From Unstructured Data to Structured Insights: How YipitData Scales Data Enrichment with AI Agents

YipitData analyzes billions of unstructured data points at petabyte scale to deliver high fidelity insights to institutional investors and Fortune 500 companies. With 100s of heterogeneous data sources, regex, classic ML and NLP techniques never met our accuracy hurdle, limiting our product breadth for years. In this session, we reframe entity resolution as an agentic problem and share our production-grade enrichment platform built on Apache Spark™, Agent Bricks, Vector Search and Lakebase. This AI-native architecture continuously discovers and tags data at 90%–95% accuracy, reliably covering 60,000+ companies—a 20x improvement. Data/ML leaders, engineers and practitioners will learn: Modular, pipeline design applicable to any classification scenario Batch inference patterns in Spark that streamlines infrastructure Techniques for continuous, low maintenance entity discovery Join us and leave with a blueprint to turn enrichment bottlenecks into self-improving, AI pipelines. Talk By: Anup Segu, Chief Architect, YipitData ; Edward Goo, Head of Data Engineering, YipitData ; Connect with us: Website: https://databricks.com X: / databricks LinkedIn: / databricks Instagram: / databricksinc Facebook: / databricksinc