소개
Total Recall is a high-performance memory protocol designed to solve the problem of context loss in long-term AI development projects. By shifting from raw chat logs to a structured synthesis approach, it captures the 'why' behind every decision and discovery, storing understanding rather than just data. This skill utilizes progressive disclosure to save up to 100x on context tokens, ensuring Claude maintains a persistent, searchable history of your project's architectural choices, bug patterns, and technical insights without overwhelming the model's window.