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Researcher
- Michael Kirka
- Rangasayee Kannan
- Ryan Dehoff
- Adam Stevens
- Christopher Ledford
- Peeyush Nandwana
- Alice Perrin
- Amir K Ziabari
- Beth L Armstrong
- Brian Post
- Corson Cramer
- Debangshu Mukherjee
- Fred List III
- James Klett
- Keith Carver
- Md Inzamam Ul Haque
- Nate See
- Olga S Ovchinnikova
- Patxi Fernandez-Zelaia
- Philip Bingham
- Prashant Jain
- Richard Howard
- Roger G Miller
- Sarah Graham
- Singanallur Venkatakrishnan
- Steve Bullock
- Sudarsanam Babu
- Thomas Butcher
- Trevor Aguirre
- Vincent Paquit
- William Peter
- Yan-Ru Lin
- Ying Yang
- Yukinori Yamamoto

A pressure burst feature has been designed and demonstrated for relieving potentially hazardous excess pressure within irradiation capsules used in the ORNL High Flux Isotope Reactor (HFIR).

A novel approach is presented herein to improve time to onset of natural convection stemming from fuel element porosity during a failure mode of a nuclear reactor.
Red mud residue is an industrial waste product generated during the processing of bauxite ore to extract alumina for the steelmaking industry. Red mud is rich in minerals in bauxite like iron and aluminum oxide, but also heavy metals, including arsenic and mercury.

High strength, oxidation resistant refractory alloys are difficult to fabricate for commercial use in extreme environments.

This technology aims to provide and integrated and oxidation resistant cladding or coating onto carbon-based composites in seconds.

Simurgh revolutionizes industrial CT imaging with AI, enhancing speed and accuracy in nondestructive testing for complex parts, reducing costs.

This innovative approach combines optical and spectral imaging data via machine learning to accurately predict cancer labels directly from tissue images.