ACAM: Approximate Computing Based on Adaptive Associative Memory with Online Learning

M. Imani, Yeseong Kim, Abbas Rahimi, T. Simunic
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引用次数: 61

Abstract

The Internet of Things (IoT) dramatically increases the amount of data to be processed for many applications including multimedia. Unlike traditional computing environment, the workload of IoT significantly varies overtime. Thus, an efficient runtime profiling is required to extract highly frequent computations and pre-store them for memory-based computing. In this paper, we propose an approximate computing technique using a low-cost adaptive associative memory, named ACAM, which utilizes runtime learning and profiling. To recognize the temporal locality of data in real-world applications, our design exploits a reinforcement learning algorithm with a least recently use (LRU) strategy to select images to be profiled; the profiler is implemented using an approximate concurrent state machine. The profiling results are then stored into ACAM for computation reuse. Since the selected images represent the observed input dataset, we can avoid redundant computations thanks to high hit rates displayed in the associative memory. We evaluate ACAM on the recent AMD Southern Island GPU architecture, and the experimental results shows that the proposed design achieves by 34.7% energy saving for image processing applications with an acceptable quality of service (i.e., PSNR>30dB).
基于自适应联想记忆与在线学习的近似计算
物联网(IoT)极大地增加了包括多媒体在内的许多应用程序需要处理的数据量。与传统计算环境不同,物联网的工作负载随着时间的推移变化很大。因此,需要一个有效的运行时分析来提取频繁的计算并为基于内存的计算预先存储它们。在本文中,我们提出了一种使用低成本自适应联想记忆的近似计算技术,称为ACAM,它利用了运行时学习和分析。为了识别现实世界应用中数据的时间局域性,我们的设计利用了一种具有最近最少使用(LRU)策略的强化学习算法来选择要分析的图像;该分析器是使用近似并发状态机实现的。然后将分析结果存储到ACAM中以供计算重用。由于选择的图像代表观察到的输入数据集,我们可以避免冗余计算,这要感谢在关联内存中显示的高命中率。我们在最新的AMD Southern Island GPU架构上对ACAM进行了评估,实验结果表明,所提出的设计在图像处理应用中实现了34.7%的节能,并且服务质量可以接受(即PSNR>30dB)。
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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