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QFlow lite dataset: A machine-learning approach to the charge states in quantum dot experiments
- Source :
- PLoS ONE, Vol 13, Iss 10, p e0205844 (2018), PLoS ONE
- Publication Year :
- 2018
- Publisher :
- Public Library of Science (PLoS), 2018.
-
Abstract
- Over the past decade, machine learning techniques have revolutionized how research is done, from designing new materials and predicting their properties 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 QDs are a candidate system for building quantum computers. The present-day tuning techniques for bringing the QD devices into a desirable configuration suitable for quantum computing that rely on heuristics do 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 that does not rely on the gross-scale heuristics developed by experimentalists is thus of great importance. 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. Here, we describe the methodology for generating the dataset, as well as its validation in training convolutional neural networks. We show that the learner's accuracy in recognizing the state of a device is ~96.5 % in both current- and charge-sensor-based training. 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.<br />Comment: 18 pages, 6 figures, 3 tables
- Subjects :
- Topography
Databases, Factual
lcsh:Medicine
02 engineering and technology
computer.software_genre
01 natural sciences
Convolutional neural network
Machine Learning
Automation
Software
Drug Discovery
Nanotechnology
Data Mining
lcsh:Science
Quantum computer
computer.programming_language
Islands
Quantum Physics
Multidisciplinary
Artificial neural network
Physics
Applied Mathematics
Simulation and Modeling
Condensed Matter Physics
021001 nanoscience & nanotechnology
GO
Physical Sciences
Engineering and Technology
Quantum Computing
0210 nano-technology
Algorithms
Research Article
Computer and Information Sciences
Neural Networks
COMPUTER
FOS: Physical sciences
Research and Analysis Methods
Machine learning
Machine Learning Algorithms
Data visualization
Artificial Intelligence
Quantum Dots
0103 physical sciences
Electron Density
Computer Simulation
010306 general physics
Computer Security
Landforms
Computing Systems
business.industry
Data Visualization
lcsh:R
Biology and Life Sciences
Computational Biology
Reproducibility of Results
Geomorphology
Python (programming language)
Semiconductors
Earth Sciences
Programming Languages
lcsh:Q
Neural Networks, Computer
Artificial intelligence
Quantum Physics (quant-ph)
business
Heuristics
computer
Mathematics
Neuroscience
Subjects
Details
- Language :
- English
- ISSN :
- 19326203
- Volume :
- 13
- Issue :
- 10
- Database :
- OpenAIRE
- Journal :
- PLoS ONE
- Accession number :
- edsair.doi.dedup.....64d64d28d4e847f38efc0d1159c93df3