Skip to main content

User account menu

  • Log in
DBS-Logo

Database Group Leipzig

within the department of computer science

ScaDS-Logo Logo of the University of Leipzig

Main navigation

  • Home
  • Study
    • Exams
      • Hinweise zu Klausuren
    • Courses
      • Current
    • Modules
    • LOTS-Training
    • Abschlussarbeiten
    • Masterstudiengang Data Science
    • Oberseminare
    • Problemseminare
    • Top-Studierende
  • Research
    • Projects
      • Benchmark datasets for entity resolution
      • FAMER
      • HyGraph
      • Privacy-Preserving Record Linkage
      • GRADOOP
    • Publications
    • Prototypes
    • Annual reports
    • Cooperations
    • Graduations
    • Colloquia
    • Conferences
  • Team
    • Erhard Rahm
    • Member
    • Former employees
    • Associated members
    • Gallery

On Metadata Interoperability in Data Warehouses

Breadcrumb

  • Home
  • On Metadata Interoperability in Data Warehouses

Do, H. ; Rahm, E.

On Metadata Interoperability in Data Warehouses

Technical Report 01-2000. Dept. of Computer Science, Univ. of Leipzig, March 2000

2000

Report

Abstract

In current data warehouse environments there is either no or only insufficient support for a consistent and comprehensive metadata management. Typically, a multitude of largely autonomous and heterogeneously organized repositories coexist. We categorize the major metadata types and their interdependencies within a three-dimensional classification approach. We then investigate how interoperability and integration of metadata can be achieved based on a federated metadata architecture and standardization efforts such as OIM and CWM. In particular, we examine synchronization alternatives to keep replicated metadata consistent. We also give an overview of currently available commercial repositories and discuss interoperability issues to couple data warehouses with information portals.

Recent publications

  • 2025 / 9: Generating Semantically Enriched Mobility Data from Travel Diaries
  • 2025 / 8: Slice it up: Unmasking User Identities in Smartwatch Health Data
  • 2025 / 6: SecUREmatch: Integrating Clerical Review in Privacy-Preserving Record Linkage
  • 2025 / 6: Leveraging foundation models and goal-dependent annotations for automated cell confluence assessment
  • 2025 / 5: Federated Learning With Individualized Privacy Through Client Sampling

Footer menu

  • Directions
  • Contact
  • Impressum