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Enabling Reproducibility of Scientific Data Flows Through Tracking and Representation of Provenance

Posted on:2012-03-26Degree:Ph.DType:Thesis
University:University of Maryland, Baltimore CountyCandidate:Tilmes, CurtFull Text:PDF
GTID:2458390008992318Subject:Computer Science
Abstract/Summary:
Reproducibility of results is a key tenet of science. Some modern scientific domains, such as Earth Science, have become computationally complicated and, particularly with the advent of higher resolution space based remote sensing platforms, tremendously data intensive. Over the last few decades, these complexities along with the rapid advancement of the state of the art confound the goal of scientific transparency.;This thesis explores concepts of data identification, organization, equivalence and reproducibility for such data intensive scientific processing. It presents a conceptual model useful for describing and representing data provenance suitable for very precise data and processing identification. It presents algorithms for creating and maintaining precise dataset membership and provenance equivalence at various degrees of granularity and data aggregation.;This model will be described and demonstrated first with a simple example, then in a more complicated example based on the real-world operational scenario of NASA Ozone Monitoring Instrument data processing system. Application of the model will allow more specific data citations in scientific literature based on large datasets and the data provenance equivalence. Our provenance representations will enable independent reproducibility required by scientific transparency. Increasing transparency will contribute to understanding, and ultimately, credibility of scientific results.
Keywords/Search Tags:Scientific, Reproducibility, Data, Provenance
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