多处理器上并行实时任务的半联邦调度

Xu Jiang, Nan Guan, Xiang Long, W. Yi
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引用次数: 77

摘要

联邦调度是在多核上调度并行实时任务的一种很有前途的方法,其中每个繁重的任务都在多个专用处理器上独占地执行,而轻任务被视为顺序的零星任务,并共享剩余的处理器。但是,联邦调度会造成资源浪费,因为处理能力需求为x+epsilon(其中x是整数,0 epsilon 1)的繁重任务需要x+1个专用处理器。在极端情况下,几乎有一半的处理能力被浪费了。本文提出了一种半联邦调度方法,该方法对处理能力要求为x+epsilon的繁重任务只授予x个专用处理器,而将剩余的epsilon部分与轻任务一起调度到共享处理器上。随机生成任务集的实验表明,半联邦调度方法不仅明显优于联邦调度方法,而且优于现有的多核并行实时任务调度方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-Federated Scheduling of Parallel Real-Time Tasks on Multiprocessors
Federated scheduling is a promising approach to schedule parallel real-time tasks on multi-cores, where each heavy task exclusively executes on a number of dedicated processors, while light tasks are treated as sequential sporadic tasks and share the remaining processors. However, federated scheduling suffers resource waste since a heavy task with processing capacity requirement x+epsilon (where x is an integer and 0 epsilon 1) needs x+1 dedicated processors. In the extreme case, almost half of the processing capacity is wasted. In this paper we propose the semi-federate scheduling approach, which only grants x dedicated processors to a heavy task with processing capacity requirement x+epsilon, and schedules the remaining epsilon part together with light tasks on shared processors. Experiments with randomly generated task sets show the semi-federated scheduling approach significantly outperforms not only federated scheduling, but also all existing approaches for scheduling parallel real-time tasks on multi-cores.
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