Intelligent Claims Processing in Insurance: AI-Augmented ETL for Faster Decisioning (Published)
This technical article explores how an enterprise insurance provider revolutionized claims processing through AI-augmented metadata pipelines. The implementation transformed traditional claims handling by embedding intelligence directly into data flows, treating metadata as executable code rather than passive descriptors. The solution’s architecture featured three key components: a metadata-as-code framework managing relationships and rules as version-controlled assets, intelligent ETL agents performing automated classification and anomaly detection, and a dynamic validation engine generating contextual rules based on claim characteristics. Through collaborative implementation between data scientists and engineers, the organization achieved significant improvements in processing speed, fraud detection, and data quality while maintaining regulatory compliance. The approach established a scalable framework enabling cross-line implementation through metadata inheritance and continuous learning loops that automatically identified emerging patterns. This article demonstrates how organizations can balance operational agility with governance requirements in regulated environments, providing a blueprint for modernizing complex data workflows across industries.
Keywords: AI-augmented ETL, continuous learning pipelines, dynamic validation, intelligent claims processing, metadata-as-code