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Sampling QCD field configurations with gauge-equivariant flow models
2023
Proceedings of The 39th International Symposium on Lattice Field Theory — PoS(LATTICE2022)
unpublished
Machine learning methods based on normalizing flows have been shown to address important challenges, such as critical slowing-down and topological freezing, in the sampling of gauge field configurations in simple lattice field theories. A critical question is whether this success will translate to studies of QCD. This Proceedings presents a status update on advances in this area. In particular, it is illustrated how recently developed algorithmic components may be combined to construct
doi:10.22323/1.430.0036
fatcat:w3rrykkhr5b6tdwqyf4gccgci4