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The ICML town hall is primarily a chance for the community to interact with the ICML organizers and give feedback. We cover various details of this ICML and future plans, with the bulk of the time relegated to discussion.
Author Information
John Langford (Microsoft Research)
Marina Meila (University of Washington)
Tong Zhang (HKUST)

Tong Zhang is a professor of Computer Science and Mathematics at the Hong Kong University of Science and Technology. His research interests are machine learning, big data and their applications. He obtained a BA in Mathematics and Computer Science from Cornell University, and a PhD in Computer Science from Stanford University. Before joining HKUST, Tong Zhang was a professor at Rutgers University, and worked previously at IBM, Yahoo as research scientists, Baidu as the director of Big Data Lab, and Tencent as the founding director of AI Lab. Tong Zhang was an ASA fellow and IMS fellow, and has served as the chair or area-chair in major machine learning conferences such as NIPS, ICML, and COLT, and has served as associate editors in top machine learning journals such as PAMI, JMLR, and Machine Learning Journal.
Le Song (Mohamed bin Zayed University of AI)
Stefanie Jegelka (MIT)
Csaba Szepesvari (Deepmind)
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