Conversational Multi-Agent Systems: Collaborative AI Agents for Developers and Testers (Paperback)
暫譯: 對話式多代理系統:為開發者和測試者設計的協作AI代理
Wang, Djan
- 出版商: Independently Published
- 出版日期: 2025-09-03
- 售價: $880
- 貴賓價: 9.5 折 $836
- 語言: 英文
- 頁數: 204
- 裝訂: Quality Paper - also called trade paper
- ISBN: 9798263622046
- ISBN-13: 9798263622046
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相關分類:
Chatbot
海外代購書籍(需單獨結帳)
商品描述
Conversational AI is moving beyond single chatbots and into collaborative multi-agent systems, networks of intelligent agents that work together, communicate, and solve complex tasks in real time. This book gives developers and testers the practical knowledge needed to design, build, and deploy such systems with confidence.
Written with a focus on hands-on implementation, it shows how to move from theory to working prototypes, covering everything from agent communication models to workflow orchestration, memory design, and real-world applications. Developers will learn how to integrate frameworks and tools into robust systems, while testers will gain methods for validating reliability, scalability, and collaborative behavior.
Key takeaways include:
How conversational multi-agent systems differ from traditional chatbots
Architectures for coordination, delegation, and shared memory
Practical code examples in Python and leading frameworks
Testing strategies for ensuring agent collaboration and performance
Use cases across software development, customer support, and automation
Whether you're building your first agentic system or refining production workflows, this book gives you a clear, practical guide to making multi-agent AI conversational, reliable, and effective.
For developers and testers ready to move from isolated agents to collaborative AI systems that scale, this is your playbook.
Written with a focus on hands-on implementation, it shows how to move from theory to working prototypes, covering everything from agent communication models to workflow orchestration, memory design, and real-world applications. Developers will learn how to integrate frameworks and tools into robust systems, while testers will gain methods for validating reliability, scalability, and collaborative behavior.
Key takeaways include:
How conversational multi-agent systems differ from traditional chatbots
Architectures for coordination, delegation, and shared memory
Practical code examples in Python and leading frameworks
Testing strategies for ensuring agent collaboration and performance
Use cases across software development, customer support, and automation
Whether you're building your first agentic system or refining production workflows, this book gives you a clear, practical guide to making multi-agent AI conversational, reliable, and effective.
For developers and testers ready to move from isolated agents to collaborative AI systems that scale, this is your playbook.
商品描述(中文翻譯)
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