Obsidian-in-a-Vat
AI-native knowledge vault MCP server: capture thoughts, auto-promote to structured notes, and build a knowledge graph with Louvain clustering, all from Claude Desktop.
vault-mcp
A personal knowledge vault MCP server for Claude Desktop — capture, search, promote, and connect your ideas, all through natural conversation.
https://github.com/user-attachments/assets/0ef205a4-0ffc-4a24-a92a-b4acf66377fe
English
Personal knowledge vault MCP server for Claude Desktop. Capture thoughts, search notes, and read files from a local markdown-based knowledge vault.
Quick Start (uvx — Recommended)
The lightest way to run vault-mcp. No Docker, no manual venv — just uv and one config change.
Step 1. Install uv (if you don't have it):
curl -LsSf https://astral.sh/uv/install.sh | sh
Step 2. Add to your Claude Desktop config (~/Library/Application Support/Claude/claude_desktop_config.json):
{
"mcpServers": {
"vault": {
"command": "uvx",
"args": ["obsidian-in-a-vat-mcp"],
"env": {
"VAULT_LOCAL_PATH": "/Users/yourname/my-vault"
}
}
}
}
Replace /Users/yourname/my-vault with the absolute path to your local vault directory.
Step 3. Fully quit and reopen Claude Desktop. The vault tools will appear automatically.
Don't have a vault yet? Just point
VAULT_LOCAL_PATHto an empty directory. On first use, ask Claude to "initialize my vault" — it will set up the full directory structure automatically.Already have an Obsidian vault? Point
VAULT_LOCAL_PATHto your existing vault and ask Claude to "initialize my vault". It will scan your notes, classify them (captures vs. notes), and migrate everything into the vault-mcp format. Originals are safely archived under_archive/.
Alternative Setup (Docker)
If you prefer Docker:
{
"mcpServers": {
"vault": {
"command": "docker",
"args": [
"run", "-i", "--rm",
"-v", "/Users/yourname/my-vault:/vault",
"ghcr.io/oliverxuzy-ai/obsidian-in-a-vat:latest"
]
}
}
}
Requires Docker Desktop running in the background.
Update to latest: docker pull ghcr.io/oliverxuzy-ai/obsidian-in-a-vat:latest
Local Development
To run from a local checkout (changes take effect after restarting Claude Desktop):
{
"mcpServers": {
"vault": {
"command": "uv",
"args": [
"run",
"--directory",
"/absolute/path/to/obsidian-in-a-vat",
"vault-mcp"
],
"env": {
"VAULT_LOCAL_PATH": "/Users/yourname/my-vault"
}
}
}
}
Switch back to the published version by changing
commandto"uvx"andargsto["obsidian-in-a-vat-mcp"].
Tools
| Tool | Actions | Description |
|---|---|---|
vault_init | setup, migrate | One-click vault initialization: seed empty vaults from template, or migrate existing Obsidian notes with server-side classification, todo conversion, and auto-archiving |
vault_read | search, get, list_captures | Search vault, read files, list captures by status |
vault_capture | save, delete | Capture refined insights with auto-tagging, or delete captures |
vault_promote | promote | Promote captures into structured notes with auto-wikilinks |
vault_analyze | rebuild_graph, clusters, connections, orphans | Knowledge graph: build graph, Louvain clustering, N-degree connections, orphan detection |
vault_reflect | snapshot, drift, blindspots | Cognitive visualization: knowledge landscape snapshot, interest drift over time, blind spot and bridge detection |
vault_topic | prepare, create, update | Topic lifecycle: gather materials (progressive disclosure), create/update MOC-style topics |
Auto-Tag Extraction
Tags are extracted from capture text using three sources (in priority order):
- tags.yaml — Custom tags and synonym mappings at the vault root
- Existing notes — Tags collected from existing vault files' frontmatter
- Default domains — Fallback: ai, llm, productivity, writing, coding, design, business, learning, health, finance, philosophy, psychology
Example tags.yaml in your vault root:
tags:
ai: [artificial intelligence, machine learning, ML, deep learning]
coding: [programming, software, development, code]
design: [UX, UI, user experience]
Development
# Build image locally
docker build -t vault-mcp .
