Hello speakers!
Session Tracks
This year’s event features dedicated tracks across some of the most in‑demand areas with each track led by experienced speakers and focused on practical, real‑world content you can put to work right away.
Microsoft Fabric — Dive into Microsoft’s unified data and AI platform, from lakehouses and data pipelines to real‑time intelligence and integrated experiences across the data lifecycle.
Power BI — Explore reporting, visualization, and self‑service analytics. Whether you’re building your first dashboard or optimizing enterprise‑scale models, there’s something here for you.
SQL Server — The backbone of countless data platforms. Sessions cover performance tuning, administration, architecture, and what’s new in the latest releases.
Data Engineering & Data Science — From designing data architectures to building modern pipelines, warehouses, and machine learning models, these sessions bridge the gap between raw data and real insight.
Copilot & Artificial Intelligence — See how AI is reshaping the way we work with data, from integrating Copilot and large language models into your workflows to building intelligent data solutions.
Professional Development — Step into the Microsoft Innovation Hub’s immersive Envisioning Center, with its wraparound displays, for sessions focused on career growth, leadership, and building the skills that set you apart beyond the technical.
Community Spotlight — An intimate track designed to help local, or user group speakers take the next step onto the conference stage. If you’ve been presenting and are ready to level up, this is your opportunity.
This is an in-person event on Saturday, Oct. 24, 2026. Each session will last 60 minutes.
Please include session title, description, track, level (beginner, intermediate or advanced), target audience and speaker bio.
Code of Conduct: https://sqlsaturday.com/coc/
Thank you for submitting!
If you haven't logged in before, you'll be able to register.
Using social networks to login is faster and simpler, but if you prefer username/password account - use Classic Login.