Developing responsible AI practices at the Smithsonian Institution

Author:

Dikow RebeccaORCID,DiPietro Corey,Trizna MichaelORCID,BredenbeckCorp Hanna,Bursell MadelineORCID,Ekwealor Jenna,Hodel RichardORCID,Lopez Nilda,Mattingly William,Munro Jeremy,Naples Richard,Oubre Candace,Robarge Drew,Snyder Sara,Spillane Jennifer,Tomerlin Melinda Jane,Villanueva LuisORCID,White AlexanderORCID

Abstract

Applications of artificial intelligence (AI) and machine learning (ML) have become pervasive in our everyday lives. These applications range from the mundane (asking ChatGPT to write a thank you note) to high-end science (predicting future weather patterns in the face of climate change), but, because they rely on human-generated or mediated data, they also have the potential to perpetuate systemic oppression and racism. For museums and other cultural heritage institutions, there is great interest in automating the kinds of applications at which AI and ML can excel, for example, tasks in computer vision including image segmentation, object recognition (labelling or identifying objects in an image) and natural language processing (e.g. named-entity recognition, topic modelling, generation of word and sentence embeddings) in order to make digital collections and archives discoverable, searchable and appropriately tagged. A coalition of staff, Fellows and interns working in digital spaces at the Smithsonian Institution, who are either engaged with research using AI or ML tools or working closely with digital data in other ways, came together to discuss the promise and potential perils of applying AI and ML at scale and this work results from those conversations. Here, we present the process that has led to the development of an AI Values Statement and an implementation plan, including the release of datasets with accompanying documentation to enable these data to be used with improved context and reproducibility (dataset cards). We plan to continue releasing dataset cards and for AI and ML applications, model cards, in order to enable informed usage of Smithsonian data and research products.

Publisher

Pensoft Publishers

Subject

General Medicine

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