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首页> 外文期刊>ACM Transactions on Embedded Computing Systems >An Efficient Technique of Application Mapping and Scheduling on Real-Time Multiprocessor Systems for Throughput Optimization
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An Efficient Technique of Application Mapping and Scheduling on Real-Time Multiprocessor Systems for Throughput Optimization

机译:实时多处理器系统上用于吞吐量优化的高效应用程序映射和调度技术

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摘要

Multiprocessor systems are becoming ubiquitous in today's embedded systems design. In this article, we address the problem of mapping an application represented by a Homogeneous Synchronous Dataflow (HSDF) graph onto a real-time multiprocessor platform with the objective of maximizing total throughput. We propose that the optimal solution to the problem is composed of three components: actor-to-processor mapping, retiming, and actor ordering on each processor. The entire problem is systematically modeled into a Boolean Satisfiability (SAT) problem such that the optimal solution can be guaranteed theoretically. In order to explore the vast solution space more efficiently, we develop a specific HSDF theory solver based on the special characteristics of the timed HSDF, and integrate it into the general search framework of the SAT solver. Two alternative integration methods based on branch-and-bound are presented to achieve early branch pruning in the search space; thus, the scalability is greatly improved. Extensive performance evaluation on synthetic examples and a case study on the realistic H.264 Video Decoder show that our approach provides as much as 76.9% throughput improvement, and is scalable to industry-sized applications.
机译:在当今的嵌入式系统设计中,多处理器系统正变得无处不在。在本文中,我们解决了将均质同步数据流(HSDF)图表示的应用程序映射到实时多处理器平台上的问题,目的是最大化总吞吐量。我们建议该问题的最佳解决方案由三个组件组成:参与者到处理器的映射,重定时和每个处理器上参与者的排序。整个问题被系统地建模为布尔可满足性(SAT)问题,从而可以从理论上保证最优解决方案。为了更有效地探索广阔的求解空间,我们根据定时HSDF的特殊特性开发了特定的HSDF理论求解器,并将其集成到SAT求解器的常规搜索框架中。提出了两种基于分支定界的替代集成方法,以实现搜索空间中的早期分支修剪。因此,可伸缩性大大提高。对综合示例进行的广泛性能评估以及对实际H.264视频解码器的案例研究表明,我们的方法可将吞吐量提高多达76.9%,并且可扩展到行业规模的应用。

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