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Fred Drakeea003fc1999-04-05 21:59:15 +00001\chapter{The Python Profiler \label{profile}}
2
3\sectionauthor{James Roskind}{}
Guido van Rossumdf804f81995-03-02 12:38:39 +00004
Fred Drake4b3f0311996-12-13 22:04:31 +00005Copyright \copyright{} 1994, by InfoSeek Corporation, all rights reserved.
Fred Drake5dabeed1998-04-03 07:02:35 +00006\index{InfoSeek Corporation}
Guido van Rossumdf804f81995-03-02 12:38:39 +00007
Fred Drakeea003fc1999-04-05 21:59:15 +00008Written by James Roskind.\footnote{
9 Updated and converted to \LaTeX\ by Guido van Rossum. The references to
10 the old profiler are left in the text, although it no longer exists.}
Guido van Rossumdf804f81995-03-02 12:38:39 +000011
12Permission to use, copy, modify, and distribute this Python software
13and its associated documentation for any purpose (subject to the
14restriction in the following sentence) without fee is hereby granted,
15provided that the above copyright notice appears in all copies, and
16that both that copyright notice and this permission notice appear in
17supporting documentation, and that the name of InfoSeek not be used in
18advertising or publicity pertaining to distribution of the software
19without specific, written prior permission. This permission is
20explicitly restricted to the copying and modification of the software
21to remain in Python, compiled Python, or other languages (such as C)
22wherein the modified or derived code is exclusively imported into a
23Python module.
24
25INFOSEEK CORPORATION DISCLAIMS ALL WARRANTIES WITH REGARD TO THIS
26SOFTWARE, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY AND
27FITNESS. IN NO EVENT SHALL INFOSEEK CORPORATION BE LIABLE FOR ANY
28SPECIAL, INDIRECT OR CONSEQUENTIAL DAMAGES OR ANY DAMAGES WHATSOEVER
29RESULTING FROM LOSS OF USE, DATA OR PROFITS, WHETHER IN AN ACTION OF
30CONTRACT, NEGLIGENCE OR OTHER TORTIOUS ACTION, ARISING OUT OF OR IN
31CONNECTION WITH THE USE OR PERFORMANCE OF THIS SOFTWARE.
32
33
34The profiler was written after only programming in Python for 3 weeks.
35As a result, it is probably clumsy code, but I don't know for sure yet
36'cause I'm a beginner :-). I did work hard to make the code run fast,
37so that profiling would be a reasonable thing to do. I tried not to
38repeat code fragments, but I'm sure I did some stuff in really awkward
39ways at times. Please send suggestions for improvements to:
Fred Drake8fa5eb81998-02-27 05:23:37 +000040\email{jar@netscape.com}. I won't promise \emph{any} support. ...but
Guido van Rossumdf804f81995-03-02 12:38:39 +000041I'd appreciate the feedback.
42
43
Guido van Rossum470be141995-03-17 16:07:09 +000044\section{Introduction to the profiler}
Guido van Rossum86cb0921995-03-20 12:59:56 +000045\nodename{Profiler Introduction}
Guido van Rossumdf804f81995-03-02 12:38:39 +000046
47A \dfn{profiler} is a program that describes the run time performance
48of a program, providing a variety of statistics. This documentation
49describes the profiler functionality provided in the modules
Fred Drake8fa5eb81998-02-27 05:23:37 +000050\module{profile} and \module{pstats}. This profiler provides
Guido van Rossumdf804f81995-03-02 12:38:39 +000051\dfn{deterministic profiling} of any Python programs. It also
52provides a series of report generation tools to allow users to rapidly
53examine the results of a profile operation.
Fred Drake8fa5eb81998-02-27 05:23:37 +000054\index{deterministic profiling}
55\index{profiling, deterministic}
Guido van Rossumdf804f81995-03-02 12:38:39 +000056
57
58\section{How Is This Profiler Different From The Old Profiler?}
Guido van Rossum86cb0921995-03-20 12:59:56 +000059\nodename{Profiler Changes}
Guido van Rossumdf804f81995-03-02 12:38:39 +000060
Guido van Rossum364e6431997-11-18 15:28:46 +000061(This section is of historical importance only; the old profiler
62discussed here was last seen in Python 1.1.)
63
Guido van Rossumdf804f81995-03-02 12:38:39 +000064The big changes from old profiling module are that you get more
65information, and you pay less CPU time. It's not a trade-off, it's a
66trade-up.
67
68To be specific:
69
70\begin{description}
71
72\item[Bugs removed:]
73Local stack frame is no longer molested, execution time is now charged
74to correct functions.
75
76\item[Accuracy increased:]
77Profiler execution time is no longer charged to user's code,
78calibration for platform is supported, file reads are not done \emph{by}
79profiler \emph{during} profiling (and charged to user's code!).
