Publications of Thomas Purcell
All genres
Journal Article (11)
2024
Journal Article
32 (6), 063301 (2024)
Roadmap on data-centric materials science. Modelling and Simulation in Materials Science and Engineering 2023
Journal Article
38 (20), pp. 4477 - 4496 (2023)
Interpretable Machine Learning for Materials Design. Journal of Materials Research
Journal Article
159 (11), 114110 (2023)
Recent advances in the SISSO method and their implementation in the SISSO++ Code. The Journal of Chemical Physics
Journal Article
9, 112 (2023)
Accelerating materials-space exploration for thermal insulators by mapping materials properties via artificial intelligence. npj Computational Materials
Journal Article
130 (23), 236301 (2023)
Anharmonicity in Thermal Insulators: An Analysis from First Principles. Physical Review Letters 2022
Journal Article
129 (5), 0545301 (2022)
Hierarchical Symbolic Regression for Identifying Key Physical Parameters Correlated with Bulk Properties of Perovskites. Physical Review Letters
Journal Article
7 (71), 3960 (2022)
SISSO++: A C++ Implementation of the Sure-Independence Screening and Sparisifying Operator Approach. The Journal of Open Source Software 2021
Journal Article
8, 217 (2021)
OPTIMADE, an API for exchanging materials data. Scientific Data 2020
Journal Article
5 (56), 2671 (2020)
FHI-vibes: Ab Initio Vibrational Simulations. The Journal of Open Source Software
Journal Article
4 (8), 083809 (2020)
Anharmonicity measure for materials. Physical Review Materials 2019
Journal Article
5, 123 (2019)
Parametrically constrained geometry relaxations for high-throughput materials science. npj Computational Materials Talk (7)
2023
Talk
Recent Advances in the SISSO Method and Their Implementation in the SISSO++ Code. NOMAD Workshop on Data-centric Cruising for New and Novel Materials, Mechanisms, and Insights, Kiel, Germany (2023)
Talk
Accelerating the High-Throughput Search for New Thermal Insulators. School on Artificial Intelligence for Materials Science in the Exascale Era, Calonge, Spain (2023)
Talk
Symbolic Regression and Explainable AI. School on Artificial Intelligence for Materials Science in the Exascale Era, Calonge, Spain (2023)
Talk
Accelerating the High-Throughput Search for New Thermal Insulators. CBC Special Departmental Seminar, University of Arizona, Tucson, AZ, USA (2023)
2022
Talk
AI Accelerated Workflows for Finding Thermal Insulators. NOMAD Meeting, Revealing New and Novel Materials, Mechanisms, and Insights (a Perspective), Potsdam, Germany (2022)
Talk
Accelerating the High-Throughput Search for New Thermal Insulators With Symbolic Regression. Overcoming the Global Energy Crisis by Materials Research Regional Series III, Georgia Institute of Technology, Atlanta, GA, USA (2022)
2021
Talk
Machine-Learning Aided Approaches. Workshop, Capturing Anharmonic Vibrational Motion in First-Principles Simulations, Centre Européen de Calcul Atomique et Moléculaire (CECAM), Online Event (2021)
Working Paper (1)
2024
Working Paper
Accelerating the Training and Improving the Reliability of Machine-Learned Interatomic Potentials for Strongly Anharmonic Materials Through Active Learning. (2024)