2000 character limit reached
Tuning HMC parameters with gradients
Published 7 Feb 2024 in hep-lat | (2402.04976v1)
Abstract: We investigate the effectiveness of tuning HMC parameters using information from the gradients of the HMC acceptance probability with respect to the parameters. In particular, the optimization of the trajectory length and parameters for higher order integrators will be studied in the context of pure gauge and dynamical fermion actions.
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