Data Cataloging with Knowledge Graphs

Today, data catalogs are increasingly recognized as a central mechanism for data management. They have become a critical building block for helping organizations find, inventory, connect and analyze their diverse and distributed data assets — in order to optimize their business use and value. Knowledge graphs are a key technology for data cataloging because they can meaningfully capture and connect the vast variety of enterprise data sources. They can eliminate data and metadata silos, delivering high-value business applications such as complete end-to-end data lineage and “Google-like” semantic search over metadata. In this webinar we will discuss: 


  • Why flexibility, extensibility and open APIs are a must for data catalogs
  • What enterprise data catalogs (internal to an organization) and open data catalogs in government (e.g., using the standards-based DCAT vocabulary) share in common
  • The role of knowledge graphs in capturing information about diverse and siloed data assets and in creating semantic relationships between them 
  • How assets in a data catalog can be contextualized by connecting them to relevant processes, policies and other business information 
  • How inferencing and machine learning can automate and simplify the process of tagging and connecting data assets 
  • Why data catalogs are an important step in supporting enterprises’ move towards data lakes

Ready to Get Started?

Get in touch today to learn how to improve semantic data governance for your enterprise.