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[deliverable/binutils-gdb.git] / gprof / gprof.texi
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1\input texinfo @c -*-texinfo-*-
2@setfilename gprof.info
3@settitle GNU gprof
4@setchapternewpage odd
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5
6@ifinfo
7@c This is a dir.info fragment to support semi-automated addition of
8@c manuals to an info tree. zoo@cygnus.com is developing this facility.
9@format
10START-INFO-DIR-ENTRY
5ee3dd17 11* gprof: (gprof). Profiling your program's execution
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12END-INFO-DIR-ENTRY
13@end format
14@end ifinfo
15
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16@ifinfo
17This file documents the gprof profiler of the GNU system.
18
19Copyright (C) 1988, 1992 Free Software Foundation, Inc.
20
21Permission is granted to make and distribute verbatim copies of
22this manual provided the copyright notice and this permission notice
23are preserved on all copies.
24
25@ignore
26Permission is granted to process this file through Tex and print the
27results, provided the printed document carries copying permission
28notice identical to this one except for the removal of this paragraph
29(this paragraph not being relevant to the printed manual).
30
31@end ignore
32Permission is granted to copy and distribute modified versions of this
33manual under the conditions for verbatim copying, provided that the entire
34resulting derived work is distributed under the terms of a permission
35notice identical to this one.
36
37Permission is granted to copy and distribute translations of this manual
38into another language, under the above conditions for modified versions.
39@end ifinfo
40
41@finalout
42@smallbook
43
44@titlepage
45@title GNU gprof
46@subtitle The @sc{gnu} Profiler
47@author Jay Fenlason and Richard Stallman
48
49@page
50
51This manual describes the @sc{gnu} profiler, @code{gprof}, and how you
52can use it to determine which parts of a program are taking most of the
53execution time. We assume that you know how to write, compile, and
54execute programs. @sc{gnu} @code{gprof} was written by Jay Fenlason.
55
56This manual was edited January 1993 by Jeffrey Osier.
57
58@vskip 0pt plus 1filll
59Copyright @copyright{} 1988, 1992 Free Software Foundation, Inc.
60
61Permission is granted to make and distribute verbatim copies of
62this manual provided the copyright notice and this permission notice
63are preserved on all copies.
64
65@ignore
66Permission is granted to process this file through TeX and print the
67results, provided the printed document carries copying permission
68notice identical to this one except for the removal of this paragraph
69(this paragraph not being relevant to the printed manual).
70
71@end ignore
72Permission is granted to copy and distribute modified versions of this
73manual under the conditions for verbatim copying, provided that the entire
74resulting derived work is distributed under the terms of a permission
75notice identical to this one.
76
77Permission is granted to copy and distribute translations of this manual
78into another language, under the same conditions as for modified versions.
79
80@end titlepage
81
82@ifinfo
83@node Top
84@top Profiling a Program: Where Does It Spend Its Time?
85
86This manual describes the @sc{gnu} profiler, @code{gprof}, and how you
87can use it to determine which parts of a program are taking most of the
88execution time. We assume that you know how to write, compile, and
89execute programs. @sc{gnu} @code{gprof} was written by Jay Fenlason.
90
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91This manual was updated January 1993.
92
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93@menu
94* Why:: What profiling means, and why it is useful.
95* Compiling:: How to compile your program for profiling.
96* Executing:: How to execute your program to generate the
97 profile data file @file{gmon.out}.
98* Invoking:: How to run @code{gprof}, and how to specify
99 options for it.
100
101* Flat Profile:: The flat profile shows how much time was spent
102 executing directly in each function.
103* Call Graph:: The call graph shows which functions called which
104 others, and how much time each function used
105 when its subroutine calls are included.
106
107* Implementation:: How the profile data is recorded and written.
108* Sampling Error:: Statistical margins of error.
109 How to accumulate data from several runs
110 to make it more accurate.
111
112* Assumptions:: Some of @code{gprof}'s measurements are based
113 on assumptions about your program
114 that could be very wrong.
115
116* Incompatibilities:: (between GNU @code{gprof} and Unix @code{gprof}.)
117@end menu
118@end ifinfo
119
120@node Why
121@chapter Why Profile
122
123Profiling allows you to learn where your program spent its time and which
124functions called which other functions while it was executing. This
125information can show you which pieces of your program are slower than you
126expected, and might be candidates for rewriting to make your program
127execute faster. It can also tell you which functions are being called more
128or less often than you expected. This may help you spot bugs that had
129otherwise been unnoticed.
130
131Since the profiler uses information collected during the actual execution
132of your program, it can be used on programs that are too large or too
133complex to analyze by reading the source. However, how your program is run
134will affect the information that shows up in the profile data. If you
135don't use some feature of your program while it is being profiled, no
136profile information will be generated for that feature.
137
138Profiling has several steps:
139
140@itemize @bullet
141@item
142You must compile and link your program with profiling enabled.
143@xref{Compiling}.
144
145@item
146You must execute your program to generate a profile data file.
147@xref{Executing}.
