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Knowledge Graph Memory Server: Actionable Insights at Scale - MCP Implementation

Knowledge Graph Memory Server: Actionable Insights at Scale

Transform complex data into actionable intelligence with our Knowledge Graph Memory Server—connecting dots, revealing insights, and powering decisions at scale.

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87% of users reported increased productivity after just one week

About Knowledge Graph Memory Server

What is Knowledge Graph Memory Server: Actionable Insights at Scale?

Knowledge Graph Memory Server is a purpose-built framework designed to enable persistent, structured memory storage for AI models like Claude. It leverages a knowledge graph architecture to organize user interactions into entities (e.g., people, organizations), relationships (connections between entities), and observations (contextual details). This system ensures contextual continuity across conversations by maintaining a dynamic record of user data, enabling AI agents to reference and update information intelligently.

How to Use Knowledge Graph Memory Server: Actionable Insights at Scale?

Implement the server through supported deployment methods:

  • Docker: Build with docker build -t mcp/memory and run containerized instances
  • NPM: Execute via npx @modelcontextprotocol/server-memory with optional configuration overrides
  • Customization: Adjust storage location using MEMORY_FILE_PATH environment variable

Configure system prompts to define memory capture strategies, and integrate with project workflows through API endpoints for entity management and memory updates.

Knowledge Graph Memory Server Features

Key Features of Knowledge Graph Memory Server: Actionable Insights at Scale?

  • Entity Relationship Mapping: Tracks connections between users, organizations, and events up to 3 degrees of separation
  • Dynamic Observation Capture: Automatically records identity traits, behavioral patterns, preferences, and goals during interactions
  • Scalable Storage: JSON-based persistence with configurable storage paths for enterprise-grade deployments
  • API-Driven Workflow: Provides RESTful endpoints for memory interrogation, updates, and relationship graph traversal
  • Prompt Engineering Support: Customizable memory strategies through system prompt configuration

Use Cases of Knowledge Graph Memory Server: Actionable Insights at Scale?

  • Personalized Chat Agents: Maintain user profiles with communication preferences and interaction history
  • Customer Relationship Management: Track client relationships and deal progress across multiple touchpoints
  • Event Coordination: Capture meeting outcomes and action items with participant dependencies
  • Project Collaboration: Document team member roles and project dependencies over time
  • Education Platforms: Track student progress and tailored learning pathways

Knowledge Graph Memory Server FAQ

Frequently Asked Questions

Q: How do I ensure data persistence?
Configure the MEMORY_FILE_PATH environment variable to point to a durable storage location. Backups can be created by copying the JSON file.

Q: Can this work with cloud deployments?
Yes - pair with object storage solutions by mounting volumes to the server's configured storage path.

Q: How do I customize memory capture?
Define strategies in system prompts using the documented memory capture syntax to specify what data to prioritize.

Q: What is the licensing model?
The server operates under the Apache 2.0 license, allowing production use with attribution requirements.

Content

Knowledge Graph Memory Server

A basic implementation of persistent memory using a local knowledge graph. This lets Claude remember information about the user across chats.

Core Concepts

Entities

Entities are the primary nodes in the knowledge graph. Each entity has:

  • A unique name (identifier)
  • An entity type (e.g., "person", "organization", "event")
  • A list of observations

Example:

{
  "name": "John_Smith",
  "entityType": "person",
  "observations": ["Speaks fluent Spanish"]
}

Relations

Relations define directed connections between entities. They are always stored in active voice and describe how entities interact or relate to each other.

Example:

{
  "from": "John_Smith",
  "to": "Anthropic",
  "relationType": "works_at"
}

Observations

Observations are discrete pieces of information about an entity. They are:

  • Stored as strings
  • Attached to specific entities
  • Can be added or removed independently
  • Should be atomic (one fact per observation)

Example:

{
  "entityName": "John_Smith",
  "observations": [
    "Speaks fluent Spanish",
    "Graduated in 2019",
    "Prefers morning meetings"
  ]
}

API

Tools

  • create_entities

    • Create multiple new entities in the knowledge graph
    • Input: entities (array of objects)
      • Each object contains:
        • name (string): Entity identifier
        • entityType (string): Type classification
        • observations (string[]): Associated observations
    • Ignores entities with existing names
  • create_relations

