An auditable logging system captures the complete provenance of every AI decision and human intervention. This includes the agent's initial prompt, the context window, the model's reasoning chain, the final output, and any subsequent human approval or override. This data must be stored in an immutable format, often using a vector database for efficient semantic querying, to answer critical questions during a regulatory audit or incident review. This system is a core component of digital provenance and is essential for building trust in high-stakes applications.




