binutils-gdb/gprof/gprof.texi
Ian Lance Taylor e2fd423145 Tue Feb 3 14:25:25 1998 Brent Baccala <baccala@freesoft.org>
* gprof.texi: Extensive additions to document all arguments and
	output formats.
1998-02-04 00:41:51 +00:00

2018 lines
82 KiB
Plaintext

\input texinfo @c -*-texinfo-*-
@setfilename gprof.info
@settitle GNU gprof
@setchapternewpage odd
@ifinfo
@c This is a dir.info fragment to support semi-automated addition of
@c manuals to an info tree. zoo@cygnus.com is developing this facility.
@format
START-INFO-DIR-ENTRY
* gprof: (gprof). Profiling your program's execution
END-INFO-DIR-ENTRY
@end format
@end ifinfo
@ifinfo
This file documents the gprof profiler of the GNU system.
Copyright (C) 1988, 1992, 1997, 1998 Free Software Foundation, Inc.
Permission is granted to make and distribute verbatim copies of
this manual provided the copyright notice and this permission notice
are preserved on all copies.
@ignore
Permission is granted to process this file through Tex and print the
results, provided the printed document carries copying permission
notice identical to this one except for the removal of this paragraph
(this paragraph not being relevant to the printed manual).
@end ignore
Permission is granted to copy and distribute modified versions of this
manual under the conditions for verbatim copying, provided that the entire
resulting derived work is distributed under the terms of a permission
notice identical to this one.
Permission is granted to copy and distribute translations of this manual
into another language, under the above conditions for modified versions.
@end ifinfo
@finalout
@smallbook
@titlepage
@title GNU gprof
@subtitle The @sc{gnu} Profiler
@author Jay Fenlason and Richard Stallman
@page
This manual describes the @sc{gnu} profiler, @code{gprof}, and how you
can use it to determine which parts of a program are taking most of the
execution time. We assume that you know how to write, compile, and
execute programs. @sc{gnu} @code{gprof} was written by Jay Fenlason.
This manual was edited January 1993 by Jeffrey Osier
and updated September 1997 by Brent Baccala.
@vskip 0pt plus 1filll
Copyright @copyright{} 1988, 1992, 1997, 1998 Free Software Foundation, Inc.
Permission is granted to make and distribute verbatim copies of
this manual provided the copyright notice and this permission notice
are preserved on all copies.
@ignore
Permission is granted to process this file through TeX and print the
results, provided the printed document carries copying permission
notice identical to this one except for the removal of this paragraph
(this paragraph not being relevant to the printed manual).
@end ignore
Permission is granted to copy and distribute modified versions of this
manual under the conditions for verbatim copying, provided that the entire
resulting derived work is distributed under the terms of a permission
notice identical to this one.
Permission is granted to copy and distribute translations of this manual
into another language, under the same conditions as for modified versions.
@end titlepage
@ifinfo
@node Top
@top Profiling a Program: Where Does It Spend Its Time?
This manual describes the @sc{gnu} profiler, @code{gprof}, and how you
can use it to determine which parts of a program are taking most of the
execution time. We assume that you know how to write, compile, and
execute programs. @sc{gnu} @code{gprof} was written by Jay Fenlason.
This manual was updated August 1997 by Brent Baccala.
@menu
* Introduction:: What profiling means, and why it is useful.
* Compiling:: How to compile your program for profiling.
* Executing:: Executing your program to generate profile data
* Invoking:: How to run @code{gprof}, and its options
* Output:: Interpreting @code{gprof}'s output
* Inaccuracy:: Potential problems you should be aware of
* How do I?:: Answers to common questions
* Incompatibilities:: (between @sc{gnu} @code{gprof} and Unix @code{gprof}.)
* Details:: Details of how profiling is done
@end menu
@end ifinfo
@node Introduction
@chapter Introduction to Profiling
Profiling allows you to learn where your program spent its time and which
functions called which other functions while it was executing. This
information can show you which pieces of your program are slower than you
expected, and might be candidates for rewriting to make your program
execute faster. It can also tell you which functions are being called more
or less often than you expected. This may help you spot bugs that had
otherwise been unnoticed.
Since the profiler uses information collected during the actual execution
of your program, it can be used on programs that are too large or too
complex to analyze by reading the source. However, how your program is run
will affect the information that shows up in the profile data. If you
don't use some feature of your program while it is being profiled, no
profile information will be generated for that feature.
Profiling has several steps:
@itemize @bullet
@item
You must compile and link your program with profiling enabled.
@xref{Compiling}.
@item
You must execute your program to generate a profile data file.
@xref{Executing}.
@item
You must run @code{gprof} to analyze the profile data.
@xref{Invoking}.
@end itemize
The next three chapters explain these steps in greater detail.
Several forms of output are available from the analysis.
The @dfn{flat profile} shows how much time your program spent in each function,
and how many times that function was called. If you simply want to know
which functions burn most of the cycles, it is stated concisely here.
@xref{Flat Profile}.
The @dfn{call graph} shows, for each function, which functions called it, which
other functions it called, and how many times. There is also an estimate
of how much time was spent in the subroutines of each function. This can
suggest places where you might try to eliminate function calls that use a
lot of time. @xref{Call Graph}.
The @dfn{annotated source} listing is a copy of the program's
source code, labeled with the number of times each line of the
program was executed. @xref{Annotated Source}.
To better understand how profiling works, you may wish to read
a description of its implementation.
@xref{Implementation}.
@node Compiling
@chapter Compiling a Program for Profiling
The first step in generating profile information for your program is
to compile and link it with profiling enabled.
To compile a source file for profiling, specify the @samp{-pg} option when
you run the compiler. (This is in addition to the options you normally
use.)
To link the program for profiling, if you use a compiler such as @code{cc}
to do the linking, simply specify @samp{-pg} in addition to your usual
options. The same option, @samp{-pg}, alters either compilation or linking
to do what is necessary for profiling. Here are examples:
@example
cc -g -c myprog.c utils.c -pg
cc -o myprog myprog.o utils.o -pg
@end example
The @samp{-pg} option also works with a command that both compiles and links:
@example
cc -o myprog myprog.c utils.c -g -pg
@end example
If you run the linker @code{ld} directly instead of through a compiler
such as @code{cc}, you may have to specify a profiling startup file
@file{gcrt0.o} as the first input file instead of the usual startup
file @file{crt0.o}. In addition, you would probably want to
specify the profiling C library, @file{libc_p.a}, by writing
@samp{-lc_p} instead of the usual @samp{-lc}. This is not absolutely
necessary, but doing this gives you number-of-calls information for
standard library functions such as @code{read} and @code{open}. For
example:
@example
ld -o myprog /lib/gcrt0.o myprog.o utils.o -lc_p
@end example
If you compile only some of the modules of the program with @samp{-pg}, you
can still profile the program, but you won't get complete information about
the modules that were compiled without @samp{-pg}. The only information
you get for the functions in those modules is the total time spent in them;
there is no record of how many times they were called, or from where. This
will not affect the flat profile (except that the @code{calls} field for
the functions will be blank), but will greatly reduce the usefulness of the
call graph.
If you wish to perform line-by-line profiling,
you will also need to specify the @samp{-g} option,
instructing the compiler to insert debugging symbols into the program
that match program addresses to source code lines.
@xref{Line-by-line}.
In addition to the @samp{-pg} and @samp{-g} options,
you may also wish to specify the @samp{-a} option when compiling.
This will instrument
the program to perform basic-block counting. As the program runs,
it will count how many times it executed each branch of each @samp{if}
statement, each iteration of each @samp{do} loop, etc. This will
enable @code{gprof} to construct an annotated source code
listing showing how many times each line of code was executed.
@node Executing
@chapter Executing the Program
Once the program is compiled for profiling, you must run it in order to
generate the information that @code{gprof} needs. Simply run the program
as usual, using the normal arguments, file names, etc. The program should
run normally, producing the same output as usual. It will, however, run
somewhat slower than normal because of the time spent collecting and the
writing the profile data.
The way you run the program---the arguments and input that you give
it---may have a dramatic effect on what the profile information shows. The
profile data will describe the parts of the program that were activated for
the particular input you use. For example, if the first command you give
to your program is to quit, the profile data will show the time used in
initialization and in cleanup, but not much else.
Your program will write the profile data into a file called @file{gmon.out}
just before exiting. If there is already a file called @file{gmon.out},
its contents are overwritten. There is currently no way to tell the
program to write the profile data under a different name, but you can rename
the file afterward if you are concerned that it may be overwritten.
In order to write the @file{gmon.out} file properly, your program must exit
normally: by returning from @code{main} or by calling @code{exit}. Calling
the low-level function @code{_exit} does not write the profile data, and
neither does abnormal termination due to an unhandled signal.
