The approximate computing paradigm advocates for relaxing accuracy goals in applications to improve energy-efficiency and performance. Recently, this paradigm has been explored to improve the energy-efficiency of silicon photonic networks-on-chip (PNoCs). Silicon photonic interconnects suffer from high power dissipation because of laser sources, which generate carrier wavelengths, and tuning power required for regulating photonic devices under different uncertainties. In this paper, we propose a framework called ARXON to reduce such power dissipation overhead by enabling intelligent and aggressive approximation during communication over silicon photonic links in PNoCs. Our framework reduces laser and tuning-power overhead while intelligently approximating communication, such that application output quality is not distorted beyond an acceptable limit. Simulation results show that our framework can achieve up to 56.4% lower laser power consumption and up to 23.8% better energy-efficiency than the best-known prior work on approximate communication with silicon photonic interconnects and for the same application output quality.
翻译:近似计算范式提倡在应用中放松准确性目标以提高能效和性能。 最近,人们探索了这一范式,以提高硅光子网络-芯片(PNoCs)的能效。 硅光子相互连接因激光源而高功率消散,这些激光源产生载体波长,调控不同不确定性情况下的光电装置所需的调力。在本文中,我们提议了一个称为ARXON的框架,以减少这种电流的耗损管理,方法是在PNoCs的硅光电连接通信中进行智能和积极接近。我们的框架在智能近似通信的同时减少激光和调频连接,因此应用输出质量不会被扭曲到可接受的限度之外。 模拟结果表明,我们的框架可以达到56.4%的低激光电耗量和23.8%的能效,而远高于以前最著名的与硅光力连接和同样应用输出质量的近似通信工作。