Abstract
Molecular
simulations are widely applied in the study of chemical and bio-physical
systems of interest. However, the accessible timescales of atomistic
simulations are limited, and extracting equilibrium properties of systems
containing rare events remains challenging. Two distinct strategies are usually
adopted in this regard: either sticking to the atom level and performing enhanced
sampling, or trading details for speed by leveraging coarse-grained models. Although
both strategies are promising, either of them, if adopted individually, exhibits
severe limitations. In this paper we propose a machine-learning approach to
ally these two worlds. In our approach, simulations on different scales are
executed simultaneously and benefit mutually from their cross-talks: Accurate
coarse-grained (CG) models can be inferred from the fine-grained (FG)
simulations; In turn, FG simulations can be boosted by the guidance of CG
models. Our method grounds on unsupervised and reinforcement learning, defined
by a variational and adaptive training objective, and allows end-to-end and
online training of parametric models. Through multiple experiments, we show that
our method is efficient and flexible, and performs well on challenging chemical
and bio-molecular systems.