Implement analytics solutions using Microsoft Fabric (DP-600)
- Course Code M-DP600
- Duration 4 days
Course Delivery
Jump to:
Course Delivery
This course is available in the following formats:
-
Company Event
Event at company
-
Public Classroom
Traditional Classroom Learning
-
Virtual Learning
Learning that is virtual
Request this course in a different delivery format.
Course Overview
TopPrepare, enrich, and serve data for analysis by consumers such as data analysts, report developers, and AI agents.
This 4-day course equips learners with the skills to design and implement end-to-end analytics solutions using Microsoft Fabric. Participants explore the platform’s capabilities, progressing through data ingestion and preparation, semantic modelling, and delivering insights while supporting the full analytics lifecycle. The updated course follows a more structured learning path, ensuring a seamless journey from platform fundamentals to advanced implementation and operational support.
Updated 19/05/2026
Course Schedule
Top-
- Delivery Format: Virtual Learning
- Date: 14-17 June, 2026 | 9:00 AM to 5:00 PM
- Location: Virtual (Arab Stand)
- Language: English
-
- Delivery Format: Public Classroom
- Date: 14-17 June, 2026 | 9:00 AM to 5:00 PM
- Location: Riyadh (Arab Stand)
- Language: English
-
- Delivery Format: Virtual Learning
- Date: 19-22 July, 2026 | 9:00 AM to 5:00 PM
- Location: Virtual (Arab Stand)
- Language: English
-
- Delivery Format: Public Classroom
- Date: 19-22 July, 2026 | 9:00 AM to 5:00 PM
- Location: Cairo-Sheraton (Egypt Stan)
- Language: English
-
- Delivery Format: Virtual Learning
- Date: 10-13 August, 2026 | 8:00 AM to 4:00 PM
- Location: Virtual (Arab Stand)
- Language: English
-
- Delivery Format: Public Classroom
- Date: 10-13 August, 2026 | 9:00 AM to 5:00 PM
- Location: Dubai-Knowledge Village (Arabian St)
- Language: English
Target Audience
TopCourse Objectives
TopStudents will learn how to,
- Explore and navigate Microsoft Fabric to understand its analytics capabilities
- Ingest, transform, and prepare data using Fabric data tools
- Design and build semantic models to support business intelligence scenarios
- Create and deliver actionable insights using reporting and visualisation tools
- Implement end-to-end analytics solutions across the data lifecycle
- Manage and optimise analytics solutions, including performance and governance considerations
Course Content
TopModule 1: Explore analytics data stores in Microsoft Fabric
- Introduction to end-to-end analytics using Microsoft Fabric
- Discover and connect to data in OneLake
- Get started with lakehouses in Microsoft Fabric
- Get started with data warehouses in Microsoft Fabric
- Get started with Real-Time Intelligence in Microsoft Fabric
Module 2: Design and transform analytics data in Microsoft Fabric
- Choose data stores in Microsoft Fabric
- Design dimensional models for analytics in Microsoft Fabric
- Transform data using Dataflows Gen2 in Microsoft Fabric
- Transform data using notebooks in Microsoft Fabric
- Transform data using T-SQL in Microsoft Fabric
Module 3: Design and manage semantic models in Microsoft Fabric
- Create DAX calculations in semantic models
- Design semantic models for scale in Microsoft Fabric
- Optimize semantic model performance
- Enforce semantic model security
- Manage the semantic model development lifecycle
Module 4: Prepare AI-ready analytics data in Microsoft Fabric
- Prepare the semantic layer for AI in Microsoft Fabric
- Understand Microsoft Fabric IQ fundamentals
- Create an ontology with Fabric IQ
Module 5: Secure and govern analytics data in Microsoft Fabric
- Secure data access in Microsoft Fabric
- Secure a Microsoft Fabric data warehouse
- Govern data in Microsoft Fabric with Purview
- Govern analytics data in Microsoft Fabric
Course Prerequisites
Top- Foundational knowledge of data concepts, including relational and non-relational data.
- Basic understanding of data analytics or business intelligence concepts.
- Familiarity with Azure or cloud-based data services .
- Experience with data transformation and querying (e.g., SQL or similar tools).
- Prior exposure to Power BI or data visualisation tools recommended.