[en] SchNetPack is a toolbox for the development and application of deep neural networks that predict potential energy surfaces and other quantum-chemical properties of molecules and materials. It contains basic building blocks of atomistic neural networks, manages their training, and provides simple access to common benchmark datasets. This allows for an easy implementation and evaluation of new models. For now, SchNetPack includes implementations of (weighted) atom-centered symmetry functions and the deep tensor neural network SchNet, as well as ready-to-use scripts that allow one to train these models on molecule and material datasets. Based on the PyTorch deep learning framework, SchNetPack allows one to efficiently apply the neural networks to large datasets with millions of reference calculations, as well as parallelize the model across multiple GPUs. Finally, SchNetPack provides an interface to the Atomic Simulation Environment in order to make trained models easily accessible to researchers that are not yet familiar with neural networks.
Disciplines :
Physique
Auteur, co-auteur :
Schütt, Kristof
Kessel, Pan
Gastegger, Michael
Nicoli, Kim
TKATCHENKO, Alexandre ; University of Luxembourg > Faculty of Science, Technology and Communication (FSTC) > Physics and Materials Science Research Unit
Mülller, Klaus-Robert
Co-auteurs externes :
yes
Langue du document :
Anglais
Titre :
SchNetPack: A Deep Learning Toolbox For Atomistic Systems
Date de publication/diffusion :
01 novembre 2019
Titre du périodique :
Journal of Chemical Theory and Computation
ISSN :
1549-9618
eISSN :
1549-9626
Maison d'édition :
American Chemical Society, Etats-Unis - District de Columbia
Volume/Tome :
15
Pagination :
448-455
Peer reviewed :
Peer reviewed vérifié par ORBi
Focus Area :
Physics and Materials Science Computational Sciences