Overview
Personal Profile
Andrew Glaws is a researcher in applied mathematics in the Computational Science Center at NLR. He joined the lab as a postdoc in January 2019 to work on physics-informed deep learning for energy systems. His research focuses on enhancing scientific research into renewable energy and energy efficient problems using machine learning, artificial intelligence, and other data-driven methods. He has collaborated with domain scientists in a variety of energy-related fields, including wind and solar energy, climate science, buildings energy analysis, bioenergy, and battery technology. Prior to joining NLR, Andrew completed his Ph.D. in computer science at the University of Colorado Boulder, researching the use of parameter reduction methods for computational experiments.
Research Interests
Machine learning and deep learning
Surrogate modeling
Uncertainty quantification and sensitivity analysis
Dimension reduction
Multifidelity methods
Exploratory data/model analysis
Professional Experience
Researcher – Applied Mathematics, NLR (2021–Present)
Postdoctoral Researcher, NLR (2019–2021)
Graduate Research Assistant, University of Colorado Boulder (2017–2018)
Education/Academic Qualification
PhD, Computer Science, University of Colorado Boulder
Bachelor, Mathematics, Vanderbilt University
Bachelor, Physics, Vanderbilt University
Master, Mathematics, Virginia Polytechnic Institute and State University
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Collaborations and Top Research Areas From the Past 5 Years
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Accelerating Discovery of Atomistic Defects via Machine Learning
Guinan, G., Smeaton, M., Egan, H., Glaws, A., Wyatt, B., Anasori, B. & Spurgeon, S., 2025, 1 p. National Laboratory of the Rockies (NLR).Research output: NLR › Poster
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Aerodynamic Sensitivities Over Separable Shape Tensors
Doronina, O., Lee, B., Grey, Z. & Glaws, A., 2025, In: AIAA Journal. 63, 7, 14 p.Research output: Contribution to journal › Article › peer-review
2 Scopus Citations -
Deep Generative Models in Energy System Applications: Review, Challenges, and Future Directions: Article No. 125059
Zhang, X., Glaws, A., Cortiella, A., Emami, P. & King, R., 2025, In: Applied Energy. 380, 35 p.Research output: Contribution to journal › Article › peer-review
22 Scopus Citations -
Describing Point Defect Topology in 2D Energy Materials through Computer Vision
Guinan, G., Smeaton, M., Salvador, A., Egan, H., Glaws, A., Wyatt, B., Anasori, B. & Spurgeon, S., 2025. 2 p.Research output: Contribution to conference › Paper
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Describing Point Defect Topology in 2D Energy Materials Through Computer Vision
Guinan, G., Salvador, A., Smeaton, M., Egan, H., Glaws, A., Wyatt, B., Anasori, B. & Spurgeon, S., 2025, 1 p. National Laboratory of the Rockies (NLR).Research output: NLR › Poster