Work in Progress: ACAC: An Adaptive Congestion-aware Approximate Communication Mechanism for Network-on-Chip Systems

Shize Zhou, Yongqi Xue, Siyue Li, Jinlun Ji, Tong Cheng, Li Li, Yuxiang Fu
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Abstract

Data-intensive applications, such as machine learning and pattern recognition, result in heavy Network-on-Chip (NoC) communication loads and a tremendous increase in the communication latency. At the same time, the error-tolerant nature of these applications makes approximate communication an effective way to relieve the sharp increase of the network latency. This paper proposes an adaptive congestion-aware approximate communication mechanism (ACAC) that can alleviate the communication congestion of NoC systems in heavy communication loads. Our cycle-accurate simulations have shown that the proposed ACAC effectively reduces the network latency similar to ABDTR under a 22% to 52% lower data approximate ratio and significantly decreases the additional compression control traffic volume under real applications.
在进行中的工作:ACAC:一种适应拥塞感知的片上网络近似通信机制
数据密集型应用程序,如机器学习和模式识别,会导致沉重的片上网络(NoC)通信负载和通信延迟的巨大增加。同时,这些应用程序的容错特性使得近似通信成为缓解急剧增加的网络延迟的有效方式。本文提出了一种自适应拥塞感知近似通信机制(ACAC),可以缓解NoC系统在高通信负荷下的通信拥塞问题。我们的周期精确模拟表明,所提出的ACAC有效地减少了与ABDTR相似的网络延迟,数据近似比降低了22%至52%,并显着降低了实际应用中的额外压缩控制流量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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