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Poster session 1
Van-Doan Nguyen · Stephan Eismann · Haozhen Wu · Garrett Goh · Kristina Preuer · Thomas Unterthiner · Matthew Ragoza · Tien-Lam PHAM · Günter Klambauer · Andrea Rocchetto · Maxwell Hutchinson · Qian Yang · Rafael Gomez-Bombarelli · Sheshera Mysore · Brooke Husic · Ryan-Rhys Griffiths · Masashi Tsubaki · Emma Strubell · Philippe Schwaller · Théophile Gaudin · Michael Brenner · Li Li
Author Information
Van-Doan Nguyen (Japan Advanced Institute of Science and Technology (JAIST), Japan)
Van-Doan Nguyen received his Ph.D. degree in Knowledge Science from Japan Advanced Institute of Science and Technology (JAIST) in March 2017. Currently, he is a postdoctoral research fellow in the laboratory of Assoc. Prof. Dam at JAIST. His research interests include: - Recommendation Systems - Information Fusion, Decision Analysis - Data Mining, Machine Learning - Materials Informatics
Stephan Eismann (Stanford University)
Haozhen Wu (University of Wisconsin Madison)
Garrett Goh (PNNL)
Kristina Preuer (LIT AI Lab / University Linz)
Thomas Unterthiner (LIT AI Lab / University Linz)
Matthew Ragoza (University of Pittsburgh)
Tien-Lam PHAM (Japan Advanced Institute of Science and Technology)
Günter Klambauer (LIT AI Lab / University Linz)
Andrea Rocchetto (University of Oxford)
Maxwell Hutchinson (Citrine Informatics)
Qian Yang (Stanford University)
Rafael Gomez-Bombarelli (Massachusetts Institute of Technology)
Sheshera Mysore (University of Massachusetts Amherst)
Brooke Husic (Stanford University)
Ryan-Rhys Griffiths (University of Cambridge)
Masashi Tsubaki (National Institute of Advanced Industrial Science and Technology (AIST))
Emma Strubell (University of Massachusetts, Amherst)
Philippe Schwaller (University of Cambridge / IBM Research)
Théophile Gaudin (IBM Research)
Michael Brenner (Harvard University)
Li Li (Google)
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