July 01, 2026

Building Privacy Aware Infrastructure in the AI-Native Era

Building privacy-aware infrastructure in the AI-native era requires systems that can learn, evaluate, and operationalize improvements continuously—at the scale of millions of data assets. This talk presents an AI-native approach through a case study of AI-native asset classification: a hybrid deterministic rules engine with LLM fallback that transforms messy context (metadata, lineage, code references, scan signals) into enforceable privacy controls. We’ll highlight ground truth (GT) + evaluation (eval) self-improvement loops, where active learning focuses human review on high-value examples, an LLM-as-Judge provides scalable review signal (including kappa reliability), and evaluation gates prevent regressions and circular reinforcement. Finally, we’ll show how high-performing LLM behavior is distilled into auditable rules.yaml, driving LLM usage toward near-zero while improving determinism, latency, and cost. Attendees will leave with practical patterns for building privacy-by-design infrastructure that converges, exports human-readable logic, and monitors drift in production.

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