Machine Learning for Estimation and Control of Quantum Systems
- URL: http://arxiv.org/abs/2503.03164v1
- Date: Wed, 05 Mar 2025 04:16:21 GMT
- Title: Machine Learning for Estimation and Control of Quantum Systems
- Authors: Hailan Ma, Bo Qi, Ian R. Petersen, Re-Bing Wu, Herschel Rabitz, Daoyi Dong,
- Abstract summary: This paper reviews several significant topics related to machine learning-aided quantum estimation and control.<n>We discuss neural networks-based learning for quantum state estimation, gradient-based learning for optimal control of quantum systems, evolutionary computation for learning control of quantum systems, machine learning for quantum robust control, and reinforcement learning for quantum control.
- Score: 3.1061797264319746
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The development of quantum technologies relies on creating and manipulating quantum systems of increasing complexity, with key applications in computation, simulation, and sensing. This poses severe challenges in efficient control, calibration, and validation of quantum states and their dynamics. Machine learning methods have emerged as powerful tools owing to their remarkable capability to learn from data, and thus have been extensively utilized for different quantum tasks. This paper reviews several significant topics related to machine learning-aided quantum estimation and control. In particular, we discuss neural networks-based learning for quantum state estimation, gradient-based learning for optimal control of quantum systems, evolutionary computation for learning control of quantum systems, machine learning for quantum robust control, and reinforcement learning for quantum control. This review provides a brief background of key concepts recurring across many of these approaches with special emphasis on neural networks, evolutionary computation, and reinforcement learning.
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