IS01: Edge Computing Technologies for Mobile Computing and Internet of Things

Edge Computing Technologies for Mobile 2021


Artificial Intelligence



With the rapid development of mobile internet, cyber-physical systems (CPS), andthe Internet of Things (IoT)applications, the conventional centralized cloud computing is encountering severe challenges, such as high latency, low Spectral Efficiency, and non-adaptive machine type of communication. To help address these issues, the concept of edge or fog computing has been proposed. Edge Computing uses “gateway servers, cloudlets, fog nodes, and microdata centers,” all of which are highly advanced and sophisticated technologies. The world has seen many breakthroughs in machine learning and artificial intelligence research. By integrating the advances in smart devices and edge systems with the advances in machine learning, the future role of smart edge systems, networks, and applications is becoming limitless and it's expected to revolutionize the future of the world within the next few years.
The objective of this special session is to be a forum for discussing the recent developments in Fog/Edge Computing that represent challenges and opportunities for CPS, machine learning, big data, mobile computing, wireless networks, embedded systems and IoT.
The topics of interest include, but are not limited to:
• Architecture of edge systems.
• Resource Management Solutions Involving the Edge/Fog/Cloud.
• Experimental evaluation of edge computing.
• Co-existence of wireless technologies at the edge.
• Data collection and analytic techniques for mobile systems and applications.
• Edge systems, applications and services.
• Human factors for edge computing.
• Interactions between the edge, and the cloud.
• Emerging Fog Communication Technologies and Protocols (IEEE Time-Sensitive Networking, 5G).
• Machine learning for Internet of Things (IoT) devices, smart cities, and CPS.
• Self-driving and connected vehicles, V2V/V2X.
• Fog Computing Security, Data Privacy and Trust.
• Theoretical foundations of machine learning for edge systems and applications.
• Wireless communications and networking architecture for edge systems.