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As AI agents plug into more tools and internal systems, the Model Context Protocol (MCP) is becoming a core part of how modern platforms work. With this shift comes a fast‑growing challenge: understanding the new attack surfaces created when probabilistic models interact with real APIs, data, and networks. This book gives practitioners a clear, practical guide to navigating that emerging threat landscape by showing how MCP architectures behave in production and where hidden risks often appear.
The book begins by mapping today’s MCP trust boundaries and explaining why traditional security assumptions don’t hold when the “client” is an LLM. You’ll explore real attack stories and hands‑on labs demonstrating tool‑poisoning techniques, signature cloaking, and sampling‑based abuses. You’ll then learn how attackers target the surrounding environment through DNS rebinding, malicious MCP servers, and confused‑deputy patterns that turn over‑permissioned tools into high‑impact attack paths.
From there, the book provides defensive approaches built on schemas, contracts, monitoring, least privilege, and continuous red‑team testing. Each chapter ends with an exercise to help you apply the ideas to real deployments. Drawing on active MCP security research and real‑world agent testing, this book offers a focused roadmap for securing the next generation of AI systems.
What You Will Learn
Who This Book is For
This book is for security engineers, AI platform teams, red‑teamers, DevSecOps practitioners, MCP implementers, agent‑framework developers, and technical leaders responsible for securing AI‑driven systems and LLM‑powered applications.
Published by: Apress
Publication Date: 2026-11-18
Format: Paperback
ISBN-13: 9798868829673
DOI:
Dimensions: 254cm x178cm
Pages: