w3-mcp-server-qdrant
Python MCP server for vector search using Qdrant vector database and Ollama embeddings, with advanced query techniques like query expansion, HyDE, and reranking.
README
W3 MCP Qdrant Server
Python MCP server for vector search using Qdrant vector database and Ollama embeddings.
Status: ✅ Working with Qdrant vector search and Ollama embeddings + Advanced query techniques
Features
- qdrant_search - Search for similar documents using text queries (auto-embedded via Ollama)
- ✨ Query Expansion - Generate N query variations, search all, merge with RRF
- ✨ HyDE - Hypothetical Document Embeddings for semantic enrichment
- ✨ Reranking - Use LLM to reorder results by relevance
- qdrant_list_collections - List and manage Qdrant collections
Supports flexible output formats (Markdown or JSON) with configurable similarity thresholds and advanced search options.
Quick Start
1. Prerequisites Setup
Qdrant Server
# Using Docker (Recommended)
docker run -p 6333:6333 qdrant/qdrant:latest
Or install locally: Qdrant Quick Start
Ollama Server
# Install: https://ollama.ai
ollama pull bge-m3
ollama pull mistral
ollama serve
Available embedding models:
bge-m3(384 dims) - ⭐ recommended - best quality-speed balancenomic-embed-text(768 dims) - balanced, good for general usemxbai-embed-large(1024 dims) - highest qualityall-minilm(384 dims) - ultra-lightweight, good for mobile
2. Clean Setup (Important!)
cd /path/to/w3-mcp-server-qdrant
# Remove old lockfile and venv
rm -rf uv.lock .venv venv
# Unset old environment variable
unset VIRTUAL_ENV
3. Install Dependencies with uv
# Install all Python dependencies using uv
uv sync
That's it! uv sync installs all dependencies including MCP, pydantic, qdrant-client, and httpx.
4. Configure Environment
Create a .env file from template:
cp .env.example .env
Edit .env:
# Qdrant Configuration
QDRANT_URL=http://localhost:6333
QDRANT_API_KEY= # Optional if using API key auth
# Ollama Configuration
OLLAMA_BASE_URL=http://localhost:11434
OLLAMA_EMBED_MODEL=bge-m3:latest
OLLAMA_RERANK_MODEL=mistral # For query expansion and reranking
Or export environment variables:
export QDRANT_URL=http://localhost:6333
export OLLAMA_BASE_URL=http://localhost:11434
export OLLAMA_EMBED_MODEL=bge-m3:latest
export OLLAMA_RERANK_MODEL=mistral
5. Verify Installation
# Check Qdrant
curl http://localhost:6333/health
# Check Ollama
curl http://localhost:11434/api/tags
# Check Python env
uv run python -c "from mcp.server.fastmcp import FastMCP; print('✓ MCP ready')"
6. Test with MCP Inspector
# Start MCP Inspector (interactive web UI)
uv run mcp dev server.py
Opens URL like:
http://localhost:6274/?MCP_PROXY_AUTH_TOKEN=...
Features:
- ✅ Available tools listed in sidebar
- ✅ Test each tool interactively with JSON input
- ✅ Real-time request/response viewing
- ✅ Server logs and debugging
- ✅ No extra dependencies needed
Usage
Option A: MCP Inspector (Development)
Best way to test and debug:
cd /path/to/w3-mcp-server-qdrant
# Start inspector
uv run mcp dev server.py
Opens web UI at http://localhost:5173:
- See available tools
- Test each tool with JSON input
- View request/response in real-time
- See server logs
Option B: Direct Python
# Run server (stdio mode)
uv run python server.py
Option C: Claude Code Integration
Method 1: Local Source (Development)
Edit ~/.claude/claude_config.json:
{
"mcpServers": {
"qdrant": {
"type": "stdio",
"command": "uv",
"args": ["run", "server.py"],
"cwd": "/path/to/w3-mcp-server-qdrant",
"env": {
"QDRANT_URL": "http://localhost:6333",
"OLLAMA_BASE_URL": "http://localhost:11434",
"OLLAMA_EMBED_MODEL": "bge-m3:latest",
"OLLAMA_RERANK_MODEL": "mistral"
}
}
}
}
Advantages:
- ✅ Run latest development version
- ✅ Easy to modify and test changes
- ✅ Direct access to source code
Method 2: PyPI Installation (When Published)
Install from PyPI (always fetch latest version):
uv run --with w3-mcp-server-qdrant --refresh w3-mcp-server-qdrant
Edit ~/.claude/claude_config.json:
{
"mcpServers": {
"qdrant": {
"type": "stdio",
"command": "uv",
"args": ["run", "--with", "w3-mcp-server-qdrant", "--refresh", "w3-mcp-server-qdrant"],
"env": {
"QDRANT_URL": "http://localhost:6333",
"OLLAMA_BASE_URL": "http://localhost:11434",
"OLLAMA_EMBED_MODEL": "bge-m3:latest",
"OLLAMA_RERANK_MODEL": "mistral"
}
}
}
}
Advantages:
- ✅ No need to clone repository
- ✅ Easy version management
- ✅ Automatic dependency isolation
Then restart Claude Code.