The @file{gmon.out} file is written in the program's @emph{current working
directory} at the time it exits. This means that if your program calls
@code{chdir}, the @file{gmon.out} file will be left in the last directory
your program @code{chdir}'d to. If you don't have permission to write in
this directory, the file is not written, and you will get an error message.
Older versions of the @sc{gnu} profiling library may also write a file
called @file{bb.out}. This file, if present, contains an human-readable
listing of the basic-block execution counts. Unfortunately, the
appearance of a human-readable @file{bb.out} means the basic-block
counts didn't get written into @file{gmon.out}.
The Perl script @code{bbconv.pl}, included with the @code{gprof}
source distribution, will convert a @file{bb.out} file into
a format readable by @code{gprof}.
@node Invoking
@chapter @code{gprof} Command Summary
After you have a profile data file @file{gmon.out}, you can run @code{gprof}
to interpret the information in it. The @code{gprof} program prints a
flat profile and a call graph on standard output. Typically you would
redirect the output of @code{gprof} into a file with @samp{>}.
You run @code{gprof} like this:
@smallexample
gprof @var{options} [@var{executable-file} [@var{profile-data-files}@dots{}]] [> @var{outfile}]
@end smallexample
@noindent
Here square-brackets indicate optional arguments.
If you omit the executable file name, the file @file{a.out} is used. If
you give no profile data file name, the file @file{gmon.out} is used. If
any file is not in the proper format, or if the profile data file does not
appear to belong to the executable file, an error message is printed.
You can give more than one profile data file by entering all their names
after the executable file name; then the statistics in all the data files
are summed together.
The order of these options does not matter.
@menu
* Output Options:: Controlling @code{gprof}'s output style
* Analysis Options:: Controlling how @code{gprof} analyses its data
* Miscellaneous Options::
* Depricated Options:: Options you no longer need to use, but which
have been retained for compatibility
* Symspecs:: Specifying functions to include or exclude
@end menu
@node Output Options,Analysis Options,,Invoking
@section Output Options
These options specify which of several output formats
@code{gprof} should produce.
Many of these options take an optional @dfn{symspec} to specify
functions to be included or excluded. These options can be
specified multiple times, with different symspecs, to include
or exclude sets of symbols. @xref{Symspecs}.
Specifying any of these options overrides the default (@samp{-p -q}),
which prints a flat profile and call graph analysis
for all functions.
@table @code
@item -A[@var{symspec}]
@itemx --annotated-source[=@var{symspec}]
The @samp{-A} option causes @code{gprof} to print annotated source code.
If @var{symspec} is specified, print output only for matching symbols.
@xref{Annotated Source}.
@item -b
@itemx --brief
If the @samp{-b} option is given, @code{gprof} doesn't print the
verbose blurbs that try to explain the meaning of all of the fields in
the tables. This is useful if you intend to print out the output, or
are tired of seeing the blurbs.
@item -C[@var{symspec}]
@itemx --exec-counts[=@var{symspec}]
The @samp{-C} option causes @code{gprof} to
print a tally of functions and the number of times each was called.
If @var{symspec} is specified, print tally only for matching symbols.
If the profile data file contains basic-block count records, specifing
the @samp{-l} option, along with @samp{-C}, will cause basic-block
execution counts to be tallied and displayed.
@item -i
@itemx --file-info
The @samp{-i} option causes @code{gprof} to display summary information
about the profile data file(s) and then exit. The number of histogram,
call graph, and basic-block count records is displayed.
@item -I @var{dirs}
@itemx --directory-path=@var{dirs}
The @samp{-I} option specifies a list of search directories in
which to find source files. Environment variable @var{GPROF_PATH}
can also be used to convery this information.
Used mostly for annotated source output.
@item -J[@var{symspec}]
@itemx --no-annotated-source[=@var{symspec}]
The @samp{-J} option causes @code{gprof} not to
print annotated source code.
If @var{symspec} is specified, @code{gprof} prints annotated source,
but excludes matching symbols.
@item -L
@itemx --print-path
Normally, source filenames are printed with the path
component suppressed. The @samp{-L} option causes @code{gprof}
to print the full pathname of
source filenames, which is determined
from symbolic debugging information in the image file
and is relative to the directory in which the compiler
was invoked.
@item -p[@var{symspec}]
@itemx --flat-profile[=@var{symspec}]
The @samp{-p} option causes @code{gprof} to print a flat profile.
If @var{symspec} is specified, print flat profile only for matching symbols.
@xref{Flat Profile}.
@item -P[@var{symspec}]
@itemx --no-flat-profile[=@var{symspec}]
The @samp{-P} option causes @code{gprof} to suppress printing a flat profile.
If @var{symspec} is specified, @code{gprof} prints a flat profile,
but excludes matching symbols.
@item -q[@var{symspec}]
@itemx --graph[=@var{symspec}]
The @samp{-q} option causes @code{gprof} to print the call graph analysis.
If @var{symspec} is specified, print call graph only for matching symbols
and their children.
@xref{Call Graph}.
@item -Q[@var{symspec}]
@itemx --no-graph[=@var{symspec}]
The @samp{-Q} option causes @code{gprof} to suppress printing the
call graph.
If @var{symspec} is specified, @code{gprof} prints a call graph,
but excludes matching symbols.
@item -y
@itemx --separate-files
This option affects annotated source output only.
Normally, gprof prints annotated source files
to standard-output. If this option is specified,
annotated source for a file named @file{path/filename}
is generated in the file @file{filename-ann}.
@item -Z[@var{symspec}]
@itemx --no-exec-counts[=@var{symspec}]
The @samp{-Z} option causes @code{gprof} not to
print a tally of functions and the number of times each was called.
If @var{symspec} is specified, print tally, but exclude matching symbols.
@item --function-ordering
The @samp{--function-ordering} option causes @code{gprof} to print a
suggested function ordering for the program based on profiling data.
This option suggests an ordering which may improve paging, tlb and
cache behavior for the program on systems which support arbitrary
ordering of functions in an executable.
The exact details of how to force the linker to place functions
in a particular order is system dependent and out of the scope of this
manual.
@item --file-ordering @var{map_file}
The @samp{--file-ordering} option causes @code{gprof} to print a
suggested .o link line ordering for the program based on profiling data.
This option suggests an ordering which may improve paging, tlb and
cache behavior for the program on systems which do not support arbitrary
ordering of functions in an executable.
Use of the @samp{-a} argument is highly recommended with this option.
The @var{map_file} argument is a pathname to a file which provides
function name to object file mappings. The format of the file is similar to
the output of the program @code{nm}.
@smallexample
@group
c-parse.o:00000000 T yyparse
c-parse.o:00000004 C yyerrflag
c-lang.o:00000000 T maybe_objc_method_name
c-lang.o:00000000 T print_lang_statistics
c-lang.o:00000000 T recognize_objc_keyword
c-decl.o:00000000 T print_lang_identifier
c-decl.o:00000000 T print_lang_type
@dots{}
@end group
@end smallexample
GNU @code{nm} @samp{--extern-only} @samp{--defined-only} @samp{-v} @samp{--print-file-name} can be used to create @var{map_file}.
@item -T
@itemx --traditional
The @samp{-T} option causes @code{gprof} to print its output in
``traditional'' BSD style.
@item -w @var{width}
@itemx --width=@var{width}
Sets width of output lines to @var{width}.
Currently only used when printing the function index at the bottom
of the call graph.
@item -x
@itemx --all-lines
This option affects annotated source output only.
By default, only the lines at the beginning of a basic-block
are annotated. If this option is specified, every line in
a basic-block is annotated by repeating the annotation for the
first line. This behavior is similar to @code{tcov}'s @samp{-a}.
@end table
@node Analysis Options,Miscellaneous Options,Output Options,Invoking
@section Analysis Options
@table @code
@item -a
@itemx --no-static
The @samp{-a} option causes @code{gprof} to suppress the printing of
statically declared (private) functions. (These are functions whose
names are not listed as global, and which are not visible outside the
file/function/block where they were defined.) Time spent in these
functions, calls to/from them, etc, will all be attributed to the
function that was loaded directly before it in the executable file.
@c This is compatible with Unix @code{gprof}, but a bad idea.
This option affects both the flat profile and the call graph.
@item -c
@itemx --static-call-graph
The @samp{-c} option causes the call graph of the program to be
augmented by a heuristic which examines the text space of the object
file and identifies function calls in the binary machine code.
Since normal call graph records are only generated when functions are
entered, this option identifies children that could have been called,
but never were. Calls to functions that were not compiled with
profiling enabled are also identified, but only if symbol table
entries are present for them.
Calls to dynamic library routines are typically @emph{not} found
by this option.
Parents or children identified via this heuristic
are indicated in the call graph with call counts of @samp{0}.
