mirror of
https://github.com/golang/go
synced 2024-11-22 18:04:48 -07:00
3fd4917472
initilization -> initialization
Change-Id: Ie5edd30559941f2d044280d8d586c2c2692d5b69
GitHub-Last-Rev: 7495a8c722
GitHub-Pull-Request: golang/go#42749
Reviewed-on: https://go-review.googlesource.com/c/go/+/272026
Reviewed-by: Emmanuel Odeke <emmanuel@orijtech.com>
Trust: Ian Lance Taylor <iant@golang.org>
473 lines
18 KiB
HTML
473 lines
18 KiB
HTML
<!--{
|
||
"Title": "Diagnostics",
|
||
"Template": true
|
||
}-->
|
||
|
||
<!--
|
||
NOTE: In this document and others in this directory, the convention is to
|
||
set fixed-width phrases with non-fixed-width spaces, as in
|
||
<code>hello</code> <code>world</code>.
|
||
Do not send CLs removing the interior tags from such phrases.
|
||
-->
|
||
|
||
<h2 id="introduction">Introduction</h2>
|
||
|
||
<p>
|
||
The Go ecosystem provides a large suite of APIs and tools to
|
||
diagnose logic and performance problems in Go programs. This page
|
||
summarizes the available tools and helps Go users pick the right one
|
||
for their specific problem.
|
||
</p>
|
||
|
||
<p>
|
||
Diagnostics solutions can be categorized into the following groups:
|
||
</p>
|
||
|
||
<ul>
|
||
<li><strong>Profiling</strong>: Profiling tools analyze the complexity and costs of a
|
||
Go program such as its memory usage and frequently called
|
||
functions to identify the expensive sections of a Go program.</li>
|
||
<li><strong>Tracing</strong>: Tracing is a way to instrument code to analyze latency
|
||
throughout the lifecycle of a call or user request. Traces provide an
|
||
overview of how much latency each component contributes to the overall
|
||
latency in a system. Traces can span multiple Go processes.</li>
|
||
<li><strong>Debugging</strong>: Debugging allows us to pause a Go program and examine
|
||
its execution. Program state and flow can be verified with debugging.</li>
|
||
<li><strong>Runtime statistics and events</strong>: Collection and analysis of runtime stats and events
|
||
provides a high-level overview of the health of Go programs. Spikes/dips of metrics
|
||
helps us to identify changes in throughput, utilization, and performance.</li>
|
||
</ul>
|
||
|
||
<p>
|
||
Note: Some diagnostics tools may interfere with each other. For example, precise
|
||
memory profiling skews CPU profiles and goroutine blocking profiling affects scheduler
|
||
trace. Use tools in isolation to get more precise info.
|
||
</p>
|
||
|
||
<h2 id="profiling">Profiling</h2>
|
||
|
||
<p>
|
||
Profiling is useful for identifying expensive or frequently called sections
|
||
of code. The Go runtime provides <a href="https://golang.org/pkg/runtime/pprof/">
|
||
profiling data</a> in the format expected by the
|
||
<a href="https://github.com/google/pprof/blob/master/doc/README.md">pprof visualization tool</a>.
|
||
The profiling data can be collected during testing
|
||
via <code>go</code> <code>test</code> or endpoints made available from the <a href="/pkg/net/http/pprof/">
|
||
net/http/pprof</a> package. Users need to collect the profiling data and use pprof tools to filter
|
||
and visualize the top code paths.
|
||
</p>
|
||
|
||
<p>Predefined profiles provided by the <a href="/pkg/runtime/pprof">runtime/pprof</a> package:</p>
|
||
|
||
<ul>
|
||
<li>
|
||
<strong>cpu</strong>: CPU profile determines where a program spends
|
||
its time while actively consuming CPU cycles (as opposed to while sleeping or waiting for I/O).
|
||
</li>
|
||
<li>
|
||
<strong>heap</strong>: Heap profile reports memory allocation samples;
|
||
used to monitor current and historical memory usage, and to check for memory leaks.
|
||
</li>
|
||
<li>
|
||
<strong>threadcreate</strong>: Thread creation profile reports the sections
|
||
of the program that lead the creation of new OS threads.
|
||
</li>
|
||
<li>
|
||
<strong>goroutine</strong>: Goroutine profile reports the stack traces of all current goroutines.
|
||
</li>
|
||
<li>
|
||
<strong>block</strong>: Block profile shows where goroutines block waiting on synchronization
|
||
primitives (including timer channels). Block profile is not enabled by default;
|
||
use <code>runtime.SetBlockProfileRate</code> to enable it.
