4.3 KiB
4.3 KiB
description, argument-hint
| description | argument-hint |
|---|---|
| Design a product metrics dashboard with North Star metric, input metrics, health metrics, and alert thresholds | <product or feature area> |
/setup-metrics -- Product Metrics Dashboard Design
Design a comprehensive metrics framework for your product or feature — from selecting the right North Star to defining alert thresholds that catch problems early.
Invocation
/setup-metrics SaaS project management tool
/setup-metrics New checkout flow we just launched
/setup-metrics # asks what you're measuring
Workflow
Step 1: Understand What to Measure
Ask the user:
- What product or feature area are you setting up metrics for?
- What stage is it in? (pre-launch, recently launched, mature)
- What are the current business goals or OKRs?
- Do you have existing metrics? What's missing or broken?
- What analytics tools are you using? (helps tailor implementation advice)
Step 2: Define the Metrics Framework
Apply the metrics-dashboard skill:
North Star Metric:
- Identify the single metric that best captures the value your product delivers to users
- Validate against criteria: measures value delivery, is a leading indicator, is actionable
- Define the metric precisely (formula, data source, time window)
Input Metrics (3-5):
- Identify the levers that drive the North Star
- Each input metric should be directly actionable by a team
- Map the causal chain: Input → North Star → Business Outcome
Health Metrics (3-5):
- Metrics that should stay stable — if they degrade, something is wrong
- Examples: error rates, latency, support ticket volume, NPS, churn rate
- Define "healthy" ranges and degradation thresholds
Counter-Metrics (1-2):
- Metrics that could indicate you're optimizing the wrong way
- Example: if North Star is "daily active users", counter-metric is "session quality" to prevent empty engagement
Step 3: Design Alert Thresholds
For each metric:
| Metric | Green | Yellow | Red | Check Frequency |
|---|---|---|---|---|
| [metric] | [healthy range] | [warning] | [critical] | [daily/weekly] |
- Yellow: Investigate — something may be off
- Red: Act immediately — page someone or escalate
Step 4: Create Dashboard Spec
## Metrics Dashboard: [Product/Feature]
**North Star**: [metric name]
**Definition**: [precise formula]
**Current value**: [if known]
**Target**: [goal]
### Input Metrics
| Metric | Definition | Owner | Target | Current |
|--------|-----------|-------|--------|---------|
### Health Metrics
| Metric | Healthy Range | Yellow Threshold | Red Threshold |
|--------|-------------|-----------------|---------------|
### Counter-Metrics
| Metric | Why It Matters | Watch For |
|--------|---------------|-----------|
### Metrics Tree
North Star: [metric]
├── Input: [metric 1] → driven by [team/action]
├── Input: [metric 2] → driven by [team/action]
├── Input: [metric 3] → driven by [team/action]
└── Counter: [metric] → watch for [degradation signal]
### Implementation Notes
- Data sources: [where each metric comes from]
- Refresh frequency: [real-time / hourly / daily]
- Tool recommendations: [based on user's stack]
### Review Cadence
- **Daily**: Glance at North Star and health metrics
- **Weekly**: Review input metrics trends, discuss in team standup
- **Monthly**: Deep dive — are inputs driving the North Star as expected?
- **Quarterly**: Reassess the metrics framework itself
Save as a markdown file to the user's workspace.
Step 5: Offer Next Steps
- "Want me to write SQL queries to compute these metrics?"
- "Should I create OKRs based on this metrics framework?"
- "Want me to build a cohort analysis to set realistic baselines?"
- "Should I set up a weekly metrics review template?"
Notes
- A good North Star is rare — most teams pick vanity metrics. Push for a metric that captures user value delivered, not just engagement
- Input metrics should be MECE (mutually exclusive, collectively exhaustive) in explaining the North Star
- If the product is pre-launch, define metrics now but note that baselines will need calibration after launch
- Counter-metrics prevent Goodhart's Law — when a metric becomes a target, it ceases to be a good metric
- Recommend starting with fewer metrics, well-instrumented, over a sprawling dashboard nobody checks