metaadatait
Metaadatait is a term used in information science to describe an approach to metadata management and analysis that leverages artificial intelligence to extract, organize, and reason about metadata across datasets and systems. It emphasizes automated provenance tracking, quality control, and interoperability to improve data discovery and governance.
Key features include standardized metadata schemas, automated tagging and enrichment, data lineage capture, quality metrics, semantic
Architecturally, metaadatait typically comprises a metadata repository, ingestion and normalization pipelines, AI inference modules for schema
Applications span data catalogs in enterprises, scientific data management, digital libraries, media asset management, and regulatory
Challenges include privacy and security concerns, scalability for large volumes, schema drift, potential biases in AI
It is an emerging concept in data governance and information management, drawing on established practices such
See also: metadata, data catalog, data provenance, PROV-O, Dublin Core, schema.org, FAIR data principles.