Agentic Architectural Patterns for Building Multi-Agent Systems: Proven design patterns and practices for GenAI, agents, RAG, LLMOps, and enterprise-s
暫譯: 建構多代理系統的代理架構模式:針對 GenAI、代理、RAG、LLMOps 和企業級應用的驗證設計模式與實踐
Arsanjani, Ali, Bustos, Juan Pablo, Kurian, Thomas
- 出版商: Packt Publishing
- 出版日期: 2026-01-23
- 售價: $2,150
- 貴賓價: 9.5 折 $2,042
- 語言: 英文
- 頁數: 574
- 裝訂: Quality Paper - also called trade paper
- ISBN: 180602957X
- ISBN-13: 9781806029570
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相關分類:
AI Coding
海外代購書籍(需單獨結帳)
商品描述
Transform GenAI experiments into production-ready intelligent agents with scalable AI systems, architectural patterns, frameworks, and responsible AI and governance best practices
DRM-free PDF version + access to Packt's next-gen Reader*
Key Features:
- Build robust single and multi-agent GenAI systems for enterprise use
- Understand the GenAI and Agentic AI maturity model and enterprise adoption roadmap
- Use prompt engineering and optimization, various styles of RAG, and LLMOps to enhance AI capability and performance
- Purchase of the print or Kindle book includes a free PDF eBook
Book Description:
Generative AI has moved beyond the hype, and enterprises now face the challenge of turning prototypes into scalable solutions. This book is your guide to building intelligent agents powered by LLMs.
Starting with a GenAI maturity model, you'll learn how to assess your organization's readiness and create a roadmap toward agentic AI adoption. You'll master foundational topics such as model selection and LLM deployment, progressing to advanced methods such as RAG, fine-tuning, in-context learning, and LLMOps, especially in the context of agentic AI. You'll explore a rich library of agentic AI design patterns to address coordination, explainability, fault tolerance, and human-agent interaction. This book introduces a concrete, hierarchical multi-agent architecture where high-level orchestrator agents manage complex business workflows by delegating entire sub-processes to specialized agents. You'll see how these agents collaborate and communicate using the Agent-to-Agent (A2A) protocol.
To ensure your systems are production-ready, we provide a practical framework for observability using life cycle callbacks, giving you the granular traceability needed for debugging, compliance, and cost management. Each pattern is backed by real-world scenarios and code examples using the open source Agent Development Kit (ADK).
*Email sign-up and proof of purchase required
What You Will Learn:
- Apply design patterns to handle instruction drift, improve coordination, and build fault-tolerant AI systems
- Design systems with the three layers of the agentic stack: function calling, tool protocols (MCP), and A2A collaboration
- Develop responsible, ethical, and governable GenAI applications
- Use frameworks such as ADK, LangGraph, and CrewAI with code examples
- Master prompt engineering, LLMOps, and AgentOps best practices
- Build agentic systems using RAG, fine-tuning, and in-context learning
Who this book is for:
This book is for AI developers, data scientists, and professionals eager to apply GenAI and agentic AI to solve business challenges. A basic grasp of data and software concepts is expected. The book offers a clear path for newcomers while providing advanced insights for individuals already experimenting with the technology. With real-world case studies, technical guides, and production-focused examples, the book supports a wide range of skill levels, from learning the foundations to building sophisticated, autonomous AI systems for enterprise use.
Table of Contents
- GenAI in the Enterprise: Landscape, Maturity, and Agent Focus
- Agent-Ready LLMs: Selection, Deployment, and Adaptation
- The Spectrum of LLM Adaptation for Agents: RAG to Fine-tuning
- Agentic AI Architecture: Components and Interactions
- Multi-Agent Coordination Patterns
- Explainability and Compliance Agentic Patterns
- Robustness and Fault Tolerance Patterns
- Human-Agent Interaction Patterns
- Agent-Level Patterns
- System-Level Patterns for Production Readiness
(N.B. Please use the Read Sample option to see further chapters)
商品描述(中文翻譯)
**將 GenAI 實驗轉化為可投入生產的智能代理,搭配可擴展的 AI 系統、架構模式、框架以及負責任的 AI 和治理最佳實踐**
**無 DRM 的 PDF 版本 + 獲得 Packt 的下一代閱讀器訪問權限**
**主要特點:**
- 為企業使用構建穩健的單一和多代理 GenAI 系統
- 理解 GenAI 和代理 AI 的成熟度模型及企業採用路線圖
- 使用提示工程和優化、各種 RAG 風格及 LLMOps 來增強 AI 的能力和性能
- 購買印刷版或 Kindle 書籍可獲得免費 PDF 電子書
**書籍描述:**
生成式 AI 已經超越了炒作,企業現在面臨將原型轉化為可擴展解決方案的挑戰。本書是您構建由 LLM 驅動的智能代理的指南。
從 GenAI 成熟度模型開始,您將學習如何評估組織的準備程度並制定代理 AI 採用的路線圖。您將掌握模型選擇和 LLM 部署等基礎主題,並進一步學習 RAG、微調、上下文學習和 LLMOps 等高級方法,特別是在代理 AI 的背景下。您將探索豐富的代理 AI 設計模式庫,以解決協調性、可解釋性、容錯性和人機互動等問題。本書介紹了一種具體的分層多代理架構,其中高級協調代理通過將整個子過程委派給專門代理來管理複雜的業務工作流程。您將看到這些代理如何使用代理對代理(A2A)協議進行協作和通信。
為了確保您的系統準備好投入生產,我們提供了一個實用的可觀察性框架,使用生命週期回調,為您提供調試、合規性和成本管理所需的細粒度可追溯性。每個模式都有真實世界的場景和使用開源代理開發工具包(ADK)的代碼示例支持。
*需要電子郵件註冊和購買證明*
**您將學到什麼:**
- 應用設計模式來處理指令漂移、改善協調性並構建容錯的 AI 系統
- 設計具有代理堆疊三層的系統:功能調用、工具協議(MCP)和 A2A 協作
- 開發負責任、道德和可治理的 GenAI 應用
- 使用 ADK、LangGraph 和 CrewAI 等框架及代碼示例
- 精通提示工程、LLMOps 和 AgentOps 的最佳實踐
- 使用 RAG、微調和上下文學習構建代理系統
**本書適合誰:**
本書適合 AI 開發人員、數據科學家和渴望應用 GenAI 和代理 AI 解決商業挑戰的專業人士。預期讀者對數據和軟體概念有基本了解。本書為新手提供清晰的學習路徑,同時為已經在實驗該技術的個人提供高級見解。通過真實案例研究、技術指南和以生產為重點的示例,本書支持從學習基礎到為企業使用構建複雜、自主 AI 系統的各種技能水平。
**目錄**
- 企業中的 GenAI:現狀、成熟度和代理重點
- 代理就緒的 LLM:選擇、部署和適應
- 代理的 LLM 適應範疇:從 RAG 到微調
- 代理 AI 架構:組件和互動
- 多代理協調模式
- 可解釋性和合規性代理模式
- 穩健性和容錯模式
- 人機互動模式
- 代理級模式
- 生產就緒的系統級模式
(注意:請使用閱讀樣本選項查看後續章節)