Building Agentic AI Systems: Create intelligent, autonomous AI agents that can reason, plan, and adapt
Author: Anjanava Biswas , Wrick Talukdar
Publisher finelybook 出版社: Packt Publishing
Edition 版本: N/A
Publication Date 出版日期: 2025-04-21
Language 语言: English
Print Length 页数: 288 pages
ISBN-10: 1803238755
ISBN-13: 9781803238753
Book Description
Master the art of building AI agents with large language models using the coordinator, worker, and delegator approach for orchestrating complex AI systems
Key Features
- Understand the foundations and advanced techniques of building intelligent, autonomous AI agents
- Learn advanced techniques for reflection, introspection, tool use, planning, and collaboration in agentic systems
- Explore crucial aspects of trust, safety, and ethics in AI agent development and applications
- Purchase of the print or Kindle book includes a free PDF eBook
Book Description
Gain unparalleled insights into the future of AI autonomy with this comprehensive guide to designing and deploying autonomous AI agents that leverage generative AI (GenAI) to plan, reason, and act. Written by industry-leading AI architects and recognized experts shaping global AI standards and building real-world enterprise AI solutions, it explores the fundamentals of agentic systems, detailing how AI agents operate independently, make decisions, and leverage tools to accomplish complex tasks.
Starting with the foundations of GenAI and agentic architectures, you’ll explore decision-making frameworks, self-improvement mechanisms, and adaptability. The book covers advanced design techniques, such as multi-step planning, tool integration, and the coordinator, worker, and delegator approach for scalable AI agents.
Beyond design, it addresses critical aspects of trust, safety, and ethics, ensuring AI systems align with human values and operate transparently. Real-world applications illustrate how agentic AI transforms industries such as automation, finance, and healthcare. With deep insights into AI frameworks, prompt engineering, and multi-agent collaboration, this book equips you to build next-generation adaptive, scalable AI agents that go beyond simple task execution and act with minimal human intervention.
What you will learn
- Master the core principles of GenAI and agentic systems
- Understand how AI agents operate, reason, and adapt in dynamic environments
- Enable AI agents to analyze their own actions and improvise
- Implement systems where AI agents can leverage external tools and plan complex tasks
- Apply methods to enhance transparency, accountability, and reliability in AI
- Explore real-world implementations of AI agents across industries
Who this book is for
This book is ideal for AI developers, machine learning engineers, and software architects who want to advance their skills in building intelligent, autonomous agents. It’s perfect for professionals with a strong foundation in machine learning and programming, particularly those familiar with Python and large language models. While prior experience with generative AI is beneficial, the book covers foundational concepts for those new to agentic systems.
Table of Contents
- Fundamentals of Generative AI
- Principles of Agentic Systems
- Essential Components of Intelligent Agents
- Reflection and Introspection in Agents
- Enabling Tool Use and Planning in Agents
- Exploring the Coordinator, Worker, and Delegator Approach
- Effective Agentic System Design Techniques
- Building Trust in Generative AI Systems
- Managing Safety and Ethical Considerations
- Common Use Cases and Applications
- Conclusion and Future Outlook
About the Author
Anjanava Biswas is an award-winning senior AI specialist solutions architect with over 17 years of industry experience. Specializing in machine learning, Generative AI, natural language processing, deep learning, data analytics, and cloud architecture, he partners with large enterprises to build and scale advanced AI systems in the cloud. Anjanava is widely recognized for his contributions to the field of applied AI. He has published research in multiple scientific journals and actively contributes to open-source AI/ML projects. His professional accolades include Fellowships with BCS (UK), the IET (UK), and IETE (India), and he is a senior IEEE member. A frequent public speaker, Anjanava has held key positions at industry giants like IBM and Oracle Corp. Originally from India, he now resides in San Diego, CA, with his wife and son, where he continues to innovate and inspire within the tech community.
Wrick Talukdar is a visionary technology leader in generative artificial intelligence (AI) at Amazon, with over two decades of global experience in AI, cloud computing, and product leadership. A pioneer in AI-driven transformation, he has led large-scale modernization initiatives that drive enterprise growth and impact millions worldwide. He has spearheaded the productization of award-winning AI/ML technologies, now deployed at scale for Fortune 500 companies, shaping real-world AI applications. A recognized figure in AI research, Wrick’s work in generative AI, multimodality, natural language processing, and computer vision is widely cited and referenced in the field. As a senior IEEE member, Chair, and panelist in multiple industry forums, he advises global committees like CTSoc Industry Forums and NIC, setting industry standards and shaping AI’s role for the future. He frequently presents his innovations at premier conferences such as World Technology Summit, IEEE HKN, ICCE, CERAWeek, and ADIPEC, bridging cutting-edge research with real-world AI applications to accelerate industry-wide innovation. Deeply rooted in his computer science background, he co-chairs IEEE NIC to empower young professionals. As an author and thought leader, he continues to push AI’s boundaries, inspiring future innovators. Wrick lives in California with his family.
下载地址
相关推荐
Explainable AI and Blockchain for Secure and Agile Supply Chains
Experiment with the Sense HAT: Sense the real world with your Raspberry Pi, 2nd Edition
Quick Start Kubernetes, 2025 Edition
Introduction to Statistical Computing and Visualization Using R
Communication Networks in Smart Power Grids
Debiasing AI: Rethinking the Intersection of Innovation and Sustainability
评论 抢沙发
觉得文章有用就打赏一下
您的打赏,我们将继续给力更多优质内容
支付宝扫一扫

微信扫一扫