148
149@item
150You must run @code{gprof} to analyze the profile data.
151@xref{Invoking}.
152@end itemize
153
154The next three chapters explain these steps in greater detail.
155
156The result of the analysis is a file containing two tables, the
157@dfn{flat profile} and the @dfn{call graph} (plus blurbs which briefly
158explain the contents of these tables).
159
160The flat profile shows how much time your program spent in each function,
161and how many times that function was called. If you simply want to know
162which functions burn most of the cycles, it is stated concisely here.
163@xref{Flat Profile}.
164
165The call graph shows, for each function, which functions called it, which
166other functions it called, and how many times. There is also an estimate
167of how much time was spent in the subroutines of each function. This can
168suggest places where you might try to eliminate function calls that use a
169lot of time. @xref{Call Graph}.
170
171@node Compiling
172@chapter Compiling a Program for Profiling
173
174The first step in generating profile information for your program is
175to compile and link it with profiling enabled.
176
177To compile a source file for profiling, specify the @samp{-pg} option when
178you run the compiler. (This is in addition to the options you normally
179use.)
180
181To link the program for profiling, if you use a compiler such as @code{cc}
182to do the linking, simply specify @samp{-pg} in addition to your usual
183options. The same option, @samp{-pg}, alters either compilation or linking
184to do what is necessary for profiling. Here are examples:
185
186@example
187cc -g -c myprog.c utils.c -pg
188cc -o myprog myprog.o utils.o -pg
189@end example
190
191The @samp{-pg} option also works with a command that both compiles and links:
192
193@example
194cc -o myprog myprog.c utils.c -g -pg
195@end example
196
197If you run the linker @code{ld} directly instead of through a compiler
198such as @code{cc}, you must specify the profiling startup file
199@file{/lib/gcrt0.o} as the first input file instead of the usual startup
200file @file{/lib/crt0.o}. In addition, you would probably want to
201specify the profiling C library, @file{/usr/lib/libc_p.a}, by writing
202@samp{-lc_p} instead of the usual @samp{-lc}. This is not absolutely
203necessary, but doing this gives you number-of-calls information for
204standard library functions such as @code{read} and @code{open}. For
205example:
206
207@example
208ld -o myprog /lib/gcrt0.o myprog.o utils.o -lc_p
209@end example
210
211If you compile only some of the modules of the program with @samp{-pg}, you
212can still profile the program, but you won't get complete information about
213the modules that were compiled without @samp{-pg}. The only information
214you get for the functions in those modules is the total time spent in them;
215there is no record of how many times they were called, or from where. This
216will not affect the flat profile (except that the @code{calls} field for
217the functions will be blank), but will greatly reduce the usefulness of the
218call graph.
219
220@node Executing
221@chapter Executing the Program to Generate Profile Data
222
223Once the program is compiled for profiling, you must run it in order to
224generate the information that @code{gprof} needs. Simply run the program
225as usual, using the normal arguments, file names, etc. The program should
226run normally, producing the same output as usual. It will, however, run
227somewhat slower than normal because of the time spent collecting and the
228writing the profile data.
229
230The way you run the program---the arguments and input that you give
231it---may have a dramatic effect on what the profile information shows. The
232profile data will describe the parts of the program that were activated for
233the particular input you use. For example, if the first command you give
234to your program is to quit, the profile data will show the time used in
235initialization and in cleanup, but not much else.
236
237You program will write the profile data into a file called @file{gmon.out}
238just before exiting. If there is already a file called @file{gmon.out},
239its contents are overwritten. There is currently no way to tell the
240program to write the profile data under a different name, but you can rename
241the file afterward if you are concerned that it may be overwritten.
242
243In order to write the @file{gmon.out} file properly, your program must exit
244normally: by returning from @code{main} or by calling @code{exit}. Calling
245the low-level function @code{_exit} does not write the profile data, and
246neither does abnormal termination due to an unhandled signal.
247
248The @file{gmon.out} file is written in the program's @emph{current working
249directory} at the time it exits. This means that if your program calls
250@code{chdir}, the @file{gmon.out} file will be left in the last directory
251your program @code{chdir}'d to. If you don't have permission to write in
252this directory, the file is not written. You may get a confusing error
253message if this happens. (We have not yet replaced the part of Unix
254responsible for this; when we do, we will make the error message
255comprehensible.)
256
257@node Invoking
258@chapter @code{gprof} Command Summary
259
260After you have a profile data file @file{gmon.out}, you can run @code{gprof}
261to interpret the information in it. The @code{gprof} program prints a
262flat profile and a call graph on standard output. Typically you would
263redirect the output of @code{gprof} into a file with @samp{>}.
264
265You run @code{gprof} like this:
266
267@smallexample
268gprof @var{options} [@var{executable-file} [@var{profile-data-files}@dots{}]] [> @var{outfile}]
269@end smallexample
270
271@noindent
272Here square-brackets indicate optional arguments.
