基于监督方法的分布式实时系统作业调度技术

Manu Agrawal, Kartik Manchanda, Akshita Agarwal, Surbhi Saraswat, Ashish Gupta, Hari Prabhat Gupta, Tanima Dutta
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引用次数: 1

摘要

分布式实时系统具有在多个处理器上调度的端到端作业。这些作业由几个子作业组成,这些子作业没有单独的端到端约束。为了有效地安排这些子作业,需要知道它们的本地截止日期要求。局部截止时间分配问题是分布式实时系统研究中的一个关键问题。本文提出了一种基于监督机器学习的分布式实时系统(RTS)作业调度技术。我们使用线性回归、支持向量机和人工神经网络机器学习技术来预测具有给定发布时间和执行子作业截止日期的即将到来的工作负载的本地截止日期。我们还开发了一种在分布式RTS中创建标记数据集的技术。我们证明了基于监督机器学习的作业调度技术降低了作业丢失率,从而提高了分布式RTS的效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Supervised Approach-based Job Scheduling Technique for Distributed Real-Time Systems
Distributed real time systems have end-to-end jobs which are scheduled on multiple processors. These jobs are composed of several sub-jobs which do not have individual end-to-end constraints. To efficiently schedule these sub-jobs, their local deadline requirements are needed to be known. The local deadline assignment problem has been recognized as a crucial problem in distributed real-time system research. In this paper, we present a supervised machine learning based job scheduling technique for a distributed Real-Time System (RTS). We use linear regression, support vector machine, and artificial neural network machine learning techniques for predicting the local deadline of upcoming workload with a given release time and deadline of executed sub-jobs. We also develop a technique for labeled dataset creation in a distributed RTS. We demonstrate that the supervised machine learning based job scheduling technique reduces the job dropping rate and thereby enhances the utility of the distributed RTS.
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