context-engineering
Context Engineering for AI Products
ARCHIVED SKILL
This skill has been integrated into the unified spec system:
- New AI features: Use
/spec --aior/spec --deep context- Diagnose issues: Use
/ai-debug- Quality checks: Use
/context-checkThis file remains as a reference for the full 4D Context Canvas framework.
Core Philosophy
Context engineering is the art of giving AI exactly the right information to do its job.
Models are commodities—your context is your moat.
More from breethomas/pm-thought-partner
agent-workflow
Expert system for designing and architecting AI agent workflows based on proven Meta methodologies. Use when users need to build AI agents, create agent workflows, solve problems using agentic systems, integrate multiple tools into agent architectures, or need guidance on agent design patterns. Helps translate business problems into structured agent solutions with clear scope, tool integration, and multi-layer architecture planning.
10spec
Write specifications at the right depth for any project. Progressive disclosure from quick Linear issues to full AI feature specs. Embeds Linear Method philosophy (brevity, clarity, momentum) with context engineering for AI features. Use for any spec work - quick tasks, features, or AI products.
2competitive-research
Systematic competitive intelligence with parallel agent analysis. Analyzes competitors thoroughly and synthesizes into actionable insights.
2pmf-survey
Create and analyze a PMF survey using Rahul Vohra's Superhuman framework. The magic 40% benchmark for product-market fit.
2four-risks
Run Marty Cagan's Four Risks assessment on an issue (value, usability, feasibility, viability). Use when evaluating features before building.
2strategy-session
Your product soundboard. Work through product decisions conversationally - Claude gathers context, challenges assumptions, captures decisions, and creates Linear issues.
2