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      Tensor Networks for Lattice Gauge Theories beyond one dimension: a Roadmap

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          Abstract

          Tensor network methods are a class of numerical tools and algorithms to study many-body quantum systems in and out of equilibrium, based on tailored variational wave functions. They have found significant applications in simulating lattice gauge theories approaching relevant problems in high-energy physics. Compared to Monte Carlo methods, they do not suffer from the sign problem, allowing them to explore challenging regimes such as finite chemical potentials and real-time dynamics. Further development is required to tackle fundamental challenges, such as accessing continuum limits or computations of large-scale quantum chromodynamics. In this work, we review the state-of-the-art of Tensor Network methods and discuss a possible roadmap for algorithmic development and strategies to enhance their capabilities and extend their applicability to open high-energy problems. We provide tailored estimates of the theoretical and computational resource scaling for attacking large-scale lattice gauge theories.

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          Author and article information

          Journal
          03 July 2024
          Article
          2407.03058
          e0d25570-c997-420a-b633-045d2b787ec9

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          14 pages, 6 figures
          hep-lat cond-mat.str-el hep-th physics.comp-ph quant-ph

          Condensed matter,Quantum physics & Field theory,High energy & Particle physics,Mathematical & Computational physics

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