|
||
</li>
|
||
<li>
|
||
<strong>mutex</strong>: Mutex profile reports the lock contentions. When you think your
|
||
CPU is not fully utilized due to a mutex contention, use this profile. Mutex profile
|
||
is not enabled by default, see <code>runtime.SetMutexProfileFraction</code> to enable it.
|
||
</li>
|
||
</ul>
|
||
|
||
|
||
<p><strong>What other profilers can I use to profile Go programs?</strong></p>
|
||
|
||
<p>
|
||
On Linux, <a href="https://perf.wiki.kernel.org/index.php/Tutorial">perf tools</a>
|
||
can be used for profiling Go programs. Perf can profile
|
||
and unwind cgo/SWIG code and kernel, so it can be useful to get insights into
|
||
native/kernel performance bottlenecks. On macOS,
|
||
<a href="https://developer.apple.com/library/content/documentation/DeveloperTools/Conceptual/InstrumentsUserGuide/">Instruments</a>
|
||
suite can be used profile Go programs.
|
||
</p>
|
||
|
||
<p><strong>Can I profile my production services?</strong></p>
|
||
|
||
<p>Yes. It is safe to profile programs in production, but enabling
|
||
some profiles (e.g. the CPU profile) adds cost. You should expect to
|
||
see performance downgrade. The performance penalty can be estimated
|
||
by measuring the overhead of the profiler before turning it on in
|
||
production.
|
||
</p>
|
||
|
||
<p>
|
||
You may want to periodically profile your production services.
|
||
Especially in a system with many replicas of a single process, selecting
|
||
a random replica periodically is a safe option.
|
||
Select a production process, profile it for
|
||
X seconds for every Y seconds and save the results for visualization and
|
||
analysis; then repeat periodically. Results may be manually and/or automatically
|
||
reviewed to find problems.
|
||
Collection of profiles can interfere with each other,
|
||
so it is recommended to collect only a single profile at a time.
|
||
</p>
|
||
|
||
<p>
|
||
<strong>What are the best ways to visualize the profiling data?</strong>
|
||
</p>
|
||
|
||
<p>
|
||
The Go tools provide text, graph, and <a href="http://valgrind.org/docs/manual/cl-manual.html">callgrind</a>
|
||
visualization of the profile data using
|
||
<code><a href="https://github.com/google/pprof/blob/master/doc/README.md">go tool pprof</a></code>.
|
||
Read <a href="https://blog.golang.org/profiling-go-programs">Profiling Go programs</a>
|
||
to see them in action.
|
||
</p>
|
||
|
||
<p>
|
||
<img width="800" src="https://storage.googleapis.com/golangorg-assets/pprof-text.png">
|
||
<br>
|
||
<small>Listing of the most expensive calls as text.</small>
|
||
</p>
|
||
|
||
<p>
|
||
<img width="800" src="https://storage.googleapis.com/golangorg-assets/pprof-dot.png">
|
||
<br>
|
||
<small>Visualization of the most expensive calls as a graph.</small>
|
||
</p>
|
||
|
||
<p>Weblist view displays the expensive parts of the source line by line in
|
||
an HTML page. In the following example, 530ms is spent in the
|
||
<code>runtime.concatstrings</code> and cost of each line is presented
|
||
in the listing.</p>
|
||
|
||
<p>
|
||
<img width="800" src="https://storage.googleapis.com/golangorg-assets/pprof-weblist.png">
|
||
<br>
|
||
<small>Visualization of the most expensive calls as weblist.</small>
|
||
</p>
|
||
|
||
<p>
|
||
Another way to visualize profile data is a <a href="http://www.brendangregg.com/flamegraphs.html">flame graph</a>.
|
||
Flame graphs allow you to move in a specific ancestry path, so you can zoom
|
||
in/out of specific sections of code.
|
||
The <a href="https://github.com/google/pprof">upstream pprof</a>
|
||
has support for flame graphs.
|
||
</p>
|
||
|
||
<p>
|
||
<img width="800" src="https://storage.googleapis.com/golangorg-assets/flame.png">
|
||
<br>
|
||
<small>Flame graphs offers visualization to spot the most expensive code-paths.</small>
|
||
</p>
|
||
|
||
<p><strong>Am I restricted to the built-in profiles?</strong></p>
|
||
|
||
<p>
|
||
Additionally to what is provided by the runtime, Go users can create
|
||
their custom profiles via <a href="/pkg/runtime/pprof/#Profile">pprof.Profile</a>
|
||
and use the existing tools to examine them.
