基于空间局部性和数据共享的节能NOC自适应分组大小调整

Bo Gao, Yuho Jin
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引用次数: 1

摘要

单处理器芯片已经让位于多核芯片,以使计算机系统的实现具有成本效益。为了实现持续的性能扩展,片上网络(NOC)是一种支持多核芯片中核数增加到数百或数千的通信体系结构。NOC设计中的低功耗、低延迟和高带宽支持对于满足整个系统的性能和能源目标至关重要。以前的大部分工作都集中在改进NOC设计上,但没有更充分地考虑NOC设计中可以利用的通信特性和与缓存存储器的相互作用。在本文中,缓存块内的低空间局部性被用于减少内存流量以节省NOC中的能源。我们提出了一个空间局部性预测器,它可以在共享块和私有块之间分别管理不同程度的空间局部性,以提高预测精度。为了进一步优化NOC的性能和功耗,我们提出了预测器的自适应控制和数据包数据大小调整技术。对运行PARSEC基准测试的16核系统的评估显示,我们基于空间局域的数据包调整平均可将NOC功耗提高21%(最高可达33%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Packet Resizing by Spatial Locality and Data Sharing for Energy-Efficient NOC
Single-processor chips have given way to multicore chips to enable a cost-effective implementation of computer systems. Toward continuous performance scaling, Network-On-Chip (NOC) is the communication architecture supporting the core count increase to hundreds or thousands in multicore chips. Low-power, low-latency, and high-bandwidth support in the NOC design is critical for meeting performance and energy targets of the overall system. Much of previous work has focused on improving the NOC design but without more fully taking into consideration the communication characteristics and the interplay with cache memory that can be exploited in the NOC design. In this paper, low spatial locality within cache blocks is exploited in reducing memory traffic toward energy savings in the NOC. We present a spatial locality predictor that separately manages different degrees of spatial locality across shared and private blocks for better prediction accuracy. To further optimize performance and power in the NOC, we present the adaptive control of the predictor and packet data resizing techniques. Evaluations for the 16-core system running PARSEC benchmarks reveal that our spatial-locality based packet resizing improves NOC power consumption on average by 21% (up to 33%).
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