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How do I find areas of my code that run slowly in a C++ application running on Linux?

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20 Answers 20

1607

If your goal is to use a profiler, use one of the suggested ones.

However, if you're in a hurry and you can manually interrupt your program under the debugger while it's being subjectively slow, there's a simple way to find performance problems.

Execute your code in a debugger like gdb, halt it and each time look at the call stack (e.g. backtrace) several times. If there is some code that is wasting some percentage of the time, 20% or 50% or whatever, that is the probability that you will catch it in the act on each sample. So, that is roughly the percentage of samples on which you will see it. There is no educated guesswork required. If you do have a guess as to what the problem is, this will prove or disprove it.

You probably have multiple performance problems of different sizes. If you clean out any one of them, the remaining ones will take a larger percentage, and be easier to spot, on subsequent passes. This magnification effect, when compounded over multiple problems, can lead to truly massive speedup factors.

Caveat: Programmers tend to be skeptical of this technique unless they've used it themselves. They will say that profilers give you this information, but that is only true if they sample the entire call stack, and then let you examine a random set of samples. (The summaries are where the insight is lost.) Call graphs don't give you the same information, because

  1. They don't summarize at the instruction level, and
  2. They give confusing summaries in the presence of recursion.

They will also say it only works on toy programs, when actually it works on any program, and it seems to work better on bigger programs, because they tend to have more problems to find. They will say it sometimes finds things that aren't problems, but that is only true if you see something once. If you see a problem on more than one sample, it is real.

P.S. This can also be done on multi-thread programs if there is a way to collect call-stack samples of the thread pool at a point in time, as there is in Java.

P.P.S As a rough generality, the more layers of abstraction you have in your software, the more likely you are to find that that is the cause of performance problems (and the opportunity to get speedup).

Added: It might not be obvious, but the stack sampling technique works equally well in the presence of recursion. The reason is that the time that would be saved by removal of an instruction is approximated by the fraction of samples containing it, regardless of the number of times it may occur within a sample.

Another objection I often hear is: "It will stop someplace random, and it will miss the real problem". This comes from having a prior concept of what the real problem is. A key property of performance problems is that they defy expectations. Sampling tells you something is a problem, and your first reaction is disbelief. That is natural, but you can be sure if it finds a problem it is real, and vice-versa.

Added: Let me make a Bayesian explanation of how it works. Suppose there is some instruction I (call or otherwise) which is on the call stack some fraction f of the time (and thus costs that much). For simplicity, suppose we don't know what f is, but assume it is either 0.1, 0.2, 0.3, ... 0.9, 1.0, and the prior probability of each of these possibilities is 0.1, so all of these costs are equally likely a-priori.

Then suppose we take just 2 stack samples, and we see instruction I on both samples, designated observation o=2/2. This gives us new estimates of the frequency f of I, according to this:

Prior                                    
P(f=x) x  P(o=2/2|f=x) P(o=2/2&&f=x)  P(o=2/2&&f >= x)  P(f >= x | o=2/2)

0.1    1     1             0.1          0.1            0.25974026
0.1    0.9   0.81          0.081        0.181          0.47012987
0.1    0.8   0.64          0.064        0.245          0.636363636
0.1    0.7   0.49          0.049        0.294          0.763636364
0.1    0.6   0.36          0.036        0.33           0.857142857
0.1    0.5   0.25          0.025        0.355          0.922077922
0.1    0.4   0.16          0.016        0.371          0.963636364
0.1    0.3   0.09          0.009        0.38           0.987012987
0.1    0.2   0.04          0.004        0.384          0.997402597
0.1    0.1   0.01          0.001        0.385          1

                  P(o=2/2) 0.385                

The last column says that, for example, the probability that f >= 0.5 is 92%, up from the prior assumption of 60%.

Suppose the prior assumptions are different. Suppose we assume P(f=0.1) is .991 (nearly certain), and all the other possibilities are almost impossible (0.001). In other words, our prior certainty is that I is cheap. Then we get:

Prior                                    
P(f=x) x  P(o=2/2|f=x) P(o=2/2&& f=x)  P(o=2/2&&f >= x)  P(f >= x | o=2/2)

0.001  1    1              0.001        0.001          0.072727273
0.001  0.9  0.81           0.00081      0.00181        0.131636364
0.001  0.8  0.64           0.00064      0.00245        0.178181818
0.001  0.7  0.49           0.00049      0.00294        0.213818182
0.001  0.6  0.36           0.00036      0.0033         0.24
0.001  0.5  0.25           0.00025      0.00355        0.258181818
0.001  0.4  0.16           0.00016      0.00371        0.269818182
0.001  0.3  0.09           0.00009      0.0038         0.276363636
0.001  0.2  0.04           0.00004      0.00384        0.279272727
0.991  0.1  0.01           0.00991      0.01375        1

                  P(o=2/2) 0.01375                

Now it says P(f >= 0.5) is 26%, up from the prior assumption of 0.6%. So Bayes allows us to update our estimate of the probable cost of I. If the amount of data is small, it doesn't tell us accurately what the cost is, only that it is big enough to be worth fixing.

Yet another way to look at it is called the Rule Of Succession. If you flip a coin 2 times, and it comes up heads both times, what does that tell you about the probable weighting of the coin? The respected way to answer is to say that it's a Beta distribution, with average value (number of hits + 1) / (number of tries + 2) = (2+1)/(2+2) = 75%.

(The key is that we see I more than once. If we only see it once, that doesn't tell us much except that f > 0.)

So, even a very small number of samples can tell us a lot about the cost of instructions that it sees. (And it will see them with a frequency, on average, proportional to their cost. If n samples are taken, and f is the cost, then I will appear on nf+/-sqrt(nf(1-f)) samples. Example, n=10, f=0.3, that is 3+/-1.4 samples.)


