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Guido van Rossumdf804f81995-03-02 12:38:39 +00001\chapter{The Python Profiler}
Fred Drake31ecd501998-02-18 15:40:11 +00002\label{profile}
Guido van Rossumdf804f81995-03-02 12:38:39 +00003
Fred Drake4b3f0311996-12-13 22:04:31 +00004Copyright \copyright{} 1994, by InfoSeek Corporation, all rights reserved.
Fred Drake5dabeed1998-04-03 07:02:35 +00005\index{InfoSeek Corporation}
Guido van Rossumdf804f81995-03-02 12:38:39 +00006
Fred Drake5dabeed1998-04-03 07:02:35 +00007Written by James Roskind\index{Roskind, James}.%
Guido van Rossumdf804f81995-03-02 12:38:39 +00008\footnote{
Guido van Rossum6c4f0031995-03-07 10:14:09 +00009Updated and converted to \LaTeX\ by Guido van Rossum. The references to
Guido van Rossumdf804f81995-03-02 12:38:39 +000010the old profiler are left in the text, although it no longer exists.
11}
12
13Permission to use, copy, modify, and distribute this Python software
14and its associated documentation for any purpose (subject to the
15restriction in the following sentence) without fee is hereby granted,
16provided that the above copyright notice appears in all copies, and
17that both that copyright notice and this permission notice appear in
18supporting documentation, and that the name of InfoSeek not be used in
19advertising or publicity pertaining to distribution of the software
20without specific, written prior permission. This permission is
21explicitly restricted to the copying and modification of the software
22to remain in Python, compiled Python, or other languages (such as C)
23wherein the modified or derived code is exclusively imported into a
24Python module.
25
26INFOSEEK CORPORATION DISCLAIMS ALL WARRANTIES WITH REGARD TO THIS
27SOFTWARE, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY AND
28FITNESS. IN NO EVENT SHALL INFOSEEK CORPORATION BE LIABLE FOR ANY
29SPECIAL, INDIRECT OR CONSEQUENTIAL DAMAGES OR ANY DAMAGES WHATSOEVER
30RESULTING FROM LOSS OF USE, DATA OR PROFITS, WHETHER IN AN ACTION OF
31CONTRACT, NEGLIGENCE OR OTHER TORTIOUS ACTION, ARISING OUT OF OR IN
32CONNECTION WITH THE USE OR PERFORMANCE OF THIS SOFTWARE.
33
34
35The profiler was written after only programming in Python for 3 weeks.
36As a result, it is probably clumsy code, but I don't know for sure yet
37'cause I'm a beginner :-). I did work hard to make the code run fast,
38so that profiling would be a reasonable thing to do. I tried not to
39repeat code fragments, but I'm sure I did some stuff in really awkward
40ways at times. Please send suggestions for improvements to:
Fred Drake8fa5eb81998-02-27 05:23:37 +000041\email{jar@netscape.com}. I won't promise \emph{any} support. ...but
Guido van Rossumdf804f81995-03-02 12:38:39 +000042I'd appreciate the feedback.
43
44
Guido van Rossum470be141995-03-17 16:07:09 +000045\section{Introduction to the profiler}
Guido van Rossum86cb0921995-03-20 12:59:56 +000046\nodename{Profiler Introduction}
Guido van Rossumdf804f81995-03-02 12:38:39 +000047
48A \dfn{profiler} is a program that describes the run time performance
49of a program, providing a variety of statistics. This documentation
50describes the profiler functionality provided in the modules
Fred Drake8fa5eb81998-02-27 05:23:37 +000051\module{profile} and \module{pstats}. This profiler provides
Guido van Rossumdf804f81995-03-02 12:38:39 +000052\dfn{deterministic profiling} of any Python programs. It also
53provides a series of report generation tools to allow users to rapidly
54examine the results of a profile operation.
Fred Drake8fa5eb81998-02-27 05:23:37 +000055\index{deterministic profiling}
56\index{profiling, deterministic}
Guido van Rossumdf804f81995-03-02 12:38:39 +000057
58
59\section{How Is This Profiler Different From The Old Profiler?}
Guido van Rossum86cb0921995-03-20 12:59:56 +000060\nodename{Profiler Changes}
Guido van Rossumdf804f81995-03-02 12:38:39 +000061
Guido van Rossum364e6431997-11-18 15:28:46 +000062(This section is of historical importance only; the old profiler
63discussed here was last seen in Python 1.1.)
64
Guido van Rossumdf804f81995-03-02 12:38:39 +000065The big changes from old profiling module are that you get more
66information, and you pay less CPU time. It's not a trade-off, it's a
67trade-up.
68
69To be specific:
70
71\begin{description}
72
73\item[Bugs removed:]
74Local stack frame is no longer molested, execution time is now charged
75to correct functions.
76
77\item[Accuracy increased:]
78Profiler execution time is no longer charged to user's code,
79calibration for platform is supported, file reads are not done \emph{by}
80profiler \emph{during} profiling (and charged to user's code!).
81
82\item[Speed increased:]
83Overhead CPU cost was reduced by more than a factor of two (perhaps a
84factor of five), lightweight profiler module is all that must be
Fred Drake8fa5eb81998-02-27 05:23:37 +000085loaded, and the report generating module (\module{pstats}) is not needed
Guido van Rossumdf804f81995-03-02 12:38:39 +000086during profiling.
