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Machine Learning Security with Azure

Machine Learning Security with Azure

By : Georgia Kalyva
4.8 (6)
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Machine Learning Security with Azure

Machine Learning Security with Azure

4.8 (6)
By: Georgia Kalyva

Overview of this book

With AI and machine learning (ML) models gaining popularity and integrating into more and more applications, it is more important than ever to ensure that models perform accurately and are not vulnerable to cyberattacks. However, attacks can target your data or environment as well. This book will help you identify security risks and apply the best practices to protect your assets on multiple levels, from data and models to applications and infrastructure. This book begins by introducing what some common ML attacks are, how to identify your risks, and the industry standards and responsible AI principles you need to follow to gain an understanding of what you need to protect. Next, you will learn about the best practices to secure your assets. Starting with data protection and governance and then moving on to protect your infrastructure, you will gain insights into managing and securing your Azure ML workspace. This book introduces DevOps practices to automate your tasks securely and explains how to recover from ML attacks. Finally, you will learn how to set a security benchmark for your scenario and best practices to maintain and monitor your security posture. By the end of this book, you’ll be able to implement best practices to assess and secure your ML assets throughout the Azure Machine Learning life cycle.
Table of Contents (17 chapters)
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1
Part 1: Planning for Azure Machine Learning Security
5
Part 2: Securing Your Data
8
Part 3: Securing and Monitoring Your AI Environment
13
Part 4: Best Practices for Enterprise Security in Azure Machine Learning

Summary

There are many attacks to be prepared for and vulnerabilities are discovered daily, so we must follow a framework that helps us keep up to date with current vulnerabilities and their mitigations where possible. The MITRE ATLAS framework is a great resource to get started as it is adapted to ML. We need to be aware of the 12 stages and multiple techniques per stage to protect our ML assets. However, as ML assets work with numerous other systems, the implementations we will see in the following chapters will include securing Azure Machine Learning and all its related services.

But before diving into those implementations, in the next chapter, we will learn about the security industry compliance standards we must adhere to and how to implement compliance controls together with responsible AI development practices.

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Machine Learning Security with Azure
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