Meta-Meta-Prompting: The Secret to Making AI Agents Work
Meta-Meta-Prompting: The Secret to Making AI Agents Work People keep asking me why I am spending my nights coding til 2AM. I have a job and a big one, as CEO of Y Combinator. We help thousands of buil
Meta-Meta-Prompting: The Secret to Making AI Agents Work
Meta-Meta-Prompting: Making AI Agents Compound
A short source-grounded presenter deck explaining the article’s core idea: personal AI becomes powerful when treated as an operating system made of repeatable, skillified workflows, not as a chat window.
Diapositiva 1
Stop using AI as a chat window
The source argues that personal AI changes when it becomes an operating system for real, compounding workflows.
Diapositiva 2
The personal context graph is the unlock
The book mirror worked because the AI had access to a broad graph of personal and professional context.
Diapositiva 3
A mirror is not a summary
The output paired the author’s ideas with specific mappings to the author’s lived context.
Diapositiva 4
Version 1 broke trust
The first book mirror had factual errors, so the workflow gained mandatory quality checks.
Diapositiva 5
Iteration made the mirror specific
The workflow improved through cross-modal evaluation, deeper retrieval, and per-section brain searches.
Diapositiva 6
Skillification turns a workflow into a reusable asset
The author defines skillification as extracting a repeatable pattern into a tested skill file with triggers and edge cases.
Diapositiva 7
Skills can build skills
The system is recursive: a meta-skill creates new skills, and skills compose into larger workflows.
Diapositiva 8
The agent becomes a compounding system
The source’s core claim is that repeatable skills, shared context, and iterative fixes make AI agents more useful over time.