Abstract
This article aims to summarize recent and ongoing efforts to simulate continuous-variable quantum systems using flow-based variational quantum Monte Carlo techniques, focusing for pedagogical purposes on the example of bosons in the field amplitude (quadrature) basis. Particular emphasis is placed on the variational real- and imaginary-time evolution problems, carefully reviewing the stochastic estimation of the time-dependent variational principles and their relationship with information geometry. Some practical instructions are provided to guide the implementation of a PyTorch code. The review is intended to be accessible to researchers interested in machine learning and quantum information science.
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Stokes, J., Chen, B., & Veerapaneni, S. (2023, June 1). Numerical and geometrical aspects of flow-based variational quantum Monte Carlo. Machine Learning: Science and Technology. Institute of Physics. https://doi.org/10.1088/2632-2153/acc8b9
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