87
88\item[Recursive functions support:]
89Cumulative times in recursive functions are correctly calculated;
90recursive entries are counted.
91
92\item[Large growth in report generating UI:]
93Distinct profiles runs can be added together forming a comprehensive
94report; functions that import statistics take arbitrary lists of
95files; sorting criteria is now based on keywords (instead of 4 integer
96options); reports shows what functions were profiled as well as what
97profile file was referenced; output format has been improved.
98
99\end{description}
100
101
102\section{Instant Users Manual}
103
104This section is provided for users that ``don't want to read the
105manual.'' It provides a very brief overview, and allows a user to
106rapidly perform profiling on an existing application.
107
108To profile an application with a main entry point of \samp{foo()}, you
109would add the following to your module:
110
Fred Drake19479911998-02-13 06:58:54 +0000111\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000112import profile
Fred Drake2cb824c1998-04-09 18:10:35 +0000113profile.run('foo()')
Fred Drake19479911998-02-13 06:58:54 +0000114\end{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000115%
Guido van Rossumdf804f81995-03-02 12:38:39 +0000116The above action would cause \samp{foo()} to be run, and a series of
117informative lines (the profile) to be printed. The above approach is
118most useful when working with the interpreter. If you would like to
119save the results of a profile into a file for later examination, you
Fred Drake8fa5eb81998-02-27 05:23:37 +0000120can supply a file name as the second argument to the \function{run()}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000121function:
122
Fred Drake19479911998-02-13 06:58:54 +0000123\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000124import profile
Fred Drake2cb824c1998-04-09 18:10:35 +0000125profile.run('foo()', 'fooprof')
Fred Drake19479911998-02-13 06:58:54 +0000126\end{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000127%
Fred Drake8fa5eb81998-02-27 05:23:37 +0000128The file \file{profile.py} can also be invoked as
Guido van Rossumbac80021997-06-02 17:29:12 +0000129a script to profile another script. For example:
Fred Drake8fa5eb81998-02-27 05:23:37 +0000130
131\begin{verbatim}
Fred Drake5dabeed1998-04-03 07:02:35 +0000132python /usr/local/lib/python1.5/profile.py myscript.py
Fred Drake8fa5eb81998-02-27 05:23:37 +0000133\end{verbatim}
Guido van Rossumbac80021997-06-02 17:29:12 +0000134
Guido van Rossumdf804f81995-03-02 12:38:39 +0000135When you wish to review the profile, you should use the methods in the
Fred Drake8fa5eb81998-02-27 05:23:37 +0000136\module{pstats} module. Typically you would load the statistics data as
Guido van Rossumdf804f81995-03-02 12:38:39 +0000137follows:
138
Fred Drake19479911998-02-13 06:58:54 +0000139\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000140import pstats
141p = pstats.Stats('fooprof')
Fred Drake19479911998-02-13 06:58:54 +0000142\end{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000143%
Fred Drake8fa5eb81998-02-27 05:23:37 +0000144The class \class{Stats} (the above code just created an instance of
Guido van Rossumdf804f81995-03-02 12:38:39 +0000145this class) has a variety of methods for manipulating and printing the
146data that was just read into \samp{p}. When you ran
Fred Drake8fa5eb81998-02-27 05:23:37 +0000147\function{profile.run()} above, what was printed was the result of three
Guido van Rossumdf804f81995-03-02 12:38:39 +0000148method calls:
149
Fred Drake19479911998-02-13 06:58:54 +0000150\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000151p.strip_dirs().sort_stats(-1).print_stats()
Fred Drake19479911998-02-13 06:58:54 +0000152\end{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000153%
Guido van Rossumdf804f81995-03-02 12:38:39 +0000154The first method removed the extraneous path from all the module
155names. The second method sorted all the entries according to the
156standard module/line/name string that is printed (this is to comply
157with the semantics of the old profiler). The third method printed out
158all the statistics. You might try the following sort calls:
159
Fred Drake19479911998-02-13 06:58:54 +0000160\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000161p.sort_stats('name')
162p.print_stats()
Fred Drake19479911998-02-13 06:58:54 +0000163\end{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000164%
Guido van Rossumdf804f81995-03-02 12:38:39 +0000165The first call will actually sort the list by function name, and the
166second call will print out the statistics. The following are some
167interesting calls to experiment with:
168
Fred Drake19479911998-02-13 06:58:54 +0000169\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000170p.sort_stats('cumulative').print_stats(10)
Fred Drake19479911998-02-13 06:58:54 +0000171\end{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000172%
Guido van Rossumdf804f81995-03-02 12:38:39 +0000173This sorts the profile by cumulative time in a function, and then only
174prints the ten most significant lines. If you want to understand what
175algorithms are taking time, the above line is what you would use.
176
177If you were looking to see what functions were looping a lot, and
178taking a lot of time, you would do:
179
Fred Drake19479911998-02-13 06:58:54 +0000180\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000181p.sort_stats('time').print_stats(10)
Fred Drake19479911998-02-13 06:58:54 +0000182\end{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000183%
Guido van Rossumdf804f81995-03-02 12:38:39 +0000184to sort according to time spent within each function, and then print
185the statistics for the top ten functions.
