Filter News
Area of Research
- (-) Neutron Science (5)
- (-) Supercomputing (43)
- Advanced Manufacturing (1)
- Biology and Environment (10)
- Clean Energy (21)
- Climate and Environmental Systems (1)
- Computational Engineering (1)
- Computer Science (8)
- Fusion and Fission (7)
- Fusion Energy (7)
- Materials (11)
- Materials for Computing (2)
- National Security (17)
- Nuclear Science and Technology (8)
- Quantum information Science (2)
News Type
News Topics
- (-) Computer Science (44)
- (-) Fusion (1)
- (-) Grid (1)
- (-) Machine Learning (6)
- (-) Security (1)
- 3-D Printing/Advanced Manufacturing (1)
- Advanced Reactors (1)
- Artificial Intelligence (12)
- Big Data (13)
- Bioenergy (4)
- Biology (4)
- Biomedical (13)
- Buildings (1)
- Clean Water (1)
- Climate Change (3)
- Coronavirus (7)
- Critical Materials (1)
- Cybersecurity (1)
- Decarbonization (1)
- Energy Storage (4)
- Environment (8)
- Exascale Computing (5)
- Frontier (4)
- High-Performance Computing (6)
- Materials (4)
- Materials Science (11)
- Mathematics (1)
- Microscopy (2)
- Nanotechnology (4)
- National Security (1)
- Neutron Science (28)
- Nuclear Energy (4)
- Physics (2)
- Polymers (2)
- Quantum Computing (5)
- Quantum Science (9)
- Simulation (4)
- Space Exploration (2)
- Summit (19)
- Sustainable Energy (2)
- Transportation (1)
Media Contacts
A multi-lab research team led by ORNL's Paul Kent is developing a computer application called QMCPACK to enable precise and reliable predictions of the fundamental properties of materials critical in energy research.
A team of researchers has developed a novel, machine learning–based technique to explore and identify relationships among medical concepts using electronic health record data across multiple healthcare providers.
Tackling the climate crisis and achieving an equitable clean energy future are among the biggest challenges of our time.
A study by researchers at the ORNL takes a fresh look at what could become the first step toward a new generation of solar batteries.
A new version of the Energy Exascale Earth System Model, or E3SM, is two times faster than an earlier version released in 2018.
A team of scientists led by the Department of Energy’s Oak Ridge National Laboratory and the Georgia Institute of Technology is using supercomputing and revolutionary deep learning tools to predict the structures and roles of thousands of proteins with unknown functions.
A multi-institutional team, led by a group of investigators at Oak Ridge National Laboratory, has been studying various SARS-CoV-2 protein targets, including the virus’s main protease. The feat has earned the team a finalist nomination for the Association of Computing Machinery, or ACM, Gordon Bell Special Prize for High Performance Computing-Based COVID-19 Research.
ORNL and three partnering institutions have received $4.2 million over three years to apply artificial intelligence to the advancement of complex systems in which human decision making could be enhanced via technology.
Scientists from Oak Ridge National Laboratory used high-performance computing to create protein models that helped reveal how the outer membrane is tethered to the cell membrane in certain bacteria.
There are more than 17 million veterans in the United States, and approximately half rely on the Department of Veterans Affairs for their healthcare.