Literature DB >> 35022590

A crossbar array of magnetoresistive memory devices for in-memory computing.

Seungchul Jung1, Hyungwoo Lee1, Sungmeen Myung1, Hyunsoo Kim1, Seung Keun Yoon1, Soon-Wan Kwon1, Yongmin Ju1, Minje Kim1, Wooseok Yi1, Shinhee Han2, Baeseong Kwon2, Boyoung Seo2, Kilho Lee3, Gwan-Hyeob Koh3, Kangho Lee2, Yoonjong Song3, Changkyu Choi1, Donhee Ham4,5, Sang Joon Kim6.   

Abstract

Implementations of artificial neural networks that borrow analogue techniques could potentially offer low-power alternatives to fully digital approaches1-3. One notable example is in-memory computing based on crossbar arrays of non-volatile memories4-7 that execute, in an analogue manner, multiply-accumulate operations prevalent in artificial neural networks. Various non-volatile memories-including resistive memory8-13, phase-change memory14,15 and flash memory16-19-have been used for such approaches. However, it remains challenging to develop a crossbar array of spin-transfer-torque magnetoresistive random-access memory (MRAM)20-22,  despite the technology's practical advantages such as endurance and large-scale commercialization5. The difficulty stems from the low resistance of MRAM, which would result in large power consumption in a conventional crossbar array that uses current summation for analogue multiply-accumulate operations. Here we report a 64 × 64 crossbar array based on MRAM cells that overcomes the low-resistance issue with an architecture that uses resistance summation for analogue multiply-accumulate operations. The array is integrated with readout electronics in 28-nanometre complementary metal-oxide-semiconductor technology. Using this array, a two-layer perceptron is implemented to classify 10,000 Modified National Institute of Standards and Technology digits with an accuracy of 93.23 per cent (software baseline: 95.24 per cent). In an emulation of a deeper, eight-layer Visual Geometry Group-8 neural network with measured errors, the classification accuracy improves to 98.86 per cent (software baseline: 99.28 per cent). We also use the array to implement a single layer in a ten-layer neural network to realize face detection with an accuracy of 93.4 per cent.
© 2022. The Author(s), under exclusive licence to Springer Nature Limited.

Entities:  

Year:  2022        PMID: 35022590     DOI: 10.1038/s41586-021-04196-6

Source DB:  PubMed          Journal:  Nature        ISSN: 0028-0836            Impact factor:   49.962


  4 in total

Review 1.  Two-dimensional materials prospects for non-volatile spintronic memories.

Authors:  Hyunsoo Yang; Sergio O Valenzuela; Mairbek Chshiev; Sébastien Couet; Bernard Dieny; Bruno Dlubak; Albert Fert; Kevin Garello; Matthieu Jamet; Dae-Eun Jeong; Kangho Lee; Taeyoung Lee; Marie-Blandine Martin; Gouri Sankar Kar; Pierre Sénéor; Hyeon-Jin Shin; Stephan Roche
Journal:  Nature       Date:  2022-06-22       Impact factor: 69.504

2.  Electric-field control of nonlinear THz spintronic emitters.

Authors:  Piyush Agarwal; Lisen Huang; Sze Ter Lim; Ranjan Singh
Journal:  Nat Commun       Date:  2022-07-14       Impact factor: 17.694

3.  All-Electrical Control of Compact SOT-MRAM: Toward Highly Efficient and Reliable Non-Volatile In-Memory Computing.

Authors:  Huai Lin; Xi Luo; Long Liu; Di Wang; Xuefeng Zhao; Ziwei Wang; Xiaoyong Xue; Feng Zhang; Guozhong Xing
Journal:  Micromachines (Basel)       Date:  2022-02-18       Impact factor: 2.891

4.  Almost Perfect Spin Filtering in Graphene-Based Magnetic Tunnel Junctions.

Authors:  Victor Zatko; Simon M-M Dubois; Florian Godel; Marta Galbiati; Julian Peiro; Anke Sander; Cécile Carretero; Aymeric Vecchiola; Sophie Collin; Karim Bouzehouane; Bernard Servet; Frédéric Petroff; Jean-Christophe Charlier; Marie-Blandine Martin; Bruno Dlubak; Pierre Seneor
Journal:  ACS Nano       Date:  2022-09-06       Impact factor: 18.027

  4 in total

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