|
||
</p>
|
||
|
||
<p><strong>Can I serve the profiler handlers (/debug/pprof/...) on a different path and port?</strong></p>
|
||
|
||
<p>
|
||
Yes. The <code>net/http/pprof</code> package registers its handlers to the default
|
||
mux by default, but you can also register them yourself by using the handlers
|
||
exported from the package.
|
||
</p>
|
||
|
||
<p>
|
||
For example, the following example will serve the pprof.Profile
|
||
handler on :7777 at /custom_debug_path/profile:
|
||
</p>
|
||
|
||
<p>
|
||
<pre>
|
||
package main
|
||
|
||
import (
|
||
"log"
|
||
"net/http"
|
||
"net/http/pprof"
|
||
)
|
||
|
||
func main() {
|
||
mux := http.NewServeMux()
|
||
mux.HandleFunc("/custom_debug_path/profile", pprof.Profile)
|
||
log.Fatal(http.ListenAndServe(":7777", mux))
|
||
}
|
||
</pre>
|
||
</p>
|
||
|
||
<h2 id="tracing">Tracing</h2>
|
||
|
||
<p>
|
||
Tracing is a way to instrument code to analyze latency throughout the
|
||
lifecycle of a chain of calls. Go provides
|
||
<a href="https://godoc.org/golang.org/x/net/trace">golang.org/x/net/trace</a>
|
||
package as a minimal tracing backend per Go node and provides a minimal
|
||
instrumentation library with a simple dashboard. Go also provides
|
||
an execution tracer to trace the runtime events within an interval.
|
||
</p>
|
||
|
||
<p>Tracing enables us to:</p>
|
||
|
||
<ul>
|
||
<li>Instrument and analyze application latency in a Go process.</li>
|
||
<li>Measure the cost of specific calls in a long chain of calls.</li>
|
||
<li>Figure out the utilization and performance improvements.
|
||
Bottlenecks are not always obvious without tracing data.</li>
|
||
</ul>
|
||
|
||
<p>
|
||
In monolithic systems, it's relatively easy to collect diagnostic data
|
||
from the building blocks of a program. All modules live within one
|
||
process and share common resources to report logs, errors, and other
|
||
diagnostic information. Once your system grows beyond a single process and
|
||
starts to become distributed, it becomes harder to follow a call starting
|
||
from the front-end web server to all of its back-ends until a response is
|
||
returned back to the user. This is where distributed tracing plays a big
|
||
role to instrument and analyze your production systems.
|
||
</p>
|
||
|
||
<p>
|
||
Distributed tracing is a way to instrument code to analyze latency throughout
|
||
the lifecycle of a user request. When a system is distributed and when
|
||
conventional profiling and debugging tools don’t scale, you might want
|
||
to use distributed tracing tools to analyze the performance of your user
|
||
requests and RPCs.
|
||
</p>
|
||
|
||
<p>Distributed tracing enables us to:</p>
|
||
|
||
<ul>
|
||
<li>Instrument and profile application latency in a large system.</li>
|
||
<li>Track all RPCs within the lifecycle of a user request and see integration issues
|
||
that are only visible in production.</li>
|
||
<li>Figure out performance improvements that can be applied to our systems.
|
||
Many bottlenecks are not obvious before the collection of tracing data.</li>
|
||
</ul>
|
||
|
||
<p>The Go ecosystem provides various distributed tracing libraries per tracing system
|
||
and backend-agnostic ones.</p>
|
||
|
||
|
||
<p><strong>Is there a way to automatically intercept each function call and create traces?</strong></p>
|
||
|
||
<p>
|
||
Go doesn’t provide a way to automatically intercept every function call and create
|
||
trace spans. You need to manually instrument your code to create, end, and annotate spans.
|
||
</p>
|
||
|
||
<p><strong>How should I propagate trace headers in Go libraries?</strong></p>
|
||
|
||
<p>
|
||
You can propagate trace identifiers and tags in the
|
||
<a href="/pkg/context#Context"><code>context.Context</code></a>.
|
||
There is no canonical trace key or common representation of trace headers
|
||
in the industry yet. Each tracing provider is responsible for providing propagation
|
||
utilities in their Go libraries.