Tools Documentation
qdrant_search
Search for similar documents in a collection using text query (auto-embedded via Ollama).
Supports advanced search techniques: query expansion, hypothetical document embeddings (HyDE), and LLM-based reranking.
Basic Parameters
| Parameter | Type | Default | Description |
|---|---|---|---|
collection_name |
string | required | Name of the collection to search |
query_text |
string | required | Text to search for (auto-embedded via Ollama) |
limit |
integer | 5 | Max results to return (1-100) |
score_threshold |
float | 0.0 | Minimum similarity threshold (0.0-1.0) |
fields |
string | "" | Comma-separated metadata fields to return (empty = all) |
response_format |
string | "markdown" | "markdown" or "json" |
Advanced Parameters - Query Expansion
Generate N query variations, search all in parallel, merge results with Reciprocal Rank Fusion:
| Parameter | Type | Default | Description |
|---|---|---|---|
expand_query |
boolean | false | Enable query expansion |
expand_query_count |
integer | 3 | Number of variations to generate (1-10) |
Advanced Parameters - HyDE
Generate a hypothetical document matching the query intent, then embed it:
| Parameter | Type | Default | Description |
|---|---|---|---|
use_hyde |
boolean | false | Enable HyDE |
hyde_combine_original |
boolean | true | Also search original query + HyDE doc |
Advanced Parameters - Reranking
Use LLM to reorder results by relevance to the original query:
| Parameter | Type | Default | Description |
|---|---|---|---|
rerank |
boolean | false | Enable LLM reranking |
rerank_top_n |
integer | 10 | Number of results to rerank (1-100) |
Examples
Example 1: Basic search
{
"collection_name": "docs",
"query_text": "machine learning",
"limit": 5
}
Example 2: Query expansion (good recall)
{
"collection_name": "docs",
"query_text": "machine learning",
"expand_query": true,
"expand_query_count": 5,
"limit": 5
}
Example 3: HyDE (semantic understanding)
{
"collection_name": "docs",
"query_text": "machine learning",
"use_hyde": true,
"hyde_combine_original": true,
"limit": 5
}
Example 4: Full combo (best quality, slower)
{
"collection_name": "docs",
"query_text": "machine learning",
"expand_query": true,
"expand_query_count": 3,
"use_hyde": true,
"rerank": true,
"rerank_top_n": 15,
"limit": 5
}
Output Format
Returns JSON with search metadata and ranked results:
{
"query": "machine learning",
"collection": "docs",
"total": 3,
"search_method": "rrf+hyde+expand+rerank",
"results": [
{
"index": 1,
"id": "doc_123",
"score": 0.0273,
"metadata": {
"title": "Machine Learning Basics",
"author": "Jane Doe"
}
}
]
}
Note: search_method field indicates which techniques were applied:
basic- simple vector searchrrf- multiple searches merged with Reciprocal Rank Fusionrrf+hyde- RRF with HyDErrf+expand- RRF with query expansionrrf+hyde+expand+rerank- all techniques combined
qdrant_list_collections
List all collections in Qdrant with metadata.
Parameters:
response_format(string): "markdown" or "json" (default: "markdown")
Example:
{
"response_format": "json"
}
Output:
{
"collections": [
{
"name": "tech_docs",
"points_count": 1250,
"vector_size": 768
},
{
"name": "papers",
"points_count": 3840,
"vector_size": 1024
}
]
}
Configuration
QDRANT_URL
Specifies the URL of your Qdrant server.
Set via:
-
Environment variable:
export QDRANT_URL=http://localhost:6333 uv run python server.py -
.env file:
QDRANT_URL=http://localhost:6333 -
In claude_config.json:
"env": { "QDRANT_URL": "http://localhost:6333" }
OLLAMA_BASE_URL
Specifies the URL of your Ollama server.
Default: http://localhost:11434
OLLAMA_EMBED_MODEL
Specifies which embedding model to use for embedding search queries and documents.
