有效降低分布式实时应用优化调度的复杂度

J. Jönsson
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引用次数: 8

摘要

最优搜索策略在分布式实时系统调度中的应用通常受到固有计算复杂性的困扰。这有效地阻止了将诸如分支绑定(B&B)之类的策略整合到今天实践中使用的调度框架和工具中。为了证明最优调度实际上是许多实时调度场景的可行替代方案,我们提出了一种可以将平均搜索复杂度降低到与多项式时间启发式相当的水平的方法。我们的方法是基于在搜索树顶点遍历和任务期限分配策略的选择上做出智能选择。更具体地说,我们推测有效的复杂性降低是通过以下方式实现的:(i)以深度优先的方式遍历搜索树中的顶点,(ii)分配本地任务截止日期,这些截止日期是应用程序端到端截止日期的非重叠部分。通过广泛的实验研究,我们发现我们的方法有助于将常用的分布式实时应用程序的平均搜索复杂度降低几个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective complexity reduction for optimal scheduling of distributed real-time applications
The application of optimal search strategies to scheduling for distributed real-time systems is, in general, plagued by an inherent computational complexity. This has effectively prevented the integration of strategies such as branch-and-bound (B&B) in scheduling frameworks and tools used in practice today. To show that optimal scheduling is, in fact, a viable alternative for many real-time scheduling scenarios, we propose an approach that can reduce the average search complexity to levels comparable with that of a polynomial-time heuristic. Our approach is based on making intelligent choices in the selection of strategies for search tree vertex traversal and task deadline assignment. More specifically, we conjecture that effective complexity reduction is achieved by (i) traversing vertices in the search tree in a depth-first fashion and (ii) assigning local task deadlines that are non-overlapping fractions of the application end-to-end deadline. Through an extensive experimental study, we find that our approach contribute to reducing the average search complexity by several orders of magnitude for a frequently-used class of distributed real-time applications.
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