Evaluation of an Analog Accelerator for Linear Algebra

Yipeng Huang, Ning Guo, Mingoo Seok, Y. Tsividis, S. Sethumadhavan
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引用次数: 21

Abstract

Due to the end of supply voltage scaling and the increasing percentage of dark silicon in modern integrated circuits, researchers are looking for new scalable ways to get useful computation from existing silicon technology. In this paper we present a reconfigurable analog accelerator for solving systems of linear equations. Commonly perceived downsides of analog computing, such as low precision and accuracy, limited problem sizes, and difficulty in programming are all compensated for using methods we discuss. Based on a prototyped analog accelerator chip we compare the performance and energy consumption of the analog solver against an efficient digital algorithm running on a CPU, and find that the analog accelerator approach may be an order of magnitude faster and provide one third energy savings, depending on the accelerator design. Due to the speed and efficiency of linear algebra algorithms running on digital computers, an analog accelerator that matches digital performance needs a large silicon footprint. Finally, we conclude that problem classes outside of systems of linear equations may hold more promise for analog acceleration.
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线性代数模拟加速器的评价
由于电源电压缩放的终结和现代集成电路中暗硅的比例的增加,研究人员正在寻找新的可扩展的方法来从现有的硅技术中获得有用的计算。本文提出了一种用于求解线性方程组的可重构模拟加速器。模拟计算常见的缺点,如低精度和准确性,有限的问题规模,以及编程困难,都可以通过使用我们讨论的方法来弥补。基于原型模拟加速器芯片,我们将模拟求解器的性能和能耗与在CPU上运行的高效数字算法进行了比较,发现模拟加速器方法可能快一个数量级,并提供三分之一的节能,具体取决于加速器设计。由于在数字计算机上运行的线性代数算法的速度和效率,与数字性能相匹配的模拟加速器需要大量的硅足迹。最后,我们得出结论,线性方程系统之外的问题类可能对模拟加速更有希望。
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