“Dividing and Conquering” and “Caching” in Molecular Modeling

Molecular modeling is widely utilized in subjects including but not limited to physics, chemistry, biology, materials science and engineering. Impressive progress has been made in development of theories, algorithms and software packages. To divide and conquer, and to cache intermediate results have...

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Main Authors: Xiaoyong Cao, Pu Tian
Format: Article
Language:English
Published: MDPI AG 2021-05-01
Series:International Journal of Molecular Sciences
Subjects:
Online Access:https://www.mdpi.com/1422-0067/22/9/5053
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spelling doaj-b9907fa0cc6a4b12821632f1f6a726df2021-05-31T23:37:45ZengMDPI AGInternational Journal of Molecular Sciences1661-65961422-00672021-05-01225053505310.3390/ijms22095053“Dividing and Conquering” and “Caching” in Molecular ModelingXiaoyong Cao0Pu Tian1School of Life Sciences, Jilin University, Changchun 130012, ChinaSchool of Life Sciences, Jilin University, Changchun 130012, ChinaMolecular modeling is widely utilized in subjects including but not limited to physics, chemistry, biology, materials science and engineering. Impressive progress has been made in development of theories, algorithms and software packages. To divide and conquer, and to cache intermediate results have been long standing principles in development of algorithms. Not surprisingly, most important methodological advancements in more than half century of molecular modeling are various implementations of these two fundamental principles. In the mainstream classical computational molecular science, tremendous efforts have been invested on two lines of algorithm development. The first is coarse graining, which is to represent multiple basic particles in higher resolution modeling as a single larger and softer particle in lower resolution counterpart, with resulting force fields of partial transferability at the expense of some information loss. The second is enhanced sampling, which realizes “dividing and conquering” and/or “caching” in configurational space with focus either on reaction coordinates and collective variables as in metadynamics and related algorithms, or on the transition matrix and state discretization as in Markov state models. For this line of algorithms, spatial resolution is maintained but results are not transferable. Deep learning has been utilized to realize more efficient and accurate ways of “dividing and conquering” and “caching” along these two lines of algorithmic research. We proposed and demonstrated the local free energy landscape approach, a new framework for classical computational molecular science. This framework is based on a third class of algorithm that facilitates molecular modeling through partially transferable in resolution “caching” of distributions for local clusters of molecular degrees of freedom. Differences, connections and potential interactions among these three algorithmic directions are discussed, with the hope to stimulate development of more elegant, efficient and reliable formulations and algorithms for “dividing and conquering” and “caching” in complex molecular systems.https://www.mdpi.com/1422-0067/22/9/5053molecular modelingmultiscalecoarse grainingmolecular dynamics simulationMonte Carlo simulationforce fields
collection DOAJ
language English
format Article
sources DOAJ
author Xiaoyong Cao
Pu Tian
spellingShingle Xiaoyong Cao
Pu Tian
“Dividing and Conquering” and “Caching” in Molecular Modeling
International Journal of Molecular Sciences
molecular modeling
multiscale
coarse graining
molecular dynamics simulation
Monte Carlo simulation
force fields
author_facet Xiaoyong Cao
Pu Tian
author_sort Xiaoyong Cao
title “Dividing and Conquering” and “Caching” in Molecular Modeling
title_short “Dividing and Conquering” and “Caching” in Molecular Modeling
title_full “Dividing and Conquering” and “Caching” in Molecular Modeling
title_fullStr “Dividing and Conquering” and “Caching” in Molecular Modeling
title_full_unstemmed “Dividing and Conquering” and “Caching” in Molecular Modeling
title_sort “dividing and conquering” and “caching” in molecular modeling
publisher MDPI AG
series International Journal of Molecular Sciences
issn 1661-6596
1422-0067
publishDate 2021-05-01
description Molecular modeling is widely utilized in subjects including but not limited to physics, chemistry, biology, materials science and engineering. Impressive progress has been made in development of theories, algorithms and software packages. To divide and conquer, and to cache intermediate results have been long standing principles in development of algorithms. Not surprisingly, most important methodological advancements in more than half century of molecular modeling are various implementations of these two fundamental principles. In the mainstream classical computational molecular science, tremendous efforts have been invested on two lines of algorithm development. The first is coarse graining, which is to represent multiple basic particles in higher resolution modeling as a single larger and softer particle in lower resolution counterpart, with resulting force fields of partial transferability at the expense of some information loss. The second is enhanced sampling, which realizes “dividing and conquering” and/or “caching” in configurational space with focus either on reaction coordinates and collective variables as in metadynamics and related algorithms, or on the transition matrix and state discretization as in Markov state models. For this line of algorithms, spatial resolution is maintained but results are not transferable. Deep learning has been utilized to realize more efficient and accurate ways of “dividing and conquering” and “caching” along these two lines of algorithmic research. We proposed and demonstrated the local free energy landscape approach, a new framework for classical computational molecular science. This framework is based on a third class of algorithm that facilitates molecular modeling through partially transferable in resolution “caching” of distributions for local clusters of molecular degrees of freedom. Differences, connections and potential interactions among these three algorithmic directions are discussed, with the hope to stimulate development of more elegant, efficient and reliable formulations and algorithms for “dividing and conquering” and “caching” in complex molecular systems.
topic molecular modeling
multiscale
coarse graining
molecular dynamics simulation
Monte Carlo simulation
force fields
url https://www.mdpi.com/1422-0067/22/9/5053
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