80
81\item[Speed increased:]
82Overhead CPU cost was reduced by more than a factor of two (perhaps a
83factor of five), lightweight profiler module is all that must be
Fred Drake8fa5eb81998-02-27 05:23:37 +000084loaded, and the report generating module (\module{pstats}) is not needed
Guido van Rossumdf804f81995-03-02 12:38:39 +000085during profiling.
86
87\item[Recursive functions support:]
88Cumulative times in recursive functions are correctly calculated;
89recursive entries are counted.
90
91\item[Large growth in report generating UI:]
92Distinct profiles runs can be added together forming a comprehensive
93report; functions that import statistics take arbitrary lists of
94files; sorting criteria is now based on keywords (instead of 4 integer
95options); reports shows what functions were profiled as well as what
96profile file was referenced; output format has been improved.
97
98\end{description}
99
100
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000101\section{Instant Users Manual \label{profile-instant}}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000102
103This section is provided for users that ``don't want to read the
104manual.'' It provides a very brief overview, and allows a user to
105rapidly perform profiling on an existing application.
106
107To profile an application with a main entry point of \samp{foo()}, you
108would add the following to your module:
109
Fred Drake19479911998-02-13 06:58:54 +0000110\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000111import profile
Fred Drake2cb824c1998-04-09 18:10:35 +0000112profile.run('foo()')
Fred Drake19479911998-02-13 06:58:54 +0000113\end{verbatim}
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000114
Guido van Rossumdf804f81995-03-02 12:38:39 +0000115The above action would cause \samp{foo()} to be run, and a series of
116informative lines (the profile) to be printed. The above approach is
117most useful when working with the interpreter. If you would like to
118save the results of a profile into a file for later examination, you
Fred Drake8fa5eb81998-02-27 05:23:37 +0000119can supply a file name as the second argument to the \function{run()}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000120function:
121
Fred Drake19479911998-02-13 06:58:54 +0000122\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000123import profile
Fred Drake2cb824c1998-04-09 18:10:35 +0000124profile.run('foo()', 'fooprof')
Fred Drake19479911998-02-13 06:58:54 +0000125\end{verbatim}
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000126
Fred Drake8fa5eb81998-02-27 05:23:37 +0000127The file \file{profile.py} can also be invoked as
Guido van Rossumbac80021997-06-02 17:29:12 +0000128a script to profile another script. For example:
Fred Drake8fa5eb81998-02-27 05:23:37 +0000129
130\begin{verbatim}
Fred Drake5dabeed1998-04-03 07:02:35 +0000131python /usr/local/lib/python1.5/profile.py myscript.py
Fred Drake8fa5eb81998-02-27 05:23:37 +0000132\end{verbatim}
Guido van Rossumbac80021997-06-02 17:29:12 +0000133
Guido van Rossumdf804f81995-03-02 12:38:39 +0000134When you wish to review the profile, you should use the methods in the
Fred Drake8fa5eb81998-02-27 05:23:37 +0000135\module{pstats} module. Typically you would load the statistics data as
Guido van Rossumdf804f81995-03-02 12:38:39 +0000136follows:
137
Fred Drake19479911998-02-13 06:58:54 +0000138\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000139import pstats
140p = pstats.Stats('fooprof')
Fred Drake19479911998-02-13 06:58:54 +0000141\end{verbatim}
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000142
Fred Drake8fa5eb81998-02-27 05:23:37 +0000143The class \class{Stats} (the above code just created an instance of
Guido van Rossumdf804f81995-03-02 12:38:39 +0000144this class) has a variety of methods for manipulating and printing the
145data that was just read into \samp{p}. When you ran
Fred Drake8fa5eb81998-02-27 05:23:37 +0000146\function{profile.run()} above, what was printed was the result of three
Guido van Rossumdf804f81995-03-02 12:38:39 +0000147method calls:
148
Fred Drake19479911998-02-13 06:58:54 +0000149\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000150p.strip_dirs().sort_stats(-1).print_stats()
Fred Drake19479911998-02-13 06:58:54 +0000151\end{verbatim}
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000152
Guido van Rossumdf804f81995-03-02 12:38:39 +0000153The first method removed the extraneous path from all the module
154names. The second method sorted all the entries according to the
155standard module/line/name string that is printed (this is to comply
156with the semantics of the old profiler). The third method printed out
157all the statistics. You might try the following sort calls:
158
Fred Drake19479911998-02-13 06:58:54 +0000159\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000160p.sort_stats('name')
161p.print_stats()
Fred Drake19479911998-02-13 06:58:54 +0000162\end{verbatim}
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000163
Guido van Rossumdf804f81995-03-02 12:38:39 +0000164The first call will actually sort the list by function name, and the
165second call will print out the statistics. The following are some
166interesting calls to experiment with:
167
Fred Drake19479911998-02-13 06:58:54 +0000168\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000169p.sort_stats('cumulative').print_stats(10)
Fred Drake19479911998-02-13 06:58:54 +0000170\end{verbatim}
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000171
Guido van Rossumdf804f81995-03-02 12:38:39 +0000172This sorts the profile by cumulative time in a function, and then only
173prints the ten most significant lines. If you want to understand what
174algorithms are taking time, the above line is what you would use.
