放松:一个可重构的近似片上网络

Richard Fenster, S. L. Beux
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引用次数: 0

摘要

神经网络和信号处理等众多应用的高容错性为多核心系统带来了新的优化机会。实际上,近似计算可以减少数据位大小,从而可以放松计算资源和内存的设计约束。然而,片上互连很难利用减少的数据大小,因为它们还需要传输普通大小的数据。因此,现有的近似片上网络(noc)要么涉及专门用于近似数据的额外物理层,要么显著增加传输非近似数据的能量。为了解决这一挑战,我们提出了RELAX,这是一种可重构的片上网络,可以在精确数据模式或混合模式下运行。混合模式允许使用同一物理层并发准确和近似数据事务,因此允许在减少资源开销的同时有效地传输近似数据。综合和仿真结果表明,与仅使用精确数据的基线2D-Mesh NoC相比,RELAX可将近似数据的通信延迟提高44.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RELAX: a REconfigurabLe Approximate Network-on-Chip
The high error-resilience of numerous applications such as neural networks and signal processing led to new optimization opportunities in manycore systems. Indeed, approximate computing enable the reduction of data bit size, which allows to relax design constraints of computing resources and memory. However, on-chip interconnects can hardly take advantage of the reduced data size since they also need to transmit plain sized data. Consequently, existing approximate networks-on-chip (NoCs) either involve additional physical layers dedicated to approximate data or significantly increase the energy to transfer non-approximate data. To solve this challenge, we propose RELAX, a reconfigurable network-on-chip that can operate in an accurate data only mode or a mixed mode. The mixed mode allows for concurrent accurate and approximate data transactions using the same physical layer, hence allowing the efficient transmission of approximate data while reducing the resources overhead. Synthesis and simulation results show that RELAX improves communication latency of approximate data up to 44.2% when compared to an accurate data only, baseline 2D-Mesh NoC.
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