🌊 Data in Motion: Streaming & CDC for AI & Agents

🌊 Data in Motion: Streaming & CDC for AI & Agents

πŸ“… June 23, 2026
πŸ• 5:30 PM PT
πŸ‘₯ 92 attending
πŸ§‘ Hosted by Savannah
🎟️ 311 spots left

About This Event

🌊 Data in Motion: Streaming & CDC for AI & Agents

When: πŸ•  5:30–8:00 PM (🍽️ dinner included)

⚑ Your agent is only as smart as its context.

To achieve an enterprise-ready real-time data stack for agents, an organization needs to look at data movement end-to-end: πŸ”„ a stream that moves data from operational sources to analytical targets, πŸ—„οΈ a database that can ingest and serve that stream at the speed agents demand, and πŸ›‘οΈ a way to govern the data as it lands.

Join VeloDB, Redpanda, LaserData and Datastrato for a working session on building that streaming stack: πŸ“₯ ingesting at scale, ⏱️ moving data with low latency, πŸ” querying it the second it arrives, and πŸ›‘οΈ governing it the moment it lands, so your agents always run on the freshest context.

Three short talks, 🍲 dinner, and 🍻 conversation in SF!

✨ Speakers

Real-Time Data Architecture for the Agentic Era

🎀 Peter Corless β€” Principal Product Marketing Manager, Redpanda

Discover how enterprises are building enterprise-scale agentic AI applications. These real-time responsive systems require several components in their data architecture: event-driven data streaming, real-time analytics engines, and AI-centric application frameworks for governance, trust, and explainability.

Closing the Governance Gap Between the Stream and the Lakehouse

🎀Mark Hoerth β€” Product Lead & Solutions Architect, Datastrato

Streaming and analytics keep converging, but governance usually doesn't follow the data across the seam. A topic lives in one world with its own access model; the table it becomes lives in another. This talk shows how an open catalog can span both. Using Redpanda's broker-native Iceberg Topics to turn a live stream into an Apache Iceberg table with no ETL, and Apache Gravitino as the catalog of catalogs holding the topic and resulting table in a single metalake, we'll govern data the same way before and after it lands. The session ends with a live walk from produced records to a governed, queryable Iceberg table under one consistent policy. The takeaway: your governance boundary doesn't have to break where your streaming engine hands off to your lakehouse.

Fast In, Fast Out: A Real-Time Analytics Stack with Apache Iggy (Incubating) and Apache Doris

🎀 Kranti, Founder and CEO, LaserData & Kevin Shen, PPM, VeloDB

This talk pairs two open-source projects to build a real-time analytics stack covering both fast ingest and fast queries: Apache Iggy (incubating), LaserData's Rust message-streaming platform that moves high event volumes at very low latency, and Apache Doris (the database behind VeloDB), which serves sub-second queries on fresh data under heavy concurrency, updates, and joins. After a brief intro to each project, the session walks through a Rust-native Iggy sink connector that streams events directly into Doris with no JVM or intermediary systems, then closes with a live demo pushing a real workload through Iggy into Doris and running analytics as the data landsβ€”leaving attendees with an understanding of why real-time analytics needs both halves, how the connector wires them together, and when and how to build the stack themselves.

⚠️ Important: Building Access Required

This event is hosted at the AWS office. You must register at both links to attend:

  1. βœ… RSVP here on Luma

  2. βœ… Register for building access: AWS Event Registration

Location

πŸ“ AWS Builder Loft, 525 Market St, San Francisco, CA 94105, USA

AI Agents
Register for This Event
Free Growth Analysis

Get a free growth analysis for your company

See how your website, messaging, and go-to-market strategy stack up, in minutes.

Get My Free Analysis

More SF Events You Might Like

← Back to SF Events