GraphRAG For Higher Accuracy Output

ConfidentialMind GraphRAG is a knowledge graph-based retrieval-augmented generation system that achieves 20-30% more accurate responses.

GraphRAG vs Basic RAG

RAG improves LLM's limited capabilities of generating text based on its training data by retrieving additional information from files and database. LLM models use the findings to generate better answers to the user query. But it comes with a challenge. These machine-learning models struggle to create highly accurate responses when data is stored in vector databases. GraphRAG is a technique that improves that by storing data in a graph-based structure. In that space, it creates better contextual relationships between content. This allows LLM models to understand the meaning behind data and use these to generate even better responses. Here are the two approaches explained: 

Basic RAG

Stores data in vector databases

Creates vector-based relationships

Linear data retrieval

GraphRAG

Stores data in knowledge graphs

Creates semantic-based relationships  

Advanced query matching with relevant data

The GraphRAG Process
File Ingestion
Use simple data connectors to securely process your sensitive documents, such as PDFs, text files, or other formats with AI.
Graph Generation
GraphRAG automatically creates a network of connections between different pieces of information from your documents.
Semantic Summarization
The systems summarizes documents for LLM to  understanding semantic relationships.
Embedding Generation
Converts texts into numbers to capture semantic meanings. Texts with similar meanings are closer together and vice versa.
Distance Computaion
The LLM model finds the most relevant information by analyzing the closeness of the items in the non-linear graph data structures.
Query Processing
The system matches the right information with a user question to figure out what is being really asked.
Response Generation
The LLM model creates highly relevant and accurate answers to the user's question by using information from the original source.

The Real Advantage of Using GraphRAG System

GraphRAG shows significant improvements over the basic RAG system, with a particularly impressive 30% improvement in exact matches.

The Benefits of ConfidentialMind GraphRAG?

Improves answers quality
GraphRAG creates the semantic relationship between data, so it can retrieve correct information and generate answers with up to 30% better accuracy.
Secures your data
Our GraphRAG uses open-source LLMs, the privacy-first principles, and can run where your data is. So, you don't need to move data away and can ensure data is secured while processing it with AI.
Accelerates time to market
Integrate the system quickly via API to your existing applications. So you can launch new AI-powered applications or features in the next few weeks.
FAQ
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What is sovereign AI?

Every government and nation needs to have full control over their proprietary data while still leveraging AI capabilities. What does that mean?

What is sovereign AI?

Every government and nation needs to have full control over their proprietary data while still leveraging AI capabilities. What does that mean?

What is sovereign AI?

Every government and nation needs to have full control over their proprietary data while still leveraging AI capabilities. What does that mean?

What is sovereign AI?

Every government and nation needs to have full control over their proprietary data while still leveraging AI capabilities. What does that mean?

How To Get Started With ConfidentialMind GraphRAG?
1
Choose a use case

The Platform automatically deploys the required AI systems for your use case, including the correct configurations.

2
Connect with your data

Create a connection with your data without moving data away from your environment.

3
Integrate via simple APIs

Our platform creates easy-to-use APIs, so you can simply integrate the GraphRAG system into your internal tools, products, or services.

Frquently Asked Questions
What is GraphRAG?

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. 

How does GraphRAG work?

Here is a simplified version of how GraphRAG works:

  • Graph construction - The system creates a graph structure using all the data you provide access to. Information is stored using nodes as entities, and edges as relationships.
  • Relevant information retrieval - When users write a query, the system matches it with the most relevant documents found in the graph.
  • Accurate response generation - LLM models use the findings to generate accurate responses to the users' queries.
What is the alternative approach?

The alternative is to use basic RAG, which is faster in generating outputs but less accurate.

How to get started with the ConfidentialMind knowledge GraphRAG? 

Book a demo where we walk you through how our platform works and how you can get started.

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