Cover image
Try Now
2025-04-14

3 years

Works with Finder

0

Github Watches

0

Github Forks

0

Github Stars

doc-lib-mcp MCP server

A Model Context Protocol (MCP) server for document ingestion, chunking, semantic search, and note management.

Components

Resources

  • Implements a simple note storage system with:
    • Custom note:// URI scheme for accessing individual notes
    • Each note resource has a name, description, and text/plain mimetype

Prompts

  • Provides a prompt:
    • summarize-notes: Creates summaries of all stored notes
      • Optional "style" argument to control detail level (brief/detailed)
      • Generates prompt combining all current notes with style preference

Tools

The server implements a wide range of tools:

  • add-note: Add a new note to the in-memory note store
    • Arguments: name (string), content (string)
  • ingest-string: Ingest and chunk a markdown or plain text string provided via message
    • Arguments: content (string, required), source (string, optional), tags (list of strings, optional)
  • ingest-markdown: Ingest and chunk a markdown (.md) file
    • Arguments: path (string)
  • ingest-python: Ingest and chunk a Python (.py) file
    • Arguments: path (string)
  • ingest-openapi: Ingest and chunk an OpenAPI JSON file
    • Arguments: path (string)
  • ingest-html: Ingest and chunk an HTML file
    • Arguments: path (string)
  • ingest-html-url: Ingest and chunk HTML content from a URL (optionally using Playwright for dynamic content)
    • Arguments: url (string), dynamic (boolean, optional)
  • smart_ingestion: Extracts all technically relevant content from a file using Gemini, then chunks it using robust markdown logic.
    • Arguments:
      • path (string, required): File path to ingest.
      • prompt (string, optional): Custom prompt to use for Gemini.
      • tags (list of strings, optional): Optional list of tags for classification.
    • Uses Gemini 2.0 Flash 001 to extract only code, configuration, markdown structure, and technical definitions (no summaries or commentary).
    • Passes the extracted content to a mistune 3.x-based chunker that preserves both code blocks and markdown/narrative content as separate chunks.
    • Each chunk is embedded and stored for semantic search and retrieval.
  • search-chunks: Semantic search over ingested content
    • Arguments:
      • query (string): The semantic search query.
      • top_k (integer, optional, default 3): Number of top results to return.
      • type (string, optional): Filter results by chunk type (e.g., code, html, markdown).
      • tag (string, optional): Filter results by tag in chunk metadata.
    • Returns the most relevant chunks for a given query, optionally filtered by type and/or tag.
  • delete-source: Delete all chunks from a given source
    • Arguments: source (string)
  • delete-chunk-by-id: Delete one or more chunks by id
    • Arguments: id (integer, optional), ids (list of integers, optional)
    • You can delete a single chunk by specifying id, or delete multiple chunks at once by specifying ids.
  • update-chunk-type: Update the type attribute for a chunk by id
    • Arguments: id (integer, required), type (string, required)
  • ingest-batch: Ingest and chunk multiple documentation files (markdown, OpenAPI JSON, Python) in batch
    • Arguments: paths (list of strings)
  • list-sources: List all unique sources (file paths) that have been ingested and stored in memory, with optional filtering by tag or semantic search.
    • Arguments:
      • tag (string, optional): Filter sources by tag in chunk metadata.
      • query (string, optional): Semantic search query to find relevant sources.
      • top_k (integer, optional, default 10): Number of top sources to return when using query.
  • get-context: Retrieve relevant content chunks (content only) for use as AI context, with filtering by tag, type, and semantic similarity.
    • Arguments:
      • query (string, optional): The semantic search query.
      • tag (string, optional): Filter results by a specific tag in chunk metadata.
      • type (string, optional): Filter results by chunk type (e.g., 'code', 'markdown').
      • top_k (integer, optional, default 5): The number of top relevant chunks to retrieve.
  • update-chunk-metadata: Update the metadata field for a chunk by id
    • Arguments: id (integer), metadata (object)
  • tag-chunks-by-source: Adds specified tags to the metadata of all chunks associated with a given source (URL or file path). Merges with existing tags.
    • Arguments: source (string), tags (list of strings)
  • list-notes: List all currently stored notes and their content.

Chunking and Code Extraction

  • Markdown, Python, OpenAPI, and HTML files are split into logical chunks for efficient retrieval and search.
  • The markdown chunker uses mistune 3.x's AST API and regex to robustly split content by code blocks and narrative, preserving all original formatting.
  • Both code blocks and markdown/narrative content are preserved as separate chunks.
  • The HTML chunker uses the readability-lxml library to extract main content first, then extracts block code snippets from <pre> tags as dedicated "code" chunks. Inline <code> content remains part of the narrative chunks.

Semantic Search

  • The search-chunks tool performs vector-based semantic search over all ingested content, returning the most relevant chunks for a given query.
  • Supports optional type and tag arguments to filter results by chunk type (e.g., code, html, markdown) and/or by tag in chunk metadata, before semantic ranking.
  • This enables highly targeted retrieval, such as "all code chunks tagged with 'langfuse' relevant to 'cost and usage'".

Metadata Management

  • Chunks include a metadata field for categorization and tagging.
  • The update-chunk-metadata tool allows updating metadata for any chunk by its id.
  • The tag-chunks-by-source tool allows adding tags to all chunks from a specific source in one operation. Tagging merges new tags with existing ones, preserving previous tags.