# Test the container starts (Ctrl+C to stop)
echo '{}' | docker run -i --rm -v $(pwd)/example_vault:/vault vault-mcp
# Syntax check
python -m py_compile src/vault_mcp/server.py
# Interactive MCP Inspector
mcp dev src/vault_mcp/server.py
中文
个人知识库 MCP 服务器,适配 Claude Desktop。捕获想法、搜索笔记、读取本地 markdown 知识库中的文件。
快速开始(uvx — 推荐)
最轻量的运行方式。不需要 Docker,不需要手动创建虚拟环境 — 只需安装 uv 即可。
第一步. 安装 uv(如果还没有):
curl -LsSf https://astral.sh/uv/install.sh | sh
第二步. 添加到 Claude Desktop 配置文件(~/Library/Application Support/Claude/claude_desktop_config.json):
{
"mcpServers": {
"vault": {
"command": "uvx",
"args": ["obsidian-in-a-vat-mcp"],
"env": {
"VAULT_LOCAL_PATH": "/Users/yourname/my-vault"
}
}
}
}
将 /Users/yourname/my-vault 替换为你本地 vault 目录的绝对路径。
第三步. 完全退出并重新打开 Claude Desktop,vault 工具会自动出现。
还没有 vault? 将
VAULT_LOCAL_PATH指向一个空目录即可。首次使用时让 Claude "初始化我的 vault" — 它会自动创建完整的目录结构。已有 Obsidian vault? 将
VAULT_LOCAL_PATH指向你现有的 vault 目录,让 Claude "初始化我的 vault"。它会扫描你的笔记,自动分类(capture vs. note),并批量迁移为 vault-mcp 格式。原始文件安全归档到_archive/。
备选安装方式(Docker)
如果你更喜欢用 Docker:
{
"mcpServers": {
"vault": {
"command": "docker",
"args": [
"run", "-i", "--rm",
"-v", "/Users/yourname/my-vault:/vault",
"ghcr.io/oliverxuzy-ai/obsidian-in-a-vat:latest"
]
}
}
}
需要 Docker Desktop 在后台运行。
更新到最新版:docker pull ghcr.io/oliverxuzy-ai/obsidian-in-a-vat:latest
本地开发
从本地代码运行(修改代码后重启 Claude Desktop 即可生效):
{
"mcpServers": {
"vault": {
"command": "uv",
"args": [
"run",
"--directory",
"/绝对路径/obsidian-in-a-vat",
"vault-mcp"
],
"env": {
"VAULT_LOCAL_PATH": "/Users/yourname/my-vault"
}
}
}
}
切回已发布版本:将
command改为"uvx",args改为["obsidian-in-a-vat-mcp"]。
工具
| 工具 | Actions | 说明 |
|---|---|---|
vault_init | setup, migrate | 一键初始化:空 vault 自动创建模板结构;已有 Obsidian vault 自动扫描分类、todo 转换、批量迁移,原始文件归档到 _archive/ |
vault_read | search, get, list_captures | 搜索 vault、读取文件、按状态列出 captures |
vault_capture | save, delete | 捕获精炼洞察并自动打标签,或删除 capture |
vault_promote | promote | 将 captures 提升为结构化笔记,自动插入 wikilinks |
vault_analyze | rebuild_graph, clusters, connections, orphans | 知识图谱:构建图谱、Louvain 聚类、N 度关联查询、孤岛检测 |
vault_reflect | snapshot, drift, blindspots | 认知可视化:知识全景快照、兴趣漂移分析、盲区与桥接发现 |
vault_topic | prepare, create, update | Topic 生命周期:收集原材料(渐进式披露)、创建/更新 MOC 结构笔记 |
自动标签提取
标签从 capture 文本中提取,使用三个来源(按优先级排序):
- tags.yaml — vault 根目录的自定义标签和同义词映射
- 已有笔记 — 收集已有 vault 文件 frontmatter 中的标签进行匹配
- 默认领域 — 兜底列表:ai, llm, productivity, writing, coding, design, business, learning, health, finance, philosophy, psychology
tags.yaml 示例(放在 vault 根目录):
tags:
ai: [artificial intelligence, machine learning, ML, deep learning]
coding: [programming, software, development, code]
design: [UX, UI, user experience]
开发
# 本地构建镜像
docker build -t vault-mcp .
# 测试容器启动(Ctrl+C 停止)
echo '{}' | docker run -i --rm -v $(pwd)/example_vault:/vault vault-mcp
# 语法检查
python -m py_compile src/vault_mcp/server.py
# 使用 MCP Inspector 交互测试
mcp dev src/vault_mcp/server.py
Похожие серверы
Kone.vc
спонсорMonetize your AI agent with contextual product recommendations
Phabricator
Interact with Phabricator for task management and code review workflows.
Google Calendar
Interact with Google Calendar to list events, create meetings, and find free time slots.
ChartPane
Renders interactive Chart.js charts and dashboards inline in AI conversations.
Minimax MCP Tools
Integrates with the Minimax API for AI-powered image generation and text-to-speech.
cwprep
ai generate tableau prep file
WP-MCP
Manage and publish WordPress content directly from your AI assistant — no PHP required. Supports both STDIO and Streamable HTTP for broad client compatibility.
PocketMCP
Turn your Android phone into an MCP (Model Context Protocol) server. AI agents and desktop scripts can call your phone for live data and actions over LAN
mdshare
Free markdown sharing with collaboration. Upload, get a link, share. No login needed.
ATLAS: Task Management System
A task management system for LLM agents to manage projects, tasks, and knowledge using a Neo4j database for complex workflow automation.
Browser Use
A simple, self-contained notes system with resources, tools, and prompts.