Jailbreaking LLMs: Protecting the Future of Enterprise Security

Sale price  $53.99 Regular price  $59.99

Reliable shipping

Flexible returns

Jailbreaking LLMs: Protecting the Future of Enterprise Security

Neelakrishnan, Priyanka

As Large Language Models (LLMs) become deeply integrated into enterprise applications, customer support systems, internal workflows, and decision-making platforms, they also introduce a rapidly expanding attack surface. Jailbreaking LLMs explores how modern AI systems can be manipulated through prompt injections, adversarial attacks, context manipulation, data poisoning, and jailbreak techniques — and why organizations must treat these threats as critical security risks rather than theoretical concerns. With two-thirds of enterprises now deploying generative AI systems in production, the stakes have never been higher.

Through real-world examples, practical frameworks, and enterprise-focused security strategies, this book equips readers to design, secure, monitor, and defend LLM-powered systems at scale. Readers will learn to identify vulnerabilities, implement secure AI architectures, conduct red-teaming exercises, establish governance controls, and build resilient AI environments that align innovation with security, compliance, and responsible AI practices.

What you will learn

      Understand the risks and mechanics of LLM jailbreaking — prompt injection, adversarial inputs, data poisoning, and context manipulation

      Identify and mitigate prompt injection and adversarial attacks

      Design secure and enterprise-ready LLM architectures

      Build monitoring, detection, and AI security response workflows

      Apply red-teaming and defensive testing strategies for LLM systems

      Embed ethical AI governance and regulatory considerations into deployment models

Who this book is for

This book is for cybersecurity professionals, AI/ML engineers, enterprise architects, IT leaders, and security-conscious executives responsible for designing, deploying, or securing systems powered by Large Language Models. It is also valuable for security analysts, incident responders, and platform teams seeking practical guidance for anticipating, detecting, and mitigating AI-related threats in enterprise environments.

Details

Published by: Apress

Publication Date: 2026-12-14

Format: Paperback

ISBN-13: 9798868829574

DOI:

Dimensions: 235cm x155cm

Pages:

You may also like