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Automating Security Detection Engineering

You're reading from   Automating Security Detection Engineering A hands-on guide to implementing Detection as Code

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Product type Paperback
Published in Jun 2024
Publisher Packt
ISBN-13 9781837636419
Length 252 pages
Edition 1st Edition
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Author (1):
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Dennis Chow Dennis Chow
Author Profile Icon Dennis Chow
Dennis Chow
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Toc

Table of Contents (16) Chapters Close

Preface 1. Part 1: Automating Detection Inputs and Deployments
2. Chapter 1: Detection as Code Architecture and Lifecycle FREE CHAPTER 3. Chapter 2: Scoping and Automating Threat-Informed Defense Inputs 4. Chapter 3: Developing Core CI/CD Pipeline Functions 5. Chapter 4: Leveraging AI for Use Case Development 6. Part 2: Automating Validations within CI/CD Pipelines
7. Chapter 5: Implementing Logical Unit Tests 8. Chapter 6: Creating Integration Tests 9. Chapter 7: Leveraging AI for Testing 10. Part 3: Monitoring Program Effectiveness
11. Chapter 8: Monitoring Detection Health 12. Chapter 9: Measuring Program Efficiency 13. Chapter 10: Operating Patterns by Maturity 14. Index 15. Other Books You May Enjoy

Leveraging AI for Testing

Our continuous improvement (CI) efforts so far have seen us create a very mature CI/CD pipeline for implementing detections with very robust configuration and hosting requirements when working with integration-level testing. Next up is AI for extended testing. LLM-based generative AI is particularly good at providing overall analyses and recommended courses of action. We can use these analyses in making decisions as to whether a detection use case is likely to pass or fail a test.

This chapter focuses on implementing different tools to help bolster our CI/CD pipeline and general development process. We will also return to LLMs, modifying our original use cases by validating syntaxes and case normalization in the hands-on labs section. As we move forward to rely more on AI tools for augmentation, we’ll need to consider the security and return-on-investment (ROI) implications of using AI for testing purposes. Finally, we’ll examine the possibilities...

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