@item -D
@itemx --ignore-non-functions
The @samp{-D} option causes @code{gprof} to ignore symbols which
are not known to be functions. This option will give more accurate
profile data on systems where it is supported (Solaris and HPUX for
example).
@item -k @var{from}/@var{to}
The @samp{-k} option allows you to delete from the call graph any arcs from
symbols matching symspec @var{from} to those matching symspec @var{to}.
@item -l
@itemx --line
The @samp{-l} option enables line-by-line profiling, which causes
histogram hits to be charged to individual source code lines,
instead of functions.
If the program was compiled with basic-block counting enabled,
this option will also identify how many times each line of
code was executed.
While line-by-line profiling can help isolate where in a large function
a program is spending its time, it also significantly increases
the running time of @code{gprof}, and magnifies statistical
inaccuracies.
@xref{Sampling Error}.
@item -m @var{num}
@itemx --min-count=@var{num}
This option affects execution count output only.
Symbols that are executed less than @var{num} times are suppressed.
@item -n[@var{symspec}]
@itemx --time[=@var{symspec}]
The @samp{-n} option causes @code{gprof}, in its call graph analysis,
to only propagate times for symbols matching @var{symspec}.
@item -N[@var{symspec}]
@itemx --no-time[=@var{symspec}]
The @samp{-n} option causes @code{gprof}, in its call graph analysis,
not to propagate times for symbols matching @var{symspec}.
@item -z
@itemx --display-unused-functions
If you give the @samp{-z} option, @code{gprof} will mention all
functions in the flat profile, even those that were never called, and
that had no time spent in them. This is useful in conjunction with the
@samp{-c} option for discovering which routines were never called.
@end table
@node Miscellaneous Options,Depricated Options,Analysis Options,Invoking
@section Miscellaneous Options
@table @code
@item -d[@var{num}]
@itemx --debug[=@var{num}]
The @samp{-d @var{num}} option specifies debugging options.
If @var{num} is not specified, enable all debugging.
@xref{Debugging}.
@item -O@var{name}
@itemx --file-format=@var{name}
Selects the format of the profile data files.
Recognized formats are @samp{auto} (the default), @samp{bsd}, @samp{magic},
and @samp{prof} (not yet supported).
@item -s
@itemx --sum
The @samp{-s} option causes @code{gprof} to summarize the information
in the profile data files it read in, and write out a profile data
file called @file{gmon.sum}, which contains all the information from
the profile data files that @code{gprof} read in. The file @file{gmon.sum}
may be one of the specified input files; the effect of this is to
merge the data in the other input files into @file{gmon.sum}.
Eventually you can run @code{gprof} again without @samp{-s} to analyze the
cumulative data in the file @file{gmon.sum}.
@item -v
@itemx --version
The @samp{-v} flag causes @code{gprof} to print the current version
number, and then exit.
@end table
@node Depricated Options,Symspecs,Miscellaneous Options,Invoking
@section Depricated Options
@table @code
These options have been replaced with newer versions that use symspecs.
@item -e @var{function_name}
The @samp{-e @var{function}} option tells @code{gprof} to not print
information about the function @var{function_name} (and its
children@dots{}) in the call graph. The function will still be listed
as a child of any functions that call it, but its index number will be
shown as @samp{[not printed]}. More than one @samp{-e} option may be
given; only one @var{function_name} may be indicated with each @samp{-e}
option.
@item -E @var{function_name}
The @code{-E @var{function}} option works like the @code{-e} option, but
time spent in the function (and children who were not called from
anywhere else), will not be used to compute the percentages-of-time for
the call graph. More than one @samp{-E} option may be given; only one
@var{function_name} may be indicated with each @samp{-E} option.
@item -f @var{function_name}
The @samp{-f @var{function}} option causes @code{gprof} to limit the
call graph to the function @var{function_name} and its children (and
their children@dots{}). More than one @samp{-f} option may be given;
only one @var{function_name} may be indicated with each @samp{-f}
option.
@item -F @var{function_name}
The @samp{-F @var{function}} option works like the @code{-f} option, but
only time spent in the function and its children (and their
children@dots{}) will be used to determine total-time and
percentages-of-time for the call graph. More than one @samp{-F} option
may be given; only one @var{function_name} may be indicated with each
@samp{-F} option. The @samp{-F} option overrides the @samp{-E} option.
@end table
Note that only one function can be specified with each @code{-e},
@code{-E}, @code{-f} or @code{-F} option. To specify more than one
function, use multiple options. For example, this command:
@example
gprof -e boring -f foo -f bar myprogram > gprof.output
@end example
@noindent
lists in the call graph all functions that were reached from either
@code{foo} or @code{bar} and were not reachable from @code{boring}.
@node Symspecs,,Depricated Options,Invoking
@section Symspecs
Many of the output options allow functions to be included or excluded
using @dfn{symspecs} (symbol specifications), which observe the
following syntax:
@example
filename_containing_a_dot
| funcname_not_containing_a_dot
| linenumber
| ( [ any_filename ] `:' ( any_funcname | linenumber ) )
@end example
Here are some sample symspecs:
@table @code
@item main.c
Selects everything in file "main.c"---the
dot in the string tells gprof to interpret
the string as a filename, rather than as
a function name. To select a file whose
name does not contain a dot, a trailing colon
should be specified. For example, "odd:" is
interpreted as the file named "odd".
@item main
Selects all functions named "main". Notice
that there may be multiple instances of the
same function name because some of the
definitions may be local (i.e., static).
Unless a function name is unique in a program,
you must use the colon notation explained
below to specify a function from a specific
source file. Sometimes, function names contain
dots. In such cases, it is necessar to
add a leading colon to the name. For example,
":.mul" selects function ".mul".
@item main.c:main
Selects function "main" in file "main.c".
@item main.c:134
Selects line 134 in file "main.c".
@end table
@node Output
@chapter Interpreting @code{gprof}'s Output
@code{gprof} can produce several different output styles, the
most important of which are described below. The simplest output
styles (file information, execution count, and function and file ordering)
are not described here, but are documented with the respective options
that trigger them.
@xref{Output Options}.
@menu
* Flat Profile:: The flat profile shows how much time was spent
executing directly in each function.
* Call Graph:: The call graph shows which functions called which
others, and how much time each function used
when its subroutine calls are included.
* Line-by-line:: @code{gprof} can analyze individual source code lines
* Annotated Source:: The annotated source listing displays source code
labeled with execution counts
@end menu
@node Flat Profile,Call Graph,,Output
@section The Flat Profile
@cindex flat profile
The @dfn{flat profile} shows the total amount of time your program
spent executing each function. Unless the @samp{-z} option is given,
functions with no apparent time spent in them, and no apparent calls
to them, are not mentioned. Note that if a function was not compiled
for profiling, and didn't run long enough to show up on the program
counter histogram, it will be indistinguishable from a function that
was never called.
This is part of a flat profile for a small program:
@smallexample
@group
Flat profile:
Each sample counts as 0.01 seconds.
% cumulative self self total
time seconds seconds calls ms/call ms/call name
33.34 0.02 0.02 7208 0.00 0.00 open
16.67 0.03 0.01 244 0.04 0.12 offtime
16.67 0.04 0.01 8 1.25 1.25 memccpy
16.67 0.05 0.01 7 1.43 1.43 write
16.67 0.06 0.01 mcount
0.00 0.06 0.00 236 0.00 0.00 tzset
0.00 0.06 0.00 192 0.00 0.00 tolower
0.00 0.06 0.00 47 0.00 0.00 strlen
0.00 0.06 0.00 45 0.00 0.00 strchr
0.00 0.06 0.00 1 0.00 50.00 main
0.00 0.06 0.00 1 0.00 0.00 memcpy
0.00 0.06 0.00 1 0.00 10.11 print
0.00 0.06 0.00 1 0.00 0.00 profil
0.00 0.06 0.00 1 0.00 50.00 report
@dots{}
@end group
@end smallexample
@noindent
The functions are sorted by first by decreasing run-time spent in them,
then by decreasing number of calls, then alphabetically by name. The
functions @samp{mcount} and @samp{profil} are part of the profiling
aparatus and appear in every flat profile; their time gives a measure of
the amount of overhead due to profiling.
Just before the column headers, a statement appears indicating
how much time each sample counted as.
This @dfn{sampling period} estimates the margin of error in each of the time
figures. A time figure that is not much larger than this is not
reliable. In this example, each sample counted as 0.01 seconds,
suggesting a 100 Hz sampling rate.
The program's total execution time was 0.06
seconds, as indicated by the @samp{cumulative seconds} field. Since
each sample counted for 0.01 seconds, this means only six samples
were taken during the run. Two of the samples occured while the
program was in the @samp{open} function, as indicated by the
@samp{self seconds} field. Each of the other four samples
occured one each in @samp{offtime}, @samp{memccpy}, @samp{write},
and @samp{mcount}.