175
176If you were looking to see what functions were looping a lot, and
177taking a lot of time, you would do:
178
Fred Drake19479911998-02-13 06:58:54 +0000179\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000180p.sort_stats('time').print_stats(10)
Fred Drake19479911998-02-13 06:58:54 +0000181\end{verbatim}
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000182
Guido van Rossumdf804f81995-03-02 12:38:39 +0000183to sort according to time spent within each function, and then print
184the statistics for the top ten functions.
185
186You might also try:
187
Fred Drake19479911998-02-13 06:58:54 +0000188\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000189p.sort_stats('file').print_stats('__init__')
Fred Drake19479911998-02-13 06:58:54 +0000190\end{verbatim}
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000191
Guido van Rossumdf804f81995-03-02 12:38:39 +0000192This will sort all the statistics by file name, and then print out
193statistics for only the class init methods ('cause they are spelled
Fred Drake8fa5eb81998-02-27 05:23:37 +0000194with \samp{__init__} in them). As one final example, you could try:
Guido van Rossumdf804f81995-03-02 12:38:39 +0000195
Fred Drake19479911998-02-13 06:58:54 +0000196\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000197p.sort_stats('time', 'cum').print_stats(.5, 'init')
Fred Drake19479911998-02-13 06:58:54 +0000198\end{verbatim}
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000199
Guido van Rossumdf804f81995-03-02 12:38:39 +0000200This line sorts statistics with a primary key of time, and a secondary
201key of cumulative time, and then prints out some of the statistics.
202To be specific, the list is first culled down to 50\% (re: \samp{.5})
203of its original size, then only lines containing \code{init} are
204maintained, and that sub-sub-list is printed.
205
206If you wondered what functions called the above functions, you could
207now (\samp{p} is still sorted according to the last criteria) do:
208
Fred Drake19479911998-02-13 06:58:54 +0000209\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000210p.print_callers(.5, 'init')
Fred Drake19479911998-02-13 06:58:54 +0000211\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000212
Tim Peters0a1fc4e2001-10-07 03:12:08 +0000213and you would get a list of callers for each of the listed functions.
Guido van Rossumdf804f81995-03-02 12:38:39 +0000214
215If you want more functionality, you're going to have to read the
216manual, or guess what the following functions do:
217
Fred Drake19479911998-02-13 06:58:54 +0000218\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000219p.print_callees()
220p.add('fooprof')
Fred Drake19479911998-02-13 06:58:54 +0000221\end{verbatim}
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000222
Eric S. Raymond4f3980d2001-04-13 00:23:01 +0000223Invoked as a script, the \module{pstats} module is a statistics
224browser for reading and examining profile dumps. It has a simple
Fred Drakea3e56a62001-04-13 14:34:58 +0000225line-oriented interface (implemented using \refmodule{cmd}) and
Eric S. Raymond4f3980d2001-04-13 00:23:01 +0000226interactive help.
227
Guido van Rossumdf804f81995-03-02 12:38:39 +0000228\section{What Is Deterministic Profiling?}
Guido van Rossum86cb0921995-03-20 12:59:56 +0000229\nodename{Deterministic Profiling}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000230
231\dfn{Deterministic profiling} is meant to reflect the fact that all
Fred Drakea3e56a62001-04-13 14:34:58 +0000232\emph{function call}, \emph{function return}, and \emph{exception} events
Guido van Rossumdf804f81995-03-02 12:38:39 +0000233are monitored, and precise timings are made for the intervals between
234these events (during which time the user's code is executing). In
235contrast, \dfn{statistical profiling} (which is not done by this
236module) randomly samples the effective instruction pointer, and
237deduces where time is being spent. The latter technique traditionally
238involves less overhead (as the code does not need to be instrumented),
239but provides only relative indications of where time is being spent.
240
241In Python, since there is an interpreter active during execution, the
242presence of instrumented code is not required to do deterministic
243profiling. Python automatically provides a \dfn{hook} (optional
244callback) for each event. In addition, the interpreted nature of
245Python tends to add so much overhead to execution, that deterministic
246profiling tends to only add small processing overhead in typical
247applications. The result is that deterministic profiling is not that
248expensive, yet provides extensive run time statistics about the
249execution of a Python program.
250
251Call count statistics can be used to identify bugs in code (surprising
252counts), and to identify possible inline-expansion points (high call
253counts). Internal time statistics can be used to identify ``hot
254loops'' that should be carefully optimized. Cumulative time
255statistics should be used to identify high level errors in the
256selection of algorithms. Note that the unusual handling of cumulative
257times in this profiler allows statistics for recursive implementations
258of algorithms to be directly compared to iterative implementations.
