GraphAI
  • Abstract
  • Unleashing the Power of Blockchain Data for AI
  • The GraphAI Manifesto
  • Core Components of GraphAI
    • Blockchain Data Indexing
    • Customizable Sub-Indexes
    • Vector Database Integration
    • Knowledge Graph Construction
    • Contextualizing Blockchain Data
    • Enhancing AI Model Understanding
  • Enhancing AI-Driven Blockchain Applications
    • Empowering LLM-Based dApps
    • Expanding Application Horizons
  • System Architecture: Scalability and Flexibility
  • Advantages of GraphAI
    • Accelerated Development of AI-Driven dApps
    • Improved AI Model Performance
    • Contextual Richness through GraphRAG
  • GraphRAG Lifecycle in GraphAI
  • Future Developments
Powered by GitBook
On this page
  1. Advantages of GraphAI

Improved AI Model Performance

The combination of structured data, vector databases, and knowledge graphs enables the development of more accurate and context-aware AI models, particularly beneficial for LLMs operating on blockchain data.

PreviousAccelerated Development of AI-Driven dAppsNextContextual Richness through GraphRAG

Last updated 5 months ago