DBAIJan 28, 2025

The Impact of Modern AI in Metadata Management

arXiv:2501.16605v224 citationsh-index: 3Has CodeHuman-Centric Intelligent Systems
Originality Synthesis-oriented
AI Analysis

It addresses metadata management challenges for data governance and resource discovery in data-driven applications, but appears incremental in integrating existing AI technologies.

This paper investigates traditional and AI-driven metadata management approaches, presenting an innovative AI-assisted framework to automate metadata generation and enhance governance for modern datasets.

Metadata management plays a critical role in data governance, resource discovery, and decision-making in the data-driven era. While traditional metadata approaches have primarily focused on organization, classification, and resource reuse, the integration of modern artificial intelligence (AI) technologies has significantly transformed these processes. This paper investigates both traditional and AI-driven metadata approaches by examining open-source solutions, commercial tools, and research initiatives. A comparative analysis of traditional and AI-driven metadata management methods is provided, highlighting existing challenges and their impact on next-generation datasets. The paper also presents an innovative AI-assisted metadata management framework designed to address these challenges. This framework leverages more advanced modern AI technologies to automate metadata generation, enhance governance, and improve the accessibility and usability of modern datasets. Finally, the paper outlines future directions for research and development, proposing opportunities to further advance metadata management in the context of AI-driven innovation and complex datasets.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes