Knowledge Graph Memory Server
Enables persistent memory for Claude using a local knowledge graph of entities, relations, and observations.
forked https://github.com/modelcontextprotocol/servers/tree/main
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 identifierentityType(string): Type classificationobservations(string[]): Associated observations
- Each object contains:
- 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 nameto(string): Target entity namerelationType(string): Relationship type in active voice
- Each object contains:
- Skips duplicate relations
-
add_observations
- Add new observations to existing entities
- Input:
observations(array of objects)- Each object contains:
entityName(string): Target entitycontents(string[]): New observations to add
- Each object contains:
- 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 entityobservations(string[]): Observations to remove
- Each object contains:
- 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 nameto(string): Target entity namerelationType(string): Relationship type
- Each object contains:
- 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 one or more keywords
- Input:
query(string)- Space-separated keywords (e.g., "budget utility")
- Multiple keywords are treated as OR conditions
- Searches across:
- Entity names
- Entity types
- Subdomains
- Observation content
- Matching behavior:
- Case-insensitive
- Partial word matching
- Any keyword can match any field
- Returns entities matching ANY of the keywords
- Returns matching entities and their relations
- Example queries:
- Single keyword: "budget"
- Multiple keywords: "budget utility"
- With special chars: "budget & utility"
-
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", "--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.jsonin 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"
- When searching your memory, you can use multiple keywords to find related information
- Example searches:
* Single concept: "programming"
* Related concepts: "programming python"
* Specific domain with role: "work engineer"
3. Memory Creation:
- 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)
- When storing information, use specific and descriptive keywords that will help in future searches
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
c) Store facts about them as observations
d) Use clear and searchable terms in entity names and observations to facilitate future retrieval
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.
Server Terkait
Alpha Vantage MCP Server
sponsorAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
SheetsData
Instant access to electronic component datasheets for AI agents — specs, pinouts, package info, and absolute max ratings extracted from manufacturer PDFs on demand.
Jira Context MCP
MCP server to provide Jira Tickets information to AI coding agents like Cursor.
POC MCP HTTP Server
A proof-of-concept server implementing the Model Context Protocol with a streamable HTTP transport.
IMAGIN.studio API Docs
Semantic search over IMAGIN.studio vehicle imagery API documentation, CDN configuration, and integration guides.
Claude Memory MCP Server
A persistent memory server for Large Language Models, designed to integrate with the Claude desktop application. It supports tiered memory, semantic search, and automatic memory management.
Remote MCP Server (Authless)
An example of a remote MCP server deployable on Cloudflare Workers without authentication.
OpenGrok
OpenGrok MCP Server is a native Model Context Protocol (MCP) VS Code extension that seamlessly bridges the gap between your organization's OpenGrok indices and GitHub Copilot Chat. It arms your AI assistant with the deep, instantaneous repository context required to traverse, understand, and search massive codebases using only natural language.
Multi Sentry MCP
Multi-org Sentry MCP server — isolated error monitoring across multiple projects from a single config. Process-level security, handoff package generation.
NestJS MCP Server Module
A NestJS module for building MCP servers to expose tools and resources for AI, with support for multiple transport types.
mcp-checkup
Analyze your MCP setup: measure token cost per tool, find bloated schemas, detect duplicates, and get optimization tips to reclaim your context window.