Added: To give an intuitive feel for the difference between measuring and random stack sampling:
There are profilers now that sample the stack, even on wall-clock time, but what comes out is measurements (or hot path, or hot spot, from which a "bottleneck" can easily hide). What they don't show you (and they easily could) is the actual samples themselves. And if your goal is to find the bottleneck, the number of them you need to see is, on average, 2 divided by the fraction of time it takes. So if it takes 30% of time, 2/.3 = 6.7 samples, on average, will show it, and the chance that 20 samples will show it is 99.2%.

Here is an off-the-cuff illustration of the difference between examining measurements and examining stack samples. The bottleneck could be one big blob like this, or numerous small ones, it makes no difference.

enter image description here

Measurement is horizontal; it tells you what fraction of time specific routines take. Sampling is vertical. If there is any way to avoid what the whole program is doing at that moment, and if you see it on a second sample, you've found the bottleneck. That's what makes the difference - seeing the whole reason for the time being spent, not just how much.

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  • 337
    This is basically a poor man's sampling profiler, which is great, but you run the risk of a too-small sample size which will possibly give you entirely spurious results.
    – Crashworks
    May 22, 2009 at 21:56
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    @Crash: I won't debate the "poor man" part :-) It's true that statistical measurement precision requires many samples, but there are two conflicting goals - measurement and problem location. I'm focussing on the latter, for which you need precision of location, not precision of measure. So for example, there can be, mid-stack, a single function call A(); that accounts for 50% of time, but it can be in another large function B, along with many other calls to A() that are not costly. Precise summaries of function times can be a clue, but every other stack sample will pinpoint the problem. May 23, 2009 at 1:14
  • 51
    ... the world seems to think that a call-graph, annotated with call counts and/or average timing, is good enough. It is not. And the sad part is, for those that sample the call stack, the most useful information is right in front of them, but they throw it away, in the interests of "statistics". May 24, 2009 at 18:08
  • 39
    I don't mean to disagree with your technique. Clearly I rely quite heavily on stack-walking sampling profilers. I'm just pointing out that there are some tools that do it in an automated way now, which is important when you're past the point of getting a function from 25% to 15% and need to knock it down from 1.2% to 0.6%.
    – Crashworks
    Jun 2, 2009 at 3:27
  • 20
    -1: Neat idea, but if you're getting paid to work in even a moderately performance oriented environment this is a waste of everyone's time. Use a real profiler so we don't have to come along behind you and fix the actual problems. Apr 8, 2010 at 13:26
698

Use Valgrind with the following options:

valgrind --tool=callgrind ./(Your binary)

This generates a file called callgrind.out.x. Use the kcachegrind tool to read this file. It will give you a graphical analysis of things with results like which lines cost how much.

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    valgrind is great, but be warned that it will make your program darn slow
    – neves
    Jan 25, 2012 at 20:07
  • 39
    Check out also Gprof2Dot for an amazing alternative way to visualize the output. ./gprof2dot.py -f callgrind callgrind.out.x | dot -Tsvg -o output.svg
    – Sebastian
    May 22, 2013 at 13:42
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    @neves Yes Valgrind is just not very helpful in terms of speed for profiling "gstreamer" and "opencv" applications real-time. May 22, 2013 at 20:20
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    @Sebastian: gprof2dot is now here: github.com/jrfonseca/gprof2dot Apr 27, 2017 at 3:19
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    One thing to bear in mind is to compile WITH debug symbols included but WITH optimisation, to get something explorable yet with the speed characteristics similar to the actual "release" build. Oct 29, 2019 at 12:01
387

I assume you're using GCC. The standard solution would be to profile with gprof.

Be sure to add -pg to compilation before profiling:

cc -o myprog myprog.c utils.c -g -pg

I haven't tried it yet but I've heard good things about google-perftools. It is definitely worth a try.

Related question here.

A few other buzzwords if gprof does not do the job for you: Valgrind, Intel VTune, Sun DTrace.

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    I agree that gprof is the current standard. Just a note, though, Valgrind is used to profile memory leaks and other memory-related aspects of your programs, not for speed optimization. Dec 18, 2008 at 15:02
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    Bill, In vaglrind suite you can find callgrind and massif. Both are pretty useful to profile apps Dec 18, 2008 at 15:05
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    @Bill-the-Lizard: Some comments on gprof : stackoverflow.com/questions/1777556/alternatives-to-gprof/… Mar 4, 2010 at 13:23
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    gprof -pg is only an approximation of callstack profiling. It inserts mcount calls to track which functions are calling which other functions. It uses standard time based sampling for, uh, time. It then apportions times sampled in a function foo() back to the callers of foo(), in proprtion to the numberr of calls. So it doesn't distinguish between calls of different costs.
    – Krazy Glew
    Apr 28, 2012 at 5:45
  • 2
    With clang/clang++, one might consider using gperftools's CPU profiler. Caveat: Have not done so myself.
    – einpoklum
    Oct 14, 2019 at 14:27
297

Newer kernels (e.g. the latest Ubuntu kernels) come with the new 'perf' tools (apt-get install linux-tools) AKA perf_events.

These come with classic sampling profilers (man-page) as well as the awesome timechart!

The important thing is that these tools can be system profiling and not just process profiling - they can show the interaction between threads, processes and the kernel and let you understand the scheduling and I/O dependencies between processes.

