通过性能影响评估(PIE)调度异构多核

K. V. Craeynest, A. Jaleel, L. Eeckhout, P. Narváez, J. Emer
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引用次数: 346

摘要

单isa异构多核处理器通常由小型(例如,有序的)节能内核和大型(例如,无序的)高性能内核组成。异构多核的有效性取决于调度器如何将工作负载映射到最合适的核类型。通常,如果工作负载本身具有高水平的ILP,则小内核可以获得良好的性能。另一方面,如果工作负载表现出高水平的MLP或需要动态提取ILP,则大内核提供良好的性能。本文提出性能影响评估(PIE)作为一种机制来预测哪个工作负载到核心的映射可能提供最佳性能。PIE收集CPI堆栈、MLP和ILP概要信息,如果工作负载在不同的核心类型上运行,则估算性能。动态PIE在运行时调整调度,从而利用细粒度随时间变化的执行行为。我们表明,PIE需要有限的硬件支持,并且可以比最新的最先进的调度建议平均提高5.5%,比基于抽样的调度策略平均提高8.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scheduling heterogeneous multi-cores through performance impact estimation (PIE)
Single-ISA heterogeneous multi-core processors are typically composed of small (e.g., in-order) power-efficient cores and big (e.g., out-of-order) high-performance cores. The effectiveness of heterogeneous multi-cores depends on how well a scheduler can map workloads onto the most appropriate core type. In general, small cores can achieve good performance if the workload inherently has high levels of ILP. On the other hand, big cores provide good performance if the workload exhibits high levels of MLP or requires the ILP to be extracted dynamically. This paper proposes Performance Impact Estimation (PIE) as a mechanism to predict which workload-to-core mapping is likely to provide the best performance. PIE collects CPI stack, MLP and ILP profile information, and estimates performance if the workload were to run on a different core type. Dynamic PIE adjusts the scheduling at runtime and thereby exploits fine-grained time-varying execution behavior. We show that PIE requires limited hardware support and can improve system performance by an average of 5.5% over recent state-of-the-art scheduling proposals and by 8.7% over a sampling-based scheduling policy.
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