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Dataflow Graph Partitioning for Optimal Spatio-Temporal Computation on a Coarse Grain Reconfigurable Architecture

机译:粗粒度可重构体系结构上用于时空最优计算的数据流图分区

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Coarse Grain Reconfigurable Architectures(CGRA) support Spatial and Temporal computation to speedup execution and reduce reconfiguration time. Thus compilation involves partitioning instructions spatially and scheduling them temporally. We extend Edge-Betweenness Centrality scheme, originally used for detecting community structures in social and biological networks, for partitioning instructions of a dataflow graph. Comparisons of execution time for several applications run on a simulator for REDEFINE, a CGRA proposed in literature, indicate that Centrality scheme outperforms several other schemes with 2-18% execution time speedup.
机译:粗粒度可重配置架构(CGRA)支持时空计算,以加快执行速度并减少重配置时间。因此,编译涉及在空间上划分指令并在时间上调度它们。我们扩展了边缘间隔中心性方案,该方案最初用于检测社会和生物网络中的社区结构,用于对数据流图的指令进行分区。比较在文献中提出的CGRA REDEFINE模拟器上运行的几个应用程序的执行时间,表明Centrality方案以2-18%的执行时间加速性能胜过其他几个方案。

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