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. Core Components of GraphAI

Enhancing AI Model Understanding

By utilizing GraphRAG, Graphai enables AI models, particularly LLMs, to gain a deeper understanding of blockchain data context. This enhanced comprehension allows for more accurate and nuanced interactions with blockchain information.

PreviousContextualizing Blockchain DataNextEnhancing AI-Driven Blockchain Applications

Last updated 5 months ago