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Mobile and Ubiquitous Systems: Computing, Networking and Services. 20th EAI International Conference, MobiQuitous 2023, Melbourne, VIC, Australia, November 14–17, 2023, Proceedings, Part II

Research Article

Adaptive QoS-Aware Task Offloading in Dynamic Mobile Edge Computing Environment

Cite
BibTeX Plain Text
  • @INPROCEEDINGS{10.1007/978-3-031-63992-0_22,
        author={Jacob Don and Sajib Mistry and Redowan Mahmud and Aneesh Krishna},
        title={Adaptive QoS-Aware Task Offloading in Dynamic Mobile Edge Computing Environment},
        proceedings={Mobile and Ubiquitous Systems: Computing, Networking and Services. 20th EAI International Conference, MobiQuitous 2023, Melbourne, VIC, Australia, November 14--17, 2023, Proceedings, Part II},
        proceedings_a={MOBIQUITOUS PART 2},
        year={2024},
        month={7},
        keywords={Quality of Service Mobile Edge Computing Task offloading Hybrid machine learning},
        doi={10.1007/978-3-031-63992-0_22}
    }
    
  • Jacob Don
    Sajib Mistry
    Redowan Mahmud
    Aneesh Krishna
    Year: 2024
    Adaptive QoS-Aware Task Offloading in Dynamic Mobile Edge Computing Environment
    MOBIQUITOUS PART 2
    Springer
    DOI: 10.1007/978-3-031-63992-0_22
Jacob Don1, Sajib Mistry1, Redowan Mahmud1,*, Aneesh Krishna1
  • 1: School of Electrical Engineering, Computing and Mathematical Sciences
*Contact email: mdredowan.mahmud@curtin.edu.au

Abstract

Ensuring Quality of Service (QoS) for real-time applications like Augmented Reality in a Mobile Edge Computing (MEC) setting is both vital and demanding in research. In this work, we propose a novel framework of hybrid ML approaches to enable QoS-aware offloading in dynamic MEC. First, we create a method using deep reinforcement learning to figure out the best way to offload tasks for an application in a new MEC environment, even when we don’t have early information about the application’s QoS. Then, we deploy a transfer learning approach in the dynamic MEC that transfers knowledge from previously trained deep reinforcement off-loading policies to new optimal policies. Experimental results show that the proposed framework adapts to the dynamic MEC environments efficiently, reducing ML training time and retaining higher accuracy and precision during the task offloading process.

Keywords
Quality of Service Mobile Edge Computing Task offloading Hybrid machine learning
Published
2024-07-19
Appears in
SpringerLink
http://dx.doi.org/10.1007/978-3-031-63992-0_22
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