Alt text

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    Great tool! Is there anyway for me to get a typical "butterfly" view that starts from "main->func1->fun2" style? I can't seem to figure that out... perf report seems to give me the function names with the call parents... (so it's sort of an inverted butterfly view)
    – kizzx2
    Oct 1, 2010 at 6:17
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    Will, can perf show timechart of thread activity; with CPU number information added? I want to see when and which thread was running on every CPU.
    – osgx
    Dec 6, 2011 at 4:24
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    @kizzx2 - you can use gprof2dot and perf script. Very nice tool!
    – dashesy
    May 14, 2012 at 23:55
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    Even newer kernels like 4.13 have eBPF for profiling. See brendangregg.com/blog/2015-05-15/ebpf-one-small-step.html and brendangregg.com/ebpf.html Oct 13, 2017 at 15:00
  • 2
    This should be the accepted answer. Using a debugger introduces too much noise in the samples. Performance counters for linux works for multiple threads, multiple processes, user and kernel space, which is great. You can also retrieve many useful information such as branch and cache misses. In the same website @AndrewStern mentioned, there is a flamegraph which is very useful for this kind of analysis: flame graphs. It generates SVG files that can be opened with a web browser for interactive graphs! Dec 17, 2018 at 12:25
99

The answer to run valgrind --tool=callgrind is not quite complete without some options. We usually do not want to profile 10 minutes of slow startup time under Valgrind and want to profile our program when it is doing some task.

So this is what I recommend. Run program first:

valgrind --tool=callgrind --dump-instr=yes -v --instr-atstart=no ./binary > tmp

Now when it works and we want to start profiling we should run in another window:

callgrind_control -i on

This turns profiling on. To turn it off and stop whole task we might use:

callgrind_control -k

Now we have some files named callgrind.out.* in current directory. To see profiling results use:

kcachegrind callgrind.out.*

I recommend in next window to click on "Self" column header, otherwise it shows that "main()" is most time consuming task. "Self" shows how much each function itself took time, not together with dependents.

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    Now on some reason callgrind.out.* files were always empty. Executing callgrind_control -d was useful to force dump of data to disk. Jul 31, 2014 at 4:25
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    Can't. My usual contexts are something like whole MySQL or PHP or some similar big thing. Often even do not know what I want to separate at first. Nov 21, 2015 at 22:50
  • 3
    Or in my case my program actually loads a bunch of data into an LRU cache, and I want not to profile that. So I force-load a subset of the cache at startup, and profile the code using only that data (letting the OS+CPU manage the memory use within my cache). It works, but loading that cache is slow and CPU intensive across code that I'm trying to profile in a different context, so callgrind produces badly polluted results. Mar 17, 2016 at 3:49
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    there is also CALLGRIND_TOGGLE_COLLECT to enable/disable collection programmatically; see stackoverflow.com/a/13700817/288875 Aug 29, 2017 at 16:59
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    @TõnuSamuel, for me also callgrind.out.* was empty. In my case, the program was getting crahsed while profiling. Once the reason for crash was resolved, I am able to see contents in callgrind.out.* file.
    – explorer
    Jun 4, 2020 at 4:29
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I would use Valgrind and Callgrind as a base for my profiling tool suite. What is important to know is that Valgrind is basically a Virtual Machine:

(wikipedia) Valgrind is in essence a virtual machine using just-in-time (JIT) compilation techniques, including dynamic recompilation. Nothing from the original program ever gets run directly on the host processor. Instead, Valgrind first translates the program into a temporary, simpler form called Intermediate Representation (IR), which is a processor-neutral, SSA-based form. After the conversion, a tool (see below) is free to do whatever transformations it would like on the IR, before Valgrind translates the IR back into machine code and lets the host processor run it.

Callgrind is a profiler build upon that. Main benefit is that you don't have to run your aplication for hours to get reliable result. Even one second run is sufficient to get rock-solid, reliable results, because Callgrind is a non-probing profiler.

Another tool build upon Valgrind is Massif. I use it to profile heap memory usage. It works great. What it does is that it gives you snapshots of memory usage -- detailed information WHAT holds WHAT percentage of memory, and WHO had put it there. Such information is available at different points of time of application run.

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Survey of C++ profiling techniques: gprof vs valgrind vs perf vs gperftools

In this answer, I will use several different tools to a analyze a few very simple test programs, in order to concretely compare how those tools work.

Summary of results:

tool recompile slowdown
gprof -pg 1x (2x-3x reported)
perf no 1x
valgrind no 15x (80x reported)
gperftools no

The following test program is very simple and does the following:

  • main calls fast and maybe_slow 3 times, one of the maybe_slow calls being slow

    The slow call of maybe_slow is 10x longer, and dominates runtime if we consider calls to the child function common. Ideally, the profiling tool will be able to point us to the specific slow call.

  • both fast and maybe_slow call common, which accounts for the bulk of the program execution

  • The program interface is:

    ./main.out [n [seed]]
    

    and the program does O(n^2) loops in total. seed is just to get different output without affecting runtime.

main.c

#include <inttypes.h>
#include <stdio.h>
#include <stdlib.h>

uint64_t __attribute__ ((noinline)) common(uint64_t n, uint64_t seed) {
    for (uint64_t i = 0; i < n; ++i) {
        seed = (seed * seed) - (3 * seed) + 1;
    }
    return seed;
}

uint64_t __attribute__ ((noinline)) fast(uint64_t n, uint64_t seed) {
    uint64_t max = (n / 10) + 1;
    for (uint64_t i = 0; i < max; ++i) {
        seed = common(n, (seed * seed) - (3 * seed) + 1);
    }
    return seed;
}

uint64_t __attribute__ ((noinline)) maybe_slow(uint64_t n, uint64_t seed, int is_slow) {
    uint64_t max = n;
    if (is_slow) {
        max *= 10;
    }
    for (uint64_t i = 0; i < max; ++i) {
        seed = common(n, (seed * seed) - (3 * seed) + 1);
    }
    return seed;
}

int main(int argc, char **argv) {
    uint64_t n, seed;
    if (argc > 1) {
        n = strtoll(argv[1], NULL, 0);
    } else {
        n = 1;
    }
    if (argc > 2) {
        seed = strtoll(argv[2], NULL, 0);
    } else {
        seed = 0;
    }
    seed += maybe_slow(n, seed, 0);
    seed += fast(n, seed);
    seed += maybe_slow(n, seed, 1);
    seed += fast(n, seed);
    seed += maybe_slow(n, seed, 0);
    seed += fast(n, seed);
    printf("%" PRIX64 "\n", seed);
    return EXIT_SUCCESS;
}