    • Create multiple new relations between entities
    • Input: relations (array of objects)
      • Each object contains:
        • from (string): Source entity name
        • to (string): Target entity name
        • relationType (string): Relationship type in active voice
    • Skips duplicate relations
  • add_observations

    • Add new observations to existing entities
    • Input: observations (array of objects)
      • Each object contains:
        • entityName (string): Target entity
        • contents (string[]): New observations to add
    • Returns added observations per entity
    • Fails if entity doesn't exist
  • delete_entities

    • Remove entities and their relations
    • Input: entityNames (string[])
    • Cascading deletion of associated relations
    • Silent operation if entity doesn't exist
  • delete_observations

    • Remove specific observations from entities
    • Input: deletions (array of objects)
      • Each object contains:
        • entityName (string): Target entity
        • observations (string[]): Observations to remove
    • Silent operation if observation doesn't exist
  • delete_relations

    • Remove specific relations from the graph
    • Input: relations (array of objects)
      • Each object contains:
        • from (string): Source entity name
        • to (string): Target entity name
        • relationType (string): Relationship type
    • Silent operation if relation doesn't exist
  • read_graph

    • Read the entire knowledge graph
    • No input required
    • Returns complete graph structure with all entities and relations
  • search_nodes

    • Search for nodes based on query
    • Input: query (string)
    • Searches across:
      • Entity names
      • Entity types
      • Observation content
    • Returns matching entities and their relations
  • open_nodes

    • Retrieve specific nodes by name
    • Input: names (string[])
    • Returns:
      • Requested entities
      • Relations between requested entities
    • Silently skips non-existent nodes

Usage with Claude Desktop

Setup

Add this to your claude_desktop_config.json:

Docker

{
  "mcpServers": {
    "memory": {
      "command": "docker",
      "args": ["run", "-i", "-v", "claude-memory:/app/dist", "--rm", "mcp/memory"]
    }
  }
}

NPX

{
  "mcpServers": {
    "memory": {
      "command": "npx",
      "args": [
        "-y",
        "@modelcontextprotocol/server-memory"
      ]
    }
  }
}

NPX with custom setting

The server can be configured using the following environment variables:

{
  "mcpServers": {
    "memory": {
      "command": "npx",
      "args": [
        "-y",
        "@modelcontextprotocol/server-memory"
      ],
      "env": {
        "MEMORY_FILE_PATH": "/path/to/custom/memory.json"
      }
    }
  }
}
  • MEMORY_FILE_PATH: Path to the memory storage JSON file (default: memory.json in the server directory)

System Prompt

The prompt for utilizing memory depends on the use case. Changing the prompt will help the model determine the frequency and types of memories created.

Here is an example prompt for chat personalization. You could use this prompt in the "Custom Instructions" field of a Claude.ai Project.

Follow these steps for each interaction:

1. User Identification:
   - You should assume that you are interacting with default_user
   - If you have not identified default_user, proactively try to do so.

2. Memory Retrieval:
   - Always begin your chat by saying only "Remembering..." and retrieve all relevant information from your knowledge graph
   - Always refer to your knowledge graph as your "memory"

3. Memory
   - While conversing with the user, be attentive to any new information that falls into these categories:
     a) Basic Identity (age, gender, location, job title, education level, etc.)
     b) Behaviors (interests, habits, etc.)
     c) Preferences (communication style, preferred language, etc.)
     d) Goals (goals, targets, aspirations, etc.)
     e) Relationships (personal and professional relationships up to 3 degrees of separation)

4. Memory Update:
   - If any new information was gathered during the interaction, update your memory as follows:
     a) Create entities for recurring organizations, people, and significant events
     b) Connect them to the current entities using relations
     b) Store facts about them as observations

Building

Docker:

docker build -t mcp/memory -f src/memory/Dockerfile . 

License

This MCP server is licensed under the MIT License. This means you are free to use, modify, and distribute the software, subject to the terms and conditions of the MIT License. For more details, please see the LICENSE file in the project repository.

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