多核存储系统中受害者行缓冲区的解耦争用

Ke Gao, Dongrui Fan, Jie Wu, Zhiyong Liu
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引用次数: 2

摘要

随着每个芯片的性能不断扩展,由于线程间争用,片内、片外内存日益成为系统的瓶颈。来自多个内核和同时执行的线程的内存访问流表现出越来越有限的局部性。大内存和高密度内存对系统功耗和数据读取的影响很大。为了提高内存系统的性能,我们开发了一种细粒度的受害者行缓冲(VRB)内存系统。VRB机制有助于重用从内存库访问的数据,避免不必要的数据传输,减轻内存争用,从而通过解耦行缓冲区争用来提高系统吞吐量和系统公平性。通过对许多线程应用程序的全系统周期精确模拟,我们证明了我们提出的VRB技术实现了高达19%(平均8.4%)的系统级吞吐量改进,高达20%(平均7.2%)的系统公平性改进,并且在整个套件中节省了6.8%的功耗。
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Decoupling Contention with Victim Row-Buffer on Multicore Memory Systems
With continued performance scaling of many cores per chip, an on-chip, off-chip memory has increasingly become a system bottleneck due to inter-thread contention. The memory access streams emerging from many cores and the simultaneously executed threads, exhibit increasingly limited locality. Large and high-density DRAMs contribute significantly to system power consumption and data over fetch. We develop a fine-grained Victim Row-Buffer (VRB) memory system to increase performance of the memory system. The VRB mechanism helps reuse the data accessed from the memory banks, avoids unnecessary data transfers, mitigates memory contentions, and thus can improve system throughput and system fairness by decoupling row-buffer contentions. Through full-system cycle-accurate simulations of many threads applications, we demonstrate that our proposed VRB technique achieves an up to 19% (8.4% on average) system-level throughput improvement, an up to 20% (7.2% on average) system fairness improvement, and it saves 6.8% of power consumption across the whole suite.
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