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OverviewBridge the gap between groundbreaking AI innovation and ethical responsibility with this comprehensive guide to the expert-led frameworks needed to navigate the complex legal, social, and moral landscapes of our digital future. Artificial Intelligence (AI) has emerged as a transformative force with the ability to bring new innovations to reshape economies, industries, and our daily lives. From advanced medical diagnostics to autonomous vehicles, AI systems are driving incomparable innovations in every sector. These advancements promise unmatched benefits and provide the potential to solve some of humanity’s most pressing challenges. However, there are many potential challenges and significant risks that come alongside the benefits provided by AI. This book offers a multidisciplinary viewpoint on how to develop and use AI systems responsibly by offering a deep dive into the ethical, legal, and societal ramifications of artificial intelligence. It explores important subjects such as algorithmic fairness, transparency, accountability, and governance through contributions from notable academics, engineers, and policy specialists. It highlights how crucial it is to match AI development with democratic norms and human values, offering both theoretical frameworks and workable implementation solutions for a range of industries. This comprehensive guide is an essential resource for scholars, professionals, and legislators dedicated to making sure that AI technology is created and applied in ways that are moral, inclusive, and advantageous to society. The reader will find the volume: Provides a multidisciplinary exploration of the ethical, legal, and social dimensions of AI; Bridges the gap between AI theory and real-world applications through practical frameworks; Covers key topics such as fairness, transparency, accountability, and governance; Serves as a valuable resource for researchers, practitioners, and policymakers aiming to build trustworthy AI systems. Audience AI practitioners, data scientists, developers, business leaders, and executives actively engaged in the development and implementation of AI systems. Full Product DetailsAuthor: Manish Kumar (Thapar Institute of Engineering and Technology, India) , Nitigya Sambyal (Thapar Institute of Engineering and Technology, India) , Leena P. Singh (Ravenshaw University, India) , V. Ramasamy (SRM Institute of Science and Technology, India)Publisher: John Wiley & Sons Inc Imprint: Wiley-Scrivener ISBN: 9781394355440ISBN 10: 1394355440 Pages: 448 Publication Date: 25 March 2026 Audience: Professional and scholarly , Professional & Vocational Format: Hardback Publisher's Status: Active Availability: Out of stock The supplier is temporarily out of stock of this item. It will be ordered for you on backorder and shipped when it becomes available. Table of ContentsSeries Preface xxi Preface xxiii Acknowledgement xxvii 1 AI for Social Good 1 R. Srivats, Kalyanasundaram V., Abhiram Sharma, Deepika Roselind J. and Logeswari G. 1.1 Introduction to AI for Social Good 2 1.2 AI in Healthcare 6 1.3 AI in Education 10 1.4 AI for Disaster Management and Response 14 1.5 AI in Culture 17 1.6 Conclusion and Future Work 24 2 Balancing Innovation and Patient Safety: Ethical AI Deployment in Healthcare 29 Prajakta R. Patil, Sachin S. Mali, Riya R. Patil and Dhanashree R. Davare 2.1 Introduction 29 2.2 The Promise of AI in Healthcare 34 2.3 Ethical Challenges in AI 36 2.4 Responsible AI Development and Deployment 39 2.5 Case Studies: Real-World Examples of Ethical AI in Healthcare 46 2.6 Strategies for Ensuring Ethical and Responsible Use of AI 52 2.7 The Future of Ethical AI in Healthcare 56 2.8 Conclusion 58 3 Responsible AI in Practice: Case Studies from