Since only six samples were taken, none of these values can
be regarded as particularly reliable.
In another run,
the @samp{self seconds} field for
@samp{mcount} might well be @samp{0.00} or @samp{0.02}.
@xref{Sampling Error}, for a complete discussion.
The remaining functions in the listing (those whose
@samp{self seconds} field is @samp{0.00}) didn't appear
in the histogram samples at all. However, the call graph
indicated that they were called, so therefore they are listed,
sorted in decreasing order by the @samp{calls} field.
Clearly some time was spent executing these functions,
but the paucity of histogram samples prevents any
determination of how much time each took.
Here is what the fields in each line mean:
@table @code
@item % time
This is the percentage of the total execution time your program spent
in this function. These should all add up to 100%.
@item cumulative seconds
This is the cumulative total number of seconds the computer spent
executing this functions, plus the time spent in all the functions
above this one in this table.
@item self seconds
This is the number of seconds accounted for by this function alone.
The flat profile listing is sorted first by this number.
@item calls
This is the total number of times the function was called. If the
function was never called, or the number of times it was called cannot
be determined (probably because the function was not compiled with
profiling enabled), the @dfn{calls} field is blank.
@item self ms/call
This represents the average number of milliseconds spent in this
function per call, if this function is profiled. Otherwise, this field
is blank for this function.
@item total ms/call
This represents the average number of milliseconds spent in this
function and its descendants per call, if this function is profiled.
Otherwise, this field is blank for this function.
This is the only field in the flat profile that uses call graph analysis.
@item name
This is the name of the function. The flat profile is sorted by this
field alphabetically after the @dfn{self seconds} and @dfn{calls}
fields are sorted.
@end table
@node Call Graph,Line-by-line,Flat Profile,Output
@section The Call Graph
@cindex call graph
The @dfn{call graph} shows how much time was spent in each function
and its children. From this information, you can find functions that,
while they themselves may not have used much time, called other
functions that did use unusual amounts of time.
Here is a sample call from a small program. This call came from the
same @code{gprof} run as the flat profile example in the previous
chapter.
@smallexample
@group
granularity: each sample hit covers 2 byte(s) for 20.00% of 0.05 seconds
index % time self children called name
<spontaneous>
[1] 100.0 0.00 0.05 start [1]
0.00 0.05 1/1 main [2]
0.00 0.00 1/2 on_exit [28]
0.00 0.00 1/1 exit [59]
-----------------------------------------------
0.00 0.05 1/1 start [1]
[2] 100.0 0.00 0.05 1 main [2]
0.00 0.05 1/1 report [3]
-----------------------------------------------
0.00 0.05 1/1 main [2]
[3] 100.0 0.00 0.05 1 report [3]
0.00 0.03 8/8 timelocal [6]
0.00 0.01 1/1 print [9]
0.00 0.01 9/9 fgets [12]
0.00 0.00 12/34 strncmp <cycle 1> [40]
0.00 0.00 8/8 lookup [20]
0.00 0.00 1/1 fopen [21]
0.00 0.00 8/8 chewtime [24]
0.00 0.00 8/16 skipspace [44]
-----------------------------------------------
[4] 59.8 0.01 0.02 8+472 <cycle 2 as a whole> [4]
0.01 0.02 244+260 offtime <cycle 2> [7]
0.00 0.00 236+1 tzset <cycle 2> [26]
-----------------------------------------------
@end group
@end smallexample
The lines full of dashes divide this table into @dfn{entries}, one for each
function. Each entry has one or more lines.
In each entry, the primary line is the one that starts with an index number
in square brackets. The end of this line says which function the entry is
for. The preceding lines in the entry describe the callers of this
function and the following lines describe its subroutines (also called
@dfn{children} when we speak of the call graph).
The entries are sorted by time spent in the function and its subroutines.
The internal profiling function @code{mcount} (@pxref{Flat Profile})
is never mentioned in the call graph.
@menu
* Primary:: Details of the primary line's contents.
* Callers:: Details of caller-lines' contents.
* Subroutines:: Details of subroutine-lines' contents.
* Cycles:: When there are cycles of recursion,
such as @code{a} calls @code{b} calls @code{a}@dots{}
@end menu
@node Primary
@subsection The Primary Line
The @dfn{primary line} in a call graph entry is the line that
describes the function which the entry is about and gives the overall
statistics for this function.
For reference, we repeat the primary line from the entry for function
@code{report} in our main example, together with the heading line that
shows the names of the fields:
@smallexample
@group
index % time self children called name
@dots{}
[3] 100.0 0.00 0.05 1 report [3]
@end group
@end smallexample
Here is what the fields in the primary line mean:
@table @code
@item index
Entries are numbered with consecutive integers. Each function
therefore has an index number, which appears at the beginning of its
primary line.
Each cross-reference to a function, as a caller or subroutine of
another, gives its index number as well as its name. The index number
guides you if you wish to look for the entry for that function.
@item % time
This is the percentage of the total time that was spent in this
function, including time spent in subroutines called from this
function.
The time spent in this function is counted again for the callers of
this function. Therefore, adding up these percentages is meaningless.
@item self
This is the total amount of time spent in this function. This
should be identical to the number printed in the @code{seconds} field
for this function in the flat profile.
@item children
This is the total amount of time spent in the subroutine calls made by
this function. This should be equal to the sum of all the @code{self}
and @code{children} entries of the children listed directly below this
function.
@item called
This is the number of times the function was called.
If the function called itself recursively, there are two numbers,
separated by a @samp{+}. The first number counts non-recursive calls,
and the second counts recursive calls.
In the example above, the function @code{report} was called once from
@code{main}.
@item name
This is the name of the current function. The index number is
repeated after it.
If the function is part of a cycle of recursion, the cycle number is
printed between the function's name and the index number
(@pxref{Cycles}). For example, if function @code{gnurr} is part of
cycle number one, and has index number twelve, its primary line would
be end like this:
@example
gnurr <cycle 1> [12]
@end example
@end table
@node Callers, Subroutines, Primary, Call Graph
@subsection Lines for a Function's Callers
A function's entry has a line for each function it was called by.
These lines' fields correspond to the fields of the primary line, but
their meanings are different because of the difference in context.
For reference, we repeat two lines from the entry for the function
@code{report}, the primary line and one caller-line preceding it, together
with the heading line that shows the names of the fields:
@smallexample
index % time self children called name
@dots{}
0.00 0.05 1/1 main [2]
[3] 100.0 0.00 0.05 1 report [3]
@end smallexample
Here are the meanings of the fields in the caller-line for @code{report}
called from @code{main}:
@table @code
@item self
An estimate of the amount of time spent in @code{report} itself when it was
called from @code{main}.
@item children
An estimate of the amount of time spent in subroutines of @code{report}
when @code{report} was called from @code{main}.
The sum of the @code{self} and @code{children} fields is an estimate
of the amount of time spent within calls to @code{report} from @code{main}.
@item called
Two numbers: the number of times @code{report} was called from @code{main},
followed by the total number of nonrecursive calls to @code{report} from
all its callers.
@item name and index number
The name of the caller of @code{report} to which this line applies,
followed by the caller's index number.
Not all functions have entries in the call graph; some
options to @code{gprof} request the omission of certain functions.
When a caller has no entry of its own, it still has caller-lines
in the entries of the functions it calls.
If the caller is part of a recursion cycle, the cycle number is
printed between the name and the index number.
@end table
If the identity of the callers of a function cannot be determined, a
dummy caller-line is printed which has @samp{<spontaneous>} as the
``caller's name'' and all other fields blank. This can happen for
signal handlers.
@c What if some calls have determinable callers' names but not all?
@c FIXME - still relevant?
@node Subroutines, Cycles, Callers, Call Graph
@subsection Lines for a Function's Subroutines
A function's entry has a line for each of its subroutines---in other
words, a line for each other function that it called. These lines'
fields correspond to the fields of the primary line, but their meanings
are different because of the difference in context.
For reference, we repeat two lines from the entry for the function
@code{main}, the primary line and a line for a subroutine, together
with the heading line that shows the names of the fields:
@smallexample
index % time self children called name
@dots{}
[2] 100.0 0.00 0.05 1 main [2]
0.00 0.05 1/1 report [3]
@end smallexample
Here are the meanings of the fields in the subroutine-line for @code{main}
calling @code{report}:
@table @code
@item self
An estimate of the amount of time spent directly within @code{report}
when @code{report} was called from @code{main}.
@item children
An estimate of the amount of time spent in subroutines of @code{report}
when @code{report} was called from @code{main}.
The sum of the @code{self} and @code{children} fields is an estimate
of the total time spent in calls to @code{report} from @code{main}.
@item called
Two numbers, the number of calls to @code{report} from @code{main}
followed by the total number of nonrecursive calls to @code{report}.
