Identifying Pauli spin blockade using deep learning

Pauli spin blockade (PSB) can be employed as a great resource for spin qubit initialisation and readout even at elevated temperatures but it can be difficult to identify. We present a machine learning algorithm capable of automatically identifying PSB using charge transport measurements. The scarcit...

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Veröffentlicht in:arXiv.org 2023-08
Hauptverfasser: Schuff, Jonas, Lennon, Dominic T, Geyer, Simon, Craig, David L, Fedele, Federico, Vigneau, Florian, Camenzind, Leon C, Kuhlmann, Andreas V, Briggs, G Andrew D, Zumbühl, Dominik M, Sejdinovic, Dino, Ares, Natalia
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Sprache:eng
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Zusammenfassung:Pauli spin blockade (PSB) can be employed as a great resource for spin qubit initialisation and readout even at elevated temperatures but it can be difficult to identify. We present a machine learning algorithm capable of automatically identifying PSB using charge transport measurements. The scarcity of PSB data is circumvented by training the algorithm with simulated data and by using cross-device validation. We demonstrate our approach on a silicon field-effect transistor device and report an accuracy of 96% on different test devices, giving evidence that the approach is robust to device variability. The approach is expected to be employable across all types of quantum dot devices.
ISSN:2331-8422
DOI:10.48550/arxiv.2202.00574