273
274If you omit the executable file name, the file @file{a.out} is used. If
275you give no profile data file name, the file @file{gmon.out} is used. If
276any file is not in the proper format, or if the profile data file does not
277appear to belong to the executable file, an error message is printed.
278
279You can give more than one profile data file by entering all their names
280after the executable file name; then the statistics in all the data files
281are summed together.
282
283The following options may be used to selectively include or exclude
284functions in the output:
285
286@table @code
287@item -a
288The @samp{-a} option causes @code{gprof} to suppress the printing of
289statically declared (private) functions. (These are functions whose
290names are not listed as global, and which are not visible outside the
291file/function/block where they were defined.) Time spent in these
292functions, calls to/from them, etc, will all be attributed to the
293function that was loaded directly before it in the executable file.
294@c This is compatible with Unix @code{gprof}, but a bad idea.
295This option affects both the flat profile and the call graph.
296
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297@item -D
298The @samp{-D} option causes @code{gprof} to ignore symbols which
299are not known to be functions. This option will give more accurate
300profile data on systems where it is supported (Solaris and HPUX for
301example).
302
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303@item -e @var{function_name}
304The @samp{-e @var{function}} option tells @code{gprof} to not print
305information about the function @var{function_name} (and its
306children@dots{}) in the call graph. The function will still be listed
307as a child of any functions that call it, but its index number will be
308shown as @samp{[not printed]}. More than one @samp{-e} option may be
309given; only one @var{function_name} may be indicated with each @samp{-e}
310option.
311
312@item -E @var{function_name}
313The @code{-E @var{function}} option works like the @code{-e} option, but
314time spent in the function (and children who were not called from
315anywhere else), will not be used to compute the percentages-of-time for
316the call graph. More than one @samp{-E} option may be given; only one
317@var{function_name} may be indicated with each @samp{-E} option.
318
319@item -f @var{function_name}
320The @samp{-f @var{function}} option causes @code{gprof} to limit the
321call graph to the function @var{function_name} and its children (and
322their children@dots{}). More than one @samp{-f} option may be given;
323only one @var{function_name} may be indicated with each @samp{-f}
324option.
325
326@item -F @var{function_name}
327The @samp{-F @var{function}} option works like the @code{-f} option, but
328only time spent in the function and its children (and their
329children@dots{}) will be used to determine total-time and
330percentages-of-time for the call graph. More than one @samp{-F} option
331may be given; only one @var{function_name} may be indicated with each
332@samp{-F} option. The @samp{-F} option overrides the @samp{-E} option.
333
334@item -k @var{from@dots{}} @var{to@dots{}}
335The @samp{-k} option allows you to delete from the profile any arcs from
336routine @var{from} to routine @var{to}.
337
4fe2350b 338@item -v
4db865d0 339The @samp{-v} flag causes @code{gprof} to print the current version
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340number, and then exit.
341
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342@item -z
343If you give the @samp{-z} option, @code{gprof} will mention all
344functions in the flat profile, even those that were never called, and
345that had no time spent in them. This is useful in conjunction with the
346@samp{-c} option for discovering which routines were never called.
347@end table
348
349The order of these options does not matter.
350
351Note that only one function can be specified with each @code{-e},
352@code{-E}, @code{-f} or @code{-F} option. To specify more than one
353function, use multiple options. For example, this command:
354
355@example
356gprof -e boring -f foo -f bar myprogram > gprof.output
357@end example
358
359@noindent
360lists in the call graph all functions that were reached from either
361@code{foo} or @code{bar} and were not reachable from @code{boring}.
362
363There are a few other useful @code{gprof} options:
364
365@table @code
366@item -b
367If the @samp{-b} option is given, @code{gprof} doesn't print the
368verbose blurbs that try to explain the meaning of all of the fields in
369the tables. This is useful if you intend to print out the output, or
370are tired of seeing the blurbs.
371
372@item -c
373The @samp{-c} option causes the static call-graph of the program to be
374discovered by a heuristic which examines the text space of the object
375file. Static-only parents or children are indicated with call counts of
376@samp{0}.
377
378@item -d @var{num}
379The @samp{-d @var{num}} option specifies debugging options.
380@c @xref{debugging}.
381
382@item -s
383The @samp{-s} option causes @code{gprof} to summarize the information
384in the profile data files it read in, and write out a profile data
385file called @file{gmon.sum}, which contains all the information from
386the profile data files that @code{gprof} read in. The file @file{gmon.sum}
387may be one of the specified input files; the effect of this is to
388merge the data in the other input files into @file{gmon.sum}.
389@xref{Sampling Error}.
390
391Eventually you can run @code{gprof} again without @samp{-s} to analyze the
392cumulative data in the file @file{gmon.sum}.
393
394@item -T
395The @samp{-T} option causes @code{gprof} to print its output in
396``traditional'' BSD style.
397@end table
398
399@node Flat Profile
400@chapter How to Understand the Flat Profile
401@cindex flat profile
402
403The @dfn{flat profile} shows the total amount of time your program
404spent executing each function. Unless the @samp{-z} option is given,
405functions with no apparent time spent in them, and no apparent calls
406to them, are not mentioned. Note that if a function was not compiled
407for profiling, and didn't run long enough to show up on the program
408counter histogram, it will be indistinguishable from a function that
409was never called.