186
187You might also try:
188
Fred Drake19479911998-02-13 06:58:54 +0000189\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000190p.sort_stats('file').print_stats('__init__')
Fred Drake19479911998-02-13 06:58:54 +0000191\end{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000192%
Guido van Rossumdf804f81995-03-02 12:38:39 +0000193This will sort all the statistics by file name, and then print out
194statistics for only the class init methods ('cause they are spelled
Fred Drake8fa5eb81998-02-27 05:23:37 +0000195with \samp{__init__} in them). As one final example, you could try:
Guido van Rossumdf804f81995-03-02 12:38:39 +0000196
Fred Drake19479911998-02-13 06:58:54 +0000197\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000198p.sort_stats('time', 'cum').print_stats(.5, 'init')
Fred Drake19479911998-02-13 06:58:54 +0000199\end{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000200%
Guido van Rossumdf804f81995-03-02 12:38:39 +0000201This line sorts statistics with a primary key of time, and a secondary
202key of cumulative time, and then prints out some of the statistics.
203To be specific, the list is first culled down to 50\% (re: \samp{.5})
204of its original size, then only lines containing \code{init} are
205maintained, and that sub-sub-list is printed.
206
207If you wondered what functions called the above functions, you could
208now (\samp{p} is still sorted according to the last criteria) do:
209
Fred Drake19479911998-02-13 06:58:54 +0000210\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000211p.print_callers(.5, 'init')
Fred Drake19479911998-02-13 06:58:54 +0000212\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000213
Guido van Rossumdf804f81995-03-02 12:38:39 +0000214and you would get a list of callers for each of the listed functions.
215
216If you want more functionality, you're going to have to read the
217manual, or guess what the following functions do:
218
Fred Drake19479911998-02-13 06:58:54 +0000219\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000220p.print_callees()
221p.add('fooprof')
Fred Drake19479911998-02-13 06:58:54 +0000222\end{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000223%
Guido van Rossumdf804f81995-03-02 12:38:39 +0000224\section{What Is Deterministic Profiling?}
Guido van Rossum86cb0921995-03-20 12:59:56 +0000225\nodename{Deterministic Profiling}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000226
227\dfn{Deterministic profiling} is meant to reflect the fact that all
228\dfn{function call}, \dfn{function return}, and \dfn{exception} events
229are monitored, and precise timings are made for the intervals between
230these events (during which time the user's code is executing). In
231contrast, \dfn{statistical profiling} (which is not done by this
232module) randomly samples the effective instruction pointer, and
233deduces where time is being spent. The latter technique traditionally
234involves less overhead (as the code does not need to be instrumented),
235but provides only relative indications of where time is being spent.
236
237In Python, since there is an interpreter active during execution, the
238presence of instrumented code is not required to do deterministic
239profiling. Python automatically provides a \dfn{hook} (optional
240callback) for each event. In addition, the interpreted nature of
241Python tends to add so much overhead to execution, that deterministic
242profiling tends to only add small processing overhead in typical
243applications. The result is that deterministic profiling is not that
244expensive, yet provides extensive run time statistics about the
245execution of a Python program.
246
247Call count statistics can be used to identify bugs in code (surprising
248counts), and to identify possible inline-expansion points (high call
249counts). Internal time statistics can be used to identify ``hot
250loops'' that should be carefully optimized. Cumulative time
251statistics should be used to identify high level errors in the
252selection of algorithms. Note that the unusual handling of cumulative
253times in this profiler allows statistics for recursive implementations
254of algorithms to be directly compared to iterative implementations.
255
256
257\section{Reference Manual}
Fred Drakeb91e9341998-07-23 17:59:49 +0000258\declaremodule{standard}{profile}
259
260\modulesynopsis{None}
261
Guido van Rossumdf804f81995-03-02 12:38:39 +0000262
Guido van Rossumdf804f81995-03-02 12:38:39 +0000263
264The primary entry point for the profiler is the global function
Fred Drake8fa5eb81998-02-27 05:23:37 +0000265\function{profile.run()}. It is typically used to create any profile
Guido van Rossumdf804f81995-03-02 12:38:39 +0000266information. The reports are formatted and printed using methods of
Fred Drake8fa5eb81998-02-27 05:23:37 +0000267the class \class{pstats.Stats}. The following is a description of all
Guido van Rossumdf804f81995-03-02 12:38:39 +0000268of these standard entry points and functions. For a more in-depth
269view of some of the code, consider reading the later section on
270Profiler Extensions, which includes discussion of how to derive
271``better'' profilers from the classes presented, or reading the source
272code for these modules.
