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scrum-master-agent

@alirezarezvani · 收录于 1 周前 · 上游提交 8 个月前

Comprehensive Scrum Master assistant for sprint planning, backlog grooming, retrospectives, capacity planning, and daily standups with intelligent context-aware reporting

适合你,如果你是 Scrum Master 或敏捷教练,需要高效管理团队流程。

/ 下载安装
scrum-master-agent.skill双击,或拖进 Claude 桌面版 / Cowork,即完成安装↓ .skill↓ .zip
用别的 agent?下载 .zip 解压,把文件夹放进它的技能目录
Claude Code~/.claude/skills/(项目级 .claude/skills/)
Codex CLI~/.codex/skills/
Cursor自动读取上面两处目录
其他工具见其文档的「skills」目录;两个下载是同一份文件,只是名字不同
/ 通过 npx 安装 校验哈希
npx oh-my-skill add alirezarezvani/claude-code-skill-factory/scrum-master-agent
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- alirezarezvani/claude-code-skill-factory/scrum-master-agent
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify alirezarezvani/claude-code-skill-factory/scrum-master-agent
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
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怎么用

技能原文 SKILL.md作者撰写 · MIT · ba18b31

Scrum Master Agent

A production-ready Scrum Master assistant designed for SaaS startups and application engineering teams. This skill provides intelligent sprint analytics, capacity planning, backlog prioritization, and actionable insights with token-efficient, context-aware output formatting.

Capabilities
Sprint Management
  • Sprint Planning: Capacity-based story allocation with velocity tracking
  • Backlog Grooming: Priority scoring with effort/value/risk analysis
  • Sprint Health Monitoring: Real-time burndown tracking with predictive alerts
  • Velocity Analysis: Historical trend analysis with forecasting
Team Operations
  • Daily Standups: Ultra-lightweight progress summaries (50-100 tokens)
  • Capacity Planning: Team availability calculation with holiday/PTO handling
  • Sprint Retrospectives: Action items extraction with sentiment analysis
  • Risk Detection: Automated alerts for scope creep, velocity drops, blocked tasks
Multi-Tool Integration
  • Linear: Native JSON import with Linear-specific field mapping
  • Jira: REST API adapter with custom field support
  • GitHub Projects: GraphQL integration with issue/PR tracking
  • Azure DevOps: Work item queries with sprint hierarchy
Notification Integration
  • Slack Notifications: Token-efficient webhook integration with rich block formatting
  • MS Teams Notifications: Adaptive Card integration for Microsoft Teams channels
  • Optional/Disabled by Default: No setup required to use skill, notifications opt-in
  • User Choice: Select Slack or Teams via configuration or environment variables
  • Concise Summaries: 50-100 token notifications with top 3 risks only
Intelligent Output Design
  • Context Detection: Automatically adapts to Claude AI Desktop vs Claude Code
  • Token Efficiency: Summary-first approach with progressive disclosure
  • Conditional Alerts: Only shows warnings/risks when they exist
  • Format Optimization: Markdown tables for Claude AI, ASCII charts for CLI
Input Requirements
Supported Formats
  1. JSON (Recommended): ```json { "tool": "linear|jira|github|azure", "sprint_name": "Sprint 45", "start_date": "2025-11-05", "end_date": "2025-11-19", "team_capacity": 80, "stories": [...] } ```
  1. CSV: ```csv story_id,title,points,status,assignee,priority,blocked STORY-123,User login,5,In Progress,Alice,High,false ```
  1. YAML: ```yaml sprint: name: "Sprint 45" team:
  2. name: Alice capacity: 40
  3. name: Bob capacity: 40 ```
  1. Tool-Specific Exports:
  2. Linear: Export to JSON from project view
  3. Jira: Use REST API or CSV export
  4. GitHub Projects: GraphQL query or CSV export
  5. Azure DevOps: Work Item Query Results
Required Fields
  • Sprint metadata: name, start_date, end_date, team_capacity
  • Stories: id, title, points, status, assignee
  • Optional: priority, blocked, dependencies, labels, created_date
Data Quality
  • Story points must be numeric (Fibonacci or T-shirt sizes)
  • Dates in ISO 8601 format (YYYY-MM-DD)
  • Status values normalized to: Todo, In Progress, In Review, Done
  • Team capacity in story points per sprint
Output Formats
1. Daily Standups (Ultra-Lightweight)

Token Budget: 50-100 tokens

🚀 Sprint 45 - Day 7/10

✅ Completed: 3 stories (13 pts)
🔄 In Progress: 5 stories (21 pts)
⚠️ Blocked: 1 story (5 pts) - Needs DB access

Velocity: On track (65% complete, 70% time elapsed)
2. Sprint Planning (Moderate Detail)

