Resistive configurable associative memory for approximate computing

M. Imani, Abbas Rahimi, T. Simunic
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引用次数: 99

Abstract

Modern computing machines are increasingly characterized by large scale parallelism in hardware (such as GPGPUs) and advent of large scale and innovative memory blocks. Parallelism enables expanded performance tradeoffs whereas memories enable reuse of computational work. To be effective, however, one needs to ensure energy efficiency with minimal reuse overheads. In this paper, we describe a resistive configurable associative memory (ReCAM) that enables selective approximation and asymmetric voltage overscaling to manage delivered efficiency. The ReCAM structure matches an input pattern with pre-stored ones by applying an approximate search on selected bit indices (bitline-configurable) or selective pre-stored patterns (row-configurable). To further reduce energy, we explore proper ReCAM sizing, various configurable search operations with low overhead voltage overscaling, and different ReCAM update policies. Experimental result on the AMD Southern Islands GPUs for eight applications shows bitline-configurable and row-configurable ReCAM achieve on average to 43.6% and 44.5% energy savings with an acceptable quality loss of 10%.
用于近似计算的电阻式可配置联想存储器
现代计算机器越来越多地以硬件(如gpgpu)的大规模并行性以及大规模和创新内存块的出现为特征。并行性支持扩展的性能权衡,而内存支持计算工作的重用。然而,要使其有效,需要以最小的重复使用开销确保能源效率。在本文中,我们描述了一种电阻可配置联想存储器(ReCAM),它支持选择性逼近和非对称电压过标来管理传递效率。ReCAM结构通过对选定的位索引(位线可配置)或选择的预存储模式(行可配置)应用近似搜索来匹配输入模式和预存储模式。为了进一步降低能耗,我们探索了适当的ReCAM规模、具有低负载电压过尺度的各种可配置搜索操作以及不同的ReCAM更新策略。在AMD Southern Islands gpu上进行的八种应用的实验结果表明,位线可配置和行可配置的ReCAM平均节能43.6%和44.5%,质量损失为10%。
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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