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Microsoft Fabric Analytics Engineer Associate Study Guide

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Data drives modern business. The Microsoft Fabric Analytics Engineer Associate (DP-600) certification proves you understand the tools and technologies needed to turn that data into value. This com...
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  • 31 March 2026
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Data drives modern business. The Microsoft Fabric Analytics Engineer Associate (DP-600) certification proves you understand the tools and technologies needed to turn that data into value. This comprehensive guide covers everything you need to know to design and implement enterprise-grade analytics solutions, and ace your certification exam.

Drawing on their extensive experience working with Microsoft Fabric and Power BI, Brian Bønk and Valerie Junk take you through preparing and transforming data, securing and managing analytics assets, and building and optimizing semantic models. You'll learn to work with data warehouses and lakehouses, ensuring data is structured and ready for analysis. You'll also discover how to query and analyze data using SQL, KQL, and DAX, which are essential skills for anyone working with Fabric.

Whether you're preparing for the exam or just looking to expand your Fabric expertise, this book gives you the foundation to succeed.

  • Prepare and enrich data for analysis
  • Work with, secure, and maintain analytics assets
  • Implement, manage, and optimize semantic models
  • Utilize data warehouses and lakehouses
  • Handle workspace access control and item-level access control
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Price: $59.99
Pages: 388
Publisher: O'Reilly Media
Imprint: O'Reilly Media
Publication Date: 31 March 2026
Trim Size: 9.19 X 7.00 in
ISBN: 9798341634817
Format: Paperback
BISACs:

COMPUTERS / Certification Guides / General, COMPUTERS / Data Processing, COMPUTERS / Programming / Microsoft, STUDY AIDS / Professional, STUDY AIDS / Study Guides, COMPUTERS / Data Science / Machine Learning *