Archival Metadata Architect for National Heritage Project

Digital Preservation Coalition
City of London
2 months ago
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A national archival organization in London is seeking an Archival Metadata Specialist to lead on archival data and metadata within a significant research project. The role involves overseeing data workflows and providing guidance on data modeling, while collaborating with various project partners. Ideal candidates should possess expert knowledge in archival practice and be able to maintain ethical data governance frameworks.
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