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Session
Orals & Spotlights Track 19: Probabilistic/Causality
Julie Josse · Jasper Snoek
Wed Dec 09 06:00 AM -- 09:00 AM (PST) @
Author Information
Julie Josse (INRIA/CMAP)
Jasper Snoek (Google Research, Brain team)
Jasper Snoek is a research scientist at Google Brain. His research has touched a variety of topics at the intersection of Bayesian methods and deep learning. He completed his PhD in machine learning at the University of Toronto. He subsequently held postdoctoral fellowships at the University of Toronto, under Geoffrey Hinton and Ruslan Salakhutdinov, and at the Harvard Center for Research on Computation and Society, under Ryan Adams. Jasper co-founded a Bayesian optimization focused startup, Whetlab, which was acquired by Twitter. He has served as an Area Chair for NeurIPS, ICML, AISTATS and ICLR, and organized a variety of workshops at ICML and NeurIPS.
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