MCP server for AutoMem: AI memory storage and recall
npm install @verygoodplugins/mcp-automem
One command. Infinite memory. Perfect recall across all your AI tools.
``bash`
npx @verygoodplugins/mcp-automem setup
Your AI assistant now remembers everything. Forever. Across every conversation.
Works with Claude Desktop, Cursor IDE, Claude Code, GitHub Copilot (coding agent), ChatGPT, ElevenLabs, OpenAI Codex - any MCP-compatible AI platform.
Every AI conversation starts from zero. Claude forgets your coding style. Cursor can't learn your patterns. Your assistant doesn't remember yesterday's decisions.
Until now.
AutoMem MCP connects your AI to persistent memory powered by AutoMem - a graph-vector memory service.
- AI remembers decisions, patterns, and context forever
- Works across all MCP platforms - Claude Desktop, Cursor, Claude Code
- Cross-device sync - same memory on Mac, Windows, Linux
- 11 relationship types between memories (not just similarity)
- Research-validated approach (HippoRAG 2: 7% better associative memory)
- Sub-second retrieval even with millions of memories
| Platform | Support | Setup Time |
| ------------------ | ------- | ---------- |
| Claude Desktop | โ
Full | 30 seconds |
| Cursor IDE | โ
Full | 30 seconds |
| Claude Code | โ
Full | 30 seconds |
| GitHub Copilot | โ
Full | 2 minutes |
| OpenAI Codex | โ
Full | 30 seconds |
| Any MCP client | โ
Full | 30 seconds |
!Claude Desktop Using Memory
_Claude automatically recalls memories at conversation start using custom instructions_
!Cursor with Memory
_Cursor uses automem.mdc rule to automatically recall and store memories_
!Claude Code Memory Capture
_Git commits, builds, and deployments automatically stored to memory_
OpenAI Codex uses config.toml to automatically recall and store memories
`javascript`
// After 1 week, your AI writes EXACTLY like you
// โ
It knows you prefer early returns
// โ
It uses your specific variable naming
// โ
It matches your comment style
// โ
It follows YOUR patterns, not generic best practices
`
User: "Should we use Redis for this?"
Without AutoMem:
"Consider RabbitMQ, Kafka, or AWS SQS based on your needs..."
With AutoMem:
"Based on your pattern of preferring boring technology that works,
and your positive experience with Redis in Project X (March 2024),
yes. You specifically value operational simplicity over feature
richness - Redis fits perfectly."
`
You need a running AutoMem service (the memory backend). Choose one:
Option A: Local Development (fastest, free)
`bash`
git clone https://github.com/verygoodplugins/automem.git
cd automem
make dev
Service runs at http://localhost:8001 - perfect for single-machine use.
Option B: Railway Cloud (recommended for production)

One-click deploy with $5 free credits. Typical cost: ~$0.50-1/month after trial.
๐ AutoMem Service Installation Guide - Complete setup instructions for local, Railway, Docker, and production deployments.
---
#### Claude Desktop - One-Click Install
Download and double-click to install AutoMem in Claude Desktop:
โฌ๏ธ Download AutoMem for Claude Desktop (.mcpb)
After installing:
1. Claude Desktop will prompt you for your AutoMem Endpoint (http://127.0.0.1:8001 for local)
2. Optionally enter your API Key (required for Railway, skip for local)
3. Click Enable
That's it! Claude now has persistent memory.
#### Other Platforms
Connect your AI tools to the AutoMem service you just started.
`bash`Guided setup - creates .env and prints config for your AI platform
npx @verygoodplugins/mcp-automem setup
When prompted:
- AutoMem Endpoint: http://localhost:8001 (or your Railway URL if deployed)
- API Key: Leave blank for local development (or paste your token for Railway)
The wizard will:
- โ
Save your endpoint and API key to .env
- โ
Generate config snippets for Claude Desktop/Cursor/Code
- โ
Validate connection to your AutoMem service
For Claude Desktop:
`bash`Setup prints config snippet - just paste into claude_desktop_config.json
npx @verygoodplugins/mcp-automem setup
For Cursor IDE:

`bash`Or use CLI to install automem.mdc rule file
npx @verygoodplugins/mcp-automem cursor
> Note: After one-click install, configure your AUTOMEM_ENDPOINT in ~/.cursor/mcp.json or Claude Desktop config
For Claude Code:
#### Option A: Plugin (Recommended)
`bash`In Claude Code, install the plugin:
/plugin marketplace add verygoodplugins/mcp-automem
/plugin install automem@verygoodplugins-mcp-automem
Only one Claude Code plugin ships in this repo: plugins/automem with the marketplace catalog at .claude-plugin/marketplace.json.