410
411This is part of a flat profile for a small program:
412
413@smallexample
414@group
415Flat profile:
416
417Each sample counts as 0.01 seconds.
418 % cumulative self self total
419 time seconds seconds calls ms/call ms/call name
420 33.34 0.02 0.02 7208 0.00 0.00 open
421 16.67 0.03 0.01 244 0.04 0.12 offtime
422 16.67 0.04 0.01 8 1.25 1.25 memccpy
423 16.67 0.05 0.01 7 1.43 1.43 write
424 16.67 0.06 0.01 mcount
425 0.00 0.06 0.00 236 0.00 0.00 tzset
426 0.00 0.06 0.00 192 0.00 0.00 tolower
427 0.00 0.06 0.00 47 0.00 0.00 strlen
428 0.00 0.06 0.00 45 0.00 0.00 strchr
429 0.00 0.06 0.00 1 0.00 50.00 main
430 0.00 0.06 0.00 1 0.00 0.00 memcpy
431 0.00 0.06 0.00 1 0.00 10.11 print
432 0.00 0.06 0.00 1 0.00 0.00 profil
433 0.00 0.06 0.00 1 0.00 50.00 report
434@dots{}
435@end group
436@end smallexample
437
438@noindent
439The functions are sorted by decreasing run-time spent in them. The
440functions @samp{mcount} and @samp{profil} are part of the profiling
441aparatus and appear in every flat profile; their time gives a measure of
442the amount of overhead due to profiling.
443
444The sampling period estimates the margin of error in each of the time
445figures. A time figure that is not much larger than this is not
446reliable. In this example, the @samp{self seconds} field for
447@samp{mcount} might well be @samp{0} or @samp{0.04} in another run.
448@xref{Sampling Error}, for a complete discussion.
449
450Here is what the fields in each line mean:
451
452@table @code
453@item % time
454This is the percentage of the total execution time your program spent
455in this function. These should all add up to 100%.
456
457@item cumulative seconds
458This is the cumulative total number of seconds the computer spent
459executing this functions, plus the time spent in all the functions
460above this one in this table.
461
462@item self seconds
463This is the number of seconds accounted for by this function alone.
464The flat profile listing is sorted first by this number.
465
466@item calls
467This is the total number of times the function was called. If the
468function was never called, or the number of times it was called cannot
469be determined (probably because the function was not compiled with
470profiling enabled), the @dfn{calls} field is blank.
471
472@item self ms/call
473This represents the average number of milliseconds spent in this
474function per call, if this function is profiled. Otherwise, this field
475is blank for this function.
476
477@item total ms/call
478This represents the average number of milliseconds spent in this
479function and its descendants per call, if this function is profiled.
480Otherwise, this field is blank for this function.
481
482@item name
483This is the name of the function. The flat profile is sorted by this
484field alphabetically after the @dfn{self seconds} field is sorted.
485@end table
486
487@node Call Graph
488@chapter How to Read the Call Graph
489@cindex call graph
490
491The @dfn{call graph} shows how much time was spent in each function
492and its children. From this information, you can find functions that,
493while they themselves may not have used much time, called other
494functions that did use unusual amounts of time.
495
496Here is a sample call from a small program. This call came from the
497same @code{gprof} run as the flat profile example in the previous
498chapter.
499
500@smallexample
501@group
502granularity: each sample hit covers 2 byte(s) for 20.00% of 0.05 seconds
503
504index % time self children called name
505 <spontaneous>
506[1] 100.0 0.00 0.05 start [1]
507 0.00 0.05 1/1 main [2]
508 0.00 0.00 1/2 on_exit [28]
509 0.00 0.00 1/1 exit [59]
510-----------------------------------------------
511 0.00 0.05 1/1 start [1]
512[2] 100.0 0.00 0.05 1 main [2]
513 0.00 0.05 1/1 report [3]
514-----------------------------------------------
515 0.00 0.05 1/1 main [2]
516[3] 100.0 0.00 0.05 1 report [3]
517 0.00 0.03 8/8 timelocal [6]
518 0.00 0.01 1/1 print [9]
519 0.00 0.01 9/9 fgets [12]
520 0.00 0.00 12/34 strncmp <cycle 1> [40]
521 0.00 0.00 8/8 lookup [20]
522 0.00 0.00 1/1 fopen [21]
523 0.00 0.00 8/8 chewtime [24]
524 0.00 0.00 8/16 skipspace [44]
525-----------------------------------------------
526[4] 59.8 0.01 0.02 8+472 <cycle 2 as a whole> [4]
527 0.01 0.02 244+260 offtime <cycle 2> [7]
528 0.00 0.00 236+1 tzset <cycle 2> [26]
529-----------------------------------------------
530@end group
531@end smallexample
532
533The lines full of dashes divide this table into @dfn{entries}, one for each
534function. Each entry has one or more lines.
