QFlow lite dataset: A machine-learning approach to the charge states in quantum dot experiments
Justyna P. Zwolak, Sandesh S. Kalantre, Xingyao Wu, Stephen Ragole,, Jacob M. Taylor

TL;DR
This paper introduces a new dataset and machine learning methodology for identifying charge states in quantum dot experiments, aiming to improve device tuning for quantum computing applications.
Contribution
It presents the QFlow lite dataset and a neural network-based approach for recognizing quantum dot charge states, facilitating scalable tuning protocols.
Findings
Neural network accuracy ~96.5% in state recognition
Validated dataset enables training of neural networks on quantum dot data
Provides a software tool for researchers to apply machine learning in quantum device tuning
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…
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