Databricks has announced its acquisition of Tecton, a move set to strengthen the company’s real-time data capabilities and speed up AI agent development for enterprise clients. Tecton, noted for its expertise as a real-time enterprise feature store, helps businesses leverage mission-critical data for applications such as fraud detection, risk scoring, and personalized AI agents. This acquisition reflects Databricks' ongoing strategy to deliver comprehensive, high-performance AI infrastructure at scale.
Tecton brings proven technology for handling fast, reliable, and context-rich data, enabling AI agents to make instant decisions in production environments. Its platform provides ultra-low latency, automated online data serving, and point-in-time data correctness—critical for security-driven operations and customer-facing services where rapid responses matter. As part of Databricks, Tecton’s solutions will be embedded directly into Databricks workflows, ensuring seamless integration from raw enterprise data to production-ready AI models.
Tecton’s founding team developed AI tools powering thousands of real-time models at Uber, turning that experience into solutions adopted by Fortune 500 companies and high-growth startups alike. The two firms share joint customers and a history of collaboration, with Databricks having previously invested in Tecton. The acquisition is expected to further advance Databricks’ “Agent Bricks” tooling and facilitate faster, more reliable deployment of AI agentic systems.
Databricks’ purchase of Tecton comes amid a series of acquisitions aimed at expanding its unified data and AI platform, underpinned by a recent surge in its valuation to over $100 billion. Tecton's integration promises customers enhanced automation, lower latency, and easier scalability, from classical machine learning through to next-generation agentic AI applications. The acquisition underlines Databricks' commitment to trusted, enterprise-grade AI development, positioning its clients for competitive advantage in speed-sensitive, data-intensive use cases.