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Generate a dot graph from the output of several profilers.

Project description

About gprof2dot

This is a Python script to convert the output from many profilers into a dot graph.

It can:

If you want an interactive viewer for the graphs generated by gprof2dot, check xdot.py.

Status

gprof2dot currently fulfills my needs, and I have little or no time for its maintenance. So I'm afraid that any requested features are unlikely to be implemented, and I might be slow processing issue reports or pull requests.

Build Status codecov

Example

This is the result from the example data in the Linux Gazette article with the default settings:

Sample

Requirements

  • Python: known to work with version >=3.8; it will most likely not work with earlier releases.
  • Graphviz: tested with version 2.26.3, but should work fine with other versions.

Windows users

Linux users

On Debian/Ubuntu run:

apt-get install python3 graphviz

On RedHat/Fedora run

yum install python3 graphviz

Download

Documentation

Usage

Usage: 
	gprof2dot.py [options] [file] ...

Options:
  -h, --help            show this help message and exit
  -o FILE, --output=FILE
                        output filename [stdout]
  -n PERCENTAGE, --node-thres=PERCENTAGE
                        eliminate nodes below this threshold [default: 0.5]
  -e PERCENTAGE, --edge-thres=PERCENTAGE
                        eliminate edges below this threshold [default: 0.1]
  -f FORMAT, --format=FORMAT
                        profile format: axe, callgrind, collapse, dtrace,
                        hprof, json, oprofile, perf, prof, pstats, sleepy,
                        sysprof or xperf [default: prof]
  --total=TOTALMETHOD   preferred method of calculating total time: callratios
                        or callstacks (currently affects only perf format)
                        [default: callratios]
  -c THEME, --colormap=THEME
                        color map: bw, color, gray, pink or print [default:
                        color]
  -s, --strip           strip function parameters, template parameters, and
                        const modifiers from demangled C++ function names
  --color-nodes-by-selftime
                        color nodes by self time, rather than by total time
                        (sum of self and descendants)
  -w, --wrap            wrap function names
  --show-samples        show function samples
  --node-label=MEASURE  measurements to on show the node (can be specified
                        multiple times): self-time, self-time-percentage,
                        total-time or total-time-percentage [default: total-
                        time-percentage, self-time-percentage]
  --list-functions=LIST_FUNCTIONS
                        list functions available for selection in -z or -l,
                        requires selector argument ( use '+' to select all).
                        Recall that the selector argument is used with
                        Unix/Bash globbing/pattern matching, and that entries
                        are formatted '<pkg>:<linenum>:<function>'. When
                        argument starts with '%', a dump of all available
                        information is performed for selected entries,  after
                        removal of leading '%'.
  -z ROOT, --root=ROOT  prune call graph to show only descendants of specified
                        root function
  -l LEAF, --leaf=LEAF  prune call graph to show only ancestors of specified
                        leaf function
  --depth=DEPTH         prune call graph to show only descendants or ancestors
                        until specified depth
  --skew=THEME_SKEW     skew the colorization curve.  Values < 1.0 give more
                        variety to lower percentages.  Values > 1.0 give less
                        variety to lower percentages
  -p FILTER_PATHS, --path=FILTER_PATHS
                        Filter all modules not in a specified path

Examples

Linux perf

perf record -g -- /path/to/your/executable
perf script | c++filt | gprof2dot.py -f perf | dot -Tpng -o output.png

oprofile

opcontrol --callgraph=16
opcontrol --start
/path/to/your/executable arg1 arg2
opcontrol --stop
opcontrol --dump
opreport -cgf | gprof2dot.py -f oprofile | dot -Tpng -o output.png

xperf

If you're not familiar with xperf then read this excellent article first. Then do:

  • Start xperf as

    xperf -on Latency -stackwalk profile
    
  • Run your application.

  • Save the data. ` xperf -d output.etl

  • Start the visualizer:

    xperf output.etl
    
  • In Trace menu, select Load Symbols. Configure Symbol Paths if necessary.

  • Select an area of interest on the CPU sampling graph, right-click, and select Summary Table.

  • In the Columns menu, make sure the Stack column is enabled and visible.

  • Right click on a row, choose Export Full Table, and save to output.csv.

  • Then invoke gprof2dot as

    gprof2dot.py -f xperf output.csv | dot -Tpng -o output.png
    

VTune Amplifier XE

  • Collect profile data as (also can be done from GUI):

    amplxe-cl -collect hotspots -result-dir output -- your-app
    
  • Visualize profile data as:

    amplxe-cl -report gprof-cc -result-dir output -format text -report-output output.txt
    gprof2dot.py -f axe output.txt | dot -Tpng -o output.png
    

See also Kirill Rogozhin's blog post.

gprof

/path/to/your/executable arg1 arg2
gprof path/to/your/executable | gprof2dot.py | dot -Tpng -o output.png

python profile

python -m profile -o output.pstats path/to/your/script arg1 arg2
gprof2dot.py -f pstats output.pstats | dot -Tpng -o output.png

python cProfile (formerly known as lsprof)

python -m cProfile -o output.pstats path/to/your/script arg1 arg2
gprof2dot.py -f pstats output.pstats | dot -Tpng -o output.png

Java HPROF

java -agentlib:hprof=cpu=samples ...
gprof2dot.py -f hprof java.hprof.txt | dot -Tpng -o output.png

See Russell Power's blog post for details.

