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analytics-tracking

Design, audit, and improve analytics tracking systems that produce reliable, decision-ready data.

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来源标识:sickn33/antigravity-awesome-skills
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Design, audit, and improve analytics tracking systems that produce reliable, decision-ready data.

最后校验2026-05-27
来源平台GitHub
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适合任务

  • 把重复任务整理成可复用的 AI 操作流程。
  • 让 AI 在特定场景下按统一规范执行。
  • 为团队或个人工作流提供可复制的任务说明。

输入与输出

输入:任务目标、上下文材料、文件路径、约束条件或需要处理的内容。

输出:按 Skill 说明生成的文档、代码、检查结果、计划、建议或操作步骤。

示例任务

  • 使用 analytics-tracking 帮我处理当前任务,并说明执行前需要确认的输入。
  • 根据 analytics-tracking 的说明,给我一个安全的使用步骤清单。

安装方式

  1. 下载本站提供的 Skill ZIP 并解压。
  2. 把解压后的 Skill 目录放入当前 AI 工具支持的 skills 目录。
  3. 如需在线查看原始内容,可打开 GitHub 的 SKILL.md

在线原始地址:analytics-tracking/SKILL.md

风险边界

使用前请检查权限、外部依赖和要处理的数据类型。不要把密码、密钥、身份信息或敏感客户资料交给未经确认的 Skill。

SKILL.md 文档介绍

Analytics Tracking & Measurement Strategy

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.

---

Phase 0: Measurement Readiness & Signal Quality Index (Required)

Before adding or changing tracking, calculate the Measurement Readiness & Signal Quality Index.

Purpose

This index answers:

> Can this analytics setup produce reliable, decision-grade insights?

It prevents:

  • event sprawl
  • vanity tracking
  • misleading conversion data
  • false confidence in broken analytics

---

🔢 Measurement Readiness & Signal Quality Index

Total Score: 0–100

This is a diagnostic score, not a performance KPI.

---

Scoring Categories & Weights

| 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 |

---

Category Definitions

1. Decision Alignment (0–25)

  • Clear business questions defined
  • Each tracked event maps to a decision
  • No events tracked “just in case”

---

2. Event Model Clarity (0–20)

  • Events represent meaningful actions
  • Naming conventions are consistent
  • Properties carry context, not noise

---

3. Data Accuracy & Integrity (0–20)

  • Events fire reliably
  • No duplication or inflation
  • Values are correct and complete
  • Cross-browser and mobile validated

---

4. Conversion Definition Quality (0–15)

  • Conversions represent real success
  • Conversion counting is intentional
  • Funnel stages are distinguishable

---

5. Attribution & Context (0–10)

  • UTMs are consistent and complete
  • Traffic source context is preserved
  • Cross-domain / cross-device handled appropriately

---

6. Governance & Maintenance (0–10)

  • Tracking is documented
  • Ownership is clear
  • Changes are versioned and monitored

---

Readiness Bands (Required)

| 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.

---

Phase 1: Context & Decision Definition

(Proceed only after scoring)

1. Business Context

  • What decisions will this data inform?
  • Who uses the data (marketing, product, leadership)?
  • What actions will be taken based on insights?

---

2. Current State

  • Tools in use (GA4, GTM, Mixpanel, Amplitude, etc.)
  • Existing events and conversions
  • Known issues or distrust in data

---

3. Technical & Compliance Context

  • Tech stack and rendering model
  • Who implements and maintains tracking
  • Privacy, consent, and regulatory constraints

---

Core Principles (Non-Negotiable)

1. Track for Decisions, Not Curiosity

If no decision depends on it, don’t track it.

---

2. Start with Questions, Work Backwards

Define:

  • What you need to know
  • What action you’ll take
  • What signal proves it

Then design events.

---

3. Events Represent Meaningful State Changes

Avoid:

  • cosmetic clicks
  • redundant events
  • UI noise

Prefer:

  • intent
  • completion
  • commitment

---

4. Data Quality Beats Volume

Fewer accurate events > many unreliable ones.

---

Event Model Design

Event Taxonomy

Navigation / Exposure

  • page_view (enhanced)
  • content_viewed
  • pricing_viewed

Intent Signals

  • cta_clicked
  • form_started
  • demo_requested

Completion Signals

  • signup_completed
  • purchase_completed
  • subscription_changed

System / State Changes

  • onboarding_completed
  • feature_activated
  • error_occurred

---

Event Naming Conventions

Recommended pattern:

object_action[_context]

Examples:

  • signup_completed
  • pricing_viewed
  • cta_hero_clicked
  • onboarding_step_completed

Rules:

  • lowercase
  • underscores
  • no spaces
  • no ambiguity

---

Event Properties (Context, Not Noise)

Include:

  • where (page, section)
  • who (user_type, plan)
  • how (method, variant)

Avoid:

  • PII
  • free-text fields
  • duplicated auto-properties

---

Conversion Strategy

What Qualifies as a Conversion

A conversion must represent:

  • real value
  • completed intent
  • irreversible progress

Examples:

  • signup_completed
  • purchase_completed
  • demo_booked

Not conversions:

  • page views
  • button clicks
  • form starts

---

Conversion Counting Rules

  • Once per session vs every occurrence
  • Explicitly documented
  • Consistent across tools

---

GA4 & GTM (Implementation Guidance)

*(Tool-specific, but optional)*

  • Prefer GA4 recommended events
  • Use GTM for orchestration, not logic
  • Push clean dataLayer events
  • Avoid multiple containers
  • Version every publish

---

UTM & Attribution Discipline

UTM Rules

  • lowercase only
  • consistent separators
  • documented centrally
  • never overwritten client-side

UTMs exist to explain performance, not inflate numbers.

---

Validation & Debugging

Required Validation

  • Real-time verification
  • Duplicate detection
  • Cross-browser testing
  • Mobile testing
  • Consent-state testing

Common Failure Modes

  • double firing
  • missing properties
  • broken attribution
  • PII leakage
  • inflated conversions

---

Privacy & Compliance

  • Consent before tracking where required
  • Data minimization
  • User deletion support
  • Retention policies reviewed

Analytics that violate trust undermine optimization.

---

Output Format (Required)

Measurement Strategy Summary

  • Measurement Readiness Index score + verdict
  • Key risks and gaps
  • Recommended remediation order

---

Tracking Plan

| Event | Description | Properties | Trigger | Decision Supported |

| ----- | ----------- | ---------- | ------- | ------------------ |

---

Conversions

| Conversion | Event | Counting | Used By |

| ---------- | ----- | -------- | ------- |

---

Implementation Notes

  • Tool-specific setup
  • Ownership
  • Validation steps

---

Questions to Ask (If Needed)

1. What decisions depend on this data?

2. Which metrics are currently trusted or distrusted?

3. Who owns analytics long term?

4. What compliance constraints apply?

5. What tools are already in place?

---

Related Skills

  • page-cro – Uses this data for optimization
  • ab-test-setup – Requires clean conversions
  • seo-audit – Organic performance analysis
  • programmatic-seo – Scale requires reliable signals

---

When to Use

This skill is applicable to execute the workflow or actions described in the overview.

Limitations

  • Use this skill only when the task clearly matches the scope described above.
  • Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
  • Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.
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