Runbook Creation
Overview
Create comprehensive operational runbooks that provide step-by-step procedures for common operational tasks, incident response, and system maintenance.
When to Use
- •Incident response procedures
- •Standard operating procedures (SOPs)
- •On-call playbooks
- •System maintenance guides
- •Disaster recovery procedures
- •Deployment runbooks
- •Escalation procedures
- •Service restoration guides
Incident Response Runbook Template
markdown
# Incident Response Runbook ## Quick Reference **Severity Levels:** - P0 (Critical): Complete outage, data loss, security breach - P1 (High): Major feature down, significant user impact - P2 (Medium): Minor feature degradation, limited user impact - P3 (Low): Cosmetic issues, minimal user impact **Response Times:** - P0: Immediate (24/7) - P1: 15 minutes (business hours), 1 hour (after hours) - P2: 4 hours (business hours) - P3: Next business day **Escalation Contacts:** - On-call Engineer: PagerDuty rotation - Engineering Manager: +1-555-0100 - VP Engineering: +1-555-0101 - CTO: +1-555-0102 ## Table of Contents 1. [Service Down](#service-down) 2. [Database Issues](#database-issues) 3. [High CPU/Memory Usage](#high-cpu-memory-usage) 4. [API Performance Degradation](#api-performance-degradation) 5. [Security Incidents](#security-incidents) 6. [Data Loss Recovery](#data-loss-recovery) 7. [Rollback Procedures](#rollback-procedures) --- ## Service Down ### Symptoms - Health check endpoint returning 500 errors - Users unable to access application - Load balancer showing all instances unhealthy - Alerts: `service_down`, `health_check_failed` ### Severity: P0 (Critical) ### Initial Response (5 minutes) 1. **Acknowledge the incident** ```bash # Acknowledge in PagerDuty # Post in #incidents Slack channel
- •
Create incident channel
codeCreate Slack channel: #incident-YYYY-MM-DD-service-down Post incident details and status updates
- •
Assess impact
bash# Check service status kubectl get pods -n production # Check recent deployments kubectl rollout history deployment/api -n production # Check logs kubectl logs -f deployment/api -n production --tail=100
Investigation Steps
Check Application Health
bash
# 1. Check pod status kubectl get pods -n production -l app=api # Expected output: All pods Running # NAME READY STATUS RESTARTS AGE # api-7d8c9f5b6d-4xk2p 1/1 Running 0 2h # api-7d8c9f5b6d-7nm8r 1/1 Running 0 2h # 2. Check pod logs for errors kubectl logs -f deployment/api -n production --tail=100 | grep -i error # 3. Check application endpoints curl -v https://api.example.com/health curl -v https://api.example.com/api/v1/status # 4. Check database connectivity kubectl exec -it deployment/api -n production -- sh psql $DATABASE_URL -c "SELECT 1"
Check Infrastructure
bash
# 1. Check load balancer aws elb describe-target-health \ --target-group-arn arn:aws:elasticloadbalancing:... \ --query 'TargetHealthDescriptions[*].[Target.Id,TargetHealth.State]' \ --output table # 2. Check DNS resolution dig api.example.com nslookup api.example.com # 3. Check SSL certificates echo | openssl s_client -connect api.example.com:443 2>/dev/null | \ openssl x509 -noout -dates # 4. Check network connectivity kubectl exec -it deployment/api -n production -- \ curl -v https://database.example.com:5432
Check Database
bash
# 1. Check database connections psql $DATABASE_URL -c "SELECT count(*) FROM pg_stat_activity" # 2. Check for locks psql $DATABASE_URL -c " SELECT pid, usename, pg_blocking_pids(pid) as blocked_by, query FROM pg_stat_activity WHERE cardinality(pg_blocking_pids(pid)) > 0 " # 3. Check database size psql $DATABASE_URL -c " SELECT pg_size_pretty(pg_database_size(current_database())) " # 4. Check long-running queries psql $DATABASE_URL -c " SELECT pid, now() - query_start as duration, query FROM pg_stat_activity WHERE state = 'active' ORDER BY duration DESC LIMIT 10 "
Resolution Steps
Option 1: Restart Pods (Quick Fix)
bash
# Restart all pods (rolling restart) kubectl rollout restart deployment/api -n production # Watch restart progress kubectl rollout status deployment/api -n production # Verify pods are healthy kubectl get pods -n production -l app=api
Option 2: Scale Up (If Overload)