#### Option B: CLI Setup
`bash`Installs SessionStart hook and MCP permissions
npx @verygoodplugins/mcp-automem claude-code
For OpenAI Codex:
`bashAdd to your Codex MCP configuration
npx @verygoodplugins/mcp-automem config --format=json
๐ Full Installation Guide for detailed MCP client and platform-specific setup
---
New: Remote MCP via HTTP
You can now connect AutoMem to platforms that support remote MCP via Streamable HTTP (recommended) or SSE transport via an optional sidecar service (deployable to Railway or any Docker host).
- ChatGPT (Developer Mode custom connectors)
- Claude.ai (web) and Claude Mobile (iOS/Android)
- ElevenLabs Agents Platform
Quick connect URLs (after deploying the sidecar):
- Streamable HTTP (recommended):
https://
- SSE (legacy): https://
- ElevenLabs: https:// with header Authorization: Bearer See the Installation Guide for complete steps and deployment options.
$3
!ChatGPT Developer Mode โ Connector Config
_ChatGPT Developer Mode: Add your MCP endpoint as a custom connector_
!ChatGPT with AutoMem Memories
_ChatGPT using AutoMem memories via remote MCP_
!Claude Web Using AutoMem
_Claude.ai website connected to AutoMem via remote MCP_
!Claude iOS App
_Claude Mobile (iOS) connected to AutoMem via remote MCP_
What Happens Next
| Timeline | What Your AI Learns |
| ---------- | ------------------------------ |
| Hour 1 | Starts capturing your patterns |
| Day 1 | Learns your decision factors |
| Day 3 | Recognizes your coding style |
| Week 1 | Writes in your voice |
| Week 2 | Makes decisions like you would |
Architecture
`
โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
โ Your AI Platforms โ
โ Claude Desktop โ Cursor โ Claude Code โ
โโโโโโโโโโโโโโโโฌโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
โ MCP Protocol
โผ
โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
โ @verygoodplugins/mcp-automem (this repo) โ
โ โข Translates MCP calls โ AutoMem API โ
โ โข Platform integrations & rules โ
โ โข Handles authentication โ
โโโโโโโโโโโโโโโโฌโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
โ HTTP API
โผ
โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
โ AutoMem Service (separate repo) โ
โ github.com/verygoodplugins/automem โ
โ โโโโโโโโโโโโโโ โโโโโโโโโโโโโโ โ
โ โ FalkorDB โ โ Qdrant โ โ
โ โ (Graph) โ โ (Vectors) โ โ
โ โโโโโโโโโโโโโโ โโโโโโโโโโโโโโ โ
โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
`This repo (mcp-automem):
- MCP client that connects AI platforms to AutoMem
- Platform-specific integrations (Cursor rules, Claude Code hooks, etc.)
- Setup wizards and configuration tools
- Backend memory service with graph + vector storage
- Deployment guides (local, Railway, Docker, production)
- API server with FalkorDB + Qdrant
Features
$3
-
store_memory - Save memories with content, tags, importance, metadata
- recall_memory - Hybrid search with graph expansion and context awareness:
- Basic search: query, multi-query, tags, time filters
- Graph expansion: entity expansion (multi-hop reasoning), relation following
- Expansion filtering: expand_min_importance and expand_min_strength to reduce noise in expanded results
- Context hints: language, active file, priority types/tags
- associate_memories - Create relationships (11 types: RELATES_TO, LEADS_TO, etc.)
- update_memory - Modify existing memories
- delete_memory - Remove memories
- check_database_health - Monitor service status$3
Multi-hop Reasoning - Answer complex questions like "What is Amanda's sister's career?"
