HOODIE: Hybrid Computation Offloading via Distributed Deep Reinforcement Learning in Delay-Aware Cloud-Edge Continuum

IF 6.3 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Open Journal of the Communications Society Pub Date : 2024-12-09 DOI:10.1109/OJCOMS.2024.3514456
Anastasios E. Giannopoulos;Ilias Paralikas;Sotirios T. Spantideas;Panagiotis Trakadas
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Abstract

Cloud-Edge Computing Continuum (CEC) system, where edge and cloud nodes are seamlessly connected, is dedicated to handle substantial computational loads offloaded by end-users. These tasks can suffer from delays or be dropped entirely when deadlines are missed, particularly under fluctuating network conditions and resource limitations. The CEC is coupled with the need for hybrid task offloading, where the task placement decisions concern whether the tasks are processed locally, offloaded vertically to the cloud, or horizontally to interconnected edge servers. In this paper, we present a distributed hybrid task offloading scheme (HOODIE) designed to jointly optimize the tasks latency and drop rate, under dynamic CEC traffic. HOODIE employs a model-free deep reinforcement learning (DRL) framework, where distributed DRL agents at each edge server autonomously determine offloading decisions without global task distribution awareness. To further enhance the system pro-activity and learning stability, we incorporate techniques such as Long Short-term Memory (LSTM), Dueling deep Q-networks (DQN), and double-DQN. Extensive simulation results demonstrate that HOODIE effectively reduces task drop rates and average task processing delays, outperforming several baseline methods under changing CEC settings and dynamic conditions.
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HOODIE:基于延迟感知云边缘连续体的分布式深度强化学习的混合计算卸载
云边缘计算连续体(CEC)系统,其中边缘和云节点无缝连接,专门用于处理由最终用户卸载的大量计算负载。当错过最后期限时,特别是在波动的网络条件和资源限制下,这些任务可能会遭受延迟或完全放弃。CEC与混合任务卸载的需求相结合,其中任务放置决策涉及任务是在本地处理,垂直卸载到云,还是水平卸载到互连的边缘服务器。在本文中,我们提出了一种分布式混合任务卸载方案(HOODIE),旨在共同优化动态CEC流量下的任务延迟和丢包率。HOODIE采用无模型深度强化学习(DRL)框架,其中每个边缘服务器上的分布式DRL代理在没有全局任务分布感知的情况下自主确定卸载决策。为了进一步提高系统的主动性和学习稳定性,我们结合了长短期记忆(LSTM)、Dueling深度Q-networks (DQN)和双DQN等技术。大量的仿真结果表明,HOODIE在改变CEC设置和动态条件下有效地降低了任务丢失率和平均任务处理延迟,优于几种基线方法。
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来源期刊
CiteScore
13.70
自引率
3.80%
发文量
94
审稿时长
10 weeks
期刊介绍: The IEEE Open Journal of the Communications Society (OJ-COMS) is an open access, all-electronic journal that publishes original high-quality manuscripts on advances in the state of the art of telecommunications systems and networks. The papers in IEEE OJ-COMS are included in Scopus. Submissions reporting new theoretical findings (including novel methods, concepts, and studies) and practical contributions (including experiments and development of prototypes) are welcome. Additionally, survey and tutorial articles are considered. The IEEE OJCOMS received its debut impact factor of 7.9 according to the Journal Citation Reports (JCR) 2023. The IEEE Open Journal of the Communications Society covers science, technology, applications and standards for information organization, collection and transfer using electronic, optical and wireless channels and networks. Some specific areas covered include: Systems and network architecture, control and management Protocols, software, and middleware Quality of service, reliability, and security Modulation, detection, coding, and signaling Switching and routing Mobile and portable communications Terminals and other end-user devices Networks for content distribution and distributed computing Communications-based distributed resources control.
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