Multispeculative additive trees in High-Level Synthesis

Alberto A. Del Barrio, R. Hermida, S. Memik, J. Mendias, M. Molina
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引用次数: 9

Abstract

Multispeculative Functional Units (MSFUs) are arithmetic functional units that operate using several predictors for the carry signal. The carry prediction helps to shorten the critical path of the functional unit. The average performance of these units is determined by the hit rate of the prediction. In spite of utilizing more than one predictor, none or only one additional cycle is enough for producing the correct result in the majority of the cases. In this paper we present multispeculation as a way of increasing the performance of tree structures with a negligible area penalty. By judiciously introducing these structures into computation trees, it will only be necessary to predict in certain selected nodes, thus minimizing the number of operations that can potentially mispredict. Hence, the average latency will be diminished and thus performance will be increased. Our experiments show that it is possible to improve on average 24% and 38% execution time, when considering logarithmic and linear modules, respectively.
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高级合成中的多推测加性树
多推测功能单元(MSFUs)是一种算术功能单元,它使用几个进位信号的预测符进行操作。进位预测有助于缩短功能单元的关键路径。这些单元的平均性能由预测的命中率决定。尽管使用了多个预测器,但在大多数情况下,没有一个或只有一个额外的周期足以产生正确的结果。在本文中,我们提出了多重推测作为一种提高树形结构性能的方法,其面积损失可以忽略不计。通过明智地将这些结构引入计算树,只需要在某些选定的节点中进行预测,从而最大限度地减少可能错误预测的操作数量。因此,平均延迟将减少,从而提高性能。我们的实验表明,当考虑对数和线性模块时,可以分别平均提高24%和38%的执行时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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