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Federated scheduling for stochastic parallel real-time tasks

机译:随机并行实时任务的联合调度

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摘要

Federated scheduling is a strategy to schedule parallel real-time tasks: It allocates a dedicated cluster of cores to each high-utilization task (utilization ≥ 1); It uses a multiprocessor scheduling algorithm to schedule and execute all low-utilization tasks sequentially, on a shared cluster of the remaining cores. Prior work has shown that federated scheduling has the best known capacity augmentation bound of 2 for parallel tasks with implicit deadlines. In this paper, we explore the soft real-time performance of federated scheduling and address average-case workloads instead of worst-case ones. In particular, we consider stochastic tasks — tasks for which execution time and critical-path length are random variables. In this case, we use bounded expected tardiness as the schedulability criterion. We define a stochastic capacity augmentation bound and prove that federated scheduling algorithms guarantee the same bound of 2 for stochastic tasks. We present three federated mapping algorithms with different complexities for core allocation. All of them guarantee bounded expected tardiness and provide the same capacity augmentation bound. In practice, however, we expect them to provide different performance, both in terms of the task sets they can schedule and the actual tardiness they guarantee. Therefore, we present numerical evaluations using randomly generated task sets to examine the practical differences between the three algorithms.
机译:联合调度是一个计划并行实时任务的策略:它将专用的核心集群分配给每个高利用率任务(利用率≥1);它使用多处理器调度算法来安排和执行所有低利用率任务,在剩余核心的共享群集上。前工作表明,联合调度具有2个具有隐式截止日期的并行任务的最佳已知的容量增强。在本文中,我们探讨了联合调度的软实时性能和地址平均案例工作负载而不是最坏的情况。特别是,我们考虑随机任务 - 执行时间和临界路径长度是随机变量的任务。在这种情况下,我们使用界限预期迟到作为调度标准。我们定义了随机容量增强绑定,并证明联合调度算法为随机任务保证了2的相同界限。我们提出了三种联合映射算法,具有不同复杂的核心分配。所有这些都保证有界预期的迟到,并提供相同的容量增强绑定。然而,在实践中,我们希望他们提供不同的性能,这两者都可以在他们可以安排和他们保证的实际迟到方面提供不同的性能。因此,我们使用随机生成的任务集来呈现数值评估,以检查三种算法之间的实际差异。

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