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Event

Small Data SF 2025

2025-11-04 – 2025-11-06 Small Data SF Visit website ↗

Activities tracked

3

Filtering by: Data Modelling ×

Sessions & talks

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In the long run, everything is a fad

2025-11-05
talk
Benn Stancil (ThoughtSpot)

To be clear - I'm not saying that analytics and data engineering are a fad. I'm not saying the data teams are doomed to fade away, or that the old fundamentals of data modeling are wrong, or that the urge to quantify everything is a mistake. I'm saying that things seem pretty good, right now. But, you know. Like Charles Schwab constantly says, past performance is no guarantee of future results. So someone else might say all of that in the future - because, as John Maynard Keynes said, in the long run, we are all dead.

The Great Data Engineering "Reset": From Pipelines to Agents and Beyond

2025-11-05
talk
Joe Reis (DeepLearning.AI)

For years, data engineering was a story of predictable "pipelines": move data from point A to point B. But AI just hit the reset button on our entire field. Now, we're all staring into the void, wondering what's next. While the fundamentals haven't changed, data remains challenging in the traditional areas of data governance, data management, and data modeling, which still present challenges. Everything else is up for grabs. This talk will cut through the noise and explore the future of data engineering in an AI-driven world. We'll examine how team structures will evolve, why agentic workflows and real-time systems are becoming non-negotiable, and how our focus must shift from building dashboards and analytics to architecting for automated action. The reset button has been pushed. It's time for us to invent the future of our industry.

Duck, duck, "deploy": Building an AI-ready app in 2 hours

2025-11-04
workshop
Russ Garner (Omni) , Becca Bruggman (Omni)

Start with a dataset in Motherduck and build a production-ready analytics app using Omni’s semantic model and APIs. We’ll cover practical data modeling techniques, share lessons learned from building AI features, and walk through how to give AI the context it needs to answer questions accurately. You’ll leave with a working app and the skills to build your next one.