Artificial Intelligence and Machine Learning for Safety-Critical Systems: A Comprehensive Guide

· · ·
· Morgan Kaufmann
Ebook
350
Pages
Eligible
This book will become available on March 1, 2026. You will not be charged until it is released.

About this ebook

Artificial Intelligence and Machine Learning for Safety-Critical Systems: A Comprehensive Guide provides engineers and system designers who are exploring the application of AI/ML methods for safety-critical systems with a dedicated resource capturing the challenges and mitigation strategies involved in designing such systems. Divided into nine sections, the book covers the most important applications of safety-critical systems, helping readers understand how related problems are being solved in different domains/problem settings. The goal of this book is to help ensure that AI-based critical systems better utilize resources, avoid failures, and increase system safety and public safety. The authors present ML techniques in safety-critical systems across multiple domains, including pattern recognition, image processing, edge computing, Internet of Things (IoT), encryption, hardware accelerators, and many others. These applications help readers understand the many challenges that need to be addressed in order to increase the deployment of ML models in critical systems. In addition, the book shows how to improve public trust in ML systems by providing explainable model outputs rather than treating the system as a black box for which the outputs are difficult to explain. Finally, the authors demonstrate how to meet legal certification and regulatory requirements for the appropriate ML models.• Covers foundational concepts, advanced theories, and real-world applications, ensuring readers gain a thorough understanding of AI/ML as it applies to Safety-Critical Systems.• Presents both the risks and advantages of implementing machine learning techniques in Safety-Critical Systems.• Presents machine learning techniques in Safety-Critical Systems across domains, including pattern recognition, image processing, edge computing, Internet of Things (IoT), encryption, hardware accelerators, and many others.• Demonstrates how to meet legal certification and regulatory requirements for the appropriate ML models.

About the author

Dr. Rajiv Pandey is a Faculty member at Amity Institute of Information Technology, Amity University, Uttar Pradesh, Lucknow Campus, India. He possesses a diverse background experience of around 35 years to include 15 years in industry and 20 years of academic research and instruction. His research interests include blockchain and crypto currencies, information security, semantic web provenance, Cloud computing, Big Data, and Data Analytics. Dr. Pandey is a Senior Member of IEEE and has been a session chair and technical committee member for various IEEE conferences. He has been on the technical committees of various government and private universities, and is the editor of Quantum Computing: A Shift from Bits to Qubits from Springer, Data Modelling and Analytics for the Internet of Medical Things from CRC Press/Taylor & Francis, and Artificial Intelligence and Machine Learning for Edge Computing from AP/Elsevier.

Dr. Kanishka Tyagi Currently, he works as a lead machine learning autonomous driving scientist at Aptiv Corporation in Agoura Hills, California. Prior to Aptiv, he worked at Siemens research, interned in ML groups at The MathWorks and Google Research. He has worked as a visiting researcher at Ajou University and Seoul National University. Dr. Tyagi worked as a Research Associate at the Department of Electrical Engineering, Indian Institute of Technology, Kanpur, with Dr. P.K. Kalra. He received his M.S. and Ph.D. degree with Dr. Michael Manry in the Department of Electrical Engineering at the University of Texas at Arlington. His research interests are optimization theory, music and audio processing, neural networks, hardware machine learning, and radar machine learning. He is a co-editor of Quantum Computing: A Shift from Bits to Qubits from Springer. Dr. Tyagi has filed 15 U.S. patents/trade secrets in the course of his research.

Dr. Neeraj Kumar Singh is an Associate Professor of Computer Science at INPT-ENSEEIHT and member of the ACADIE team at IRIT. Before joining INPT, Dr. Singh worked as a research fellow and team leader at the Centre for Software Certification (McSCert), McMaster University, Canada. He worked as a research associate in the Department of Computer Science at University of York, UK. He also worked as a research scientist at the INRIA Nancy Grand Est Centre, France, where he has received his Ph.D. in Computer Science. He leads his research in the area of theory and practice of rigorous software engineering and formal methods to design and implement safe, secure, and dependable critical systems. He is an active participant in the “Pacemaker Grand Challenge. Dr. Singh is the author/editor of Quantum Computing: A Shift from Bits to Qubits and Using Event-B for Critical Device Software Systems from Springer, Essential Computer Science: A Programmer’s Guide to Foundational Concepts and Industrial System Engineering for Drones from APress, and System on Chip Interfaces for Low Power Design from Morgan Kaufmann/Elsevier.

Dr. Nidhi Srivastava is currently working as Assistant Professor at Amity Institute of Information Technology, Amity University, Uttar Pradesh, Lucknow Campus India. She has more than 16 years of teaching experience. Dr. Srivastava’s research interests include Human Computer Interaction, Cloud computing, semantic web, and speech recognition. She is a co-editor of Quantum Computing: A Shift from Bits to Qubits and Semantic IoT: Theory and Applications from Springer.

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