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Reusing Collection Metadata as Data

Introduction presentation on using metadata as data for digital scholarship and research.

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Reusing Collection Metadata as Data

  1. 1. Reusing Collection Metadata as Data Mapping the Spanish Mission Landscape Workshop March 2, 2019 | University of Texas at Austin Presentation by: Itza Carbajal, Latin American Metadata Librarian
  2. 2. who creates metadata? ● WHO DOESN’T is the real question ● Individuals ○ Tagging of photos, file naming, project contributions ● Information Science professionals (librarians, archivists, database managers, etc) ○ Cataloging book records ○ Access mechanisms such as finding aids, online repositories, CMS ○ Databases ● Mixed media creators ○ Film production, photography, software developers, music producers ● Publishing ○ Publication agencies, writers working with digital materials, illustrators
  3. 3. why is metadata created? ● Identifying ● Managing ● Searching ● Analyzing ● Designing
  4. 4. what type of metadata is typically captured? Administrative Metadata used in managing and administering collections and information resources Descriptive Metadata used to identify and describe collections and related information resources Technical Metadata related to how a system functions or metadata behaves
  5. 5. re-purpose metadata for digital scholarship ● Classroom Instruction ○ Discovery and deep group discussions ● Layered Analysis ○ Geographic Information systems ● In depth searchability ○ Transcription
  6. 6. capturing metadata Scribe an open source framework for community transcription built by NYPL Labs in collaboration with Zooniverse Scraper gets data out of web pages and into spreadsheets Optical Character Recognition (OCR) technologies - including programs like Google Drive, Tesseract or Adobe Acrobat that can detect text to make it searchable/readable *Rate of accuracy varies and access to affordable software not consistent
  7. 7. accessing existing metadata Digital Public Library of America (DPLA) open API enables people to use millions of records describing cultural heritage resources held by institutions across the US. Flickr has over 5 billion photos with valuable metadata such as tags, geolocation, and Exif data The Europeana provides access to over 50 million digitised items – books, music, artworks and more from thousands of European archives, libraries and museums HathiTrust Digital Library has more than 2 million volumes are in the public domain and freely viewable on the Web
  8. 8. analyzing metadata Map Warper built by NYPL Labs is a tool suite used to align (or "rectify") historical maps to the digital maps of today. Gephi an open-source software for network visualization and analysis of data sets to summarize their main characteristics, often with visual methods. MALLET is a Java-based package for statistical natural language processing, document classification, clustering, topic modeling, information extraction, and other machine learning applications to text.
  9. 9. manipulating Metadata OpenRefine - clean up messy or inconsistent data Data Wrangler - used to merge, delete, autofill, filling in missing data or incorporating data from another source, and move information in your set. Data Science Toolkit - set of open-source tools for data science information transformation needs
  10. 10. thank you.Email questions to: i.carbajal@austin.utexas.edu