08:00 – 09:00 | Registration and reception | |
09:00 – 10:15 |  | Prof. Carlos Guestrin, GraphLab Inc. & University of Washington:Large Scale Machine Learning and Graphs Slides (pptx) |
10:15 – 10:45 |  | Prof. Joe Hellerstein – Professor, UC Berkeley and Co-Founder/CEO, Trifacta - Productivity for Data Analysts: Visualization, Intelligence and ScaleSlides (pdf) |
10:45 – 11:05 | Coffee Break | |
11:05 – 11:35 |  | Prof. Mark Oskin, University of Washington Grappa graph engine. |
11:35 – 12:05 |  | Prof. Christopher Re, University of Wisconsin-Madison The Thorn in the Side of Big Data: too few artists |
12:05 – 12:25 |  | Prof. S V N Vishwanathan, Purdue NOMAD: Non-locking stOchastic Multi-machine algorithm for Asynchronous and Decentralized matrix factorization Slides (pdf) |
12:25 – 12:45 |  | Prof. Michael Mahoney, Stanford Randomized regression in parallel and distributed environments
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12:45 – 14:00 |
| Lunch sponsored by LexisNexis Jonathan Stephenson – LexisNexis - Discovering Structure in Crowd Behaviors |
14:00 – 14:30 |  | Dr. Theodore Willke, Intel LabsI ntel GraphBuilder 2.0 |
14:30 – 14:50 |  | Dr. Avery Ching, FacebookGraph Processing at Facebook Scale
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14:50 – 15:10 |  | Prof. Vahab Mirrokni, Google - Large-scale Graph Clustering in MapReduce and Beyond |
15:10 – 15:30 |  | Dr. Derek Murray , Microsoft Research- Incremental, iterative and interactive data analysis with NaiadSlides (pdf) |
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15:45 – 16:05 |  | Dr. Pankaj Gupta, Twitter – WTF: The Who to Follow Service at Twitter |
16:05 – 16:25 |  | Aapo Kyrola, CMU - What can you do with GraphChi – what’s new? Slides (pptx) |
16:25 – 16:45 |  | Dr. Lei Tang – Walmart Labs - Adaptive User Segmentation for Recommendation
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16:45 – 17:05 |  | Molham Aref, LogicBlox - Datalog as a foundation for probabilistic programming | |
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17:05 – 19:00 | Poster & Demo session | Poster & demo session social hour beer & snacks is sponsored by Yelp!Posters:
- Aydin Buluc, LNL – Parallel software for high-performance and high-productivity graph analysis.
- Bryan Thompson, Systap – GAS Engine for the GPU.
- Norbert MartÃnez, Andrey Gubichev , Alex Averbuch, LDBC -Linked Data Benchmark Council – an initiative to standardize graph systems benchmarking
- Norbert MartÃnez Sparsity technologies DEX: a High-Performance Graph Database Management System
- Valeria Nikolaenko ,Stanford – Privacy-Preserving Ridge Regression on Hundreds of Millions of Records
- Ameet Talwalkar, Bekereley – MLBase
- George Ng, YarcData – YarcData: Enabling discovery at speed and scale.
- Radhika Tekkath, Agivox – A Deeper Dive into Understanding User Interest in News and Blogs
- Eiko Yoneki (Universityof Cambridge); Amitabha Roy (EPFL) - Scale-up Graph Processing: A Storage-centric View
- Paul Hofmann, SaffronTech – Predicting Threats For The Gates Foundation — Protecting The People, Investment, Reputation and Infrastructure - Large Scale Machine Learning on Sparse Graphs
- Eriko Nurvitadhi, Intel - GraphGen: Compiling Graph Applications onto Accelerator-Based Platforms
- Asghar Dehghani, Alpine Data Labs: A parallel implementation of kernel machines
Demos:
- Joseph Gonzalez & Reynold Xin, Berkeley AMP Lab – GraphX: Interactive Graph Mining
- Shivaram Venkataraman & Kyungyong Lee Bekereley/HP Labs – Presto: Distributed Machine Learning and Graph Processing with Sparse Matrices
- Ely Kahn, Sqrrl - Sqrrl + Apache Accumulo = Massively Scalable Graphs
- Jans Aasman, Allgero Graph -Exploring and discovering new patterns in graphs using Gruff and AllegroGraph
- Jan Neumann, Comcast- Personalized Recommendations at Comcast
- Murat Can Cobanoglu, Pitt/CMU - Repurpose drugs by running collaborative filtering algorithms on pharmacological datasets
- Tim Wilson, smarttypes.org – The map equation: using information theory to analyze your markov transition matrix
- Matthias Broecheler, Aurelius - The Aurelius Graph Cluster – Graph Computing at Scale
- Jason Riedy, USF – STING: High-Performance Analysis for Streaming, Graph-Structured Data
- Francisco Martin, Poul Petersen, Adam Ashenfelter- BigML – Machine Learning Made Easy
- Harsh Agrawal, Virginia Tech - CloudCV: Large Scale Distributed Computer Vision on the Cloud
- Baldo Faieta, Adobe – ‘Likes’ diffusion over social networks
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