Using Machine Learning to Find New Density Functionals (original) (raw)

A Deep Dive into Machine Learning Density Functional Theory for Materials Science and Chemistry

Michael Bussmann

2021

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Dataset and scripts for A Deep Dive into Machine Learning Density Functional Theory for Materials Science and Chemistry

Michael Bussmann

2021

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Automatic convergence and machine learning predictions of Monkhorst-Pack k-points and plane-wave cut-off in density functional theory

Francesca Tavazza

arXiv (Cornell University), 2018

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From DFT to machine learning: recent approaches to materials science–a review

Claudio Padilha

Journal of Physics: Materials, 2019

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xiaoxun gong

Nature Computational Science

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Tamar Yovell

2022

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Accelerating Finite-temperature Kohn-Sham Density Functional Theory\ with Deep Neural Networks

Aidan Thompson

2020

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Theoretical prediction of properties of atomistic systems: Density functional theory and machine learning

Alexander Lindmaa

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Machine Learning Methods to Predict Density Functional Theory B3LYP Energies of HOMO and LUMO Orbitals

Florbela Pereira

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Machine learning for the prediction of molecular dipole moments obtained by density functional theory

Florbela Pereira

Journal of cheminformatics, 2018

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Machine Learned Synthesizability Predictions Aided by Density Functional Theory

Suchismita sarker

2022

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Wiktor Pronobis

The European Physical Journal B, 2018

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Opportunities and Challenges for Machine Learning in Materials Science

Ms. KANUPRIYA KHANDELWAL

Annual Review of Materials Research, 2020

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Matthias Rupp

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Machine learning of ab-initio energy landscapes for crystal structure predictions

joshua gabriel

Computational Materials Science, 2018

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Discovery of materials with extreme work functions by high-throughput density functional theory and machine learning

Evan Ronald Antoniuk

arXiv (Cornell University), 2020

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Machine learning of molecular electronic properties in chemical compound space

O. Von Lilienfeld, Matthias Rupp

New Journal of Physics, 2013

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Density Functional Theory and Deep-learning to Accelerate Data Analytics in Scanning Tunneling Microscopy

Kamal Choudhary

2020

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Machine learning based prediction of the electronic structure of quasi-one-dimensional materials under strain

Hsuan Ming Yu

2022

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Critical assessment of machine-learned repulsive potentials for the density functional based tight-binding method: A case study for pure silicon

Tristan Albaret

The Journal of Chemical Physics, 2022

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Machine-learning free-energy functionals using density profiles from simulations

René van Roij

APL Materials, 2021

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Efficient Prediction of Structural and Electronic Properties of Hybrid 2D Materials Using Complementary DFT and Machine Learning Approaches

Dave Winkler

Advanced Theory and Simulations, 2018

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Machine Learning the Quantum-Chemical Properties of Metal–Organic Frameworks for Accelerated Materials Discovery with a New Electronic Structure Database

Debmalya Ray

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Density Functional Theory Methods for Computing and Predicting Mechanical Properties

Bryan M Wong

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Realizing the potentials of density functional theory (DFT) and of the materials genome initiative (MGI)

Yacouba Diakite

MRS Advances, 2023

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Machine learning enabled discovery of application dependent design principles for two-dimensional materials

Victor Venturi

Machine Learning: Science and Technology, 2020

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Finding Nature's Missing Ternary Oxide Compounds Using Machine Learning and Density Functional Theory

Geoffroy Hautier

Chemistry of …, 2010

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Electronic Density Functional Theory

john dobson

Springer eBooks, 1998

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Machine learning for condensed matter physics

Ramón Castañeda-Priego

Journal of Physics: Condensed Matter, 2020

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Toward machine learning for microscopic mechanisms: A formula search for crystal structure stability based on atomic properties

Loriano Storchi

Journal of Applied Physics, 2022

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DScribe: Library of descriptors for machine learning in materials science

Eiaki Morooka

Computer Physics Communications

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Including crystal structure attributes in machine learning models of formation energies via Voronoi tessellations

amar krishna

Physical Review B, 2017

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Accelerated Prediction of Atomically Precise Cluster Structures Using On-the-fly Machine Learning

Sam Norwood

2021

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Evolving the Materials Genome: How Machine Learning Is Fueling the Next Generation of Materials Discovery

Changwon Suh

Annual Review of Materials Research

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Machine learning meets condensed matter

Eric Howard

The Startup, 2020

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