Jade Memory
БесплатноНе проверенTwo MCP servers (knowledge base and journal) enabling AI agents to persistently store, search, and recall knowledge and reflections with multilingual semantic s
Описание
Two MCP servers (knowledge base and journal) enabling AI agents to persistently store, search, and recall knowledge and reflections with multilingual semantic search.
README
Persistent knowledge base and journal for AI agents. Two MCP servers backed by a shared multilingual embedding sidecar, deployed as Docker containers.
Knowledge base stores facts, decisions, procedures, and troubleshooting notes with semantic search. Agents call store to save knowledge and recall to retrieve it. Entries are typed, tagged, and searchable across languages.
Journal is a free-form, append-only cognitive tool. Agents write thoughts, reflections, and session notes. Value is in the writing process (structuring thinking), not just retrieval. No categories or sections — semantics live in the content itself.
Both use vector embeddings (768-dim, gte-multilingual-base) for semantic search via sqlite-vec. Both are accessible remotely via MCP Streamable HTTP transport with bearer token auth. API keys are created through the web admin UI — no env vars needed.
Architecture
┌─────────────────────────────────────────────────────┐
│ Docker network (internal bridge) │
│ │
│ jade-embeddings (Python, port 3102, internal only) │
│ Alibaba-NLP/gte-multilingual-base │
│ 768 dims, 100+ languages, ~1.2GB RAM │
│ │
│ jade-knowledge (Bun, port 3100) │
│ MCP Streamable HTTP at /mcp │
│ Bearer token auth │
│ │
│ jade-journal (Bun, port 3101) │
│ MCP Streamable HTTP at /mcp │
│ Bearer token auth (separate key) │
└─────────────────────────────────────────────────────┘
The embedding sidecar is internal-only — not exposed outside the Docker network. Both MCP servers call it to generate embeddings on store/write and on search/recall.
Tools
Knowledge base (jade-knowledge)
| Tool | Description | Parameters |
|---|---|---|
recall |
Search knowledge base | query (string), type? (enum), limit? (int, default 10) |
store |
Add knowledge with auto-embedding | content (string), type? (enum, default "general"), tags? (string[]) |
forget |
Delete knowledge entry | id (int) |
Knowledge types: fact, preference, decision, procedure, troubleshooting, general
Journal (jade-journal)
| Tool | Description | Parameters |
|---|---|---|
write |
Record journal entry | content (string) |
search |
Semantic search journal | query (string), limit? (int, default 10) |
recent |
List recent entries | limit? (int, default 10) |
The journal is append-only. No delete, no edit.
Context footprint
Both MCPs add approximately ~480 tokens total to the agent's context window:
- jade-knowledge: ~300 tokens (3 tools)
- jade-journal: ~180 tokens (3 tools)
For comparison, the Playwright MCP adds ~13,700 tokens.
Installation
Prerequisites
- Docker and Docker Compose
- Ports 3100 and 3101 available on the host
1. Clone and configure
git clone <repo-url> jade-memory
cd jade-memory
cp .env.example .env
# Edit .env if you need to change ports or DB paths (no API keys needed)
2. Build and start
docker compose up -d --build
First build downloads the embedding model (~1.2GB) and bakes it into the image. This takes a few minutes. Subsequent builds use the cached layer.
The embedding sidecar has a health check with a 120-second start period to allow for model loading. The knowledge and journal containers wait for it to be healthy before starting.
3. Create admin account
Visit http://<host>:3100 (knowledge) or http://<host>:3101 (journal) in your browser. On first visit you'll be prompted to create an admin account.
4. Create API keys
Log in to the web UI, go to /admin, and create API keys. These are used by MCP clients (Claude Code, OpenCode, etc.) to authenticate. Copy the key immediately — it's only shown once.
5. Verify
# Health checks (no auth required)
curl http://localhost:3100/health
curl http://localhost:3101/health
# Test MCP auth with your API key
curl -X POST http://localhost:3100/mcp \
-H "Authorization: Bearer <your-api-key>" \
-H "Content-Type: application/json" \
-d '{"jsonrpc":"2.0","method":"initialize","id":1,"params":{"protocolVersion":"2025-03-26","capabilities":{},"clientInfo":{"name":"test","version":"1.0"}}}'
6. (Optional) Reverse proxy
If you want to expose the MCPs over HTTPS via traefik or another reverse proxy:
cp docker-compose.override.yml.example docker-compose.override.yml
# Edit docker-compose.override.yml with your domain names and TLS config
docker compose up -d
Connecting to agents
API keys are created through the web admin UI at /admin after logging in. Replace <API_KEY> below with a key you created there.
