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  • Book Overview & Buying AI-Native LLM Security
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AI-Native LLM Security

AI-Native LLM Security

By : Vaibhav Malik, Ken Huang, Ads Dawson
4.5 (2)
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AI-Native LLM Security

AI-Native LLM Security

4.5 (2)
By: Vaibhav Malik, Ken Huang, Ads Dawson

Overview of this book

Adversarial AI attacks present a unique set of security challenges, exploiting the very foundation of how AI learns. This book explores these threats in depth, equipping cybersecurity professionals with the tools needed to secure generative AI and LLM applications. Rather than skimming the surface of emerging risks, it focuses on practical strategies, industry standards, and recent research to build a robust defense framework. Structured around actionable insights, the chapters introduce a secure-by-design methodology, integrating threat modeling and MLSecOps practices to fortify AI systems. You’ll discover how to leverage established taxonomies from OWASP, NIST, and MITRE to identify and mitigate vulnerabilities. Through real-world examples, the book highlights best practices for incorporating security controls into AI development life cycles, covering key areas such as CI/CD, MLOps, and open-access LLMs. Built on the expertise of its co-authors—pioneers in the OWASP Top 10 for LLM applications—this guide also addresses the ethical implications of AI security, contributing to the broader conversation on trustworthy AI. By the end of this book, you’ll be able to develop, deploy, and secure AI technologies with confidence and clarity. *Email sign-up and proof of purchase required
Table of Contents (23 chapters)
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1
Part 1: Foundations of LLM Security
7
Part 2: The OWASP Top 10 for LLM Applications
12
Part 3: Building Secure LLM Systems
1
Appendices: Latest OWASP Top 10 for LLM and OWASP AIVSS Agentic AI Core Risks

Integrating Security into the LLM Development Life Cycle: From Data Curation to Deployment

This chapter explores how to integrate security practices and controls into each stage of the LLM development life cycle. Building secure AI systems requires a comprehensive approach that addresses vulnerabilities at every phase of development—from initial data collection to deployment and monitoring. You’ll learn practical security measures for data curation and preprocessing that prevent poisoning and bias. The chapter then examines how to protect model integrity during the training and validation phases, followed by rigorous security testing methodologies tailored specifically for LLMs. You’ll also explore secure deployment strategies and runtime protection measures that safeguard models in production environments. Finally, you’ll learn how to implement continuous monitoring, auditing, and incident response processes to maintain security throughout the LLM’...

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