| name | statsd |
| description | StatsD metric instrumentation: push metrics over UDP, choose the right metric type, name consistently. Invoke whenever task involves any interaction with StatsD metrics — emitting counters, gauges, timers, histograms, sets, or distributions; configuring DogStatsD tags; tuning sampling rates; or integrating with Graphite, Prometheus, or Telegraf backends. |
StatsD
Choose the right metric type, name it with dot-delimited hierarchy, tag dimensions instead of encoding them in names.
StatsD is fire-and-forget: UDP means zero latency impact, but wrong metric types or bad naming corrupt your data
silently.
References
- Metric types — [
${CLAUDE_SKILL_DIR}/references/metric-types.md]: Wire format details, type comparison, sampling
correction
- Naming — [
${CLAUDE_SKILL_DIR}/references/naming.md]: Graphite namespace mapping, character rules, naming
examples
- DogStatsD — [
${CLAUDE_SKILL_DIR}/references/dogstatsd.md]: Events format, service checks, protocol versions,
distributions vs histograms
- Aggregation — [
${CLAUDE_SKILL_DIR}/references/aggregation.md]: Flush mechanics, Graphite downsampling, DogStatsD
aggregation, timestamps
- Client patterns — [
${CLAUDE_SKILL_DIR}/references/client-patterns.md]: High-throughput tuning, error handling,
K8s deployment, UDS configuration
- Backends — [
${CLAUDE_SKILL_DIR}/references/backends.md]: statsd_exporter config, Telegraf setup, migration
guides
Metric Types
Wire format: <metric_name>:<value>|<type>[|@<sample_rate>][|#<tags>]
Decision Matrix
| Question | Type |
|---|
| How many times did X happen? | Counter (c) |
| What is X right now? | Gauge (g) |
| How long did X take? | Timer (ms) |
| What is the distribution of X? | Histogram (h) |
| How many unique X occurred? | Set (s) |
| What is the global distribution of X? | Distribution (d, DogStatsD only) |
Wrong metric type = wrong math at the server. A gauge used as a counter loses data between flushes; a counter used as a
gauge produces meaningless rates.
Counter (|c)
Measures rate of events over time. Server sums all values during flush interval, resets to 0 after flush, reports both
raw count and per-second rate.
- Use for: request counts, error counts, event occurrences (cache hits, logins)
- Sample rate correction: value multiplied by
1/rate
- Supports sampling (
|@<rate>)
Gauge (|g)
Instantaneous value at a point in time. Server stores last value received, retains between flushes (sticky).
- Use for: queue depth, active connections, memory/CPU usage, thread pool size
- Signed values (
+N, -N) modify current value incrementally
- Cannot set to a negative number directly — set to 0 first, then decrement
- Do not sample gauges — server cannot correct for sampling on point-in-time values
Timer (|ms)
Duration of an operation in milliseconds. Server computes per flush interval: count, mean, upper (max), lower (min),
sum, stddev, median, configurable percentiles (p90, p95, p99).
- Use for: HTTP request latency, DB query duration, function execution time
- Supports sampling (
|@<rate>)
Histogram (|h)
Distribution of values over time. Identical to timer in most implementations. DogStatsD treats histograms as the native
distribution type.
- Use for: request payload sizes, response body sizes, batch sizes
- Conceptually: timers measure duration, histograms measure arbitrary distributions
Set (|s)
Count of unique values per flush interval. Server tracks distinct values, reports cardinality at flush, resets.
- Use for: unique users, unique IPs, unique error codes per interval
- Do not sample sets — sampling breaks uniqueness tracking
Distribution (|d) — DogStatsD Only
Global distribution across all hosts. Raw values sent to Datadog servers (not aggregated locally). Use when you need
accurate fleet-wide percentiles.
See ${CLAUDE_SKILL_DIR}/references/dogstatsd.md for distributions vs histograms comparison and protocol version
details.
