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Metadata: the view from my trench

Metadata: the view from my trench. Ardys Kozbial UCAI Project, UC San Diego For VRA, March 15, 2005. Who is working on UCAI?. Brian Schottlaender, Principal Investigator Linda Barnhart, Project Manager Ardys Kozbial, Metadata Librarian Trish Rose, Metadata Librarian

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Metadata: the view from my trench

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  1. Metadata: the view from my trench Ardys Kozbial UCAI Project, UC San Diego For VRA, March 15, 2005

  2. Who is working on UCAI? • Brian Schottlaender, Principal Investigator • Linda Barnhart, Project Manager • Ardys Kozbial, Metadata Librarian • Trish Rose, Metadata Librarian • Esme Cowles, Programmer • Joe Jesena, Programmer

  3. UCAI Partners, Phase 2 • Image Library, Ingalls Library, Cleveland Museum of Art • VIA metadata and images, Harvard University • Visual Image Collection, UCSD Art & Architecture Library • Visual Resources Center, Dept. of Art History, University of Minnesota • Fisher Fine Arts Library Image Collection, University of Pennsylvania • Visual Resources, Dept. of Art and Archaeology, Princeton University

  4. UCAI Phase 2 • Phase 1, Apr. 2002 – Dec. 2003 • Demonstrate feasibility • Phase 2, Jan. 2004 - June 2005 • Build infrastructure • Record count • 988,554 image records • 672,746 work records

  5. Definitions Clustering. An automated technique for grouping or classifying data together according to similar features. The goal of the technique is to compress data sets by highlighting the categories inherent in a data set. Similarity measures. The criteria by which the cluster is formed.

  6. Similarity measures I-Box I Box Morris, Robert Morris, Robert role: artist 1962 1962 Sculpture Mixed media

  7. Similarity Measures

  8. Working together

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