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Building Agentic AI Systems (eBook)

Create intelligent, autonomous AI agents that can reason, plan, and adapt
eBook Download: EPUB
2025
292 Seiten
Packt Publishing (Verlag)
978-1-80107-927-3 (ISBN)

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Building Agentic AI Systems - Anjanava Biswas, Wrick Talukdar
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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.


Master the art of building AI agents with large language models using the coordinator, worker, and delegator approach for orchestrating complex AI systemsKey FeaturesUnderstand the foundations and advanced techniques of building intelligent, autonomous AI agentsLearn advanced techniques for reflection, introspection, tool use, planning, and collaboration in agentic systemsExplore crucial aspects of trust, safety, and ethics in AI agent development and applicationsPurchase of the print or Kindle book includes a free PDF eBookBook DescriptionGain 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 learnMaster the core principles of GenAI and agentic systemsUnderstand how AI agents operate, reason, and adapt in dynamic environmentsEnable AI agents to analyze their own actions and improviseImplement systems where AI agents can leverage external tools and plan complex tasksApply methods to enhance transparency, accountability, and reliability in AIExplore real-world implementations of AI agents across industriesWho this book is forThis 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.]]>

Preface


Building Agentic AI Systems is designed to provide both a theoretical foundation and practical guidance on generative AI and agent-based intelligence. Generative AI and agentic systems are at the forefront of the next wave of AI, driving automation, creativity, and decision-making in ways that were previously unimaginable. By enabling machines to generate text, images, and even strategic plans while reasoning and adapting autonomously, these technologies are transforming industries such as healthcare, finance, and robotics.

The book begins by introducing generative AI, covering key models such as Variational Autoencoders (VAEs), Generative Adversarial Networks (GANs), and autoregressive models. We explore their applications in content creation, design, and scientific research while addressing the limitations and challenges of these models.

Next, we dive into the world of agentic systems, defining concepts such as agency, autonomy, and multi-agent collaboration. We analyze different agent architectures—deliberative, reactive, and hybrid—and explore how multiple agents can interact, cooperate, and coordinate toward common goals.

Once the foundations are established, we move into practical implementation. We explore how agents can reflect on their own reasoning processes, plan, and use external tools effectively. This includes hands-on techniques for meta-reasoning, self-explanation, strategic planning, and multi-agent coordination. The book also introduces best practices for designing intelligent, trustworthy AI agents, balancing autonomy with control, and ensuring ethical and responsible AI development.

To conclude, we examine real-world use cases and applications across multiple domains, from NLP and robotics to decision support and optimization. We also explore trust, transparency, bias mitigation, and AI safety—key elements for ensuring the reliability of AI-driven systems.

Throughout this book, you will find code examples, practical exercises, and implementation strategies to help bridge the gap between theory and real-world application. Whether you are an AI practitioner, researcher, engineer, or technology leader, this book will equip you with the skills and knowledge to build autonomous, adaptive, and intelligent AI agents that can reason, collaborate, and evolve.

Let’s embark on this journey together, shaping the future of intelligent systems—one agent at a time.

Who this book is for


This book is intended for AI practitioners, developers, researchers, engineers, and technology leaders who want to understand and build AI-driven agents that exhibit autonomy, adaptability, and intelligence. Whether you are a developer looking to integrate generative models into intelligent systems or an AI architect exploring advanced agentic capabilities, this book will equip you with both theoretical foundations and hands-on implementation strategies.

What this book covers


Chapter 1, Fundamentals of Generative AI, introduces generative AI, explaining its core concepts, various model types—including VAEs, GANs, and autoregressive models—real-world applications, and challenges such as bias, limitations, and ethical concerns.

Chapter 2, Principles of Agentic Systems, defines agentic systems, covering agency, autonomy, and the essential characteristics of intelligent agents, including reactivity, proactiveness, and social ability. It also explores different agent architectures and multi-agent collaboration.

Chapter 3, Essential Components of Intelligent Agents, details key elements of intelligent agents, including knowledge representation, reasoning, learning mechanisms, decision-making, and the role of Generative AI in enhancing agent capabilities.

