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)
- Information Technology Services Directorate (2)
- Isotope Science and Enrichment Directorate (6)
- National Security Sciences Directorate (17)
- Neutron Sciences Directorate (11)
- Physical Sciences Directorate (128)
- User Facilities
(27)
Researcher
- Srikanth Yoginath
- Chad Steed
- James J Nutaro
- Junghoon Chae
- Pratishtha Shukla
- Sudip Seal
- Travis Humble
- Alexander I Wiechert
- Ali Passian
- Andrew Lupini
- Bryan Lim
- Costas Tsouris
- Debangshu Mukherjee
- Gs Jung
- Gyoung Gug Jang
- Harper Jordan
- Joel Asiamah
- Joel Dawson
- Md Inzamam Ul Haque
- Nance Ericson
- Olga S Ovchinnikova
- Ondrej Dyck
- Pablo Moriano Salazar
- Peeyush Nandwana
- Radu Custelcean
- Rangasayee Kannan
- Samudra Dasgupta
- Stephen Jesse
- Tomas Grejtak
- Varisara Tansakul
- Yiyu Wang

Among the methods for point source carbon capture, the absorption of CO2 using aqueous amines (namely MEA) from the post-combustion gas stream is currently considered the most promising.

A new nanostructured bainitic steel with accelerated kinetics for bainite formation at 200 C was designed using a coupled CALPHAD, machine learning, and data mining approach.

Digital twins (DTs) have emerged as essential tools for monitoring, predicting, and optimizing physical systems by using real-time data.

Simulation cloning is a technique in which dynamically cloned simulations’ state spaces differ from their parent simulation due to intervening events.

The QVis Quantum Device Circuit Optimization Module gives users the ability to map a circuit to a specific quantum devices based on the device specifications.

QVis is a visual analytics tool that helps uncover temporal and multivariate variations in noise properties of quantum devices.

This technology provides a device, platform and method of fabrication of new atomically tailored materials. This “synthescope” is a scanning transmission electron microscope (STEM) transformed into an atomic-scale material manipulation platform.

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