259
260
261\section{Reference Manual}
Fred Drakeb91e9341998-07-23 17:59:49 +0000262
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000263\declaremodule{standard}{profile}
264\modulesynopsis{Python profiler}
Fred Drakeb91e9341998-07-23 17:59:49 +0000265
Guido van Rossumdf804f81995-03-02 12:38:39 +0000266
Guido van Rossumdf804f81995-03-02 12:38:39 +0000267
268The primary entry point for the profiler is the global function
Fred Drake8fa5eb81998-02-27 05:23:37 +0000269\function{profile.run()}. It is typically used to create any profile
Guido van Rossumdf804f81995-03-02 12:38:39 +0000270information. The reports are formatted and printed using methods of
Fred Drake8fa5eb81998-02-27 05:23:37 +0000271the class \class{pstats.Stats}. The following is a description of all
Guido van Rossumdf804f81995-03-02 12:38:39 +0000272of these standard entry points and functions. For a more in-depth
273view of some of the code, consider reading the later section on
274Profiler Extensions, which includes discussion of how to derive
275``better'' profilers from the classes presented, or reading the source
276code for these modules.
277
Fred Drake8fe533e1998-03-27 05:27:08 +0000278\begin{funcdesc}{run}{string\optional{, filename\optional{, ...}}}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000279
280This function takes a single argument that has can be passed to the
Fred Drake8fa5eb81998-02-27 05:23:37 +0000281\keyword{exec} statement, and an optional file name. In all cases this
282routine attempts to \keyword{exec} its first argument, and gather profiling
Guido van Rossumdf804f81995-03-02 12:38:39 +0000283statistics from the execution. If no file name is present, then this
284function automatically prints a simple profiling report, sorted by the
285standard name string (file/line/function-name) that is presented in
286each line. The following is a typical output from such a call:
287
Fred Drake19479911998-02-13 06:58:54 +0000288\begin{verbatim}
Guido van Rossum96628a91995-04-10 11:34:00 +0000289 main()
290 2706 function calls (2004 primitive calls) in 4.504 CPU seconds
Guido van Rossumdf804f81995-03-02 12:38:39 +0000291
Guido van Rossum96628a91995-04-10 11:34:00 +0000292Ordered by: standard name
Guido van Rossumdf804f81995-03-02 12:38:39 +0000293
Guido van Rossum96628a91995-04-10 11:34:00 +0000294ncalls tottime percall cumtime percall filename:lineno(function)
295 2 0.006 0.003 0.953 0.477 pobject.py:75(save_objects)
296 43/3 0.533 0.012 0.749 0.250 pobject.py:99(evaluate)
297 ...
Fred Drake19479911998-02-13 06:58:54 +0000298\end{verbatim}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000299
300The first line indicates that this profile was generated by the call:\\
301\code{profile.run('main()')}, and hence the exec'ed string is
302\code{'main()'}. The second line indicates that 2706 calls were
303monitored. Of those calls, 2004 were \dfn{primitive}. We define
304\dfn{primitive} to mean that the call was not induced via recursion.
305The next line: \code{Ordered by:\ standard name}, indicates that
306the text string in the far right column was used to sort the output.
307The column headings include:
308
309\begin{description}
310
311\item[ncalls ]
Tim Peters0a1fc4e2001-10-07 03:12:08 +0000312for the number of calls,
Guido van Rossumdf804f81995-03-02 12:38:39 +0000313
314\item[tottime ]
315for the total time spent in the given function (and excluding time
316made in calls to sub-functions),
317
318\item[percall ]
319is the quotient of \code{tottime} divided by \code{ncalls}
320
321\item[cumtime ]
Fred Drake907e76b2001-07-06 20:30:11 +0000322is the total time spent in this and all subfunctions (from invocation
323till exit). This figure is accurate \emph{even} for recursive
Guido van Rossumdf804f81995-03-02 12:38:39 +0000324functions.
325
326\item[percall ]
327is the quotient of \code{cumtime} divided by primitive calls
328
329\item[filename:lineno(function) ]
330provides the respective data of each function
331
332\end{description}
333
Fred Drake907e76b2001-07-06 20:30:11 +0000334When there are two numbers in the first column (for example,
335\samp{43/3}), then the latter is the number of primitive calls, and
336the former is the actual number of calls. Note that when the function
337does not recurse, these two values are the same, and only the single
338figure is printed.
Guido van Rossum96628a91995-04-10 11:34:00 +0000339
Guido van Rossumdf804f81995-03-02 12:38:39 +0000340\end{funcdesc}
341
Fred Drake8fa5eb81998-02-27 05:23:37 +0000342Analysis of the profiler data is done using this class from the
343\module{pstats} module:
344
Fred Drake8fe533e1998-03-27 05:27:08 +0000345% now switch modules....
