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Put AI to Work
April 29-30, 2018: Training
April 30-May 2, 2018: Tutorials & Conference
New York, NY
Peter Bailis

Peter Bailis
Assistant Professor, Stanford University

Peter Bailis is an assistant professor of computer science at Stanford University. Peter’s research in the Future Data Systems group and DAWN project focuses on the design and implementation of postdatabase data-intensive systems. He is the recipient of the ACM SIGMOD Jim Gray Doctoral Dissertation Award, an NSF Graduate Research Fellowship, a Berkeley Fellowship for Graduate Study, best-of-conference citations for research appearing in both SIGMOD and VLDB, and the CRA Outstanding Undergraduate Researcher Award. He holds a PhD from UC Berkeley and an AB from Harvard College, both in computer science.

Sessions

11:55am–12:35pm Wednesday, May 2, 2018
Location: Grand Ballroom East
David Patterson (UC Berkeley), Greg Diamos (Baidu), Cliff Young (Google), Peter Mattson (Google), Peter Bailis (Stanford University), Gu-Yeon Wei (Harvard University)
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