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TorchANI: A Free and Open Source PyTorch-Based Deep Learning Implementation of the ANI Neural Network Potentials

Xiang Gao, Farhad Ramezanghorbani, Olexandr Isayev, Justin S. Smith, Adrián E. Roitberg

2020Journal of Chemical Information and Modeling324 citationsDOI

Abstract

This paper presents TorchANI, a PyTorch-based program for training/inference of ANI (ANAKIN-ME) deep learning models to obtain potential energy surfaces and other physical properties of molecular systems. ANI is an accurate neural network potential originally implemented using C++/CUDA in a program called NeuroChem. Compared with NeuroChem, TorchANI has a design emphasis on being lightweight, user friendly, cross platform, and easy to read and modify for fast prototyping, while allowing acceptable sacrifice on running performance. Because the computation of atomic environmental vectors and atomic neural networks are all implemented using PyTorch operators, TorchANI is able to use PyTorch's autograd engine to automatically compute analytical forces and Hessian matrices, as well as do force training without requiring any additional codes. TorchANI is open-source and freely available on GitHub: https://github.com/aiqm/torchani.

Topics & Concepts

Computer scienceDeep learningHessian matrixArtificial neural networkArtificial intelligenceInferenceComputationSource codeDeep neural networksMachine learningComputational scienceComputer architectureComputer engineeringProgramming languageApplied mathematicsMathematicsMachine Learning in Materials ScienceFuel Cells and Related MaterialsComputational Drug Discovery Methods
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