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000346% (This \stmodindex use may be hard to change ;-( )
Fred Drake8fe533e1998-03-27 05:27:08 +0000347\stmodindex{pstats}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000348
Fred Drakecce10901998-03-17 06:33:25 +0000349\begin{classdesc}{Stats}{filename\optional{, ...}}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000350This class constructor creates an instance of a ``statistics object''
Fred Drake8fa5eb81998-02-27 05:23:37 +0000351from a \var{filename} (or set of filenames). \class{Stats} objects are
Guido van Rossumdf804f81995-03-02 12:38:39 +0000352manipulated by methods, in order to print useful reports.
353
354The file selected by the above constructor must have been created by
Fred Drake8fa5eb81998-02-27 05:23:37 +0000355the corresponding version of \module{profile}. To be specific, there is
356\emph{no} file compatibility guaranteed with future versions of this
Guido van Rossumdf804f81995-03-02 12:38:39 +0000357profiler, and there is no compatibility with files produced by other
Fred Drake907e76b2001-07-06 20:30:11 +0000358profilers (such as the old system profiler).
Guido van Rossumdf804f81995-03-02 12:38:39 +0000359
360If several files are provided, all the statistics for identical
361functions will be coalesced, so that an overall view of several
362processes can be considered in a single report. If additional files
Fred Drake8fa5eb81998-02-27 05:23:37 +0000363need to be combined with data in an existing \class{Stats} object, the
364\method{add()} method can be used.
365\end{classdesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000366
367
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000368\subsection{The \class{Stats} Class \label{profile-stats}}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000369
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000370\class{Stats} objects have the following methods:
Guido van Rossumdf804f81995-03-02 12:38:39 +0000371
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000372\begin{methoddesc}[Stats]{strip_dirs}{}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000373This method for the \class{Stats} class removes all leading path
374information from file names. It is very useful in reducing the size
375of the printout to fit within (close to) 80 columns. This method
376modifies the object, and the stripped information is lost. After
377performing a strip operation, the object is considered to have its
378entries in a ``random'' order, as it was just after object
379initialization and loading. If \method{strip_dirs()} causes two
Fred Drake907e76b2001-07-06 20:30:11 +0000380function names to be indistinguishable (they are on the same
Fred Drake8fa5eb81998-02-27 05:23:37 +0000381line of the same filename, and have the same function name), then the
382statistics for these two entries are accumulated into a single entry.
Fred Drake8fe533e1998-03-27 05:27:08 +0000383\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000384
385
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000386\begin{methoddesc}[Stats]{add}{filename\optional{, ...}}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000387This method of the \class{Stats} class accumulates additional
388profiling information into the current profiling object. Its
389arguments should refer to filenames created by the corresponding
390version of \function{profile.run()}. Statistics for identically named
391(re: file, line, name) functions are automatically accumulated into
392single function statistics.
Fred Drake8fe533e1998-03-27 05:27:08 +0000393\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000394
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000395\begin{methoddesc}[Stats]{sort_stats}{key\optional{, ...}}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000396This method modifies the \class{Stats} object by sorting it according
397to the supplied criteria. The argument is typically a string
Fred Drake2cb824c1998-04-09 18:10:35 +0000398identifying the basis of a sort (example: \code{'time'} or
399\code{'name'}).
Guido van Rossumdf804f81995-03-02 12:38:39 +0000400
401When more than one key is provided, then additional keys are used as
402secondary criteria when the there is equality in all keys selected
Fred Drake8fa5eb81998-02-27 05:23:37 +0000403before them. For example, \samp{sort_stats('name', 'file')} will sort
404all the entries according to their function name, and resolve all ties
Guido van Rossumdf804f81995-03-02 12:38:39 +0000405(identical function names) by sorting by file name.
406
407Abbreviations can be used for any key names, as long as the
408abbreviation is unambiguous. The following are the keys currently
Tim Peters0a1fc4e2001-10-07 03:12:08 +0000409defined:
Guido van Rossumdf804f81995-03-02 12:38:39 +0000410
Fred Drakeee601911998-04-11 20:53:03 +0000411\begin{tableii}{l|l}{code}{Valid Arg}{Meaning}
Fred Drake5dabeed1998-04-03 07:02:35 +0000412 \lineii{'calls'}{call count}
413 \lineii{'cumulative'}{cumulative time}
414 \lineii{'file'}{file name}
415 \lineii{'module'}{file name}
416 \lineii{'pcalls'}{primitive call count}
417 \lineii{'line'}{line number}
418 \lineii{'name'}{function name}
419 \lineii{'nfl'}{name/file/line}
420 \lineii{'stdname'}{standard name}
421 \lineii{'time'}{internal time}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000422\end{tableii}
423
424Note that all sorts on statistics are in descending order (placing
425most time consuming items first), where as name, file, and line number
Fred Drake907e76b2001-07-06 20:30:11 +0000426searches are in ascending order (alphabetical). The subtle
Fred Drake2cb824c1998-04-09 18:10:35 +0000427distinction between \code{'nfl'} and \code{'stdname'} is that the
Guido van Rossumdf804f81995-03-02 12:38:39 +0000428standard name is a sort of the name as printed, which means that the
429embedded line numbers get compared in an odd way. For example, lines
4303, 20, and 40 would (if the file names were the same) appear in the
Fred Drake2cb824c1998-04-09 18:10:35 +0000431string order 20, 3 and 40. In contrast, \code{'nfl'} does a numeric
432compare of the line numbers. In fact, \code{sort_stats('nfl')} is the
433same as \code{sort_stats('name', 'file', 'line')}.
