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Learn Microsoft Fabric

You're reading from   Learn Microsoft Fabric A practical guide to performing data analytics in the era of artificial intelligence

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Product type Paperback
Published in Feb 2024
Publisher Packt
ISBN-13 9781835082287
Length 338 pages
Edition 1st Edition
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Authors (2):
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Bradley Schacht Bradley Schacht
Author Profile Icon Bradley Schacht
Bradley Schacht
Arshad Ali Arshad Ali
Author Profile Icon Arshad Ali
Arshad Ali
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Table of Contents (19) Chapters Close

Preface 1. Part 1: An Introduction to Microsoft Fabric FREE CHAPTER
2. Chapter 1: Overview of Microsoft Fabric and Understanding Its Different Concepts 3. Chapter 2: Understanding Different Workloads and Getting Started with Microsoft Fabric 4. Part 2: Building End-to-End Analytics Systems
5. Chapter 3: Building an End-to-End Analytics System – Lakehouse 6. Chapter 4: Building an End-to-End Analytics System – Data Warehouse 7. Chapter 5: Building an End-to-End Analytics System – Real-Time Analytics 8. Chapter 6: Building an End-to-End Analytics System – Data Science 9. Part 3: Administration and Monitoring
10. Chapter 7: Monitoring Overview and Monitoring Different Workloads 11. Chapter 8: Administering Fabric 12. Part 4: Security and Developer Experience
13. Chapter 9: Security and Governance Overview 14. Chapter 10: Continuous Integration and Continuous Deployment (CI/CD) 15. Part 5: AI Assistance with Copilot Integration
16. Chapter 11: Overview of AI Assistance and Copilot Integration 17. Index 18. Other Books You May Enjoy

Data Science

The goal of the Data Science experience in Microsoft Fabric is to empower data scientists, developers, and business users to develop a complete end-to-end data science workflow for data enrichment (acquisition, transformation, data exploration, and feature engineering) and predictive business insights with artificial intelligence (AI) and ML-based models. It empowers you, as a data scientist and developer, to execute a wide range of tasks across the entire data science process, starting from data exploration, preparation, and cleansing to experimentation, feature engineering, model training, model scoring, and serving predictive insights to end users, BI reports, or other tools.

When you switch to the Data Science experience, you will find these options to work with:

Figure 2.25 – Data Science workload options

Figure 2.25 – Data Science workload options

Having learned about the data science capabilities in Fabric, it’s time to dive deep into some of these capabilities...

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