- Add CSS components: .page-meta badges, .domain-header, .install-banner - Fix invisible tab navigation (explicit color for light/dark modes) - Rewrite generate-docs.py with design system templates - Domain indexes: centered headers with icons, install banners, grid cards - Skill pages: pill badges (domain, skill ID, source), install commands - Agent/command pages: type badges with domain icons - Regenerate all 210 pages (180 skills + 15 agents + 15 commands) Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
225 lines
9.1 KiB
Markdown
225 lines
9.1 KiB
Markdown
---
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title: "Scrum Master Expert"
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description: "Scrum Master Expert - Claude Code skill from the Project Management domain."
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---
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# Scrum Master Expert
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<div class="page-meta" markdown>
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<span class="meta-badge">:material-clipboard-check-outline: Project Management</span>
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<span class="meta-badge">:material-identifier: `scrum-master`</span>
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<span class="meta-badge">:material-github: <a href="https://github.com/alirezarezvani/claude-skills/tree/main/project-management/scrum-master/SKILL.md">Source</a></span>
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</div>
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<div class="install-banner" markdown>
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<span class="install-label">Install:</span> <code>claude /plugin install pm-skills</code>
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</div>
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Data-driven Scrum Master skill combining sprint analytics, probabilistic forecasting, and team development coaching. The unique value is in the three Python analysis scripts and their workflows — refer to `references/` and `assets/` for deeper framework detail.
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---
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## Table of Contents
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- [Analysis Tools & Usage](#analysis-tools--usage)
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- [Input Requirements](#input-requirements)
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- [Sprint Execution Workflows](#sprint-execution-workflows)
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- [Team Development Workflow](#team-development-workflow)
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- [Key Metrics & Targets](#key-metrics--targets)
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- [Limitations](#limitations)
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---
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## Analysis Tools & Usage
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### 1. Velocity Analyzer (`scripts/velocity_analyzer.py`)
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Runs rolling averages, linear-regression trend detection, and Monte Carlo simulation over sprint history.
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```bash
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# Text report
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python velocity_analyzer.py sprint_data.json --format text
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# JSON output for downstream processing
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python velocity_analyzer.py sprint_data.json --format json > analysis.json
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```
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**Outputs**: velocity trend (improving/stable/declining), coefficient of variation, 6-sprint Monte Carlo forecast at 50 / 70 / 85 / 95% confidence intervals, anomaly flags with root-cause suggestions.
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**Validation**: If fewer than 3 sprints are present in the input, stop and prompt the user: *"Velocity analysis needs at least 3 sprints. Please provide additional sprint data."* 6+ sprints are recommended for statistically significant Monte Carlo results.
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---
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### 2. Sprint Health Scorer (`scripts/sprint_health_scorer.py`)
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Scores team health across 6 weighted dimensions, producing an overall 0–100 grade.
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| Dimension | Weight | Target |
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|---|---|---|
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| Commitment Reliability | 25% | >85% sprint goals met |
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| Scope Stability | 20% | <15% mid-sprint changes |
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| Blocker Resolution | 15% | <3 days average |
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| Ceremony Engagement | 15% | >90% participation |
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| Story Completion Distribution | 15% | High ratio of fully done stories |
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| Velocity Predictability | 10% | CV <20% |
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```bash
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python sprint_health_scorer.py sprint_data.json --format text
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```
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**Outputs**: overall health score + grade, per-dimension scores with recommendations, sprint-over-sprint trend, intervention priority matrix.
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**Validation**: Requires 2+ sprints with ceremony and story-completion data. If data is missing, report which dimensions cannot be scored and ask the user to supply the gaps.
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---
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### 3. Retrospective Analyzer (`scripts/retrospective_analyzer.py`)
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Tracks action-item completion, recurring themes, sentiment trends, and team maturity progression.
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```bash
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python retrospective_analyzer.py sprint_data.json --format text
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```
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**Outputs**: action-item completion rate by priority/owner, recurring-theme persistence scores, team maturity level (forming/storming/norming/performing), improvement-velocity trend.
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**Validation**: Requires 3+ retrospectives with action-item tracking. With fewer, note the limitation and offer partial theme analysis only.
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---
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## Input Requirements
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All scripts accept JSON following the schema in `assets/sample_sprint_data.json`:
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```json
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{
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"team_info": { "name": "string", "size": "number", "scrum_master": "string" },
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"sprints": [
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{
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"sprint_number": "number",
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"planned_points": "number",
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"completed_points": "number",
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"stories": [...],
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"blockers": [...],
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"ceremonies": {...}
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}
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],
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"retrospectives": [
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{
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"sprint_number": "number",
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"went_well": ["string"],
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"to_improve": ["string"],
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"action_items": [...]
