Command Palette

Search for a command to run...

UnylyUnyly
Browse all

Vector Memory Server

FreeNot checked

Enables AI assistants to save and recall information from files or free-form notes using natural language, acting as a long-term memory system.

GitHubEmbed

About

Enables AI assistants to save and recall information from files or free-form notes using natural language, acting as a long-term memory system.

README

An MCP server that gives AI assistants the ability to save and recall information from files or free-form notes. Works like a long-term memory system where you can store documents and retrieve relevant information later using natural language.

📖 Complete Usage Guide | 🔗 PyPI Package | 🌐 MCP Registry

Features

  • 🧠 Semantic Memory: Save and recall text using natural language
  • 📄 Multi-Format Support: PDF, TXT, and Markdown files
  • ✍️ Free-Form Notes: Store ad-hoc text snippets without creating files
  • 🔄 Auto-Update: Re-saving a file automatically removes old versions
  • 🎯 Smart Chunking: Optimizes chunk size based on file type
  • 🔍 Semantic Search: Find information even without exact word matches
  • 🗂️ Memory Management: Built-in tools to list, search, and clean up memory
  • 🔒 Data Isolation: Separate Redis databases and namespaces

Prerequisites

  • Python 3.12 or higher
  • Redis server running locally on port 6379
  • UV package manager

Start Redis

# Using Docker
docker run -d -p 6379:6379 redis:latest

# Or using Homebrew on macOS
brew install redis
brew services start redis

Quick Start

Installation

# Via pip
pip install mcp-server-vector-memory

# Via uvx (isolated environment)
uvx mcp-server-vector-memory

# From source
git clone https://github.com/NeerajG03/vector-memory.git
cd vector-memory
uv sync

Basic Usage

After pip install:

# Run the server
mcp-server-vector-memory

# Manage memory
vector-memory-manage list
vector-memory-cleanup stats

From source:

uv run vector_memory.py
uv run manage_memory.py list
uv run cleanup.py stats

Integration with AI Clients

Claude Desktop (~/Library/Application Support/Claude/claude_desktop_config.json):

{
  "mcpServers": {
    "vector-memory": {
      "command": "uvx",
      "args": ["mcp-server-vector-memory"]
    }
  }
}

Codex CLI (~/.config/codex/mcp_config.toml):

[servers.vector-memory]
command = "uvx"
args = ["mcp-server-vector-memory"]

See USAGE.md for complete integration examples and advanced configuration.

Configuration

You can customize the server using environment variables or by editing vector_memory.py:

Environment Variables

  • REDIS_URL: Redis connection string (default: redis://localhost:6379/0)
    • Format: redis://host:port/db_number
    • Example: redis://localhost:6379/1 (use database 1)

Constants in Code

  • INDEX_NAME: Vector store index name (default: mcp_vector_memory)
    • All keys are prefixed with this namespace to avoid conflicts
  • MODEL_NAME: Embedding model (default: sentence-transformers/all-MiniLM-L6-v2)

Data Isolation

The server uses multiple layers of isolation:

  1. Database number: Uses Redis DB 0 by default (configurable via URL)
  2. Index namespace: All keys prefixed with mcp_vector_memory:*
  3. Metadata tagging: Each document tagged with source file path

This ensures your vector memory data won't conflict with other Redis applications.

Architecture

┌─────────────────┐
│  Claude/Client  │
└────────┬────────┘
         │ MCP Protocol
         │
┌────────▼────────┐
│  Vector Memory  │
│   MCP Server    │
└────────┬────────┘
         │
         ├─────► HuggingFace Embeddings
         │
         └─────► Redis Vector Store

Memory Management

Two management tools are included:

  • vector-memory-manage - Interactive tool with search and selective deletion
  • vector-memory-cleanup - Quick cleanup commands

See USAGE.md for complete documentation and examples.

Development

To run in development mode with auto-reload:

uv run --reload vector_memory.py

Troubleshooting

Redis Connection Error

Ensure Redis is running:

redis-cli ping
# Should return: PONG

Model Download

The first time you run the server, it will download the embedding model (~80MB). This is normal and only happens once.

File Not Found Errors

The server accepts both absolute and relative file paths, but automatically converts them to absolute paths for storage. If a file is not found, check that the path is correct relative to where the server is running.

Path Handling

  • Input: Accepts both absolute (/full/path/to/file.txt) and relative (./docs/file.txt) paths
  • Storage: All paths are converted to absolute paths before being saved to memory
  • Output: recall_from_memory always returns absolute paths to source files

This ensures consistent path references regardless of how files were originally added to memory.

from github.com/NeerajG03/vector-memory

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

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

FAQ

Is Vector Memory Server MCP free?

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

Does Vector Memory Server need an API key?

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

Is Vector Memory Server hosted or self-hosted?

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

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

Open Vector 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 Vector Memory Server with

Not sure what to pick?

Find your stack in 60 seconds

Author?

Embed badge for your README

Browse similar

All ai MCPs