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Biomedicine and Big Data

Biomedicine and Big Data. Normal. Analyzing spatio -temporal patterns in biomedical data. Stiff. Wavy. My Research Group. Dr. Chakra Chennubhotla Ph.D. Computer Science University of Toronto. Shannon Quinn B.S. Computer Science Georgia Tech. Andrej Savol B.S. Applied Mathematics

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Biomedicine and Big Data

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  1. Biomedicine and Big Data Normal Analyzing spatio-temporal patterns in biomedical data Stiff Wavy

  2. My Research Group Dr. Chakra Chennubhotla Ph.D. Computer Science University of Toronto Shannon Quinn B.S. Computer Science Georgia Tech Andrej Savol B.S. Applied Mathematics University of Pittsburgh Virginia Burger M.S. Mathematics University of Vienna

  3. Our Mission • High-throughput biomedical data analysis

  4. Problem and Solution • Biomedical and biological data are BIG • MapReduce! chunks C0 C1 C2 C3 Map Phase M0 M1 M2 M3 mappers IO0 IO1 IO2 IO3 Shuffling Data R0 R1 Reduce Phase Reducers FO0 FO1

  5. Specifically… Clustering!

  6. Requirements • Java • Apache Hadoop or Amazon EC2 • Apache Mahout • Comfortable with linear algebra • Ax = b • X = UΣUT • Hive, HBase, Giraph, GraphLab, etc optional but awesome

  7. Final Thoughts • Distributed computing • Open source development • Programming at scale • Large project management • Software engineering principles, tools • Biomedical context • Biological data is huge • Diagnostics: helping people

  8. Questions? Comments? Interested? • squinn@cmu.edu || spq1@pitt.edu

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