A community-driven registry for Claude, Cursor, Windsurf, Cline & more. Not affiliated with Anthropic.
Are you the author? Sign in to claim
MCP server providing a knowledge graph implementation with semantic search capabilities powered by Qdrant vector databas
This MCP server provides a knowledge graph implementation with semantic search capabilities powered by Qdrant vector database.
The following environment variables are required:
# OpenAI API key for generating embeddings
OPENAI_API_KEY=your-openai-api-key
# Qdrant server URL (supports both HTTP and HTTPS)
QDRANT_URL=https://your-qdrant-server
# Qdrant API key (if authentication is enabled)
QDRANT_API_KEY=your-qdrant-api-key
# Name of the Qdrant collection to use
QDRANT_COLLECTION_NAME=your-collection-name
npm install
npm run build
docker build -t mcp-qdrant-memory .
docker run -d \
-e OPENAI_API_KEY=your-openai-api-key \
-e QDRANT_URL=http://your-qdrant-server:6333 \
-e QDRANT_COLLECTION_NAME=your-collection-name \
-e QDRANT_API_KEY=your-qdrant-api-key \
--name mcp-qdrant-memory \
mcp-qdrant-memory
{
"mcpServers": {
"memory": {
"command": "/bin/zsh",
"args": ["-c", "cd /path/to/server && node dist/index.js"],
"env": {
"OPENAI_API_KEY": "your-openai-api-key",
"QDRANT_API_KEY": "your-qdrant-api-key",
"QDRANT_URL": "http://your-qdrant-server:6333",
"QDRANT_COLLECTION_NAME": "your-collection-name"
},
"alwaysAllow": [
"create_entities",
"create_relations",
"add_observations",
"delete_entities",
"delete_observations",
"delete_relations",
"read_graph",
"search_similar"
]
}
}
}
create_entities: Create multiple new entitiescreate_relations: Create relations between entitiesadd_observations: Add observations to entitiesdelete_entities: Delete entities and their relationsdelete_observations: Delete specific observationsdelete_relations: Delete specific relationsread_graph: Get the full knowledge graphsearch_similar: Search for semantically similar entities and relations
interface SearchParams {
query: string; // Search query text
limit?: number; // Max results (default: 10)
}
The server maintains two forms of persistence:
File-based (memory.json):
Qdrant Vector DB:
When entities or relations are modified:
When searching:
// Create entities
await client.callTool("create_entities", {
entities: [{
name: "Project",
entityType: "Task",
observations: ["A new development project"]
}]
});
// Search similar concepts
const results = await client.callTool("search_similar", {
query: "development tasks",
limit: 5
});
The server supports connecting to Qdrant through HTTPS and reverse proxies. This is particularly useful when:
server {
listen 443 ssl;
server_name qdrant.yourdomain.com;
ssl_certificate /path/to/cert.pem;
ssl_certificate_key /path/to/key.pem;
location / {
proxy_pass http://localhost:6333;
proxy_set_header Host $host;
proxy_set_header X-Real-IP $remote_addr;
}
}
QDRANT_URL=https://qdrant.yourdomain.com
The server implements robust HTTPS handling with:
If you experience connection issues:
openssl s_client -connect qdrant.yourdomain.com:443
curl -v https://qdrant.yourdomain.com/collections
env | grep -i proxy
MIT
Run Claude Code as an MCP server so any agent can delegate coding tasks to it
Browser automation using accessibility snapshots instead of screenshots
MCP server integration for DaVinci Resolve Studio
A Jetbrains IDE IntelliJ plugin aimed to provide coding agents the ability to leverage intelliJ's indexing of the codeba