Timewarp: Transferable Acceleration of Molecular Dynamics by Learning Time-Coarsened Dynamics

Abstract

*Molecular dynamics* (MD) simulation is a widely used technique to simulate molecular systems, most commonly at the all-atom resolution where equations of motion are integrated with timesteps on the order of femtoseconds ($1\textrm{fs}=10^{-15}\textrm{s}$). MD is often used to compute equilibrium properties, which requires sampling from an equilibrium distribution such as the Boltzmann distribution. However, many important processes, such as binding and folding, occur over timescales of milliseconds or beyond, and cannot be efficiently sampled with conventional MD.Furthermore, new MD simulations need to be performed for each molecular system studied.We present *Timewarp*, an enhanced sampling method which uses a normalising flow as a proposal distribution in a Markov chain Monte Carlo method targeting the Boltzmann distribution. The flow is trained offline on MD trajectories and learns to make large steps in time, simulating the molecular dynamics of $10^{5} - 10^{6} \textrm{fs}$.Crucially, Timewarp is *transferable* between molecular systems: once trained, we show that it generalises to unseen small peptides (2-4 amino acids) at all-atom resolution, exploring their metastable states and providing wall-clock acceleration of sampling compared to standard MD.Our method constitutes an important step towards general, transferable algorithms for accelerating MD.

Cite

Text

Klein et al. "Timewarp: Transferable Acceleration of Molecular Dynamics by Learning Time-Coarsened Dynamics." Neural Information Processing Systems, 2023.

Markdown

[Klein et al. "Timewarp: Transferable Acceleration of Molecular Dynamics by Learning Time-Coarsened Dynamics." Neural Information Processing Systems, 2023.](https://mlanthology.org/neurips/2023/klein2023neurips-timewarp/)

BibTeX

@inproceedings{klein2023neurips-timewarp,
  title     = {{Timewarp: Transferable Acceleration of Molecular Dynamics by Learning Time-Coarsened Dynamics}},
  author    = {Klein, Leon and Foong, Andrew and Fjelde, Tor and Mlodozeniec, Bruno and Brockschmidt, Marc and Nowozin, Sebastian and Noe, Frank and Tomioka, Ryota},
  booktitle = {Neural Information Processing Systems},
  year      = {2023},
  url       = {https://mlanthology.org/neurips/2023/klein2023neurips-timewarp/}
}