Token Budget: 200-500 tokens

📊 Sprint 45 Planning Summary

Capacity: 80 pts | Committed: 75 pts | Buffer: 5 pts

High Priority (35 pts):
  - STORY-123: User authentication (8 pts)
  - STORY-124: Payment integration (13 pts)
  - STORY-125: Dashboard redesign (8 pts)

Recommendations:
  1. P0: Address DB access blocker
  2. P1: Reduce scope if velocity drops below 85%
  3. P2: Consider splitting STORY-124 (13 pts is risky)
3. Sprint Review (Full Report)

Token Budget: 500-1000 tokens

Includes:

  • Velocity trends (ASCII chart for CLI, table for Claude AI)
  • Burndown analysis with predictive completion date
  • Team performance metrics (throughput, cycle time)
  • Risk alerts (conditional - only if issues exist)
  • Prioritized recommendations (P0/P1/P2)
4. Retrospective Analysis

Token Budget: 300-500 tokens

🔍 Sprint 45 Retrospective

What Went Well:
  - 95% velocity achievement
  - Zero production incidents
  - Early story completion (3 days before deadline)

What Needs Improvement:
  - 2 stories blocked for >2 days
  - Code review delays (avg 18 hours)

Action Items:
  [P0] Establish DB access protocol (Owner: Alice, Due: 11/12)
  [P1] Set 8-hour code review SLA (Owner: Bob, Due: 11/15)
  [P2] Add automated status updates (Owner: Team, Due: 11/20)
5. Optional JSON Export

For tool integration and dashboards:

{
  "sprint": "Sprint 45",
  "metrics": {
    "velocity": 75,
    "completion_rate": 0.95,
    "cycle_time_avg": 3.2
  },
  "risks": [...],
  "recommendations": [...]
}
How to Use
Quick Invocations

Daily Standup:

@scrum-master-agent

Generate a quick standup summary for Sprint 45 using the attached Linear export.

Sprint Planning:

@scrum-master-agent

Help me plan Sprint 46. Team capacity is 80 points. Here's the backlog (CSV attached).
Prioritize based on effort, value, and risk.

Burndown Analysis:

@scrum-master-agent

Analyze Sprint 45 burndown. Are we on track? When will we likely finish?
Attached: Jira sprint export (JSON)

Retrospective:

@scrum-master-agent

Generate retrospective report for Sprint 45. Focus on blockers and cycle time.
Attached: GitHub Projects export (CSV)

Capacity Planning:

@scrum-master-agent

Calculate team capacity for next sprint. Alice is on PTO for 3 days, Bob has 2 days of meetings.
Team size: 4 engineers (40 pts each normally).
Advanced Usage

Multi-Tool Comparison:

Compare velocity trends across last 3 sprints using Linear data for Sprint 43-44 and Jira data for Sprint 45.

Risk Analysis:

Identify high-risk stories in the backlog. Flag anything with >8 points, blockers, or missing dependencies.

Custom Metrics:

Calculate sprint health score based on: velocity (40%), burndown trend (30%), blocked items (20%), team morale (10%).
Scripts
Core Modules
  • parse_input.py: Multi-format parser (JSON/CSV/YAML) with tool-specific adapters
  • tool_adapters.py: Integration adapters for Linear, Jira, GitHub, Azure DevOps
  • calculate_metrics.py: All 6 metric calculations (velocity, burndown, capacity, priority, health, retrospective)
  • detect_context.py: Environment detection (Claude AI Desktop vs Claude Code)
  • format_output.py: Context-aware report generation with token efficiency
  • notify_channels.py: Slack and MS Teams webhook integrations (optional)
  • prioritize_backlog.py: Priority scoring with effort/value/risk analysis
Calculation Details

1. Velocity Analysis:

  • Historical average over last 3-5 sprints
  • Trend analysis (improving/declining/stable)
  • Forecasting for next sprint

2. Burndown Tracking:

  • Daily story point completion
  • Ideal burndown line calculation
  • Predictive completion date (linear regression)

3. Capacity Planning:

  • Team availability calculation (PTO, holidays, meetings)
  • Story point allocation
  • Buffer recommendation (10-20% of capacity)

4. Priority Scoring:

  • Effort: Story points (normalized 0-10)
  • Value: Business impact (High=10, Medium=5, Low=2)
  • Risk: Blockers, dependencies, complexity (0-10)
  • Formula: priority_score = (value * 2 + (10 - effort) + (10 - risk)) / 4

5. Sprint Health Score:

  • Velocity: Actual vs committed (40% weight)
  • Burndown: Actual vs ideal (30% weight)
  • Blocked Items: Count and duration (20% weight)
  • Team Morale: Optional sentiment input (10% weight)
  • Scale: 0-100 (90+ = Excellent, 70-89 = Good, 50-69 = Fair, <50 = At Risk)

