Ron Bekkerman, Mikhail Bilenko, John Langford, Biswanath Panda, Joshua S. Herbach, Sugato Basu, Roberto J. Bayardo, Mihai Budiu, Dennis Fetterly, Michael Isard, Frank McSherry, Yuan Yu, Edwin Pednault, Elad Yom-Tov, Amol Ghoting, Meichun Hsu, Ren Wu, Bin Zhang, Edward Y. Chang, Hongjie Bai, Kaihua Zhu, Hao Wang, Jian Li, Zhihuan Qiu, Igor Durdanovic, Eric Cosatto, Hans Peter Graf, Srihari Cadambi, Venkata Jakkula, Srimat Chakradhar, Abhinandan Majumdar, Krysta M. Svore, Christopher J. C. Burges, Ramesh Natarajan, Joseph Gonzalez, Yucheng Low, Carlos Guestrin, Arthur Asuncion, Padhraic Smyth, Max Welling, David Newman, Ian Porteous, Scott Triglia, Wen-Yen Chen, Yangqiu Song, Chih-Jen Lin, Martin Scholz, Daniel Hsu, Nikos Karampatziakis, Alex J. Smola, Jeff Bilmes, Amarnag Subramanya, Evan Xiang, Nathan Liu, Qiang Yang, Jeremy Kubica, Sameer Singh, Daria Sorokina, Adam Coates, Rajat Raina, Andrew Y. Ng, Clement Farabet, Yann LeCun, Koray Kavukcuoglu, Berin Martini, Polina Akselrod, Selcuk Talay, Eugenio Culurciello, Shirish Tatikonda, Srinivasan Parthasarathy, Jike Chong, Ekaterina Gonina, Kisun You, Kurt Keutzer
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This book presents an integrated collection of representative approaches for scaling up machine learning and data mining methods on parallel and distributed computing platforms. Demand for parallelizing learning algorithms is highly task-specific: in some settings it is driven by the enormous dataset sizes, in others by model complexity or by real-time performance requirements. Making task-appropriate algorithm and platform choices for large-scale machine learning requires understanding the benefits, trade-offs, and constraints of the available options. Solutions presented in the book cover a range of parallelization platforms from FPGAs and GPUs to multi-core systems and commodity clusters, concurrent programming frameworks including CUDA, MPI, MapReduce, and DryadLINQ, and learning settings (supervised, unsupervised, semi-supervised, and online learning). Extensive coverage of parallelization of boosted trees, SVMs, spectral clustering, belief propagation and other popular learning algorithms and deep dives into several applications make the book equally useful for researchers, students, and practitioners.