1 / 6

Applications and Requirements for Scientific Workflow

Applications and Requirements for Scientific Workflow. May 1 2006 NSF Geoffrey Fox Indiana University. Team Members. Geoffrey Fox, Indiana University (lead) Mark Ellisman, UCSD Constantinos Evangelinos, Massachusetts Institute of Technology Alexander Gray, Georgia Tech

ewan
Télécharger la présentation

Applications and Requirements for Scientific Workflow

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. Applications and Requirementsfor Scientific Workflow May 1 2006NSF Geoffrey Fox Indiana University

  2. Team Members • Geoffrey Fox, Indiana University (lead) • Mark Ellisman, UCSD • Constantinos Evangelinos, Massachusetts Institute of Technology • Alexander Gray, Georgia Tech • Walt Scacchi, University of California, Irvine • Ashish Sharma, Ohio State University • Alex Szalay, John Hopkins University

  3. The Application Drivers • Workflow is underlying support for new science model • Distributed interdisciplinary data deluged scientific methodology as an end (instrument, conjecture) to end (paper, Nobel prize) process is a transformative approach • Provide CS support for this scientific revolution • This emerging model for science • Spans all NSF directorates • Astronomy (multi-wavelength VO), Biology (Genomics/Proteomics), Chemistry (Drug Discovery), Environmental Science (multi-sensor monitors as in NEON), Engineering (NEES, multi-disciplinary design), Geoscience (Ocean/Weather/Earth(quake) data assimilation), Medicine (multi-modal/instrument imaging), Physics (LHC, Material design), Social science (Critical Infrastructure simulations for DHS) etc.

  4. What has changed? • Exponential growth in Compute(18), Sensors(18?), Data storage(12), Network(8) (doubling time in months); performance variable in practice (e.g. last mile for networks) • Data deluge (ignored largely in grand challenges, HPCC 1990-2000) • Algorithms (simulation, data analysis) comparable additional improvements • Science is becoming intrinsically interdisciplinary • Distributed scientists and distributed shared data (not uniform in all fields) • Establishes distributed data deluged scientific methodology • We recommend computer science workflow research to enable transformative interdisciplinary science to fully realize this promise

  5. Application Requirements I • Reproducibility core to scientific method and requires rich provenance, interoperable persistent repositories with linkage of open data and publication as well as distributed simulations, data analysis and new algorithms. • Distributed Science Methodology publishes all steps in a new electronic logbook capturing scientific process (data analysis) as a rich cloud of resources including emails, PPT, Wikis as well as databases, compiler options, build time/runtime configuration… • Need to separate wheat from chaff in implicit electronic record (logbook) keeping only that required to make process reproducible; need to be able to electronically reference steps in process; • Traditional workflow including BPEL/Kepler/Pegasus/Taverna only describes a part of this • Abstract model of logbook becomes a high level executablemeta-workflow • Multiple collaborativeheterogeneous interdisciplinary approaches to all aspects of the distributed science methodology inevitable; need research on integration of this diversity • Need to maximize innovation (diversity) preserving reproducibility

  6. Application Requirements II • Interdisciplinary science requires that we federate ontologies and metadata standards coping with their inevitable inconsistencies and even absence • Support for curation, data validation and “scrubbing” in algorithms and provenance; • QoS; reputation and trust systems for data providers • Multiple “ibilities” (security, reliability, usability, scalability) • As we scale size and richness of data and algorithms, need a scalable methodology that hides complexity (compatible with number of scientists increasing slowly); must be simple and validatable • Automate efficient provisioning, deployment and provenance generation of complex simulations and data analysis; support deployment and interoperable specification of user’s abstract workflow; support interactive user • Support automated and innovative individual contributions to core “black boxes” (produced by “marine corps” for “common case”) and for general user’s actions such as choice and annotation

More Related