Every company now has AI in production. Almost none of them have secured it properly. That's not a small problem. That's a time bomb. From prompt injection attacks to silent data leaks, modern AI applications introduce entirely new security risks that traditional API security was never designed to handle. This book is your practical, no-nonsense guide to fixing that. No hype. No "AI will change everything" speeches.
Just real-world security strategies that actually work. What You'll Learn How prompt injection attacks actually work (and why they're so dangerous) The hidden ways AI systems leak sensitive data without anyone noticing Securing LLM APIs in real production environments How attackers exploit tools, plugins, and agent-based systems Building layered defenses for AI applications Practical threat modeling for AI systems (not theoretical fluff) Secure deployment patterns using Docker and modern pipelines Logging, monitoring, and incident response for AI apps Hands-On, Practical ApproachThis isn't a theory book.
You'll work with: Real attack scenarios Code-level defenses Security checklists you can apply immediately Production-ready architecture patterns Who This Book Is For Developers building AI apps with APIs Security engineers entering the AI space Startup teams shipping LLM features fast (and slightly nervously) CTOs who know "this could go wrong" but aren't sure how What Makes This DifferentMost books explain AI.
This one explains how AI breaks - and how to stop it. If You're Deploying AI Without Security.You're not building a product. You're building a vulnerability.
Every company now has AI in production. Almost none of them have secured it properly. That's not a small problem. That's a time bomb. From prompt injection attacks to silent data leaks, modern AI applications introduce entirely new security risks that traditional API security was never designed to handle. This book is your practical, no-nonsense guide to fixing that. No hype. No "AI will change everything" speeches.
Just real-world security strategies that actually work. What You'll Learn How prompt injection attacks actually work (and why they're so dangerous) The hidden ways AI systems leak sensitive data without anyone noticing Securing LLM APIs in real production environments How attackers exploit tools, plugins, and agent-based systems Building layered defenses for AI applications Practical threat modeling for AI systems (not theoretical fluff) Secure deployment patterns using Docker and modern pipelines Logging, monitoring, and incident response for AI apps Hands-On, Practical ApproachThis isn't a theory book.
You'll work with: Real attack scenarios Code-level defenses Security checklists you can apply immediately Production-ready architecture patterns Who This Book Is For Developers building AI apps with APIs Security engineers entering the AI space Startup teams shipping LLM features fast (and slightly nervously) CTOs who know "this could go wrong" but aren't sure how What Makes This DifferentMost books explain AI.
This one explains how AI breaks - and how to stop it. If You're Deploying AI Without Security.You're not building a product. You're building a vulnerability.