Scalable Neural Network Decoders for Higher Dimensional Quantum Codes

Machine learning has the potential to become an important tool in quantum error correction as it allows the decoder to adapt to the error distribution of a quantum chip. An additional motivation for using neural networks is the fact that they can be evaluated by dedicated hardware which is very fast...

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Main Authors: Nikolas P. Breuckmann, Xiaotong Ni
Format: Article
Language:English
Published: Verein zur Förderung des Open Access Publizierens in den Quantenwissenschaften 2018-05-01
Series:Quantum
Online Access:https://quantum-journal.org/papers/q-2018-05-24-68/pdf/
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spelling doaj-d2977b3d12244bdb99eb678786028f812020-11-24T21:46:48ZengVerein zur Förderung des Open Access Publizierens in den QuantenwissenschaftenQuantum2521-327X2018-05-0126810.22331/q-2018-05-24-6810.22331/q-2018-05-24-68Scalable Neural Network Decoders for Higher Dimensional Quantum CodesNikolas P. BreuckmannXiaotong NiMachine learning has the potential to become an important tool in quantum error correction as it allows the decoder to adapt to the error distribution of a quantum chip. An additional motivation for using neural networks is the fact that they can be evaluated by dedicated hardware which is very fast and consumes little power. Machine learning has been previously applied to decode the surface code. However, these approaches are not scalable as the training has to be redone for every system size which becomes increasingly difficult. In this work the existence of local decoders for higher dimensional codes leads us to use a low-depth convolutional neural network to locally assign a likelihood of error on each qubit. For noiseless syndrome measurements, numerical simulations show that the decoder has a threshold of around 7.1% when applied to the 4D toric code. When the syndrome measurements are noisy, the decoder performs better for larger code sizes when the error probability is low. We also give theoretical and numerical analysis to show how a convolutional neural network is different from the 1-nearest neighbor algorithm, which is a baseline machine learning method.https://quantum-journal.org/papers/q-2018-05-24-68/pdf/
collection DOAJ
language English
format Article
sources DOAJ
author Nikolas P. Breuckmann
Xiaotong Ni
spellingShingle Nikolas P. Breuckmann
Xiaotong Ni
Scalable Neural Network Decoders for Higher Dimensional Quantum Codes
Quantum
author_facet Nikolas P. Breuckmann
Xiaotong Ni
author_sort Nikolas P. Breuckmann
title Scalable Neural Network Decoders for Higher Dimensional Quantum Codes
title_short Scalable Neural Network Decoders for Higher Dimensional Quantum Codes
title_full Scalable Neural Network Decoders for Higher Dimensional Quantum Codes
title_fullStr Scalable Neural Network Decoders for Higher Dimensional Quantum Codes
title_full_unstemmed Scalable Neural Network Decoders for Higher Dimensional Quantum Codes
title_sort scalable neural network decoders for higher dimensional quantum codes
publisher Verein zur Förderung des Open Access Publizierens in den Quantenwissenschaften
series Quantum
issn 2521-327X
publishDate 2018-05-01
description Machine learning has the potential to become an important tool in quantum error correction as it allows the decoder to adapt to the error distribution of a quantum chip. An additional motivation for using neural networks is the fact that they can be evaluated by dedicated hardware which is very fast and consumes little power. Machine learning has been previously applied to decode the surface code. However, these approaches are not scalable as the training has to be redone for every system size which becomes increasingly difficult. In this work the existence of local decoders for higher dimensional codes leads us to use a low-depth convolutional neural network to locally assign a likelihood of error on each qubit. For noiseless syndrome measurements, numerical simulations show that the decoder has a threshold of around 7.1% when applied to the 4D toric code. When the syndrome measurements are noisy, the decoder performs better for larger code sizes when the error probability is low. We also give theoretical and numerical analysis to show how a convolutional neural network is different from the 1-nearest neighbor algorithm, which is a baseline machine learning method.
url https://quantum-journal.org/papers/q-2018-05-24-68/pdf/
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AT xiaotongni scalableneuralnetworkdecodersforhigherdimensionalquantumcodes
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