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      EZFF: Python Library for Multi-Objective Parameterization and Uncertainty Quantification of Interatomic Forcefields for Molecular Dynamics

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          Abstract

          Parameterization of interatomic forcefields is a necessary first step in performing molecular dynamics simulations. This is a non-trivial global optimization problem involving quantification of multiple empirical variables against one or more properties. We present EZFF, a lightweight Python library for parameterization of several types of interatomic forcefields implemented in several molecular dynamics engines against multiple objectives using genetic-algorithm-based global optimization methods. The EZFF scheme provides unique functionality such as the parameterization of hybrid forcefields composed of multiple forcefield interactions as well as built-in quantification of uncertainty in forcefield parameters and can be easily extended to other forcefield functional forms as well as MD engines.

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          Author and article information

          Journal
          30 September 2020
          Article
          2009.14470
          84275529-b2b8-449b-8f70-cc9a37f90a3b

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

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          Custom metadata
          physics.comp-ph cond-mat.mtrl-sci

          Condensed matter,Mathematical & Computational physics
          Condensed matter, Mathematical & Computational physics

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