使用混合分支预测器提高上下文切换下的分支预测精度

M. Evers, Po-Yung Chang, Y. Patt
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引用次数: 165

摘要

由于条件分支导致的管道停滞是实现深度管道、超标量处理器的性能潜力的最大障碍之一。已经提出了许多分支预测器来帮助缓解这个问题,包括两级自适应分支预测器,以及最近的双组分混合分支预测器。在不太理想的环境中,例如分时系统,感兴趣的代码涉及上下文切换。上下文切换,即使间隔相当大,也会严重降低许多最准确的分支预测方案的性能。在本文中,我们引入了一种新的混合分支预测器,并表明它比以前发布的任何方案都更准确(对于给定的成本),特别是在分支历史由于上下文切换而定期刷新的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Hybrid Branch Predictors to Improve Branch Prediction Accuracy in the Presence of Context Switches
Pipeline stalls due to conditional branches represent one of the most significant impediments to realizing the performance potential of deeply pipelined, superscalar processors. Many branch predictors have been proposed to help alleviate this problem, including the Two-Level Adaptive Branch Predictor, and more recently, two-component hybrid branch predictors.In a less idealized environment, such as a time-shared system, code of interest involves context switches. Context switches, even at fairly large intervals, can seriously degrade the performance of many of the most accurate branch prediction schemes. In this paper, we introduce a new hybrid branch predictor and show that it is more accurate (for a given cost) than any previously published scheme, especially if the branch histories are periodically flushed due to the presence of context switches.
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