snackknoc:通信层的处理

K. Sangaiah, Michael Lui, Ragh Kuttappa, B. Taskin, Mark Hempstead
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引用次数: 9

摘要

在这项工作中,我们提出并评估了一个带有轻量级处理元素的片上网络(NoC),以提供一个精益数据流风格的系统。我们表明,当代NoC路由器经常会经历长时间的空闲时间,在HPC应用中链路利用率低于10%。通过重新利用NoC的时间和空间松弛,所提出的平台SnackNoC能够在通信层内以最小的额外资源成本有效地计算线性代数核。“小吃”应用程序内核是用生产者-消费者数据模型编程的,该模型使用NoC松弛来存储和传输处理元素之间的中间数据。SnackNoC在一个多程序环境中进行了演示,该环境在NoC上连续执行线性代数内核,同时在处理器内核上执行芯片多处理器(CMP)应用程序。与Intel Haswell EPx86处理内核相比,SnackNoC上线性代数内核的计算速度快了14.2倍。与CMP应用程序并行执行“零食”内核的成本是最小的运行时影响,为0.01%至0.83%,这是由于更高的链路利用率,非核心区域开销为1.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SnackNoC: Processing in the Communication Layer
In this work, we propose and evaluate a Network-on-Chip (NoC) augmented with light-weight processing elements to provide a lean dataflow-style system. We show that contemporary NoC routers can frequently experience long periods of idle time, with less than 10% link utilization in HPC applications. By repurposing the temporal and spatial slack of the NoC, the proposed platform, SnackNoC, is able to compute linear algebra kernels efficiently within the communication layer with minimal additional resource costs. SnackNoC 'Snack' application kernels are programmed with a producer-consumer data model that uses the NoC slack to store and transmit intermediate data between processing elements. SnackNoC is demonstrated in a multi-program environment that continually executes linear algebra kernels on the NoC simultaneously with chip multiprocessor (CMP) applications on the processor cores. Linear algebra kernels are computed up to 14.2x faster on SnackNoC compared to an Intel Haswell EPx86 processing core. The cost of executing 'snack' kernels in parallel to the CMP applications is a minimal runtime impact of 0.01% to 0.83% due to higher link utilization, and an uncore area overhead of 1.1%.
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