273
Fred Drake8fe533e1998-03-27 05:27:08 +0000274\begin{funcdesc}{run}{string\optional{, filename\optional{, ...}}}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000275
276This function takes a single argument that has can be passed to the
Fred Drake8fa5eb81998-02-27 05:23:37 +0000277\keyword{exec} statement, and an optional file name. In all cases this
278routine attempts to \keyword{exec} its first argument, and gather profiling
Guido van Rossumdf804f81995-03-02 12:38:39 +0000279statistics from the execution. If no file name is present, then this
280function automatically prints a simple profiling report, sorted by the
281standard name string (file/line/function-name) that is presented in
282each line. The following is a typical output from such a call:
283
Fred Drake19479911998-02-13 06:58:54 +0000284\begin{verbatim}
Guido van Rossum96628a91995-04-10 11:34:00 +0000285 main()
286 2706 function calls (2004 primitive calls) in 4.504 CPU seconds
Guido van Rossumdf804f81995-03-02 12:38:39 +0000287
Guido van Rossum96628a91995-04-10 11:34:00 +0000288Ordered by: standard name
Guido van Rossumdf804f81995-03-02 12:38:39 +0000289
Guido van Rossum96628a91995-04-10 11:34:00 +0000290ncalls tottime percall cumtime percall filename:lineno(function)
291 2 0.006 0.003 0.953 0.477 pobject.py:75(save_objects)
292 43/3 0.533 0.012 0.749 0.250 pobject.py:99(evaluate)
293 ...
Fred Drake19479911998-02-13 06:58:54 +0000294\end{verbatim}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000295
296The first line indicates that this profile was generated by the call:\\
297\code{profile.run('main()')}, and hence the exec'ed string is
298\code{'main()'}. The second line indicates that 2706 calls were
299monitored. Of those calls, 2004 were \dfn{primitive}. We define
300\dfn{primitive} to mean that the call was not induced via recursion.
301The next line: \code{Ordered by:\ standard name}, indicates that
302the text string in the far right column was used to sort the output.
303The column headings include:
304
305\begin{description}
306
307\item[ncalls ]
308for the number of calls,
309
310\item[tottime ]
311for the total time spent in the given function (and excluding time
312made in calls to sub-functions),
313
314\item[percall ]
315is the quotient of \code{tottime} divided by \code{ncalls}
316
317\item[cumtime ]
318is the total time spent in this and all subfunctions (i.e., from
319invocation till exit). This figure is accurate \emph{even} for recursive
320functions.
321
322\item[percall ]
323is the quotient of \code{cumtime} divided by primitive calls
324
325\item[filename:lineno(function) ]
326provides the respective data of each function
327
328\end{description}
329
330When there are two numbers in the first column (e.g.: \samp{43/3}),
331then the latter is the number of primitive calls, and the former is
332the actual number of calls. Note that when the function does not
333recurse, these two values are the same, and only the single figure is
334printed.
Guido van Rossum96628a91995-04-10 11:34:00 +0000335
Guido van Rossumdf804f81995-03-02 12:38:39 +0000336\end{funcdesc}
337
Fred Drake8fa5eb81998-02-27 05:23:37 +0000338Analysis of the profiler data is done using this class from the
339\module{pstats} module:
340
Fred Drake8fe533e1998-03-27 05:27:08 +0000341% now switch modules....
342\stmodindex{pstats}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000343
Fred Drakecce10901998-03-17 06:33:25 +0000344\begin{classdesc}{Stats}{filename\optional{, ...}}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000345This class constructor creates an instance of a ``statistics object''
Fred Drake8fa5eb81998-02-27 05:23:37 +0000346from a \var{filename} (or set of filenames). \class{Stats} objects are
Guido van Rossumdf804f81995-03-02 12:38:39 +0000347manipulated by methods, in order to print useful reports.
348
349The file selected by the above constructor must have been created by
Fred Drake8fa5eb81998-02-27 05:23:37 +0000350the corresponding version of \module{profile}. To be specific, there is
351\emph{no} file compatibility guaranteed with future versions of this
Guido van Rossumdf804f81995-03-02 12:38:39 +0000352profiler, and there is no compatibility with files produced by other
353profilers (e.g., the old system profiler).
354
355If several files are provided, all the statistics for identical
356functions will be coalesced, so that an overall view of several
357processes can be considered in a single report. If additional files
Fred Drake8fa5eb81998-02-27 05:23:37 +0000358need to be combined with data in an existing \class{Stats} object, the
359\method{add()} method can be used.
360\end{classdesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000361
362
Fred Drake3a0351c1998-04-04 07:23:21 +0000363\subsection{The \module{Stats} Class}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000364
Fred Drake19479911998-02-13 06:58:54 +0000365\setindexsubitem{(Stats method)}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000366
Fred Drake8fe533e1998-03-27 05:27:08 +0000367\begin{methoddesc}{strip_dirs}{}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000368This method for the \class{Stats} class removes all leading path
369information from file names. It is very useful in reducing the size
370of the printout to fit within (close to) 80 columns. This method
371modifies the object, and the stripped information is lost. After
372performing a strip operation, the object is considered to have its
373entries in a ``random'' order, as it was just after object
374initialization and loading. If \method{strip_dirs()} causes two
375function names to be indistinguishable (i.e., they are on the same
376line of the same filename, and have the same function name), then the
377statistics for these two entries are accumulated into a single entry.
Fred Drake8fe533e1998-03-27 05:27:08 +0000378\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000379
380
Fred Drake8fe533e1998-03-27 05:27:08 +0000381\begin{methoddesc}{add}{filename\optional{, ...}}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000382This method of the \class{Stats} class accumulates additional
383profiling information into the current profiling object. Its
384arguments should refer to filenames created by the corresponding
385version of \function{profile.run()}. Statistics for identically named
386(re: file, line, name) functions are automatically accumulated into
387single function statistics.
