Abstract

AbstractIn the past years, there has been fast growth in various applications which generates penetrating and personal information dependent on the Internet of things (IoT). The Softwarization of a network may improvise its inclusive flexibility. The software-enabled proficiency has made it functional for mobile devices, wireless, and telecommunication networks through the progression of technologies like software-defined network (SDN), and mobile edge networks. The applications of cyber-physical systems have also increased with the rise of cyber-physical Internet of softwarized things (IoST) systems. To maintain the quality among users, managing the applications for latency of cyber-physical system (CPS) is mandatory. Though edge computing and cloud computing have performed well in achieving latency-aware resource allocation, sometimes it fails to do secure computation offloading in cyber-physical IoST systems. This paper presents a novel federated scheme based on deep learning for fast computation offloading. Secondly, we develop a federated learning framework that allows cyber physical IoST systems to build a model in a privacy-preserving way.KeywordsInternet of softwarized things (IoST)Cyber physical systems (CPS)Federated learningOffloading

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