nftqcd/fthmc
Flowed HMC for Lattice Gauge Theory
This project helps high-energy physicists and computational scientists studying lattice gauge theory to generate independent field configurations more efficiently. By incorporating learned transformations into the simulation process, it takes lattice field configurations as input and produces a more diverse and independent set of configurations as output. This is for researchers who use Hamiltonian Monte Carlo (HMC) methods in their simulations.
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Use this if you are performing lattice gauge theory simulations and want to accelerate the generation of statistically independent field configurations using advanced sampling techniques.
Not ideal if your research does not involve lattice gauge theory or if you are not familiar with Hamiltonian Monte Carlo (HMC) methods.
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8
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2
Language
Jupyter Notebook
License
MIT
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Last pushed
Dec 20, 2021
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