Fred Drake8fe533e1998-03-27 05:27:08 +0000388\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000389
Fred Drake8fe533e1998-03-27 05:27:08 +0000390\begin{methoddesc}{sort_stats}{key\optional{, ...}}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000391This method modifies the \class{Stats} object by sorting it according
392to the supplied criteria. The argument is typically a string
Fred Drake2cb824c1998-04-09 18:10:35 +0000393identifying the basis of a sort (example: \code{'time'} or
394\code{'name'}).
Guido van Rossumdf804f81995-03-02 12:38:39 +0000395
396When more than one key is provided, then additional keys are used as
397secondary criteria when the there is equality in all keys selected
Fred Drake8fa5eb81998-02-27 05:23:37 +0000398before them. For example, \samp{sort_stats('name', 'file')} will sort
399all the entries according to their function name, and resolve all ties
Guido van Rossumdf804f81995-03-02 12:38:39 +0000400(identical function names) by sorting by file name.
401
402Abbreviations can be used for any key names, as long as the
403abbreviation is unambiguous. The following are the keys currently
404defined:
405
Fred Drakeee601911998-04-11 20:53:03 +0000406\begin{tableii}{l|l}{code}{Valid Arg}{Meaning}
Fred Drake5dabeed1998-04-03 07:02:35 +0000407 \lineii{'calls'}{call count}
408 \lineii{'cumulative'}{cumulative time}
409 \lineii{'file'}{file name}
410 \lineii{'module'}{file name}
411 \lineii{'pcalls'}{primitive call count}
412 \lineii{'line'}{line number}
413 \lineii{'name'}{function name}
414 \lineii{'nfl'}{name/file/line}
415 \lineii{'stdname'}{standard name}
416 \lineii{'time'}{internal time}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000417\end{tableii}
418
419Note that all sorts on statistics are in descending order (placing
420most time consuming items first), where as name, file, and line number
421searches are in ascending order (i.e., alphabetical). The subtle
Fred Drake2cb824c1998-04-09 18:10:35 +0000422distinction between \code{'nfl'} and \code{'stdname'} is that the
Guido van Rossumdf804f81995-03-02 12:38:39 +0000423standard name is a sort of the name as printed, which means that the
424embedded line numbers get compared in an odd way. For example, lines
4253, 20, and 40 would (if the file names were the same) appear in the
Fred Drake2cb824c1998-04-09 18:10:35 +0000426string order 20, 3 and 40. In contrast, \code{'nfl'} does a numeric
427compare of the line numbers. In fact, \code{sort_stats('nfl')} is the
428same as \code{sort_stats('name', 'file', 'line')}.
Guido van Rossumdf804f81995-03-02 12:38:39 +0000429
430For compatibility with the old profiler, the numeric arguments
Fred Drake2cb824c1998-04-09 18:10:35 +0000431\code{-1}, \code{0}, \code{1}, and \code{2} are permitted. They are
432interpreted as \code{'stdname'}, \code{'calls'}, \code{'time'}, and
433\code{'cumulative'} respectively. If this old style format (numeric)
Guido van Rossumdf804f81995-03-02 12:38:39 +0000434is used, only one sort key (the numeric key) will be used, and
435additional arguments will be silently ignored.
Fred Drake8fe533e1998-03-27 05:27:08 +0000436\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000437
438
Fred Drake8fe533e1998-03-27 05:27:08 +0000439\begin{methoddesc}{reverse_order}{}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000440This method for the \class{Stats} class reverses the ordering of the basic
Guido van Rossumdf804f81995-03-02 12:38:39 +0000441list within the object. This method is provided primarily for
442compatibility with the old profiler. Its utility is questionable
443now that ascending vs descending order is properly selected based on
444the sort key of choice.
Fred Drake8fe533e1998-03-27 05:27:08 +0000445\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000446
Fred Drake8fe533e1998-03-27 05:27:08 +0000447\begin{methoddesc}{print_stats}{restriction\optional{, ...}}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000448This method for the \class{Stats} class prints out a report as described
449in the \function{profile.run()} definition.
Guido van Rossumdf804f81995-03-02 12:38:39 +0000450
Fred Drake8fa5eb81998-02-27 05:23:37 +0000451The order of the printing is based on the last \method{sort_stats()}
452operation done on the object (subject to caveats in \method{add()} and
453\method{strip_dirs()}.
