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Emergence of Local Scaling Relations in Absorption Energies on High-Entropy Alloy

Publications npj Computational Materials

Environmental Cell for In Situ X-ray Synchrotron Micro-CT Imaging with Simultaneous Acoustic Measurements

Publications Journal of Synchrotron Radiation

Parametric Model-Order-Reduction Development for Unsteady Convection

Publications Frontiers in Physics

The SENSEI Generic In Situ Interface: Tool and Processing Portability at Scale

Publications In Situ Visualization for Computational Science

A Database of Refractive Indices and Dielectric Constants Auto-generated Using ChemDataExtractor

Publications Scientific Data

A Simulation-Oblivious Data Transport Model for Flexible In Transit Visualization

Publications In Situ Visualization for Computational Science

Physics-Constrained Deep Learning of Nonlinear Normal Modes of Spatiotemporal Fluid Flow Dynamics

Publications Physics of Fluids

Goldstone Boson Scattering with a Light Composite Scalar

Publications Physical Review D

EdgeAI: Machine Learning Via Direct Attached Accelerator for Streaming Data Processing at High Shot Rate X-Ray Free-Electron Lasers

Publications Frontiers in Physics

Applying Machine Learning Methods to Prediction Problems of Lattice Observables

Publications SciPost Physics Proceedings

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