Claude Code
Option A: CLI (recommended)
claude mcp add --transport http jade-knowledge http://<host>:3100/mcp \
--header "Authorization: Bearer <API_KEY>"
claude mcp add --transport http jade-journal http://<host>:3101/mcp \
--header "Authorization: Bearer <API_KEY>"
Use --scope user to make them available across all projects, or --scope local (default) for the current project only.
Option B: JSON config
Add to ~/.claude.json (or project-level .claude/settings.json) under mcpServers:
{
"mcpServers": {
"jade-knowledge": {
"type": "http",
"url": "http://<host>:3100/mcp",
"headers": {
"Authorization": "Bearer <API_KEY>"
}
},
"jade-journal": {
"type": "http",
"url": "http://<host>:3101/mcp",
"headers": {
"Authorization": "Bearer <API_KEY>"
}
}
}
}
OpenCode
Add to opencode.json in your project root:
{
"mcp": {
"jade-knowledge": {
"type": "remote",
"url": "http://<host>:3100/mcp",
"headers": {
"Authorization": "Bearer <API_KEY>"
}
},
"jade-journal": {
"type": "remote",
"url": "http://<host>:3101/mcp",
"headers": {
"Authorization": "Bearer <API_KEY>"
}
}
}
}
You can use {env:KNOWLEDGE_API_KEY} instead of a literal key to reference environment variables.
Other MCP clients
Any client that supports MCP Streamable HTTP transport can connect. The servers accept:
POST /mcp— MCP JSON-RPC messages (requiresAccept: application/json, text/event-stream)GET /mcp— SSE stream for server-initiated messagesDELETE /mcp— Session cleanupGET /health— Health check (no auth required)
Prompting the agent
For best results, instruct the agent to use the knowledge base proactively. Add something like this to your system prompt or CLAUDE.md:
You have access to a persistent knowledge base (jade-knowledge) and journal (jade-journal).
**Knowledge base**: Use `recall` when starting a task to check for relevant prior knowledge.
Use `store` when you learn something reusable — facts, decisions, troubleshooting solutions,
procedures. Tag entries with project names for cross-project retrieval.
**Journal**: Use `write` when you want to think through a problem, reflect on your approach,
or note something for your own reference. The value is in the writing process itself.
Development
Project structure
jade-memory/
├── packages/
│ ├── shared/ # Auth, embed client, DB helpers, types
│ ├── knowledge/ # Knowledge base MCP server
│ └── journal/ # Journal MCP server
├── embeddings/ # Python embedding sidecar
├── docker-compose.yml
└── .env.example
Running tests
# All tests (from repo root)
bun test
# Specific package
bun test --filter knowledge
bun test --filter journal
bun test --filter shared
Tests mock the embedding sidecar and use in-memory SQLite databases. No Docker required.
Running locally (without Docker)
# Terminal 1: Start embedding sidecar
cd embeddings
pip install -r requirements.txt
uvicorn main:app --port 3102
# Terminal 2: Start knowledge MCP
cd packages/knowledge
EMBEDDINGS_URL=http://localhost:3102 bun run src/index.ts
# Terminal 3: Start journal MCP
cd packages/journal
EMBEDDINGS_URL=http://localhost:3102 bun run src/index.ts
No API keys needed at startup. Visit http://localhost:3100 to create an admin account, then go to /admin to create API keys for MCP clients.
Resource usage
| Container | RAM | CPU | Disk |
|---|---|---|---|
| jade-embeddings | ~1.2 GB | Low (idle), moderate (encoding) | ~2 GB (model) |
| jade-knowledge | ~50 MB | Minimal | Grows with entries |
| jade-journal | ~50 MB | Minimal | Grows with entries |
The embedding model (gte-multilingual-base) is the main resource cost. It supports 100+ languages including English, Spanish, French, German, and Dutch. Cross-language search works — you can store in one language and recall in another.
Установка Jade Memory
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/jjjona/jade-memoryFAQ
Jade Memory MCP бесплатный?
Да, Jade Memory MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Jade Memory?
Нет, Jade Memory работает без API-ключей и переменных окружения.
Jade Memory — hosted или self-hosted?
Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.
Как установить Jade Memory в Claude Desktop, Claude Code или Cursor?
Открой Jade Memory на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
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