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From product-skills
Use when defining product KPIs, building metric dashboards, running cohort or retention analysis, or interpreting feature adoption trends across product stages.
npx claudepluginhub ciciliaeth/claude-skills --plugin product-skillsHow this skill is triggered — by the user, by Claude, or both
Slash command
/product-skills:product-analyticsThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Define, track, and interpret product metrics across discovery, growth, and mature product stages.
Guides Next.js Cache Components and Partial Prerendering (PPR): 'use cache' directives, cacheLife(), cacheTag(), revalidateTag() for caching, invalidation, static/dynamic optimization. Auto-activates on cacheComponents: true.
Creates, reads, edits, and analyzes .docx files using docx-js for new documents, pandoc for text extraction, Python scripts for XML unpacking/validation/changes, and LibreOffice for conversions.
Share bugs, ideas, or general feedback.
Define, track, and interpret product metrics across discovery, growth, and mature product stages.
Use this skill for:
See:
references/metrics-frameworks.mdreferences/dashboard-templates.md| Anti-pattern | Fix |
|---|---|
| Vanity metrics — tracking pageviews or total signups without activation context | Always pair acquisition metrics with activation rate and retention |
| Single-point retention — reporting "30-day retention is 20%" | Compare retention curves across cohorts, not isolated snapshots |
| Dashboard overload — 30+ metrics on one screen | Executive layer: 5-7 metrics. Feature layer: per-feature only |
| No decision rule — tracking a KPI with no threshold or action plan | Every KPI needs: target, threshold, owner, and "if below X, then Y" |
| Averaging across segments — reporting blended metrics that hide segment differences | Always segment by cohort, plan tier, channel, or geography |
| Ignoring seasonality — comparing this week to last week without adjusting | Use period-over-period with same-period-last-year context |
scripts/metrics_calculator.pyCLI utility for retention, cohort, and funnel analysis from CSV data. Supports text and JSON output.
# Retention analysis
python3 scripts/metrics_calculator.py retention events.csv
python3 scripts/metrics_calculator.py retention events.csv --format json
# Cohort matrix
python3 scripts/metrics_calculator.py cohort events.csv --cohort-grain month
python3 scripts/metrics_calculator.py cohort events.csv --cohort-grain week --format json
# Funnel conversion
python3 scripts/metrics_calculator.py funnel funnel.csv --stages visit,signup,activate,pay
python3 scripts/metrics_calculator.py funnel funnel.csv --stages visit,signup,activate,pay --format json
CSV format for retention/cohort:
user_id,cohort_date,activity_date
u001,2026-01-01,2026-01-01
u001,2026-01-01,2026-01-03
u002,2026-01-02,2026-01-02
CSV format for funnel:
user_id,stage
u001,visit
u001,signup
u001,activate
u002,visit
u002,signup
product-team/experiment-designer — for A/B test planning after identifying metric opportunitiesproduct-team/product-manager-toolkit — for RICE prioritization of metric-driven featuresproduct-team/product-discovery — for assumption mapping when metrics reveal unknownsfinance/saas-metrics-coach — for SaaS-specific metrics (ARR, MRR, churn, LTV)