Command Palette

Search for a command to run...

UnylyUnyly
Browse all

Associative Memory Server

FreeNot checked

Enables storing, searching, and discovering knowledge connections using associative memory, with semantic search, hierarchical organization, and cross-environme

GitHubEmbed

About

Enables storing, searching, and discovering knowledge connections using associative memory, with semantic search, hierarchical organization, and cross-environment sync.

README

CI Coverage License: MIT PyPI

MCP Associative Memory Server

🧠 Production-Ready Intelligent Memory System - Store, search, and discover knowledge connections using the Model Context Protocol (MCP) with 74/74 tests passing and complete CI/CD pipeline.

🏆 Production Status (July 2025)

✅ ENTERPRISE-READY:

  • 74/74 tests passing (100% success rate)
  • Complete CI/CD pipeline with security and quality gates
  • 10 MCP tools for comprehensive memory management
  • Sub-second performance with optimized vector search
  • Docker containerized for production deployment

🌟 Overview

Transform your development workflow with an AI-powered memory system that:

  • Stores insights from your daily work and learning
  • Finds related knowledge when you need it most
  • Discovers unexpected connections between ideas
  • Organizes knowledge in intuitive hierarchical scopes
  • Syncs across environments for seamless workflow integration

Built with FastMCP 2.0 for modern LLM integration, optimized for GitHub Copilot workflows.

✨ Key Features

🧠 Intelligent Memory Operations

  • Semantic Search: Find relevant memories using natural language queries
  • Association Discovery: Automatically discover connections between concepts
  • Complete CRUD: Create, Read, Update, Delete with full lifecycle management
  • Smart Organization: Hierarchical scopes with auto-categorization

🔍 Advanced Discovery

  • Top-K Search: Optimized threshold (0.1) with LLM-guided relevance judgment
  • Cross-Scope Associations: Find connections across different knowledge scopes
  • Similarity Scoring: Transparent relevance metrics for intelligent filtering
  • Creative Connections: Discover unexpected relationships for innovation

🗂️ Powerful Organization

  • Hierarchical Scopes: work/projects/name, learning/technology, personal/ideas
  • Flexible Categorization: Tags, metadata, and automatic scope suggestions
  • Session Management: Temporary workspaces for project isolation
  • Memory Movement: Reorganize knowledge as understanding evolves

🔄 Cross-Environment Sync

  • Export/Import: Backup and restore memories across development environments
  • Multiple Formats: JSON, YAML with compression support
  • Merge Strategies: Handle duplicates intelligently during sync
  • Git Workflow: Integrate memory backup into version control processes

🛠️ Developer Experience

  • GitHub Copilot Integration: Natural language memory operations
  • VS Code Tasks: One-click server management and maintenance
  • Real-time Association: Automatic relationship discovery during storage
  • Performance Optimized: Sub-second search across thousands of memories
  • Response Level Control: Minimal, standard, or full detail responses for optimal token usage

Smart Response Levels

Control response detail and token usage with three intelligent levels:

  • minimal: Essential information only (~50 tokens) - Perfect for status checks and basic operations
  • standard: Balanced detail for workflow continuity (default) - Optimal for most use cases
  • full: Comprehensive data including metadata, associations, and analysis - Ideal for debugging and detailed exploration

Example Usage:

# Quick status check
memory_store(content="meeting notes", response_level="minimal")
# Returns: {"success": true, "message": "Memory stored", "memory_id": "..."}

# Full debugging info
memory_search(query="project ideas", response_level="full") 
# Returns: Complete results with similarity scores, metadata, associations

🎯 Complete MCP Tool Suite

🚀 Modern API (10 Clean Tools)

Core Operations (Primary API)

  • memory_store - Store new memories with auto-association
  • memory_search - Unified search with standard and diversified modes
  • memory_manage - Get, update, and delete memory operations
  • memory_sync - Import and export memories for backup/sync

Discovery and Analysis

  • memory_discover_associations - Find semantically related memories
  • memory_list_all - Browse complete memory collection with pagination

Organization Management

  • scope_list - Browse hierarchical memory organization
  • scope_suggest - AI-powered scope recommendations
  • memory_move - Reorganize memories into better categories

Session Management

  • session_manage - Create, list, and cleanup temporary working sessions

🎯 Clean, Modern API

All tools use intuitive, natural names with powerful unified interfaces for better developer experience.

📚 Comprehensive Documentation

🚀 Quick Start Guide

Get up and running in 5 minutes with essential commands and patterns.

💡 Best Practices

Comprehensive guide to optimizing your associative memory workflow.

🔧 API Reference

Complete technical documentation for all MCP tools and parameters.

🏢 Real-World Examples

Practical usage patterns for developers, teams, and organizations.

🆘 Troubleshooting Guide

Solutions for common issues and system maintenance procedures.

📊 Sample Data

Ready-to-import memory dataset with 28 curated memories demonstrating system capabilities.