Industry and Government 69 Nabanita Roy, Sangita Roy and Shalini Kumari 3.1 Introduction 69 3.2 Framework for Analyzing Responsible AI Implementation 71 3.3 Literature Review 72 3.4 Case Studies 72 3.5 Cross-Sector Analysis: Patterns in Responsible AI Implementation 74 3.6 Emerging Regulatory Landscape 75 3.7 Recommendations for Organizations 75 3.8 Discussion 78 3.9 Conclusion 79 4 An Efficient System for Skin Disease Detection and Localization Using Faster Region Based Convolutional Neural Networks with Inception Architecture 81 Nitin Singh, Ankita Nanda, Keshav Garg, Varun Gupta, Nitigya Sambyal and Deepika Vikas Agrawal 4.1 Introduction 82 4.2 Related Work 84 4.3 Proposed System 86 4.4 Results 96 4.5 Conclusion 100 5 Detection of Machining Error Using Intelligent Hybrid Machine Learning Technique 105 Ritu Maity 5.1 Introduction 106 5.2 Literature Review 106 5.3 Models Used 108 5.4 Methodology 109 5.5 Results and Discussion 113 5.6 Conclusion 116 6 Ground Water Level Classification Using Machine Learning 119 Charu Chaudhary, Khushi Passi, Taruna Saini, Ritika Dhaneshwar and Varun Gupta 6.1 Introduction 120 6.2 Related Work 121 6.3 Data Description and Data Processing 124 6.4 Results and Discussion 130 6.5 Conclusion 139 7 Sustainability in AI Development 143 Riya R. Patil, Sandip A. Bandgar, Sachin S. Mali, Prajakta R. Patil and Dhanashree R. Davare 7.1 Introduction 144 7.2 Environmental Sustainability in AI 148 7.3 Social Sustainability in AI 152 7.4 Economic Sustainability in AI 157 7.5 Governance and Policy for Sustainable AI 159 7.6 Challenges and Future Directions 164 7.7 Conclusion and Call to Action 167 8 Integrating AutoML and Explainability: A Unified Approach for Decision-Making in Engineering and Social Sciences 175 Ayush Dalmia and Chandramohan Dhasarathan 8.1 Introduction 176 8.2 Literature Study 178 8.3 Proposed Model 183 8.4 Evaluation of the Proposed System (Comparative Analysis/Justification with Acceptable Measures/Metrics) 186 8.5 Observations 195 8.6 Conclusion 196 9 Trust Dynamics and Ethical Transparency in AI-Powered Mobile Apps: A Data‑Driven Exploration of User Perceptions 199 Rachita Sambyal 9.1 Introduction 200 9.2 Review of Literature 201 9.3 Research Methodology 204 9.4 Results and Discussion 204 9.5 Results and Recommendations 212 9.6 Limitations and Future Scope 212 9.7 Conclusion 212 10 AI-Powered Advancements in Autonomous Vehicle Technologies 221 Sachi Choudhary and Prashant Shukla 10.1 Introduction 222 10.2 Core AI Technologies for AVs 224 10.3 Machine Learning and Deep Learning Techniques for AVs 226 10.4 Computer Vision and Image Processing in AVs 228 10.5 Sensor Fusion and Environmental Perception in AVs 231 10.6 Object Detection and Classification in Autonomous Vehicles (AVs) 233 10.7 Decision-Making and Path Planning in AVs 235 10.8 AI's Role in Route Optimization, Path Planning, and Obstacle Avoidance 239 10.9 Challenges of AI in Autonomous Vehicles 240 10.10 Conclusion 241 11 Data Security and Privacy Frameworks for AI Technologies 247 Sangita Roy and Nabanita Roy 11.1 Introduction 248 11.2 Foundations of Data Security and Privacy in AI 249 11.3 Challenges in AI-Specific Privacy and Security 251 11.4 Privacy-Preserving AI Technologies 251 11.5 Regulatory and Legal Frameworks 255 11.6 Organizational Privacy and Security Frameworks 258 11.7 Case Studies 259 11.8 Designing Privacy-Centric AI Systems 261 11.9 Future Directions 264 11.10 Conclusion 266 12 AI in Autonomous Systems 269 Kalyanasundaram V., G. Prethija, Keerthi A.J., Yuvan Shankar Baabu and R. Srivats 12.1 Introduction to AI in Autonomous Systems 270 12.2 AI Technologies in Autonomous Systems 274 12.3 Autonomous Vehicles and Real-Time Decision Making 279 12.4 AI Innovations in Space and Healthcare Systems 284 12.5 Safety, Ethical Considerations, and