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  4. Experimental Demonstration and Tolerancing of a Large-Scale Neural Network (165 000 Synapses) Using Phase-Change Memory as the Synaptic Weight Element
 
research article

Experimental Demonstration and Tolerancing of a Large-Scale Neural Network (165 000 Synapses) Using Phase-Change Memory as the Synaptic Weight Element

Burr, Geoffrey W.
•
Shelby, Robert M.
•
Sidler, Severin
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2015
Ieee Transactions On Electron Devices

Using two phase-change memory devices per synapse, a three-layer perceptron network with 164 885 synapses is trained on a subset (5000 examples) of the MNIST database of handwritten digits using a backpropagation variant suitable for nonvolatile memory (NVM) + selector crossbar arrays, obtaining a training (generalization) accuracy of 82.2% (82.9%). Using a neural network simulator matched to the experimental demonstrator, extensive tolerancing is performed with respect to NVM variability, yield, and the stochasticity, linearity, and asymmetry of the NVM-conductance response. We show that a bidirectional NVM with a symmetric, linear conductance response of high dynamic range is capable of delivering the same high classification accuracies on this problem as a conventional, software-based implementation of this same network.

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Type
research article
DOI
10.1109/Ted.2015.2439635
Web of Science ID

WOS:000364242000007

Author(s)
Burr, Geoffrey W.
Shelby, Robert M.
Sidler, Severin
Di Nolfo, Carmelo
Jang, Junwoo
Boybat, Irem
Shenoy, Rohit S.
Narayanan, Pritish
Virwani, Kumar
Giacometti, Emanuele U.
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Date Issued

2015

Publisher

Ieee-Inst Electrical Electronics Engineers Inc

Published in
Ieee Transactions On Electron Devices
Volume

62

Issue

11

Start page

3498

End page

3507

Subjects

Artificial neural networks

•

Machine learning

•

Multilayer perceptrons

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Nonvolatile memory

•

Phase change memory

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
STI  
Available on Infoscience
December 2, 2015
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/121015
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