1
Fast and Uncertainty-Aware Directional Message Passing for Non-Equilibrium Molecules
2
Theory-Guided Machine Learning Finds Geometric Structure-Property Relationships for Chemisorption on Subsurface Alloys
3
Relevance of Rotationally Equivariant Convolutions for Predicting Molecular Properties
4
A community-powered search of machine learning strategy space to find NMR property prediction models
5
Extended tight‐binding quantum chemistry methods
6
Recursive evaluation and iterative contraction of N-body equivariant features.
7
LOBSTER: Local orbital projections, atomic charges, and chemical‐bonding analysis from projector‐augmented‐wave‐based density‐functional theory
8
Reinforcement Learning and Graph Embedding for Binary Truss Topology Optimization Under Stress and Displacement Constraints
9
Progress in Computational and Machine‐Learning Methods for Heterogeneous Small‐Molecule Activation
10
Practical Deep-Learning Representation for Fast Heterogeneous Catalyst Screening.
11
Directional Message Passing for Molecular Graphs
12
Machine Learning for Catalysis Informatics: Recent Applications and Prospects
13
A Critical Review of Machine Learning of Energy Materials
14
Machine Learning in Thermodynamics: Prediction of Activity Coefficients by Matrix Completion.
15
Artificial Intelligence to Accelerate the Discovery of N2 Electroreduction Catalysts
16
Methods for comparing uncertainty quantifications for material property predictions
17
PyTorch: An Imperative Style, High-Performance Deep Learning Library
18
Machine-learned metrics for predicting the likelihood of success in materials discovery
19
Exploring chemical compound space with quantum-based machine learning
20
A High-Throughput Solver for Marginalized Graph Kernels on GPU
21
Non-iterative structural topology optimization using deep learning
22
“Inverting” X-ray Absorption Spectra of Catalysts by Machine Learning in Search for Activity Descriptors
23
An Interactive Structural Optimization of Space Frame Structures Using Machine Learning
24
Machine learning for predicting thermodynamic properties of pure fluids and their mixtures
25
Towards fast and reliable potential energy surfaces for metallic Pt clusters by hierarchical delta neural networks.
26
Recent advances and applications of machine learning in solid-state materials science
27
Machine learning for the modeling of interfaces in energy storage and conversion materials
28
Predicting charge density distribution of materials using a local-environment-based graph convolutional network
29
Machine learning for renewable energy materials
30
A Robust Non-Self-Consistent Tight-Binding Quantum Chemistry Method for large Molecules
31
Designing compact training sets for data-driven molecular property prediction through optimal exploitation and exploration
32
Machine Learning for Computational Heterogeneous Catalysis
33
Progress in Accurate Chemical Kinetic Modeling, Simulations, and Parameter Estimation for Heterogeneous Catalysis
34
Cormorant: Covariant Molecular Neural Networks
35
High-throughput calculations of catalytic properties of bimetallic alloy surfaces
36
Catalysis-Hub.org, an open electronic structure database for surface reactions
37
Convolutional Neural Network of Atomic Surface structures to Predict Binding Energies For High-throughput Screening of Catalysts.
38
Fast Graph Representation Learning with PyTorch Geometric
39
Completing density functional theory by machine learning hidden messages from molecules
40
High-Entropy Alloys as a Discovery Platform for Electrocatalysis
41
An electronic structure descriptor for oxygen reactivity at metal and metal-oxide surfaces
42
Beyond Scaling Relations for the Description of Catalytic Materials
43
Solving the electronic structure problem with machine learning
44
The Rise of Catalyst Informatics: Towards Catalyst Genomics
45
Graph Theory Approach to High-Throughput Surface Adsorption Structure Generation.
46
Prediction of Atomization Energy Using Graph Kernel and Active Learning
47
Can machine learning identify the next high-temperature superconductor? Examining extrapolation performance for materials discovery
48
Toward artificial intelligence in catalysis
49
Active learning across intermetallics to guide discovery of electrocatalysts for CO2 reduction and H2 evolution
50
Thermochemistry of gas-phase and surface species via LASSO-assisted subgraph selection
51
The fundamentals of quantum machine learning
52
Machine learning for heterogeneous catalyst design and discovery
53
Extracting Knowledge from Data through Catalysis Informatics
54
Machine Learning Prediction of Heat Capacity for Solid Inorganics
55
Accelerating the discovery of materials for clean energy in the era of smart automation
56
Active learning with non-ab initio input features toward efficient CO2 reduction catalysts
57
Machine learning in catalysis
58
Metastable Structures in Cluster Catalysis from First-Principles: Structural Ensemble in Reaction Conditions and Metastability Triggered Reactivity.
