well, it looks like all the slides of the MMDS 2014: Workshop on Algorithms for Modern Massive Data Sets have been recently released, they are all here (I just added a link to each authors' website)
Data Analysis and Statistical Data Analysis
- Large Scale Machine Learning at Verizon Ashok Srivastava
- Communication Cost in Big Data Processing Dan Suciu
- Content-based search in 50TB of consumer-produced videos Gerald Friedland
- Myria: Scalable Analytics as a Service Bill Howe
- Computing stationary distribution, locally Devavrat Shah
- Spectral algorithms for graph mining and analysis Yiannis Koutis
- Network community detection Jiashun Jin
- Optimal CUR Matrix Decompositions David Woodruff
- Dimensionality reduction via sparse matrices Jelani Nelson
- Influence sampling for generalized linear models Jinzhu Jia
Industrial and Scientific Applications
- Counterfactual reasoning and massive data sets Leon Bottou
- Connected Components in MapReduce and Beyond Sergei Vassilvitskii
- Distributing Large-scale Recommendation Algorithms: from GPUs to the Cloud Xavier Amatriain
- Disentangling sources of risk in massive financial portfolios Jeffrey Bohn
- Localized Methods for Diffusions in Large Graphs David Gleich
- FAST-PPR: Scaling Personalized PageRank Estimation for Large Graphs Ashish Goel
- Locally-biased and semi-supervised eigenvectors Michael Mahoney
- Optimal Shrinkage of Fast Singular Values Matan Gavish
- Dimension Independent Matrix Square using MapReduce Reza Zadeh
Novel Algorithmic Approaches
- Analyzing Big Graphs via Sketching and Streaming Andrew McGregor
- Large-Scale Inference in Time Domain Astrophysics Joshua Bloom
- Exploring "forgotten" one-shot learning Alek Kolcz
- Modeling Dynamics of Opinion Formation in Social Networks Sreenivas Gollapudi
- Multi-reference Alignment: Estimating Group Transformations using Semidefinite Programming Amit Singer
- IPython: a language-independent framework for computation and data Fernando Perez
- Reducing Communication in Parallel Graph Computations Aydin Buluc
- Large Scale Graph-Parallel Computation for Machine Learning: Applications and Systems Joseph Gonzalez
- CUR Factorization via Discrete Empirical Interpolation Mark Embree
- Leverage scores: Sensitivity and an App Ilse Ipsen
- libSkylark: Sketching-based Accelerated Numerical Linear Algebra and Machine Learning for Distributed-memory Systems Vikas Sindhwani
Novel Matrix and Graph Methods
- Large-Scale Numerical Computation Using a Data Flow Engine Matei Zaharia
- Automatic discovery of cell types and microcircuitry from neural connectomics Eric Jonas
- Beyond Locality Sensitive Hashing Alexandr Andoni
- Combinatorial optimization and sparse computation for large scale data mining Dorit Hochbaum
- Public Participation in International Security - Open Source Treaty Verification Christopher Stubbs
- The Hearts and Minds of Data Science Cecilia Aragon
- The fall and rise of geometric centralities Sebastiano Vigna
- Mixed Regression Constantine Caramanis
- No Free Lunch for Stress Testers: Toward a Normative Theory of Scenario-Based Risk Assessment Lisa Goldberg
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