Identifying Pauli spin blockade using deep learning with scarce experimental data
ORAL
Abstract
A method to readout spin qubits encoded in quantum dot devices relies on Pauli spin blockade (PSB) for spin-to-charge conversion. PSB leads to transport features that are hard to detect even for human experts. We present a machine learning algorithm capable of automatically identifying PSB. The scarcity of PSB data is circumvented by training the algorithm with simulated data. We demonstrate our approach on a silicon fin field-effect transistor device and report an accuracy of 96% on different test devices, giving proof that the approach is robust to device variability.
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Presenters
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Jonas Schuff
University of Oxford
Authors
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Jonas Schuff
University of Oxford
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Dominic T Lennon
University of Oxford
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Simon Geyer
University of Basel
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David Craig
University of Oxford
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Leon Camenzind
University of Basel
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Federico Fedele
University of Oxford
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Florian Vigneau
University of Oxford
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Andreas V Kuhlmann
University of Basel
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Richard J Warburton
University of Basel
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Dominik M Zumbuhl
University of Basel
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Dino Sejdinovic
University of Oxford
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G. Andrew D Briggs
University of Oxford
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Natalia Ares
University of Oxford