bash
# Check current replicas kubectl get deployment api -n production # Scale up kubectl scale deployment/api -n production --replicas=10 # Watch scaling kubectl get pods -n production -l app=api -w
Option 3: Rollback (If Bad Deploy)
bash
# Check deployment history kubectl rollout history deployment/api -n production # Rollback to previous version kubectl rollout undo deployment/api -n production # Rollback to specific revision kubectl rollout undo deployment/api -n production --to-revision=5 # Verify rollback kubectl rollout status deployment/api -n production
Option 4: Database Connection Reset
bash
# If database connection pool exhausted kubectl exec -it deployment/api -n production -- sh kill -HUP 1 # Reload process, reset connections # Or restart database connection pool psql $DATABASE_URL -c "SELECT pg_terminate_backend(pid) FROM pg_stat_activity WHERE application_name = 'api' AND state = 'idle'"
Verification
bash
# 1. Check health endpoint
curl https://api.example.com/health
# Expected: {"status": "healthy"}
# 2. Check API endpoints
curl https://api.example.com/api/v1/users
# Expected: Valid JSON response
# 3. Check metrics
# Visit https://grafana.example.com
# Verify:
# - Error rate < 1%
# - Response time < 500ms
# - All pods healthy
# 4. Check logs for errors
kubectl logs deployment/api -n production --tail=100 | grep -i error
# Expected: No new errors
Communication
Initial Update (within 5 minutes):
code
🚨 INCIDENT: Service Down Status: Investigating Severity: P0 Impact: All users unable to access application Start Time: 2025-01-15 14:30 UTC We are investigating reports of users unable to access the application. Our team is working to identify the root cause. Next update in 15 minutes.
Progress Update (every 15 minutes):
code
🔍 UPDATE: Service Down Status: Identified Root Cause: Database connection pool exhausted Action: Restarting application pods ETA: 5 minutes We have identified the issue and are implementing a fix.
Resolution Update:
code
✅ RESOLVED: Service Down Status: Resolved Resolution: Restarted application pods, reset database connections Duration: 23 minutes The service is now fully operational. We are monitoring closely and will conduct a post-mortem to prevent future occurrences.
Post-Incident
- •
Create post-mortem document
- •Timeline of events
- •Root cause analysis
- •Action items to prevent recurrence
- •
Update monitoring
- •Add alerts for this scenario
- •Improve detection time
- •
Update runbook
- •Document any new findings
- •Add shortcuts for faster resolution
Database Issues
High Connection Count
Symptoms:
- •Database rejecting new connections
- •Error: "too many connections"
- •Alert:
db_connections_high
Quick Fix:
bash
# 1. Check connection count psql $DATABASE_URL -c " SELECT count(*), application_name FROM pg_stat_activity GROUP BY application_name " # 2. Kill idle connections psql $DATABASE_URL -c " SELECT pg_terminate_backend(pid) FROM pg_stat_activity WHERE state = 'idle' AND query_start < now() - interval '10 minutes' " # 3. Restart connection pools kubectl rollout restart deployment/api -n production
Slow Queries
Symptoms:
- •API response times > 5 seconds
- •Database CPU at 100%
- •Alert:
slow_query_detected
Investigation:
sql
-- Find slow queries SELECT pid, now() - query_start as duration, query FROM pg_stat_activity WHERE state = 'active' ORDER BY duration DESC LIMIT 10; -- Check for missing indexes SELECT schemaname, tablename, seq_scan, seq_tup_read, idx_scan FROM pg_stat_user_tables WHERE seq_scan > 0 ORDER BY seq_scan DESC LIMIT 10; -- Kill long-running query (if needed) SELECT pg_terminate_backend(12345); -- Replace with actual PID
High CPU/Memory Usage
Symptoms
- •Pods being OOMKilled
- •Response times increasing
- •Alert:
high_memory_usage,high_cpu_usage
Investigation
bash
# 1. Check pod resources kubectl top pods -n production # 2. Check resource limits kubectl describe pod <pod-name> -n production | grep -A 5 Limits # 3. Check for memory leaks kubectl logs deployment/api -n production | grep -i "out of memory" # 4. Profile application (if needed) kubectl exec -it <pod-name> -n production -- sh # Run profiler: node --inspect, py-spy, etc.
