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conduct-retrospective

pjt222
업데이트됨 2 days ago
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정보

이 Claude Skill은 상태 보고서와 지표를 분석하여 성공 요인과 개선 영역을 식별함으로써 구조화된 프로젝트 또는 스프린트 회고를 지원합니다. 이는 담당자와 마감일이 지정된 실행 가능한 후속 조치 항목을 생성합니다. 개발자들은 스프린트, 마일스톤 또는 주요 이벤트 후에 이를 사용하여 체계적으로 습득한 교훈을 기록해야 합니다.

빠른 설치

Claude Code

추천
기본
npx skills add pjt222/agent-almanac -a claude-code
플러그인 명령대체
/plugin add https://github.com/pjt222/agent-almanac
Git 클론대체
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/conduct-retrospective

Claude Code에서 이 명령을 복사하여 붙여넣어 스킬을 설치하세요

문서

Conduct a Retrospective

Facilitate a structured retrospective that reviews recent project execution, identifies what worked and what didn't, and produces actionable improvement items that feed back into project processes. This skill transforms raw project data into evidence-backed learnings with specific actions, owners, and due dates.

When to Use

  • End of a sprint (sprint retrospective)
  • End of a project phase or milestone
  • After a significant incident, failure, or success
  • Quarterly review of ongoing project processes
  • Before starting a similar project (lessons learned review)

Inputs

  • Required: Period under review (sprint number, date range, or milestone)
  • Optional: Status reports from the review period
  • Optional: Sprint velocity and completion data
  • Optional: Previous retrospective actions (to check closure)
  • Optional: Team feedback or survey results

Procedure

Step 1: Gather Retrospective Data

Read available artifacts from the review period:

  • STATUS-REPORT-*.md files for the period
  • SPRINT-PLAN.md for planned vs actual
  • BACKLOG.md for item flow and cycle times
  • Previous RETRO-*.md for open action items

Extract key facts:

  • Items planned vs completed
  • Velocity trend
  • Blockers encountered and resolution time
  • Unplanned work that entered the sprint
  • Open action items from previous retrospectives

Got: Data summary with quantitative metrics (velocity, completion %, blocker count).

If fail: If no artifacts exist, base the retrospective on qualitative observations.

Step 2: Structure "What Went Well"

List 3-5 things that worked well, with evidence:

## What Went Well
| # | Observation | Evidence |
|---|------------|---------|
| 1 | [Specific positive observation] | [Metric, example, or artifact reference] |
| 2 | [Specific positive observation] | [Metric, example, or artifact reference] |
| 3 | [Specific positive observation] | [Metric, example, or artifact reference] |

Focus on practices to continue, not only outcomes. "Daily standups kept blockers visible" is more actionable than "We delivered on time."

Got: 3-5 evidence-backed positive observations.

If fail: If nothing went well, look harder — even small wins matter. At minimum, the team completed the period.

Step 3: Structure "What Needs Improvement"

List 3-5 things that need improvement, with evidence:

## What Needs Improvement
| # | Observation | Evidence | Impact |
|---|------------|---------|--------|
| 1 | [Specific issue] | [Metric, example, or incident] | [Effect on delivery] |
| 2 | [Specific issue] | [Metric, example, or incident] | [Effect on delivery] |
| 3 | [Specific issue] | [Metric, example, or incident] | [Effect on delivery] |

Be specific and factual. "Estimation was off" is vague. "3 of 5 items exceeded estimates by >50%, adding 8 unplanned days" is actionable.

Got: 3-5 evidence-backed improvement areas with stated impact.

If fail: If the team claims everything is fine, compare planned vs actual metrics — gaps reveal issues.

Step 4: Generate Improvement Actions

For each improvement area, create an actionable item:

## Improvement Actions
| ID | Action | Owner | Due Date | Success Criteria | Source |
|----|--------|-------|----------|-----------------|--------|
| A-001 | [Specific action] | [Name] | [Date] | [How to verify success] | Improvement #1 |
| A-002 | [Specific action] | [Name] | [Date] | [How to verify success] | Improvement #2 |
| A-003 | [Specific action] | [Name] | [Date] | [How to verify success] | Improvement #3 |

Each action must be:

  • Specific (not "improve estimation" but "add estimation review step to grooming")
  • Owned (one person accountable)
  • Time-bound (due date within next 1-2 sprints)
  • Verifiable (success criteria defined)

Got: 2-4 improvement actions with owners and due dates.

If fail: If actions are too vague, apply the "how would you verify this was done?" test.

Step 5: Review Previous Actions and Write Report

Check previous retrospective actions for closure:

## Previous Action Review
| ID | Action | Owner | Status | Notes |
|----|--------|-------|--------|-------|
| A-prev-001 | [Action from last retro] | [Name] | Closed / Open / Recurring | [Outcome] |
| A-prev-002 | [Action from last retro] | [Name] | Closed / Open / Recurring | [Outcome] |

Flag recurring items (same issue appearing in 3+ retrospectives) — these need escalation or a different approach.

Write the complete retrospective:

# Retrospective: [Sprint N / Phase Name / Date Range]
## Date: [YYYY-MM-DD]
## Document ID: RETRO-[PROJECT]-[YYYY-MM-DD]

### Period Summary
- **Period**: [Sprint N / dates]
- **Planned**: [N items / N points]
- **Completed**: [N items / N points]
- **Velocity**: [N] (previous: [N])
- **Unplanned Work**: [N items]

### What Went Well
[From Step 2]

### What Needs Improvement
[From Step 3]

### Improvement Actions
[From Step 4]

### Previous Action Review
[From Step 5]

---
*Retrospective facilitated by: [Name/Agent]*

Save as RETRO-[YYYY-MM-DD].md.

Got: Complete retrospective document saved with actions, evidence, and previous action review.

If fail: If the retrospective has no improvement actions, it's not driving change — revisit Step 3.

Validation

  • Retrospective file created with date-stamped filename
  • Period summary includes quantitative metrics
  • "What Went Well" has 3-5 evidence-backed items
  • "What Needs Improvement" has 3-5 evidence-backed items
  • Improvement actions have owners, due dates, and success criteria
  • Previous retrospective actions reviewed for closure
  • Recurring issues flagged

Pitfalls

  • Blame game: Retrospectives review processes and practices, not people. Frame issues as systemic, not personal.
  • Actions without follow-through: The biggest retrospective failure. Always review previous actions before creating new ones.
  • Too many actions: 2-4 focused actions are better than 10 vague ones. The team can only absorb so many changes.
  • No evidence: "We feel estimation is bad" is opinion. "3 of 5 items exceeded estimates by 50%" is data. Always attach evidence.
  • Skipping the positives: Only discussing problems is demoralizing. Celebrating wins reinforces good practices.

Related Skills

  • generate-status-report — status reports provide the data for retrospectives
  • manage-backlog — improvement actions feed back into the backlog
  • plan-sprint — retrospective learnings improve sprint planning accuracy
  • draft-project-charter — review charter assumptions and risk accuracy
  • create-work-breakdown-structure — review estimation accuracy against WBS

GitHub 저장소

pjt222/agent-almanac
경로: i18n/caveman-lite/skills/conduct-retrospective
0
agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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