A Superfacility Model for Data-Intensive Science

A Superfacility Model for Data-Intensive Science

The Julia Programming Language via YouTube Direct link

Roadmap of the talk

5 of 27

5 of 27

Roadmap of the talk

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A Superfacility Model for Data-Intensive Science

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  1. 1 Welcome!
  2. 2 "Big Data" and science
  3. 3 Science and Internet of Things
  4. 4 Many science challenges are at the boundary of theory and experiment
  5. 5 Roadmap of the talk
  6. 6 Science and search facilities
  7. 7 Automated search and meta-data analysis
  8. 8 Past and future high-performance facilities
  9. 9 Filtering and de-noising data
  10. 10 Math challenges in energy science data
  11. 11 Machine learning for science
  12. 12 Amount of available data grows faster than our computational capabilities
  13. 13 DOE ECP, Department of Energy exascale Computing Project
  14. 14 Computation and cost of energy used to perform it
  15. 15 The most costly thing inside a machine is moving data around
  16. 16 Data vs. simulations: The irregularity spectrum
  17. 17 Programming models for exascale computations
  18. 18 Example: whole-mantle seismic model
  19. 19 Example: analysis of genome
  20. 20 Problems with distributed hash tables
  21. 21 Optimizing algorithm for matrix multiplication
  22. 22 7 Giants of Data and 7 Dwarfs of Simulation
  23. 23 Systems for data analysis
  24. 24 Why high-level languages like Julia are key
  25. 25 Specialization of computer architectures
  26. 26 High-Performance Computing Policies
  27. 27 Acknowledgements

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