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Pegasus: Planning for Execution in Grids

Pegasus: Planning for Execution in Grids. Ewa Deelman, Carl Kesselman, Gaurang Mehta, Gurmeet Singh, Karan Vahi Information Sciences Institute University of Southern California. Pegasus Acknowledgement.

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Pegasus: Planning for Execution in Grids

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  1. Pegasus: Planning for Execution in Grids Ewa Deelman, Carl Kesselman, Gaurang Mehta, Gurmeet Singh, Karan Vahi Information Sciences Institute University of Southern California

  2. Pegasus Acknowledgement • Ewa Deelman, Carl Kesselman, Saurabh Khurana, Gaurang Mehta, Sonal Patil, Gurmeet Singh, Mei-Hui Su, Karan Vahi (ISI) • James Blythe, Yolanda Gil (ISI) • http://pegasus.isi.edu • Research funded as part of the NSF GriPhyN, NVO and SCEC projects.

  3. Grid Applications • Increasing in the level of complexity • Use of individual application components • Reuse of individual intermediate data products • Description of Data Products using Metadata Attributes • Execution environment is complex and very dynamic • Resources come and go • Data is replicated • Components can be found at various locations or staged in on demand • Separation between • the application description • the actual execution description

  4. Abstract Workflow Generation Concrete Workflow Generation

  5. Pegasus:Planning for Execution in Grids • Maps from abstract to concrete workflow • Algorithmic and AI based techniques • Automatically locates physical locations for both components (transformations) and data • Use Globus RLS and the Transformation Catalog • Finds appropriate resources to execute • via Globus MDS • Reuses existing data products where applicable • Publishes newly derived data products • Chimera virtual data catalog

  6. Chimera is developed at ANL By I. Foster, M. Wilde, and J. Voeckler

  7. LIGO Scientific Collaboration • Continuous gravitational waves are expected to be produced by a variety of celestial objects • Only a small fraction of potential sources are known • Need to perform blind searches, scanning the regions of the sky where we have no a priori information of the presence of a source • Wide area, wide frequency searches • Search is performed for potential sources of continuous periodic waves near the Galactic Center and the galactic core • The search is very compute and data intensive • LSC is using the occasion of SC2003 to initiate a month-long production run with science data collected during 8 weeks in the Spring of 2003

  8. Additional resources used: Grid3 iVDGL resources Thanks to everyone involved in standing up the tested and contributing the resources!

  9. LIGO Acknowledgements • Bruce Allen, Scott Koranda, Brian Moe, Xavier Siemens, University of Wisconsin Milwaukee, USA • Stuart Anderson, Kent Blackburn, Albert Lazzarini, Dan Kozak, Hari Pulapaka, Peter Shawhan, Caltech, USA • Steffen Grunewald, Yousuke Itoh, Maria Alessandra Papa, Albert Einstein Institute, Germany • Many Others involved in the Testbed • www.ligo.caltech.edu • www.lsc- group.phys.uwm.edu/lscdatagrid/ • http://pandora.aei.mpg.de/merlin/ • LIGO Laboratory operates under NSF cooperative agreement PHY-0107417

  10. Montage • Montage (NASA and NVO) • Deliver science-grade custom mosaics on demand • Produce mosaics from a wide range of data sources (possibly in different spectra) • User-specified parameters of projection, coordinates, size, rotation and spatial sampling. Mosaic created by Pegasus based Montage from a run of the M101 galaxy images on the Teragrid.

  11. Small Montage Workflow

  12. Montage Acknowledgments • Bruce Berriman, John Good, Anastasia Laity, Caltech/IPAC • Joseph C. Jacob, Daniel S. Katz, JPL • http://montage.ipac. caltech.edu/ • Testbed for Montage: Condor pools at USC/ISI, UW Madison, and Teragrid resources at NCSA, PSC, and SDSC. Montage is funded by the National Aeronautics and Space Administration's Earth Science Technology Office, Computational Technologies Project, under Cooperative Agreement Number NCC5-626 between NASA and the California Institute of Technology.

  13. Current System

  14. Just In-time planning • Partition Abstract workflow into partial workflows

  15. Meta-DAGMan

  16. Other Applications Using Pegasus • Other GriPhyN applications: • High-energy physics: Atlas, CMS (many) • Astronomy: SDSS (Fermi Lab, ANL) • Astronomy: • Galaxy Morphology (NCSA, JHU, Fermi, many others, NVO-funded) • Biology • BLAST (ANL, PDQ-funded) • Neuroscience • Tomography (SDSC, NIH-funded) • http://pegasus.isi.edu • Funding by NSF GriPhyN, NSF NVO, NIH

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