Interpretable and Trustworthy AI: Techniques and Frameworks

Author:   Pethuru Raj (IBM Pvt.Ltd., India) ,  Kousalya Govardhanan ,  B. Sundaravadivazhagan (University of Technology and Applied Sciences-Al Mussana) ,  Shubham Mahajan (SMVDU, Jammu, India)
Publisher:   Taylor & Francis Ltd
ISBN:  

9781032960630


Pages:   402
Publication Date:   10 November 2025
Format:   Hardback
Availability:   Not yet available   Availability explained
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Interpretable and Trustworthy AI: Techniques and Frameworks


Overview

Users expect proper explanation and interpretability of all the decisions being taken by machine and deep learning (ML/ DL) algorithms. Interpretable and Trustworthy AI: Techniques and Frameworks covers key requirements for interpretability and trustworthiness of artificial intelligence (AI) models and how these needs can be met. This book explores artificial intelligence’s impact, limitations, and solutions. It examines AI’s role as a transformative technological paradigm. It explores how AI drives business advancement through intelligent software solutions, enabling automation, augmentation, and acceleration of IT-enabled business processes. The book establishes AI’s fundamental capacity to envision and implement sustainable business transformations. It addresses critical challenges in AI adoption, focusing on two key concerns: AI Interpretability: Models typically optimize for accuracy but struggle to capture real-world costs, especially regarding ethics and fairness. Interpretability features help understand model learning processes, available information, and decision justifications within real-world contexts. Trustworthy AI: Business leaders demand responsible AI solutions that prioritize human needs, safety, and privacy. Researchers are developing methods to enhance trust in AI models and their conclusions to accelerate adoption. Finally, the book presents techniques and approaches for creating sustainable, interpretable, and trustworthy AI models. It explores model-agnostic frameworks and methodologies designed to Trustworthy and Transparent AI, Explainable and Interpretable AI, Responsible AI, Generative AI, Agentic AI, and Efficient and Edge AI. With its comprehensive structure, the book provides a comprehensive examination of AI’s potential, its current limitations, and pathways to overcome these challenges for wider adoption.

Full Product Details

Author:   Pethuru Raj (IBM Pvt.Ltd., India) ,  Kousalya Govardhanan ,  B. Sundaravadivazhagan (University of Technology and Applied Sciences-Al Mussana) ,  Shubham Mahajan (SMVDU, Jammu, India)
Publisher:   Taylor & Francis Ltd
Imprint:   Auerbach
Weight:   0.930kg
ISBN:  

9781032960630


ISBN 10:   1032960639
Pages:   402
Publication Date:   10 November 2025
Audience:   College/higher education ,  Tertiary & Higher Education
Format:   Hardback
Publisher's Status:   Active
Availability:   Not yet available   Availability explained
This item is yet to be released. You can pre-order this item and we will dispatch it to you upon its release.

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Author Information

Dr. Pethuru Raj is chief architect at the Edge AI Division of Reliance Jio Platforms Ltd, Bangalore, India. Dr. Kousalya Govardhanan is a professor and dean of research-SKI at Sri Krishna College of Engineering and Technology, Coimbatore, India. Dr. B. Sundaravadivazhagan is affiliated with the Department of Information Technology, The University of Technology and Applied Sciences-Al Mussanah, Oman. Dr. Shubham Mahajan is an assistant professor at the Amity School of Engineering & Technology, Amity University, Haryana, India. Dr. M. Nalini is an associate professor at the Department of Computer Science and Business Systems, S.A. Engineering College, Tamil Nadu, India.

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