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Memory coherence activity prediction in commercial workloads

机译:商业工作负载中的内存一致性活动预测

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Recent research indicates that prediction-based coherence optimizations offer substantial performance improvements for scientific applications in distributed shared memory multiprocessors. Important commercial applications also show sensitivity to coherence latency, which will become more acute in the future as technology scales. Therefore it is important to investigate prediction of memory coherence activity in the context of commercial workloads.This paper studies a trace-based Downgrade Predictor (DGP) for predicting last stores to shared cache blocks, and a pattern-based Consumer Set Predictor (CSP) for predicting subsequent readers. We evaluate this class of predictors for the first time on commercial applications and demonstrate that our DGP correctly predicts 47%-76% of last stores. Memory sharing patterns in commercial workloads are inherently non-repetitive; hence CSP cannot attain high coverage. We perform an opportunity study of a DGP enhanced through competitive underlying predictors,and in commercial and scientific applications, demonstrate potential to increase coverage up to 14%.
机译:最近的研究表明,基于预测的一致性优化为分布式共享内存多处理器中的科学应用提供了显着的性能提升。重要的商业应用还显示出对相干延迟的敏感性,随着技术的发展,这种延迟在将来会变得越来越尖锐。因此,研究商业负载下内存一致性活动的预测很重要。本文研究了基于跟踪的降级预测器(DGP)来预测共享存储缓存块的最后存储,以及基于模式的消费者集预测器(CSP)。用于预测后续读者。我们首次在商业应用中评估此类预测变量,并证明我们的DGP可以正确预测47%-76%的最后一家商店。商业工作负载中的内存共享模式本质上是非重复的;因此,CSP无法获得高覆盖率。我们对通过竞争性基础预测指标增强的DGP进行了机会研究,并在商业和科学应用中展示了将覆盖率提高至14%的潜力。

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