ConfidentialMind GraphRAG is a knowledge graph-based retrieval-augmented generation system that achieves 20-30% more accurate responses.
Stores data in vector databases
Creates vector-based relationships
Linear data retrieval
Stores data in knowledge graphs
Creates semantic-based relationships
Advanced query matching with relevant data
GraphRAG shows significant improvements over the basic RAG system, with a particularly impressive 30% improvement in exact matches.
Every government and nation needs to have full control over their proprietary data while still leveraging AI capabilities. What does that mean?
Every government and nation needs to have full control over their proprietary data while still leveraging AI capabilities. What does that mean?
Every government and nation needs to have full control over their proprietary data while still leveraging AI capabilities. What does that mean?
Every government and nation needs to have full control over their proprietary data while still leveraging AI capabilities. What does that mean?
The Platform automatically deploys the required AI systems for your use case, including the correct configurations.
Create a connection with your data without moving data away from your environment.
Our platform creates easy-to-use APIs, so you can simply integrate the GraphRAG system into your internal tools, products, or services.
GraphRAG is a technique that improves basic RAG capabilities by storing data in the knowledge graph structure, not a vector database. In that space, semantic relationships between related and unrelated data are created. So, LLM models can retrieve more relevant information based on the users' query and generate better answers.
Here is a simplified version of how GraphRAG works:
The alternative is to use basic RAG, which is faster in generating outputs but less accurate.
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