535
536In each entry, the primary line is the one that starts with an index number
537in square brackets. The end of this line says which function the entry is
538for. The preceding lines in the entry describe the callers of this
539function and the following lines describe its subroutines (also called
540@dfn{children} when we speak of the call graph).
541
542The entries are sorted by time spent in the function and its subroutines.
543
544The internal profiling function @code{mcount} (@pxref{Flat Profile})
545is never mentioned in the call graph.
546
547@menu
548* Primary:: Details of the primary line's contents.
549* Callers:: Details of caller-lines' contents.
550* Subroutines:: Details of subroutine-lines' contents.
551* Cycles:: When there are cycles of recursion,
552 such as @code{a} calls @code{b} calls @code{a}@dots{}
553@end menu
554
555@node Primary
556@section The Primary Line
557
558The @dfn{primary line} in a call graph entry is the line that
559describes the function which the entry is about and gives the overall
560statistics for this function.
561
562For reference, we repeat the primary line from the entry for function
563@code{report} in our main example, together with the heading line that
564shows the names of the fields:
565
566@smallexample
567@group
568index % time self children called name
569@dots{}
570[3] 100.0 0.00 0.05 1 report [3]
571@end group
572@end smallexample
573
574Here is what the fields in the primary line mean:
575
576@table @code
577@item index
578Entries are numbered with consecutive integers. Each function
579therefore has an index number, which appears at the beginning of its
580primary line.
581
582Each cross-reference to a function, as a caller or subroutine of
583another, gives its index number as well as its name. The index number
584guides you if you wish to look for the entry for that function.
585
586@item % time
587This is the percentage of the total time that was spent in this
588function, including time spent in subroutines called from this
589function.
590
591The time spent in this function is counted again for the callers of
592this function. Therefore, adding up these percentages is meaningless.
593
594@item self
595This is the total amount of time spent in this function. This
596should be identical to the number printed in the @code{seconds} field
597for this function in the flat profile.
598
599@item children
600This is the total amount of time spent in the subroutine calls made by
601this function. This should be equal to the sum of all the @code{self}
602and @code{children} entries of the children listed directly below this
603function.
604
605@item called
606This is the number of times the function was called.
607
608If the function called itself recursively, there are two numbers,
609separated by a @samp{+}. The first number counts non-recursive calls,
610and the second counts recursive calls.
611
612In the example above, the function @code{report} was called once from
613@code{main}.
614
615@item name
616This is the name of the current function. The index number is
617repeated after it.
618
619If the function is part of a cycle of recursion, the cycle number is
620printed between the function's name and the index number
621(@pxref{Cycles}). For example, if function @code{gnurr} is part of
622cycle number one, and has index number twelve, its primary line would
623be end like this:
624
625@example
626gnurr <cycle 1> [12]
627@end example
628@end table
629
630@node Callers, Subroutines, Primary, Call Graph
631@section Lines for a Function's Callers
632
633A function's entry has a line for each function it was called by.
634These lines' fields correspond to the fields of the primary line, but
635their meanings are different because of the difference in context.
636
637For reference, we repeat two lines from the entry for the function
638@code{report}, the primary line and one caller-line preceding it, together
639with the heading line that shows the names of the fields:
640
641@smallexample
642index % time self children called name
643@dots{}
644 0.00 0.05 1/1 main [2]
645[3] 100.0 0.00 0.05 1 report [3]
646@end smallexample
647
648Here are the meanings of the fields in the caller-line for @code{report}
649called from @code{main}:
650
651@table @code
652@item self
653An estimate of the amount of time spent in @code{report} itself when it was
654called from @code{main}.
655
656@item children
657An estimate of the amount of time spent in subroutines of @code{report}
658when @code{report} was called from @code{main}.
659
660The sum of the @code{self} and @code{children} fields is an estimate
661of the amount of time spent within calls to @code{report} from @code{main}.
662
663@item called
664Two numbers: the number of times @code{report} was called from @code{main},
665followed by the total number of nonrecursive calls to @code{report} from
666all its callers.
667
668@item name and index number
669The name of the caller of @code{report} to which this line applies,
670followed by the caller's index number.
671
672Not all functions have entries in the call graph; some
673options to @code{gprof} request the omission of certain functions.
674When a caller has no entry of its own, it still has caller-lines
675in the entries of the functions it calls.
676
677If the caller is part of a recursion cycle, the cycle number is
678printed between the name and the index number.
679@end table
680
681If the identity of the callers of a function cannot be determined, a
682dummy caller-line is printed which has @samp{<spontaneous>} as the
683``caller's name'' and all other fields blank. This can happen for
684signal handlers.
685@c What if some calls have determinable callers' names but not all?
686@c FIXME - still relevant?
687
688@node Subroutines, Cycles, Callers, Call Graph
689@section Lines for a Function's Subroutines
690
691A function's entry has a line for each of its subroutines---in other
692words, a line for each other function that it called. These lines'
693fields correspond to the fields of the primary line, but their meanings
694are different because of the difference in context.
