Vision-transformer neural networks trained on simulated charge stability diagrams from a disordered generalized Hubbard model predict SOC-induced spin-flip tunneling amplitudes with R² ≈ 0.94 even when other parameters are unknown.
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Spin-dependent magnetotunneling corrections preserve and create new sweet spots for hole spins in double quantum dots, explaining observations in shuttling and cQED experiments.
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Predicting spin-orbit coupling in hole spin qubit arrays with vision-transformer-based neural networks on a generalized Hubbard model
Vision-transformer neural networks trained on simulated charge stability diagrams from a disordered generalized Hubbard model predict SOC-induced spin-flip tunneling amplitudes with R² ≈ 0.94 even when other parameters are unknown.
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Sweet-spot protection of hole spins in sparse arrays via spin-dependent magnetotunneling
Spin-dependent magnetotunneling corrections preserve and create new sweet spots for hole spins in double quantum dots, explaining observations in shuttling and cQED experiments.