This ratio is used to determine how much of @code{report}'s @code{self}
and @code{children} time gets credited to @code{main}.
@xref{Assumptions}.
@item name
The name of the subroutine of @code{main} to which this line applies,
followed by the subroutine's index number.
If the caller is part of a recursion cycle, the cycle number is
printed between the name and the index number.
@end table
@node Cycles,, Subroutines, Call Graph
@subsection How Mutually Recursive Functions Are Described
@cindex cycle
@cindex recursion cycle
The graph may be complicated by the presence of @dfn{cycles of
recursion} in the call graph. A cycle exists if a function calls
another function that (directly or indirectly) calls (or appears to
call) the original function. For example: if @code{a} calls @code{b},
and @code{b} calls @code{a}, then @code{a} and @code{b} form a cycle.
Whenever there are call paths both ways between a pair of functions, they
belong to the same cycle. If @code{a} and @code{b} call each other and
@code{b} and @code{c} call each other, all three make one cycle. Note that
even if @code{b} only calls @code{a} if it was not called from @code{a},
@code{gprof} cannot determine this, so @code{a} and @code{b} are still
considered a cycle.
The cycles are numbered with consecutive integers. When a function
belongs to a cycle, each time the function name appears in the call graph
it is followed by @samp{<cycle @var{number}>}.
The reason cycles matter is that they make the time values in the call
graph paradoxical. The ``time spent in children'' of @code{a} should
include the time spent in its subroutine @code{b} and in @code{b}'s
subroutines---but one of @code{b}'s subroutines is @code{a}! How much of
@code{a}'s time should be included in the children of @code{a}, when
@code{a} is indirectly recursive?
The way @code{gprof} resolves this paradox is by creating a single entry
for the cycle as a whole. The primary line of this entry describes the
total time spent directly in the functions of the cycle. The
``subroutines'' of the cycle are the individual functions of the cycle, and
all other functions that were called directly by them. The ``callers'' of
the cycle are the functions, outside the cycle, that called functions in
the cycle.
Here is an example portion of a call graph which shows a cycle containing
functions @code{a} and @code{b}. The cycle was entered by a call to
@code{a} from @code{main}; both @code{a} and @code{b} called @code{c}.
@smallexample
index % time self children called name
----------------------------------------
1.77 0 1/1 main [2]
[3] 91.71 1.77 0 1+5 <cycle 1 as a whole> [3]
1.02 0 3 b <cycle 1> [4]
0.75 0 2 a <cycle 1> [5]
----------------------------------------
3 a <cycle 1> [5]
[4] 52.85 1.02 0 0 b <cycle 1> [4]
2 a <cycle 1> [5]
0 0 3/6 c [6]
----------------------------------------
1.77 0 1/1 main [2]
2 b <cycle 1> [4]
[5] 38.86 0.75 0 1 a <cycle 1> [5]
3 b <cycle 1> [4]
0 0 3/6 c [6]
----------------------------------------
@end smallexample
@noindent
(The entire call graph for this program contains in addition an entry for
@code{main}, which calls @code{a}, and an entry for @code{c}, with callers
@code{a} and @code{b}.)
@smallexample
index % time self children called name
<spontaneous>
[1] 100.00 0 1.93 0 start [1]
0.16 1.77 1/1 main [2]
----------------------------------------
0.16 1.77 1/1 start [1]
[2] 100.00 0.16 1.77 1 main [2]
1.77 0 1/1 a <cycle 1> [5]
----------------------------------------
1.77 0 1/1 main [2]
[3] 91.71 1.77 0 1+5 <cycle 1 as a whole> [3]
1.02 0 3 b <cycle 1> [4]
0.75 0 2 a <cycle 1> [5]
0 0 6/6 c [6]
----------------------------------------
3 a <cycle 1> [5]
[4] 52.85 1.02 0 0 b <cycle 1> [4]
2 a <cycle 1> [5]
0 0 3/6 c [6]
----------------------------------------
1.77 0 1/1 main [2]
2 b <cycle 1> [4]
[5] 38.86 0.75 0 1 a <cycle 1> [5]
3 b <cycle 1> [4]
0 0 3/6 c [6]
----------------------------------------
0 0 3/6 b <cycle 1> [4]
0 0 3/6 a <cycle 1> [5]
[6] 0.00 0 0 6 c [6]
----------------------------------------
@end smallexample
The @code{self} field of the cycle's primary line is the total time
spent in all the functions of the cycle. It equals the sum of the
@code{self} fields for the individual functions in the cycle, found
in the entry in the subroutine lines for these functions.
The @code{children} fields of the cycle's primary line and subroutine lines
count only subroutines outside the cycle. Even though @code{a} calls
@code{b}, the time spent in those calls to @code{b} is not counted in
@code{a}'s @code{children} time. Thus, we do not encounter the problem of
what to do when the time in those calls to @code{b} includes indirect
recursive calls back to @code{a}.
The @code{children} field of a caller-line in the cycle's entry estimates
the amount of time spent @emph{in the whole cycle}, and its other
subroutines, on the times when that caller called a function in the cycle.
The @code{calls} field in the primary line for the cycle has two numbers:
first, the number of times functions in the cycle were called by functions
outside the cycle; second, the number of times they were called by
functions in the cycle (including times when a function in the cycle calls
itself). This is a generalization of the usual split into nonrecursive and
recursive calls.
The @code{calls} field of a subroutine-line for a cycle member in the
cycle's entry says how many time that function was called from functions in
the cycle. The total of all these is the second number in the primary line's
@code{calls} field.
In the individual entry for a function in a cycle, the other functions in
the same cycle can appear as subroutines and as callers. These lines show
how many times each function in the cycle called or was called from each other
function in the cycle. The @code{self} and @code{children} fields in these
lines are blank because of the difficulty of defining meanings for them
when recursion is going on.
@node Line-by-line,Annotated Source,Call Graph,Output
@section Line-by-line Profiling
@code{gprof}'s @samp{-l} option causes the program to perform
@dfn{line-by-line} profiling. In this mode, histogram
samples are assigned not to functions, but to individual
lines of source code. The program usually must be compiled
with a @samp{-g} option, in addition to @samp{-pg}, in order
to generate debugging symbols for tracking source code lines.
The flat profile is the most useful output table
in line-by-line mode.
The call graph isn't as useful as normal, since
the current version of @code{gprof} does not propagate
call graph arcs from source code lines to the enclosing function.
The call graph does, however, show each line of code
that called each function, along with a count.
Here is a section of @code{gprof}'s output, without line-by-line profiling.
Note that @code{ct_init} accounted for four histogram hits, and
13327 calls to @code{init_block}.
@smallexample
Flat profile:
Each sample counts as 0.01 seconds.
% cumulative self self total
time seconds seconds calls us/call us/call name
30.77 0.13 0.04 6335 6.31 6.31 ct_init
Call graph (explanation follows)
granularity: each sample hit covers 4 byte(s) for 7.69% of 0.13 seconds
index % time self children called name
0.00 0.00 1/13496 name_too_long
0.00 0.00 40/13496 deflate
0.00 0.00 128/13496 deflate_fast
0.00 0.00 13327/13496 ct_init
[7] 0.0 0.00 0.00 13496 init_block
@end smallexample
Now let's look at some of @code{gprof}'s output from the same program run,
this time with line-by-line profiling enabled. Note that @code{ct_init}'s
four histogram hits are broken down into four lines of source code - one hit
occured on each of lines 349, 351, 382 and 385. In the call graph,
note how
@code{ct_init}'s 13327 calls to @code{init_block} are broken down
into one call from line 396, 3071 calls from line 384, 3730 calls
from line 385, and 6525 calls from 387.
@smallexample
Flat profile:
Each sample counts as 0.01 seconds.
% cumulative self
time seconds seconds calls name
7.69 0.10 0.01 ct_init (trees.c:349)
7.69 0.11 0.01 ct_init (trees.c:351)
7.69 0.12 0.01 ct_init (trees.c:382)
7.69 0.13 0.01 ct_init (trees.c:385)
Call graph (explanation follows)
granularity: each sample hit covers 4 byte(s) for 7.69% of 0.13 seconds
% time self children called name
0.00 0.00 1/13496 name_too_long (gzip.c:1440)
0.00 0.00 1/13496 deflate (deflate.c:763)
0.00 0.00 1/13496 ct_init (trees.c:396)
0.00 0.00 2/13496 deflate (deflate.c:727)
0.00 0.00 4/13496 deflate (deflate.c:686)
0.00 0.00 5/13496 deflate (deflate.c:675)
0.00 0.00 12/13496 deflate (deflate.c:679)
0.00 0.00 16/13496 deflate (deflate.c:730)
0.00 0.00 128/13496 deflate_fast (deflate.c:654)
0.00 0.00 3071/13496 ct_init (trees.c:384)
0.00 0.00 3730/13496 ct_init (trees.c:385)
0.00 0.00 6525/13496 ct_init (trees.c:387)
[6] 0.0 0.00 0.00 13496 init_block (trees.c:408)
@end smallexample
@node Annotated Source,,Line-by-line,Output
@section The Annotated Source Listing
@code{gprof}'s @samp{-A} option triggers an annotated source listing,
which lists the program's source code, each function labeled with the
number of times it was called. You may also need to specify the
@samp{-I} option, if @code{gprof} can't find the source code files.
