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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

Understanding ML and AI attacks

All the stages mentioned in the previous section use multiple techniques to achieve each goal. The adversary can use these techniques alone, sequentially, or combined. Some attacks can be repeated and used in various stages for different purposes. It all depends on the adversary’s goal, which is why by applying Zero Trust principles and always verifying all levels of the system, we have a better chance of protecting our services or at least detecting an incident before it has time to do any extensive damage to the system.

Here, we will describe the most common AI and ML attacks per stage. We will also talk about attacks from the MITRE ATT&CK framework that, although not ML-specific, can be used to access systems that contain ML capabilities, among other things. Although we will outline the possible mitigations for each attack, we will go through the implementations in more detail in the following chapters.

Let us explore the attack techniques...

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