06/16/2026 | Press release | Distributed by Public on 06/16/2026 07:01
DATA + AI SUMMIT - June 16, 2026 - Databricks, the Data and AI company, today announced Lakehouse//RT, the real-time evolution of the Databricks Lakehouse. Lakehouse//RT allows enterprises to run real-time analytics directly on the governed Delta Lake and Apache Iceberg™ data, eliminating the need to set up separate serving systems to achieve millisecond performance. Powered by Reyden, a new compute engine built for the concurrency and latency demands of modern agentic enterprises, Lakehouse//RT is now available in Beta.
Delivering the Real-time Lakehouse
For years, enterprises that needed low latency at high concurrency had one option: stand up a separate real-time serving layer alongside the lakehouse. But that serving layer brings vendor lock-in, increased infrastructure costs, fragmented governance, and data that's never truly real time because it's always a copy. This leaves enterprises with a forced compromise: accept latency or fragment the stack. For humans, it is a headache. But for agents, it doesn't work. Agents are always-on, reasoning in loops, and their ability to act depends entirely on their ability to query complex enterprise data fast.
Lakehouse//RT was built to eliminate that compromise. It queries Delta and Iceberg tables directly in the governed lakehouse, giving AI agents and humans access to fresh, complete, and trusted data without copying or moving it. Its execution engine is designed to support tens of thousands of concurrent users and agents while maintaining consistently low latency. On standard analytical benchmarks, Lakehouse//RT delivers sub-100 millisecond latency at 12,000 queries per second, and customers have seen up to 16x better performance than their existing specialized real-time serving stacks. By removing the need for a separate serving layer, Lakehouse//RT also eliminates the cost, CDC and synchronization pipelines, governance gaps, and proprietary lock-in that come with it.
"Over the past decade, we've unified the major workloads of the modern data stack on a single open foundation: data engineering and data science with Spark, and data warehousing with Photon and the Lakehouse," said Ali Ghodsi, Co-founder and CEO of Databricks. "Lakehouse//RT completes the engine spectrum, providing the millisecond speed layer that people want and agents require. Just as we proved that the best data warehouse is a lakehouse, now, the best real-time analytics engine is the lakehouse, too."
Inside Lakehouse//RT
Lakehouse//RT was built for the specific demands of real-time serving at scale:
Customer Momentum for Lakehouse//RT
"Threat lookup requires consistently low latency, even as usage scales across users and agents," said Chris Kopek, Head of Data Platforms at Cisco. "What we're seeing with Lakehouse//RT is millisecond performance on live data with 5x improvement in response time, which creates a path to run those workloads on our lakehouse instead of maintaining a separate serving system."
"Our platform serves hundreds of queries per second for real-time performance data across our entire client base, so latency and consistency directly impact how customers experience our product," said Kayvon Raphael, Senior Director, Engineering at Magnite. "With Lakehouse//RT, we're seeing sub-200 millisecond performance on our core dashboard queries, consistently. Being able to achieve that while keeping everything governed inside our own data lake massively reduces the complexity of managing our data pipeline and servicing of consumer applications."
Availability
Lakehouse//RT is now available in Beta. Read more about Lakehouse//RT on the Databricks blog.
About Databricks
Databricks is the Data and AI company. More than 20,000 organizations worldwide - including adidas, AT&T, Bayer, Block, Mastercard, Rivian, Unilever, and 70% of the Fortune 500 - rely on Databricks to build and scale data and AI apps, analytics, and agents. Headquartered in San Francisco with 30+ offices around the globe, Databricks offers a unified platform that includes Lakebase, Genie, Agent Bricks, Lakeflow, Lakehouse, and Unity Catalog. To learn more, follow Databricks on LinkedIn, X, YouTube, and Instagram.