2018 AIChE Annual Meeting

Session: Data Mining and Machine Learning in Molecular Sciences II

Computational approaches to correlate, analyze, and understand large and complex data sets are playing increasingly important roles in the physical, chemical, and life sciences. This session solicits submissions pertaining to methodological advances and applications of data mining and machine learning methods, with particular emphasis on data-driven modeling and property prediction, statistical inference, big data, and informatics. Topics of interest include: algorithm development, inverse engineering, chemical property prediction, genomics/proteomics/metabolomics, (virtual) high-throughput screening, rational design, accelerated simulation, biomolecular folding, reaction networks, and quantum chemistry.

Chair

Johannes Hachmann, University at Buffalo, SUNY

Co-Chair

Andrew Ferguson, University of Illinois at Urbana-Champaign

Presentations

08:00 AM

08:15 AM

Matthew Spellings, Julia Dshemuchadse, Sharon C. Glotzer

08:30 AM

Joseph S. Gomes, Zhenqin Wu, Bharath Ramsundar, Evan N. Feinberg, Caleb Geniesse, Aneesh S. Pappu, Karl Leswing, Vijay Pande

08:45 AM

09:00 AM

09:15 AM

Peter St. John, Nolan Wilson, Mark R. Nimlos, Caleb Phillips, Travis W Kemper, Ross E Larsen

09:30 AM

09:45 AM

10:00 AM

10:15 AM

Benjamin Bucior, N. Scott Bobbitt, Timur Islamoglu, Subhadip Goswami, Arun Gopalan, Taner Yildirim, Omar K. Farha, Neda Bagheri, Randall Snurr