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Quantum neural networks force fields generation

Accurate molecular force fields are of paramount importance for the efficient implementation of molecular dynamics techniques at large scales. In the last decade, machine learning (ML) methods have demonstrated impressive performances in predicting accurate values for energy and forces when trained...

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Detalles Bibliográficos
Autores principales: Kiss, Oriel, Tacchino, Francesco, Vallecorsa, Sofia, Tavernelli, Ivano
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:https://dx.doi.org/10.1088/2632-2153/ac7d3c
http://cds.cern.ch/record/2803698
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author Kiss, Oriel
Tacchino, Francesco
Vallecorsa, Sofia
Tavernelli, Ivano
author_facet Kiss, Oriel
Tacchino, Francesco
Vallecorsa, Sofia
Tavernelli, Ivano
author_sort Kiss, Oriel
collection CERN
description Accurate molecular force fields are of paramount importance for the efficient implementation of molecular dynamics techniques at large scales. In the last decade, machine learning (ML) methods have demonstrated impressive performances in predicting accurate values for energy and forces when trained on finite size ensembles generated with ab initio techniques. At the same time, quantum computers have recently started to offer new viable computational paradigms to tackle such problems. On the one hand, quantum algorithms may notably be used to extend the reach of electronic structure calculations. On the other hand, quantum ML is also emerging as an alternative and promising path to quantum advantage. Here we follow this second route and establish a direct connection between classical and quantum solutions for learning neural network (NN) potentials. To this end, we design a quantum NN architecture and apply it successfully to different molecules of growing complexity. The quantum models exhibit larger effective dimension with respect to classical counterparts and can reach competitive performances, thus pointing towards potential quantum advantages in natural science applications via quantum ML.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
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spelling cern-28036982023-10-15T06:23:36Zdoi:10.1088/2632-2153/ac7d3chttp://cds.cern.ch/record/2803698engKiss, OrielTacchino, FrancescoVallecorsa, SofiaTavernelli, IvanoQuantum neural networks force fields generationphysics.comp-phOther Fields of Physicsphysics.chem-phChemical Physics and Chemistrycs.LGComputing and Computersquant-phGeneral Theoretical PhysicsAccurate molecular force fields are of paramount importance for the efficient implementation of molecular dynamics techniques at large scales. In the last decade, machine learning (ML) methods have demonstrated impressive performances in predicting accurate values for energy and forces when trained on finite size ensembles generated with ab initio techniques. At the same time, quantum computers have recently started to offer new viable computational paradigms to tackle such problems. On the one hand, quantum algorithms may notably be used to extend the reach of electronic structure calculations. On the other hand, quantum ML is also emerging as an alternative and promising path to quantum advantage. Here we follow this second route and establish a direct connection between classical and quantum solutions for learning neural network (NN) potentials. To this end, we design a quantum NN architecture and apply it successfully to different molecules of growing complexity. The quantum models exhibit larger effective dimension with respect to classical counterparts and can reach competitive performances, thus pointing towards potential quantum advantages in natural science applications via quantum ML.Accurate molecular force fields are of paramount importance for the efficient implementation of molecular dynamics techniques at large scales. In the last decade, machine learning methods have demonstrated impressive performances in predicting accurate values for energy and forces when trained on finite size ensembles generated with ab initio techniques. At the same time, quantum computers have recently started to offer new viable computational paradigms to tackle such problems. On the one hand, quantum algorithms may notably be used to extend the reach of electronic structure calculations. On the other hand, quantum machine learning is also emerging as an alternative and promising path to quantum advantage. Here we follow this second route and establish a direct connection between classical and quantum solutions for learning neural network potentials. To this end, we design a quantum neural network architecture and apply it successfully to different molecules of growing complexity. The quantum models exhibit larger effective dimension with respect to classical counterparts and can reach competitive performances, thus pointing towards potential quantum advantages in natural science applications via quantum machine learning.arXiv:2203.04666oai:cds.cern.ch:28036982022-03-09
spellingShingle physics.comp-ph
Other Fields of Physics
physics.chem-ph
Chemical Physics and Chemistry
cs.LG
Computing and Computers
quant-ph
General Theoretical Physics
Kiss, Oriel
Tacchino, Francesco
Vallecorsa, Sofia
Tavernelli, Ivano
Quantum neural networks force fields generation
title Quantum neural networks force fields generation
title_full Quantum neural networks force fields generation
title_fullStr Quantum neural networks force fields generation
title_full_unstemmed Quantum neural networks force fields generation
title_short Quantum neural networks force fields generation
title_sort quantum neural networks force fields generation
topic physics.comp-ph
Other Fields of Physics
physics.chem-ph
Chemical Physics and Chemistry
cs.LG
Computing and Computers
quant-ph
General Theoretical Physics
url https://dx.doi.org/10.1088/2632-2153/ac7d3c
http://cds.cern.ch/record/2803698
work_keys_str_mv AT kissoriel quantumneuralnetworksforcefieldsgeneration
AT tacchinofrancesco quantumneuralnetworksforcefieldsgeneration
AT vallecorsasofia quantumneuralnetworksforcefieldsgeneration
AT tavernelliivano quantumneuralnetworksforcefieldsgeneration