`javascript
mcp__memory__recall_memory({
query: "What is Amanda's sister's career?",
expand_entities: true, // Finds "Amanda's sister is Rachel" โ memories about Rachel
});
`Context-Aware Coding - Recall prioritizes language and style preferences
`javascript
mcp__memory__recall_memory({
query: "error handling patterns",
language: "typescript",
context_types: ["Style", "Pattern"],
});
`$3
#### Cursor IDE
- โ
Memory-first rule file (
automem.mdc in .cursor/rules/)
- โ
Automatic memory recall at conversation start
- โ
Auto-detects project context (package.json, git remote)
- โ
Global user rules option for all projects
- โ
Simple setup via CLI or one-click install#### Claude Code
- โ
MCP permissions for memory tools
- โ
Memory rules in CLAUDE.md guide Claude's memory usage
- โ
Simple setup - just permissions, Claude decides what to store
#### Claude Desktop
- โ
Direct MCP integration
- โ
Manual and automated workflows
- โ
Full memory API access
Why AutoMem MCP?
$3
- โ
2 years of R&D already done
- โ
Research-validated architecture (HippoRAG 2, MELODI, A-MEM)
- โ
Working integrations across all MCP platforms
- โ
Active development and community
$3
- โ
True graph relationships (not just vector similarity)
- โ
Universal MCP compatibility (works with any MCP client)
- โ
7 memory types (Decision/Pattern/Preference/Style/Habit/Insight/Context)
- โ
Self-hostable ($5/month vs $150+ for alternatives)
$3
- โ
Persistent across sessions (not just context window)
- โ
Cross-platform (same memory in Claude, Cursor, Code)
- โ
Structured relationships (not just RAG)
- โ
Infinite scale (no context window limits)
Real-World Results
$3
`
Before AutoMem:
"Consider adding error handling here."After AutoMem:
"Missing your standard try/except pattern. Based on your PR#127
review comments, you always wrap database calls with specific
logging for timeouts. Apply the same pattern here?"
`$3
`
Before AutoMem:
"Both approaches have tradeoffs..."After AutoMem:
"You chose PostgreSQL over MongoDB for similar use case in Q1 2024.
Your decision memo cited team expertise and operational simplicity.
Same factors apply here - go with Postgres."
`Documentation
$3
- ๐ฆ Installation Guide - MCP client setup for all platforms
- ๐ Remote MCP via SSE - Connect ChatGPT, Claude Web/Mobile, ElevenLabs
- ๐ฏ Cursor Setup - IDE integration with rules
- ๐ค Claude Code Setup - Memory rules integration
- ๐ OpenAI Codex Setup - Codex CLI/IDE/Cloud integration
- ๐ MCP Tools Reference - All memory operations
$3
- ๐๏ธ AutoMem Service - Backend repository
- ๐ Service Installation - Local, Railway, Docker deployment
- โ๏ธ API Documentation - REST API reference
The Science Behind AutoMem
The AutoMem service implements cutting-edge 2025 research:
- HippoRAG 2 (OSU, June 2025): Graph-vector approach achieves 7% better associative memory
- A-MEM (July 2025): Dynamic memory organization with Zettelkasten principles
- MELODI (DeepMind, 2025): 8x memory compression without quality loss
- ReadAgent (DeepMind, 2024): 20x context extension through gist memories
This MCP package provides the bridge between your AI and that research-validated memory system.
Community & Support
- ๐ฌ Discord - Join the community, get help, share feedback
- ๐ฆ X Community - Discussion and updates
- ๐ฃ @automem_ai - Official announcements
- ๐ฆ NPM Package - This MCP client
- ๐ฌ AutoMem Service - Backend repo with deployment guides
- ๐ GitHub Issues - Bug reports and feature requests
Quick Links
$3
- Installation Guide - MCP client setup for all platforms
- Cursor Integration - IDE rules and configuration
- Claude Code Setup - Memory rules integration
- OpenAI Codex - Codex integration
- Changelog - Release history
$3
- Service Repository - Backend source code
- Service Installation - Local, Railway, Docker deployment
Contributing
We welcome contributions! Please:
1. Fork the repository
2. Create a feature branch
3. Make your changes with tests
4. Submit a pull request
License
MIT - Because great memory should be free.
---
Ready to give your AI perfect memory?
`bash
npx @verygoodplugins/mcp-automem setup
``_Built with obsession. Validated by neuroscience. Powered by graph theory. Works with every MCP-enabled AI._
_Designed by Jack Arturo at Very Good Plugins_ ๐งก
Transform your AI from a tool into a teammate. Start now.