Fr. 76.00

Explainable AI with Python

English · Paperback / Softback

New edition in preparation, currently unavailable

Description

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This comprehensive book on Explainable Artificial Intelligence has been updated and expanded to reflect the latest advancements in the field of XAI, enriching the existing literature with new research, case studies, and practical techniques. 
The Second Edition expands on its predecessor by addressing advancements in AI, including large language models and multimodal systems that integrate text, visual, auditory, and sensor data. It emphasizes making complex systems interpretable without sacrificing performance and provides an enhanced focus on additive models for improved interpretability. Balancing technical rigor with accessibility, the book combines theory and practical application to equip readers with the skills needed to apply explainable AI (XAI) methods effectively in real-world contexts.
Features:
Expansion of the "Intrinsic Explainable Models" chapter to delve deeper into generalized additive models and other intrinsic techniques, enriching the chapter with new examples and use cases for a better understanding of intrinsic XAI models.
Further details in "Model-Agnostic Methods for XAI" focused on how explanations differ between the training set and the test set, including a new model to illustrate these differences more clearly and effectively.
New section in "Making Science with Machine Learning and XAI" presenting a visual approach to learning the basic functions in XAI, making the concept more accessible to readers through an interactive and engaging interface.
Revision in "Adversarial Machine Learning and Explainability" that includes a code review to enhance understanding and effectiveness of the concepts

List of contents

Chapter 1 The Landscape.- Chapter 2 "Explainable AI: needs, opportunities and challenges".- Chapter 3 Intrinsic Explainable Models.- Chapter 4 Model-agnostic methods for XAI.- Chapter 5 Explaining Deep Learning Models.- Chapter 6 Additive Models for Interpretability.- Chapter 7 Adversarial Machine Learning and Explainability.-Chapter 8 Explainability of Language Models (XAI and LLM).- Chapter 9 Making science with Machine Learning and XAI.- Chapter 10 AGI, LLM, XAI.- Chapter 11 "A proposal for a sustainable model of Explainable AI.

About the author

Leonida Gianfagna (Phd, MBA) is a theoretical physicist currently working in cybersecurity and machine learning as the R&D Director at Cyber Guru. Before joining Cyber Guru, he spent 15 years at IBM, holding leadership roles in software development for IT Service Management (ITSM).
He is the author of several publications in theoretical physics and computer science and has been recognized as an IBM Master Inventor, with over 15 patent filings.
Antonio Di Cecco (Phd, MBA) is a theoretical physicist with a strong mathematical background, dedicated to delivering AI/ML education at all proficiency levels, from beginners to experts. Passionate about all areas of machine learning, he leverages his mathematical expertise to make complex concepts accessible through both in-person and remote classes. As the founder of a School of AI community inspired by the AI for Good movement, he actively promotes AI education and its positive impact. He also holds a Master's degree in Economics with a focus on innovation. His professional background includes research positions at Sony CSL / Sapienza University, and he currently works at Università D'Annunzio Chieti-Pescara.

Summary

This comprehensive book on Explainable Artificial Intelligence has been updated and expanded to reflect the latest advancements in the field of XAI, enriching the existing literature with new research, case studies, and practical techniques. 
The Second Edition expands on its predecessor by addressing advancements in AI, including large language models and multimodal systems that integrate text, visual, auditory, and sensor data. It emphasizes making complex systems interpretable without sacrificing performance and provides an enhanced focus on additive models for improved interpretability. Balancing technical rigor with accessibility, the book combines theory and practical application to equip readers with the skills needed to apply explainable AI (XAI) methods effectively in real-world contexts.
Features:
Expansion of the "Intrinsic Explainable Models" chapter to delve deeper into generalized additive models and other intrinsic techniques, enriching the chapter with new examples and use cases for a better understanding of intrinsic XAI models.
Further details in "Model-Agnostic Methods for XAI" focused on how explanations differ between the training set and the test set, including a new model to illustrate these differences more clearly and effectively.
New section in "Making Science with Machine Learning and XAI" presenting a visual approach to learning the basic functions in XAI, making the concept more accessible to readers through an interactive and engaging interface.
Revision in "Adversarial Machine Learning and Explainability" that includes a code review to enhance understanding and effectiveness of the concepts discussed, ensuring that code examples are up-to-date and optimized for current best practices.
New chapter on "Generative Models and Large Language Models (LLM)" chapter dedicated to generative models and large language models, exploring their role in XAI and how they can be used to create richer, more interactive explanations. This chapter also covers the explainability of transformer models and privacy through generative models.
New "Artificial General Intelligence and XAI" mini-chapter dedicated to exploring the implications of Artificial General Intelligence (AGI) for XAI, discussing how advancements towards AGI systems influence strategies and methodologies for XAI.
Enhancements in "Explaining Deep Learning Models" features new methodologies in explaining deep learning models, further enriching the chapter with cutting-edge techniques and insights for deeper understanding.

Product details

Authors Antonio Di Cecco, Leonida Gianfagna
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Release 20.09.2025
 
EAN 9783031922282
ISBN 978-3-0-3192228-2
No. of pages 298
Illustrations X, 298 p. 125 illus., 121 illus. in color.
Subjects Natural sciences, medicine, IT, technology > IT, data processing > IT

python, machine learning, Maschinelles Lernen, Artificial Intelligence, Programmier- und Skriptsprachen, allgemein, XAI, Deep Taylor Decomposition, intrinsic interpretable models, Shapley Values

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