Filter Results
Related Organization
- Biological and Environmental Systems Science Directorate (23)
- Computing and Computational Sciences Directorate (35)
- Energy Science and Technology Directorate
(217)
- Fusion and Fission Energy and Science Directorate (21)
- Isotope Science and Enrichment Directorate (6)
- National Security Sciences Directorate (17)
- Neutron Sciences Directorate (11)
- Physical Sciences Directorate (128)
- User Facilities (27)
- (-) Information Technology Services Directorate (2)
Researcher
- Rama K Vasudevan
- Sergei V Kalinin
- Yongtao Liu
- Kevin M Roccapriore
- Maxim A Ziatdinov
- Singanallur Venkatakrishnan
- Amir K Ziabari
- Diana E Hun
- Kyle Kelley
- Philip Bingham
- Philip Boudreaux
- Ryan Dehoff
- Stephen M Killough
- Vincent Paquit
- Anton Ievlev
- Arpan Biswas
- Bryan Maldonado Puente
- Corey Cooke
- Gerd Duscher
- Gina Accawi
- Gurneesh Jatana
- Jason Jarnagin
- Kevin Spakes
- Liam Collins
- Lilian V Swann
- Mahshid Ahmadi-Kalinina
- Mark M Root
- Mark Provo II
- Marti Checa Nualart
- Michael Kirka
- Neus Domingo Marimon
- Nolan Hayes
- Obaid Rahman
- Olga S Ovchinnikova
- Peter Wang
- Rob Root
- Ryan Kerekes
- Sai Mani Prudhvi Valleti
- Sally Ghanem
- Sam Hollifield
- Stephen Jesse
- Sumner Harris
- Utkarsh Pratiush

ORNL researchers have developed a deep learning-based approach to rapidly perform high-quality reconstructions from sparse X-ray computed tomography measurements.

Dual-GP addresses limitations in traditional GPBO-driven autonomous experimentation by incorporating an additional surrogate observer and allowing human oversight, this technique improves optimization efficiency via data quality assessment and adaptability to unanticipated exp

The ever-changing cellular communication landscape makes it difficult to identify, map, and localize commercial and private cellular base stations (PCBS).

We have been working to adapt background oriented schlieren (BOS) imaging to directly visualize building leakage, which is fast and easy.

The invention introduces a novel, customizable method to create, manipulate, and erase polar topological structures in ferroelectric materials using atomic force microscopy.

Scanning transmission electron microscopes are useful for a variety of applications. Atomic defects in materials are critical for areas such as quantum photonics, magnetic storage, and catalysis.

A human-in-the-loop machine learning (hML) technology potentially enhances experimental workflows by integrating human expertise with AI automation.

The scanning transmission electron microscope (STEM) provides unprecedented spatial resolution and is critical for many applications, primarily for imaging matter at the atomic and nanoscales and obtaining spectroscopic information at similar length scales.

This invention utilizes new techniques in machine learning to accelerate the training of ML-based communication receivers.