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Machine Learning Security with Azure

Machine Learning Security with Azure

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

Machine Learning Security with Azure

4.8 (6)
By: 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

In this chapter, we learned how to develop AI systems responsibly and how to develop an ethical approach using Responsible AI tools. We became familiar with the industry security standards and learned how to enforce them using the Azure Policy service. Reporting and automation for regulatory compliance were never easier as there are a lot of tools we can use to help us view and maintain the compliance status of our services. For reporting and auditing, we have the Compliance and Remediation blades in Azure Policy, Azure Resource Graph Explorer, and command-line tools. To automate environment creation, we can leverage the Azure Blueprints service and IaC.

Now that we have a strategy and some knowledge of multiple security standards available out of the box, let us see how we can implement all those controls and guardrails in our Azure environment. As always when it comes to ML, we will start with the data.

In the next chapter, we will explain data governance and how to...

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Machine Learning Security with Azure
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