Naming
Format: <namespace>.<subsystem>.<target>.<metric>.<unit>
Example: myapp.api.request.duration.ms, myapp.cache.hit.count.total
Naming Rules
- Always namespace by service name —
myapp.api.requests not just requests
- Use dot-delimited hierarchy
- Include the unit:
.ms, .bytes, .total, .items
- Dimensions go in tags, not metric names (when tags are available)
- Use lowercase everywhere — some backends are case-sensitive
- Use underscores within path segments:
http_request not httpRequest
- No dashes — they break Graphite navigation
See ${CLAUDE_SKILL_DIR}/references/naming.md for Graphite namespace mapping, character rules table, and naming
anti-patterns.
Tags (DogStatsD)
Format: metric.name:1|c|#key1:value1,key2:value2 — comma-separated, no spaces.
Tag Rules
- Use tags for dimensions you will filter or group by — not metric names
- Keep cardinality bounded — each unique tag combination creates a separate time series
- No spaces in tag values — use underscores:
region:us_east
Unified Service Tagging
Set these as global/constant tags on the client — attach to every metric automatically:
env — Deployment environment (env:production)
service — Service name (service:payment-api)
version — Deployed version (version:2.1.0)
Tag Cardinality
Rule of thumb: if a tag can have >1000 distinct values, do not use it. Use logs or traces for high-cardinality data.
env:production — ~3-5 values: Yes
method:GET — ~7 values: Yes
status_code:200 — ~20-50 values: Yes
endpoint:/api/users — ~50-200 values: Caution
user_id:12345 — Unbounded: No
Aggregation and Flush
The flush cycle determines metric resolution. Default: 10 seconds.
- Counters reset to 0 after flush; gauges are sticky (retain last value)
- If no counter values received during flush: behavior depends on
deleteCounters config (default: send 0)
- Enable client-side aggregation for high-throughput applications (Go v5.0+, Java v3.0+, .NET v7.0+) — pre-aggregates
before sending to Agent
See ${CLAUDE_SKILL_DIR}/references/aggregation.md for flush mechanics, Graphite downsampling rules, DogStatsD
aggregation details, and pre-aggregated timestamps.
Client Patterns
Initialization
- One client instance per application — do not create per-request
- Set namespace prefix — auto-prepends to all metric names
- Set global/constant tags — env, service, version set once
- Close/flush on shutdown — buffered metrics lost otherwise
Buffering
Enable client-side buffering — packs multiple metrics into single UDP packets. Reduces syscall overhead in hot paths.
Most modern DogStatsD clients buffer by default. Call flush() before shutdown.
Sampling
Client randomly decides whether to send each metric based on sample rate. Datagram includes |@<rate> so server
corrects the count.
- < 1000 metrics/sec —
rate=1.0 (no sampling)
- 1000-10000/sec —
rate=0.5 to 0.1 for counters/timers
- > 10000/sec —
rate=0.1 or lower; enable client-side aggregation
Never sample gauges or sets — server cannot correct for these types.
See ${CLAUDE_SKILL_DIR}/references/client-patterns.md for high-throughput tuning steps, error handling, and Kubernetes
deployment patterns.
Backends
- Simple, self-hosted graphing — Graphite
- Cloud monitoring + APM — Datadog (DogStatsD)
- Prometheus ecosystem integration — statsd_exporter
- Flexible multi-output pipeline — Telegraf
- Migrating StatsD to Prometheus — statsd_exporter with relay
See ${CLAUDE_SKILL_DIR}/references/backends.md for statsd_exporter configuration, Telegraf setup, and migration
guides.
Application
When writing StatsD instrumentation:
- Choose the metric type based on what the value represents, not convenience.
- Apply naming conventions silently — don't narrate each rule.
- If an existing codebase contradicts a convention, follow the codebase and flag the divergence once.
- Always configure client-side buffering for production use.
When reviewing StatsD instrumentation:
- Check metric type correctness first — most common and most damaging mistake.
- Verify tag cardinality is bounded.
- Cite the specific issue and show the fix inline.
Integration
The coding skill governs workflow; this skill governs StatsD instrumentation choices.