Resolution
bash
# Option 1: Increase resources kubectl set resources deployment/api -n production \ --limits=cpu=2000m,memory=4Gi \ --requests=cpu=1000m,memory=2Gi # Option 2: Scale horizontally kubectl scale deployment/api -n production --replicas=6 # Option 3: Restart problematic pods kubectl delete pod <pod-name> -n production
Rollback Procedures
Application Rollback
bash
# 1. List deployment history kubectl rollout history deployment/api -n production # 2. Check specific revision kubectl rollout history deployment/api -n production --revision=5 # 3. Rollback to previous kubectl rollout undo deployment/api -n production # 4. Rollback to specific revision kubectl rollout undo deployment/api -n production --to-revision=5 # 5. Verify rollback kubectl rollout status deployment/api -n production kubectl get pods -n production
Database Rollback
bash
# 1. Check migration status npm run db:migrate:status # 2. Rollback last migration npm run db:migrate:undo # 3. Rollback to specific migration npm run db:migrate:undo --to 20250115120000-migration-name # 4. Verify database state psql $DATABASE_URL -c "\dt"
Escalation Path
- •
Level 1 - On-call Engineer (You)
- •Initial response and investigation
- •Attempt standard fixes from runbook
- •
Level 2 - Senior Engineers
- •Escalate if not resolved in 30 minutes
- •Escalate if issue is complex/unclear
- •Contact via PagerDuty or Slack
- •
Level 3 - Engineering Manager
- •Escalate if not resolved in 1 hour
- •Escalate if cross-team coordination needed
- •
Level 4 - VP Engineering / CTO
- •Escalate for P0 incidents > 2 hours
- •Escalate for security breaches
- •Escalate for data loss
Useful Commands
bash
# Kubernetes kubectl get pods -n production kubectl logs -f <pod-name> -n production kubectl describe pod <pod-name> -n production kubectl exec -it <pod-name> -n production -- sh kubectl top pods -n production # Database psql $DATABASE_URL -c "SELECT version()" psql $DATABASE_URL -c "SELECT * FROM pg_stat_activity" # AWS aws ecs list-tasks --cluster production aws rds describe-db-instances aws cloudwatch get-metric-statistics ... # Monitoring URLs # Grafana: https://grafana.example.com # Datadog: https://app.datadoghq.com # PagerDuty: https://example.pagerduty.com # Status Page: https://status.example.com
code
## Best Practices ### ✅ DO - Include quick reference section at top - Provide exact commands to run - Document expected outputs - Include verification steps - Add communication templates - Define severity levels clearly - Document escalation paths - Include useful links and contacts - Keep runbooks up-to-date - Test runbooks regularly - Include screenshots/diagrams - Document common gotchas ### ❌ DON'T - Use vague instructions - Skip verification steps - Forget to document prerequisites - Assume knowledge of tools - Skip communication guidelines - Forget to update after incidents ## Resources - [PagerDuty Incident Response](https://response.pagerduty.com/) - [Google SRE Book](https://sre.google/books/) - [Atlassian Incident Handbook](https://www.atlassian.com/incident-management/handbook)