695
696For reference, we repeat two lines from the entry for the function
697@code{main}, the primary line and a line for a subroutine, together
698with the heading line that shows the names of the fields:
699
700@smallexample
701index % time self children called name
702@dots{}
703[2] 100.0 0.00 0.05 1 main [2]
704 0.00 0.05 1/1 report [3]
705@end smallexample
706
707Here are the meanings of the fields in the subroutine-line for @code{main}
708calling @code{report}:
709
710@table @code
711@item self
712An estimate of the amount of time spent directly within @code{report}
713when @code{report} was called from @code{main}.
714
715@item children
716An estimate of the amount of time spent in subroutines of @code{report}
717when @code{report} was called from @code{main}.
718
719The sum of the @code{self} and @code{children} fields is an estimate
720of the total time spent in calls to @code{report} from @code{main}.
721
722@item called
723Two numbers, the number of calls to @code{report} from @code{main}
724followed by the total number of nonrecursive calls to @code{report}.
725
726@item name
727The name of the subroutine of @code{main} to which this line applies,
728followed by the subroutine's index number.
729
730If the caller is part of a recursion cycle, the cycle number is
731printed between the name and the index number.
732@end table
733
734@node Cycles,, Subroutines, Call Graph
735@section How Mutually Recursive Functions Are Described
736@cindex cycle
737@cindex recursion cycle
738
739The graph may be complicated by the presence of @dfn{cycles of
740recursion} in the call graph. A cycle exists if a function calls
741another function that (directly or indirectly) calls (or appears to
742call) the original function. For example: if @code{a} calls @code{b},
743and @code{b} calls @code{a}, then @code{a} and @code{b} form a cycle.
744
745Whenever there are call-paths both ways between a pair of functions, they
746belong to the same cycle. If @code{a} and @code{b} call each other and
747@code{b} and @code{c} call each other, all three make one cycle. Note that
748even if @code{b} only calls @code{a} if it was not called from @code{a},
749@code{gprof} cannot determine this, so @code{a} and @code{b} are still
750considered a cycle.
751
752The cycles are numbered with consecutive integers. When a function
753belongs to a cycle, each time the function name appears in the call graph
754it is followed by @samp{<cycle @var{number}>}.
755
756The reason cycles matter is that they make the time values in the call
757graph paradoxical. The ``time spent in children'' of @code{a} should
758include the time spent in its subroutine @code{b} and in @code{b}'s
759subroutines---but one of @code{b}'s subroutines is @code{a}! How much of
760@code{a}'s time should be included in the children of @code{a}, when
761@code{a} is indirectly recursive?
762
763The way @code{gprof} resolves this paradox is by creating a single entry
764for the cycle as a whole. The primary line of this entry describes the
765total time spent directly in the functions of the cycle. The
766``subroutines'' of the cycle are the individual functions of the cycle, and
767all other functions that were called directly by them. The ``callers'' of
768the cycle are the functions, outside the cycle, that called functions in
769the cycle.
770
771Here is an example portion of a call graph which shows a cycle containing
772functions @code{a} and @code{b}. The cycle was entered by a call to
773@code{a} from @code{main}; both @code{a} and @code{b} called @code{c}.
774
775@smallexample
776index % time self children called name
777----------------------------------------
778 1.77 0 1/1 main [2]
779[3] 91.71 1.77 0 1+5 <cycle 1 as a whole> [3]
780 1.02 0 3 b <cycle 1> [4]
781 0.75 0 2 a <cycle 1> [5]
782----------------------------------------
783 3 a <cycle 1> [5]
784[4] 52.85 1.02 0 0 b <cycle 1> [4]
785 2 a <cycle 1> [5]
786 0 0 3/6 c [6]
787----------------------------------------
788 1.77 0 1/1 main [2]
789 2 b <cycle 1> [4]
790[5] 38.86 0.75 0 1 a <cycle 1> [5]
791 3 b <cycle 1> [4]
792 0 0 3/6 c [6]
793----------------------------------------
794@end smallexample
795
796@noindent
797(The entire call graph for this program contains in addition an entry for
798@code{main}, which calls @code{a}, and an entry for @code{c}, with callers
799@code{a} and @code{b}.)
