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Machine Learning Security with Azure

You're reading from  Machine Learning Security with Azure

Product type Book
Published in Dec 2023
Publisher Packt
ISBN-13 9781805120483
Pages 310 pages
Edition 1st Edition
Languages
Author (1):
Georgia Kalyva Georgia Kalyva
Profile icon Georgia Kalyva

Table of Contents (17) Chapters

Preface 1. Part 1: Planning for Azure Machine Learning Security
2. Chapter 1: Assessing the Vulnerability of Your Algorithms, Models, and AI Environments 3. Chapter 2: Understanding the Most Common Machine Learning Attacks 4. Chapter 3: Planning for Regulatory Compliance 5. Part 2: Securing Your Data
6. Chapter 4: Data Protection and Governance 7. Chapter 5: Data Privacy and Responsible AI Best Practices 8. Part 3: Securing and Monitoring Your AI Environment
9. Chapter 6: Managing and Securing Access 10. Chapter 7: Managing and Securing Your Azure Machine Learning Workspace 11. Chapter 8: Managing and Securing the MLOps Life Cycle 12. Chapter 9: Logging, Monitoring, and Threat Detection 13. Part 4: Best Practices for Enterprise Security in Azure Machine Learning
14. Chapter 10: Setting a Security Baseline for Your Azure Machine Learning Workloads 15. Index 16. Other Books You May Enjoy

Summary

Protecting sensitive data is a multi-faceted problem. There are ways and techniques to mitigate fairness and protect privacy work ethically and responsibly with AI, but the balance between prediction accuracy and data protection is very sensitive. If you add the complexity of choosing the right combination of techniques based on your data and algorithms, it can seem daunting.

In this chapter, we learned to identify different types of sensitive data and common techniques to remove or mask them. However, it is not always possible to completely eliminate them as they are useful for the model training process. In this case, there are several libraries available to help. We can use the SmartNoise SDK to introduce noise to our data and protect privacy, work with the Fairlearn SDK to mitigate fairness, and use the Responsible AI dashboard together with explainers to interpret our models. We ended this chapter by introducing the concept of FL and how to apply it using Azure Machine...

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