QFlow lite dataset: A machine-learning approach to the charge states in quantum dot experiments.

BACKGROUND:Over the past decade, machine learning techniques have revolutionized how research and science are done, from designing new materials and predicting their properties to data mining and analysis to assisting drug discovery to advancing cybersecurity. Recently, we added to this list by show...

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Main Authors: Justyna P Zwolak, Sandesh S Kalantre, Xingyao Wu, Stephen Ragole, Jacob M Taylor
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC6192646?pdf=render
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spelling doaj-128a475c1b1c495a8a38a2396e6fb4be2020-11-24T21:52:14ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-011310e020584410.1371/journal.pone.0205844QFlow lite dataset: A machine-learning approach to the charge states in quantum dot experiments.Justyna P ZwolakSandesh S KalantreXingyao WuStephen RagoleJacob M TaylorBACKGROUND:Over the past decade, machine learning techniques have revolutionized how research and science are done, from designing new materials and predicting their properties to data mining and analysis to assisting drug discovery to advancing cybersecurity. Recently, we added to this list by showing how a machine learning algorithm (a so-called learner) combined with an optimization routine can assist experimental efforts in the realm of tuning semiconductor quantum dot (QD) devices. Among other applications, semiconductor quantum dots are a candidate system for building quantum computers. In order to employ QDs, one needs to tune the devices into a desirable configuration suitable for quantum computing. While current experiments adjust the control parameters heuristically, such an approach does not scale with the increasing size of the quantum dot arrays required for even near-term quantum computing demonstrations. Establishing a reliable protocol for tuning QD devices that does not rely on the gross-scale heuristics developed by experimentalists is thus of great importance. MATERIALS AND METHODS:To implement the machine learning-based approach, we constructed a dataset of simulated QD device characteristics, such as the conductance and the charge sensor response versus the applied electrostatic gate voltages. The gate voltages are the experimental 'knobs' for tuning the device into useful regimes. Here, we describe the methodology for generating the dataset, as well as its validation in training convolutional neural networks. RESULTS AND DISCUSSION:From 200 training sets sampled randomly from the full dataset, we show that the learner's accuracy in recognizing the state of a device is ≈ 96.5% when using either current-based or charge-sensor-based training. The spread in accuracy over our 200 training sets is 0.5% and 1.8% for current- and charge-sensor-based data, respectively. In addition, we also introduce a tool that enables other researchers to use this approach for further research: QFlow lite-a Python-based mini-software suite that uses the dataset to train neural networks to recognize the state of a device and differentiate between states in experimental data. This work gives the definitive reference for the new dataset that will help enable researchers to use it in their experiments or to develop new machine learning approaches and concepts.http://europepmc.org/articles/PMC6192646?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Justyna P Zwolak
Sandesh S Kalantre
Xingyao Wu
Stephen Ragole
Jacob M Taylor
spellingShingle Justyna P Zwolak
Sandesh S Kalantre
Xingyao Wu
Stephen Ragole
Jacob M Taylor
QFlow lite dataset: A machine-learning approach to the charge states in quantum dot experiments.
PLoS ONE
author_facet Justyna P Zwolak
Sandesh S Kalantre
Xingyao Wu
Stephen Ragole
Jacob M Taylor
author_sort Justyna P Zwolak
title QFlow lite dataset: A machine-learning approach to the charge states in quantum dot experiments.
title_short QFlow lite dataset: A machine-learning approach to the charge states in quantum dot experiments.
title_full QFlow lite dataset: A machine-learning approach to the charge states in quantum dot experiments.
title_fullStr QFlow lite dataset: A machine-learning approach to the charge states in quantum dot experiments.
title_full_unstemmed QFlow lite dataset: A machine-learning approach to the charge states in quantum dot experiments.
title_sort qflow lite dataset: a machine-learning approach to the charge states in quantum dot experiments.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description BACKGROUND:Over the past decade, machine learning techniques have revolutionized how research and science are done, from designing new materials and predicting their properties to data mining and analysis to assisting drug discovery to advancing cybersecurity. Recently, we added to this list by showing how a machine learning algorithm (a so-called learner) combined with an optimization routine can assist experimental efforts in the realm of tuning semiconductor quantum dot (QD) devices. Among other applications, semiconductor quantum dots are a candidate system for building quantum computers. In order to employ QDs, one needs to tune the devices into a desirable configuration suitable for quantum computing. While current experiments adjust the control parameters heuristically, such an approach does not scale with the increasing size of the quantum dot arrays required for even near-term quantum computing demonstrations. Establishing a reliable protocol for tuning QD devices that does not rely on the gross-scale heuristics developed by experimentalists is thus of great importance. MATERIALS AND METHODS:To implement the machine learning-based approach, we constructed a dataset of simulated QD device characteristics, such as the conductance and the charge sensor response versus the applied electrostatic gate voltages. The gate voltages are the experimental 'knobs' for tuning the device into useful regimes. Here, we describe the methodology for generating the dataset, as well as its validation in training convolutional neural networks. RESULTS AND DISCUSSION:From 200 training sets sampled randomly from the full dataset, we show that the learner's accuracy in recognizing the state of a device is ≈ 96.5% when using either current-based or charge-sensor-based training. The spread in accuracy over our 200 training sets is 0.5% and 1.8% for current- and charge-sensor-based data, respectively. In addition, we also introduce a tool that enables other researchers to use this approach for further research: QFlow lite-a Python-based mini-software suite that uses the dataset to train neural networks to recognize the state of a device and differentiate between states in experimental data. This work gives the definitive reference for the new dataset that will help enable researchers to use it in their experiments or to develop new machine learning approaches and concepts.
url http://europepmc.org/articles/PMC6192646?pdf=render
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