Microsoft fabric webinar
Live Webinar

IT-Logix Partner Webinar | Strengths Combined: Optimal Use of Microsoft Fabric and WhereScape

Wednesday, August 14, 2024|4:30 CEST

Join us for an insightful webinar where we explore how to leverage the strengths of Microsoft Fabric and WhereScape for your BI solutions.

Microsoft Fabric is the buzzword in the BI world, but does it address all the challenges of implementing a modern BI solution? 

The answer is clear: while Fabric excels in integrating various infrastructure components, it falls short in modeling and automation. This is where WhereScape steps in, with its metadata-driven data modeling and the ability to generate data structures, pipelines, and transformation logic seamlessly.

In this webinar, IT-Logix and WhereScape will demonstrate how to quickly and effectively implement a Fabric-based BI solution. Our expert presenters, Raphael Branger from IT-Logix and Paul Watson-Gover from WhereScape, will guide you through the process and answer your questions during an extended Q&A session.

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Raphael Branger

IT-Logix

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