ML-Enhanced Control of Noisy Qubit
Analysis
Key Takeaways
- •Applies machine learning to improve quantum gate fidelity in noisy environments.
- •Employs a greybox approach, combining physical models with neural networks.
- •Achieves high gate fidelities under realistic noise conditions.
- •Discusses critical issues of the approach, indicating a practical perspective.
“Achieving gate fidelities above 90% under realistic noise models (Random Telegraph and Ornstein-Uhlenbeck) is a significant result, demonstrating the effectiveness of the proposed method.”