John C. Hart

 

 


 

John C. Hart is an Professor in the Department of Computer Science at the University of Illinois, Urbana-Champaign where he studies computer graphics and computational topology. Prof. Hart is a past Editor-in-Chief of ACM Transactions on Graphics. He is a co-author of "Real-Time Shading" and a contributing author for "Texturing and Modeling: A Procedural Approach." He served from 1994-9 on the ACM SIGGRAPH Executive Committee, and is an Executive Producer of the documentary "The Story of Computer Graphics." Prof. Hart received his B.S. from Aurora University in 1987, and an M.S. (1989) and Ph.D. (1991) from the Electronic Visualization Laboratory at the University of Illinois at Chicago. He interned with Alan Norton at the IBM T.J. Watson Research Center in 1989 and with Pixel Machines at AT&T Bell Labs in 1990. He was a Postdoctoral Research Associate at the EVL and NCSA until 1992, and an Assistant then Associate Professor in the School of EECS at Washington State University until 2000.

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Jul 27th 2017

With a full tuition under $20K, the University of Illinois Master of Computer Science - Data Science (MCS-DS) is the most affordable gateway to one of the most lucrative and fastest growing careers of the new millennium. The MCS-DS builds expertise in four core areas of computer science: data visualization, machine learning, data mining and cloud computing, in addition to building valuable skill sets in statistics and information science with courses taught in collaboration with the University’s Statistics Department and ISchool (ranked #1 among Library and Information Studies Schools.)

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Jul 17th 2017

Learn the general concepts of data mining along with basic methodologies and applications. Then dive into one subfield in data mining: pattern discovery. Learn in-depth concepts, methods, and applications of pattern discovery in data mining. We will also introduce methods for pattern-based classification and some interesting applications of pattern discovery.

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