memcord
Privacy-first MCP server for AI memory management. Save, search & organize chat history with intelligent summarization.
MEMCORD v3.3.0 (mcp server)
This privacy-first, self-hosted MCP server helps you organize chat history, summarize messages, search across past chats with AI — and keeps everything secure and fully under your control.
Never Lose Context Again
Transform your Claude conversations into a searchable, organized knowledge base that grows with you
What's new in v3.3.0 — Eliminated memory leaks and reduced memory footprint across the server: bounded caches use O(1) LRU eviction, asyncio tasks are tracked to prevent silent GC, rate-limiter and operation-queue entries are pruned automatically, and resource handles are guaranteed to close.
Table of Contents
- Core Benefits
- Prerequisites
- Quick Start
- Demo
- IDE Configuration
- Keeping Memcord Updated
- Using Memcord in a Project
- Basic Usage
- Summarizer Backends
- Documentation
Core Benefits
- Infinite Memory - Claude remembers everything across unlimited conversations with intelligent auto-summarization
- Your Data, Your Control - 100% local storage with zero cloud dependencies or privacy concerns
- Effortless Organization - Per-project memory slots with timeline navigation and smart tagging
- Intelligent Merging - Automatically combines related conversations while eliminating duplicates
Prerequisites
Python 3.10+ and uv are required. The installer handles both — click to expand manual instructions.
-
Python 3.10+ — python.org
-
uv (Python package manager) — install with:
macOS / Linux:
curl -LsSf https://astral.sh/uv/install.sh | shWindows (PowerShell):
powershell -ExecutionPolicy ByPass -c "irm https://astral.sh/uv/install.ps1 | iex"
Quick Start
macOS / Linux:
curl -fsSL https://github.com/ukkit/memcord/raw/main/install.sh | bash
Windows (PowerShell):
irm https://github.com/ukkit/memcord/raw/main/install.ps1 | iex
This will:
- ✅ Download and setup memcord
- ✅ Set up Python virtual environment using uv
- ✅ Generate platform-specific MCP configuration files
- ✅ Configure Claude Desktop, Claude Code, VSCode, and Antigravity IDE
Demo
A demo GIF or terminal recording will be added here. Contributions welcome!
IDE Configuration
The installer auto-configures all supported IDEs. For manual setup or troubleshooting, see the detailed guides:
| IDE / Client | Guide |
|---|---|
| Claude Code CLI | Installation Guide — Claude Code |
| Claude Desktop | Installation Guide — Claude Desktop |
| VSCode + GitHub Copilot | VSCode Setup Guide |
| Google Antigravity | Installation Guide — Other MCP Apps |
| Configuration templates | config-templates/ (README) |
Manual Installation
git clone https://github.com/ukkit/memcord.git
cd memcord
uv venv && uv pip install -e .
uv run python scripts/generate-config.py
See the Complete Installation Guide for updating, advanced options, and custom commands.
Keeping Memcord Updated
cd /path/to/memcord
git pull
uv pip install -e .
uv run python scripts/generate-config.py # Regenerate configs
# Optional: Enable auto-save hooks (new in v2.5.0)
uv run python scripts/generate-config.py --install-hooks
The --install-hooks flag is idempotent — it merges into existing .claude/settings.json without overwriting other settings or hooks.
Using Memcord in a Project
First-Time Setup (New Project)
# 1. Once you are in claude code, initialize the project with a memory slot (one-time setup)
memcord_init "." "my-project-name"
# OR
memcord_init "my_project_name"
# Creates .memcord file containing "my-project-name"
# 2. Start saving your conversations
/memcord-save-progress # Auto-detects slot from .memcord file
Subsequent Sessions (Returning to Project)
# Just use slash commands - no slot name needed!
/memcord-read # Reads from bound slot automatically
/memcord-save # Saves to bound slot automatically
/memcord-save-progress # Summarizes and saves automatically
Enable Auto-Save (Optional)
uv run python scripts/generate-config.py --install-hooks
Automatically saves conversation progress before context compaction and on session end. See config-templates/README.md for details.
How Auto-Detection Works
All read and write operations follow the same slot resolution priority:
- Explicit
slot_nameargument (always wins) - Currently active slot (set by
memcord_useormemcord_name) .memcordbinding file in the current working directory
When the .memcord binding is used and the slot already exists, it is also auto-activated for the rest of the session — so subsequent operations skip re-detection automatically.
