MCP cover image
qdrant_server_devcontainer_for_rag_mcp logo
Public

qdrant_server_devcontainer_for_rag_mcp

See in Github
2025-04-08

1

Github Watches

0

Github Forks

0

Github Stars

Qdrant DevContainer for File Embeddings

This project provides a development container setup for running Qdrant with file embeddings. It includes everything needed to index and search text documents using vector similarity search.

Prerequisites

  1. Docker Desktop must be running before starting the devcontainer
  2. VS Code with the Remote - Containers extension
  3. Internet connection (for downloading dependencies)

Getting Started

  1. Ensure Docker Desktop is running on your system
  2. Open this folder in VS Code
  3. Click the green "Reopen in Container" button in the bottom right corner
    • Or press F1 and type "Dev Containers: Reopen in Container"

Project Structure

qdrant_server_devcontainer/ ├── .devcontainer/ │ ├── devcontainer.json │ └── Dockerfile ├── requirements.txt ├── ingest.py └── data/ # Place your text files here

Usage

  1. Place your text files in the data/ directory
  2. The container will automatically start Qdrant
  3. After the container is built You should be able to access Qdrant at http://localhost:6333
  4. Run the ingestion script manually from within the container:
    python ingest.py
    

Features

  • Qdrant vector database running in the background
  • Automatic file indexing using sentence-transformers
  • Python environment with all necessary dependencies
  • VS Code Python extension pre-installed

Technical Details

  • Qdrant runs on a dynamically assigned port (check the output panel after container build)
  • Uses all-MiniLM-L6-v2 for text embeddings
  • Creates a collection named "local-docs" with cosine similarity
  • Supports text files (.txt), markdown files (.md), and PDF files (.pdf) in the data directory

Troubleshooting

  1. If the container fails to start:

    • Ensure Docker Desktop is running
    • Check that no other process is using the dynamically assigned port
    • Verify all dependencies are properly installed
  2. If files aren't being indexed:

    • Check that files are in the data/ directory
    • Verify file extensions are supported (currently .txt, .md, .pdf)
    • Ensure files are readable by the container

License

MIT License

TODO

  • handle giant PDFs efficiently,
  • extract text per page using parallel processing,
  • embed and push each chunk as it’s ready,
  • support GPU embedding if torch.cuda.is_available()?
  • add support for epub files

相关推荐

  • Yusuf Emre Yeşilyurt
  • I find academic articles and books for research and literature reviews.

  • https://suefel.com
  • Latest advice and best practices for custom GPT development.

  • https://maiplestudio.com
  • Find Exhibitors, Speakers and more

  • Carlos Ferrin
  • Encuentra películas y series en plataformas de streaming.

  • Joshua Armstrong
  • Confidential guide on numerology and astrology, based of GG33 Public information

  • Emmet Halm
  • Converts Figma frames into front-end code for various mobile frameworks.

  • Elijah Ng Shi Yi
  • Advanced software engineer GPT that excels through nailing the basics.

  • Alexandru Strujac
  • Efficient thumbnail creator for YouTube videos

  • lumpenspace
  • Take an adjectivised noun, and create images making it progressively more adjective!

  • Lists Tailwind CSS classes in monospaced font

  • https://appia.in
  • Siri Shortcut Finder – your go-to place for discovering amazing Siri Shortcuts with ease

  • apappascs
  • 发现市场上最全面,最新的MCP服务器集合。该存储库充当集中式枢纽,提供了广泛的开源和专有MCP服务器目录,并提供功能,文档链接和贡献者。

  • ShrimpingIt
  • MCP系列GPIO Expander的基于Micropython I2C的操作,源自ADAFRUIT_MCP230XX

  • modelcontextprotocol
  • 模型上下文协议服务器

  • jae-jae
  • MCP服务器使用剧作《无头浏览器》获取网页内容。

  • Mintplex-Labs
  • 带有内置抹布,AI代理,无代理构建器,MCP兼容性等的多合一桌面和Docker AI应用程序。

  • ravitemer
  • 一个功能强大的Neovim插件,用于管理MCP(模型上下文协议)服务器

  • patruff
  • Ollama和MCP服务器之间的桥梁,使本地LLMS可以使用模型上下文协议工具

  • pontusab
  • 光标与风浪冲浪社区,查找规则和MCP

  • 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。

    Reviews

    2 (1)
    Avatar
    user_t7UUJBUH
    2025-04-17

    I've been using the qdrant_server_devcontainer_for_rag_mcp for a while now, and it has significantly improved my development workflow. The setup is seamless, and it allows for rapid prototyping and deployment. The containerization aspect is particularly useful for maintaining consistency across different environments. Kudos to questmapping for this innovative tool! Highly recommended for any MCP enthusiast looking to streamline their projects. Here's the link for more details: https://github.com/questmapping/qdrant_server_devcontainer_for_rag_mcp