Default compilation unless otherwise specified:

gcc -ggdb3 -O3 -std=c99 -Wall -Wextra -pedantic -o main.out main.c

gprof

gprof requires recompiling the software with instrumentation, and it also uses a sampling approach together with that instrumentation. It therefore strikes a balance between accuracy (sampling is not always fully accurate and can skip functions) and execution slowdown (instrumentation and sampling are relatively fast techniques that don't slow down execution very much).

gprof is built-into GCC/binutils, so all we have to do is to compile with the -pg option to enable gprof. We then run the program normally with a size CLI parameter that produces a run of reasonable duration of a few seconds (10000):

gcc -pg -ggdb3 -O3 -std=c99 -Wall -Wextra -pedantic -o main.out main.c
time ./main.out 10000

For educational reasons, we will also do a run without optimizations enabled. Note that this is useless in practice, as you normally only care about optimizing the performance of the optimized program:

gcc -pg -ggdb3 -O0 -std=c99 -Wall -Wextra -pedantic -o main.out main.c
./main.out 10000

First, time tells us that the execution time with and without -pg were the same, which is great: no slowdown! I have however seen accounts of 2x - 3x slowdowns on complex software, e.g. as shown in this ticket.

Because we compiled with -pg, running the program produces a file gmon.out file containing the profiling data.

We can observe that file graphically with gprof2dot as asked at: Is it possible to get a graphical representation of gprof results?

sudo apt install graphviz
python3 -m pip install --user gprof2dot
gprof main.out > main.gprof
gprof2dot < main.gprof | dot -Tsvg -o output.svg

Here, the gprof tool reads the gmon.out trace information, and generates a human readable report in main.gprof, which gprof2dot then reads to generate a graph.

The source for gprof2dot is at: https://github.com/jrfonseca/gprof2dot

We observe the following for the -O0 run:

enter image description here

and for the -O3 run:

enter image description here

The -O0 output is pretty much self-explanatory. For example, it shows that the 3 maybe_slow calls and their child calls take up 97.56% of the total runtime, although execution of maybe_slow itself without children accounts for 0.00% of the total execution time, i.e. almost all the time spent in that function was spent on child calls.

TODO: why is main missing from the -O3 output, even though I can see it on a bt in GDB? Missing function from GProf output I think it is because gprof is also sampling based in addition to its compiled instrumentation, and the -O3 main is just too fast and got no samples.

I choose SVG output instead of PNG because the SVG is searchable with Ctrl + F and the file size can be about 10x smaller. Also, the width and height of the generated image can be humoungous with tens of thousands of pixels for complex software, and GNOME eog 3.28.1 bugs out in that case for PNGs, while SVGs get opened by my browser automatically. gimp 2.8 worked well though, see also:

but even then, you will be dragging the image around a lot to find what you want, see e.g. this image from a "real" software example taken from this ticket:

enter image description here

Can you find the most critical call stack easily with all those tiny unsorted spaghetti lines going over one another? There might be better dot options I'm sure, but I don't want to go there now. What we really need is a proper dedicated viewer for it, but I haven't found one yet:

You can however use the color map to mitigate those problems a bit. For example, on the previous huge image, I finally managed to find the critical path on the left when I made the brilliant deduction that green comes after red, followed finally by darker and darker blue.

Alternatively, we can also observe the text output of the gprof built-in binutils tool which we previously saved at:

cat main.gprof

By default, this produces an extremely verbose output that explains what the output data means. Since I can't explain better than that, I'll let you read it yourself.

Once you have understood the data output format, you can reduce verbosity to show just the data without the tutorial with the -b option:

gprof -b main.out

In our example, outputs were for -O0:

Flat profile:

Each sample counts as 0.01 seconds.
  %   cumulative   self              self     total           
 time   seconds   seconds    calls   s/call   s/call  name    
100.35      3.67     3.67   123003     0.00     0.00  common
  0.00      3.67     0.00        3     0.00     0.03  fast
  0.00      3.67     0.00        3     0.00     1.19  maybe_slow

            Call graph


granularity: each sample hit covers 2 byte(s) for 0.27% of 3.67 seconds

index % time    self  children    called     name
                0.09    0.00    3003/123003      fast [4]
                3.58    0.00  120000/123003      maybe_slow [3]
[1]    100.0    3.67    0.00  123003         common [1]
-----------------------------------------------
                                                 <spontaneous>
[2]    100.0    0.00    3.67                 main [2]
                0.00    3.58       3/3           maybe_slow [3]
                0.00    0.09       3/3           fast [4]
-----------------------------------------------
                0.00    3.58       3/3           main [2]
[3]     97.6    0.00    3.58       3         maybe_slow [3]
                3.58    0.00  120000/123003      common [1]
-----------------------------------------------
                0.00    0.09       3/3           main [2]
[4]      2.4    0.00    0.09       3         fast [4]
                0.09    0.00    3003/123003      common [1]
-----------------------------------------------

Index by function name

   [1] common                  [4] fast                    [3] maybe_slow

and for -O3:

Flat profile:

Each sample counts as 0.01 seconds.
  %   cumulative   self              self     total           
 time   seconds   seconds    calls  us/call  us/call  name    
100.52      1.84     1.84   123003    14.96    14.96  common

