Bulletin of the American Physical Society
APS March Meeting 2020
Volume 65, Number 1
Monday–Friday, March 2–6, 2020; Denver, Colorado
Session F17: Focus Semiconductor Spin Qubit Readout
8:00 AM–11:00 AM,
Tuesday, March 3, 2020
Room: 203
Sponsoring
Unit:
DQI
Chair: Jason Petta, Princeton University
Abstract: F17.00013 : Machine Learning-Based control of 2D Arrays of Quantum Dots
Presenter:
Ali Izadi Rad
(Joint Center for Quantum Information and Computer Science, University of Maryland, College Park)
Authors:
Ali Izadi Rad
(Joint Center for Quantum Information and Computer Science, University of Maryland, College Park)
Sandesh Kalantre
(Joint Center for Quantum Information and Computer Science, University of Maryland, College Park)
Jacob Taylor
(National Institute of Standards and Technology)
Justyna Zwolak
(National Institute of Standards and Technology)
and simulation have shown promising results [1]. However, as the control parameters space
grows significantly with increasing number of QDs, working with large QD arrays is challenging.
Thus, finding a scalable and non-heuristic control approach to tune the electronic configuration
in QDs is necessary. Due to high-dimensional patterns defining dot states, machine learning
(ML) algorithms present a natural solution.
In this project, we extend a recent proposal [3,4] of employing a ML-based auto-tuner to linear
QD devices to the more general case of 2D arrays. We use a Thomas-Fermi solver to establish
an ensemble of simulated measurements for 2x2 QD arrays. This data set allows us to train and
evaluate an image-based classifier that maps the charge stability diagrams showing the
electronic configuration of the QD device into classes defining the number of dots formed in the
system. This work will set foundations for research on machine learning-based control of 2D QD
devices.
[1] Hensgens et al., Nature 548, 70 (2017).
[3] Kalantre et al., npj Quantum Inf. 5: 6 (2019).
[4] Zwolak et al., arXiv:1909.08030 (2019).
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