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Monday, December 9 • 7:30am - 6:30pm
Big Learning : Advances in Algorithms and Data Management

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Explosive growth in data and availability of cheap computing resources has sparked increasing interest in Big Learning within the Machine Learning community. Researchers are now taking on the challenge of parallelizing richly structured models with inherently serial dependencies and do not admit straightforward solutions. Database researchers, however, have a history of developing high performance systems that allow concurrent access while providing theoretical guarantees on correctness. In recent years, database systems have been developed specifically to tackle Big Learning tasks. This workshop aims to bring together the two communities and facilitate the cross-pollination of ideas. Rather than passively using DB systems, ML researchers can apply major DB concepts to their work; DB researchers stand to gain an understanding of the ML challenges and better guide the development of their Big Learning systems. The goals of the workshop are - Identify challenges faced by ML practitioners in Big Learning setting - Showcase recent and ongoing progress towards parallel ML algorithms - Highlight recent and significant DB research in addressing Big Learning problems - Introduce DB implementations of Big Learning systems, and the principle considerations and concepts underlying their designs Focal points for discussions and solicited submissions include but are not limited to: - Scalable data systems for Big Learning --- models and algorithms implemented, properties (availability, consistency, scalability, etc.), strengths and limitations - Distributed algorithms for online and batch learning - Parallel (multicore) algorithms for online and batch learning - Theoretical analysis of distributed and parallel learning algorithms - Implementation studies of large-scale distributed inference and learning algorithms --- challenges faced and lessons learnt Target audience includes industry and academic researchers from the various subfields relevant to large-scale machine learning, with a strong bias for either position talks that aim to induce discussion, or accessible overviews of the state-of-the-art.
http://biglearn.org/

Speakers
JG

Joseph Gonzalez

UC Berkeley
MJ

Michael Jordan

Michael I. Jordan is the Pehong Chen Distinguished Professor in the Department of Electrical Engineering and Computer Science and the Department of Statistics at the University of California, Berkeley. His research in recent years has focused on Bayesian nonparametric analysis, probabilistic... Read More →
avatar for Sameer Singh

Sameer Singh

University of Washington
Sameer Singh is a Postdoctoral Researcher (Research Associate) in the Computer Science and Engineering, University of Washington, working with Carlos Guestrin, Luke Zettlemoyer, and Dan Weld. His research focuses on large-scale and interactive machine learning applied to information... Read More →


Monday December 9, 2013 7:30am - 6:30pm PST
Harvey's Emerald Bay B
  Workshops
  • Program_Schedule <br>Morning Session: <br>07:30 08:15 Invited Talk: Chris Re (The Thorn in the Side of Big Data: Too Few Artists) <br>08:15 09:00 Invited Talk: Raghu Ramakrishnan (Scale-out Beyond Map-Reduce) <br>09:00 09:30 Coffee Break <br>09:30 09:50 Contributed Talk: Alex Smola (Parameter Server for Distributed Machine Learning) <br>09:50 10:10 Contributed Talk: Yingyu Liang (Distributed PCA and k-Means Clustering) <br>10:10 10:30 Contributed Talk: Yarin Gal (Pitfalls in the use of Parallel Inference for the Dirichlet Process) <br> <br>10:30 13:30 Lunch + Ski Break <br>13:30 15:00 Tutorial: John Langford (Vowpal Wabbit) <br>15:00 15:30 Break <br> <br>Afternoon Session: <br>15:30 16:15 Invited Talk: Derek Murray (Timely dataflow in Naiad) <br>16:15 17:00 Invited Talk: Michael Jordan (On the Computational and Statistical Interface and Big Data) <br>17:00 18:30 Coffee Break + Poster Session

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