Configuration

[TODO: Add configuration details specific to your implementation]

Quickstart

Install

Claude Desktop

On MacOS: ~/Library/Application\ Support/Claude/claude_desktop_config.json On Windows: %APPDATA%/Claude/claude_desktop_config.json

Development/Unpublished Servers Configuration ``` "mcpServers": { "doc-lib-mcp": { "command": "uv", "args": [ "--directory", "/home/administrator/python-share/documentation_library/doc-lib-mcp", "run", "doc-lib-mcp" ] } } ```
Published Servers Configuration ``` "mcpServers": { "doc-lib-mcp": { "command": "uvx", "args": [ "doc-lib-mcp" ] } } ```

Development

Building and Publishing

To prepare the package for distribution:

  1. Sync dependencies and update lockfile:
uv sync
  1. Build package distributions:
uv build

This will create source and wheel distributions in the dist/ directory.

  1. Publish to PyPI:
uv publish

Note: You'll need to set PyPI credentials via environment variables or command flags:

  • Token: --token or UV_PUBLISH_TOKEN
  • Or username/password: --username/UV_PUBLISH_USERNAME and --password/UV_PUBLISH_PASSWORD

Debugging

Since MCP servers run over stdio, debugging can be challenging. For the best debugging experience, we strongly recommend using the MCP Inspector.

You can launch the MCP Inspector via npm with this command:

npx @modelcontextprotocol/inspector uv --directory /home/administrator/python-share/documentation_library/doc-lib-mcp run doc-lib-mcp

Upon launching, the Inspector will display a URL that you can access in your browser to begin debugging.

相关推荐

  • av
  • 毫不费力地使用一个命令运行LLM后端,API,前端和服务。

  • 1Panel-dev
  • 🔥1Panel提供了直观的Web接口和MCP服务器,用于在Linux服务器上管理网站,文件,容器,数据库和LLMS。

  • rulego
  • ⛓️Rulego是一种轻巧,高性能,嵌入式,下一代组件编排规则引擎框架。

  • WangRongsheng
  • 🧑‍🚀 llm 资料总结(数据处理、模型训练、模型部署、 o1 模型、mcp 、小语言模型、视觉语言模型)|摘要世界上最好的LLM资源。

  • Onelevenvy
  • Flock是一个基于工作流程的低音平台,可快速构建聊天机器人,抹布和协调多代理团队,由Langgraph,Langchain,Langchain,Fastapi和Nextjs提供支持。(羊群工作流工作流的低代码平台,rag rag rag 用于快速构建聊天机器人、 rag temant Agent fastem temantfaster和muti-agent agagent应用

  • Byaidu
  • PDF科学纸翻译带有保留格式的pdf -基于ai完整保留排版的pdf文档全文双语翻译

  • n8n-io
  • 具有本机AI功能的公平代码工作流程自动化平台。将视觉构建与自定义代码,自宿主或云相结合,400+集成。

  • hkr04
  • 轻巧的C ++ MCP(模型上下文协议)SDK

  • sigoden
  • 使用普通的bash/javascript/python函数轻松创建LLM工具和代理。

  • RockChinQ
  • 😎简单易用、🧩丰富生态 -大模型原生即时通信机器人平台| 适配QQ / 微信(企业微信、个人微信) /飞书 /钉钉 / discord / telegram / slack等平台| 支持chatgpt,deepseek,dify,claude,基于LLM的即时消息机器人平台,支持Discord,Telegram,微信,Lark,Dingtalk,QQ,Slack

    Reviews

    3.8 (6)
    Avatar
    user_XWWXOK5R
    2025-04-23

    As a loyal user of doc-lib-mcp, I am incredibly impressed by its seamless functionality and user-friendly interface. Created by shifusen329, it offers a comprehensive library that greatly enhances my project management workflow. I highly recommend this tool for anyone looking to improve their document organization and accessibility.

    Avatar
    user_aYrN7fCd
    2025-04-23

    As a dedicated user of the doc-lib-mcp application created by shifusen329, I am extremely impressed by its functionality and user-friendly interface. It has significantly streamlined my document management process. The welcome information is clear and helpful, making the start-up experience smooth. Highly recommended for anyone looking for an efficient document management solution!

    Avatar
    user_vpfO24wk
    2025-04-23

    As a dedicated user of doc-lib-mcp by shifusen329, I find it to be an essential tool for any developer. Its intuitive interface and comprehensive documentation make managing projects incredibly efficient. Highly recommend for its seamless integration and excellent support.

    Avatar
    user_y3byTn1W
    2025-04-23

    As a dedicated user of doc-lib-mcp by shifusen329, I am thoroughly impressed. This application streamlines document management effortlessly. The user interface is intuitive, and the functionality is robust, catering to all my documentation needs efficiently. Highly recommended for anyone seeking a seamless and efficient document management solution!

    Avatar
    user_ah6kq9NV
    2025-04-23

    As a dedicated user of doc-lib-mcp, I am thoroughly impressed by this incredible tool. Developed by shifusen329, it offers everything I need for seamless document management. Its streamlined interface and functionality make organizing documents a breeze. Highly recommend for anyone looking to enhance their productivity!

    Avatar
    user_NVlTbO66
    2025-04-23

    As a dedicated user of doc-lib-mcp, I can confidently say it's an outstanding resource for anyone working with MCP applications. The documentation provided is clear, comprehensive, and incredibly useful. Author shifusen329 has done an excellent job in curating the content, making it accessible for both beginners and experienced professionals. I highly recommend it to anyone looking to enhance their understanding and efficiency with MCP.