Guido van Rossumdf804f81995-03-02 12:38:39 +0000434
435For compatibility with the old profiler, the numeric arguments
Fred Drake2cb824c1998-04-09 18:10:35 +0000436\code{-1}, \code{0}, \code{1}, and \code{2} are permitted. They are
437interpreted as \code{'stdname'}, \code{'calls'}, \code{'time'}, and
438\code{'cumulative'} respectively. If this old style format (numeric)
Guido van Rossumdf804f81995-03-02 12:38:39 +0000439is used, only one sort key (the numeric key) will be used, and
440additional arguments will be silently ignored.
Fred Drake8fe533e1998-03-27 05:27:08 +0000441\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000442
443
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000444\begin{methoddesc}[Stats]{reverse_order}{}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000445This method for the \class{Stats} class reverses the ordering of the basic
Guido van Rossumdf804f81995-03-02 12:38:39 +0000446list within the object. This method is provided primarily for
447compatibility with the old profiler. Its utility is questionable
448now that ascending vs descending order is properly selected based on
449the sort key of choice.
Fred Drake8fe533e1998-03-27 05:27:08 +0000450\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000451
Fred Drake20006b22001-07-02 21:22:39 +0000452\begin{methoddesc}[Stats]{print_stats}{\optional{restriction, \moreargs}}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000453This method for the \class{Stats} class prints out a report as described
454in the \function{profile.run()} definition.
Guido van Rossumdf804f81995-03-02 12:38:39 +0000455
Fred Drake8fa5eb81998-02-27 05:23:37 +0000456The order of the printing is based on the last \method{sort_stats()}
457operation done on the object (subject to caveats in \method{add()} and
458\method{strip_dirs()}.
Guido van Rossumdf804f81995-03-02 12:38:39 +0000459
460The arguments provided (if any) can be used to limit the list down to
461the significant entries. Initially, the list is taken to be the
462complete set of profiled functions. Each restriction is either an
463integer (to select a count of lines), or a decimal fraction between
4640.0 and 1.0 inclusive (to select a percentage of lines), or a regular
Guido van Rossum364e6431997-11-18 15:28:46 +0000465expression (to pattern match the standard name that is printed; as of
466Python 1.5b1, this uses the Perl-style regular expression syntax
Fred Drakeffbe6871999-04-22 21:23:22 +0000467defined by the \refmodule{re} module). If several restrictions are
Guido van Rossum364e6431997-11-18 15:28:46 +0000468provided, then they are applied sequentially. For example:
Guido van Rossumdf804f81995-03-02 12:38:39 +0000469
Fred Drake19479911998-02-13 06:58:54 +0000470\begin{verbatim}
Fred Drake2cb824c1998-04-09 18:10:35 +0000471print_stats(.1, 'foo:')
Fred Drake19479911998-02-13 06:58:54 +0000472\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000473
Guido van Rossumdf804f81995-03-02 12:38:39 +0000474would first limit the printing to first 10\% of list, and then only
475print functions that were part of filename \samp{.*foo:}. In
476contrast, the command:
477
Fred Drake19479911998-02-13 06:58:54 +0000478\begin{verbatim}
Fred Drake2cb824c1998-04-09 18:10:35 +0000479print_stats('foo:', .1)
Fred Drake19479911998-02-13 06:58:54 +0000480\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000481
Guido van Rossumdf804f81995-03-02 12:38:39 +0000482would limit the list to all functions having file names \samp{.*foo:},
483and then proceed to only print the first 10\% of them.
Fred Drake8fe533e1998-03-27 05:27:08 +0000484\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000485
486
Fred Drake20006b22001-07-02 21:22:39 +0000487\begin{methoddesc}[Stats]{print_callers}{\optional{restriction, \moreargs}}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000488This method for the \class{Stats} class prints a list of all functions
Guido van Rossumdf804f81995-03-02 12:38:39 +0000489that called each function in the profiled database. The ordering is
Fred Drake8fa5eb81998-02-27 05:23:37 +0000490identical to that provided by \method{print_stats()}, and the definition
Guido van Rossumdf804f81995-03-02 12:38:39 +0000491of the restricting argument is also identical. For convenience, a
492number is shown in parentheses after each caller to show how many
493times this specific call was made. A second non-parenthesized number
494is the cumulative time spent in the function at the right.
