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Details
Presentation: Microsoft Fabric: Data Warehouse vs. Lakehouse
Delivery: On-line only
Teams Meeting Link to join: Join the meeting now
Date: 6th May 2024 (Monday)
Time: 18:45 – 20:00 ET
Level: Beginner/Intermediate

Agenda:
18:45-19:00 Introductions & Networking
19:00-20:00 Main presentation – Warehouse vs Lakehouse

Teams Link to join: Join the meeting now

Overview: Microsoft Fabric is the new data analytics offering from Microsoft that combines Power BI, ETL, data warehousing, data lakes, Spark, and more into a single connected platform. The challenge with so many options is choosing the right tool for the job. In this session, you will learn about the similarities and differences between Fabric Data Warehouse and Fabric Lakehouse so you can make an informed decision about architecting your next analytics solution. We will talk about data loading, data engineering/cleansing, reporting, and integration with the broader Microsoft platform.

Speaker: Bradley Schacht is a Principal Program Manager on the Microsoft Fabric product team based in Jacksonville, FL. Bradley is a former consultant, trainer, and has authored 5 SQL Server and Power BI books, most recently the Microsoft Power BI Quick Start Guide. As a member of the Microsoft Fabric product team, Bradley works directly with customers to solve some of their most complex data problems and helps shape the future of Microsoft Fabric. Bradley gives back to the community through speaking at events such as the PASS Summit, SQL Saturdays, Code Camps, and user groups across the country including locally at the Jacksonville SQL Server User Group (JSSUG). He is a contributor on SQLServerCentral.com and blogs on his personal site, BradleySchacht.com.

Sponsor: CloudStaff.ai

Related topics

Microsoft Azure
Data Warehouse
Power BI
Database Professionals
Software Development

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