This means after memcord_init, a fresh session (no memcord_use call needed) will correctly route memcord_save, memcord_save_progress, memcord_configure, and memcord_read to the bound slot.
Basic Usage
Saving & Retrieving
memcord_name "project_meeting" # Create or select a slot
memcord_save "Our discussion about..." # Save exact text
memcord_save_progress # Save a compressed summary
memcord_read # Read the slot
Navigating & Searching
memcord_select_entry "2 hours ago" # Jump to a point in the timeline
memcord_list # List all slots
memcord_search "API design" # Full-text search
memcord_query "What did we decide?" # Natural language query
Project & Privacy
memcord_init "." "my-project" # Bind a memory slot to this directory
memcord_zero # Privacy mode — nothing gets saved
See Complete Tools Reference for all 23 tools with full parameters and examples.
Summarizer Backends
Memcord supports four summarizer backends. New slots default to sumy (graph-based, no downloads required). Existing slots keep nltk to preserve prior behavior.
| Backend | Type | Speed | Quality | Extra install |
|---|---|---|---|---|
nltk | Extractive | Fast | Good | None (built-in) |
sumy | Extractive (graph) | Fast | Better | None (built-in) |
semantic | Extractive (embeddings) | Medium | Best extractive | uv pip install "memcord[semantic]" (~80 MB) |
transformers | Abstractive (BART) | Slow | Best overall | uv pip install "memcord[transformers]" (~400 MB) |
Switching Backends
Use memcord_configure to change the backend for any slot — no restart required:
# Check current config
memcord_configure action="get"
# Switch to the BART abstractive summarizer (best for conversations)
memcord_configure action="set" key="summarizer_backend" value="transformers"
# Switch to embedding-based semantic summarizer
memcord_configure action="set" key="summarizer_backend" value="semantic"
# Switch sumy algorithm (lexrank / lsa / edmundson)
memcord_configure action="set" key="sumy_algorithm" value="lsa"
# Reset to defaults
memcord_configure action="reset"
To apply one backend to all slots (e.g. in Docker or CI), set the environment variable:
export MEMCORD_SUMMARIZER=transformers
See Tools Reference — memcord_configure for the full parameter list.
Documentation
| Guide | Description |
|---|---|
| Installation Guide | Complete setup instructions for all MCP applications |
| Feature Guide | Complete list of features |
| Tools Reference | Detailed documentation for all 23 tools |
| Import & Merge Guide | Comprehensive guide for Phase 3 features |
| Search & Query Guide | Advanced search features and natural language queries |
| Usage Examples | Real-world workflows and practical use cases |
| Data Format Specification | Technical details and file formats |
| Troubleshooting | Common issues and solutions |
| Version History | Changelog for all releases |
If you find this project helpful, consider:
- ⭐ Starring the repository on GitHub
- ☕ Support Development
- 🐛 Reporting bugs and suggesting features
MIT License - see LICENSE file for details.
Star History
相关服务器
Cotrader
AI-powered stock screener for 11,000+ US stocks. Screen using natural language and detect chart patterns via MCP.
Weather
Provides real-time weather data, forecasts, and alerts using the OpenWeatherMap API.
Regenique Elegance Commerce
AI-powered commerce MCP server enabling product discovery, cart management, and checkout for the Regenique Elegance luxury skincare store via Shopify Storefront API.
Decompose
Decompose text into classified semantic units — authority, risk, attention, entities. No LLM. Deterministic.
guessmarket-mcp
Trade on prediction markets from Claude Code. Browse markets, check odds, build and execute trades on-chain.
WoWok
A server for the WoWok platform, designed for co-creation, transactions, and empowering potential.
Brandomica
Brand name verification across domains, social handles, trademarks (USPTO), web presence, app stores, and SaaS channels with safety scoring and filing readiness.
stella-mcp
MCP server for creating and manipulating Stella system dynamics models (.stmx files in XMILE format)
CHeema-Text-to-Voice-MCP-Server
AI-powered text-to-speech MCP server with instant voice cloning. Generate speech from Claude Desktop, Claude Code, or n8n using 5 built-in voices (English, German, French, Spanish) or clone any voice from a short audio sample. Runs fully local, no API keys, no cloud. Supports stdio, SSE, and HTTP transports.
TabNews Integration
Access data from the TabNews API.