基于计算记忆的深度神经网络推理与训练

A. Sebastian, I. Boybat, M. Dazzi, I. Giannopoulos, V. Jonnalagadda, V. Joshi, G. Karunaratne, B. Kersting, R. Khaddam-Aljameh, S. Nandakumar, A. Petropoulos, C. Piveteau, T. Antonakopoulos, B. Rajendran, M. L. Gallo, E. Eleftheriou
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引用次数: 22

摘要

内存计算是一种新兴的计算范式,其中某些计算任务通过利用内存设备的物理属性在计算内存单元中执行。在这里,我们概述了内存计算在深度学习中的应用,深度学习是机器学习的一个分支,它对最近人工智能的爆炸式增长做出了重大贡献。介绍了深度神经网络的推理和训练方法,并给出了使用相变存储器(PCM)器件的实验结果。
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Computational memory-based inference and training of deep neural networks
In-memory computing is an emerging computing paradigm where certain computational tasks are performed in place in a computational memory unit by exploiting the physical attributes of the memory devices. Here, we present an overview of the application of in-memory computing in deep learning, a branch of machine learning that has significantly contributed to the recent explosive growth in artificial intelligence. The methodology for both inference and training of deep neural networks is presented along with experimental results using phase-change memory (PCM) devices.
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