The world is a complex system, and understanding it scientifically requires advanced computational resources and approaches. Engineers design the most powerful computers on Earth in order to model and simulate physical systems such as global climate, the expansion of the universe, and the behavior of matter at an atomic level. But today, high performance scientific computing means more than just supercomputers running numerical models, expanding to large-scale data analysis, AI and machine learning, visualization, and distributed and heterogeneous hardware systems.
UChicago CS researchers are changing the face of high performance computing (HPC), creating new computing paradigms at scale for understanding physical, biological, social, and ecological systems and answering the most significant questions facing society. Faculty lead efforts to apply the latest AI and data science approaches for scientific discovery, from computational imaging and spectroscopy to bioinformatics, neuroscience, and agriculture. In these areas, as well as in the development and application of new exascale systems such as Aurora, UChicago CS benefits from a strong partnership with Argonne National Laboratory.
Labs & Groups
Globus Labs
Large-Scale Systems Group (LSSG)
Chameleon
Center for Translational Data Science
Related Faculty
News & Events

Looking Back 20 Years: How an Academic Bet on Real-Time Data Finally Paid Off

Could Robots Help Kids Conquer Reading Anxiety? New Study from the Department of Computer Science at UChicago Suggests So

University of Chicago Announces Next Phase of Quantum Supercomputer Initiative, Supported by NSF Grant

NobleReach Scholar Bridges Tech and Public Service Through MSCAPP and AI Advisory Work

UChicago Alum John Paparrizos Honored with SIGMOD Test-of-Time Award for Advancing Time Series Analytics

University of Chicago Researchers Earn Top Honor for Adaptive Software Breakthrough
