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Generative flow-based warm start of the variational quantum eigensolver

2 July 2025
Hang Zou
Martin Rahm
Anton Frisk Kockum
Simon Olsson
ArXiv (abs)PDFHTML
Main:20 Pages
8 Figures
2 Tables
Abstract

Hybrid quantum-classical algorithms like the variational quantum eigensolver (VQE) show promise for quantum simulations on near-term quantum devices, but are often limited by complex objective functions and expensive optimization procedures. Here, we propose Flow-VQE, a generative framework leveraging conditional normalizing flows with parameterized quantum circuits to efficiently generate high-quality variational parameters. By embedding a generative model into the VQE optimization loop through preference-based training, Flow-VQE enables quantum gradient-free optimization and offers a systematic approach for parameter transfer, accelerating convergence across related problems through warm-started optimization. We compare Flow-VQE to a number of standard benchmarks through numerical simulations on molecular systems, including hydrogen chains, water, ammonia, and benzene. We find that Flow-VQE outperforms baseline optimization algorithms, achieving computational accuracy with fewer circuit evaluations (improvements range from modest to more than two orders of magnitude) and, when used to warm-start the optimization of new systems, accelerates subsequent fine-tuning by up to 50-fold compared with Hartree--Fock initialization. Therefore, we believe Flow-VQE can become a pragmatic and versatile paradigm for leveraging generative modeling to reduce the costs of variational quantum algorithms.

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@article{zou2025_2507.01726,
  title={ Generative flow-based warm start of the variational quantum eigensolver },
  author={ Hang Zou and Martin Rahm and Anton Frisk Kockum and Simon Olsson },
  journal={arXiv preprint arXiv:2507.01726},
  year={ 2025 }
}
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