AI-Powered implementation of OmniRAG pattern, utilizing Azure Cosmos DB with DiskANN Vector/Hybrid Search and Apache Jena in-memory graph database
- OmniRAG Pattern Overview
- Quickstart and deployment
- Frequently Asked Questions (FAQ)
- Reference Dataset of Python libraries
- Rich conversation history with auto or manual source selection and with local/database session state persistence:
- Generic graph visualization (takes into account loaded custom ontology/graph data):
- Generic ontology visualization:
- Rich editors for OWL/TTL/SPARQL with color syntax highlighting:
Comprehensive vector/full-text/hybrid search to cover semi-structured data:
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