1 / 9

Valerio Pascucci Director, CEDMAV

Massive Data Management, Analysis, and Visualization: Scaling From Handheld Devices to Supercomputers. Valerio Pascucci Director, CEDMAV Professor, SCI Institute & School of Computing Laboratory Fellow, PNNL. Center for Extreme Data Management, Analysis and Visualization. Mission.

hien
Download Presentation

Valerio Pascucci Director, CEDMAV

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Massive Data Management, Analysis, and Visualization: Scaling From Handheld Devices to Supercomputers Valerio Pascucci Director, CEDMAV Professor,SCI Institute &School of ComputingLaboratory Fellow, PNNL

  2. Center for Extreme Data Management, Analysis and Visualization

  3. Mission Research Future Technologies for Knowledge Extraction from Extreme Sized Data Deployment and Application of State of the Art Tools in Data Intensive Science Discovery Education of the Next Generation Workforce Supporting Data Intensive Science and Engineering

  4. CEDMAV Organization Chart joint appointments with partner institution

  5. CEDMAV External Partnerships Technical Collaborations with Other National Laboratories $1.6B NSA data center in Utah (1.5 million-square-foot facility) Collaboration with NSA Data Center for the Creation of a Data Center Curriculum IRTG International Research Training Group

  6. Research Scope • Data management , analysis and visualization for exploring and extracting knowledge from massive amounts of data (images, graphs, vector fields, text, geospatial, …..) • Enable science discovery drivenby large scale simulations and high resolution sensing devices • Increase awareness of events and patterns underlying massive and complex data feeds • Develop theoretical foundations forunified cross disciplinary technology

  7. Research Areas • Mathematics of scalar, vector, and tensor fields • Discrete methods for graphs and text • Uncertainty • Statistics • Topology • High dimensional models • Infrastructure for data movements • Parallel computing for data analysis • Scalable Visualization techniques • Building data abstractions 10 dimensional data set describing the heat release in a family of simulations

  8. Deployment • Software infrastructure for distributed data access and visualization • Collaborative tools for large, distributed teams solving problems jointly • Tracking of Information Evolution and Decision making • Scalable data analysis tools exploiting HPC resources • Ad hoc interfacesfor specialized tasks

  9. Applications • Embedded collaboration with science teams to best design solutions • Specialize software tools to address specific science challenges • Develop focus areas such as: • Large scale image processing • Climate Modeling • Combustion Chemistry • Molecular Dynamics • Physics • Earth Sciences • Medicine • Power grid • …..

More Related