This article explains where AI agents genuinely add value in regulated Financial Services data platforms — and where they become indefensible. It distinguishes “useful” agents from regulator-defensible ones, showing how agents can safely detect temporal defects, propose repairs, enrich metadata, and draft regulatory artefacts without bypassing governance. Using practical patterns and real failure modes, it defines a strict operating model — detect, propose, approve, apply — that preserves auditability, replayability, and SMCR accountability while delivering operational leverage that survives PRA/FCA scrutiny.
Continue reading
AI Agents for Temporal Repair, Metadata Enrichment, and Regulatory Automation
Leave a Reply