Chapter 4, Reflection and Introspection in Agents, explores how intelligent agents analyze their reasoning, learn from experience, and improve decision-making using techniques such as meta-reasoning, self-explanation, and self-modeling.

Chapter 5, Enabling Tool Use and Planning in Agents, discusses how agents leverage external tools, implement planning algorithms, and integrate tool use with strategic decision-making to improve efficiency and goal achievement.

Chapter 6, Exploring the Coordinator, Worker, and Delegator Approach, introduces the CWD model for multi-agent collaboration, explaining how agents take on specialized roles—coordinator, worker, or delegator—to optimize task execution and resource allocation.

Chapter 7, Effective Agentic System Design Techniques, covers best practices for designing intelligent agents, including focused instructions, setting guardrails and constraints, balancing autonomy and control, and ensuring transparency and accountability.

Chapter 8, Building Trust in Generative AI Systems, examines techniques for fostering trust in AI, including transparency, explainability, handling uncertainty and bias, and designing AI systems that are reliable and interpretable.

Chapter 9, Managing Safety and Ethical Considerations, addresses the risks and challenges of generative AI, strategies for ensuring responsible AI development, ethical guidelines, and privacy and security considerations for AI deployments.

Chapter 10, Common Use Cases and Applications, showcases real-world applications of Generative AI, covering areas such as creative content generation, conversational AI, robotics, and decision-support systems.

Chapter 11, Conclusion and Future Outlook, summarizes key concepts covered in the book, explores emerging trends in generative AI and agentic intelligence, discusses artificial general intelligence (AGI), and highlights future challenges and opportunities in the field.

To get the most out of this book


Following along will be a bit easier if you have the following:

  • Familiarity with AI and machine learning concepts: While the book covers foundational principles, prior knowledge of AI/ML, deep learning, and Python programming will help you understand the more advanced topics.
  • Hands-on practice: Experiment with the provided code examples and frameworks for building Generative AI and agentic systems. Setting up a local or cloud-based development environment will enhance your learning experience.
  • Think critically about AI ethics and safety: As you explore Generative AI and autonomous agents, consider the implications of trust, bias, and responsible AI design to build intelligent systems that align with ethical guidelines.

Software/hardware covered in the book

Operating system requirements

Python, Jupyter Notebooks, and CrewAI

Windows, macOS, Linux

Download the example code files


The code bundle for the book is hosted on GitHub at https://github.com/PacktPublishing/Building-Agentic-AI-Systems. We also have other code bundles from our rich catalog of books and videos available at https://github.com/PacktPublishing. Check them out!

Disclaimer on images


Some images in this title are presented for contextual purposes, and the readability of the graphic is not crucial to the discussion. Please refer to our free graphic bundle to download the images. You can download the images from https://packt.link/gbp/9781803238753

Conventions used


There are a number of text conventions used throughout this book.

Bold: Indicates a new term, an important word, or words that you see onscreen. For instance, words in menus or dialog boxes appear in bold. Here is an example: “Customized onboarding plan: Based on the goals and needs identified, create a bespoke onboarding plan that outlines the steps, milestones, and timelines toward achieving the set objectives.”

Tips or important notes

Appear like this.

Get in touch


Newsletter: To keep up with the latest developments in the fields of Generative AI and LLMs, subscribe to our weekly newsletter, AI_Distilled, at https://packt.link/Q5UyU.

Feedback from our readers is always welcome.

General feedback: If you have questions about any aspect of this book, email us at customercare@packtpub.com and mention the book title in the subject of your...

Erscheint lt. Verlag 21.4.2025
Vorwort Matthew R. Scott, Dr. Alex Acero
Sprache englisch
Themenwelt Informatik Theorie / Studium Künstliche Intelligenz / Robotik
Informatik Weitere Themen Hardware
ISBN-10 1-80107-927-7 / 1801079277
ISBN-13 978-1-80107-927-3 / 9781801079273
Informationen gemäß Produktsicherheitsverordnung (GPSR)
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