Maximizing the Promptness of Metaverse Systems using Edge Computing by Deep Reinforcement Learning

Thi-Thanh, Tam Ninh, Van Chien, Trinh, Tran, Hung, Son, Nguyen Hoai, Vo, Van Nhan

arXiv.org Artificial Intelligence 

--Metaverse and Digital Twin (DT) have attracted much academic and industrial attraction to approach the future digital world. This paper introduces the advantages of deep reinforcement learning (DRL) in assisting Metaverse system-based Digital Twin. In this system, we assume that it includes several Metaverse User devices collecting data from the real world to transfer it into the virtual world, a Metaverse Virtual Access Point (MV AP) undertaking the processing of data, and an edge computing server that receives the offloading data from the MV AP . The proposed model works under a dynamic environment with various parameters changing over time. The experiment results show that our proposed DRL algorithm is suitable for offloading tasks to ensure the promptness of DT in a dynamic environment. I. INTRODUCTION In machine learning, reinforcement learning (RL) is an approach where an agent learns to make optimal decisions by exploring and interacting with a specific environment.

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