Diffusion models learn distributions generated by complex Langevin dynamics
Habibi, Diaa E., Aarts, Gert, Wang, Lingxiao, Zhou, Kai
–arXiv.org Artificial Intelligence
The probability distribution effectively sampled by a complex Langevin process for theories with a sign problem is not known a priori and notoriously hard to understand. Diffusion models, a class of generative AI, can learn distributions from data. In this contribution, we explore the ability of diffusion models to learn the distributions created by a complex Langevin process.
arXiv.org Artificial Intelligence
Dec-2-2024
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