Experimentally realizing efficient quantum control with reinforcement learning

We experimentally investigate deep reinforcement learning (DRL) as an artificial intelligence approach to control a quantum system. We verify that DRL explores fast and robust digital quantum controls with operation time analytically hinted by shortcuts to adiabaticity. In particular, the protocol’s...

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Veröffentlicht in:Science China. Physics, mechanics & astronomy mechanics & astronomy, 2022-05, Vol.65 (5), p.250312, Article 250312
Hauptverfasser: Ai, Ming-Zhong, Ding, Yongcheng, Ban, Yue, Martín-Guerrero, José D., Casanova, Jorge, Cui, Jin-Ming, Huang, Yun-Feng, Chen, Xi, Li, Chuan-Feng, Guo, Guang-Can
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Sprache:eng
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Zusammenfassung:We experimentally investigate deep reinforcement learning (DRL) as an artificial intelligence approach to control a quantum system. We verify that DRL explores fast and robust digital quantum controls with operation time analytically hinted by shortcuts to adiabaticity. In particular, the protocol’s robustness against both over-rotations and off-resonance errors can still be achieved simultaneously without any priori input. For the thorough comparison, we choose the task as single-qubit flipping, in which various analytical methods are well-developed as the benchmark, ensuring their feasibility in the quantum system as well. Consequently, a gate operation is demonstrated on a trapped 171 Yb + ion, significantly outperforming analytical pulses in the gate time and energy cost with hybrid robustness, as well as the fidelity after repetitive operations under time-varying stochastic errors. Our experiments reveal a framework of computer-inspired quantum control, which can be extended to other complicated tasks without loss of generality.
ISSN:1674-7348
1869-1927
DOI:10.1007/s11433-021-1841-2