Publication: The University of Virginia Archival AI Protocol
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University of Virginia
Abstract
The University of Virginia Archival AI Protocol (UVA AAIP) establishes a practical standard governing how artificial intelligence systems may access and use archival collections. The Protocol distinguishes AI foundation model training, a stewardship decision that permanently changes an institution's relationship with its collections, from retrieval-based AI systems, which keep source materials under organizational control and preserve the provenance chain. Built on three foundational pillars, provenance and attribution, donor and community responsibilities, and institutional accountability, the Protocol conditions access to archival materials on demonstrated item-level provenance, meaningful attribution, and contractually enforceable institutional accountability, applying a presumption against approval for broad commercial training where those conditions cannot be met. The Protocol provides a decision framework, model contract clauses for deeds of gift and vendor agreements, minimum provenance standards for AI-generated citations, and a phased implementation plan. Designed for adoption by memory institutions of any size and type, it offers a consistent position from which to evaluate, negotiate, and govern AI partnerships while honoring obligations to donors, communities, and the integrity of the public record.
Description
Resource type: Protocol
Version 1.1, January 27, 2026. This is a living document subject to periodic review and revision.
Original submission date: 2026-03-22T14:31:04Z
Original submission date: 2026-03-22T14:31:04Z
Subjects
Archival AI Policy, AI Training Data Governance, AI Ethics, Archival Collections, Cultural Heritage, Digital Archives, AI Protocol, AI Policy, Museums, Special Collections, Data Sovereignty