An approach to assess the quality of Jupyter projects published by GLAM institutions

Author:

Candela Gustavo1ORCID,Chambers Sally234ORCID,Sherratt Tim5ORCID

Affiliation:

1. Departamento de Lenguajes y Sistemas Informáticos Universidad de Alicante Alicante Spain

2. Ghent Centre for Digital Humanities Ghent University Ghent Belgium

3. KBR, Royal Library of Belgium Brussels Belgium

4. DARIAH, Digital Research Infrastructure for the Arts and Humanities Paris France

5. Centre for Creative and Cultural Research University of Canberra Bruce ACT Australia

Abstract

AbstractGLAM organizations have been digitizing their collections and making them available for the public for several decades. Recent methods for publishing digital collections such as “GLAM Labs” and “Collections as Data” provide guidelines for the application of computational methods to reuse the contents of cultural heritage institutions in innovative and creative ways. Jupyter Notebooks have become a powerful tool to foster use of these collections by digital humanities researchers. Based on previous approaches for quality assessment, which have been adapted for cultural heritage collections, this paper proposes a methodology for assessing the quality of projects based on Jupyter Notebooks published by relevant GLAM institutions. A list of projects based on Jupyter Notebooks using cultural heritage data has been evaluated. Common features and best practices have been identified. A detailed analysis, that can be useful for organizations interested in creating their own Jupyter Notebooks projects, has been provided. Open issues requiring further work and additional avenues for exploration are outlined.

Publisher

Wiley

Subject

Library and Information Sciences,Information Systems and Management,Computer Networks and Communications,Information Systems

Reference54 articles.

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