Guido van Rossumdf804f81995-03-02 12:38:39 +0000454
455The arguments provided (if any) can be used to limit the list down to
456the significant entries. Initially, the list is taken to be the
457complete set of profiled functions. Each restriction is either an
458integer (to select a count of lines), or a decimal fraction between
4590.0 and 1.0 inclusive (to select a percentage of lines), or a regular
Guido van Rossum364e6431997-11-18 15:28:46 +0000460expression (to pattern match the standard name that is printed; as of
461Python 1.5b1, this uses the Perl-style regular expression syntax
Fred Drake8fa5eb81998-02-27 05:23:37 +0000462defined by the \module{re} module). If several restrictions are
Guido van Rossum364e6431997-11-18 15:28:46 +0000463provided, then they are applied sequentially. For example:
Guido van Rossumdf804f81995-03-02 12:38:39 +0000464
Fred Drake19479911998-02-13 06:58:54 +0000465\begin{verbatim}
Fred Drake2cb824c1998-04-09 18:10:35 +0000466print_stats(.1, 'foo:')
Fred Drake19479911998-02-13 06:58:54 +0000467\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000468
Guido van Rossumdf804f81995-03-02 12:38:39 +0000469would first limit the printing to first 10\% of list, and then only
470print functions that were part of filename \samp{.*foo:}. In
471contrast, the command:
472
Fred Drake19479911998-02-13 06:58:54 +0000473\begin{verbatim}
Fred Drake2cb824c1998-04-09 18:10:35 +0000474print_stats('foo:', .1)
Fred Drake19479911998-02-13 06:58:54 +0000475\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000476
Guido van Rossumdf804f81995-03-02 12:38:39 +0000477would limit the list to all functions having file names \samp{.*foo:},
478and then proceed to only print the first 10\% of them.
Fred Drake8fe533e1998-03-27 05:27:08 +0000479\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000480
481
Fred Drake8fe533e1998-03-27 05:27:08 +0000482\begin{methoddesc}{print_callers}{restrictions\optional{, ...}}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000483This method for the \class{Stats} class prints a list of all functions
Guido van Rossumdf804f81995-03-02 12:38:39 +0000484that called each function in the profiled database. The ordering is
Fred Drake8fa5eb81998-02-27 05:23:37 +0000485identical to that provided by \method{print_stats()}, and the definition
Guido van Rossumdf804f81995-03-02 12:38:39 +0000486of the restricting argument is also identical. For convenience, a
487number is shown in parentheses after each caller to show how many
488times this specific call was made. A second non-parenthesized number
489is the cumulative time spent in the function at the right.
Fred Drake8fe533e1998-03-27 05:27:08 +0000490\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000491
Fred Drake8fe533e1998-03-27 05:27:08 +0000492\begin{methoddesc}{print_callees}{restrictions\optional{, ...}}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000493This method for the \class{Stats} class prints a list of all function
Guido van Rossumdf804f81995-03-02 12:38:39 +0000494that were called by the indicated function. Aside from this reversal
495of direction of calls (re: called vs was called by), the arguments and
Fred Drake8fa5eb81998-02-27 05:23:37 +0000496ordering are identical to the \method{print_callers()} method.
Fred Drake8fe533e1998-03-27 05:27:08 +0000497\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000498
Fred Drake8fe533e1998-03-27 05:27:08 +0000499\begin{methoddesc}{ignore}{}
Fred Drakef1b72dd1998-04-09 04:49:56 +0000500\deprecated{1.5.1}{This is not needed in modern versions of Python.%
Guido van Rossumdf804f81995-03-02 12:38:39 +0000501\footnote{
502This was once necessary, when Python would print any unused expression
503result that was not \code{None}. The method is still defined for
504backward compatibility.
Fred Drakef1b72dd1998-04-09 04:49:56 +0000505}}
Fred Drake8fe533e1998-03-27 05:27:08 +0000506\end{methoddesc}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000507
508
509\section{Limitations}
510
511There are two fundamental limitations on this profiler. The first is
512that it relies on the Python interpreter to dispatch \dfn{call},
Fred Drake8fa5eb81998-02-27 05:23:37 +0000513\dfn{return}, and \dfn{exception} events. Compiled \C{} code does not
Guido van Rossumdf804f81995-03-02 12:38:39 +0000514get interpreted, and hence is ``invisible'' to the profiler. All time
Fred Drake3a18f3b1998-04-02 19:36:25 +0000515spent in \C{} code (including built-in functions) will be charged to the
Fred Drake8fa5eb81998-02-27 05:23:37 +0000516Python function that invoked the \C{} code. If the \C{} code calls out
Guido van Rossumdf804f81995-03-02 12:38:39 +0000517to some native Python code, then those calls will be profiled
518properly.
519
520The second limitation has to do with accuracy of timing information.
521There is a fundamental problem with deterministic profilers involving
522accuracy. The most obvious restriction is that the underlying ``clock''
523is only ticking at a rate (typically) of about .001 seconds. Hence no
524measurements will be more accurate that that underlying clock. If
525enough measurements are taken, then the ``error'' will tend to average
526out. Unfortunately, removing this first error induces a second source
527of error...
528
529The second problem is that it ``takes a while'' from when an event is
530dispatched until the profiler's call to get the time actually
531\emph{gets} the state of the clock. Similarly, there is a certain lag
532when exiting the profiler event handler from the time that the clock's
533value was obtained (and then squirreled away), until the user's code
534is once again executing. As a result, functions that are called many
535times, or call many functions, will typically accumulate this error.
536The error that accumulates in this fashion is typically less than the
537accuracy of the clock (i.e., less than one clock tick), but it
538\emph{can} accumulate and become very significant. This profiler
539provides a means of calibrating itself for a given platform so that
540this error can be probabilistically (i.e., on the average) removed.
