Leverages Cloudflare's infrastructure including Workers, D1, Vectorize, Durable Objects, and Workers AI to store and retrieve memories
Uses Cloudflare Workers as the runtime environment and provides deployment options specifically optimized for the Workers platform
Offers deployment directly from the GitHub repository through Cloudflare's deployment system
MCP Memory
MCP Memory is a MCP Server that gives MCP Clients (Cursor, Claude, Windsurf and more) the ability to remember information about users (preferences, behaviors) across conversations. It uses vector search technology to find relevant memories based on meaning, not just keywords. It's built with Cloudflare Workers, D1, Vectorize (RAG), Durable Objects, Workers AI and Agents.
📺 Video
🚀 Try It Out
https://memory.mcpgenerator.com/
🛠️ How to Deploy Your Own MCP Memory
Option 1: One-Click Deploy Your Own MCP Memory to Cloudflare
In Create Vectorize section choose:
Dimensions: 1024
Metric: cosine
Click button "Create and Deploy"
In Cloudflare dashboard, go to "Workers & Pages" and click on Visit
Option 2: Use this template
Click the "Use this template" button at the top of this repository
Clone your new repository
Follow the setup instructions below
Option 3: Create with CloudFlare CLI
🔧 Setup (Only Option 2 & 3)
Install dependencies:
Create a Vectorize index:
Install Wrangler:
Deploy the worker:
🧠 How It Works
Storing Memories:
Your text is processed by Cloudflare Workers AI using the open-source
@cf/baai/bge-m3
model to generate embeddingsThe text and its vector embedding are stored in two places:
Cloudflare Vectorize: Stores the vector embeddings for similarity search
Cloudflare D1: Stores the original text and metadata for persistence
A Durable Object (MyMCP) manages the state and ensures consistency
The Agents framework handles the MCP protocol communication
Retrieving Memories:
Your query is converted to a vector using Workers AI with the same
@cf/baai/bge-m3
modelVectorize performs similarity search to find relevant memories
Results are ranked by similarity score
The D1 database provides the original text for matched vectors
The Durable Object coordinates the retrieval process
This architecture enables:
Fast vector similarity search through Vectorize
Persistent storage with D1
Stateful operations via Durable Objects
Standardized AI interactions through Workers AI
Protocol compliance via the Agents framework
The system finds conceptually related information even when the exact words don't match.
🔒 Security
MCP Memory implements several security measures to protect user data:
Each user's memories are stored in isolated namespaces within Vectorize for data separation
Built-in rate limiting prevents abuse (100 req/min - you can change it in wrangler.jsonc)
Authentication is based on userId only
While this is sufficient for basic protection due to rate limiting
Additional authentication layers (like API keys or OAuth) can be easily added if needed
All data is stored in Cloudflare's secure infrastructure
All communications are secured with industry-standard TLS encryption (automatically provided by Cloudflare's SSL/TLS certification)
💰 Cost Information - FREE for Most Users
MCP Memory is free to use for normal usage levels:
Free tier allows 1,000 memories with ~28,000 queries per month
Uses Cloudflare's free quota for Workers, Vectorize, Worker AI and D1 database
For more details on Cloudflare pricing, see:
❓ FAQ
Can I use memory.mcpgenerator.com to store my memories?
Yes, you can use memory.mcpgenerator.com to store and retrieve your memories
The service is free
Your memories are securely stored and accessible only to you
I cannot guarantee that the service will always be available
Can I host it?
Yes, you can host your own instance of MCP Memory for free on Cloudflare
You'll need a Cloudflare account and the following services:
Workers
Vectorize
D1 Database
Workers AI
Can I run it locally?
Yes, you can run MCP Memory locally for development
Use
wrangler dev
to run the worker locallyYou'll need to set up local development credentials for Cloudflare services
Note that some features like vector search or workers AI requires a connection to Cloudflare's services
Can I use different hosting?
No, MCP Memory is specifically designed for Cloudflare's infrastructure
Why did you build it?
I wanted an open-source solution
Control over my own data was important to me
Can I use it for more than one person?
Yes, MCP Memory can be integrated into your app to serve all your users
Each user gets their own isolated memory space
Can I use it to store things other than memories?
Yes, MCP Memory can store any type of text-based information
Some practical examples:
Knowledge Base: Store technical documentation, procedures, and troubleshooting guides
User Behaviors: Track how users interact with features and common usage patterns
Project Notes: decisions and project updates
The vector search will help find related items regardless of content type
🤝 Show your support
This server cannot be installed
remote-capable server
The server can be hosted and run remotely because it primarily relies on remote services or has no dependency on the local environment.
MCP server that gives MCP clients (like Cursor, Claude, Windsurf) the ability to remember user information across conversations using vector search technology.
Related MCP Servers
- -securityFlicense-qualityAn MCP server that allows Claude and other LLMs to manage persistent memories across conversations through text file storage, enabling commands to add, search, delete and list memory entries.Last updated -296
- -securityFlicense-qualityAn MCP server that gives AI assistants like Cursor, Claude and Windsurf the ability to remember user information across conversations using vector search technology.Last updated -
- -securityFlicense-qualityAn MCP server that enables clients like Cursor, Claude, and Windsurf to remember user information and preferences across conversations using vector search technology.Last updated -
- -securityFlicense-qualityA MCP Server that gives AI assistants the ability to remember information about users across conversations using vector search technology.Last updated -