Machine Learning based Timeliness-Guaranteed and Energy-Efficient Task Assignment in Edge Computing Systems

Tanmoy Sen, Haiying Shen
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引用次数: 16

Abstract

The proliferation in the use of the Internet of Things (IoT) and Machine Learning (ML) techniques in edge computing systems have paved the way of using Intelligent Cognitive Assistants (ICA) for assisting people in working, learning, transportation, healthcare, and other activities. A challenge here is how to schedule application tasks between the three tiers in the edge computing system (i.e., remote cloud, fog and edge devices) according to several considered factors such as latency, energy, and bandwidth consumption. However, the state-of-the-art approaches for this challenge fall short in providing a schedule in real time for critical ICA tasks due to complex calculation phase. In this paper, we propose a novel ReInforcement Learning based Task Assignment approach, RILTA, that ensures the timeliness guaranteed execution of ICA tasks with high energy efficiency. We first formulate the task-scheduling problem in the edge computing systems considering timeliness and energy consumption in ICA applications. We then propose a heuristic for solving the problem and design the reinforcement model based on the output of the proposed heuristic. Our simulation results show that RILTA can reduce the task processing time and energy consumption with higher timeliness guarantee in comparison to other existing methods by 13 − 22% and 1 − 10% respectively.
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边缘计算系统中基于机器学习的时效性和高能效任务分配
物联网(IoT)和机器学习(ML)技术在边缘计算系统中的广泛应用,为使用智能认知助理(ICA)协助人们工作、学习、交通、医疗保健和其他活动铺平了道路。这里的一个挑战是如何根据延迟、能量和带宽消耗等几个考虑的因素,在边缘计算系统(即远程云、雾和边缘设备)的三个层之间调度应用程序任务。然而,由于复杂的计算阶段,目前最先进的方法在为关键的ICA任务提供实时时间表方面存在不足。在本文中,我们提出了一种新的基于强化学习的任务分配方法RILTA,该方法确保了ICA任务的及时性和高能效。我们首先在考虑ICA应用的时效性和能耗的情况下,提出了边缘计算系统中的任务调度问题。然后,我们提出了一个求解问题的启发式算法,并根据该启发式算法的输出设计了强化模型。仿真结果表明,与其他现有方法相比,RILTA在具有较高时效性保证的情况下,可以分别减少任务处理时间和能量消耗13 - 22%和1 - 10%。
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Machine Learning based Timeliness-Guaranteed and Energy-Efficient Task Assignment in Edge Computing Systems Development of a Smart Metering Microservice Based on Fast Fourier Transform (FFT) for Edge/Internet of Things Environments Enabling Fog Computing using Self-Organizing Compute Nodes Edge-to-Edge Resource Discovery using Metadata Replication ORCH: Distributed Orchestration Framework using Mobile Edge Devices
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