Title: Data Modelling: The Timeless Foundation of Modern Data Platforms
2025TL; DR
In our data-saturated world, effective modelling remains the unsung hero. From warehouse optimization to lakehouse structure and AI-ready semantics, this session demonstrates how good modelling cuts complexity, reduces rework, and brings clarity where it matters most.
Session Details
In our data-saturated world, effective modelling remains the unsung hero. From warehouse optimization to lakehouse structure and AI-ready semantics, this session demonstrates how good modelling cuts complexity, reduces rework, and brings clarity where it matters most.
3 things you'll get out of this session
1. Practical Modelling Techniques - Learn how to quickly develop models that reduce warehouse rework, bring structure to lakehouse environments, and create consistent data foundations that evolve with your needs
2. Semantic Harmonization Blueprint - Discover methods for embedding business context into your data models, creating the shared understanding essential for reliable AI outputs and cross-team collaboration
3. Decision Acceleration Framework - Take away proven approaches to capture relationships and business rules that cut through ambiguity, prevent costly assumptions, and enable faster, more confident decision-making
Speakers
Mike O Donnell's previous sessions
Speeding Data Product Delivery from Model to Marketplace
This talk describes a blueprint to successfully transform your data strategy to a fully executable program.
To be resilient; banish the dragons in a world of ever increasing cyberthreats
Tomorrow you will lose access to everything. Not just you, but the entire organisation. Customers too. What happens next?
This session demonstrates why Quest is the #1 Microsoft Co-sell partner.
End-to-end set of solutions for the Microsoft Stack, including Zero Trust, Microsoft environment security and auditing, backup and recovery (incl. M365 backup), fast data recovery from ransomware attack, Endpoint Protection, automation, SQL Server auditing, metadata management, data governance, data quality, data lineage and visibility, data availability, and more.