分布式控制粗粒度可重构阵列分支预测器的比较

Liu Jian, Leibo Liu, Yanan Lu, Jianfeng Zhu, Shaojun Wei
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引用次数: 0

摘要

粗粒度可重构阵列(CGRA)是一种能够实现高并行性的空间结构。然而,指令之间的控制流限制了并行性并引入了管道停滞,严重降低了具有密集控制流的应用程序的性能。因此,分支预测是必不可少的。由于CGRAs由许多处理元素(PE)组成,并且PE中的管道不像传统处理器中的管道那么深,因此需要重新评估分支预测器。在本文中,我们利用两个互补分支预测器的优势,提出了一种混合分支预测器。实验结果表明,混合预测器在所有预测器中表现最好。与最新的CGRA相关研究中使用的双峰预测器相比,混合预测器的预测精度提高了4.48%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing Branch Predictors for Distributed-Controlled Coarse-Grained Reconfigurable Arrays
Coarse-Grained Reconfigurable Array (CGRA) is a kind of spatial architecture that can achieve high parallelism. However, the control flow between instructions limits the parallelism and introduces pipeline stalls, significantly degrading the performance of the applications with intensive control flows. So, branch prediction is indispensable. Since CGRAs are composed of many processing elements (PEs) and the pipeline in a PE is not as deep as that in traditional processors, the branch predictors need to be reappraised. In this paper, we propose a hybrid branch predictor for CGRAs by exploiting the advantages of two complementary branch predictors. The result shows that the hybrid predictor performs best among all the predictors in the experiment. The hybrid predictor improves prediction accuracy by 4.48% compared with the bimodal predictor which is used in a latest CGRA related research.
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