Machine Learning Could Solve Riddles of Galaxy Formation

New technique cuts down computing times from thousands of computing hours to mere minutes

Written byUniversity of Illinois
| 3 min read
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CHAMPAIGN, Ill. — A new machine-learning simulation system developed at the University of Illinois promises cosmologists an expanded suite of galaxy models – a necessary first step to developing more accurate and relevant insights into the formation of the universe.

The feasibility of this method has been laid out in two recent papers written by astronomyphysics and statistics professor Robert Brunner, his undergraduate student Harshil Kamdar and National Center for Supercomputing Applications research scientist Matthew Turk.

Related article: Astronomers Uncover Signs of Earliest Galaxies

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