DTrace

dtrace -x ustackframes=100 -n 'profile-97 /pid == 12345/ { @[ustack()] = count(); } tick-60s { exit(0); }' -o out.user_stacks
gprof2dot.py -f dtrace out.user_stacks | dot -Tpng -o output.png

# Notice: sometimes, the dtrace outputs format may be latin-1, and gprof2dot will fail to parse it.
# To solve this problem, you should use iconv to convert to UTF-8 explicitly.
# TODO: add an encoding flag to tell gprof2dot how to decode the profile file.
iconv -f ISO-8859-1 -t UTF-8 out.user_stacks | gprof2dot.py -f dtrace

stackcollapse

Brendan Gregg's FlameGraph tool takes as its input a text file containing one line per sample. This format can be generated from various other inputs using the stackcollapse scripts in the FlameGraph repository. It can also be generated by tools such as py-spy.

Example usage:

  • Perf

    perf record -g -- /path/to/your/executable
    perf script | FlameGraph/stackcollapse-perf.pl > out.collapse
    gprof2dot.py -f collapse out.collapse | dot -Tpng -o output.png
    
  • Py-spy

    py-spy record -p <pidfile> -f raw -o out.collapse
    gprof2dot.py -f collapse out.collapse | dot -Tpng -o output.png
    

Output

A node in the output graph represents a function and has the following layout:

+------------------------------+
|        function name         |
| total time % ( self time % ) |
|         total calls          |
+------------------------------+

where:

  • total time % is the percentage of the running time spent in this function and all its children;
  • self time % is the percentage of the running time spent in this function alone;
  • total calls is the total number of times this function was called (including recursive calls).

An edge represents the calls between two functions and has the following layout:

           total time %
              calls
parent --------------------> children

Where:

  • total time % is the percentage of the running time transferred from the children to this parent (if available);
  • calls is the number of calls the parent function called the children.

Note that in recursive cycles, the total time % in the node is the same for the whole functions in the cycle, and there is no total time % figure in the edges inside the cycle, since such figure would make no sense.

The color of the nodes and edges varies according to the total time % value. In the default temperature-like color-map, functions where most time is spent (hot-spots) are marked as saturated red, and functions where little time is spent are marked as dark blue. Note that functions where negligible or no time is spent do not appear in the graph by default.

Listing functions

The flag --list-functions permits listing the function entries found in the gprof input. This is intended as a tool to prepare for utilisations with the --leaf (-l) or --root (-z) flags.

prof2dot.py -f pstats /tmp/myLog.profile  --list-functions "test_segments:*:*" 
  
test_segments:5:<module>,
test_segments:206:TestSegments,
test_segments:46:<lambda>
  • The selector argument is used with Unix/Bash globbing/pattern matching, in the same fashion as performed by the -l and -z flags.

  • Entries are formatted '<pkg>:<linenum>:<function>'.

  • When selector argument starts with '%', a dump of all available information is performed for selected entries, after removal of selector's leading '%'. If selector is "+" or "*", the full list of functions is printed.

Frequently Asked Questions

How can I generate a complete call graph?

By default gprof2dot.py generates a partial call graph, excluding nodes and edges with little or no impact in the total computation time. If you want the full call graph then set a zero threshold for nodes and edges via the -n / --node-thres and -e / --edge-thres options, as:

gprof2dot.py -n0 -e0

The node labels are too wide. How can I narrow them?

The node labels can get very wide when profiling C++ code, due to inclusion of scope, function arguments, and template arguments in demangled C++ function names.

If you do not need function and template arguments information, then pass the -s / --strip option to strip them.

If you want to keep all that information, or if the labels are still too wide, then you can pass the -w / --wrap, to wrap the labels. Note that because dot does not wrap labels automatically the label margins will not be perfectly aligned.

Why there is no output, or it is all in the same color?

Likely, the total execution time is too short, so there is not enough precision in the profile to determine where time is being spent.

You can still force displaying the whole graph by setting a zero threshold for nodes and edges via the -n / --node-thres and -e / --edge-thres options, as:

gprof2dot.py -n0 -e0

But to get meaningful results you will need to find a way to run the program for a longer time period (aggregate results from multiple runs).

Why don't the percentages add up?

You likely have an execution time too short, causing the round-off errors to be large.

See question above for ways to increase execution time.

Which options should I pass to gcc when compiling for profiling?

Options which are essential to produce suitable results are:

  • -g : produce debugging information
  • -fno-omit-frame-pointer : use the frame pointer (frame pointer usage is disabled by default in some architectures like x86_64 and for some optimization levels; it is impossible to walk the call stack without it)

If you're using gprof you will also need -pg option, but nowadays you can get much better results with other profiling tools, most of which require no special code instrumentation when compiling.

You want the code you are profiling to be as close as possible as the code that you will be releasing. So you should include all options that you use in your release code, typically:

  • -O2 : optimizations that do not involve a space-speed tradeoff
  • -DNDEBUG : disable debugging code in the standard library (such as the assert macro)

However many of the optimizations performed by gcc interfere with the accuracy/granularity of the profiling results. You should pass these options to disable those particular optimizations:

  • -fno-inline-functions : do not inline functions into their parents (otherwise the time spent on these functions will be attributed to the caller)
  • -fno-inline-functions-called-once : similar to above
  • -fno-optimize-sibling-calls : do not optimize sibling and tail recursive calls (otherwise tail calls may be attributed to the parent function)

If the granularity is still too low, you may pass these options to achieve finer granularity:

  • -fno-default-inline : do not make member functions inline by default merely because they are defined inside the class scope
  • -fno-inline : do not pay attention to the inline keyword Note however that with these last options the timings of functions called many times will be distorted due to the function call overhead. This is particularly true for typical C++ code which expects that these optimizations to be done for decent performance.

See the full list of gcc optimization options for more information.

Links

See the wiki for external resources, including complementary/alternative tools.

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