semantic-memory
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@semantic-memoryRemember my cat's name is Mia"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
๐ง MCP Semantic Memory Server
Persistent memory with semantic search for Claude and MCP-compatible clients
Give your AI assistant persistent memory that survives between conversations. Save context once, retrieve it intelligently forever.
โจ Features
๐ Semantic Search - Find memories by meaning, not just keywords
๐พ SQLite Storage - Fast, reliable, and scalable
๐ค User Biography - Structured profile (name, occupation, tech stack, etc.)
๐ 100% Local - No external APIs, all processing on your machine
โก Fast - Powered by all-MiniLM-L6-v2 embeddings (~50ms searches)
๐ Private - Your data never leaves your computer
Related MCP server: memcp
๐ฏ Problem & Solution
Problem: Claude forgets everything between conversations. You constantly re-explain your context, projects, preferences, and tech stack.
Solution: This MCP server gives Claude persistent memory with intelligent semantic search. Save information once, and Claude retrieves it automatically when relevant.
Example
// Save once
save_memory("project-info", "Working on an e-commerce site with Next.js and Stripe")
// Days later, in a new conversation
User: "How do I add payments to my project?"
Claude: *searches memory* "Since you're using Stripe in your e-commerce project..."๐ Quick Start
Installation
# Clone the repository
git clone https://github.com/GFYURI/mcp-semantic-memory.git
cd mcp-semantic-memory
# Install dependencies (pnpm recommended)
pnpm install
# or: npm installConfiguration
Add to your MCP client config (e.g., Claude Desktop):
Windows: %APPDATA%\Claude\claude_desktop_config.json
macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
{
"mcpServers": {
"semantic-memory": {
"command": "node",
"args": ["/absolute/path/to/mcp-semantic-memory/index.js"]
}
}
}Example (Windows):
{
"mcpServers": {
"semantic-memory": {
"command": "node",
"args": ["C:\\Users\\YourName\\mcp-semantic-memory\\index.js"]
}
}
}First Run
Restart your MCP client (e.g., Claude Desktop)
The server will download the embedding model (~25MB) on first use
Start saving memories!
๐ Available Tools
Memory Management
save_memory(id, text, metadata?)
Save a memory with semantic embedding.
save_memory({
id: "my-cat",
text: "My cat's name is Mia, she's orange and very playful",
metadata: { category: "personal", type: "pet" }
})search_memory(query, n_results?, threshold?)
Search memories by semantic similarity.
search_memory({
query: "what's my pet's name?",
n_results: 5, // optional, default: 5
threshold: 0.3 // optional, default: 0.3 (0-1 scale)
})get_memory(id)
Retrieve a specific memory by ID.
delete_memory(id)
Delete a memory permanently.
list_all_memories()
List all stored memories (ordered by last update).
User Biography
get_user_bio()
Get the user's complete biographical profile.
set_user_bio(data)
Create or update user biography. All fields are optional.
set_user_bio({
nombre: "Angel",
ocupacion: "Student",
ubicacion: "Santiago, Chile",
tecnologias: ["Python", "JavaScript", "Node.js"],
herramientas: ["VS Code", "Docker", "pnpm"],
idiomas: ["Spanish", "English"],
timezone: "America/Santiago",
mascotas: ["Mia (cat)"]
})update_user_bio(field, value)
Update a single field in the biography.
update_user_bio({
field: "tecnologias",
value: ["Python", "JavaScript", "TypeScript"]
})๐จ Use Cases
For Developers
Remember your tech stack and project context
Store solutions to common problems
Keep track of configurations and preferences
For Students
Save study notes and learning progress
Remember assignment deadlines and requirements
Track research topics and sources
For Everyone
Personal preferences and interests
Important dates and events
Conversation context across sessions
๐ง How It Works
Semantic Search
Traditional keyword search:
Query: "what's my pet's name?"
Memory: "My cat Mia is orange"
Result: โ No matches (different words)Semantic search:
Query: "what's my pet's name?"
Memory: "My cat Mia is orange"
Result: โ
78% similarity (understands meaning)Technical Details
Embeddings: all-MiniLM-L6-v2 (384 dimensions)
Storage: SQLite with optimized indexes
Search: Cosine similarity between vectors
Performance: ~50-100ms per save, ~200ms search in 100 memories
๐ Database Schema
-- Memories table
CREATE TABLE memories (
id TEXT PRIMARY KEY,
text TEXT NOT NULL,
embedding TEXT NOT NULL, -- JSON array of 384 floats
metadata TEXT, -- JSON object
created_at TEXT NOT NULL,
updated_at TEXT NOT NULL
);
-- User biography table
CREATE TABLE user_bio (
id INTEGER PRIMARY KEY CHECK (id = 1),
nombre TEXT,
ocupacion TEXT,
ubicacion TEXT,
tecnologias TEXT, -- JSON array
herramientas TEXT, -- JSON array
idiomas TEXT, -- JSON array
timezone TEXT,
mascotas TEXT, -- JSON array
created_at TEXT NOT NULL,
updated_at TEXT NOT NULL
);๐ Comparison with Alternatives
Feature | This MCP | @modelcontextprotocol/server-memory |
Semantic Search | โ | โ |
User Biography | โ | โ |
Storage | SQLite | In-memory |
Persistence | โ Disk | โ RAM only |
Scalability | 1000s of memories | Limited |
Search Speed | Fast (indexed) | N/A |
๐ ๏ธ Development
# Install dependencies
pnpm install
# Run locally
node index.js
# Test with MCP inspector
npx @modelcontextprotocol/inspector node index.js๐ Requirements
Node.js >= 18.0.0
~100MB disk space (model + dependencies)
MCP-compatible client (Claude Desktop, LM Studio, etc.)
๐ Troubleshooting
First run takes 30-60 seconds
The embedding model is being downloaded (~25MB). Subsequent runs are instant.
sharp installation fails on Windows
pnpm rebuild sharp
# or
pnpm install --forceDatabase is locked
Close other connections to memory.db or restart your MCP client.
Memories not loading
Check that the absolute path in your MCP config is correct.
๐ค Contributing
Contributions are welcome! Feel free to:
Report bugs
Suggest features
Submit pull requests
Improve documentation
๐ License
MIT License - feel free to use this in your own projects!
๐ Acknowledgments
Built with @modelcontextprotocol/sdk
Embeddings by @xenova/transformers
Powered by better-sqlite3
โญ Star History
If you find this useful, consider giving it a star! It helps others discover the project.
Made with โค๏ธ for the MCP community
This server cannot be installed
Maintenance
Resources
Unclaimed servers have limited discoverability.
Looking for Admin?
If you are the server author, to access and configure the admin panel.
Latest Blog Posts
- Your AI Chatbot Just Exposed Your CEO's Salary to an InternBy Om-Shree-0709 on .Agent IdentityMCP SecurityOAuth Delegation
- Why MCP Servers Need Execution Sandboxing (And Why Your Current Stack Isn't Enough)By Om-Shree-0709 on .Agentic AiPrompt InjectionWebAssembly
MCP directory API
We provide all the information about MCP servers via our MCP API.
curl -X GET 'https://glama.ai/api/mcp/v1/servers/GFYURI/mcp-semantic-memory'
If you have feedback or need assistance with the MCP directory API, please join our Discord server