Default: bge-m3:latest
Recommended embedding models:
bge-m3(384 dims) - ⭐ Recommended - best quality-to-speed rationomic-embed-text(768 dims) - balanced, good for most use casesall-minilm(384 dims) - fast, lightweightmxbai-embed-large(1024 dims) - highest quality but slower
OLLAMA_RERANK_MODEL
Specifies which LLM model to use for advanced features (query expansion, HyDE, reranking).
Default: mistral
Recommended models:
mistral(7B) - ⭐ Recommended - good quality, reasonable speedqwen2.5-coder(7B) - high quality but optimized for codellama3.2(3B) - smaller, faster but lower qualityneural-chat(7B) - good for instruction-following
Note: Only used when expand_query=true, use_hyde=true, or rerank=true
Project Structure
w3-mcp-server-qdrant/
├── server.py # MCP server entry point
├── pyproject.toml # Project config
├── .env.example # Environment variables template
├── README.md # This file
└── tests/
└── test_mcp_server.py # Integration tests
How It Works
Architecture
MCP Client (Claude, IDE, etc.)
↓
MCP Server (server.py)
├── Ollama: text → embedding vector
└── Qdrant: vector search
Search Flow
- User provides text query
- Ollama embeds query → embedding vector
- Qdrant searches for similar vectors
- Results returned with scores and metadata
Examples
Search documents
# Via Claude/MCP interface
qdrant_search(
collection_name="tech_docs",
query_text="machine learning algorithms",
limit=5,
score_threshold=0.6,
response_format="markdown"
)
List collections
# Via Claude/MCP interface
qdrant_list_collections(response_format="json")
Development
Run tests using uv
uv run pytest tests/
Code formatting with uv
uv run black server.py
uv run ruff check server.py
Testing with MCP Inspector
uv run mcp dev server.py
Web UI at http://localhost:5173 shows:
- Available tools and schemas
- Real-time request/response
- Server logs
- Interactive testing
Performance Tips
Basic Search Optimization
- Score threshold: Use
score_thresholdto filter low-relevance results and reduce noise - Result limit: Adjust
limitparameter (1-100) to balance quality vs. speed - Embedding model: Choose based on quality vs. speed tradeoff:
nomic-embed-text: balanced (recommended)all-minilm: fast, lightweightmxbai-embed-large: higher quality but slower
Advanced Features Trade-offs
| Feature | Quality | Speed | Use Case |
|---|---|---|---|
| Basic search | ⭐⭐ | ⚡⚡⚡ | Clear, specific queries |
| Query expansion | ⭐⭐⭐ | ⚡⚡ | Ambiguous queries, high recall needed |
| HyDE | ⭐⭐⭐ | ⚡⚡ | Semantic understanding important |
| Reranking | ⭐⭐⭐⭐ | ⚡ | Precision critical, can wait 1-2s |
| All combined | ⭐⭐⭐⭐⭐ | ⚡ | Best quality, time not critical |
Performance Strategy
- Fast path: Basic search with
limit=5 - Balanced:
expand_query=true, expand_query_count=3 - High quality: Add
use_hyde=true - Maximum quality: Add
rerank=true(slowest, ~5-10s)
Troubleshooting
Qdrant connection error
# Check if Qdrant is running
curl http://localhost:6333/health
# Start Qdrant with Docker
docker run -p 6333:6333 qdrant/qdrant:latest
Ollama embedding failed
# Check if Ollama is running
curl http://localhost:11434/api/tags
# Pull embedding model
ollama pull nomic-embed-text
# Start Ollama
ollama serve
Collection not found
- Ensure collection exists in Qdrant
- Create collection through Qdrant UI or external tools
- Verify collection name matches exactly
MCP module not found
# Install dependencies with uv
uv sync
Server hangs on startup
- Check if Qdrant server is running and accessible
- Check if Ollama server is running
- Try:
curl http://localhost:6333/healthandcurl http://localhost:11434/api/tags
Implemented Features
- [x] Query expansion with LLM-generated variations
- [x] HyDE (Hypothetical Document Embeddings)
- [x] Reciprocal Rank Fusion (RRF) for result merging
- [x] LLM-based result reranking
- [x] Parallel async embedding and search
Future Enhancements
- [ ] Support for additional embedding models
- [ ] Batch vector operations
- [ ] Collection creation/deletion tools
- [ ] Vector update and delete operations
- [ ] Semantic search filters
- [ ] Caching for query expansions
- [ ] Custom RRF weights configuration
References
License
MIT
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