59
High-throughput screening of bimetallic catalysts enabled by machine learning
60
Crystal Graph Convolutional Neural Networks for an Accurate and Interpretable Prediction of Material Properties.
61
Application of Artificial Neural Networks for Catalysis: A Review
62
Representation Learning on Graphs: Methods and Applications
63
The atomic simulation environment-a Python library for working with atoms.
64
SchNet: A continuous-filter convolutional neural network for modeling quantum interactions
65
Neural network predictions of oxygen interactions on a dynamic Pd surface
66
Orbitalwise Coordination Number for Predicting Adsorption Properties of Metal Nanocatalysts.
67
Perspective: Machine learning potentials for atomistic simulations.
68
Amp: A modular approach to machine learning in atomistic simulations
69
Acceleration of saddle-point searches with machine learning.
70
The Open Quantum Materials Database (OQMD): assessing the accuracy of DFT formation energies
71
Deep Residual Learning for Image Recognition
72
VQA: Visual Question Answering
73
Librispeech: An ASR corpus based on public domain audio books
74
Fundamental Concepts in Heterogeneous Catalysis
75
Quantum chemistry structures and properties of 134 kilo molecules
76
Fast prediction of adsorption properties for platinum nanocatalysts with generalized coordination numbers.
77
Commentary: The Materials Project: A materials genome approach to accelerating materials innovation
79
Python Materials Genomics (pymatgen): A robust, open-source python library for materials analysis
80
AFLOWLIB.ORG: A distributed materials properties repository from high-throughput ab initio calculations
81
CatApp: a web application for surface chemistry and heterogeneous catalysis.
82
Crystal orbital Hamilton population (COHP) analysis as projected from plane-wave basis sets.
83
Gaussian approximation potentials: the accuracy of quantum mechanics, without the electrons.
84
ImageNet: A large-scale hierarchical image database
85
Simultaneous fitting of a potential-energy surface and its corresponding force fields using feedforward neural networks.
86
A grid-based Bader analysis algorithm without lattice bias
87
Density functional theory
88
Scaling properties of adsorption energies for hydrogen-containing molecules on transition-metal surfaces.
89
Improved grid‐based algorithm for Bader charge allocation
90
A fast and robust algorithm for Bader decomposition of charge density
91
Improved adsorption energetics within density-functional theory using revised Perdew-Burke-Ernzerhof functionals
92
From ultrasoft pseudopotentials to the projector augmented-wave method
93
Generalized Gradient Approximation Made Simple.
94
Efficient iterative schemes for ab initio total-energy calculations using a plane-wave basis set.
95
Efficiency of ab-initio total energy calculations for metals and semiconductors using a plane-wave basis set
96
Atoms in Molecules — a Quantum Theory
97
Projector augmented-wave method.
98
Ab initio molecular-dynamics simulation of the liquid-metal-amorphous-semiconductor transition in germanium.
99
Solution of Schrödinger's equation for large systems.
100
On the limited memory BFGS method for large scale optimization
101
SPECIAL POINTS FOR BRILLOUIN-ZONE INTEGRATIONS
103
Impact: Design With All Senses
104
(2) Annual Energy Outlook 2020
105
Energy Information Administration
106
Global Energy Outlook 2020: Energy Transition or Energy Addition? With Commentary on Implications of the COVID-19 Pandemic; 2020
107
Language Models are Unsupervised Multitask Learners
109
ELECTROCHEMISTRY: Combining theory and experiment in electrocatalysis: Insights into materials design
111
Atoms in molecules : a quantum theory
112
Numerical Recipes, Cambridge
114
• 81 systems removed from the original 1.28M systems due to convergence issues later discovered
115
Some systems removed from the validation and test splits due to errors found in their initial placements and/or improper split classification
116
• IS2RE models retrained and metrics reevaluated
117
ADwT metrics re-evaluated
118
DimeNet 90 results replaced with DimeNet++. 89,90 DimeNet++ is more memory-efficient and performs slightly better
119
• Force cosine similarity added as an additional S2EF metric
120
IS2RE, and IS2RS metrics were reevaluated with the updated spits