Download Atmosphere/Meteorology/Climate Grand Challenges

Survey
yes no Was this document useful for you?
   Thank you for your participation!

* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project

Document related concepts

Big data wikipedia , lookup

Data Protection Act, 2012 wikipedia , lookup

Data center wikipedia , lookup

Data model wikipedia , lookup

Data analysis wikipedia , lookup

Information privacy law wikipedia , lookup

3D optical data storage wikipedia , lookup

Database model wikipedia , lookup

Data vault modeling wikipedia , lookup

Business intelligence wikipedia , lookup

Transcript
Cyberinfrastructure for Solving Grand
Challenge Problems in
Atmosphere/Meteorology/Climate
Guy Almes, Kathy Carusone, Rudolph Dichtl,
Mark Eakin, Jack Fellows, Mike Folk,
Catherine Gautier, John Helly, Anke Kamratn,
Ron Murdock, Kurt Paterson, Mohan Ramamurthy,
Russ Rew, Sue Stendebach, Steve Tanner,
Pat Waukau, May Yuan
Atmosphere/Meteorology/Climate
Grand Challenges
• Aerosol: data assimilation/modeling/
• Severe Wx (e.g. Flooding, Hurricanes): real-time data
assimilation/modeling
• Chemical Wx Forecasting: air quality forecast, near-term
• Climate Prediction on annual and longer time scales
• Cyber-sensor National/Global Observing Systems
Meeting Grand Challenges
• Data assimilation: real-time and historical
– Standard toolkit (API) for interfacing to sensors
– Design sensors with cyberinfrastructure needs in mind
• High compute cycle and data storage needs
– Research needed to define resource requirements
• Digital Library Integration
– Data discovery
– Support for comprehensive ontology development
• Integration of data from multiple sources and disciplines
– Global mapping/reference issues
– Including integration of uncertainty
• Integrate with GIS (Geovisualization, advanced true 4D GIS, new
representational models)
• Advanced Data mining
• Grid computing (distributed – computational, data, software, …)
• “Portability” of model results and observations
• Need for scientific data models for scientific relational databases (major
challenge for NSF)
Meeting Grand Challenges (cont’d)
• Leveling of the “playing field”
– Increased accessibility to advanced Visualization tools to scientific and
education community
– Poor man’s access grid/Collaboratory
– Accessibility to information on available resources (CI Portal)
• Education, Outreach, Training, Visibility, Accessibility
• Policy Issues: global geopolitical dimensions
– Global cyberinfrastructure needs
• Leverage Commercial Developments, but some areas not addressed:
– Tool integration, multi-source data access and discovery, real-time
collaboration
• Data reduction and deduction tools
• Long term support (interagency effort?)
– Data persistence, Software (consider supporting open source model), IT
Infrastructure