{Learning-Based Intelligence for Computation Offloading Service in Software-Defined Multi-Access Edge Computing

12 Pages Posted: 5 Mar 2022

See all articles by li kexin

li kexin

Northeastern University

Xingwei Wang

Northeastern University

Qiang Ni

Lancaster University

Min Huang

Northeastern University

Abstract

The rapid growth of Internet of Things (IoT) devices and the emergence of multiple edge applications have resulted in an explosive growth of data traffic at the edge of the networks. Computation offloading services in Multi-access Edge computing (MEC) enabled networks to offer potentials of a better Quality of Service (QoS) than traditional networks. They are expected to reduce the propagation delay and enhance the computational capability for delay-sensitive tasks especially. Nevertheless, the distributed computing resources of edge devices urgently need reasonable resource controllers to ensure such distributed computing resources to be effectively scheduled. The benefits of Software-Defined Networking (SDN) may be explored its full potentials through MEC services to reduce the response time of program. In this paper, a new SDN-based MEC computation offloading service architecture is proposed to increase the coordination and offloading capabilities at the control plane. Besides, to deal with dynamic network changes and increase the exploration degree, we propose a novel Entropy-based Reinforcement Learning algorithm for delay-sensitive tasks computation offloading at the edge of the networks. Finally, the evaluation findings indicate that our proposed model has the potential to improve the network resource allocation and balanced performance significantly.

Keywords: mhuang@mail.neu.edu.cn

Suggested Citation

kexin, li and Wang, Xingwei and Ni, Qiang and Huang, Min, {Learning-Based Intelligence for Computation Offloading Service in Software-Defined Multi-Access Edge Computing. Available at SSRN: https://ssrn.com/abstract=4050281 or http://dx.doi.org/10.2139/ssrn.4050281

Li Kexin

Northeastern University ( email )

220 B RP
Boston, MA 02115
United States

Xingwei Wang (Contact Author)

Northeastern University ( email )

220 B RP
Boston, MA 02115
United States

Qiang Ni

Lancaster University ( email )

Min Huang

Northeastern University ( email )

220 B RP
Boston, MA 02115
United States

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
46
Abstract Views
253
PlumX Metrics