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Astro-WISE paradigm for Citizen eScience

Astro-WISE paradigm for Citizen eScience. Gijs Verdoes Kleijn Edwin Valentijn Marjolein Cuppen for the Astro-WISE consortium. Outline. What is Astro-WISE?: An information accumulator for eScience Massive datasets Data centric Federated Paradigm for Citizen eScience?

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Astro-WISE paradigm for Citizen eScience

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  1. Astro-WISEparadigmforCitizeneScience Gijs Verdoes Kleijn Edwin Valentijn Marjolein Cuppen for the Astro-WISE consortium

  2. Outline • What is Astro-WISE?: • An information accumulator for eScience • Massive datasets • Data centric • Federated • Paradigm for Citizen eScience? • Astronomers and public collaborating in one system

  3. ESO Public Imaging Surveys VIRCAM@VISTA 0.6 sq.deg. NIR camera 16 2kx2k detectors 0.35” pixels Science verification phase OmegaCAM @VST 1sq.deg. Opt. camera 32 2kx4k detectors 0.21” pixels Commissioning mid 2010 KIDS~500 nights 1500 sq.deg. u g r i VIKING~250nights z, Y, J, H, K UKIDSS workshop 2007

  4. Paranal Monthly Data Rates 2007 statistics • All Current Paranal • Instruments 4% (433.2 GB) • OmegaCAM 24% (~2500 GB) • VIRCAM 72% • (~7500 GB) • Courtesy Mark Neeser

  5. Science drivers Needles in haystacks high-z QSOs (6.4<z<7.2) Extreme Galactic White Dwarfs (Rare) AGNs The unanticipated Haystacks: Dark matter distribution: weak lensing Dark energy Evolution of galaxy clusters Unexpected Needles are easier than haystacks

  6. Dissemminating results Calibration Archiving (raw+final) Quality control User tuned research Optimize scientific return Wide-field Imaging Integrated Information system Survey monitoring • Facilitate (un)foreseen uses of calibrated and raw Tera/Petabyte data sets by global pools of collaborators and resources • This requires enabling changes at any time in: • Physical parameters (e.g., instrument/atmosphere) • Improved algorithms • Improved insight in 1. or 2. • Requires a single integrated information system

  7. Astro-WISE (/eScience) boundary condition • Pool via federation into a single system • Distributed science teams • Distributed storage, compute and database resources • Peer-to-peer network

  8. TARGET diagram The philosophy that drives how we store information • Data model in object model • OOP (python), inheritance, attribute persistency • Full backwards-chaining of dependencies

  9. Extreme data lineage

  10. Astro-WISE information system data centric architecture • All data beyond pixel data is Metadata • all pixel data <–>data servers • all Metadata <–> database • all I/O to database • Compute clusters / GRIDs • Graphical User Interfaces (Web-services) • All components scalable

  11. Astro-WISE - Virtual Survey Telescope Pipeline Methods/Algorithms In on-line repository Python (wrapped) CPUs • DATABASE • LINKS • METADATA images • CATALOGS • Contains “ALL input/output” • DATA SERVERS: • Images: • Calibration & science • Raw & final OmegaCEN review 2008

  12. www.astro-wise.org

  13. + MegaCAM, LBC, ISAAC, LOFAR, SDSS DR7, 2MASS, USNO…

  14. Web servicesTarget processor

  15. Quality view

  16. Benefits from integrated dynamic database relevant for Citizen eScience ( ) • Both final and raw products accessible • GUI can be fully web services no local installation needed to use it • can be installed everywhere with off-the-shelf hardware • Objects are linked, all bits are traced: • on-the fly re-processing • Annotation record building • Built–in workflow • Easy publishing via Virtual Observatory and webservices • Own compute GRID operational • A federated integrated-system: • Naturally serves global collaborative projects • Scalable: image server/database/compute GRID resources can grow via federation • Mydb environment operational for individual research • Quick scripting: many tasks are “5 Line Scripts” • Fully user tunable – own provided algorithms/scripts allowed • Python: existing software can be wrapped (implemented for Sextractor, swarp, being implemented for GALPHOT, GALFIT)

  17. (Citizen) eScience • Discovery of the exotic: • gravitational lenses, mergers,… • SNe, • transients, • Satellites • asteroids • Survey Quality Control • -visual inspection KIDS: 3yr manpower. -object masking-astrometry

  18. (Citizen) eScience • Open-up massive datasets to the public • Playing -> exploring -> science • A single environment for public and scientist • Feeling at home in the Universe on spaceship Earth

  19. (Citizen) eScience www.astro-wise.org www.rug.nl/TarGet • Open-up massive datasets to the public • Continum: playing -> exploring -> science • A single environment for public and scientist • Feeling at home in the Universe on spaceship Earth

  20. www.rug.nl/TarGet TASK24 2009-13 32M

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