Context Engineering for Multi-Agent Systems: Move beyond prompting to build a Context Engine, a transparent architecture of context and reasoning (Paperback)
暫譯: 多代理系統的上下文工程:超越提示,構建上下文引擎,一個透明的上下文與推理架構(平裝本)

Rothman, Denis

  • 出版商: Packt Publishing
  • 出版日期: 2025-11-18
  • 售價: $2,000
  • 貴賓價: 9.5$1,900
  • 語言: 英文
  • 頁數: 396
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 1806690055
  • ISBN-13: 9781806690053
  • 相關分類: AI Coding
  • 海外代購書籍(需單獨結帳)

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商品描述

Build AI that thinks in context using semantic blueprints, multi-agent orchestration, memory, RAG pipelines, and safeguards to create your own Context Engine

Free with your book: DRM-free PDF version + access to Packt's next-gen Reader*

Key Features:

- Design semantic blueprints to give AI structured, goal-driven contextual awareness

- Orchestrate multi-agent workflows with MCP for adaptable, context-rich reasoning

- Engineer a glass-box Context Engine with high-fidelity RAG, trust, and safeguards

Book Description:

Generative AI is powerful, yet often unpredictable. This guide shows you how to turn that unpredictability into reliability by thinking beyond prompts and approaching AI like an architect. At its core is the Context Engine, a glass-box, multi-agent system you'll learn to design and apply across real-world scenarios.

Written by an AI guru and author of various cutting-edge AI books, this book takes you on a hands-on journey from the foundations of context design to building a fully operational Context Engine. Instead of relying on brittle prompts that give only simple instructions, you'll begin with semantic blueprints that map goals and roles with precision, then orchestrate specialized agents using the Model Context Protocol. As the engine evolves, you'll integrate memory and high-fidelity retrieval with citations, implement safeguards against data poisoning and prompt injection, and enforce moderation to keep outputs aligned with policy. You'll also harden the system into a resilient architecture, then see it pivot across domains, from legal compliance to strategic marketing, proving its domain independence.

By the end of this book, you'll be equipped with the skills to engineer an adaptable, verifiable architecture you can repurpose across domains and deploy with confidence.

*Email sign-up and proof of purchase required

What You Will Learn:

- Develop memory models to retain short-term and cross-session context

- Craft semantic blueprints and drive multi-agent orchestration with MCP

- Implement high-fidelity RAG pipelines with verifiable citations

- Apply safeguards against prompt injection and data poisoning

- Enforce moderation and policy-driven control in AI workflows

- Repurpose the Context Engine across legal, marketing, and beyond

- Deploy a scalable, observable Context Engine in production

Who this book is for:

This book is for AI engineers, software developers, system architects, and data scientists who want to move beyond ad hoc prompting and learn how to design structured, transparent, and context-aware AI systems. It will also appeal to ML engineers and solutions architects with basic familiarity with LLMs who are eager to understand how to orchestrate agents, integrate memory and retrieval, and enforce safeguards.

Table of Contents

- The Semantic Blueprint: From Prompt to Context

- Building a Multi-Agent System with MCP

- Building the Context-Aware Multi-Agent System

- Assembling the Context Engine

- Hardening the Context Engine

- Building the Summarizer Agent for Context Reduction

- High-Fidelity RAG and Defense: The NASA-Inspired Research Assistant

- Architecting for Reality: Moderation, Latency, and Policy-Driven AI

- Architecting for Brand and Agility: The Strategic Marketing Engine

- The Blueprint for Production-Ready AI

商品描述(中文翻譯)

**使用語意藍圖、多代理協調、記憶、RAG 管道和安全措施構建能夠在上下文中思考的 AI,創建您自己的上下文引擎**

**隨書附贈:無 DRM 的 PDF 版本 + 訪問 Packt 的下一代閱讀器*

**主要特點:**

- 設計語意藍圖,為 AI 提供結構化、以目標為導向的上下文意識
- 使用 MCP 協調多代理工作流程,以實現靈活且富有上下文的推理
- 構建一個高保真 RAG、信任和安全措施的透明上下文引擎

**書籍描述:**

生成式 AI 功能強大,但往往不可預測。本指南將向您展示如何將這種不可預測性轉化為可靠性,通過超越提示的思維,將 AI 視為一位建築師。其核心是上下文引擎,這是一個透明的多代理系統,您將學會設計並應用於現實場景中。

本書由一位 AI 大師及多本前沿 AI 書籍的作者撰寫,帶您從上下文設計的基礎開始,進入構建一個完全運作的上下文引擎的實踐旅程。您將不再依賴僅提供簡單指令的脆弱提示,而是從精確映射目標和角色的語意藍圖開始,然後使用模型上下文協議協調專門的代理。隨著引擎的演變,您將整合記憶和高保真檢索,並實施防止數據中毒和提示注入的安全措施,強化管理以保持輸出符合政策。您還將使系統堅固成為一個韌性架構,然後看到它在法律合規、戰略行銷等領域的轉變,證明其領域獨立性。

在本書結束時,您將具備設計可適應、可驗證架構的技能,能夠在不同領域中重新利用並自信地部署。

*需要電子郵件註冊和購買證明

**您將學到的內容:**

- 開發記憶模型以保留短期和跨會話的上下文
- 創建語意藍圖並使用 MCP 驅動多代理協調
- 實施高保真 RAG 管道,並提供可驗證的引用
- 應用防止提示注入和數據中毒的安全措施
- 在 AI 工作流程中強化管理和政策驅動的控制
- 在法律、行銷等領域重新利用上下文引擎
- 在生產環境中部署可擴展、可觀察的上下文引擎

**本書適合誰:**

本書適合希望超越臨時提示的 AI 工程師、軟體開發人員、系統架構師和數據科學家,學習如何設計結構化、透明且具上下文意識的 AI 系統。對於對 LLM 有基本了解的 ML 工程師和解決方案架構師也會感興趣,他們渴望了解如何協調代理、整合記憶和檢索,以及強化安全措施。

**目錄**

- 語意藍圖:從提示到上下文
- 使用 MCP 構建多代理系統
- 構建上下文感知的多代理系統
- 組裝上下文引擎
- 強化上下文引擎
- 構建上下文縮減的摘要代理
- 高保真 RAG 和防禦:受 NASA 啟發的研究助手
- 為現實架構:管理、延遲和政策驅動的 AI
- 為品牌和靈活性架構:戰略行銷引擎
- 生產就緒 AI 的藍圖

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