configure-alerting-rules
Acerca de
Esta habilidad configura Prometheus Alertmanager para establecer alertas de incidentes accionables. Maneja árboles de enrutamiento, receptores (como Slack y PagerDuty) y funciones para reducir la fatiga de alertas. Úsela para implementar monitoreo proactivo, integrar con sistemas de guardia o migrar a una pila de alertas basada en Prometheus.
Instalación rápida
Claude Code
Recomendadonpx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/configure-alerting-rulesCopia y pega este comando en Claude Code para instalar esta habilidad
Documentación
Configure Alerting Rules
Set up Prometheus alerting rules + Alertmanager → reliable, actionable incident notifications.
See Extended Examples for complete config files + templates.
Use When
- Impl proactive monitoring w/ automated incident detection
- Route alerts to correct teams by severity + service ownership
- Cut alert fatigue via intelligent grouping + dedup
- Integrate monitoring w/ on-call systems (PagerDuty, Opsgenie)
- Establish escalation policies for critical prod issues
- Migrate legacy monitoring → Prometheus-based alerting
- Create actionable alerts guiding responders to resolution
In
- Required: Prometheus metrics to alert on (error rates, latency, saturation)
- Required: On-call rotation + escalation policies
- Optional: Existing alert defs to migrate
- Optional: Notification channels (Slack, email, PagerDuty)
- Optional: Runbook docs for common alerts
Do
Step 1: Deploy Alertmanager
Install + configure Alertmanager to receive alerts from Prometheus.
Docker Compose deployment (basic structure):
version: '3.8'
services:
alertmanager:
image: prom/alertmanager:v0.26.0
ports:
- "9093:9093"
volumes:
- ./alertmanager.yml:/etc/alertmanager/alertmanager.yml
# ... (see EXAMPLES.md for complete configuration)
Basic Alertmanager config (alertmanager.yml excerpt):
global:
resolve_timeout: 5m
slack_api_url: 'https://hooks.slack.com/services/YOUR/SLACK/WEBHOOK'
route:
receiver: 'default-receiver'
group_by: ['alertname', 'cluster', 'service']
group_wait: 30s
group_interval: 5m
repeat_interval: 4h
routes:
- match:
severity: critical
receiver: pagerduty-critical
# ... (see EXAMPLES.md for complete routing, inhibition rules, and receivers)
Configure Prometheus to use Alertmanager (prometheus.yml):
alerting:
alertmanagers:
- static_configs:
- targets:
- alertmanager:9093
timeout: 10s
api_version: v2
→ Alertmanager UI accessible at http://localhost:9093, Prometheus "Status > Alertmanagers" shows UP.
If err:
- Check Alertmanager logs:
docker logs alertmanager - Verify Prometheus can reach Alertmanager:
curl http://alertmanager:9093/api/v2/status - Test webhook URLs:
curl -X POST <SLACK_WEBHOOK_URL> -d '{"text":"test"}' - Valid. YAML syntax:
amtool check-config alertmanager.yml
Step 2: Define Alerting Rules in Prometheus
Create alerting rules that fire when conditions met.
Create alerting rules file (/etc/prometheus/rules/alerts.yml excerpt):
groups:
- name: instance_alerts
interval: 30s
rules:
- alert: InstanceDown
expr: up == 0
for: 5m
labels:
severity: critical
team: infrastructure
annotations:
summary: "Instance {{ $labels.instance }} is down"
description: "{{ $labels.instance }} has been down for >5min."
runbook_url: "https://wiki.example.com/runbooks/instance-down"
- alert: HighCPUUsage
expr: 100 - (avg by(instance) (rate(node_cpu_seconds_total{mode="idle"}[5m])) * 100) > 80
for: 10m
labels:
severity: warning
annotations:
summary: "High CPU usage on {{ $labels.instance }}"
# ... (see EXAMPLES.md for complete alerts)
Alert design best practices:
forduration: Prevents flapping alerts. Use 5-10 min for most alerts.- Descriptive annotations: Include current value, affected resource, runbook link.
- Severity levels: critical (pages on-call), warning (investigate), info (FYI)
- Team labels: Enable routing to correct team/channel
- Runbook links: Every alert should have runbook URL
Load rules into Prometheus:
# prometheus.yml
rule_files:
- "rules/*.yml"
Valid. + reload:
promtool check rules /etc/prometheus/rules/alerts.yml
curl -X POST http://localhost:9090/-/reload
→ Alerts visible in Prometheus "Alerts" page, alerts fire when thresholds exceeded, Alertmanager receives fired alerts.
If err:
- Check Prometheus logs for rule eval errors
- Valid. rule syntax w/
promtool check rules - Test alert queries independently in Prometheus UI
- Inspect alert state transitions: Inactive → Pending → Firing
Step 3: Create Notification Templates
Design readable, actionable notification msgs.
Create template file (/etc/alertmanager/templates/default.tmpl excerpt):
{{ define "slack.default.title" }}
[{{ .Status | toUpper }}] {{ .GroupLabels.alertname }}
{{ end }}
{{ define "slack.default.text" }}
{{ range .Alerts }}
*Alert:* {{ .Labels.alertname }}
*Severity:* {{ .Labels.severity }}
*Summary:* {{ .Annotations.summary }}
{{ if .Annotations.runbook_url }}*Runbook:* {{ .Annotations.runbook_url }}{{ end }}
{{ end }}
{{ end }}
# ... (see EXAMPLES.md for complete email and PagerDuty templates)
Use templates in receivers:
receivers:
- name: 'slack-custom'
slack_configs:
- channel: '#alerts'
title: '{{ template "slack.default.title" . }}'
text: '{{ template "slack.default.text" . }}'
→ Notifications formatted consistent, include all relevant context, actionable w/ runbook links.
