扭矩
凝聚态物理
玻尔兹曼常数
轨道(动力学)
自旋(空气动力学)
物理
隧道磁电阻
材料科学
铁磁性
航空航天工程
工程类
量子力学
作者
Xiaohan Li,Caihua Wan,Ran Zhang,Mingkun Zhao,Shilong Xiong,Dehao Kong,Xuming Luo,Bin He,Beiying Liu,Jihao Xia,Guoqiang Yu,Xiufeng Han
出处
期刊:Nano Letters
[American Chemical Society]
日期:2024-04-26
卷期号:24 (18): 5420-5428
被引量:5
标识
DOI:10.1021/acs.nanolett.3c04820
摘要
Artificial intelligence has surged forward with the advent of generative models, which rely heavily on stochastic computing architectures enhanced by true random number generators with adjustable sampling probabilities. In this study, we develop spin–orbit torque magnetic tunnel junctions (SOT-MTJs), investigating their sigmoid-style switching probability as a function of the driving voltage. This feature proves to be ideally suited for stochastic computing algorithms such as the restricted Boltzmann machines (RBM) prevalent in pretraining processes. We exploit SOT-MTJs as both stochastic samplers and network nodes for RBMs, enabling the implementation of RBM-based neural networks to achieve recognition tasks for both handwritten and spoken digits. Moreover, we further harness the weights derived from the preceding image and speech training processes to facilitate cross-modal learning from speech to image generation. Our results clearly demonstrate that these SOT-MTJs are promising candidates for the development of hardware accelerators tailored for Boltzmann neural networks and other stochastic computing architectures.
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