|
||
</p>
|
||
|
||
<p>
|
||
<strong>What other low-level events from the standard library or
|
||
runtime can be included in a trace?</strong>
|
||
</p>
|
||
|
||
<p>
|
||
The standard library and runtime are trying to expose several additional APIs
|
||
to notify on low level internal events. For example,
|
||
<a href="/pkg/net/http/httptrace#ClientTrace"><code>httptrace.ClientTrace</code></a>
|
||
provides APIs to follow low-level events in the life cycle of an outgoing request.
|
||
There is an ongoing effort to retrieve low-level runtime events from
|
||
the runtime execution tracer and allow users to define and record their user events.
|
||
</p>
|
||
|
||
<h2 id="debugging">Debugging</h2>
|
||
|
||
<p>
|
||
Debugging is the process of identifying why a program misbehaves.
|
||
Debuggers allow us to understand a program’s execution flow and current state.
|
||
There are several styles of debugging; this section will only focus on attaching
|
||
a debugger to a program and core dump debugging.
|
||
</p>
|
||
|
||
<p>Go users mostly use the following debuggers:</p>
|
||
|
||
<ul>
|
||
<li>
|
||
<a href="https://github.com/derekparker/delve">Delve</a>:
|
||
Delve is a debugger for the Go programming language. It has
|
||
support for Go’s runtime concepts and built-in types. Delve is
|
||
trying to be a fully featured reliable debugger for Go programs.
|
||
</li>
|
||
<li>
|
||
<a href="https://golang.org/doc/gdb">GDB</a>:
|
||
Go provides GDB support via the standard Go compiler and Gccgo.
|
||
The stack management, threading, and runtime contain aspects that differ
|
||
enough from the execution model GDB expects that they can confuse the
|
||
debugger, even when the program is compiled with gccgo. Even though
|
||
GDB can be used to debug Go programs, it is not ideal and may
|
||
create confusion.
|
||
</li>
|
||
</ul>
|
||
|
||
<p><strong>How well do debuggers work with Go programs?</strong></p>
|
||
|
||
<p>
|
||
The <code>gc</code> compiler performs optimizations such as
|
||
function inlining and variable registerization. These optimizations
|
||
sometimes make debugging with debuggers harder. There is an ongoing
|
||
effort to improve the quality of the DWARF information generated for
|
||
optimized binaries. Until those improvements are available, we recommend
|
||
disabling optimizations when building the code being debugged. The following
|
||
command builds a package with no compiler optimizations:
|
||
|
||
<p>
|
||
<pre>
|
||
$ go build -gcflags=all="-N -l"
|
||
</pre>
|
||
</p>
|
||
|
||
As part of the improvement effort, Go 1.10 introduced a new compiler
|
||
flag <code>-dwarflocationlists</code>. The flag causes the compiler to
|
||
add location lists that helps debuggers work with optimized binaries.
|
||
The following command builds a package with optimizations but with
|
||
the DWARF location lists:
|
||
|
||
<p>
|
||
<pre>
|
||
$ go build -gcflags="-dwarflocationlists=true"
|
||
</pre>
|
||
</p>
|
||
|
||
<p><strong>What’s the recommended debugger user interface?</strong></p>
|
||
|
||
<p>
|
||
Even though both delve and gdb provides CLIs, most editor integrations
|
||
and IDEs provides debugging-specific user interfaces.
|
||
</p>
|
||
|
||
<p><strong>Is it possible to do postmortem debugging with Go programs?</strong></p>
|
||
|
||
<p>
|
||
A core dump file is a file that contains the memory dump of a running
|
||
process and its process status. It is primarily used for post-mortem
|
||
debugging of a program and to understand its state
|
||
while it is still running. These two cases make debugging of core
|
||
dumps a good diagnostic aid to postmortem and analyze production
|
||
services. It is possible to obtain core files from Go programs and
|
||
use delve or gdb to debug, see the
|
||
<a href="https://golang.org/wiki/CoreDumpDebugging">core dump debugging</a>
|
||
page for a step-by-step guide.
|
||
</p>
|
||
|
||
<h2 id="runtime">Runtime statistics and events</h2>
|
||
|
||
<p>
|
||
The runtime provides stats and reporting of internal events for
|
||
users to diagnose performance and utilization problems at the
|
||
runtime level.
|
||
</p>
|
||
|
||
<p>
|
||
Users can monitor these stats to better understand the overall
|
||
health and performance of Go programs.
