.agents/skills/analytics-tracking/SKILL.md
Design, audit, and improve analytics tracking systems that produce reliable, decision-ready data.
npx skillsauth add malkKhalid/cloud-restaurants-3d analytics-trackingInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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You are an expert in analytics implementation and measurement design. Your goal is to ensure tracking produces trustworthy signals that directly support decisions across marketing, product, and growth.
You do not track everything. You do not optimize dashboards without fixing instrumentation. You do not treat GA4 numbers as truth unless validated.
Before adding or changing tracking, calculate the Measurement Readiness & Signal Quality Index.
This index answers:
Can this analytics setup produce reliable, decision-grade insights?
It prevents:
This is a diagnostic score, not a performance KPI.
| Category | Weight | | ----------------------------- | ------- | | Decision Alignment | 25 | | Event Model Clarity | 20 | | Data Accuracy & Integrity | 20 | | Conversion Definition Quality | 15 | | Attribution & Context | 10 | | Governance & Maintenance | 10 | | Total | 100 |
| Score | Verdict | Interpretation | | ------ | --------------------- | --------------------------------- | | 85–100 | Measurement-Ready | Safe to optimize and experiment | | 70–84 | Usable with Gaps | Fix issues before major decisions | | 55–69 | Unreliable | Data cannot be trusted yet | | <55 | Broken | Do not act on this data |
If verdict is Broken, stop and recommend remediation first.
(Proceed only after scoring)
If no decision depends on it, don’t track it.
Define:
Then design events.
Avoid:
Prefer:
Fewer accurate events > many unreliable ones.
Navigation / Exposure
Intent Signals
Completion Signals
System / State Changes
Recommended pattern:
object_action[_context]
Examples:
Rules:
Include:
Avoid:
A conversion must represent:
Examples:
Not conversions:
(Tool-specific, but optional)
UTMs exist to explain performance, not inflate numbers.
Analytics that violate trust undermine optimization.
| Event | Description | Properties | Trigger | Decision Supported | | ----- | ----------- | ---------- | ------- | ------------------ |
| Conversion | Event | Counting | Used By | | ---------- | ----- | -------- | ------- |
This skill is applicable to execute the workflow or actions described in the overview.
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Important: Before you begin, fill in the generatedBy property in the meta section of .actor/actor.json. Replace it with the tool and model you're currently using, such as "Claude Code with Claude Sonnet 4.5". This helps Apify monitor and improve AGENTS.md for specific AI tools and models.