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conduct-post-mortem

pjt222
更新于 6 days ago
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design

关于

This Claude Skill conducts blameless post-mortem analyses after incidents by reconstructing timelines and identifying systemic contributing factors. It generates actionable improvements and is used following production incidents, near-misses, or recurring issues. The skill focuses on learning from failures without individual blame to enhance system resilience.

快速安装

Claude Code

推荐
主要方式
npx skills add pjt222/agent-almanac -a claude-code
插件命令备选方式
/plugin add https://github.com/pjt222/agent-almanac
Git 克隆备选方式
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/conduct-post-mortem

在 Claude Code 中复制并粘贴此命令以安装该技能

技能文档

行事後

導無責事後以學事且增系韌。

  • 生產事故或服退後
  • 近錯之後
  • 查復現事
  • 跨組傳學

  • :事故詳(始終時、所影服、嚴)
  • :事窗間之日誌、度、警之取
  • :事中所用 runbook
  • :通信日誌(Slack、PagerDuty)

一:集原始數據

聚事諸構件:

# Export relevant logs (adjust timerange)
kubectl logs deployment/api-service \
  --since-time="2025-02-09T10:00:00Z" \
  --until-time="2025-02-09T11:30:00Z" > incident-logs.txt

# Export Prometheus metrics snapshot
curl -G 'http://prometheus:9090/api/v1/query_range' \
  --data-urlencode 'query=rate(http_requests_total{job="api"}[5m])' \
  --data-urlencode 'start=2025-02-09T10:00:00Z' \
  --data-urlencode 'end=2025-02-09T11:30:00Z' \
  --data-urlencode 'step=15s' > metrics.json

# Export alert history
amtool alert query --within=2h alertname="HighErrorRate" --output json > alerts.json

得: 日誌、度、警覆全事時。

敗: 數據不全→於報注缺。下次設更長留期。

二:建時線

按序重建:

## Timeline (all times UTC)

| Time     | Event | Source | Actor |
|----------|-------|--------|-------|
| 10:05:23 | First 5xx errors appear | nginx access logs | - |
| 10:06:45 | High error rate alert fires | Prometheus | - |
| 10:08:12 | On-call engineer paged | PagerDuty | System |
| 10:12:00 | Engineer acknowledges alert | PagerDuty | @alice |
| 10:15:30 | Database connection pool exhausted | app logs | - |
| 10:18:45 | Database queries identified as slow | pganalyze | @alice |
| 10:22:10 | Cache layer deployed as mitigation | kubectl | @alice |
| 10:35:00 | Error rate returns to normal | Prometheus | - |
| 10:40:00 | Incident marked resolved | PagerDuty | @alice |

得: 明、分分之序示何時何事。

敗: 時戳不合→確諸系用 NTP 且 UTC 日誌。

三:識貢因

用五何或魚骨析:

## Contributing Factors

### Immediate Cause
- Database connection pool exhausted (max 20 connections)
- Query introduced in v2.3.0 deployment lacked index

### Contributing Factors
1. **Monitoring Gap**: Connection pool utilization not monitored
2. **Testing Gap**: Load testing didn't include new query pattern
3. **Runbook Gap**: No documented procedure for DB connection issues
4. **Capacity Planning**: Pool size unchanged despite 3x traffic growth

### Systemic Issues
- No pre-deployment query plan review
- Database alerts only fire on total failure, not degradation

得: 多層因已識,避責。

敗: 析止於「工程師誤」→深挖。何使誤可發?

四:生動作項

建具可追之改:

## Action Items

| ID | Action | Owner | Deadline | Priority |
|----|--------|-------|----------|----------|
| AI-001 | Add connection pool metrics to Grafana | @bob | 2025-02-16 | High |
| AI-002 | Create runbook: DB connection saturation | @alice | 2025-02-20 | High |
| AI-003 | Add DB query plan check to CI/CD | @charlie | 2025-03-01 | Medium |
| AI-004 | Review and adjust connection pool size | @dan | 2025-02-14 | High |
| AI-005 | Implement DB slow query alerts (<100ms) | @bob | 2025-02-23 | Medium |
| AI-006 | Add load testing for new query patterns | @charlie | 2025-03-15 | Low |

得: 每項有主、期、明交付。

敗: 泛動作如「改測」不行。具體為宜。

五:寫與發報

用此模:

# Post-Mortem: API Service Degradation (2025-02-09)

**Date**: 2025-02-09
**Duration**: 1h 35min (10:05 - 11:40 UTC)
**Severity**: P1 (Critical service degraded)
**Authors**: @alice, @bob
**Reviewed**: 2025-02-10

## Summary
The API service experienced elevated error rates (40% of requests) due to
database connection pool exhaustion. Service was restored by deploying a
cache layer. No data loss occurred.

## Impact
- 40,000 failed requests over 1.5 hours
- 2,000 customers affected
- Revenue impact: ~$5,000 (estimated)

## Root Cause
Query introduced in v2.3.0 deployment performed a full table scan due to
missing index. Under increased load, this saturated the connection pool.

[... timeline, contributing factors, action items as above ...]

## What Went Well
- Alert fired within 90 seconds of first errors
- Mitigation deployed quickly (10 minutes from page to fix)
- Communication to customers was clear and timely

## Lessons Learned
- Database monitoring is insufficient; need connection-level metrics
- Load testing must cover new query patterns, not just volume
- Connection pool sizing hasn't kept pace with traffic growth

## Prevention
See Action Items above.

得: 報於事後 48 時內發至組與干係人。

敗: 報遲逾 1 週→學失鮮。優先事後。

六:於 standup/retro 察動作

追動作進:

# Create GitHub issues from action items
gh issue create --title "AI-001: Add connection pool metrics" \
  --body "From post-mortem PM-2025-02-09. Owner: @bob. Deadline: 2025-02-16" \
  --label "post-mortem,observability" \
  --assignee bob

# Set up recurring reminder
# Add to team calendar: Weekly review of open post-mortem items

得: 動作追於項管具,每週察。

敗: 動作懈→事復。高優項派主管。

  • 時線全且序準
  • 多貢因已識(非只一)
  • 動作有主、期、優
  • 報用無責語(無「X 致之」)
  • 報於 48 時內發諸干係人
  • 動作追於票系
  • 4 週後察已排

  • 責文化:用「誰」語非「何/因」。焦系非人。
  • 淺析:止於首因。必問「因」至少五次。
  • 泛動作:「改監」非可為。「於某日加度 X 於板 Y」為宜。
  • 無隨進:動作生而未察。設日曆提。
  • 懼透明:藏事減學。廣分(守安界)。

  • write-incident-runbook — 事中所引 runbook 之建
  • configure-alerting-rules — 依事後發現改警

GitHub 仓库

pjt222/agent-almanac
路径: i18n/wenyan-ultra/skills/conduct-post-mortem
0
agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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