800
801@smallexample
802index % time self children called name
803 <spontaneous>
804[1] 100.00 0 1.93 0 start [1]
805 0.16 1.77 1/1 main [2]
806----------------------------------------
807 0.16 1.77 1/1 start [1]
808[2] 100.00 0.16 1.77 1 main [2]
809 1.77 0 1/1 a <cycle 1> [5]
810----------------------------------------
811 1.77 0 1/1 main [2]
812[3] 91.71 1.77 0 1+5 <cycle 1 as a whole> [3]
813 1.02 0 3 b <cycle 1> [4]
814 0.75 0 2 a <cycle 1> [5]
815 0 0 6/6 c [6]
816----------------------------------------
817 3 a <cycle 1> [5]
818[4] 52.85 1.02 0 0 b <cycle 1> [4]
819 2 a <cycle 1> [5]
820 0 0 3/6 c [6]
821----------------------------------------
822 1.77 0 1/1 main [2]
823 2 b <cycle 1> [4]
824[5] 38.86 0.75 0 1 a <cycle 1> [5]
825 3 b <cycle 1> [4]
826 0 0 3/6 c [6]
827----------------------------------------
828 0 0 3/6 b <cycle 1> [4]
829 0 0 3/6 a <cycle 1> [5]
830[6] 0.00 0 0 6 c [6]
831----------------------------------------
832@end smallexample
833
834The @code{self} field of the cycle's primary line is the total time
835spent in all the functions of the cycle. It equals the sum of the
836@code{self} fields for the individual functions in the cycle, found
837in the entry in the subroutine lines for these functions.
838
839The @code{children} fields of the cycle's primary line and subroutine lines
840count only subroutines outside the cycle. Even though @code{a} calls
841@code{b}, the time spent in those calls to @code{b} is not counted in
842@code{a}'s @code{children} time. Thus, we do not encounter the problem of
843what to do when the time in those calls to @code{b} includes indirect
844recursive calls back to @code{a}.
845
846The @code{children} field of a caller-line in the cycle's entry estimates
847the amount of time spent @emph{in the whole cycle}, and its other
848subroutines, on the times when that caller called a function in the cycle.
849
850The @code{calls} field in the primary line for the cycle has two numbers:
851first, the number of times functions in the cycle were called by functions
852outside the cycle; second, the number of times they were called by
853functions in the cycle (including times when a function in the cycle calls
854itself). This is a generalization of the usual split into nonrecursive and
855recursive calls.
856
857The @code{calls} field of a subroutine-line for a cycle member in the
858cycle's entry says how many time that function was called from functions in
859the cycle. The total of all these is the second number in the primary line's
860@code{calls} field.
861
862In the individual entry for a function in a cycle, the other functions in
863the same cycle can appear as subroutines and as callers. These lines show
864how many times each function in the cycle called or was called from each other
865function in the cycle. The @code{self} and @code{children} fields in these
866lines are blank because of the difficulty of defining meanings for them
867when recursion is going on.
868
869@node Implementation, Sampling Error, Call Graph, Top
870@chapter Implementation of Profiling
871
872Profiling works by changing how every function in your program is compiled
873so that when it is called, it will stash away some information about where
874it was called from. From this, the profiler can figure out what function
875called it, and can count how many times it was called. This change is made
876by the compiler when your program is compiled with the @samp{-pg} option.
877
878Profiling also involves watching your program as it runs, and keeping a
879histogram of where the program counter happens to be every now and then.
880Typically the program counter is looked at around 100 times per second of
881run time, but the exact frequency may vary from system to system.
882
883A special startup routine allocates memory for the histogram and sets up
884a clock signal handler to make entries in it. Use of this special
885startup routine is one of the effects of using @samp{gcc @dots{} -pg} to
886link. The startup file also includes an @samp{exit} function which is
887responsible for writing the file @file{gmon.out}.
888
889Number-of-calls information for library routines is collected by using a
890special version of the C library. The programs in it are the same as in
891the usual C library, but they were compiled with @samp{-pg}. If you
892link your program with @samp{gcc @dots{} -pg}, it automatically uses the
893profiling version of the library.
894
895The output from @code{gprof} gives no indication of parts of your program that
896are limited by I/O or swapping bandwidth. This is because samples of the
897program counter are taken at fixed intervals of run time. Therefore, the
898time measurements in @code{gprof} output say nothing about time that your
899program was not running. For example, a part of the program that creates
900so much data that it cannot all fit in physical memory at once may run very
901slowly due to thrashing, but @code{gprof} will say it uses little time. On
902the other hand, sampling by run time has the advantage that the amount of
903load due to other users won't directly affect the output you get.
904
905@node Sampling Error, Assumptions, Implementation, Top
906@chapter Statistical Inaccuracy of @code{gprof} Output
907
908The run-time figures that @code{gprof} gives you are based on a sampling
909process, so they are subject to statistical inaccuracy. If a function runs
910only a small amount of time, so that on the average the sampling process
911ought to catch that function in the act only once, there is a pretty good
912chance it will actually find that function zero times, or twice.
913
914By contrast, the number-of-calls figures are derived by counting, not
915sampling. They are completely accurate and will not vary from run to run
916if your program is deterministic.
917
918The @dfn{sampling period} that is printed at the beginning of the flat
919profile says how often samples are taken. The rule of thumb is that a
920run-time figure is accurate if it is considerably bigger than the sampling
921period.
922
923The actual amount of error is usually more than one sampling period. In
924fact, if a value is @var{n} times the sampling period, the @emph{expected}
925error in it is the square-root of @var{n} sampling periods. If the
926sampling period is 0.01 seconds and @code{foo}'s run-time is 1 second, the
927expected error in @code{foo}'s run-time is 0.1 seconds. It is likely to
928vary this much @emph{on the average} from one profiling run to the next.