If err:
- Test template rendering:
amtool template test --config.file=alertmanager.yml - Check template syntax errs in Alertmanager logs
- Use
{{ . | json }}to debug template data structure
Step 4: Configure Routing + Grouping
Optimize alert delivery w/ intelligent routing rules.
Advanced routing config (excerpt):
route:
receiver: 'default-receiver'
group_by: ['alertname', 'cluster', 'service']
group_wait: 30s
routes:
- match:
team: platform
receiver: 'team-platform'
routes:
- match:
severity: critical
receiver: 'pagerduty-platform'
group_wait: 10s
repeat_interval: 15m
continue: true # Also send to Slack
# ... (see EXAMPLES.md for complete routing with time intervals)
Grouping strategies:
# Group by alertname: All HighCPU alerts bundled together
group_by: ['alertname']
# Group by alertname AND cluster: Separate notifications per cluster
group_by: ['alertname', 'cluster']
→ Alerts routed to correct teams, grouped logically, timing appropriate for severity.
If err:
- Test routing:
amtool config routes test --config.file=alertmanager.yml --alertname=HighCPU --label=severity=critical - Check routing tree:
amtool config routes show --config.file=alertmanager.yml - Valid.
continue: trueif alert should match multi routes
Step 5: Implement Inhibition + Silencing
Cut alert noise w/ inhibition rules + temporary silences.
Inhibition rules (suppress dependent alerts):
inhibit_rules:
# Cluster down suppresses all node alerts in that cluster
- source_match:
alertname: 'ClusterDown'
severity: 'critical'
target_match_re:
alertname: '(InstanceDown|HighCPU|HighMemory)'
equal: ['cluster']
# Service down suppresses latency and error alerts
- source_match:
alertname: 'ServiceDown'
target_match_re:
alertname: '(HighLatency|HighErrorRate)'
equal: ['service', 'namespace']
# ... (see EXAMPLES.md for more inhibition patterns)
Create silences programmatically:
# Silence during maintenance
amtool silence add \
instance=app-server-1 \
--author="ops-team" \
--comment="Scheduled maintenance" \
--duration=2h
# List and manage silences
amtool silence query
amtool silence expire <SILENCE_ID>
→ Inhibition cuts cascade alerts auto, silences prevent notifications during planned maintenance.
If err:
- Test inhibition logic w/ live alerts
- Check Alertmanager UI "Silences" tab
- Valid. silence matchers exact (labels must match perfectly)
Step 6: Integrate with External Systems
Connect Alertmanager to PagerDuty, Opsgenie, Jira, etc.
PagerDuty integration (excerpt):
receivers:
- name: 'pagerduty'
pagerduty_configs:
- routing_key: 'YOUR_INTEGRATION_KEY'
severity: '{{ .CommonLabels.severity }}'
description: '{{ range .Alerts.Firing }}{{ .Annotations.summary }}{{ end }}'
details:
firing: '{{ .Alerts.Firing | len }}'
alertname: '{{ .GroupLabels.alertname }}'
# ... (see EXAMPLES.md for complete integration examples)
Webhook for custom integrations:
receivers:
- name: 'webhook-custom'
webhook_configs:
- url: 'https://your-webhook-endpoint.com/alerts'
send_resolved: true
→ Alerts create incidents in PagerDuty, appear in team comms channels, trigger on-call escalations.
If err:
- Valid. API keys/tokens valid
- Check network connectivity to external services
- Test webhook endpoints independently w/ curl
- Enable debug mode:
--log.level=debug
Check
- Alertmanager receives alerts from Prometheus successfully
- Alerts routed to correct teams by labels + severity
- Notifications delivered to Slack, email, or PagerDuty
- Alert grouping cuts notification volume appropriately
- Inhibition rules suppress dependent alerts correct
- Silences prevent notifications during maintenance windows
- Notification templates include runbook links + context
- Repeat interval prevents alert fatigue for long-running issues
- Resolved notifications sent when alerts clear
- External integrations (PagerDuty, Opsgenie) create incidents
Traps
- Alert fatigue: Too many low-pri alerts → responders ignore critical ones. Set strict thresholds, use inhibition.
- Missing
forduration: Alerts w/oforfire on transient spikes. Always use 5-10 min windows. - Overly broad grouping: Grouping by
['...']sends individual notifications. Use specific label grouping. - No runbook links: Alerts w/o runbooks leave responders guessing. Every alert needs runbook URL.
- Incorrect severity: Mislabeling warnings as critical desensitizes team. Reserve critical for emergencies.
- Forgotten silences: Silences w/o expiration can hide real issues. Always set end times.
- Single route: All alerts to one channel loses context. Use team-specific routing.
- No inhibition: Cascade alerts during outages create noise. Impl inhibition rules.
→
setup-prometheus-monitoring- Define metrics + recording rules feeding alerting rulesdefine-slo-sli-sla- Generate SLO burn rate alerts for error budget mgmtwrite-incident-runbook- Create runbooks linked from alert annotationsbuild-grafana-dashboards- Visualize alert firing history + silence patterns
Repositorio GitHub
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