plugins/pm-analytics/skills/data-analysis-standard/SKILL.md
Structure a product data analysis, metric deep-dive, funnel analysis, or cohort study. Use when asked to analyse product metrics, investigate a drop in conversion, explain a data change to stakeholders, or find the root cause of a metric movement. Produces a structured analysis with question, root cause, confidence level, and recommended action.
npx skillsauth add mohitagw15856/pm-claude-skills data-analysis-standardInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Turn raw numbers into product decisions. Structure every analysis with a clear question, methodology, finding, and recommended action.
Every analysis starts here:
Never deliver data without answering all four. A chart with no narrative is not an analysis.
Use when a metric has moved unexpectedly:
METRIC: [Name]
MOVEMENT: [X% change over Y period]
BASELINE: [What was normal]
SEGMENTATION CHECK:
- By platform (iOS / Android / Web)?
- By user cohort (new / returning / power users)?
- By acquisition channel?
- By geography?
- By plan/tier?
ROOT CAUSE HYPOTHESIS:
1. [Most likely explanation] — Evidence: [data point]
2. [Alternative explanation] — Evidence: [data point]
3. [Ruling out] — Eliminated because: [reason]
CONCLUSION: [Single sentence answer to "why did this change?"]
CONFIDENCE: [High / Medium / Low] — based on [data available]
| Stage | Metric | Current | Benchmark/Target | Drop-off % | Notes | |---|---|---|---|---|---| | [Top of funnel] | [Users] | [N] | [N] | — | | | [Step 2] | [Users] | [N] | [N] | [X%] | | | [Step 3] | [Users] | [N] | [N] | [X%] | | | [Conversion] | [Users] | [N] | [N] | [X%] | |
Biggest drop-off: [Step X → Step Y] — Hypothesis: [reason] Recommended investigation: [specific query or test]
Always define:
Output a cohort retention table and annotate:
Question being answered: [Specific question in plain English] Time period: [Date range] Data source: [Where data comes from]
Finding:
[1–2 sentence plain-English summary of what the data shows]
Key chart / table: [Include or describe]
Root cause: [Best explanation with evidence]
Confidence level: [High / Medium / Low] — [reason]
Recommended action:
What this analysis does NOT tell us: [Important caveat — what data is missing or what can't be concluded]
Ask the user for these if not provided:
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