研究目的
To automate the tuning of gate-defined quantum dots in semiconductor-based heterostructures for scalable quantum computing applications.
研究成果
The research demonstrates that automating manual-tuning procedures with supervised machine learning can successfully tune double quantum dots in multiple devices without premeasured input or manual intervention. This approach is a significant step towards scalable quantum systems in quantum-dot-based qubit architectures.
研究不足
The study is limited by the need for extensive experimental data for training classifiers, the complexity of noise and intermediate regimes in quantum-dot measurements, and the requirement for devices to be above a setup-specific noise level to be considered for tuning.