Saved in:
Bibliographic Details
Main Authors: Bonanno, Claudio, Bulgarelli, Andrea, Cellini, Elia, Nada, Alessandro, Panfalone, Dario, Vadacchino, Davide, Verzichelli, Lorenzo
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.20708
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908794034847744
author Bonanno, Claudio
Bulgarelli, Andrea
Cellini, Elia
Nada, Alessandro
Panfalone, Dario
Vadacchino, Davide
Verzichelli, Lorenzo
author_facet Bonanno, Claudio
Bulgarelli, Andrea
Cellini, Elia
Nada, Alessandro
Panfalone, Dario
Vadacchino, Davide
Verzichelli, Lorenzo
contents As lattice gauge theories with non-trivial topological features are driven towards the continuum limit, standard Markov Chain Monte Carlo simulations suffer for topological freezing, i.e., a dramatic growth of autocorrelations in topological observables. A widely used strategy is the adoption of Open Boundary Conditions (OBC), which restores ergodic sampling of topology but at the price of breaking translation invariance and introducing unphysical boundary artifacts. In this contribution we summarize a scalable, exact flow-based strategy to remove them by transporting configurations from a prior with a OBC defect to a fully periodic ensemble, and apply it to 4d SU(3) Yang--Mills theory. The method is based on a Stochastic Normalizing Flow (SNF) that alternates non-equilibrium Monte Carlo updates with localized, gauge-equivariant defect coupling layers implemented via masked parametric stout smearing. Training is performed by minimizing the average dissipated work, equivalent to a Kullback--Leibler divergence between forward and reverse non-equilibrium path measures, to achieve more reversible trajectories and improved efficiency. We discuss the scaling with the number of degrees of freedom affected by the defect and show that defect SNFs achieve better performances than purely stochastic non-equilibrium methods at comparable cost. Finally, we validate the approach by reproducing reference results for the topological susceptibility.
format Preprint
id arxiv_https___arxiv_org_abs_2601_20708
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A scalable flow-based approach to mitigate topological freezing
Bonanno, Claudio
Bulgarelli, Andrea
Cellini, Elia
Nada, Alessandro
Panfalone, Dario
Vadacchino, Davide
Verzichelli, Lorenzo
High Energy Physics - Lattice
Statistical Mechanics
Machine Learning
High Energy Physics - Phenomenology
As lattice gauge theories with non-trivial topological features are driven towards the continuum limit, standard Markov Chain Monte Carlo simulations suffer for topological freezing, i.e., a dramatic growth of autocorrelations in topological observables. A widely used strategy is the adoption of Open Boundary Conditions (OBC), which restores ergodic sampling of topology but at the price of breaking translation invariance and introducing unphysical boundary artifacts. In this contribution we summarize a scalable, exact flow-based strategy to remove them by transporting configurations from a prior with a OBC defect to a fully periodic ensemble, and apply it to 4d SU(3) Yang--Mills theory. The method is based on a Stochastic Normalizing Flow (SNF) that alternates non-equilibrium Monte Carlo updates with localized, gauge-equivariant defect coupling layers implemented via masked parametric stout smearing. Training is performed by minimizing the average dissipated work, equivalent to a Kullback--Leibler divergence between forward and reverse non-equilibrium path measures, to achieve more reversible trajectories and improved efficiency. We discuss the scaling with the number of degrees of freedom affected by the defect and show that defect SNFs achieve better performances than purely stochastic non-equilibrium methods at comparable cost. Finally, we validate the approach by reproducing reference results for the topological susceptibility.
title A scalable flow-based approach to mitigate topological freezing
topic High Energy Physics - Lattice
Statistical Mechanics
Machine Learning
High Energy Physics - Phenomenology
url https://arxiv.org/abs/2601.20708