MCP.so
Sign In

Graphiti

@Joseperko1982

About Graphiti

Customized Graphiti MCP server for brainstorming knowledge graphs with specialized entity types for ideas, themes, stakeholders, constraints, and creative collaboration

Basic information

Category

Other

License

Apache-2.0 license

Runtime

python

Transports

stdio

Publisher

Joseperko1982

Config

No standard config provided

This server doesn't expose a parseable MCP config block in its README. See the repository for install instructions.

Repository

Tools

No tools detected

We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.

Overview

What is Graphiti?

Graphiti is a framework for building real-time, temporally-aware knowledge graphs for AI agents. Its MCP server allows AI assistants to manage episodes, entities, and relationships through the Model Context Protocol, integrating dynamic user interactions and business data.

How to use Graphiti?

Install graphiti‑core via pip or poetry, set up a Neo4j 5.26+ database and an OpenAI API key, then use the Python API to add episodes and search the graph. The MCP server can be deployed with Docker for integration with MCP‑compatible clients like Claude or Cursor.

Key features of Graphiti

  • Episode management (add, retrieve, delete)
  • Entity management and relationship handling
  • Semantic and hybrid search (BM25 + embeddings)
  • Group management for organizing related data
  • Graph maintenance operations
  • Bi‑temporal tracking with historical queries

Use cases of Graphiti

  • Giving AI agents persistent, context‑aware memory
  • Integrating live user interactions and enterprise data
  • Enabling state‑based reasoning and task automation
  • Querying complex, evolving datasets with hybrid search

FAQ from Graphiti

What makes Graphiti different from GraphRAG?

Graphiti focuses on dynamic, incrementally updated data with hybrid retrieval and explicit bi‑temporal tracking, while GraphRAG is designed for static document summarization using LLM‑driven community analysis.

What are the runtime dependencies?

Python 3.10+, Neo4j 5.26+, and an OpenAI API key for LLM inference and embeddings. Optional providers (Anthropic, Groq, Gemini) are supported via extra installs.

Where does Graphiti store data?

All graph data, embeddings, and metadata are stored in a Neo4j database. The server requires a running Neo4j instance.

What search methods are supported?

Graphiti supports semantic embeddings, BM25 keyword search, and graph traversal, combined into a hybrid retrieval pipeline. It can also rerank results by graph distance.

Can Graphiti handle contradictory information?

Yes. Graphiti uses temporal edge invalidation to handle changes and contradictions, maintaining a complete history of when facts were known and when they changed.

Comments

More Other MCP servers