Energy efficient in-memory machine learning for data intensive image-processing by non-volatile domain-wall memory

Hao Yu, Yuhao Wang, Shuai Chen, Wei Fei, Chuliang Weng, Junfeng Zhao, Z. Wei
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引用次数: 26

Abstract

Image processing in conventional logic-memory I/O-integrated systems will incur significant communication congestion at memory I/Os for excessive big image data at exa-scale. This paper explores an in-memory machine learning on neural network architecture by utilizing the newly introduced domain-wall nanowire, called DW-NN. We show that all operations involved in machine learning on neural network can be mapped to a logic-in-memory architecture by non-volatile domain-wall nanowire. Domain-wall nanowire based logic is customized for in machine learning within image data storage. As such, both neural network training and processing can be performed locally within the memory. The experimental results show that system throughput in DW-NN is improved by 11.6x and the energy efficiency is improved by 92x when compared to conventional image processing system.
通过非易失性域壁存储器实现数据密集型图像处理的高能效内存机器学习
在传统的逻辑-内存I/ o集成系统中,对于超大规模的海量图像数据,会在内存I/ o处产生严重的通信拥塞。本文利用新引入的域壁纳米线(DW-NN),探讨了一种基于神经网络架构的内存机器学习。我们证明了神经网络机器学习中涉及的所有操作都可以通过非易失性畴壁纳米线映射到内存逻辑架构。基于域壁纳米线的逻辑是为图像数据存储中的机器学习而定制的。因此,神经网络的训练和处理都可以在记忆中局部完成。实验结果表明,与传统图像处理系统相比,DW-NN的系统吞吐量提高了11.6倍,能量效率提高了92倍。
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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