Accelerated Simulations of Molecular Systems through Learning of their
Effective Dynamics
- URL: http://arxiv.org/abs/2102.08810v1
- Date: Wed, 17 Feb 2021 15:15:37 GMT
- Title: Accelerated Simulations of Molecular Systems through Learning of their
Effective Dynamics
- Authors: Pantelis R. Vlachas, Julija Zavadlav, Matej Praprotnik, Petros
Koumoutsakos
- Abstract summary: We present a novel framework to advance simulation by up to three orders of magnitude.
LED learns the effective dynamics of molecular systems.
We demonstrate the effectiveness of LED in the M"ueller-Brown potential, the Trp Cage protein, and the alanine dipeptide.
- Score: 4.276697874428501
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Simulations are vital for understanding and predicting the evolution of
complex molecular systems. However, despite advances in algorithms and special
purpose hardware, accessing the timescales necessary to capture the structural
evolution of bio-molecules remains a daunting task. In this work we present a
novel framework to advance simulation timescales by up to three orders of
magnitude, by learning the effective dynamics (LED) of molecular systems. LED
augments the equation-free methodology by employing a probabilistic mapping
between coarse and fine scales using mixture density network (MDN) autoencoders
and evolves the non-Markovian latent dynamics using long short-term memory
MDNs. We demonstrate the effectiveness of LED in the M\"ueller-Brown potential,
the Trp Cage protein, and the alanine dipeptide. LED identifies explainable
reduced-order representations and can generate, at any instant, the respective
all-atom molecular trajectories. We believe that the proposed framework
provides a dramatic increase to simulation capabilities and opens new horizons
for the effective modeling of complex molecular systems.
Related papers
- Pre-trained Molecular Language Models with Random Functional Group Masking [54.900360309677794]
We propose a SMILES-based underlineem Molecular underlineem Language underlineem Model, which randomly masking SMILES subsequences corresponding to specific molecular atoms.
This technique aims to compel the model to better infer molecular structures and properties, thus enhancing its predictive capabilities.
arXiv Detail & Related papers (2024-11-03T01:56:15Z) - Active learning of Boltzmann samplers and potential energies with quantum mechanical accuracy [1.7633275579210346]
We develop an approach combining enhanced sampling with deep generative models and active learning of a machine learning potential.
We apply this method to study the isomerization of an ultrasmall silver nanocluster, belonging to a set of systems with diverse applications in the fields of medicine and biology.
arXiv Detail & Related papers (2024-01-29T19:01:31Z) - A Multi-Grained Symmetric Differential Equation Model for Learning Protein-Ligand Binding Dynamics [73.35846234413611]
In drug discovery, molecular dynamics (MD) simulation provides a powerful tool for predicting binding affinities, estimating transport properties, and exploring pocket sites.
We propose NeuralMD, the first machine learning (ML) surrogate that can facilitate numerical MD and provide accurate simulations in protein-ligand binding dynamics.
We demonstrate the efficiency and effectiveness of NeuralMD, achieving over 1K$times$ speedup compared to standard numerical MD simulations.
arXiv Detail & Related papers (2024-01-26T09:35:17Z) - Towards Predicting Equilibrium Distributions for Molecular Systems with
Deep Learning [60.02391969049972]
We introduce a novel deep learning framework, called Distributional Graphormer (DiG), in an attempt to predict the equilibrium distribution of molecular systems.
DiG employs deep neural networks to transform a simple distribution towards the equilibrium distribution, conditioned on a descriptor of a molecular system.
arXiv Detail & Related papers (2023-06-08T17:12:08Z) - Implicit Geometry and Interaction Embeddings Improve Few-Shot Molecular
Property Prediction [53.06671763877109]
We develop molecular embeddings that encode complex molecular characteristics to improve the performance of few-shot molecular property prediction.
Our approach leverages large amounts of synthetic data, namely the results of molecular docking calculations.
On multiple molecular property prediction benchmarks, training from the embedding space substantially improves Multi-Task, MAML, and Prototypical Network few-shot learning performance.
arXiv Detail & Related papers (2023-02-04T01:32:40Z) - Accurate Machine Learned Quantum-Mechanical Force Fields for
Biomolecular Simulations [51.68332623405432]
Molecular dynamics (MD) simulations allow atomistic insights into chemical and biological processes.
Recently, machine learned force fields (MLFFs) emerged as an alternative means to execute MD simulations.
This work proposes a general approach to constructing accurate MLFFs for large-scale molecular simulations.
arXiv Detail & Related papers (2022-05-17T13:08:28Z) - NNP/MM: Accelerating molecular dynamics simulations with machine
learning potentials and molecular mechanic [38.50309739333058]
We introduce an optimized implementation of the hybrid method (NNP/MM), which combines neural network potentials (NNP) and molecular mechanics (MM)
This approach models a portion of the system, such as a small molecule, using NNP while employing MM for the remaining system to boost efficiency.
It has enabled us to increase the simulation speed by 5 times and achieve a combined sampling of one microsecond for each complex, marking the longest simulations ever reported for this class of simulation.
arXiv Detail & Related papers (2022-01-20T10:57:20Z) - Super-resolution in Molecular Dynamics Trajectory Reconstruction with
Bi-Directional Neural Networks [0.0]
We explore different machine learning (ML) methodologies to increase the resolution of molecular dynamics trajectories on-demand within a post-processing step.
We have found that Bi-LSTMs are the best performing models; by utilizing the local time-symmetry of thermostated trajectories they can even learn long-range correlations and display high robustness to noisy dynamics across molecular complexity.
arXiv Detail & Related papers (2022-01-02T23:00:30Z) - Deep Bayesian Active Learning for Accelerating Stochastic Simulation [74.58219903138301]
Interactive Neural Process (INP) is a deep active learning framework for simulations and with active learning approaches.
For active learning, we propose a novel acquisition function, Latent Information Gain (LIG), calculated in the latent space of NP based models.
The results demonstrate STNP outperforms the baselines in the learning setting and LIG achieves the state-of-the-art for active learning.
arXiv Detail & Related papers (2021-06-05T01:31:51Z) - Molecular Latent Space Simulators [8.274472944075713]
We propose latent space simulators (LSS) to learn kinetic models for continuous all-atom simulation trajectories.
We demonstrate the approach in an application to Trp-protein to produce novel ultra-long synthetic folding trajectories.
arXiv Detail & Related papers (2020-07-01T20:05:27Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.