            Call graph


granularity: each sample hit covers 2 byte(s) for 0.54% of 1.84 seconds

index % time    self  children    called     name
                0.04    0.00    3003/123003      fast [3]
                1.79    0.00  120000/123003      maybe_slow [2]
[1]    100.0    1.84    0.00  123003         common [1]
-----------------------------------------------
                                                 <spontaneous>
[2]     97.6    0.00    1.79                 maybe_slow [2]
                1.79    0.00  120000/123003      common [1]
-----------------------------------------------
                                                 <spontaneous>
[3]      2.4    0.00    0.04                 fast [3]
                0.04    0.00    3003/123003      common [1]
-----------------------------------------------

Index by function name

   [1] common

As a very quick summary for each section e.g.:

                0.00    3.58       3/3           main [2]
[3]     97.6    0.00    3.58       3         maybe_slow [3]
                3.58    0.00  120000/123003      common [1]

centers around the function that is left indented (maybe_slow). [3] is the ID of that function. Above the function, are its callers, and below it the callees.

For -O3, see here like in the graphical output that maybe_slow and fast don't have a known parent, which is what the documentation says that <spontaneous> means.

I'm not sure if there is a nice way to do line-by-line profiling with gprof: `gprof` time spent in particular lines of code

perf from linux-tools

perf works by sampling which part of the programming is running regularly. This makes it very simple to setup without any recompilation, it can even attach to programs that are already running. The downside is that we lose a bit of data compared to gprof instrumented code: notably we don't know how many times each function is called.

This section was tested on Ubuntu 23.10:

sudo apt install linux-tools-common linux-tools-generic

And then you also need:

sudo sysctl kernel.perf_event_paranoid=-1 kernel.kptr_restrict=0

or to persist those options that across reboots:

printf 'kernel.perf_event_paranoid = -1
kernel.kptr_restrict = 0
' | sudo tee -a /etc/sysctl.conf

Collect data:

time perf record --call-graph dwarf ./main.out 10000

This produces a 42 MB file perf.data and adds a fixed 1 s overhead to execution, so it's fine time-wise. Ther --call-graph dwarf option is mentioned at: Call stack in the perf profiler

Next we can inspect the data interactively with:

perf report

Initially this gives us a view:

enter image description here

TODO how to always sort by "Self"? Sorting by self column in perf report It seemed to randomly sort by one column or another from time to time?

This immediately tells us that common is what takes up most of the execution time. If we select the "common" line and hit + (plus sign) or e (expand) and keep expanding recursively we finally see:

enter image description here

which tells us exactly what we want: maybe_slow calls to common are the slow ones.

Another mega-cool thing we can do is to hit a (annotate) on the common line, which gives us this assembly level breakdown of the function

enter image description here

Another interesting visualization is with https://github.com/brendangregg/FlameGraph which is also mentioned at: http://www.brendangregg.com/perf.html#FlameGraphs

git clone https://github.com/brendangregg/FlameGraph
git -C FlameGraph/ checkout cd9ee4c4449775a2f867acf31c84b7fe4b132ad5
perf script | FlameGraph/stackcollapse-perf.pl | FlameGraph/flamegraph.pl > flamegraph.svg

and we get:

enter image description here

On the a more complex example I got from another program it becomes clearer what the graph means:

enter image description here

TODO there are a log of [unknown] functions in that example, why is that?

Another perf GUI interfaces which might be worth it include:

  • Eclipse Trace Compass plugin: https://www.eclipse.org/tracecompass/

    But this has the downside that you have to first convert the data to the Common Trace Format, which can be done with perf data --to-ctf, but it needs to be enabled at build time/have perf new enough, either of which is not the case for the perf in Ubuntu 18.04

  • https://github.com/KDAB/hotspot

    The downside of this is that there seems to be no Ubuntu package, and building it requires Qt 5.10 while Ubuntu 18.04 is at Qt 5.9.

    But David Faure mentions in the comments that there is no an AppImage package which might be a convenient way to use it.

valgrind callgrind

valgrind runs the program through the valgrind virtual machine. This makes the profiling very accurate, but it also produces a very large slowdown of the program. I have also mentioned kcachegrind previously at: Tools to get a pictorial function call graph of code

callgrind is the valgrind's tool to profile code and kcachegrind is a KDE program that can visualize cachegrind output.

First we have to remove the -pg flag to go back to normal compilation, otherwise the run actually fails with Profiling timer expired, and yes, this is so common that I did and there was a Stack Overflow question for it.

So we compile and run as:

sudo apt install kcachegrind valgrind
gcc -ggdb3 -O3 -std=c99 -Wall -Wextra -pedantic -o main.out main.c
time valgrind --tool=callgrind valgrind --dump-instr=yes \
  --collect-jumps=yes ./main.out 10000

I enable --dump-instr=yes --collect-jumps=yes because this also dumps information that enables us to view a per assembly line breakdown of performance, at a relatively small added overhead cost.

Off the bat, time tells us that the program took 29.5 seconds to execute, so we had a slowdown of about 15x on this example. Clearly, this slowdown is going to be a serious limitation for larger workloads. On the "real world software example" mentioned here, I observed a slowdown of 80x.

The run generates a profile data file named callgrind.out.<pid> e.g. callgrind.out.8554 in my case. We view that file with:

kcachegrind callgrind.out.8554

which shows a GUI that contains data similar to the textual gprof output:

enter image description here

Also, if we go on the bottom right "Call Graph" tab, we see a call graph which we can export by right clicking it to obtain the following image with unreasonable amounts of white border :-)

enter image description here

I think fast is not showing on that graph because kcachegrind must have simplified the visualization because that call takes up too little time, this will likely be the behavior you want on a real program. The right click menu has some settings to control when to cull such nodes, but I couldn't get it to show such a short call after a quick attempt. If I click on fast on the left window, it does show a call graph with fast, so that stack was actually captured. No one had yet found a way to show the complete graph call graph: Make callgrind show all function calls in the kcachegrind callgraph

TODO on complex C++ software, I see some entries of type <cycle N>, e.g. <cycle 11> where I'd expect function names, what does that mean? I noticed there is a "Cycle Detection" button to toggle that on and off, but what does it mean?

gperftools

Previously called "Google Performance Tools", source: https://github.com/gperftools/gperftools Sample based.

