business/product-management/metrics-tracking/SKILL.md
Define, track, and analyze product metrics with frameworks for goal setting and dashboard design. Use when setting up OKRs, building metrics dashboards, running weekly metrics reviews, identifying trends, or choosing the right metrics for a product area.
npx skillsauth add harsh040506/claude-code-unified-skill-plugin-library metrics-trackingInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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You are an expert at product metrics — defining, tracking, analyzing, and acting on product metrics. You help product managers build metrics frameworks, set goals, run reviews, and design dashboards that drive decisions.
The single metric that best captures the core value your product delivers to users. It should be:
Examples by product type:
The 5-7 metrics that together paint a complete picture of product health. These map to the key stages of the user lifecycle:
Acquisition: Are new users finding the product?
Activation: Are new users reaching the value moment?
Engagement: Are active users getting value?
Retention: Are users coming back?
Monetization: Is value translating to revenue?
Satisfaction: How do users feel about the product?
Detailed metrics used to investigate changes in L1 metrics:
What they measure: Unique users who perform a qualifying action in a day, week, or month.
Key decisions:
How to use them:
What it measures: Of users who started in period X, what % are still active in period Y?
Common retention timeframes:
How to use retention:
What it measures: % of users who move from one stage to the next.
Common conversion funnels:
How to use conversion:
What it measures: % of new users who reach the moment where they first experience the product's core value.
Defining activation:
How to use activation:
Objectives: Qualitative, aspirational goals that describe what you want to achieve.
Key Results: Quantitative measures that tell you if you achieved the objective.
Example:
Objective: Make our product indispensable for daily workflows
Key Results:
- Increase DAU/MAU ratio from 0.35 to 0.50
- Increase D30 retention for new users from 40% to 55%
- 3 core workflows with >80% task completion rate
Purpose: Catch issues quickly, monitor experiments, stay in touch with product health. Duration: 15-30 minutes. Attendees: Product manager, maybe engineering lead.
What to review:
Action: If something looks off, investigate. Otherwise, note it and move on.
Purpose: Deeper analysis of trends, progress against goals, strategic implications. Duration: 30-60 minutes. Attendees: Product team, key stakeholders.
What to review:
Action: Identify 1-3 areas to investigate or invest in. Update priorities if metrics reveal new information.
Purpose: Strategic assessment of product performance, goal-setting for next quarter. Duration: 60-90 minutes. Attendees: Product, engineering, design, leadership.
What to review:
Action: Set OKRs for next quarter. Adjust product strategy based on what the data shows.
A good dashboard answers the question "How is the product doing?" at a glance.
Principles:
Start with the question, not the data. What decisions does this dashboard support? Design backwards from the decision.
Hierarchy of information. The most important metric should be the most visually prominent. North Star at the top, L1 metrics next, L2 metrics available on drill-down.
Context over numbers. A number without context is meaningless. Always show: current value, comparison (previous period, target, benchmark), trend direction.
Fewer metrics, more insight. A dashboard with 50 metrics helps no one. Focus on 5-10 that matter. Put everything else in a detailed report.
Consistent time periods. Use the same time period for all metrics on a dashboard. Mixing daily and monthly metrics creates confusion.
Visual status indicators. Use color to indicate health at a glance:
Actionability. Every metric on the dashboard should be something the team can influence. If you cannot act on it, it does not belong on the product dashboard.
Top row: North Star metric with trend line and target.
Second row: L1 metrics scorecard — current value, change, target, status for each key metric.
Third row: Key funnels or conversion metrics — visual funnel showing drop-off at each stage.
Fourth row: Recent experiments and launches — active A/B tests, recent feature launches with early metrics.
Bottom / drill-down: L2 metrics, segment breakdowns, and detailed time series for investigation.
Set alerts for metrics that require immediate attention:
Alert hygiene:
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