Agent skill

product-analytics

Use when defining product KPIs, building metric dashboards, running cohort or retention analysis, or interpreting feature adoption trends across product stages.

Stars 1,878
Forks 294

Install this agent skill to your Project

npx add-skill https://github.com/LeoYeAI/openclaw-master-skills/tree/main/skills/product-analytics

SKILL.md

Product Analytics

Define, track, and interpret product metrics across discovery, growth, and mature product stages.

When To Use

Use this skill for:

  • Metric framework selection (AARRR, North Star, HEART)
  • KPI definition by product stage (pre-PMF, growth, mature)
  • Dashboard design and metric hierarchy
  • Cohort and retention analysis
  • Feature adoption and funnel interpretation

Workflow

  1. Select metric framework
  • AARRR for growth loops and funnel visibility
  • North Star for cross-functional strategic alignment
  • HEART for UX quality and user experience measurement
  1. Define stage-appropriate KPIs
  • Pre-PMF: activation, early retention, qualitative success
  • Growth: acquisition efficiency, expansion, conversion velocity
  • Mature: retention depth, revenue quality, operational efficiency
  1. Design dashboard layers
  • Executive layer: 5-7 directional metrics
  • Product health layer: acquisition, activation, retention, engagement
  • Feature layer: adoption, depth, repeat usage, outcome correlation
  1. Run cohort + retention analysis
  • Segment by signup cohort or feature exposure cohort
  • Compare retention curves, not single-point snapshots
  • Identify inflection points around onboarding and first value moment
  1. Interpret and act
  • Connect metric movement to product changes and release timeline
  • Distinguish signal from noise using period-over-period context
  • Propose one clear product action per major metric risk/opportunity

KPI Guidance By Stage

Pre-PMF

  • Activation rate
  • Week-1 retention
  • Time-to-first-value
  • Problem-solution fit interview score

Growth

  • Funnel conversion by stage
  • Monthly retained users
  • Feature adoption among new cohorts
  • Expansion / upsell proxy metrics

Mature

  • Net revenue retention aligned product metrics
  • Power-user share and depth of use
  • Churn risk indicators by segment
  • Reliability and support-deflection product metrics

Dashboard Design Principles

  • Show trends, not isolated point estimates.
  • Keep one owner per KPI.
  • Pair each KPI with target, threshold, and decision rule.
  • Use cohort and segment filters by default.
  • Prefer comparable time windows (weekly vs weekly, monthly vs monthly).

See:

  • references/metrics-frameworks.md
  • references/dashboard-templates.md

Cohort Analysis Method

  1. Define cohort anchor event (signup, activation, first purchase).
  2. Define retained behavior (active day, key action, repeat session).
  3. Build retention matrix by cohort week/month and age period.
  4. Compare curve shape across cohorts.
  5. Flag early drop points and investigate journey friction.

Retention Curve Interpretation

  • Sharp early drop, low plateau: onboarding mismatch or weak initial value.
  • Moderate drop, stable plateau: healthy core audience with predictable churn.
  • Flattening at low level: product used occasionally, revisit value metric.
  • Improving newer cohorts: onboarding or positioning improvements are working.

Tooling

scripts/metrics_calculator.py

CLI utility for:

  • Retention rate calculations by cohort age
  • Cohort table generation
  • Basic funnel conversion analysis

Examples:

bash
python3 scripts/metrics_calculator.py retention events.csv
python3 scripts/metrics_calculator.py cohort events.csv --cohort-grain month
python3 scripts/metrics_calculator.py funnel funnel.csv --stages visit,signup,activate,pay

Expand your agent's capabilities with these related and highly-rated skills.

LeoYeAI/openclaw-master-skills

audit-website

Audit websites for SEO, performance, security, technical, content, and 15 other issue cateories with 230+ rules using the squirrelscan CLI. Returns LLM-optimized reports with health scores, broken links, meta tag analysis, and actionable recommendations. Use to discover and asses website or webapp issues and health.

1,878 294
Explore
LeoYeAI/openclaw-master-skills

firecrawl

Web search and scraping via Firecrawl API. Use when you need to search the web, scrape websites (including JS-heavy pages), crawl entire sites, or extract structured data from web pages. Requires FIRECRAWL_API_KEY environment variable.

1,878 294
Explore
LeoYeAI/openclaw-master-skills

computer-use

Full desktop computer use for headless Linux servers. Xvfb + XFCE virtual desktop with xdotool automation. 17 actions (click, type, scroll, screenshot, drag, etc). Unlike OpenClaw's browser tool, operates at the X11 level so websites cannot detect automation. Includes VNC for live viewing.

1,878 294
Explore
LeoYeAI/openclaw-master-skills

social-media-analyzer

Social media campaign analysis and performance tracking. Calculates engagement rates, ROI, and benchmarks across platforms. Use for analyzing social media performance, calculating engagement rate, measuring campaign ROI, comparing platform metrics, or benchmarking against industry standards.

1,878 294
Explore
LeoYeAI/openclaw-master-skills

business-growth-skills

4 production-ready business and growth skills: customer success manager with health scoring and churn prediction, sales engineer with RFP analysis, revenue operations with pipeline and GTM metrics, and contract & proposal writer. Python tools included (all stdlib-only). Works with Claude Code, Codex CLI, and OpenClaw.

1,878 294
Explore
LeoYeAI/openclaw-master-skills

contract-and-proposal-writer

Contract & Proposal Writer

1,878 294
Explore

Didn't find tool you were looking for?

Be as detailed as possible for better results