First install gperftools with:

sudo apt install google-perftools

Then, we can enable the gperftools CPU profiler in two ways: at runtime, or at build time.

At runtime, we have to pass set the LD_PRELOAD to point to libprofiler.so, which you can find with locate libprofiler.so, e.g. on my system:

gcc -ggdb3 -O3 -std=c99 -Wall -Wextra -pedantic -o main.out main.c
LD_PRELOAD=/usr/lib/x86_64-linux-gnu/libprofiler.so \
  CPUPROFILE=prof.out ./main.out 10000

Alternatively, we can build the library in at link time, dispensing passing LD_PRELOAD at runtime:

gcc -Wl,--no-as-needed,-lprofiler,--as-needed -ggdb3 -O3 -std=c99 -Wall -Wextra -pedantic -o main.out main.c
CPUPROFILE=prof.out ./main.out 10000

See also: gperftools - profile file not dumped

The nicest way to view this data I've found so far is to make pprof output the same format that kcachegrind takes as input (yes, the Valgrind-project-viewer-tool) and use kcachegrind to view that:

google-pprof --callgrind main.out prof.out  > callgrind.out
kcachegrind callgrind.out

After running with either of those methods, we get a prof.out profile data file as output. We can view that file graphically as an SVG with:

google-pprof --web main.out prof.out

enter image description here

which gives as a familiar call graph like other tools, but with the clunky unit of number of samples rather than seconds.

Alternatively, we can also get some textual data with:

google-pprof --text main.out prof.out

which gives:

Using local file main.out.
Using local file prof.out.
Total: 187 samples
     187 100.0% 100.0%      187 100.0% common
       0   0.0% 100.0%      187 100.0% __libc_start_main
       0   0.0% 100.0%      187 100.0% _start
       0   0.0% 100.0%        4   2.1% fast
       0   0.0% 100.0%      187 100.0% main
       0   0.0% 100.0%      183  97.9% maybe_slow

See also: How to use google perf tools

Instrument your code with raw perf_event_open syscalls

I think this is the same underlying subsystem that perf uses, but you could of course attain even greater control by explicitly instrumenting your program at compile time with events of interest.

This is likely too hardcore for most people, but it's kind of fun. Minimal runnable example at: Quick way to count number of instructions executed in a C program

Intel VTune

https://en.wikipedia.org/wiki/VTune

This seems to be closed source and x86-only, but it is likely to be amazing from what I've heard. I'm not sure how free it is to use, but it seems to be free to download. TODO evaluate.

Tested in Ubuntu 18.04, gprof2dot 2019.11.30, valgrind 3.13.0, perf 4.15.18, Linux kernel 4.15.0, FLameGraph 1a0dc6985aad06e76857cf2a354bd5ba0c9ce96b, gperftools 2.5-2.

4
  • 5
    By default perf record uses the frame pointer register. Modern compilers don't record the frame address and instead use the register as a general purpose. The alternative is to compile with -fno-omit-frame-pointer flag or use a different alternative: record with --call-graph "dwarf" or --call-graph "lbr" depending on your scenario. Mar 30, 2020 at 15:27
  • 1
    KDAB's hotspot ships with an AppImage these days, making it really easy to use. Jun 28, 2022 at 16:23
  • Great answer. Side note, [unknown] frames might be caused by stack too deep if DWARF method is used --- although I haven't investigated very carefully. gist.github.com/user202729/b6ea134715ddf851efd0047b3197fc33 has some resources.
    – user202729
    Feb 2 at 13:58
  • Great answer. But seems like gprof can't profile shared libraries.
    – Alex Che
    Feb 28 at 23:33
68

This is a response to Nazgob's Gprof answer.

I've been using Gprof the last couple of days and have already found three significant limitations, one of which I've not seen documented anywhere else (yet):

  1. It doesn't work properly on multi-threaded code, unless you use a workaround

  2. The call graph gets confused by function pointers. Example: I have a function called multithread() which enables me to multi-thread a specified function over a specified array (both passed as arguments). Gprof however, views all calls to multithread() as equivalent for the purposes of computing time spent in children. Since some functions I pass to multithread() take much longer than others my call graphs are mostly useless. (To those wondering if threading is the issue here: no, multithread() can optionally, and did in this case, run everything sequentially on the calling thread only).

  3. It says here that "... the number-of-calls figures are derived by counting, not sampling. They are completely accurate...". Yet I find my call graph giving me 5345859132+784984078 as call stats to my most-called function, where the first number is supposed to be direct calls, and the second recursive calls (which are all from itself). Since this implied I had a bug, I put in long (64-bit) counters into the code and did the same run again. My counts: 5345859132 direct, and 78094395406 self-recursive calls. There are a lot of digits there, so I'll point out the recursive calls I measure are 78bn, versus 784m from Gprof: a factor of 100 different. Both runs were single threaded and unoptimised code, one compiled -g and the other -pg.

This was GNU Gprof (GNU Binutils for Debian) 2.18.0.20080103 running under 64-bit Debian Lenny, if that helps anyone.