Compiling with @samp{gcc @dots{} -g -pg -a} augments your program
with basic-block counting code, in addition to function counting code.
This enables @code{gprof} to determine how many times each line
of code was exeucted.
For example, consider the following function, taken from gzip,
with line numbers added:
@smallexample
1 ulg updcrc(s, n)
2 uch *s;
3 unsigned n;
4 @{
5 register ulg c;
6
7 static ulg crc = (ulg)0xffffffffL;
8
9 if (s == NULL) @{
10 c = 0xffffffffL;
11 @} else @{
12 c = crc;
13 if (n) do @{
14 c = crc_32_tab[...];
15 @} while (--n);
16 @}
17 crc = c;
18 return c ^ 0xffffffffL;
19 @}
@end smallexample
@code{updcrc} has at least five basic-blocks.
One is the function itself. The
@code{if} statement on line 9 generates two more basic-blocks, one
for each branch of the @code{if}. A fourth basic-block results from
the @code{if} on line 13, and the contents of the @code{do} loop form
the fifth basic-block. The compiler may also generate additional
basic-blocks to handle various special cases.
A program augmented for basic-block counting can be analyzed with
@code{gprof -l -A}. I also suggest use of the @samp{-x} option,
which ensures that each line of code is labeled at least once.
Here is @code{updcrc}'s
annotated source listing for a sample @code{gzip} run:
@smallexample
ulg updcrc(s, n)
uch *s;
unsigned n;
2 ->@{
register ulg c;
static ulg crc = (ulg)0xffffffffL;
2 -> if (s == NULL) @{
1 -> c = 0xffffffffL;
1 -> @} else @{
1 -> c = crc;
1 -> if (n) do @{
26312 -> c = crc_32_tab[...];
26312,1,26311 -> @} while (--n);
@}
2 -> crc = c;
2 -> return c ^ 0xffffffffL;
2 ->@}
@end smallexample
In this example, the function was called twice, passing once through
each branch of the @code{if} statement. The body of the @code{do}
loop was executed a total of 26312 times. Note how the @code{while}
statement is annotated. It began execution 26312 times, once for
each iteration through the loop. One of those times (the last time)
it exited, while it branched back to the beginning of the loop 26311 times.
@node Inaccuracy
@chapter Inaccuracy of @code{gprof} Output
@menu
* Sampling Error:: Statistical margins of error
* Assumptions:: Estimating children times
@end menu
@node Sampling Error,Assumptions,,Inaccuracy
@section Statistical Sampling Error
The run-time figures that @code{gprof} gives you are based on a sampling
process, so they are subject to statistical inaccuracy. If a function runs
only a small amount of time, so that on the average the sampling process
ought to catch that function in the act only once, there is a pretty good
chance it will actually find that function zero times, or twice.
By contrast, the number-of-calls and basic-block figures
are derived by counting, not
sampling. They are completely accurate and will not vary from run to run
if your program is deterministic.
The @dfn{sampling period} that is printed at the beginning of the flat
profile says how often samples are taken. The rule of thumb is that a
run-time figure is accurate if it is considerably bigger than the sampling
period.
The actual amount of error can be predicted.
For @var{n} samples, the @emph{expected} error
is the square-root of @var{n}. For example,
if the sampling period is 0.01 seconds and @code{foo}'s run-time is 1 second,
@var{n} is 100 samples (1 second/0.01 seconds), sqrt(@var{n}) is 10 samples, so
the expected error in @code{foo}'s run-time is 0.1 seconds (10*0.01 seconds),
or ten percent of the observed value.
Again, if the sampling period is 0.01 seconds and @code{bar}'s run-time is
100 seconds, @var{n} is 10000 samples, sqrt(@var{n}) is 100 samples, so
the expected error in @code{bar}'s run-time is 1 second,
or one percent of the observed value.
It is likely to
vary this much @emph{on the average} from one profiling run to the next.
(@emph{Sometimes} it will vary more.)
This does not mean that a small run-time figure is devoid of information.
If the program's @emph{total} run-time is large, a small run-time for one
function does tell you that that function used an insignificant fraction of
the whole program's time. Usually this means it is not worth optimizing.
One way to get more accuracy is to give your program more (but similar)
input data so it will take longer. Another way is to combine the data from
several runs, using the @samp{-s} option of @code{gprof}. Here is how:
@enumerate
@item
Run your program once.
@item
Issue the command @samp{mv gmon.out gmon.sum}.
@item
Run your program again, the same as before.
@item
Merge the new data in @file{gmon.out} into @file{gmon.sum} with this command:
@example
gprof -s @var{executable-file} gmon.out gmon.sum
@end example
@item
Repeat the last two steps as often as you wish.
@item
Analyze the cumulative data using this command:
@example
gprof @var{executable-file} gmon.sum > @var{output-file}
@end example
@end enumerate
@node Assumptions,,Sampling Error,Inaccuracy
@section Estimating @code{children} Times
Some of the figures in the call graph are estimates---for example, the
@code{children} time values and all the the time figures in caller and
subroutine lines.
There is no direct information about these measurements in the profile
data itself. Instead, @code{gprof} estimates them by making an assumption
about your program that might or might not be true.
The assumption made is that the average time spent in each call to any
function @code{foo} is not correlated with who called @code{foo}. If
@code{foo} used 5 seconds in all, and 2/5 of the calls to @code{foo} came
from @code{a}, then @code{foo} contributes 2 seconds to @code{a}'s
@code{children} time, by assumption.
This assumption is usually true enough, but for some programs it is far
from true. Suppose that @code{foo} returns very quickly when its argument
is zero; suppose that @code{a} always passes zero as an argument, while
other callers of @code{foo} pass other arguments. In this program, all the
time spent in @code{foo} is in the calls from callers other than @code{a}.
But @code{gprof} has no way of knowing this; it will blindly and
incorrectly charge 2 seconds of time in @code{foo} to the children of
@code{a}.
@c FIXME - has this been fixed?
We hope some day to put more complete data into @file{gmon.out}, so that
this assumption is no longer needed, if we can figure out how. For the
nonce, the estimated figures are usually more useful than misleading.
@node How do I?
@chapter Answers to Common Questions
@table @asis
@item How do I find which lines in my program were executed the most times?
Compile your program with basic-block counting enabled, run it, then
use the following pipeline:
@example
gprof -l -C @var{objfile} | sort -k 3 -n -r
@end example
This listing will show you the lines in your code executed most often,
but not necessarily those that consumed the most time.
@item How do I find which lines in my program called a particular function?
Use @code{gprof -l} and lookup the function in the call graph.
The callers will be broken down by function and line number.
@item How do I analyze a program that runs for less than a second?
Try using a shell script like this one:
@example
for i in `seq 1 100`; do
fastprog
mv gmon.out gmon.out.$i
done
gprof -s fastprog gmon.out.*
gprof fastprog gmon.sum
@end example
If your program is completely deterministic, all the call counts
will be simple multiples of 100 (i.e. a function called once in
each run will appear with a call count of 100).
@end table
@node Incompatibilities
@chapter Incompatibilities with Unix @code{gprof}
@sc{gnu} @code{gprof} and Berkeley Unix @code{gprof} use the same data
file @file{gmon.out}, and provide essentially the same information. But
there are a few differences.
@itemize @bullet
@item
@sc{gnu} @code{gprof} uses a new, generalized file format with support
for basic-block execution counts and non-realtime histograms. A magic
cookie and version number allows @code{gprof} to easily identify
new style files. Old BSD-style files can still be read.
@xref{File Format}.
@item
For a recursive function, Unix @code{gprof} lists the function as a
parent and as a child, with a @code{calls} field that lists the number
of recursive calls. @sc{gnu} @code{gprof} omits these lines and puts
the number of recursive calls in the primary line.
@item
When a function is suppressed from the call graph with @samp{-e}, @sc{gnu}
@code{gprof} still lists it as a subroutine of functions that call it.
@item
@sc{gnu} @code{gprof} accepts the @samp{-k} with its argument
in the form @samp{from/to}, instead of @samp{from to}.
@item
In the annotated source listing,
if there are multiple basic blocks on the same line,
@sc{gnu} @code{gprof} prints all of their counts, seperated by commas.
