A study on the energy-precision tradeoffs on commercially available processors and SoCs with an EPI based energy model

Jeremy Schlachter, M. Fagan, K. Palem, C. Enz
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Abstract

Energy-efficiency is a critical concern for many computing systems. With Moore's law showing its limits, new hardware design and programming techniques emerge to pursue energy scaling. Among these, approximate computing is certainly the most popular in current works. It has been shown that reducing precision using software techniques can show significant energy savings on commercially available processors. In this paper, an energy model based on Energy Per Instruction (EPI) has been built in order to understand which mechanisms enable those savings. EPIs of various instructions have been measured and data movement has been identified as being the major consumer. The energy model has been evaluated on a computationally intensive Newton method for solving nonlinear equations using double-precision and single-precision floating-point data types. For all the cases, the model predicts the consumption with less than 10 % error. The energy breakdown reveals that arithmetic operations consume less than 6 % of the total energy and that savings are mainly achieved by reducing the amount of data transferred between registers, cache and main memory. With these conclusions, implementing approximate arithmetic circuits in this type of architecture would have a very limited impact on the consumption. It is however shown that specialized hardware implemented on an FPGA interconnected with a processing system can lead to an additional 20 % energy savings on the Newton method using the same single-precision data type.
基于EPI能量模型的商用处理器和soc能量精度权衡研究
对于许多计算系统来说,能源效率是一个关键问题。随着摩尔定律显示出其局限性,新的硬件设计和编程技术出现,以追求能量缩放。其中,近似计算无疑是当前工作中最流行的。已经证明,使用软件技术降低精度可以在商用处理器上显着节省能源。在本文中,建立了一个基于每条指令能量(EPI)的能量模型,以便了解哪些机制能够实现这些节省。已经测量了各种指令的epi,并确定数据移动是主要的消费者。利用双精度和单精度浮点数据类型求解非线性方程的计算密集型牛顿方法对能量模型进行了评估。对于所有情况,该模型预测的能耗误差小于10%。能量分解显示,算术运算消耗的能量不到总能量的6%,这主要是通过减少在寄存器、缓存和主存储器之间传输的数据量来实现的。根据这些结论,在这种类型的体系结构中实现近似算术电路对功耗的影响非常有限。然而,它表明,在与处理系统互连的FPGA上实现的专用硬件可以在使用相同的单精度数据类型的牛顿方法上额外节省20%的能源。
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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