Federico Errica
Federico Errica
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Paper accepted at npj Computational Materials!!
Our work on uncertainty-biased molecular dynamics for machine-learning interatomic potentials has been accepted at the npj Computational Materials! Great team achievement led by Viktor!!
Federico Errica
Apr 29, 2024
1 min read
Research
Uncertainty-biased molecular dynamics for learning uniformly accurate interatomic potentials
In this paper we combine uncertainty-biased molecular dynamics with active learning to show how we can learn machine learning interatomic potential (MLIP) models that are more robust to predictions on extrapolative regions.
Viktor Zaverkin
,
David Holzmüller
,
Henrik Christiansen
,
Federico Errica
,
Francesco Alesiani
,
Makoto Takamoto
,
Mathias Niepert
,
Johannes Kästner
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Paper accepted at JCP!!
Our work on learning to accelerate Hamiltonian Monte Carlo simulations has been accepted at the Journal of Chemical Physics! Shout out to my colleagues Henrik and Francesco for the hard work =)
Federico Errica
Nov 27, 2023
1 min read
Research
Paper accepted at Frontiers Molecular Biosciences!
Approximating information loss on chemical molecules
Federico Errica
Mar 9, 2021
1 min read
Research
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