knowledge-base-mcp
A lightweight personal knowledge base MCP server that lets clients store, search, organize, and summarize research notes from a local JSON file.
README
Knowledge Base MCP Server
A lightweight personal knowledge base server built with FastMCP. It lets an MCP-compatible client store, search, organize, and summarize research notes from a local JSON file.
Features
- Add structured notes with titles, content, tags, and timestamps
- Search notes by keyword across titles and content
- Filter notes by tag
- List all tags used in the knowledge base
- Delete notes by ID
- View knowledge base statistics, including tag distribution and content depth
- Expose recent notes and statistics as MCP resources
- Provide a reusable research-summary prompt for synthesizing saved notes
- Include an optional
.clauderesearch-capture skill for guided note capture workflows
Project Structure
.
|-- server.py
|-- notes.json
|-- requirements.txt
`-- .claude/
`-- skills/
`-- research-capture/
`-- SKILL.md
Requirements
- Python 3.10 or newer
- An MCP-compatible client such as Claude Desktop, Codex, Cursor, or another client that can launch local MCP servers
Installation
Clone the repository and install the Python dependency:
git clone https://github.com/YOUR_USERNAME/knowledge-base-mcp.git
cd knowledge-base-mcp
python -m venv .venv
.venv\Scripts\activate
pip install -r requirements.txt
On macOS or Linux, activate the virtual environment with:
source .venv/bin/activate
Running the Server
Run the MCP server directly:
python server.py
The server uses stdio transport by default through mcp.run(), which is the common setup for local MCP clients.
MCP Client Configuration
Add a server entry to your MCP client configuration. Use the absolute path to server.py on your machine.
Example:
{
"mcpServers": {
"knowledge-base": {
"command": "python",
"args": ["C:\\Users\\YOUR_NAME\\path\\to\\knowledge-base-mcp\\server.py"]
}
}
}
If you use a virtual environment, point the command to the virtual environment's Python executable:
{
"mcpServers": {
"knowledge-base": {
"command": "C:\\Users\\YOUR_NAME\\path\\to\\knowledge-base-mcp\\.venv\\Scripts\\python.exe",
"args": ["C:\\Users\\YOUR_NAME\\path\\to\\knowledge-base-mcp\\server.py"]
}
}
}
Available Tools
| Tool | Description |
|---|---|
add_note |
Add a note with a title, content, and optional tags |
search_notes |
Search note titles and content by keyword |
get_notes_by_tag |
Return notes that contain a specific tag |
list_tags |
List all unique tags in the knowledge base |
delete_note |
Delete a note by numeric ID |
get_statistics |
Return note count, tag distribution, date range, and average content length |
Available Resources
| Resource | Description |
|---|---|
notes://recent |
Shows the five most recent notes |
notes://stats |
Shows formatted knowledge base statistics |
Available Prompt
| Prompt | Description |
|---|---|
research_summary(topic) |
Creates a structured research summary workflow for a topic |
Data Storage
Notes are stored in notes.json next to server.py. Each note uses this structure:
{
"id": 1,
"title": "Example note",
"content": "The note body goes here.",
"tags": ["example", "research"],
"created_at": "2026-05-09T20:26:50.618981"
}
Before publishing a public repository, review notes.json and remove any private or sensitive information.
Example Usage
After connecting the server to an MCP client, you can ask the client to:
- "Add a note about MCP authentication updates with tags MCP and security."
- "Search my notes for OAuth."
- "Show all notes tagged research."
- "List my knowledge base tags."
- "Create a research summary about MCP architecture."
Development
The project is intentionally small:
server.pycontains the MCP server, tools, resources, and prompt.notes.jsonis the local JSON data store..claude/skills/research-capture/SKILL.mddefines an optional workflow for capturing and reviewing research notes.
To check that the server imports correctly:
python -m py_compile server.py
License
MIT
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