494.160 kr.
This comprehensive course offers an in-depth exploration of Microsoft Fabric, a unified analytics platform. Participants will learn the essentials of end-to-end analytics, starting with foundational concepts and progressing to advanced functionalities. The course covers the design and use of lakehouses, data pipelines, Apache Spark integration, data warehousing, and Power BI semantic modeling. Additionally, it emphasizes real-time intelligence, advanced query techniques, and robust security practices. With a focus on scalability, performance optimization, and administrative management, this course equips data professionals with the skills necessary to implement and manage analytics solutions effectively using Microsoft Fabric.
Audience Profile
The primary audience for this course is data professionals with experience in data modeling and analytics. DP-600 is designed for professionals who want to use Microsoft Fabric to create and deploy enterprise-scale data analytics solutions.
This course is designed for experienced data professionals skilled at data preparation, modeling, analysis, and visualization, such as the PL-300: Power BI Data Analyst certification. Learners should have prior experience with one of the following programming languages: Structured Query Language (SQL), Kusto Query Language (KQL), or Data Analysis Expressions (DAX).
To benefit fully from the course, delegates should possess the following foundational knowledge and skills:
Data Analytics Fundamentals:
Database Knowledge:
ETL Processes:
Cloud Data Platforms:
Power BI Basics:
Programming Concepts:
Security and Permissions:
Business Context:
These prerequisites will help delegates engage effectively with the course material, navigate the tools and technologies in Microsoft Fabric, and apply the learnings to real-world scenarios.
Module 1: Explore end-to-end analytics with Microsoft Fabric
Module 2: Get started with lakehouses in Microsoft Fabric
Module 3: Ingest data with Dataflow Gen2 in Microsoft Fabric
Module 4: Orchestrate processes and data movement with Microsoft Fabric
Module 5: Use Apache Spark in Microsoft Fabric
Module 6: Get started with data warehouses in Microsoft Fabric
Module 7: Load data into a Microsoft Fabric data warehouse
Module 8: Query a data warehouse in Microsoft Fabric
Module 9: Monitor a Microsoft Fabric data warehouse
Module 10: Secure a Microsoft Fabric data warehouse
Module 11: Add measures to Power BI semantic models
Understand implicit and explicit measures.
Create measures, calculated columns, and calculated tables.
Identify when to use a measure or calculated column.
Module 12: Design scalable semantic models
Choose appropriate storage modes for your semantic model.
Enable large semantic model storage format and incremental refresh.
Create relationships between tables in a semantic model.
Design dynamic elements to extend calculations in a semantic model.
Module 13: Optimize a model for performance in Power BI
Module 14: Create and manage Power BI assets
Module 15: Enforce semantic model security
Module 16: Get started with Real-Time Intelligence with Microsoft Fabric
Module 17: Secure data access in Microsoft Fabric
Module 18: Administer Microsoft Fabric