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go.dev reference GitHub Workflow Status GitHub

🚀 fgprof - The Full Go Profiler

fgprof is a sampling Go profiler that allows you to analyze On-CPU as well as Off-CPU (e.g. I/O) time together.

Go's builtin sampling CPU profiler can only show On-CPU time, but it's better than fgprof at that. Go also includes tracing profilers that can analyze I/O, but they can't be combined with the CPU profiler.

fgprof is designed for analyzing applications with mixed I/O and CPU workloads. This kind of profiling is also known as wall-clock profiling.

⚠️ Please upgrade to Go 1.19 or newer. In older versions of Go fgprof can cause significant STW latencies in applications with a lot of goroutines (> 1-10k). See CL 387415 for more details.

Quick Start

If this is the first time you hear about fgprof, you should start by reading about The Problem & How it Works.

There is no need to choose between fgprof and the builtin profiler. Here is how to add both to your application:

package main

import(
	_ "net/http/pprof"
	"github.com/felixge/fgprof"
)

func main() {
	http.DefaultServeMux.Handle("/debug/fgprof", fgprof.Handler())
	go func() {
		log.Println(http.ListenAndServe(":6060", nil))
	}()

	// <code to profile>
}

fgprof is compatible with the go tool pprof visualizer, so taking and analyzing a 3s profile is as simple as:

go tool pprof --http=:6061 http://localhost:6060/debug/fgprof?seconds=3

Additionally fgprof supports the plain text format used by Brendan Gregg's FlameGraph utility:

git clone https://github.com/brendangregg/FlameGraph
cd FlameGraph
curl -s 'localhost:6060/debug/fgprof?seconds=3&format=folded' > fgprof.folded
./flamegraph.pl fgprof.folded > fgprof.svg

Which tool you prefer is up to you, but one thing I like about Gregg's tool is that you can filter the plaintext files using grep which can be very useful when analyzing large programs.

If you don't have a program to profile right now, you can go run ./example which should allow you to reproduce the graphs you see above. If you've never seen such graphs before, and are unsure how to read them, head over to Brendan Gregg's Flame Graph page.

The Problem

Let's say you've been tasked to optimize a simple program that has a loop calling out to three functions:

func main() {
	for {
		// Http request to a web service that might be slow.
		slowNetworkRequest()
		// Some heavy CPU computation.
		cpuIntensiveTask()
		// Poorly named function that you don't understand yet.
		weirdFunction()
	}
}

One way to decide which of these three functions you should focus your attention on would be to wrap each function call like this:

start := time.Start()
slowNetworkRequest()
fmt.Printf("slowNetworkRequest: %s\n", time.Since(start))
// ...

However, this can be very tedious for large programs. You'll also have to figure out how to average the numbers in case they fluctuate. And once you've done that, you'll have to repeat the process for the functions called by the function you decide to focus on.

/debug/pprof/profile

So, this seems like a perfect use case for a profiler. Let's try the /debug/pprof/profile endpoint of the builtin net/http/pprof pkg to analyze our program for 10s:

import _ "net/http/pprof"

func main() {
	go func() {
		log.Println(http.ListenAndServe(":6060", nil))
	}()

	// <code to profile>
}
go tool pprof -http=:6061 http://localhost:6060/debug/pprof/profile?seconds=10

That was easy! Looks like we're spending all our time in cpuIntensiveTask(), so let's focus on that?

But before we get carried away, let's quickly double check this assumption by manually timing our function calls with time.Since() as described above:

slowNetworkRequest: 66.815041ms
cpuIntensiveTask: 30.000672ms
weirdFunction: 10.64764ms
slowNetworkRequest: 67.194516ms
cpuIntensiveTask: 30.000912ms
weirdFunction: 10.105371ms
// ...

Oh no, the builtin CPU profiler is misleading us! How is that possible? Well, it turns out the builtin profiler only shows On-CPU time. Time spent waiting on I/O is completely hidden from us.

/debug/pprof/trace

Let's try something else. The /debug/pprof/trace endpoint includes a "synchronization blocking profile", maybe that's what we need?

curl -so pprof.trace http://localhost:6060/debug/pprof/trace?seconds=10
go tool trace --pprof=sync pprof.trace > sync.pprof
go tool pprof --http=:6061 sync.pprof

Oh no, we're being mislead again. This profiler thinks all our time is spent on slowNetworkRequest(). It's completely missing cpuIntensiveTask(). And what about weirdFunction()? It seems like no builtin profiler can see it?

/debug/fgprof

So what can we do? Let's try fgprof, which is designed to analyze mixed I/O and CPU workloads like the one we're dealing with here. We can easily add it alongside the builtin profilers.

import(
	_ "net/http/pprof"
	"github.com/felixge/fgprof"
)

func main() {
	http.DefaultServeMux.Handle("/debug/fgprof", fgprof.Handler())
	go func() {
		log.Println(http.ListenAndServe(":6060", nil))
	}()

	// <code to profile>
}
go tool pprof --http=:6061 http://localhost:6060/debug/fgprof?seconds=10

Finally, a profile that shows all three of our functions and how much time we're spending on them. It also turns out our weirdFunction() was simply calling time.Sleep(), how weird indeed!

How it Works

fgprof

fgprof is implemented as a background goroutine that wakes up 99 times per second and calls runtime.GoroutineProfile. This returns a list of all goroutines regardless of their current On/Off CPU scheduling status and their call stacks.

This data is used to maintain an in-memory stack counter which can be converted to the pprof or folded output format. The meat of the implementation is super simple and < 100 lines of code, you should check it out.

The overhead of fgprof increases with the number of active goroutines (including those waiting on I/O, Channels, Locks, etc.) executed by your program. If your program typically has less than 1000 active goroutines, you shouldn't have much to worry about. However, at 10k or more goroutines fgprof might start to cause some noticeable overhead.

Go's builtin CPU Profiler

The builtin Go CPU profiler uses the setitimer(2) system call to ask the operating system to be sent a SIGPROF signal 100 times a second. Each signal stops the Go process and gets delivered to a random thread's sigtrampgo() function. This function then proceeds to call sigprof() or sigprofNonGo() to record the thread's current stack.

Since Go uses non-blocking I/O, Goroutines that wait on I/O are parked and not running on any threads. Therefore they end up being largely invisible to Go's builtin CPU profiler.

Known Issues

There is no perfect approach to profiling, and fgprof is no exception. Below is a list of known issues that will hopefully not be of practical concern for most users, but are important to highlight.

  • Internal C functions are not showing up in the stack traces, e.g. runtime.nanotime which is called by time.Since in the example program.
  • The current implementation is relying on the Go scheduler to schedule the internal goroutine at a fixed sample rate. Scheduler delays, especially biased ones, might cause inaccuracies.

Credits

The following articles helped me to learn more about how profilers in general, and the Go profiler in particular work.

License

fgprof is licensed under the MIT License.