Fred Drake8fe533e1998-03-27 05:27:08 +0000495\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000496
Fred Drake20006b22001-07-02 21:22:39 +0000497\begin{methoddesc}[Stats]{print_callees}{\optional{restriction, \moreargs}}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000498This method for the \class{Stats} class prints a list of all function
Guido van Rossumdf804f81995-03-02 12:38:39 +0000499that were called by the indicated function. Aside from this reversal
500of direction of calls (re: called vs was called by), the arguments and
Fred Drake8fa5eb81998-02-27 05:23:37 +0000501ordering are identical to the \method{print_callers()} method.
Fred Drake8fe533e1998-03-27 05:27:08 +0000502\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000503
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000504\begin{methoddesc}[Stats]{ignore}{}
Fred Drakeea003fc1999-04-05 21:59:15 +0000505\deprecated{1.5.1}{This is not needed in modern versions of
506Python.\footnote{
507 This was once necessary, when Python would print any unused expression
508 result that was not \code{None}. The method is still defined for
509 backward compatibility.}}
Fred Drake8fe533e1998-03-27 05:27:08 +0000510\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000511
512
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000513\section{Limitations \label{profile-limits}}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000514
515There are two fundamental limitations on this profiler. The first is
516that it relies on the Python interpreter to dispatch \dfn{call},
Fred Drake8fa5eb81998-02-27 05:23:37 +0000517\dfn{return}, and \dfn{exception} events. Compiled \C{} code does not
Guido van Rossumdf804f81995-03-02 12:38:39 +0000518get interpreted, and hence is ``invisible'' to the profiler. All time
Fred Drake3a18f3b1998-04-02 19:36:25 +0000519spent in \C{} code (including built-in functions) will be charged to the
Fred Drake8fa5eb81998-02-27 05:23:37 +0000520Python function that invoked the \C{} code. If the \C{} code calls out
Guido van Rossumdf804f81995-03-02 12:38:39 +0000521to some native Python code, then those calls will be profiled
522properly.
523
524The second limitation has to do with accuracy of timing information.
525There is a fundamental problem with deterministic profilers involving
526accuracy. The most obvious restriction is that the underlying ``clock''
527is only ticking at a rate (typically) of about .001 seconds. Hence no
528measurements will be more accurate that that underlying clock. If
529enough measurements are taken, then the ``error'' will tend to average
530out. Unfortunately, removing this first error induces a second source
531of error...
532
533The second problem is that it ``takes a while'' from when an event is
534dispatched until the profiler's call to get the time actually
535\emph{gets} the state of the clock. Similarly, there is a certain lag
536when exiting the profiler event handler from the time that the clock's
537value was obtained (and then squirreled away), until the user's code
538is once again executing. As a result, functions that are called many
539times, or call many functions, will typically accumulate this error.
540The error that accumulates in this fashion is typically less than the
Fred Drake907e76b2001-07-06 20:30:11 +0000541accuracy of the clock (less than one clock tick), but it
Guido van Rossumdf804f81995-03-02 12:38:39 +0000542\emph{can} accumulate and become very significant. This profiler
543provides a means of calibrating itself for a given platform so that
Fred Drake907e76b2001-07-06 20:30:11 +0000544this error can be probabilistically (on the average) removed.
Guido van Rossumdf804f81995-03-02 12:38:39 +0000545After the profiler is calibrated, it will be more accurate (in a least
546square sense), but it will sometimes produce negative numbers (when
547call counts are exceptionally low, and the gods of probability work
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000548against you :-). ) Do \emph{not} be alarmed by negative numbers in
Guido van Rossumdf804f81995-03-02 12:38:39 +0000549the profile. They should \emph{only} appear if you have calibrated
550your profiler, and the results are actually better than without
551calibration.
552
553
Fred Drakeb9f1f6d1999-04-21 21:43:17 +0000554\section{Calibration \label{profile-calibration}}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000555
Tim Peters659a6032001-10-09 20:51:19 +0000556The profiler subtracts a constant from each
Guido van Rossumdf804f81995-03-02 12:38:39 +0000557event handling time to compensate for the overhead of calling the time
Tim Peters659a6032001-10-09 20:51:19 +0000558function, and socking away the results. By default, the constant is 0.
559The following procedure can
560be used to obtain a better constant for a given platform (see discussion
Guido van Rossumdf804f81995-03-02 12:38:39 +0000561in section Limitations above).
