In recent years, edge computing, as an important pillar for future networks, has been developed rapidly. Task offloading is a key part of edge computing that can provide computing resources for resource-constrained devices to run computing-intensive applications, accelerate computing speed and save energy. An efficient and feasible task offloading scheme can not only greatly improve the quality of experience (QoE) but also provide strong support and assistance for 5G/B5G networks, the industrial Internet of Things (IIoT), computing networks and so on. To achieve these goals, this paper proposes an adaptive edge task offloading scheme assisted by service deployment (SD-AETO) focusing on the optimization of the energy utilization ratio (EUR) and the processing latency. In the pre-implementation stage of the SD-AETO scheme, a service deployment scheme is invoked to assist with task offloading considering each service's popularity. The optimal service deployment scheme is obtained by using the approximate deployment graph (AD-graph). Furthermore, a task scheduling and queue offloading design procedure is proposed to complete the SD-AETO scheme based on the task priority. The task priority is generated by the corresponding service popularity and task offloading direction. Finally, we analyze our SD-AETO scheme and compare it with related approaches, and the results show that our scheme has a higher edge offloading rate and lower resource consumption for massive task scenarios in the edge network.
翻译:近年来,作为未来网络的一个重要支柱,边缘计算得到了迅速发展;任务卸载是边缘计算的一个关键部分,它可以为经资源限制的装置提供计算资源,用于运行计算机密集型应用程序、加速计算速度和节省能源;一个高效和可行的任务卸载计划不仅能够大大提高经验质量(QE),而且能够为5G/B5G网络、工业信息互联网(IIoT)、计算网络等提供强有力的支持和援助;为实现这些目标,本文件提议了一项适应性优势任务卸载计划,由服务部署(SD-AETO)协助,重点是优化能源利用率(EUR)和处理延迟性;在SD-AETO计划实施前阶段,一个服务部署计划不仅可以极大地提高经验质量(QoE),而且可以考虑到每项服务的受欢迎程度,为5G/B5G网络网络、工业信息互联网(IIoT)、计算网络等网络提供强有力的支持和援助;此外,还提议一项任务排载和排载设计程序,以完成基于任务优先级部署(SD-AETTO)的SD-A相关任务,我们的任务优先分析了与SDTO有关的任务方向。