6. Retrospective Analysis:

  • Completed vs committed stories
  • Blocked item analysis (count, duration, causes)
  • Cycle time metrics (avg time from start to done)
  • Action item extraction from retro notes
Best Practices
Data Quality
  1. Consistent Story Pointing: Use Fibonacci (1,2,3,5,8,13) or T-shirt sizes (XS=1, S=2, M=3, L=5, XL=8)
  2. Accurate Status Updates: Update story status daily (automate if possible)
  3. Blocked Item Tracking: Always document why items are blocked and who can unblock
  4. Sprint Boundaries: Never change sprint scope after day 3 (exception: critical bugs)
Workflow Integration
  1. Daily Standups: Generate lightweight summary every morning (automated)
  2. Sprint Planning: Use priority scoring to allocate top 80% of capacity
  3. Mid-Sprint Check: Run health score on day 5-7 to catch issues early
  4. Retrospectives: Generate within 24 hours of sprint end while feedback is fresh
Token Efficiency
  1. Progressive Disclosure: Start with summary, offer details on request
  2. Conditional Alerts: Only show risks if they exist (don't report "No issues")
  3. Lazy Calculation: Compute detailed metrics only when asked
  4. Caching: Reuse calculations across multiple report types
Team Adoption
  1. Start Simple: Begin with daily standups, add complexity gradually
  2. Customize Thresholds: Adjust health score weights based on team values
  3. Automate Inputs: Set up CI/CD to export tool data automatically
  4. Iterate: Refine priority scoring based on team feedback
Limitations
Data Requirements
  • Requires structured sprint data (not suitable for ad-hoc work)
  • Story points must be assigned (can't prioritize unpointed stories)
  • Historical data needed for velocity trends (minimum 3 sprints)
Accuracy Considerations
  • Priority scoring is heuristic-based, not ML-driven (no predictive analytics)
  • Burndown predictions assume linear velocity (doesn't account for holidays, blockers)
  • Health score is subjective and depends on accurate weight configuration
Scope Boundaries
  • Does NOT: Integrate directly with tools (requires exports)
  • Does NOT: Send notifications or update tool state (read-only)
  • Does NOT: Replace Scrum Master judgment (augments decision-making)
Tool-Specific Notes
  • Linear: Requires manual JSON export (no API key support in this version)
  • Jira: Custom fields may need mapping in tool_adapters.py
  • GitHub Projects: Beta GraphQL API may change (adapter may need updates)
  • Azure DevOps: Work item hierarchy can be complex (flatten in export)
When NOT to Use This Skill
  • Kanban workflows: Skill is optimized for Scrum sprints (not continuous flow)
  • Non-software projects: Priority scoring assumes software development context
  • Single-person teams: Overhead not justified for solo developers
  • Ad-hoc work: Requires structured sprint planning and tracking
Installation
Claude Code (Recommended)
cp -r scrum-master-agent ~/.claude/skills/
Claude AI Desktop

Drag the scrum-master-agent.zip file into Claude Desktop.

Claude API

Use the /v1/skills endpoint to upload the skill package.

Notification Setup (Optional)

Notifications are disabled by default and completely optional. The skill works perfectly without any notification setup.

Option 1: Configuration File (Recommended)

# Copy example config
cp config.example.yaml config.yaml

# Edit config.yaml with your webhook URLs
# Set enabled: true
# Choose channel: slack or teams

Option 2: Environment Variables

export NOTIFY_ENABLED=true
export NOTIFY_CHANNEL=slack  # or teams
export SLACK_WEBHOOK_URL=https://hooks.slack.com/services/YOUR/WEBHOOK/URL
export TEAMS_WEBHOOK_URL=https://outlook.office.com/webhook/YOUR/WEBHOOK/URL

Getting Webhook URLs:

Slack:

  1. Go to https://api.slack.com/messaging/webhooks
  2. Create app and activate Incoming Webhooks
  3. Add webhook to workspace and select channel
  4. Copy webhook URL

Microsoft Teams:

  1. Open Teams channel
  2. Click "..." → Connectors → Incoming Webhook
  3. Configure webhook with name
  4. Copy webhook URL

Using Notifications:

@scrum-master-agent

Generate daily standup summary and send notification to Slack.

Notifications are token-efficient (50-100 tokens max) with:

  • Sprint name and status
  • Velocity and health metrics
  • Top 3 risks only (conditional)
  • Rich formatting (Slack blocks, Teams Adaptive Cards)
Version

Version: 1.1.0 (with Notification Support) Last Updated: 2025-11-05 Author: Claude Code Skills Factory License: MIT

Support

For issues, feature requests, or contributions, see the skill's GitHub repository or contact the Skills Factory maintainers.

按 MIT 许可原样转载,未经改动 · 在 GitHub 查看 →

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