| name | promql |
| license | Apache-2.0 |
| description | Write, validate, and optimize PromQL for Prometheus / Grafana Mimir / Grafana Cloud Metrics. Covers `rate` vs `irate` vs `increase`, label matchers and regex, `sum / avg / topk / by / without` aggregation, classic + native `histogram_quantile`, ratios with divide-by-zero guards, `absent` / `changes` for staleness, time offsets and `predict_linear`, recording-rule naming, SLO + burn-rate math, and a cardinality-hunting playbook. Use when writing a metric query, fixing wrong p95s, building an error-budget alert, debugging "query is slow", finding the noisy label that blew up cardinality, or migrating a dashboard query to a recording rule — even when the user says "calculate the error rate", "p99 latency", "sum by service", "why is this query slow", or "what's filling Mimir" without naming PromQL. |
PromQL Query Patterns
Docs: https://prometheus.io/docs/prometheus/latest/querying/basics/
PromQL returns either an instant vector, a range vector, or a scalar.
Golden rule: rate() / increase() require a range vector ≥ 4× the scrape interval. 60s scrape → use [5m] minimum.
Prerequisites
- A Prometheus / Mimir / Grafana Cloud endpoint to query (
/api/v1/query or via Grafana Explore)
- The PromQL pattern library in
references/patterns.md
Common Workflows
1. Write + validate a query
PROM=http://localhost:9090
EXPR='sum(rate(http_requests_total{status_code=~"5.."}[5m])) by (service)'
curl -sG --data-urlencode "query=${EXPR}" \
"$PROM/api/v1/query" | jq '.status, (.data.result|length)'
curl -sG --data-urlencode "match[]=http_requests_total" "$PROM/api/v1/series" | jq '.data | length'
2. Common patterns to copy
Per-status request rate (aggregate AFTER rate):
sum(rate(http_requests_total{job="api"}[5m])) by (status_code)
p95 latency (must keep le in the inner aggregation):
histogram_quantile(0.95,
sum(rate(http_request_duration_seconds_bucket[5m])) by (le, service))
Error rate with divide-by-zero guard:
sum(rate(http_requests_total{status_code=~"5.."}[5m]))
/ (sum(rate(http_requests_total[5m])) > 0)
Full library (recording rules, SLO burn-rate, offsets, cardinality hunt, native histograms): references/patterns.md.
3. Convert a slow dashboard query into a recording rule
groups:
- name: http_request_rates
interval: 1m
rules:
- record: job:http_request_duration_p95:rate5m
expr: |
histogram_quantile(0.95,
sum(rate(http_request_duration_seconds_bucket[5m])) by (le, job))
curl -sG --data-urlencode "query=job:http_request_duration_p95:rate5m" \
"$PROM/api/v1/query" | jq '.data.result | length'
Common bugs
histogram_quantile returns NaN → forgot by (le) in the inner aggregation
- "No data" → check the metric exists (
/api/v1/series) and the window ≥ 4× scrape interval
- Wrong rate magnitude → counter was aggregated before
rate() (always rate() first)
- Query timeout → series count too high; use
topk(...) + a recording rule + drop high-cardinality labels (see references/patterns.md)
Resources