Cooperative Task Offloading through Asynchronous Deep Reinforcement Learning in Mobile Edge Computing for Future Networks
Liu, Yuelin, Li, Haiyuan, Vasilakos, Xenofon, Hussain, Rasheed, Simeonidou, Dimitra
–arXiv.org Artificial Intelligence
Cooperative Task Offloading through Asynchronous Deep Reinforcement Learning in Mobile Edge Computing for Future Networks Y uelin Liu, Haiyuan Li, Xenofon V asilakos, Rasheed Hussain, and Dimitra Simeonidou High Performance Networks (HPN) Research Group, Smart Internet Lab, University of Bristol, Bristol, UK Email: { name }. {surname}@bristol.ac.uk Abstract --Future networks (including 6G) are poised to accelerate the realisation of Internet of Everything. The latter will imply a high demand for computational resources to support new services. Mobile Edge Computing (MEC) is a promising solution that enables offloading computation-intensive tasks to nearby edge servers from the end-user devices, thereby reducing latency and energy consumption . Nevertheless, relying solely on a single MEC server for task offloading can lead to uneven resource utilisation and suboptimal performance in complex scenarios. Additionally, traditional task offloading strategies specialise in centralised policy decisions, which unavoidably entails extreme transmission latency and reach computational bottleneck. T o address these gaps, we propose a latency-efficient and energy-efficient Cooperative T ask Offloading framework with Transformer-driven Prediction (CTO-TP), leveraging asynchronous multi-agent deep reinforcement learning to address these challenges. This approach fosters edge-edge cooperation and decreases the synchronous waiting time by performing asynchronous training, optimis-ing task offloading, and resource allocation across distributed networks. The performance evaluation demonstrates that the proposed CTO-TP algorithm reduces up to 80% overall system latency and 87% energy consumption compared to the baseline schemes.
arXiv.org Artificial Intelligence
Apr-25-2025
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