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UniSim: A Unified Simulator for Time-Coarsened Dynamics of Biomolecules

About

Molecular Dynamics (MD) simulations are essential for understanding the atomic-level behavior of molecular systems, giving insights into their transitions and interactions. However, classical MD techniques are limited by the trade-off between accuracy and efficiency, while recent deep learning-based improvements have mostly focused on single-domain molecules, lacking transferability to unfamiliar molecular systems. Therefore, we propose \textbf{Uni}fied \textbf{Sim}ulator (UniSim), which leverages cross-domain knowledge to enhance the understanding of atomic interactions. First, we employ a multi-head pretraining approach to learn a unified atomic representation model from a large and diverse set of molecular data. Then, based on the stochastic interpolant framework, we learn the state transition patterns over long timesteps from MD trajectories, and introduce a force guidance module for rapidly adapting to different chemical environments. Our experiments demonstrate that UniSim achieves highly competitive performance across small molecules, peptides, and proteins.

Ziyang Yu, Wenbing Huang, Yang Liu• 2025

Related benchmarks

TaskDatasetResultRank
Trajectory GenerationATLAS 14 protein monomers (test)
JSD (Rg)0.538
6
Protein-ligand trajectory generationMISATO (test)
EMD (Ligand)0.196
3
Trajectory GenerationmdCATH (test)
Decorrelation (TIC0)0.2
2
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