技能 产品商业 产品指标体系构建

产品指标体系构建

v20260618
metrics-framework
本技能可为任何产品或业务构建完整的指标体系。它能够从北极星指标出发,结合AARRR、OKR等主流模型,构建出指标金字塔,明确各项指标的定义、重要性、驱动关系和衡量方法。同时提供反向指标和仪表盘建议,确保指标体系的实战指导性。
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概览

Metrics Framework Skill

This skill builds a complete metrics framework tailored to a product or business. It connects the North Star metric to actionable leading indicators, making it clear which metrics to track, which to optimise, and how they relate to each other.

Required Inputs

Ask the user for these if not provided:

  • Product or business description (one paragraph is enough)
  • Business model (SaaS / Marketplace / E-commerce / Consumer app / B2B / Other)
  • Stage (Pre-PMF / Growth / Scale / Mature)
  • Framework preference (if they have one): North Star + Metric Tree / AARRR / HEART / OKRs / Custom
  • Primary goal this quarter (e.g. grow activation, reduce churn, increase revenue)

If no framework preference is given, recommend the best fit based on stage and business model.

Output Structure

1. Framework Recommendation (if not specified)

Explain in 2–3 sentences why you're recommending this framework for their context.


2. North Star Metric

[Metric Name]: [Definition — exactly what is measured and how]

Why this is the right North Star for this business: [2–3 sentences. It should reflect customer value delivered, not just revenue or activity. Explain what behaviour it captures and why maximising it correlates with long-term business health.]

How to measure it: [Formula or data source] Current baseline: [Leave as [ADD BASELINE] for user to fill] Target: [Leave as [ADD TARGET] for user to fill]


3. Metric Tree

Show how supporting metrics roll up to the North Star. Format as a hierarchy:

[North Star Metric]
├── [Driver 1: e.g. Acquisition]
│   ├── [L2 metric: e.g. Organic signups / week]
│   └── [L2 metric: e.g. Paid CAC by channel]
├── [Driver 2: e.g. Activation]
│   ├── [L2 metric: e.g. % users completing onboarding within 7 days]
│   └── [L2 metric: e.g. Time to first value action]
└── [Driver 3: e.g. Retention]
    ├── [L2 metric: e.g. Day 30 retention rate]
    └── [L2 metric: e.g. Feature adoption depth]

For each L2 metric, provide:

  • Definition: [What exactly is measured]
  • Why it matters: [How it connects to the North Star]
  • Leading or lagging? [Leading = predictive / Lagging = outcome]
  • How to measure: [Data source or calculation]

4. Counter-Metrics

[2–3 metrics to watch that prevent optimising the North Star in ways that damage the business. E.g. "If we optimise for signups, we need to watch spam account rate. If we optimise for engagement, we need to watch support ticket volume."]


5. Dashboard Recommendation

Suggest a 3-tier dashboard structure:

  • Exec view (weekly): [3–5 metrics — outcomes only]
  • Team view (daily): [7–10 metrics — leading indicators + outputs]
  • Diagnostic view (on demand): [Metrics to drill into when something looks wrong]

6. Metric Health Check Questions

[5 questions the team should ask in their weekly metrics review to turn numbers into insights. e.g. "Is our activation rate improving while retention stays flat? That suggests onboarding quality issue, not a product-market fit problem."]


Quality Checks

  • North Star reflects customer value, not just business activity
  • Metric tree has 3–4 distinct drivers (not all one category)
  • Each L2 metric is classified as leading or lagging
  • Counter-metrics are included to prevent perverse incentives
  • Dashboard tiers are tailored to the product stage
  • All metric definitions are unambiguous (formula or clear description)

Anti-Patterns

  • Do not set a North Star metric that measures business activity (revenue, pageviews) rather than customer value delivered — this creates incentives misaligned with product quality
  • Do not define metrics without specifying the formula or data source — an ambiguous metric will be measured differently by different people
  • Do not skip counter-metrics — optimising any single metric without a guard rail will eventually produce perverse incentives
  • Do not include more than 4–5 metrics in a daily team view — a dashboard with 20 metrics is a dashboard nobody looks at
  • Do not classify all metrics as "leading" — be honest about which are lagging outcome metrics and which genuinely predict future outcomes

Example Trigger Phrases

  • "Build a metrics framework for [product]"
  • "What should our North Star metric be?"
  • "Create a KPI tree for [business]"
  • "Give me an AARRR breakdown for [product]"
  • "What metrics should our [team type] team track?"
信息
Category 产品商业
Name metrics-framework
版本 v20260618
大小 4.85KB
更新时间 2026-06-19
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