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}
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]
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}
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```
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Jira and similar tools can export sprint data; map exported fields to this schema before running the scripts. See `assets/sample_sprint_data.json` for a complete 6-sprint example and `assets/expected_output.json` for corresponding expected results (velocity avg 20.2 pts, CV 12.7%, health score 78.3/100, action-item completion 46.7%).
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---
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## Sprint Execution Workflows
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### Sprint Planning
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1. Run velocity analysis: `python velocity_analyzer.py sprint_data.json --format text`
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2. Use the 70% confidence interval as the recommended commitment ceiling for the sprint backlog.
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3. Review the health scorer's Commitment Reliability and Scope Stability scores to calibrate negotiation with the Product Owner.
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4. If Monte Carlo output shows high volatility (CV >20%), surface this to stakeholders with range estimates rather than single-point forecasts.
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5. Document capacity assumptions (leave, dependencies) for retrospective comparison.
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### Daily Standup
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1. Track participation and help-seeking patterns — feed ceremony data into `sprint_health_scorer.py` at sprint end.
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2. Log each blocker with date opened; resolution time feeds the Blocker Resolution dimension.
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3. If a blocker is unresolved after 2 days, escalate proactively and note in sprint data.
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### Sprint Review
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1. Present velocity trend and health score alongside the demo to give stakeholders delivery context.
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2. Capture scope-change requests raised during review; record as scope-change events in sprint data for next scoring cycle.
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### Sprint Retrospective
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1. Run all three scripts before the session:
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```bash
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python sprint_health_scorer.py sprint_data.json --format text > health.txt
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python retrospective_analyzer.py sprint_data.json --format text > retro.txt
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```
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2. Open with the health score and top-flagged dimensions to focus discussion.
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3. Use the retrospective analyzer's action-item completion rate to determine how many new action items the team can realistically absorb (target: ≤3 if completion rate <60%).
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4. Assign each action item an owner and measurable success criterion before closing the session.
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5. Record new action items in `sprint_data.json` for tracking in the next cycle.
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---
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## Team Development Workflow
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### Assessment
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```bash
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python sprint_health_scorer.py team_data.json > health_assessment.txt
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python retrospective_analyzer.py team_data.json > retro_insights.txt
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```
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- Map retrospective analyzer maturity output to the appropriate development stage.
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- Supplement with an anonymous psychological safety pulse survey (Edmondson 7-point scale) and individual 1:1 observations.
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- If maturity output is `forming` or `storming`, prioritise safety and conflict-facilitation interventions before process optimisation.
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### Intervention
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Apply stage-specific facilitation (details in `references/team-dynamics-framework.md`):
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| Stage | Focus |
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|---|---|
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| Forming | Structure, process education, trust building |
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| Storming | Conflict facilitation, psychological safety maintenance |
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| Norming | Autonomy building, process ownership transfer |
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| Performing | Challenge introduction, innovation support |
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### Progress Measurement
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- **Sprint cadence**: re-run health scorer; target overall score improvement of ≥5 points per quarter.
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- **Monthly**: psychological safety pulse survey; target >4.0/5.0.
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- **Quarterly**: full maturity re-assessment via retrospective analyzer.
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- If scores plateau or regress for 2 consecutive sprints, escalate intervention strategy (see `references/team-dynamics-framework.md`).
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---
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## Key Metrics & Targets
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| Metric | Target |
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|---|---|
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| Overall Health Score | >80/100 |
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| Psychological Safety Index | >4.0/5.0 |
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| Velocity CV (predictability) | <20% |
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| Commitment Reliability | >85% |
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| Scope Stability | <15% mid-sprint changes |
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| Blocker Resolution Time | <3 days |
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| Ceremony Engagement | >90% |
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| Retrospective Action Completion | >70% |
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---
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## Limitations
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- **Sample size**: fewer than 6 sprints reduces Monte Carlo confidence; always state confidence intervals, not point estimates.
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- **Data completeness**: missing ceremony or story-completion fields suppress affected scoring dimensions — report gaps explicitly.
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- **Context sensitivity**: script recommendations must be interpreted alongside organisational and team context not captured in JSON data.
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- **Quantitative bias**: metrics do not replace qualitative observation; combine scores with direct team interaction.
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- **Team size**: techniques are optimised for 5–9 member teams; larger groups may require adaptation.
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- **External factors**: cross-team dependencies and organisational constraints are not fully modelled by single-team metrics.
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---
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## Related Skills
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- **Agile Product Owner** (`product-team/agile-product-owner/`) — User stories and backlog feed sprint planning
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- **Senior PM** (`project-management/senior-pm/`) — Portfolio health context informs sprint priorities
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---
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*For deep framework references see `references/velocity-forecasting-guide.md` and `references/team-dynamics-framework.md`. For template assets see `assets/sprint_report_template.md` and `assets/team_health_check_template.md`.*
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