@ignore - it does this now
@item
The function names printed in @sc{gnu} @code{gprof} output do not include
the leading underscores that are added internally to the front of all
C identifiers on many operating systems.
@end ignore
@item
The blurbs, field widths, and output formats are different. @sc{gnu}
@code{gprof} prints blurbs after the tables, so that you can see the
tables without skipping the blurbs.
@end itemize
@node Details
@chapter Details of Profiling
@menu
* Implementation:: How a program collets profiling information
* File Format:: Format of @samp{gmon.out} files
* Internals:: @code{gprof}'s internal operation
* Debugging:: Using @code{gprof}'s @samp{-d} option
@end menu
@node Implementation,File Format,,Details
@section Implementation of Profiling
Profiling works by changing how every function in your program is compiled
so that when it is called, it will stash away some information about where
it was called from. From this, the profiler can figure out what function
called it, and can count how many times it was called. This change is made
by the compiler when your program is compiled with the @samp{-pg} option,
which causes every function to call @code{mcount}
(or @code{_mcount}, or @code{__mcount}, depending on the OS and compiler)
as one of its first operations.
The @code{mcount} routine, included in the profiling library,
is responsible for recording in an in-memory call graph table
both its parent routine (the child) and its parent's parent. This is
typically done by examining the stack frame to find both
the address of the child, and the return address in the original parent.
Since this is a very machine-dependant operation, @code{mcount}
itself is typically a short assembly-language stub routine
that extracts the required
information, and then calls @code{__mcount_internal}
(a normal C function) with two arguments - @code{frompc} and @code{selfpc}.
@code{__mcount_internal} is responsible for maintaining
the in-memory call graph, which records @code{frompc}, @code{selfpc},
and the number of times each of these call arcs was transversed.
GCC Version 2 provides a magical function (@code{__builtin_return_address}),
which allows a generic @code{mcount} function to extract the
required information from the stack frame. However, on some
architectures, most notably the SPARC, using this builtin can be
very computationally expensive, and an assembly language version
of @code{mcount} is used for performance reasons.
Number-of-calls information for library routines is collected by using a
special version of the C library. The programs in it are the same as in
the usual C library, but they were compiled with @samp{-pg}. If you
link your program with @samp{gcc @dots{} -pg}, it automatically uses the
profiling version of the library.
Profiling also involves watching your program as it runs, and keeping a
histogram of where the program counter happens to be every now and then.
Typically the program counter is looked at around 100 times per second of
run time, but the exact frequency may vary from system to system.
This is done is one of two ways. Most UNIX-like operating systems
provide a @code{profil()} system call, which registers a memory
array with the kernel, along with a scale
factor that determines how the program's address space maps
into the array.
Typical scaling values cause every 2 to 8 bytes of address space
to map into a single array slot.
On every tick of the system clock
(assuming the profiled program is running), the value of the
program counter is examined and the corresponding slot in
the memory array is incremented. Since this is done in the kernel,
which had to interrupt the process anyway to handle the clock
interrupt, very little additional system overhead is required.
However, some operating systems, most notably Linux 2.0 (and earlier),
do not provide a @code{profil()} system call. On such a system,
arrangements are made for the kernel to periodically deliver
a signal to the process (typically via @code{setitimer()}),
which then performs the same operation of examining the
program counter and incrementing a slot in the memory array.
Since this method requires a signal to be delivered to
user space every time a sample is taken, it uses considerably
more overhead than kernel-based profiling. Also, due to the
added delay required to deliver the signal, this method is
less accurate as well.
A special startup routine allocates memory for the histogram and
either calls @code{profil()} or sets up
a clock signal handler.
This routine (@code{monstartup}) can be invoked in several ways.
On Linux systems, a special profiling startup file @code{gcrt0.o},
which invokes @code{monstartup} before @code{main},
is used instead of the default @code{crt0.o}.
Use of this special startup file is one of the effects
of using @samp{gcc @dots{} -pg} to link.
On SPARC systems, no special startup files are used.
Rather, the @code{mcount} routine, when it is invoked for
the first time (typically when @code{main} is called),
calls @code{monstartup}.
If the compiler's @samp{-a} option was used, basic-block counting
is also enabled. Each object file is then compiled with a static array
of counts, initially zero.
In the executable code, every time a new basic-block begins
(i.e. when an @code{if} statement appears), an extra instruction
is inserted to increment the corresponding count in the array.
At compile time, a paired array was constructed that recorded
the starting address of each basic-block. Taken together,
the two arrays record the starting address of every basic-block,
along with the number of times it was executed.
The profiling library also includes a function (@code{mcleanup}) which is
typically registered using @code{atexit()} to be called as the
program exits, and is responsible for writing the file @file{gmon.out}.
Profiling is turned off, various headers are output, and the histogram
is written, followed by the call-graph arcs and the basic-block counts.
The output from @code{gprof} gives no indication of parts of your program that
are limited by I/O or swapping bandwidth. This is because samples of the
program counter are taken at fixed intervals of the program's run time.
Therefore, the
time measurements in @code{gprof} output say nothing about time that your
program was not running. For example, a part of the program that creates
so much data that it cannot all fit in physical memory at once may run very
slowly due to thrashing, but @code{gprof} will say it uses little time. On
the other hand, sampling by run time has the advantage that the amount of
load due to other users won't directly affect the output you get.
@node File Format,Internals,Implementation,Details
@section Profiling Data File Format
The old BSD-derived file format used for profile data does not contain a
magic cookie that allows to check whether a data file really is a
gprof file. Furthermore, it does not provide a version number, thus
rendering changes to the file format almost impossible. @sc{gnu} @code{gprof}
uses a new file format that provides these features. For backward
compatibility, @sc{gnu} @code{gprof} continues to support the old BSD-derived
format, but not all features are supported with it. For example,
basic-block execution counts cannot be accommodated by the old file
format.
The new file format is defined in header file @file{gmon_out.h}. It
consists of a header containing the magic cookie and a version number,
as well as some spare bytes available for future extensions. All data
in a profile data file is in the native format of the host on which
the profile was collected. @sc{gnu} @code{gprof} adapts automatically to the
byte-order in use.
In the new file format, the header is followed by a sequence of
records. Currently, there are three different record types: histogram
records, call-graph arc records, and basic-block execution count
records. Each file can contain any number of each record type. When
reading a file, @sc{gnu} @code{gprof} will ensure records of the same type are
compatible with each other and compute the union of all records. For
example, for basic-block execution counts, the union is simply the sum
of all execution counts for each basic-block.
@subsection Histogram Records
Histogram records consist of a header that is followed by an array of
bins. The header contains the text-segment range that the histogram
spans, the size of the histogram in bytes (unlike in the old BSD
format, this does not include the size of the header), the rate of the
profiling clock, and the physical dimension that the bin counts
represent after being scaled by the profiling clock rate. The
physical dimension is specified in two parts: a long name of up to 15
characters and a single character abbreviation. For example, a
histogram representing real-time would specify the long name as
"seconds" and the abbreviation as "s". This feature is useful for
architectures that support performance monitor hardware (which,
fortunately, is becoming increasingly common). For example, under DEC
OSF/1, the "uprofile" command can be used to produce a histogram of,
say, instruction cache misses. In this case, the dimension in the
histogram header could be set to "i-cache misses" and the abbreviation
could be set to "1" (because it is simply a count, not a physical
dimension). Also, the profiling rate would have to be set to 1 in
this case.
Histogram bins are 16-bit numbers and each bin represent an equal
amount of text-space. For example, if the text-segment is one
thousand bytes long and if there are ten bins in the histogram, each
bin represents one hundred bytes.
@subsection Call-Graph Records
Call-graph records have a format that is identical to the one used in
the BSD-derived file format. It consists of an arc in the call graph
and a count indicating the number of times the arc was traversed
during program execution. Arcs are specified by a pair of addresses:
the first must be within caller's function and the second must be
within the callee's function. When performing profiling at the
function level, these addresses can point anywhere within the
respective function. However, when profiling at the line-level, it is
better if the addresses are as close to the call-site/entry-point as
possible. This will ensure that the line-level call-graph is able to
identify exactly which line of source code performed calls to a
function.
@subsection Basic-Block Execution Count Records
Basic-block execution count records consist of a header followed by a
sequence of address/count pairs. The header simply specifies the
length of the sequence. In an address/count pair, the address
identifies a basic-block and the count specifies the number of times
that basic-block was executed. Any address within the basic-address can
be used.
@node Internals,Debugging,File Format,Details
@section @code{gprof}'s Internal Operation
Like most programs, @code{gprof} begins by processing its options.
During this stage, it may building its symspec list
(@code{sym_ids.c:sym_id_add}), if
options are specified which use symspecs.
