Sultan Ahmad

Prince Sattam Bin Abdulaziz University Saudi Arabia

Dr. Sultan Ahmad has been associated with the Department of Computer Science, College of Computer Engineering and Sciences at the Prince Sattam Bin Abdulaziz University in Alkharj, Saudi Arabia. He is also an Adjunct Professor at Chandigarh University in Gharuan, Punjab, India. He received his Master of Computer Science and Applications from Aligarh Muslim University in India in 2006 and his Ph.D. in CSE from Glocal University in Saharanpur, India. He has more than 18 years of teaching and research experience. He has around 130 accepted and published research papers and book chapters in reputed SCI, SCIE, ESCI, and SCOPUS-indexed journals and conferences. He also serves as Guest Editor for SCIE/ESCI/SCOPUS indexed journals. He has an Australian, a Chinese, an Indian and two UK design patents. He has authored and edited 5 books on cutting-edge topics. His research has also secured funding from national and international projects. He also took up the roles of resource person and technical panel member and headed several international conferences. He has presented his research papers at many national and international conferences. He has been integral to the university's accreditation processes, such as the ABET and NCAAA. His research interests include intelligent computing, data science, machine learning, and the Internet of Things. He is a member of IEEE, IACSIT and the Computer Society of India.

Sultan Ahmad

1books edited

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Latest work with IntechOpen by Sultan Ahmad

Federated Learning (FL) represents a transformative leap in distributed machine learning by enabling multiple clients to collaboratively solve complex tasks without compromising data privacy. This innovative approach eliminates the need for centralized cloud storage, ensuring privacy-preserving data handling while offering smarter models, reduced latency, and enhanced power efficiency. This book serves as a comprehensive guide to the evolving field of Federated Learning, providing in-depth insights into its definition, architecture, and classification. It examines the distinctions between FL and traditional distributed learning paradigms through a comparative lens. The chapters explore key concepts, algorithmic advancements, and computational strategies that underpin the development of FL, with a particular focus on deep learning applications. Readers will find detailed discussions on critical topics such as horizontal and vertical FL, federated neural networks, federated reinforcement learning, and specialized algorithms like Federated LSTM and CNNs. By bridging theoretical foundations with practical implementations, the book also addresses common challenges in FL and presents potential pathways for future advancements. Aimed at researchers, academics, and practitioners, this book is valuable for understanding Federated Learning's role in shaping the future of privacy-conscious, intelligent machine learning systems.

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