Advanced Scrum Master skill for data-driven agile team analysis and coaching. Use when the user asks about sprint planning, velocity tracking, retrospectives, standup facilitation, backlog grooming, story points, burndown charts, blocker resolution, or agile team health. Runs Python scripts to analyse sprint JSON exports from Jira or similar tools: velocity_analyzer.py for Monte Carlo sprint forecasting, sprint_health_scorer.py for multi-dimension health scoring, and retrospective_analyzer.py for action-item and theme tracking. Produces confidence-interval forecasts, health grade reports, and improvement-velocity trends for high-performing Scrum teams.
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.
scripts/velocity_analyzer.py)Runs rolling averages, linear-regression trend detection, and Monte Carlo simulation over sprint history.
# Text report
python velocity_analyzer.py sprint_data.json --format text
# JSON output for downstream processing
python velocity_analyzer.py sprint_data.json --format json > analysis.json
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.
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.
scripts/sprint_health_scorer.py)Scores team health across 6 weighted dimensions, producing an overall 0–100 grade.
| Dimension | Weight | Target |
|---|---|---|
| Commitment Reliability | 25% | >85% sprint goals met |
| Scope Stability | 20% | <15% mid-sprint changes |
| Blocker Resolution | 15% | <3 days average |
| Ceremony Engagement | 15% | >90% participation |
| Story Completion Distribution | 15% | High ratio of fully done stories |
| Velocity Predictability | 10% | CV <20% |
python sprint_health_scorer.py sprint_data.json --format text
Outputs: overall health score + grade, per-dimension scores with recommendations, sprint-over-sprint trend, intervention priority matrix.
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.
scripts/retrospective_analyzer.py)Tracks action-item completion, recurring themes, sentiment trends, and team maturity progression.
python retrospective_analyzer.py sprint_data.json --format text
Outputs: action-item completion rate by priority/owner, recurring-theme persistence scores, team maturity level (forming/storming/norming/performing), improvement-velocity trend.
Validation: Requires 3+ retrospectives with action-item tracking. With fewer, note the limitation and offer partial theme analysis only.
All scripts accept JSON following the schema in assets/sample_sprint_data.json:
{
"team_info": { "name": "string", "size": "number", "scrum_master": "string" },
"sprints": [
{
"sprint_number": "number",
"planned_points": "number",
"completed_points": "number",
"stories": [...],
"blockers": [...],
"ceremonies": {...}
}
],
"retrospectives": [
{
"sprint_number": "number",
"went_well": ["string"],
"to_improve": ["string"],
"action_items": [...]
}
]
}
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%).
python velocity_analyzer.py sprint_data.json --format textsprint_health_scorer.py at sprint end.python sprint_health_scorer.py sprint_data.json --format text > health.txt
python retrospective_analyzer.py sprint_data.json --format text > retro.txt
sprint_data.json for tracking in the next cycle.python sprint_health_scorer.py team_data.json > health_assessment.txt
python retrospective_analyzer.py team_data.json > retro_insights.txt
forming or storming, prioritise safety and conflict-facilitation interventions before process optimisation.Apply stage-specific facilitation (details in references/team-dynamics-framework.md):
| Stage | Focus |
|---|---|
| Forming | Structure, process education, trust building |
| Storming | Conflict facilitation, psychological safety maintenance |
| Norming | Autonomy building, process ownership transfer |
| Performing | Challenge introduction, innovation support |
references/team-dynamics-framework.md).| Metric | Target |
|---|---|
| Overall Health Score | >80/100 |
| Psychological Safety Index | >4.0/5.0 |
| Velocity CV (predictability) | <20% |
| Commitment Reliability | >85% |
| Scope Stability | <15% mid-sprint changes |
| Blocker Resolution Time | <3 days |
| Ceremony Engagement | >90% |
| Retrospective Action Completion | >70% |
product-team/agile-product-owner/) — User stories and backlog feed sprint planningproject-management/senior-pm/) — Portfolio health context informs sprint prioritiesFor 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.