@code{gprof} maintains a single linked list of symspecs,
which will eventually get turned into 12 symbol tables,
organized into six include/exclude pairs - one
pair each for the flat profile (INCL_FLAT/EXCL_FLAT),
the call graph arcs (INCL_ARCS/EXCL_ARCS),
printing in the call graph (INCL_GRAPH/EXCL_GRAPH),
timing propagation in the call graph (INCL_TIME/EXCL_TIME),
the annotated source listing (INCL_ANNO/EXCL_ANNO),
and the execution count listing (INCL_EXEC/EXCL_EXEC).
After option processing, @code{gprof} finishes
building the symspec list by adding all the symspecs in
@code{default_excluded_list} to the exclude lists
EXCL_TIME and EXCL_GRAPH, and if line-by-line profiling is specified,
EXCL_FLAT as well.
These default excludes are not added to EXCL_ANNO, EXCL_ARCS, and EXCL_EXEC.
Next, the BFD library is called to open the object file,
verify that it is an object file,
and read its symbol table (@code{core.c:core_init}),
using @code{bfd_canonicalize_symtab} after mallocing
an appropiate sized array of asymbols. At this point,
function mappings are read (if the @samp{--file-ordering} option
has been specified), and the core text space is read into
memory (if the @samp{-c} option was given).
@code{gprof}'s own symbol table, an array of Sym structures,
is now built.
This is done in one of two ways, by one of two routines, depending
on whether line-by-line profiling (@samp{-l} option) has been
enabled.
For normal profiling, the BFD canonical symbol table is scanned.
For line-by-line profiling, every
text space address is examined, and a new symbol table entry
gets created every time the line number changes.
In either case, two passes are made through the symbol
table - one to count the size of the symbol table required,
and the other to actually read the symbols. In between the
two passes, a single array of type @code{Sym} is created of
the appropiate length.
Finally, @code{symtab.c:symtab_finalize}
is called to sort the symbol table and remove duplicate entries
(entries with the same memory address).
The symbol table must be a contiguous array for two reasons.
First, the @code{qsort} library function (which sorts an array)
will be used to sort the symbol table.
Also, the symbol lookup routine (@code{symtab.c:sym_lookup}),
which finds symbols
based on memory address, uses a binary search algorithm
which requires the symbol table to be a sorted array.
Function symbols are indicated with an @code{is_func} flag.
Line number symbols have no special flags set.
Additionally, a symbol can have an @code{is_static} flag
to indicate that it is a local symbol.
With the symbol table read, the symspecs can now be translated
into Syms (@code{sym_ids.c:sym_id_parse}). Remember that a single
symspec can match multiple symbols.
An array of symbol tables
(@code{syms}) is created, each entry of which is a symbol table
of Syms to be included or excluded from a particular listing.
The master symbol table and the symspecs are examined by nested
loops, and every symbol that matches a symspec is inserted
into the appropriate syms table. This is done twice, once to
count the size of each required symbol table, and again to build
the tables, which have been malloced between passes.
From now on, to determine whether a symbol is on an include
or exclude symspec list, @code{gprof} simply uses its
standard symbol lookup routine on the appropriate table
in the @code{syms} array.
Now the profile data file(s) themselves are read
(@code{gmon_io.c:gmon_out_read}),
first by checking for a new-style @samp{gmon.out} header,
then assuming this is an old-style BSD @samp{gmon.out}
if the magic number test failed.
New-style histogram records are read by @code{hist.c:hist_read_rec}.
For the first histogram record, allocate a memory array to hold
all the bins, and read them in.
When multiple profile data files (or files with multiple histogram
records) are read, the starting address, ending address, number
of bins and sampling rate must match between the various histograms,
or a fatal error will result.
If everything matches, just sum the additional histograms into
the existing in-memory array.
As each call graph record is read (@code{call_graph.c:cg_read_rec}),
the parent and child addresses
are matched to symbol table entries, and a call graph arc is
created by @code{cg_arcs.c:arc_add}, unless the arc fails a symspec
check against INCL_ARCS/EXCL_ARCS. As each arc is added,
a linked list is maintained of the parent's child arcs, and of the child's
parent arcs.
Both the child's call count and the arc's call count are
incremented by the record's call count.
Basic-block records are read (@code{basic_blocks.c:bb_read_rec}),
but only if line-by-line profiling has been selected.
Each basic-block address is matched to a corresponding line
symbol in the symbol table, and an entry made in the symbol's
bb_addr and bb_calls arrays. Again, if multiple basic-block
records are present for the same address, the call counts
are cumulative.
A gmon.sum file is dumped, if requested (@code{gmon_io.c:gmon_out_write}).
If histograms were present in the data files, assign them to symbols
(@code{hist.c:hist_assign_samples}) by iterating over all the sample
bins and assigning them to symbols. Since the symbol table
is sorted in order of ascending memory addresses, we can
simple follow along in the symbol table as we make our pass
over the sample bins.
This step includes a symspec check against INCL_FLAT/EXCL_FLAT.
Depending on the histogram
scale factor, a sample bin may span multiple symbols,
in which case a fraction of the sample count is allocated
to each symbol, proportional to the degree of overlap.
This effect is rare for normal profiling, but overlaps
are more common during line-by-line profiling, and can
cause each of two adjacent lines to be credited with half
a hit, for example.
If call graph data is present, @code{cg_arcs.c:cg_assemble} is called.
First, if @samp{-c} was specified, a machine-dependant
routine (@code{find_call}) scans through each symbol's machine code,
looking for subroutine call instructions, and adding them
to the call graph with a zero call count.
A topological sort is performed by depth-first numbering
all the symbols (@code{cg_dfn.c:cg_dfn}), so that
children are always numbered less than their parents,
then making a array of pointers into the symbol table and sorting it into
numerical order, which is reverse topological
order (children appear before parents).
Cycles are also detected at this point, all members
of which are assigned the same topological number.
Two passes are now made through this sorted array of symbol pointers.
The first pass, from end to beginning (parents to children),
computes the fraction of child time to propogate to each parent
and a print flag.
The print flag reflects symspec handling of INCL_GRAPH/EXCL_GRAPH,
with a parent's include or exclude (print or no print) property
being propagated to its children, unless they themselves explicitly appear
in INCL_GRAPH or EXCL_GRAPH.
A second pass, from beginning to end (children to parents) actually
propogates the timings along the call graph, subject
to a check against INCL_TIME/EXCL_TIME.
With the print flag, fractions, and timings now stored in the symbol
structures, the topological sort array is now discarded, and a
new array of pointers is assembled, this time sorted by propagated time.
Finally, print the various outputs the user requested, which is now fairly
straightforward. The call graph (@code{cg_print.c:cg_print}) and
flat profile (@code{hist.c:hist_print}) are regurgitations of values
already computed. The annotated source listing
(@code{basic_blocks.c:print_annotated_source}) uses basic-block
information, if present, to label each line of code with call counts,
otherwise only the function call counts are presented.
The function ordering code is marginally well documented
in the source code itself (@code{cg_print.c}). Basically,
the functions with the most use and the most parents are
placed first, followed by other functions with the most use,
followed by lower use functions, followed by unused functions
at the end.
@node Debugging,,Internals,Details
@subsection Debugging @code{gprof}
If @code{gprof} was compiled with debugging enabled,
the @samp{-d} option triggers debugging output
(to stdout) which can be helpful in understanding its operation.
The debugging number specified is interpreted as a sum of the following
options:
@table @asis
@item 2 - Topological sort
Monitor depth-first numbering of symbols during call graph analysis
@item 4 - Cycles
Shows symbols as they are identified as cycle heads
@item 16 - Tallying
As the call graph arcs are read, show each arc and how
the total calls to each function are tallied
@item 32 - Call graph arc sorting
Details sorting individual parents/children within each call graph entry
@item 64 - Reading histogram and call graph records
Shows address ranges of histograms as they are read, and each
call graph arc
@item 128 - Symbol table
Reading, classifying, and sorting the symbol table from the object file.
For line-by-line profiling (@samp{-l} option), also shows line numbers
being assigned to memory addresses.
@item 256 - Static call graph
Trace operation of @samp{-c} option
@item 512 - Symbol table and arc table lookups
Detail operation of lookup routines
@item 1024 - Call graph propagation
Shows how function times are propagated along the call graph
@item 2048 - Basic-blocks
Shows basic-block records as they are read from profile data
(only meaningful with @samp{-l} option)
@item 4096 - Symspecs
Shows symspec-to-symbol pattern matching operation
@item 8192 - Annotate source
Tracks operation of @samp{-A} option
@end table
@contents
@bye
NEEDS AN INDEX
-T - "traditional BSD style": How is it different? Should the
differences be documented?
example flat file adds up to 100.01%...
note: time estimates now only go out to one decimal place (0.0), where
they used to extend two (78.67).