Hamiltonian learning using machine-learning models trained with continuous measurements

被引:0
|
作者
Tucker, Kris [1 ]
Rege, Amit Kiran [2 ]
Smith, Conor [3 ,4 ]
Monteleoni, Claire [2 ,5 ]
Albash, Tameem [6 ]
机构
[1] Univ Colorado Boulder, Dept Appl Math, Boulder, CO 80309 USA
[2] Univ Colorado Boulder, Dept Comp Sci, Boulder, CO USA
[3] Univ New Mexico, Ctr Quantum Informat & Control, Albuquerque, NM USA
[4] Univ New Mexico, Dept Elect & Comp Engn, Albuquerque, NM USA
[5] INRIA, Ctr Rech Paris, Paris, France
[6] Sandia Natl Labs, Ctr Comp Res, Albuquerque, NM 87185 USA
来源
PHYSICAL REVIEW APPLIED | 2024年 / 22卷 / 04期
基金
美国国家科学基金会;
关键词
Adversarial machine learning - Contrastive Learning - Federated learning - Hamiltonians - Quantum entanglement - Quantum optics - Recurrent neural networks - Self-supervised learning - Supervised learning - Unsupervised learning;
D O I
10.1103/PhysRevApplied.22.044080
中图分类号
O59 [应用物理学];
学科分类号
摘要
We build upon recent work on the use of machine-learning models to estimate Hamiltonian parameters using continuous weak measurement of qubits as input. We consider two settings for the training of our model: (1) supervised learning, where the weak-measurement training record can be labeled with known Hamiltonian parameters, and (2) unsupervised learning, where no labels are available. The first has the advantage of not requiring an explicit representation of the quantum state, thus potentially scaling very favorably to a larger number of qubits. The second requires the implementation of a physical model to map the Hamiltonian parameters to a measurement record, which we implement using an integrator of the physical model with a recurrent neural network to provide a model-free correction at every time step to account for small effects not captured by the physical model. We test our construction on a system of two qubits and demonstrate accurate prediction of multiple physical parameters in both the supervised context and the unsupervised context. We demonstrate that the model benefits from larger training sets, establishing that it is "learning," and we show robustness regarding errors in the assumed physical model by achieving accurate parameter estimation in the presence of unanticipated single-particle relaxation.
引用
收藏
页数:14
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