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Category: Artificial Intelligence

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AI4LAM / Fantastic Futures

Posted by: Pedro Gonzalez-Fernandez

The explosion of interest surrounding Artificial Intelligence (AI) will clearly have a tremendous impact on the world of galleries, libraries, archives, and museums (GLAM). The Library of Congress is exploring how certain AI use cases can help expand access to our collection, enhance services for users, and improve efficiency. We are still in the early …

Why Experiment: Machine Learning at the Library of Congress  

Posted by: Laurie Allen

Why Machine Learning? Everyone at the Library of Congress wants the materials we steward and the services we offer to be useful for as many people as possible. It’s why we do what we do! And across the Library, staff have long relied on technological innovations to enable people to use our materials to become …

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Strategic Plan 2.0: A Digitally-Infused Five-Year Plan

Posted by: Leah Weinryb-Grohsgal

For decades, digital technologies have rewritten the playbook for government agencies, libraries, and cultural heritage organizations. The Library of Congress has investigated, implemented, and even invented new digital approaches and technical methods since the 1950s, aspiring better to serve Congress and the American people with each new technical turn. Today, technology fuels everything we do, …

A list of seven principles for adopting machine learning derived from LC Labs experimentation, reports, and user feedback.

Grounding iterative experimentation with LC Labs: CCHC and Machine Learning

Posted by: Meghan Ferriter

Across the last five years, LC Labs experiments have integrated sundry perspectives and disciplines to connect people, practice, and history; from making collections more legible and discoverable through volunteer crowdsourcing efforts with Beyond Words and By the People, to developing frameworks for ethically engaging people when adopting machine learning with Humans in the Loop, to …