2
  • 1
    Yes, it does sampling, but not for number-of-calls figures. Interestingly, following your link ultimately led me to an updated version of the manual page I linked to in my post, new URL: sourceware.org/binutils/docs/gprof/… This repeats the quote in part (iii) of my answer, but also says "In multi-threaded applications, or single threaded applications that link with multi-threaded libraries, the counts are only deterministic if the counting function is thread-safe. (Note: beware that the mcount counting function in glibc is not thread-safe)." Jun 22, 2012 at 4:30
  • 1
    It is not clear to me if this explains my result in (iii). My code was linked -lpthread -lm and declared both a "pthread_t *thr" and a "pthread_mutex_t nextLock = PTHREAD_MUTEX_INITIALIZER" static variable even when it was running single threaded. I would ordinarily presume that "link with multi-threaded libraries" means actually using those libraries, and to a greater extent than this, but I could be wrong! Jun 22, 2012 at 6:05
33

Use Valgrind, callgrind and kcachegrind:

valgrind --tool=callgrind ./(Your binary)

generates callgrind.out.x. Read it using kcachegrind.

Use gprof (add -pg):

cc -o myprog myprog.c utils.c -g -pg 

(not so good for multi-threads, function pointers)

Use google-perftools:

Uses time sampling, I/O and CPU bottlenecks are revealed.

Intel VTune is the best (free for educational purposes).

Others: AMD Codeanalyst (since replaced with AMD CodeXL), OProfile, 'perf' tools (apt-get install linux-tools)

0
8

Also worth mentioning are

  1. HPCToolkit (http://hpctoolkit.org/) - Open-source, works for parallel programs and has a GUI with which to look at the results multiple ways
  2. Intel VTune (https://software.intel.com/en-us/vtune) - If you have intel compilers this is very good
  3. TAU (http://www.cs.uoregon.edu/research/tau/home.php)

I have used HPCToolkit and VTune and they are very effective at finding the long pole in the tent and do not need your code to be recompiled (except that you have to use -g -O or RelWithDebInfo type build in CMake to get meaningful output). I have heard TAU is similar in capabilities.

7

For single-threaded programs you can use igprof, The Ignominous Profiler: https://igprof.org/ .

It is a sampling profiler, along the lines of the... long... answer by Mike Dunlavey, which will gift wrap the results in a browsable call stack tree, annotated with the time or memory spent in each function, either cumulative or per-function.

1
  • It looks interesting, but fails to compile with GCC 9.2. (Debian/Sid) I made an issue on github. Jan 11, 2020 at 21:47
5

Actually a bit surprised not many mentioned about google/benchmark , while it is a bit cumbersome to pin the specific area of code, specially if the code base is a little big one, however I found this really helpful when used in combination with callgrind

IMHO identifying the piece that is causing bottleneck is the key here. I'd however try and answer the following questions first and choose tool based on that

  1. is my algorithm correct ?
  2. are there locks that are proving to be bottle necks ?
  3. is there a specific section of code that's proving to be a culprit ?
  4. how about IO, handled and optimized ?

valgrind with the combination of callgrind and kcachegrind should provide a decent estimation on the points above, and once it's established that there are issues with some section of code, I'd suggest to do a micro bench mark - google benchmark is a good place to start.

1
  • I found that my google benchmark numbers looked more accurate than gprof when i measured sections of code. As you said its really good for micro benchmarking. but If you want a more holistic picture you need a different approach. Jun 19, 2020 at 16:22
4

These are the two methods I use for speeding up my code:

For CPU bound applications:

  1. Use a profiler in DEBUG mode to identify questionable parts of your code
  2. Then switch to RELEASE mode and comment out the questionable sections of your code (stub it with nothing) until you see changes in performance.

For I/O bound applications:

  1. Use a profiler in RELEASE mode to identify questionable parts of your code.

N.B.

If you don't have a profiler, use the poor man's profiler. Hit pause while debugging your application. Most developer suites will break into assembly with commented line numbers. You're statistically likely to land in a region that is eating most of your CPU cycles.

For CPU, the reason for profiling in DEBUG mode is because if your tried profiling in RELEASE mode, the compiler is going to reduce math, vectorize loops, and inline functions which tends to glob your code into an un-mappable mess when it's assembled. An un-mappable mess means your profiler will not be able to clearly identify what is taking so long because the assembly may not correspond to the source code under optimization. If you need the performance (e.g. timing sensitive) of RELEASE mode, disable debugger features as needed to keep a usable performance.

For I/O-bound, the profiler can still identify I/O operations in RELEASE mode because I/O operations are either externally linked to a shared library (most of the time) or in the worst case, will result in a sys-call interrupt vector (which is also easily identifiable by the profiler).

3
  • 2
    +1 The poor man's method works just as well for I/O bound as for CPU bound, and I recommend doing all performance tuning in DEBUG mode. When you're finished tuning, then turn on RELEASE. It will make an improvement if the program is CPU-bound in your code. Here's a crude but short video of the process. Jun 27, 2014 at 20:55
  • 4
    I wouldn't use DEBUG builds for performance profiling. Often have I seen that performance critical parts in DEBUG mode are completely optimized away in release mode. Another problem is the use of asserts in debug code which add noise to the performance.
    – gast128
    Jul 21, 2014 at 18:55
  • 3
    Did you read my post at all? "If you need the performance (e.g. timing sensitive) of RELEASE mode, disable debugger features as needed to keep a usable performance", "Then switch to RELEASE mode and comment the questionable sections of your code (Stub it with nothing) until you see changes in performance."? I said check for possible problem areas in debug mode and verify those problems in release mode to avoid the pitfall you mentioned.
    – seo
    Jul 22, 2014 at 15:54
4

You can use the iprof library:

https://gitlab.com/Neurochrom/iprof

https://github.com/Neurochrom/iprof

It's cross-platform and allows you not to measure performance of your application also in real-time. You can even couple it with a live graph. Full disclaimer: I am the author.

