product-on-purpose

Instrumentation Spec

A curated collection of 24 best-practice, plug-and-play product management “agent skills” plus templates and workflow bundles for consistent, professional PM outputs.

product-on-purpose 264 37 Updated 4mo ago

Resources

1
GitHub

Install

npx skillscat add product-on-purpose/pm-skills/skills-measure-instrumentation-spec

Install via the SkillsCat registry.

SKILL.md

name: measure-instrumentation-spec
description: Specifies event tracking and analytics instrumentation requirements for a feature. Use when defining what data to collect, ensuring consistent tracking implementation, or documenting analytics requirements for engineering.
phase: measure
version: "2.0.0"
updated: 2026-01-26
license: Apache-2.0
metadata:
category: validation
frameworks: [triple-diamond, lean-startup, design-thinking]
author: product-on-purpose

Instrumentation Spec

An instrumentation spec defines what analytics events to track, when to fire them, and what properties to include. It serves as a contract between product and engineering, ensuring consistent data collection that enables accurate measurement. Good instrumentation specs prevent the "we can't answer that question because we didn't track it" problem.

When to Use

  • Before engineering implements a new feature
  • When defining analytics requirements for experiments
  • When auditing existing tracking for gaps or inconsistencies
  • When onboarding a new analytics tool
  • Before launch to ensure measurement is in place

Instructions

When asked to create an instrumentation spec, follow these steps:

  1. Define Analytics Goals
    Start with the questions you need to answer. What will you measure? What decisions will this data inform? This prevents over-instrumentation while ensuring nothing important is missed.

  2. Identify Events to Track
    List each user action or system event that should be tracked. Follow consistent naming conventions (typically noun_verb or verb_noun in snake_case). Each event should represent a distinct, meaningful action.

  3. Specify Event Triggers
    For each event, describe exactly when it fires. Be precise: "When user clicks Submit button" vs. "When form is submitted successfully." These are different events with different meanings.

  4. Define Event Properties
    List the properties (attributes) attached to each event. Include property name, data type, description, and example values. Properties provide context that makes events useful.

  5. Document User Properties
    Identify persistent user-level attributes that should be associated with all events (e.g., subscription tier, account creation date). These enable segmentation in analysis.

  6. Address PII and Privacy
    Flag any properties that contain personally identifiable information. Document how PII should be handled — hashing, encryption, or exclusion.

  7. Create Testing Checklist
    Define how QA should verify that tracking is implemented correctly. Include steps to validate events fire at the right times with correct properties.

Output Format

Use the template in references/TEMPLATE.md to structure the output.

Quality Checklist

Before finalizing, verify:

  • Event names follow consistent naming convention
  • Each event has a clear, unambiguous trigger
  • Properties include data types and example values
  • PII is identified and handling is documented
  • Events map to the analytics questions you need to answer
  • Testing checklist enables QA verification

Examples

See references/EXAMPLE.md for a completed example.