Harnessing Data Science and Machine Learning

 

Leveraging USC’s high power computational cluster and national computational resources, we are solving problems related to bioinformatics, quantum material systems, and fluid/mass transport.

Research Faculty Harnessing Data Science and Machine Learning

Paulo Branicio
Paulo Branicio
Associate Professor of Chemical Engineering and Materials Science
Behnam Jafarpour
Behnam Jafarpour
N.I.O.C Fellow and Professor of Chemical Engineering and Materials Science, Electrical and Computer Engineering, and Civil and Environmental Engineering
Birendra Jha
Birendra Jha
Associate Professor of Chemical Engineering and Materials Science and Civil and Environmental Engineering
Rajiv Kalia
Rajiv Kalia
Professor of Physics and Astronomy, Computer Science, Chemical Engineering and Materials Science, and Biomedical Engineering
Jay Lee
Jay H. Lee
Choong Hoon Cho Chair and Professor of Chemical and Materials Science, Aerospace and Mechanical Engineering, Electrical and Computer Engineering, and Industrial and Systems Engineering
Anupam Madhukar
Anupam Madhukar
Kenneth T. Norris Professor in Engineering and Professor of Chemical Engineering and Materials Science, Biomedical Engineering, and Electrical and Computer Engineering
Muhammad Sahimi
Muhammad Sahimi
N.I.O.C. Chair in Petroleum Engineering and Professor of Chemical Engineering and Materials Science
Yu-Tsun Shao
Yu-Tsun Shao
Assistant Professor of Chemical Engineering and Materials Science
Shaama Sharada
Shaama Sharada
Chester Dolley Early Career Chair and Associate Professor of Chemical Engineering and Materials Science and Chemistry
Priya Vashishta
Priya Darshan Vashishta
Dean's Professor in Chemical Engineering and Materials Science, Biomedical Engineering, Computer Science, and Physics and Astronomy
Arieh Warshel
Arieh Warshel
Dana and David Dornsife Chair in Chemistry and Distinguished Professor of Chemistry and Biochemistry and Chemical Engineering and Materials Science

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Published on October 18th, 2021Last updated on October 28th, 2025