ms 155ms 0.31us 0.562ms
 ConcatUnicode: 119ms 127ms 0.42us 0.384ms
 CreateInstances: 123ms 128ms 1.14us 0.367ms
 CreateNewInstances: 121ms 126ms 1.49us 0.335ms
 CreateStringsWithConcat: 130ms 135ms 0.14us 0.916ms
 CreateUnicodeWithConcat: 130ms 135ms 0.34us 0.361ms
 DictCreation: 108ms 109ms 0.27us 0.361ms
 DictWithFloatKeys: 149ms 153ms 0.17us 0.678ms
 DictWithIntegerKeys: 124ms 126ms 0.11us 0.915ms
 DictWithStringKeys: 114ms 117ms 0.10us 0.905ms
 ForLoops: 110ms 111ms 4.46us 0.063ms
 IfThenElse: 118ms 119ms 0.09us 0.685ms
 ListSlicing: 116ms 120ms 8.59us 0.103ms
 NestedForLoops: 125ms 137ms 0.09us 0.019ms
 NormalClassAttribute: 124ms 136ms 0.11us 0.457ms
 NormalInstanceAttribute: 110ms 117ms 0.10us 0.454ms
 PythonFunctionCalls: 107ms 113ms 0.34us 0.271ms
 PythonMethodCalls: 140ms 149ms 0.66us 0.141ms
 Recursion: 156ms 166ms 3.32us 0.452ms
 SecondImport: 112ms 118ms 1.18us 0.180ms
 SecondPackageImport: 118ms 127ms 1.27us 0.180ms
 SecondSubmoduleImport: 140ms 151ms 1.51us 0.180ms
 SimpleComplexArithmetic: 128ms 139ms 0.16us 0.361ms
 SimpleDictManipulation: 134ms 136ms 0.11us 0.452ms
 SimpleFloatArithmetic: 110ms 113ms 0.09us 0.571ms
 SimpleIntFloatArithmetic: 106ms 111ms 0.08us 0.548ms
 SimpleIntegerArithmetic: 106ms 109ms 0.08us 0.544ms
 SimpleListManipulation: 103ms 113ms 0.10us 0.587ms
 SimpleLongArithmetic: 112ms 118ms 0.18us 0.271ms
 SmallLists: 105ms 116ms 0.17us 0.366ms
 SmallTuples: 108ms 128ms 0.24us 0.406ms
 SpecialClassAttribute: 119ms 136ms 0.11us 0.453ms
 SpecialInstanceAttribute: 143ms 155ms 0.13us 0.454ms
 StringMappings: 115ms 121ms 0.48us 0.405ms
 StringPredicates: 120ms 129ms 0.18us 2.064ms
 StringSlicing: 111ms 127ms 0.23us 0.781ms
 TryExcept: 125ms 126ms 0.06us 0.681ms
 TryRaiseExcept: 133ms 137ms 2.14us 0.361ms
 TupleSlicing: 117ms 120ms 0.46us 0.066ms
 UnicodeMappings: 156ms 160ms 4.44us 0.429ms
 UnicodePredicates: 117ms 121ms 0.22us 2.487ms
 UnicodeProperties: 115ms 153ms 0.38us 2.070ms
 UnicodeSlicing: 126ms 129ms 0.26us 0.689ms
-------------------------------------------------------------------------------
Totals: 6283ms 6673ms
"""
________________________________________________________________________
Writing New Tests
________________________________________________________________________
pybench tests are simple modules defining one or more pybench.Test
subclasses.
Writing a test essentially boils down to providing two methods:
.test() which runs .rounds number of .operations test operations each
and .calibrate() which does the same except that it doesn't actually
execute the operations.
Here's an example:
------------------
from pybench import Test
class IntegerCounting(Test):
 # Version number of the test as float (x.yy); this is important
 # for comparisons of benchmark runs - tests with unequal version
 # number will not get compared.
 version = 1.0
 
 # The number of abstract operations done in each round of the
 # test. An operation is the basic unit of what you want to
 # measure. The benchmark will output the amount of run-time per
 # operation. Note that in order to raise the measured timings
 # significantly above noise level, it is often required to repeat
 # sets of operations more than once per test round. The measured
 # overhead per test round should be less than 1 second.
 operations = 20
 # Number of rounds to execute per test run. This should be
 # adjusted to a figure that results in a test run-time of between
 # 1-2 seconds (at warp 1).
 rounds = 100000
 def test(self):
	""" Run the test.
	 The test needs to run self.rounds executing
	 self.operations number of operations each.
 """
 # Init the test
 a = 1
 # Run test rounds
	#
 # NOTE: Use xrange() for all test loops unless you want to face
	# a 20MB process !
	#
 for i in xrange(self.rounds):
 # Repeat the operations per round to raise the run-time
 # per operation significantly above the noise level of the
 # for-loop overhead. 
	 # Execute 20 operations (a += 1):
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 a += 1
 def calibrate(self):
	""" Calibrate the test.
	 This method should execute everything that is needed to
	 setup and run the test - except for the actual operations
	 that you intend to measure. pybench uses this method to
 measure the test implementation overhead.
 """
 # Init the test
 a = 1
 # Run test rounds (without actually doing any operation)
 for i in xrange(self.rounds):
	 # Skip the actual execution of the operations, since we
	 # only want to measure the test's administration overhead.
 pass
Registering a new test module
-----------------------------
To register a test module with pybench, the classes need to be
imported into the pybench.Setup module. pybench will then scan all the
symbols defined in that module for subclasses of pybench.Test and
automatically add them to the benchmark suite.
Breaking Comparability
----------------------
If a change is made to any individual test that means it is no
longer strictly comparable with previous runs, the '.version' class
variable should be updated. Therefafter, comparisons with previous
versions of the test will list as "n/a" to reflect the change.
Version History
---------------
 2.0: rewrote parts of pybench which resulted in more repeatable
 timings:
 - made timer a parameter
 - changed the platform default timer to use high-resolution
 timers rather than process timers (which have a much lower
 resolution)
 - added option to select timer
 - added process time timer (using systimes.py)
 - changed to use min() as timing estimator (average
 is still taken as well to provide an idea of the difference)
 - garbage collection is turned off per default
 - sys check interval is set to the highest possible value
 - calibration is now a separate step and done using
 a different strategy that allows measuring the test
 overhead more accurately
 - modified the tests to each give a run-time of between
 100-200ms using warp 10
 - changed default warp factor to 10 (from 20)
 - compared results with timeit.py and confirmed measurements
 - bumped all test versions to 2.0
 - updated platform.py to the latest version
 - changed the output format a bit to make it look
 nicer
 - refactored the APIs somewhat
 1.3+: Steve Holden added the NewInstances test and the filtering 
 option during the NeedForSpeed sprint; this also triggered a long 
 discussion on how to improve benchmark timing and finally
 resulted in the release of 2.0
 1.3: initial checkin into the Python SVN repository
Have fun,
--
Marc-Andre Lemburg
mal@lemburg.com
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