541After the profiler is calibrated, it will be more accurate (in a least
542square sense), but it will sometimes produce negative numbers (when
543call counts are exceptionally low, and the gods of probability work
544against you :-). ) Do \emph{NOT} be alarmed by negative numbers in
545the profile. They should \emph{only} appear if you have calibrated
546your profiler, and the results are actually better than without
547calibration.
548
549
550\section{Calibration}
551
552The profiler class has a hard coded constant that is added to each
553event handling time to compensate for the overhead of calling the time
554function, and socking away the results. The following procedure can
555be used to obtain this constant for a given platform (see discussion
556in section Limitations above).
557
Fred Drake19479911998-02-13 06:58:54 +0000558\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000559import profile
560pr = profile.Profile()
Guido van Rossum685ef4e1998-03-17 14:37:48 +0000561print pr.calibrate(100)
562print pr.calibrate(100)
563print pr.calibrate(100)
Fred Drake19479911998-02-13 06:58:54 +0000564\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000565
566The argument to \method{calibrate()} is the number of times to try to
567do the sample calls to get the CPU times. If your computer is
568\emph{very} fast, you might have to do:
Guido van Rossumdf804f81995-03-02 12:38:39 +0000569
Fred Drake19479911998-02-13 06:58:54 +0000570\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000571pr.calibrate(1000)
Fred Drake19479911998-02-13 06:58:54 +0000572\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000573
Guido van Rossumdf804f81995-03-02 12:38:39 +0000574or even:
575
Fred Drake19479911998-02-13 06:58:54 +0000576\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000577pr.calibrate(10000)
Fred Drake19479911998-02-13 06:58:54 +0000578\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000579
Guido van Rossumdf804f81995-03-02 12:38:39 +0000580The object of this exercise is to get a fairly consistent result.
581When you have a consistent answer, you are ready to use that number in
582the source code. For a Sun Sparcstation 1000 running Solaris 2.3, the
583magical number is about .00053. If you have a choice, you are better
584off with a smaller constant, and your results will ``less often'' show
585up as negative in profile statistics.
586
587The following shows how the trace_dispatch() method in the Profile
588class should be modified to install the calibration constant on a Sun
589Sparcstation 1000:
590
Fred Drake19479911998-02-13 06:58:54 +0000591\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000592def trace_dispatch(self, frame, event, arg):
593 t = self.timer()
594 t = t[0] + t[1] - self.t - .00053 # Calibration constant
595
596 if self.dispatch[event](frame,t):
Guido van Rossumdf804f81995-03-02 12:38:39 +0000597 t = self.timer()
Guido van Rossume47da0a1997-07-17 16:34:52 +0000598 self.t = t[0] + t[1]
599 else:
600 r = self.timer()
601 self.t = r[0] + r[1] - t # put back unrecorded delta
602 return
Fred Drake19479911998-02-13 06:58:54 +0000603\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000604
Guido van Rossumdf804f81995-03-02 12:38:39 +0000605Note that if there is no calibration constant, then the line
606containing the callibration constant should simply say:
607
Fred Drake19479911998-02-13 06:58:54 +0000608\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000609t = t[0] + t[1] - self.t # no calibration constant
Fred Drake19479911998-02-13 06:58:54 +0000610\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000611
Guido van Rossumdf804f81995-03-02 12:38:39 +0000612You can also achieve the same results using a derived class (and the
613profiler will actually run equally fast!!), but the above method is
614the simplest to use. I could have made the profiler ``self
615calibrating'', but it would have made the initialization of the
616profiler class slower, and would have required some \emph{very} fancy
617coding, or else the use of a variable where the constant \samp{.00053}
618was placed in the code shown. This is a \strong{VERY} critical
619performance section, and there is no reason to use a variable lookup
620at this point, when a constant can be used.
621
622
Guido van Rossum86cb0921995-03-20 12:59:56 +0000623\section{Extensions --- Deriving Better Profilers}
624\nodename{Profiler Extensions}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000625
Fred Drake8fa5eb81998-02-27 05:23:37 +0000626The \class{Profile} class of module \module{profile} was written so that
Guido van Rossumdf804f81995-03-02 12:38:39 +0000627derived classes could be developed to extend the profiler. Rather
628than describing all the details of such an effort, I'll just present
629the following two examples of derived classes that can be used to do
630profiling. If the reader is an avid Python programmer, then it should
631be possible to use these as a model and create similar (and perchance
632better) profile classes.
633
634If all you want to do is change how the timer is called, or which
635timer function is used, then the basic class has an option for that in
636the constructor for the class. Consider passing the name of a
637function to call into the constructor:
638
Fred Drake19479911998-02-13 06:58:54 +0000639\begin{verbatim}
Guido van Rossume47da0a1997-07-17 16:34:52 +0000640pr = profile.Profile(your_time_func)
Fred Drake19479911998-02-13 06:58:54 +0000641\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000642
Guido van Rossumdf804f81995-03-02 12:38:39 +0000643The resulting profiler will call \code{your_time_func()} instead of
Fred Drake8fa5eb81998-02-27 05:23:37 +0000644\function{os.times()}. The function should return either a single number
645or a list of numbers (like what \function{os.times()} returns). If the
Guido van Rossumdf804f81995-03-02 12:38:39 +0000646function returns a single time number, or the list of returned numbers
647has length 2, then you will get an especially fast version of the
648dispatch routine.
