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Auteur principal: Padilla, Thomas
Format: Recurso educativo Open Access
Langue:en
Publié: 2019
Sujets:
Accès en ligne:https://eric.ed.gov/?id=ED603715
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author Padilla, Thomas
author_facet Padilla, Thomas
Padilla, Thomas
collection Education Resources Information Center
contents Responsible Operations: Data Science, Machine Learning, and AI in Libraries. OCLC Research Position Paper Padilla, Thomas Data Collection Data Analysis Artificial Intelligence Educational Technology Technology Uses in Education Library Role Man Machine Systems Information Technology Bias Accountability Electronic Libraries Academic Libraries Labor Force Development Competence Evidence Based Practice Library Research Interdisciplinary Approach Responsible Operations is intended to help chart library community engagement with data science, machine learning, and artificial intelligence (AI) and was developed in partnership with an advisory group and a landscape group comprised of more than 70 librarians and professionals from universities, libraries, museums, archives, and other organizations. This research agenda presents an interdependent set of technical, organizational, and social challenges to be addressed en route to library operationalization of data science, machine learning, and AI. Challenges are organized across seven areas of investigation: (1) Committing to Responsible Operations; (2) Description and Discovery; (3) Shared Methods and Data; (4) Machine-Actionable Collections; (5) Workforce Development; (6) Data Science Services; (7) Sustaining Interprofessional and Interdisciplinary Collaboration. Organizations can use Responsible Operations to make a case for addressing challenges, and the recommendations provide an excellent starting place for discussion and action.
format Recurso educativo Open Access
id eric_ED603715
institution ERIC Institute of Education Sciences
language en
publishDate 2019
record_format eric
spellingShingle Responsible Operations: Data Science, Machine Learning, and AI in Libraries. OCLC Research Position Paper
Padilla, Thomas
Data Collection
Data Analysis
Artificial Intelligence
Educational Technology
Technology Uses in Education
Library Role
Man Machine Systems
Information Technology
Bias
Accountability
Electronic Libraries
Academic Libraries
Labor Force Development
Competence
Evidence Based Practice
Library Research
Interdisciplinary Approach
Responsible Operations: Data Science, Machine Learning, and AI in Libraries. OCLC Research Position Paper Padilla, Thomas Data Collection Data Analysis Artificial Intelligence Educational Technology Technology Uses in Education Library Role Man Machine Systems Information Technology Bias Accountability Electronic Libraries Academic Libraries Labor Force Development Competence Evidence Based Practice Library Research Interdisciplinary Approach Responsible Operations is intended to help chart library community engagement with data science, machine learning, and artificial intelligence (AI) and was developed in partnership with an advisory group and a landscape group comprised of more than 70 librarians and professionals from universities, libraries, museums, archives, and other organizations. This research agenda presents an interdependent set of technical, organizational, and social challenges to be addressed en route to library operationalization of data science, machine learning, and AI. Challenges are organized across seven areas of investigation: (1) Committing to Responsible Operations; (2) Description and Discovery; (3) Shared Methods and Data; (4) Machine-Actionable Collections; (5) Workforce Development; (6) Data Science Services; (7) Sustaining Interprofessional and Interdisciplinary Collaboration. Organizations can use Responsible Operations to make a case for addressing challenges, and the recommendations provide an excellent starting place for discussion and action.
title Responsible Operations: Data Science, Machine Learning, and AI in Libraries. OCLC Research Position Paper
topic Data Collection
Data Analysis
Artificial Intelligence
Educational Technology
Technology Uses in Education
Library Role
Man Machine Systems
Information Technology
Bias
Accountability
Electronic Libraries
Academic Libraries
Labor Force Development
Competence
Evidence Based Practice
Library Research
Interdisciplinary Approach
url https://eric.ed.gov/?id=ED603715