On the emergence of machine-learning methods in bottom-up coarse-graining
Patrick G. Sahrmann, Gregory A. Voth
Abstract
Machine-learning methods have gained significant attention in the computational chemistry community as a viable approach to molecular modeling and analysis. Recent successes in utilizing neural networks to learn atomistic force-fields which 'coarse-grain' electronic structure have inspired similar applications to the thermodynamic coarse-graining of chemical and biological systems. In this review, we discuss the current viability and challenges in using machine-learning methods to represent coarse-grained force-fields, as well as the utility of machine-learning in various aspects of coarse-grained modeling.
Topics & Concepts
GranularityTop-down and bottom-up designComputer scienceArtificial intelligenceSoftware engineeringOperating systemMachine Learning in Materials ScienceBlock Copolymer Self-AssemblyEnhanced Oil Recovery Techniques