649
650Be warned that you \emph{should} calibrate the profiler class for the
651timer function that you choose. For most machines, a timer that
652returns a lone integer value will provide the best results in terms of
Fred Drake8fa5eb81998-02-27 05:23:37 +0000653low overhead during profiling. (\function{os.times()} is
654\emph{pretty} bad, 'cause it returns a tuple of floating point values,
655so all arithmetic is floating point in the profiler!). If you want to
656substitute a better timer in the cleanest fashion, you should derive a
657class, and simply put in the replacement dispatch method that better
658handles your timer call, along with the appropriate calibration
659constant :-).
Guido van Rossumdf804f81995-03-02 12:38:39 +0000660
661
662\subsection{OldProfile Class}
663
664The following derived profiler simulates the old style profiler,
665providing errant results on recursive functions. The reason for the
666usefulness of this profiler is that it runs faster (i.e., less
667overhead) than the old profiler. It still creates all the caller
668stats, and is quite useful when there is \emph{no} recursion in the
669user's code. It is also a lot more accurate than the old profiler, as
670it does not charge all its overhead time to the user's code.
671
Fred Drake19479911998-02-13 06:58:54 +0000672\begin{verbatim}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000673class OldProfile(Profile):
674
675 def trace_dispatch_exception(self, frame, t):
676 rt, rtt, rct, rfn, rframe, rcur = self.cur
677 if rcur and not rframe is frame:
678 return self.trace_dispatch_return(rframe, t)
679 return 0
680
681 def trace_dispatch_call(self, frame, t):
682 fn = `frame.f_code`
683
684 self.cur = (t, 0, 0, fn, frame, self.cur)
685 if self.timings.has_key(fn):
686 tt, ct, callers = self.timings[fn]
687 self.timings[fn] = tt, ct, callers
688 else:
689 self.timings[fn] = 0, 0, {}
690 return 1
691
692 def trace_dispatch_return(self, frame, t):
693 rt, rtt, rct, rfn, frame, rcur = self.cur
694 rtt = rtt + t
695 sft = rtt + rct
696
697 pt, ptt, pct, pfn, pframe, pcur = rcur
698 self.cur = pt, ptt+rt, pct+sft, pfn, pframe, pcur
699
700 tt, ct, callers = self.timings[rfn]
701 if callers.has_key(pfn):
702 callers[pfn] = callers[pfn] + 1
703 else:
704 callers[pfn] = 1
705 self.timings[rfn] = tt+rtt, ct + sft, callers
706
707 return 1
708
709
710 def snapshot_stats(self):
711 self.stats = {}
712 for func in self.timings.keys():
713 tt, ct, callers = self.timings[func]
714 nor_func = self.func_normalize(func)
715 nor_callers = {}
716 nc = 0
717 for func_caller in callers.keys():
Fred Drake5dabeed1998-04-03 07:02:35 +0000718 nor_callers[self.func_normalize(func_caller)] = \
719 callers[func_caller]
Guido van Rossumdf804f81995-03-02 12:38:39 +0000720 nc = nc + callers[func_caller]
721 self.stats[nor_func] = nc, nc, tt, ct, nor_callers
Fred Drake19479911998-02-13 06:58:54 +0000722\end{verbatim}
Fred Drake8fa5eb81998-02-27 05:23:37 +0000723
Guido van Rossumdf804f81995-03-02 12:38:39 +0000724\subsection{HotProfile Class}
725
726This profiler is the fastest derived profile example. It does not
727calculate caller-callee relationships, and does not calculate
728cumulative time under a function. It only calculates time spent in a
729function, so it runs very quickly (re: very low overhead). In truth,
730the basic profiler is so fast, that is probably not worth the savings
731to give up the data, but this class still provides a nice example.
732
Fred Drake19479911998-02-13 06:58:54 +0000733\begin{verbatim}
Guido van Rossumdf804f81995-03-02 12:38:39 +0000734class HotProfile(Profile):
735
736 def trace_dispatch_exception(self, frame, t):
737 rt, rtt, rfn, rframe, rcur = self.cur
738 if rcur and not rframe is frame:
739 return self.trace_dispatch_return(rframe, t)
740 return 0
741
742 def trace_dispatch_call(self, frame, t):
743 self.cur = (t, 0, frame, self.cur)
744 return 1
745
746 def trace_dispatch_return(self, frame, t):
747 rt, rtt, frame, rcur = self.cur
748
749 rfn = `frame.f_code`
750
751 pt, ptt, pframe, pcur = rcur
752 self.cur = pt, ptt+rt, pframe, pcur
753
754 if self.timings.has_key(rfn):
755 nc, tt = self.timings[rfn]
756 self.timings[rfn] = nc + 1, rt + rtt + tt
757 else:
758 self.timings[rfn] = 1, rt + rtt
759
760 return 1
761
762
763 def snapshot_stats(self):
764 self.stats = {}
765 for func in self.timings.keys():
766 nc, tt = self.timings[func]
767 nor_func = self.func_normalize(func)
768 self.stats[nor_func] = nc, nc, tt, 0, {}
Fred Drake19479911998-02-13 06:58:54 +0000769\end{verbatim}