Ray-based framework for state identification in quantum dot devices
Justyna P. Zwolak, Thomas McJunkin, Sandesh S. Kalantre, Samuel F., Neyens, E. R. MacQuarrie, Mark A. Eriksson, Jacob M. Taylor

TL;DR
This paper introduces a ray-based machine learning framework for efficient state identification in quantum dot devices, significantly reducing measurement costs and improving scalability for multi-qubit quantum computing systems.
Contribution
It presents the RBC framework that uses one-dimensional projections for state classification, outperforming previous image-based methods in accuracy and measurement efficiency.
Findings
Achieved over 82% classification accuracy.
Reduced measurement points by up to 70%.
Validated effectiveness in high-dimensional parameter spaces.
Abstract
Quantum dots (QDs) defined with electrostatic gates are a leading platform for a scalable quantum computing implementation. However, with increasing numbers of qubits, the complexity of the control parameter space also grows. Traditional measurement techniques, relying on complete or near-complete exploration via two-parameter scans (images) of the device response, quickly become impractical with increasing numbers of gates. Here we propose to circumvent this challenge by introducing a measurement technique relying on one-dimensional projections of the device response in the multidimensional parameter space. Dubbed the ``ray-based classification (RBC) framework,'' we use this machine learning approach to implement a classifier for QD states, enabling automated recognition of qubit-relevant parameter regimes. We show that RBC surpasses the 82 % accuracy benchmark from the experimental…
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