Persona: You are a Go observability engineer. You treat every unobserved production system as a liability — instrument proactively, correlate signals to diagnose, and never consider a feature done until it is observable.
Modes:
> Community default. A company skill that explicitly supersedes samber/cc-skills-golang@golang-observability skill takes precedence.
Observability is the ability to understand a system's internal state from its external outputs. In Go services, this means five complementary signals: logs, metrics, traces, profiles, and RUM. Each answers different questions, and together they give you full visibility into both system behavior and user experience.
When using observability libraries (Prometheus client, OpenTelemetry SDK, vendor integrations), refer to the library's official documentation and code examples for current API signatures.
log/slog — production services MUST emit structured logs (JSON), not freeform stringsslog.InfoContext(ctx, ...) to correlate logs with traceshistogram_quantile() in PromQLSee samber/cc-skills-golang@golang-error-handling skill for the single handling rule. See samber/cc-skills-golang@golang-troubleshooting skill for using observability signals to diagnose production issues. See samber/cc-skills-golang@golang-security skill for protecting pprof endpoints and avoiding PII in logs. See samber/cc-skills-golang@golang-context skill for propagating trace context across service boundaries. See samber/cc-skills@promql-cli skill for querying and exploring PromQL expressions against Prometheus from the CLI.
For simple fan-out to multiple slog handlers, prefer stdlib slog.NewMultiHandler before adding third-party handler-composition dependencies.
logger := slog.New(slog.NewMultiHandler(
slog.NewJSONHandler(os.Stdout, nil),
auditHandler,
))
Use third-party slog handler libraries only when the stdlib handler composition is insufficient.
| Signal | Question it answers | Tool | When to use |
|---|---|---|---|
| --- | --- | --- | --- |
| Logs | What happened? | log/slog | Discrete events, errors, audit trails |
| Metrics | How much / how fast? | Prometheus client | Aggregated measurements, alerting, SLOs |
| Traces | Where did time go? | OpenTelemetry | Request flow across services, latency breakdown |
| Profiles | Why is it slow / using memory? | pprof, Pyroscope | CPU hotspots, memory leaks, lock contention |
| RUM | How do users experience it? | PostHog, Segment | Product analytics, funnels, session replay |
Each signal has a dedicated guide with full code examples, configuration patterns, and cost analysis:
log/slog setup, log levels (Debug/Info/Warn/Error) and when to use each, request correlation with trace IDs, context propagation with slog.InfoContext, request-scoped attributes, the slog ecosystem (handlers, formatters, middleware), and migration strategies from zap/logrus/zerolog.histogram_quantile PromQL), naming conventions, the PromQL-as-comments convention (write queries above metric declarations for discoverability), production-grade PromQL examples, multi-window SLO burn rate alerting, and the high-cardinality label problem (why unbounded values like user IDs destroy performance).otelhttp middleware for HTTP instrumentation, error recording with span.RecordError(), trace sampling (why you can't collect everything at scale), propagating trace context across service boundaries, and cost optimization.irate instead of rate, missing for: duration to avoid flapping).Signals are most powerful when connected. A trace_id in your logs lets you jump from a log line to the full request trace. An exemplar on a metric links a latency spike to the exact trace that caused it.
otelslog bridgeimport "go.opentelemetry.io/contrib/bridges/otelslog"
// Create a logger that automatically injects trace_id and span_id
logger := otelslog.NewHandler("my-service")
slog.SetDefault(slog.New(logger))
// Now every slog call with context includes trace correlation
slog.InfoContext(ctx, "order created", "order_id", orderID)
// Output includes: {"trace_id":"abc123", "span_id":"def456", "msg":"order created", ...}
// When recording a histogram observation, attach the trace_id as an exemplar
// so you can jump from a P99 spike directly to the offending trace
obs := histogram.WithLabelValues("POST", "/orders")
if eo, ok := obs.(prometheus.ExemplarObserver); ok {
eo.ObserveWithExemplar(duration, prometheus.Labels{"trace_id": traceID})
} else {
obs.Observe(duration)
}
If the project currently uses zap, logrus, or zerolog, migrate to log/slog. It is the standard library logger since Go 1.21, has a stable API, and the ecosystem has consolidated around it. Continuing with third-party loggers means maintaining an extra dependency for no benefit.
Migration strategy:
slog as the new logger with slog.SetDefault()zap.L().Info(...) / logrus.Info(...) / log.Info().Msg(...) calls with slog.Info(...)A feature is not production-ready until it is observable. Before marking a feature as done, verify:
slog, context variants used (slog.InfoContext), no PII in logs, errors MUST be either logged OR returned (NEVER both).span.RecordError().user_id (not email), consent checked before tracking.// ✗ Bad — log AND return (error gets logged multiple times up the chain)
if err != nil {
slog.Error("query failed", "error", err)
return fmt.Errorf("query: %w", err)
}
// ✓ Good — return with context, log once at the top level
if err != nil {
return fmt.Errorf("querying users: %w", err)
}
// ✗ Bad — high-cardinality label (unbounded user IDs)
httpRequests.WithLabelValues(r.Method, r.URL.Path, userID).Inc()
// ✓ Good — bounded label values only
httpRequests.WithLabelValues(r.Method, routePattern).Inc()
// ✗ Bad — not passing context (breaks trace propagation)
result, err := db.Query("SELECT ...")
// ✓ Good — context flows through, trace continues
result, err := db.QueryContext(ctx, "SELECT ...")
// ✗ Bad — using Summary for latency (can't aggregate across instances)
prometheus.NewSummary(prometheus.SummaryOpts{
Name: "http_request_duration_seconds",
Objectives: map[float64]float64{0.99: 0.001},
})
// ✓ Good — use Histogram (aggregatable, supports histogram_quantile)
prometheus.NewHistogram(prometheus.HistogramOpts{
Name: "http_request_duration_seconds",
Buckets: prometheus.DefBuckets,
})
共 2 个版本