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Knowledge Graph

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itseasy21

MCP server enabling persistent memory for Claude through a local knowledge graph - fork focused on local development

Publisheritseasy21
Repositorymcp-knowledge-graph
LanguageJavaScript
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17
Stars
60
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Transport typestdio
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LicenseMIT
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  • Connect tools to AI workflows

    Knowledge Graph exposes MCP capabilities that can be used by compatible AI clients and agents.

  • 0 available tools

    Browse the callable actions below, including names and descriptions when provided by the server.

  • Ready-to-copy setup

    Use the installation snippets to configure this server in your preferred MCP client.

  • Open source signals

    60 stars and 17 forks from the linked repository.

Knowledge Graph Memory Server

smithery badge

An improved implementation of persistent memory using a local knowledge graph with a customizable memory path.

This lets Claude remember information about the user across chats.

[!NOTE] This is a fork of the original Memory Server and is intended to not use the ephemeral memory npx installation method.

Server Name

txt
mcp-knowledge-graph

screen-of-server-name

read-function

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
  • Creation date and version tracking

The version tracking feature helps maintain a historical context of how knowledge evolves over time.

Example:

json
{
  "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. Each relation includes:

  • Source and target entities
  • Relationship type
  • Creation date and version information

This versioning system helps track how relationships between entities evolve over time.

Example:

json
{
  "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:

json
{
  "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 Cursor, Cline or Claude Desktop

Setup

Add this to your mcp.json or claude_desktop_config.json:

json
{
    "mcpServers": {
      "memory": {
        "command": "npx",
        "args": [
          "-y",
          "@itseasy21/mcp-knowledge-graph"
        ],
        "env": {
          "MEMORY_FILE_PATH": "/path/to/your/projects.jsonl"
        }
      }
    }
  }

Installing via Smithery

To install Knowledge Graph Memory Server for Claude Desktop automatically via Smithery:

bash
npx -y @smithery/cli install @itseasy21/mcp-knowledge-graph --client claude

Custom Memory Path

You can specify a custom path for the memory file in two ways:

  1. Using command-line arguments:
json
{
  "mcpServers": {
    "memory": {
      "command": "npx",
      "args": ["-y", "@itseasy21/mcp-knowledge-graph", "--memory-path", "/path/to/your/memory.jsonl"]
    }
  }
}
  1. Using environment variables:
json
{
  "mcpServers": {
    "memory": {
      "command": "npx",
      "args": ["-y", "@itseasy21/mcp-knowledge-graph"],
      "env": {
        "MEMORY_FILE_PATH": "/path/to/your/memory.jsonl"
      }
    }
  }
}

If no path is specified, it will default to memory.jsonl in the server's installation 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.

txt
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

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.

Installation

TypingMind
Prerequisites:

Node.js 18+

{
  "mcpServers": {
    "memory": {
      "command": "npx",
      "args": [
        "-y",
        "@itseasy21/mcp-knowledge-graph"
      ],
      "env": {
        "MEMORY_FILE_PATH": "/path/to/your/projects.jsonl"
      }
    }
  }
}

Use Knowledge Graph MCP with multiple AI models

TypingMind connects MCP tools at the workspace level, so once Knowledge Graph is connected, you can use it with different AI models in TypingMind instead of setting it up separately for each model. This MCP runs locally through the TypingMind MCP connector on your device.

Setup guide to use the local connector

Use this when the MCP server needs access to local files, apps, or private resources on your computer.

1

Open the MCP settings

In TypingMind, go to Settings, Advanced Settings, then Model Context Protocol and choose Setup Connector.

  1. Open TypingMind in your browser.
  2. Click the Settings icon.
  3. Go to Advanced Settings.
  4. Open the Model Context Protocol section.
  5. Click Setup Connector and choose This Device.
TypingMind MCP connector setup screen with This Device selected
2

Run the connector command

Choose This Device, copy the command from TypingMind, and run it in Terminal. Keep the process running while you use MCP.

  1. Copy the setup command shown by TypingMind.
  2. Open Terminal on macOS or Windows Terminal on Windows.
  3. Paste and run the command.
  4. Approve the package install if Terminal asks you to proceed.
  5. Keep the Terminal window running while using MCP tools.
3

Add Knowledge Graph as a server

When the connector status is Ready, click Edit Servers and paste the MCP server configuration.

  1. Wait until the connector status shows Ready.
  2. Click Edit Servers.
  3. Paste the Knowledge Graph MCP server configuration.
  4. Save the server list.
  5. Refresh if you want to confirm the connector is still ready.
TypingMind MCP settings showing active server and Edit Servers button
{
  "mcpServers": {
    "knowledge-graph": {
      "command": "npx",
      "args": [
        "-y",
        "@itseasy21/mcp-knowledge-graph"
      ]
    }
  }
}
4

Use it across models

Save the server list, open Plugins, enable the Knowledge Graph MCP tools, then select any supported AI model in TypingMind and use the tools in chat or assign them to an AI agent.

  1. Open the Plugins page in TypingMind.
  2. Enable the Knowledge Graph MCP tools.
  3. Start a chat and choose the AI model you want to use.
  4. Use the MCP tools in chat or assign them to an AI agent.
  5. Switch to another AI model whenever needed without reconnecting MCP.
TypingMind chat using enabled MCP tools with a selected AI model
Can you use Knowledge Graph to help me with this task?
Knowledge Graph
Sure. I read it.
Here is what I found using Knowledge Graph.

Frequently asked questions

What is the Knowledge Graph MCP server used for?

Knowledge Graph is an MCP server that lets compatible AI clients connect to external tools and context. In TypingMind, you can add this MCP server once and make its tools available in your AI workspace.

Can I use Knowledge Graph MCP with multiple AI models in TypingMind?

Yes. TypingMind connects MCP tools at the workspace level, so you can use Knowledge Graph with different AI models such as Claude, ChatGPT, Gemini, or other models you have configured in TypingMind without setting up the MCP server separately for each model.

Why use Knowledge Graph MCP with TypingMind?

TypingMind is one of the best frontends for LLM chat because it brings multiple AI models, prompts, plugins, AI agents, API keys, and MCP tools into one workspace. With Knowledge Graph connected, you can use its MCP tools across your preferred models while keeping your chat workflow organized in TypingMind.

How do I connect Knowledge Graph MCP to TypingMind?

Knowledge Graph runs through the TypingMind local MCP connector. This is best when the MCP server needs access to local files, desktop apps, command-line tools, or private resources on your computer.

What tools does Knowledge Graph MCP provide in TypingMind?

Knowledge Graph exposes MCP capabilities that can be enabled from the TypingMind Plugins page and used in chat or assigned to AI agents.

Do I need to share my API keys with TypingMind to use Knowledge Graph MCP?

No. TypingMind is local-first and lets you keep your model providers, API keys, prompts, and MCP configuration under your control. If Knowledge Graph requires authentication, add the required headers, OAuth settings, or local configuration for that MCP server when you create the connection.

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