|
||
Some frequently monitored stats and states:
|
||
</p>
|
||
|
||
<ul>
|
||
<li><code><a href="/pkg/runtime/#ReadMemStats">runtime.ReadMemStats</a></code>
|
||
reports the metrics related to heap
|
||
allocation and garbage collection. Memory stats are useful for
|
||
monitoring how much memory resources a process is consuming,
|
||
whether the process can utilize memory well, and to catch
|
||
memory leaks.</li>
|
||
<li><code><a href="/pkg/runtime/debug/#ReadGCStats">debug.ReadGCStats</a></code>
|
||
reads statistics about garbage collection.
|
||
It is useful to see how much of the resources are spent on GC pauses.
|
||
It also reports a timeline of garbage collector pauses and pause time percentiles.</li>
|
||
<li><code><a href="/pkg/runtime/debug/#Stack">debug.Stack</a></code>
|
||
returns the current stack trace. Stack trace
|
||
is useful to see how many goroutines are currently running,
|
||
what they are doing, and whether they are blocked or not.</li>
|
||
<li><code><a href="/pkg/runtime/debug/#WriteHeapDump">debug.WriteHeapDump</a></code>
|
||
suspends the execution of all goroutines
|
||
and allows you to dump the heap to a file. A heap dump is a
|
||
snapshot of a Go process' memory at a given time. It contains all
|
||
allocated objects as well as goroutines, finalizers, and more.</li>
|
||
<li><code><a href="/pkg/runtime#NumGoroutine">runtime.NumGoroutine</a></code>
|
||
returns the number of current goroutines.
|
||
The value can be monitored to see whether enough goroutines are
|
||
utilized, or to detect goroutine leaks.</li>
|
||
</ul>
|
||
|
||
<h3 id="execution-tracer">Execution tracer</h3>
|
||
|
||
<p>Go comes with a runtime execution tracer to capture a wide range
|
||
of runtime events. Scheduling, syscall, garbage collections,
|
||
heap size, and other events are collected by runtime and available
|
||
for visualization by the go tool trace. Execution tracer is a tool
|
||
to detect latency and utilization problems. You can examine how well
|
||
the CPU is utilized, and when networking or syscalls are a cause of
|
||
preemption for the goroutines.</p>
|
||
|
||
<p>Tracer is useful to:</p>
|
||
<ul>
|
||
<li>Understand how your goroutines execute.</li>
|
||
<li>Understand some of the core runtime events such as GC runs.</li>
|
||
<li>Identify poorly parallelized execution.</li>
|
||
</ul>
|
||
|
||
<p>However, it is not great for identifying hot spots such as
|
||
analyzing the cause of excessive memory or CPU usage.
|
||
Use profiling tools instead first to address them.</p>
|
||
|
||
<p>
|
||
<img width="800" src="https://storage.googleapis.com/golangorg-assets/tracer-lock.png">
|
||
</p>
|
||
|
||
<p>Above, the go tool trace visualization shows the execution started
|
||
fine, and then it became serialized. It suggests that there might
|
||
be lock contention for a shared resource that creates a bottleneck.</p>
|
||
|
||
<p>See <a href="https://golang.org/cmd/trace/"><code>go</code> <code>tool</code> <code>trace</code></a>
|
||
to collect and analyze runtime traces.
|
||
</p>
|
||
|
||
<h3 id="godebug">GODEBUG</h3>
|
||
|
||
<p>Runtime also emits events and information if
|
||
<a href="https://golang.org/pkg/runtime/#hdr-Environment_Variables">GODEBUG</a>
|
||
environmental variable is set accordingly.</p>
|
||
|
||
<ul>
|
||
<li>GODEBUG=gctrace=1 prints garbage collector events at
|
||
each collection, summarizing the amount of memory collected
|
||
and the length of the pause.</li>
|
||
<li>GODEBUG=inittrace=1 prints a summary of execution time and memory allocation
|
||
information for completed package initialization work.</li>
|
||
<li>GODEBUG=schedtrace=X prints scheduling events every X milliseconds.</li>
|
||
</ul>
|
||
|
||
<p>The GODEBUG environmental variable can be used to disable use of
|
||
instruction set extensions in the standard library and runtime.</p>
|
||
|
||
<ul>
|
||
<li>GODEBUG=cpu.all=off disables the use of all optional
|
||
instruction set extensions.</li>
|
||
<li>GODEBUG=cpu.<em>extension</em>=off disables use of instructions from the
|
||
specified instruction set extension.<br>
|
||
<em>extension</em> is the lower case name for the instruction set extension
|
||
such as <em>sse41</em> or <em>avx</em>.</li>
|
||
</ul>
|