4

You can use a logging framework like loguru since it includes timestamps and total uptime which can be used nicely for profiling:

2
  • 1
    what does this have to do with profiling?
    – sehe
    Jun 28, 2023 at 13:45
  • @sehe: You can see how long what takes by the log timestamps Jun 28, 2023 at 14:42
3

At work we have a really nice tool that helps us monitoring what we want in terms of scheduling. This has been useful numerous times.

It's in C++ and must be customized to your needs. Unfortunately I can't share code, just concepts. You use a "large" volatile buffer containing timestamps and event ID that you can dump post mortem or after stopping the logging system (and dump this into a file for example).

You retrieve the so-called large buffer with all the data and a small interface parses it and shows events with name (up/down + value) like an oscilloscope does with colors (configured in .hpp file).

You customize the amount of events generated to focus solely on what you desire. It helped us a lot for scheduling issues while consuming the amount of CPU we wanted based on the amount of logged events per second.

You need 3 files :

toolname.hpp // interface
toolname.cpp // code
tool_events_id.hpp // Events ID

The concept is to define events in tool_events_id.hpp like that :

// EVENT_NAME                         ID      BEGIN_END BG_COLOR NAME
#define SOCK_PDU_RECV_D               0x0301  //@D00301 BGEEAAAA # TX_PDU_Recv
#define SOCK_PDU_RECV_F               0x0302  //@F00301 BGEEAAAA # TX_PDU_Recv

You also define a few functions in toolname.hpp :

#define LOG_LEVEL_ERROR 0
#define LOG_LEVEL_WARN 1
// ...

void init(void);
void probe(id,payload);
// etc

Wherever in you code you can use :

toolname<LOG_LEVEL>::log(EVENT_NAME,VALUE);

The probe function uses a few assembly lines to retrieve the clock timestamp ASAP and then sets an entry in the buffer. We also have an atomic increment to safely find an index where to store the log event. Of course buffer is circular.

Hope the idea is not obfuscated by the lack of sample code.

1

As no one mentioned Arm MAP, I'd add it as personally I have successfully used Map to profile a C++ scientific program.

Arm MAP is the profiler for parallel, multithreaded or single threaded C, C++, Fortran and F90 codes. It provides in-depth analysis and bottleneck pinpointing to the source line. Unlike most profilers, it's designed to be able to profile pthreads, OpenMP or MPI for parallel and threaded code.

MAP is commercial software.

1

use a debugging software how to identify where the code is running slowly ?

just think you have a obstacle while you are in motion then it will decrease your speed

like that unwanted reallocation's looping,buffer overflows,searching,memory leakages etc operations consumes more execution power it will effect adversely over performance of the code, Be sure to add -pg to compilation before profiling:

g++ your_prg.cpp -pg or cc my_program.cpp -g -pg as per your compiler

haven't tried it yet but I've heard good things about google-perftools. It is definitely worth a try.

valgrind --tool=callgrind ./(Your binary)

It will generate a file called gmon.out or callgrind.out.x. You can then use kcachegrind or debugger tool to read this file. It will give you a graphical analysis of things with results like which lines cost how much.

i think so

1
  • 1
    I actually would suggest adding some optimization flag, e.g. compile with g++ -O -pg -Wall your_prg.cpp Sep 9, 2020 at 13:07
1

There are several tools available for this purpose. Each has its own unique features that other lacks.

Gprof

  • a profiling tool that comes with the GNU Compiler Collection (GCC).

  • It also provides information on the time spent in each function of your program.

  • Usage:

    g++ -pg -o my_program my_program.cpp
    ./my_program
    gprof ./my_program
    
  • Web => gprof - GNU Project

Screenshot:

gprof

  1. perf:
    • Description: perf is a powerful performance analysis tool that is part of the Linux kernel. It provides a wide range of features, including CPU performance counters, tracepoints, and more.
    • Usage:
      perf record ./my_program
      perf report
      
    • Web => perf - Linux man page

Screenshot:

perf

  1. Valgrind:
    • Description: a programming tool for memory debugging, memory leak detection, and profiling.

    • Usage:

      valgrind --tool=callgrind ./my_program
      
    • Web Valgrind - Callgrind

Screenshot:

valingard

  1. Google Performance Tools (gperftools):

    • Description: gperftools is a collection of performance tools by Google. It includes CPU and heap profilers (pprof and heap-checker), among others.
    • Usage:
      LD_PRELOAD=/path/to/libtcmalloc.so CPUPROFILE=./my_program.prof ./my_program
      pprof --text ./my_program ./my_program.prof
      
    • Web gperftools - GitHub
  2. KCachegrind:

    • Description: KCachegrind is a visual front-end for profiling data generated by Callgrind. It provides an interactive GUI for analyzing the profiling information.
    • Web [KCachegrind Handbook]

(https://docs.kde.org/stable5/en/kdesdk/kcachegrind/index.html)

  1. Clang's AddressSanitizer and UndefinedBehaviorSanitizer:
    • Description: These sanitizers can help you find memory issues and undefined behavior in your code, which can indirectly lead to performance problems.
    • Web [AddressSanitizer]

(https://clang.llvm.org/docs/AddressSanitizer.html)

Note:

Use according to your needs, Hope it helps.

0

Use -pg flag when compiling and linking the code and run the executable file. While this program is executed, profiling data is collected in the file a.out.
There is two different type of profiling

1- Flat profiling:
by running the command gprog --flat-profile a.out you got the following data
- what percentage of the overall time was spent for the function,
- how many seconds were spent in a function—including and excluding calls to sub-functions,
- the number of calls,
- the average time per call.

2- graph profiling
us the command gprof --graph a.out to get the following data for each function which includes
- In each section, one function is marked with an index number.
- Above function , there is a list of functions that call the function .
- Below function , there is a list of functions that are called by the function .

To get more info you can look in https://sourceware.org/binutils/docs-2.32/gprof/

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