This book explores how artificial intelligence, cloud computing, and edge technologies are transforming video streaming systems. It delves into AI-driven adaptive bitrate streaming, predictive resource allocation, and federated learning for personalized recommendations. The integration of cloud and edge computing is highlighted as a solution for scalability and low-latency streaming, addressing challenges like bandwidth optimization, cost-efficiency, and Quality of Experience (QoE).
The book offers actionable insights into emerging technologies like 5G, quantum computing, and blockchain. It features case studies and real-world implementations, making it an essential resource for researchers, industry professionals, and students. Bridging theory and practice, the book provides a comprehensive guide to building the next generation of efficient and scalable video streaming infrastructures.
Part I Foundations and Challenges in Video Streaming.
Chapter 1
Introduction to Video Streaming Systems and Challenges.- Part II AI-Driven
Approaches for Video Streaming.
Chapter 2 AI-Driven Video Quality Assessment
and Enhancement Techniques.
Chapter 3 Federated Learning for Scalable Video
Streaming.
Chapter 4 Deep Learning for Adaptive Video Quality.- Part III
Cloud and Edge Computing in Video Streaming.
Chapter 5 Cloud-Enhanced Video
Streaming: Storage and Resource Management.
Chapter 6 Edge Computing for
Low-Latency Video Streaming.
Chapter 7 Swarm Intelligence for Efficient
Video Data Distribution in Edge Networks.- Part IV Emerging Technologies in
Video Streaming.
Chapter 8 Blockchain-Enhanced Distributed Storage for
Cloud-Based Video Streaming.
Chapter 9 AI-Driven Resource Allocation and
Optimization in Video Streaming.- Part V Practical Implementations and Future
Trends.
Chapter 10 Case Studies and Real-World Implementations of AI, Cloud,
and Edge in Video Streaming.
Chapter 11 Conclusion and Future Directions for
Video Streaming Enhancements.
Dr. Mahmoud Darwich is an Assistant Professor of Computer Science at the University of Mount Union, Ohio, USA. He received his Bachelors degree from Beirut Arab University, Lebanon, in 2006. Subsequently, he completed his masters and doctorate degrees in Computer Engineering from the University of Louisiana at Lafayette in 2013 and 2017, respectively.. His research focuses on artificial intelligence, cloud computing, and edge technologies for optimizing video streaming systems.
Dr. Magdy Bayoumi is a Life Fellow of IEEE and the Department Head of Electrical and Computer Engineering at the University of Louisiana at Lafayette. He earned his Ph.D. in Electrical Engineering from the University of Windsor, Canada. Dr. Bayoumis research spans VLSI design, digital signal processing, and wireless sensor networks. He is a recipient of several awards, including the IEEE Circuits and Systems Society Education Award.