Challenges 288 12.6 Future Directions and Conclusion 291 13 Responsible Use of AI in Healthcare: Addressing Bias, Transparency, and Patient Trust 297 Shubham Gupta 13.1 Introduction 298 13.2 Ethical Challenges in AI-Driven Healthcare 300 13.3 Transparency in AI Systems 306 13.4 Building and Maintaining Patient Trust 311 13.5 Governance and Regulatory Oversight 314 13.6 The Future of Ethical AI in Healthcare 318 14 Advancing Healthcare with AI: Balancing Efficiency, Security, and Compliance 323 Sivakumar Ramakrishnan 14.1 Introduction 324 14.2 Literature Review 329 14.3 Identified Gaps in Literature and Future Directions 332 14.4 Methodology 333 14.5 Result and Discussion 345 14.6 Case Studies and Real-World Examples 351 14.7 Ethical Considerations in AI-Based Healthcare Fraud Detection 353 14.8 Blockchain and Federated Learning: Securing AI-Based Healthcare Transactions Blockchain in Healthcare Transactions 357 14.9 AI's Limitations and the Evolution of Fraud Strategies 357 14.10 Conclusion 359 15 AI Beyond the Veil: Techniques for Privacy Preservation 363 D. Kalpanadevi 15.1 Introduction 364 15.2 Scope of Research 364 15.3 Background 365 15.4 Techniques for Privacy Preservation 365 15.5 Implementation and Discussion 373 15.6 Current Challenges 375 15.7 Industry Adoption 376 15.8 Future Directions 377 15.9 Conclusion 377 References 378 16 VetAce – A Deep Learning Inspired Framework for Classification and Prediction of Pet Diseases 379 Munish Saini, Vaibhav Arora and Harpreet Singh 16.1 Introduction 380 16.2 Related Work 381 16.3 Analysis Methodology 383 16.4 Results and Analysis 391 16.5 Discussion 395 16.6 Conclusion 396 Bibliography 397 Index 401ReviewsAuthor InformationManish Kumar, PhD is an Assistant Professor at the Thapar Institute of Engineering and Technology, India, with more than eight years of teaching experience. He has authored several scientific articles in international journals and conferences, as well as internationally published books and book chapters. His research interests include soft computing applications for bioinformatics problems and computational intelligence. Nitigya Sambyal, PhD is an Assistant Professor in the Department of Computer Science and Engineering at the Thapar Institute of Engineering and Technology, India. She is also a postdoctoral fellow in the Department of Information Technology at Uppsala University, Sweden. Her research interests include machine learning, deep learning, medical image analysis, and computer vision. Leena Priyadarshini Singh, PhD is an Assistant Professor in Organizational Behavior and Industrial Relations with more than 14 years of experience. She has published more than 30 research papers in refereed international journals and several chapters in edited books. Her research interests include quality of work life, work-life balance, strategic leadership, corporate governance, and corporate social responsibility. Ramasamy V., PhD is an Associate Professor in the Dr. Sagunthala Research and Development Institute of Science and Technology, Vel Tech Rangarajan, India. He is the author of several scholarly research papers in national and international journals and conferences and editor of several books. His areas of interest include mobile cloud computing, IoT, data science, artificial intelligence, and data mining. S. Balamurugan, PhD is the Director of Research at iRCS, an Indian Technological Research and Consulting firm with more than 20 years of experience. He has published more than 100 books, 300 papers in international journals and conferences, and 300 patents. He specializes in technology forecasting and decision-making for leading companies and startups. Tab Content 6Author Website:Countries AvailableAll regions |
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