🚀 Complete Documentation →

Architecture

┌─────────────────┐    ┌─────────────────┐    ┌─────────────────┐
│   LLM Client    │────│  FastMCP Server │────│  Memory Store   │
│                 │    │                 │    │                 │
│ - Claude        │    │ - @app.tool()   │    │ - ChromaDB      │
│ - ChatGPT       │    │ - @app.resource()│   │ - SQLite        │
│ - Custom LLM    │    │ - @app.prompt() │    │ - NetworkX      │
└─────────────────┘    └─────────────────┘    └─────────────────┘

Technology Stack

  • Language: Python 3.11+
  • MCP Framework: FastMCP 2.0
  • Vector Database: ChromaDB
  • Embedding Model: OpenAI Embeddings / Sentence Transformers
  • Graph Database: NetworkX (in-memory)
  • Storage: SQLite (metadata)

Installation & Usage

For detailed setup instructions, see docs/installation.md.

Server Startup

Direct STDIO Mode (Recommended)

Standard MCP startup method:

python -m mcp_assoc_memory.server --config config.json

The server operates in STDIO mode for direct MCP client integration. This is the recommended approach for VS Code Copilot and other MCP clients.

Configuration

  • Copy config.json.template to config.json
  • Set your OpenAI API key for embeddings
  • Configure transport options (STDIO enabled by default)

Database Path Configuration

🆕 Workspace Pollution Avoidance (NEW): The server now stores database files in OS-appropriate user directories by default, keeping your workspace clean.

Default Locations:

  • Linux: ~/.local/share/mcp-assoc-memory/
  • macOS: ~/Library/Application Support/mcp-assoc-memory/
  • Windows: %APPDATA%/mcp-assoc-memory/

Override with Environment Variables:

export MCP_DATABASE_PATH="/custom/path/memory.db"
export MCP_DATA_DIR="/custom/data/directory"

See Database Path Configuration for detailed options.

Environment Variables

  • OPENAI_API_KEY: Required for OpenAI embeddings
  • MCP_LOG_LEVEL: Set logging level (DEBUG, INFO, WARNING, ERROR)
  • MCP_DATABASE_PATH: Override database file location
  • MCP_DATA_DIR: Override data directory location

🛠️ Installation (PyPI, pipx, GitHub)

Recommended: PyPI

pip install mcp-assoc-memory

pipx (isolated global install)

pipx install mcp-assoc-memory

GitHub (latest/dev version)

pip install git+https://github.com/mako10k/mcp-assoc-memory.git
# or
pipx install git+https://github.com/mako10k/mcp-assoc-memory.git

Start the server (after install)

python -m mcp_assoc_memory.server --config config.json
  • Configure via .vscode/mcp.json for VS Code Copilot integration
  • MCPクライアントや自動検出ツール(Claude Desktop Extensions, FastMCP, Cursor等)からも自動認識されます。
  • Dockerイメージも近日公開予定。

Developer Information

Development Guidelines

🤖 AI Development Agent: development/workflow/AGENT.md
📋 GitHub Copilot Rules: .github/copilot-instructions.md
🔄 Development Workflow: development/workflow/DEVELOPER_GUIDELINES.md


✅ Quality Status

All code passes mypy (type check), flake8 (lint), and pytest (unit/integration tests) as of July 2025.
CI/CD pipeline enforces these checks for every commit.

Technical Reference

Contributing

  1. Check development guidelines before contributing
  2. Review architecture documentation for system understanding
  3. Follow GitHub Copilot instructions for AI-assisted development
  4. Update relevant documentation when making changes

🚀 Quick Start

1. Clone the repository

git clone https://github.com/mako10k/mcp-assoc-memory.git
cd mcp-assoc-memory

2. Set up your environment

python -m venv venv
source venv/bin/activate  # Linux/Mac
# or
venv\Scripts\activate  # Windows

3. Install dependencies

pip install -r requirements.txt
pip install -r requirements-dev.txt

4. Run tests and linting

python scripts/smart_lint.py
pytest tests/ -v

5. Start the MCP server

python -m mcp_assoc_memory.server --config config.json

For Docker users:

docker-compose up --build

License

MIT License

from github.com/mako10k/mcp-assoc-memory

Install Associative Memory Server in Claude Desktop, Claude Code & Cursor

Recommended · one command, every IDE
unyly install mcp-associative-memory-server

Installs into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.

First time? Get the CLI: curl -fsSL https://unyly.org/install | sh

Or configure manually

Run in your terminal:

claude mcp add mcp-associative-memory-server -- uvx mcp-assoc-memory

FAQ

Is Associative Memory Server MCP free?

Yes, Associative Memory Server MCP is free — one-click install via Unyly at no cost.

Does Associative Memory Server need an API key?

No, Associative Memory Server runs without API keys or environment variables.

Is Associative Memory Server hosted or self-hosted?

Self-hosted: the server runs locally on your machine via the install command above.

How do I install Associative Memory Server in Claude Desktop, Claude Code or Cursor?

Open Associative Memory Server on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.

Related MCPs

Compare Associative Memory Server with

Not sure what to pick?

Find your stack in 60 seconds

Author?

Embed badge for your README

Browse similar

All development MCPs