使用强化学习的物联网自适应任务调度

Mohammad Khalid Pandit, R. N. Mir, M. Chishti
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引用次数: 19

摘要

物联网(IoT)中的智能可以通过在超低延迟环境中分析其产生的大量数据来嵌入。雾计算层可以显著降低纯云解决方案产生的计算延迟,雾计算层提供了一个计算基础设施,可以最大限度地减少服务交付和执行中的延迟。为此,本文提出了一种基于强化学习(RL)的任务调度策略,该策略可以实现最优的资源利用率和最短的任务执行时间,并显著降低分布式执行过程中的通信成本。为了实现这一点,作者提出了一种基于两级神经网络(NN)的任务调度系统,其中第一级神经网络(前馈神经网络/卷积神经网络[FFNN/CNN])决定数据流是否可以在资源受限的环境(边缘/雾)中进行分析(执行)或直接转发到云端。第二级神经网络(RL模块)将第一级神经网络发送的所有任务在可用的雾设备中调度到雾层。这种实时任务分配策略用于最小化总计算延迟(makespan)和通信成本。实验结果表明,RL技术在任务调度方面优于计算不可行的贪婪方法,并且RL与任务聚类算法的结合显著降低了通信成本。该算法从根本上解决了基于实时雾的物联网中的任务调度问题,使任务间的资源利用率达到最佳、makespan最小、通信成本最小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive task scheduling in IoT using reinforcement learning
The intelligence in the Internet of Things (IoT) can be embedded by analyzing the huge volumes of data generated by it in an ultralow latency environment. The computational latency incurred by the cloud-only solution can be significantly brought down by the fog computing layer, which offers a computing infrastructure to minimize the latency in service delivery and execution. For this purpose, a task scheduling policy based on reinforcement learning (RL) is developed that can achieve the optimal resource utilization as well as minimum time to execute tasks and significantly reduce the communication costs during distributed execution.,To realize this, the authors proposed a two-level neural network (NN)-based task scheduling system, where the first-level NN (feed-forward neural network/convolutional neural network [FFNN/CNN]) determines whether the data stream could be analyzed (executed) in the resource-constrained environment (edge/fog) or be directly forwarded to the cloud. The second-level NN ( RL module) schedules all the tasks sent by level 1 NN to fog layer, among the available fog devices. This real-time task assignment policy is used to minimize the total computational latency (makespan) as well as communication costs.,Experimental results indicated that the RL technique works better than the computationally infeasible greedy approach for task scheduling and the combination of RL and task clustering algorithm reduces the communication costs significantly.,The proposed algorithm fundamentally solves the problem of task scheduling in real-time fog-based IoT with best resource utilization, minimum makespan and minimum communication cost between the tasks.
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