Blog | Enterprise Data Modeling for Connected Data
Discover how retrieval augmented generation (RAG) works, why it matters, and how enterprises use it to deliver trustworthy, context-aware AI outputs.
Introducing the TQ Data Foundation–the Context Layer for trusted, autonomous agents. [LEARN MORE]
Discover how retrieval augmented generation (RAG) works, why it matters, and how enterprises use it to deliver trustworthy, context-aware AI outputs.
Discover how semantic AI combines knowledge graphs, metadata management, and governance to make AI explainable, interoperable, and enterprise-ready.
Discover what data observability is, why it matters for enterprises, and how it extends beyond monitoring to support governance, AI readiness, and trusted data across the enterprise.
Learn what data integrity is, why it matters, and how enterprises can protect it. Explore principles, threats, real-world examples, and best practices for ensuring trustworthy, AI-ready data.
Improve governance, integration, and AI explainability by structuring enterprise knowledge with semantic modeling standards like RDF, SHACL, and OWL. Data is everywhere, but without structure,
Learn what AI-ready data is, why it needs governance and a semantic layer, and how enterprises can build a trusted foundation for AI success.
Summary: Building semantic knowledge graphs faster with AI, and embedding AI governance directly into the data layer speeds up time-to-value for semantic data governance. This
Learn how enterprise data governance ensures compliance, builds trust, and powers AI with a semantic foundation using knowledge graphs.
Legacy data catalogs weren’t built for AI—and it shows. In this whitepaper, TopQuadrant reveals the hidden metadata gaps holding back AI adoption and how TopBraid EDG delivers the infrastructure autonomous agents need to scale safely and effectively.
Harness the power of knowledge graphs to manage the metadata driving your AI architecture.
Use Cases
Industries
Initiatives
Controlled Vocabularies