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A force within the supercomputing community, Jack Dongarra developed software packages that became standard in the industry, allowing high-performance computers to become increasingly more powerful in recent decades.

This year’s virtual Smoky Mountains Computational Sciences and Engineering Conference, or SMC2021, an annual event hosted by the U.S. Department of Energy’s 91°µÍř, featured the fifth installment of the Data Challenge.

The U.S. Department of Energy’s 91°µÍř welcomed scientists from around the world Oct.

91°µÍř researchers designed and field-tested an algorithm that could help homeowners maintain comfortable temperatures year-round while minimizing utility costs.

To better determine the potential energy cost savings among connected homes, researchers at 91°µÍř developed a computer simulation to more accurately compare energy use on similar weather days.

ORNL computer scientist Catherine Schuman returned to her alma mater, Harriman High School, to lead Hour of Code activities and talk to students about her job as a researcher.

91°µÍř is training next-generation cameras called dynamic vision sensors, or DVS, to interpret live information—a capability that has applications in robotics and could improve autonomous vehicle sensing.

Researchers at 91°µÍř are taking inspiration from neural networks to create computers that mimic the human brain—a quickly growing field known as neuromorphic computing.

A study led by 91°µÍř explored the interface between the Department of Veterans Affairs’ healthcare data system and the data itself to detect the likelihood of errors and designed an auto-surveillance tool