562
Fred Drake19479911998-02-13 06:58:54 +0000563\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000564import profile
565pr = profile.Profile()
Tim Peters659a6032001-10-09 20:51:19 +0000566for i in range(5):
567 print pr.calibrate(10000)
Fred Drake19479911998-02-13 06:58:54 +0000568\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000569
Tim Peters659a6032001-10-09 20:51:19 +0000570The method executes the number of Python calls given by the argument,
571directly and again under the profiler, measuring the time for both.
572It then computes the hidden overhead per profiler event, and returns
573that as a float. For example, on an 800 MHz Pentium running
574Windows 2000, and using Python's time.clock() as the timer,
575the magical number is about 12.5e-6.
Fred Drake8fa5eb81998-02-27 05:23:37 +0000576
Guido van Rossumdf804f81995-03-02 12:38:39 +0000577The object of this exercise is to get a fairly consistent result.
Tim Peters659a6032001-10-09 20:51:19 +0000578If your computer is \emph{very} fast, or your timer function has poor
579resolution, you might have to pass 100000, or even 1000000, to get
580consistent results.
Guido van Rossumdf804f81995-03-02 12:38:39 +0000581
Tim Peters659a6032001-10-09 20:51:19 +0000582When you have a consistent answer,
583there are three ways you can use it:\footnote{Prior to Python 2.2, it
584 was necessary to edit the profiler source code to embed the bias as
585 a literal number. You still can, but that method is no longer
586 described, because no longer needed.}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000587
Fred Drake19479911998-02-13 06:58:54 +0000588\begin{verbatim}
Tim Peters659a6032001-10-09 20:51:19 +0000589import profile
Guido van Rossume47da0a1997-07-17 16:34:52 +0000590
Tim Peters659a6032001-10-09 20:51:19 +0000591# 1. Apply computed bias to all Profile instances created hereafter.
592profile.Profile.bias =
593
594# 2. Apply computed bias to a specific Profile instance.
595pr = profile.Profile()
596pr.bias = your_computed_bias
597
598# 3. Specify computed bias in instance constructor.
599pr = profile.Profile(bias=your_computed_bias)
Fred Drake19479911998-02-13 06:58:54 +0000600\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000601
Tim Peters659a6032001-10-09 20:51:19 +0000602If you have a choice, you are better off choosing a smaller constant, and
603then your results will ``less often'' show up as negative in profile
604statistics.
Guido van Rossumdf804f81995-03-02 12:38:39 +0000605
606
Guido van Rossum86cb0921995-03-20 12:59:56 +0000607\section{Extensions --- Deriving Better Profilers}
608\nodename{Profiler Extensions}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000609
Fred Drake8fa5eb81998-02-27 05:23:37 +0000610The \class{Profile} class of module \module{profile} was written so that
Tim Peters0a1fc4e2001-10-07 03:12:08 +0000611derived classes could be developed to extend the profiler. The details
612are not described here, as doing this successfully requires an expert
613understanding of how the \class{Profile} class works internally. Study
614the source code of module \module{profile} carefully if you want to
615pursue this.
Guido van Rossumdf804f81995-03-02 12:38:39 +0000616
Tim Peters0a1fc4e2001-10-07 03:12:08 +0000617If all you want to do is change how current time is determined (for
618example, to force use of wall-clock time or elapsed process time),
619pass the timing function you want to the \class{Profile} class
620constructor:
Guido van Rossumdf804f81995-03-02 12:38:39 +0000621
Fred Drake19479911998-02-13 06:58:54 +0000622\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000623pr = profile.Profile(your_time_func)
Fred Drake19479911998-02-13 06:58:54 +0000624\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000625
Tim Peters0a1fc4e2001-10-07 03:12:08 +0000626The resulting profiler will then call \code{your_time_func()}.
627The function should return a single number, or a list of
628numbers whose sum is the current time (like what \function{os.times()}
629returns). If the function returns a single time number, or the list of
630returned numbers has length 2, then you will get an especially fast
631version of the dispatch routine.
Guido van Rossumdf804f81995-03-02 12:38:39 +0000632
Tim Peters0a1fc4e2001-10-07 03:12:08 +0000633Be warned that you should calibrate the profiler class for the
Guido van Rossumdf804f81995-03-02 12:38:39 +0000634timer function that you choose. For most machines, a timer that
635returns a lone integer value will provide the best results in terms of
Fred Drake8fa5eb81998-02-27 05:23:37 +0000636low overhead during profiling. (\function{os.times()} is
Tim Peters0a1fc4e2001-10-07 03:12:08 +0000637\emph{pretty} bad, as it returns a tuple of floating point values). If
638you want to substitute a better timer in the cleanest fashion,
639derive a class and hardwire a replacement dispatch method that best
Fred Drake8fa5eb81998-02-27 05:23:37 +0000640handles your timer call, along with the appropriate calibration
Fred Drake62f9d7c2001-06-08 05:04:19 +0000641constant.