AI Coding Meets Data Warehousing: From Conversational Help to a Harness Pipeline
The article recounts how a data‑warehouse team built the Harness framework to turn AI‑generated SQL assistance into a fully engineered, end‑to‑end pipeline, addressing four key pain points—semantic drift, precision, rollback cost, and SLA constraints—through a seven‑layer architecture, skill registry, state persistence, and evidence‑based human‑in‑the‑loop checks.
