Hamiltonian Dynamics Learning: A Scalable Approach to Quantum Process Characterization
- URL: http://arxiv.org/abs/2503.24171v3
- Date: Thu, 10 Apr 2025 01:24:42 GMT
- Title: Hamiltonian Dynamics Learning: A Scalable Approach to Quantum Process Characterization
- Authors: Yusen Wu, Yukun Zhang, Chuan Wang, Xiao Yuan,
- Abstract summary: We introduce an efficient quantum process learning method specifically designed for short-time Hamiltonian dynamics.<n>We demonstrate applications in quantum machine learning, where our protocol enables efficient training of variational quantum neural networks by directly learning unitary transformations.<n>This work establishes a new theoretical foundation for practical quantum dynamics learning, paving the way for scalable quantum process characterization in both near-term and fault-tolerant quantum computing.
- Score: 6.741097425426473
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum process characterization is a fundamental task in quantum information processing, yet conventional methods, such as quantum process tomography, require prohibitive resources and lack scalability. Here, we introduce an efficient quantum process learning method specifically designed for short-time Hamiltonian dynamics. Our approach reconstructs an equivalent quantum circuit representation from measurement data of unknown Hamiltonian evolution without requiring additional assumptions and achieves polynomial sample and computational efficiency. Our results have broad applications in various directions. We demonstrate applications in quantum machine learning, where our protocol enables efficient training of variational quantum neural networks by directly learning unitary transformations. Additionally, it facilitates the prediction of quantum expectation values with provable efficiency and provides a robust framework for verifying quantum computations and benchmarking realistic noisy quantum hardware. This work establishes a new theoretical foundation for practical quantum dynamics learning, paving the way for scalable quantum process characterization in both near-term and fault-tolerant quantum computing.
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