Qdrant Loader Server
FreeNot checkedEnables AI development tools to perform semantic search and document relationship analysis on vectorized content stored in Qdrant databases.
About
Enables AI development tools to perform semantic search and document relationship analysis on vectorized content stored in Qdrant databases.
README
PyPI - qdrant-loader
PyPI - mcp-server
PyPI - qdrant-loader-core
Test Coverage
License: GPL v3
📝 Changelog v1.0.3 - Latest improvements and bug fixes
🎯 What is QDrant Loader?
QDrant Loader is a data ingestion and retrieval system that collects content from multiple sources, processes and vectorizes it, then provides intelligent search capabilities through a Model Context Protocol (MCP) server for AI development tools.
Perfect for:
- 🤖 AI-powered development with Cursor, Windsurf, and other MCP-compatible tools
- 📚 Knowledge base creation from technical documentation
- 🔍 Intelligent code assistance with contextual information
- 🏢 Enterprise content integration from multiple data sources
📦 Packages
This monorepo contains three complementary packages:
🔄 QDrant Loader
Data ingestion and processing engine
Collects and vectorizes content from multiple sources into QDrant vector database.
Key Features:
- Multi-source connectors: Git, Confluence (Cloud & Data Center), JIRA (Cloud & Data Center), Public Docs, Local Files
- File conversion: PDF, Office docs (Word, Excel, PowerPoint), images, audio, EPUB, ZIP, and more using MarkItDown
- Smart chunking: Modular chunking strategies with intelligent document processing and hierarchical context
- Incremental updates: Change detection and efficient synchronization
- Multi-project support: Organize sources into projects with shared collections
- Provider-agnostic LLM: OpenAI, Azure OpenAI, Ollama, and custom endpoints with unified configuration
⚙️ QDrant Loader Core
Core library and LLM abstraction layer
Provides the foundational components and provider-agnostic LLM interface used by other packages.
Key Features:
- LLM Provider Abstraction: Unified interface for OpenAI, Azure OpenAI, Ollama, and custom endpoints
- Configuration Management: Centralized settings and validation for LLM providers
- Rate Limiting: Built-in rate limiting and request management
- Error Handling: Robust error handling and retry mechanisms
- Logging: Structured logging with configurable levels
🔌 QDrant Loader MCP Server
AI development integration layer
Model Context Protocol server providing search capabilities to AI development tools.
Key Features:
- MCP Protocol 2025-06-18: Latest protocol compliance with dual transport support (stdio + HTTP)
- Advanced search tools: Semantic search, hierarchy-aware search, attachment discovery, and conflict detection
- Cross-document intelligence: Document similarity, clustering, relationship analysis, and knowledge graphs
- Streaming capabilities: Server-Sent Events (SSE) for real-time search results
- Production-ready: HTTP transport with security, session management, and health checks
🚀 Quick Start
Installation
# Install both packages
pip install qdrant-loader qdrant-loader-mcp-server
# Or install individually
pip install qdrant-loader # Data ingestion only
pip install qdrant-loader-mcp-server # MCP server only
5-Minute Setup
Create a workspace
mkdir my-workspace && cd my-workspaceInitialize workspace with templates
qdrant-loader init --workspace .Configure your environment (edit
.env)# Qdrant connection QDRANT_URL=http://localhost:6333 QDRANT_COLLECTION_NAME=my_docs # LLM provider (new unified configuration) OPENAI_API_KEY=your_openai_key LLM_PROVIDER=openai LLM_BASE_URL=https://api.openai.com/v1 LLM_EMBEDDING_MODEL=text-embedding-3-small LLM_CHAT_MODEL=gpt-4o-miniConfigure data sources (edit
config.yaml)global: qdrant: url: "http://localhost:6333" collection_name: "my_docs" llm: provider: "openai" base_url: "https://api.openai.com/v1" api_key: "${OPENAI_API_KEY}" models: embeddings: "text-embedding-3-small" chat: "gpt-4o-mini" embeddings: vector_size: 1536 projects: my-project: project_id: "my-project" sources: git: docs-repo: base_url: "https://github.com/your-org/your-repo.git" branch: "main" file_types: ["*.md", "*.rst"]Load your data
qdrant-loader ingest --workspace .Start the MCP server
mcp-qdrant-loader --env /path/tp/your/.env
🔧 MCP-Compatible IDE Setup
QDrant Loader works with any IDE/tool that supports MCP, including Cursor, Windsurf, and Claude Desktop.
Minimal MCP server entry (adapt path/format to your tool):
{
"mcpServers": {
"qdrant-loader": {
"command": "/path/to/venv/bin/mcp-qdrant-loader",
"env": {
"QDRANT_URL": "http://localhost:6333",
"QDRANT_COLLECTION_NAME": "my_docs",
"OPENAI_API_KEY": "your_key"
}
}
}
}
Alternative: Use configuration file (recommended for complex setups):
{
"mcpServers": {
"qdrant-loader": {
"command": "/path/to/venv/bin/mcp-qdrant-loader",
"args": [
"--config",
"/path/to/your/config.yaml",
"--env",
"/path/to/your/.env"
]
}
}
}
For tool-specific setup and exact config format:
Example queries in AI tools:
- "Find documentation about authentication in our API"
- "Show me examples of error handling patterns"
- "What are the deployment requirements for this service?"
- "Find all attachments related to database schema"
📚 Documentation
Getting Started
- Getting Started - Quick start and core concepts
- Installation Guide - Complete setup instructions
- Quick Start - Step-by-step tutorial
- Core Concepts - Understand the core architecture: workspace model, projects and sources, ingestion pipeline, and MCP search flow
User Guides
- User Guides - Detailed usage instructions
- Configuration - Complete configuration reference
- Data Sources - Git, Confluence, JIRA setup
- File Conversion - File processing capabilities
- MCP Server - AI tool integration
🛠️ Developer Resources
- Developer hub - Developer guides for architecture, testing, deployment, and contribution workflows.
- Architecture - System design overview
- Testing - Testing guide and best practices
🆘 Support
- Issues - Bug reports and feature requests
- Discussions - Community Q&A
🤝 Contributing
We welcome contributions! See our Contributing Guide for:
- Development environment setup
- Code style and standards
- Pull request process
Quick Development Setup
# Clone and setup
git clone https://github.com/martin-papy/qdrant-loader.git
cd qdrant-loader
# Sync workspace environment (recommended)
uv sync --all-packages --all-extras
# Add a new dependency during development
uv add fastapi
uv sync
📄 License
This project is licensed under the GNU GPLv3 - see the LICENSE file for details.
Ready to get started? Check out our Quick Start Guide or browse the complete documentation.
Installing Qdrant Loader Server
This server has no published package — it is built from source. Open the repository and follow its README.
▸ github.com/cbtw-apac/qdrant-loaderFAQ
Is Qdrant Loader Server MCP free?
Yes, Qdrant Loader Server MCP is free — one-click install via Unyly at no cost.
Does Qdrant Loader Server need an API key?
No, Qdrant Loader Server runs without API keys or environment variables.
Is Qdrant Loader Server hosted or self-hosted?
Self-hosted: the server runs locally on your machine via the install command above.
How do I install Qdrant Loader Server in Claude Desktop, Claude Code or Cursor?
Open Qdrant Loader Server on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
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