929(@emph{Sometimes} it will vary more.)
930
931This does not mean that a small run-time figure is devoid of information.
932If the program's @emph{total} run-time is large, a small run-time for one
933function does tell you that that function used an insignificant fraction of
934the whole program's time. Usually this means it is not worth optimizing.
935
936One way to get more accuracy is to give your program more (but similar)
937input data so it will take longer. Another way is to combine the data from
938several runs, using the @samp{-s} option of @code{gprof}. Here is how:
939
940@enumerate
941@item
942Run your program once.
943
944@item
945Issue the command @samp{mv gmon.out gmon.sum}.
946
947@item
948Run your program again, the same as before.
949
950@item
951Merge the new data in @file{gmon.out} into @file{gmon.sum} with this command:
952
953@example
954gprof -s @var{executable-file} gmon.out gmon.sum
955@end example
956
957@item
958Repeat the last two steps as often as you wish.
959
960@item
961Analyze the cumulative data using this command:
962
963@example
964gprof @var{executable-file} gmon.sum > @var{output-file}
965@end example
966@end enumerate
967
968@node Assumptions, Incompatibilities, Sampling Error, Top
969@chapter Estimating @code{children} Times Uses an Assumption
970
971Some of the figures in the call graph are estimates---for example, the
972@code{children} time values and all the the time figures in caller and
973subroutine lines.
974
975There is no direct information about these measurements in the profile
976data itself. Instead, @code{gprof} estimates them by making an assumption
977about your program that might or might not be true.
978
979The assumption made is that the average time spent in each call to any
980function @code{foo} is not correlated with who called @code{foo}. If
981@code{foo} used 5 seconds in all, and 2/5 of the calls to @code{foo} came
982from @code{a}, then @code{foo} contributes 2 seconds to @code{a}'s
983@code{children} time, by assumption.
984
985This assumption is usually true enough, but for some programs it is far
986from true. Suppose that @code{foo} returns very quickly when its argument
987is zero; suppose that @code{a} always passes zero as an argument, while
988other callers of @code{foo} pass other arguments. In this program, all the
989time spent in @code{foo} is in the calls from callers other than @code{a}.
990But @code{gprof} has no way of knowing this; it will blindly and
991incorrectly charge 2 seconds of time in @code{foo} to the children of
992@code{a}.
993
994@c FIXME - has this been fixed?
995We hope some day to put more complete data into @file{gmon.out}, so that
996this assumption is no longer needed, if we can figure out how. For the
997nonce, the estimated figures are usually more useful than misleading.
998
999@node Incompatibilities, , Assumptions, Top
1000@chapter Incompatibilities with Unix @code{gprof}
1001
1002@sc{gnu} @code{gprof} and Berkeley Unix @code{gprof} use the same data
1003file @file{gmon.out}, and provide essentially the same information. But
1004there are a few differences.
1005
1006@itemize @bullet
1007@item
1008For a recursive function, Unix @code{gprof} lists the function as a
1009parent and as a child, with a @code{calls} field that lists the number
1010of recursive calls. @sc{gnu} @code{gprof} omits these lines and puts
1011the number of recursive calls in the primary line.
1012
1013@item
1014When a function is suppressed from the call graph with @samp{-e}, @sc{gnu}
1015@code{gprof} still lists it as a subroutine of functions that call it.
1016
1017@ignore - it does this now
1018@item
1019The function names printed in @sc{gnu} @code{gprof} output do not include
1020the leading underscores that are added internally to the front of all
1021C identifiers on many operating systems.
1022@end ignore
1023
1024@item
1025The blurbs, field widths, and output formats are different. @sc{gnu}
1026@code{gprof} prints blurbs after the tables, so that you can see the
1027tables without skipping the blurbs.
1028
1029@contents
1030@bye
1031
1032NEEDS AN INDEX
1033
1034Still relevant?
1035 The @file{gmon.out} file is written in the program's @emph{current working
1036 directory} at the time it exits. This means that if your program calls
1037 @code{chdir}, the @file{gmon.out} file will be left in the last directory
1038 your program @code{chdir}'d to. If you don't have permission to write in
1039 this directory, the file is not written. You may get a confusing error
1040 message if this happens. (We have not yet replaced the part of Unix
1041 responsible for this; when we do, we will make the error message
1042 comprehensible.)
1043
1044-k from to...?
1045
1046-d debugging...? should this be documented?
1047
1048-T - "traditional BSD style": How is it different? Should the
1049differences be documented?
1050
1051what is this about? (and to think, I *wrote* it...)
1052 @item -c
1053 The @samp{-c} option causes the static call-graph of the program to be
1054 discovered by a heuristic which examines the text space of the object
1055 file. Static-only parents or children are indicated with call counts of
1056 @samp{0}.
1057
1058example flat file adds up to 100.01%...
1059
1060note: time estimates now only go out to one decimal place (0.0), where
1061they used to extend two (78.67).
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