Variational Quantum Algorithm for Unitary Dilation
- URL: http://arxiv.org/abs/2510.19157v1
- Date: Wed, 22 Oct 2025 01:23:59 GMT
- Title: Variational Quantum Algorithm for Unitary Dilation
- Authors: S. X. Li, Keren Li, J. B. You, Y. -H. Chen, Clemens Gneiting, Franco Nori, X. Q. Shao,
- Abstract summary: We introduce a hybrid quantum-classical framework for efficiently implementing approximate unitary dilations of non-unitary operators.<n>We validate the approach on superconducting devices in the Quafu quantum cloud computing cluster.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We introduce a hybrid quantum-classical framework for efficiently implementing approximate unitary dilations of non-unitary operators with enhanced noise resilience. The method embeds a target non-unitary operator into a subblock of a unitary matrix generated by a parameterized quantum circuit with universal expressivity, while a classical optimizer adjusts circuit parameters under the global unitary constraint. As a representative application, we consider the non-unitary propagator of a Lindbladian superoperator acting on the vectorized density matrix, which is relevant for simulating open quantum systems. We further validate the approach experimentally on superconducting devices in the Quafu quantum cloud computing cluster. Compared with standard dilation protocols, our method significantly reduces quantum resource requirements and improves robustness against device noise, achieving high-fidelity simulation. Its generality also enables compatibility with non-Markovian dynamics and Kraus-operator-based evolutions, providing a practical pathway for the noise-resilient simulation of non-unitary processes on near-term quantum hardware.
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