01Zero-Config Integration and Discovery for universal agent skills.
02Automatically converts negative feedback into machine-readable prevention rules (e.g., CLAUDE.md).
03Captures high-density context and preference data for DPO training.
04Employs Bayesian Scoring (Thompson Sampling) to adapt to evolving user preferences.
05Stores all data locally as transparent, portable JSONL files with LanceDB for vector indexing.
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