Track MCP LogoTrack MCP
Track MCP LogoTrack MCP

The world's largest repository of Model Context Protocol servers. Discover, explore, and submit MCP tools.

Product

  • Categories
  • Top MCP
  • New & Updated
  • Submit MCP

Company

  • About

Legal

  • Privacy Policy
  • Terms of Service
  • Cookie Policy

© 2026 TrackMCP. All rights reserved.

Built with ❤️ by Krishna Goyal

    Daniel Lightrag Mcp

    A comprehensive MCP server for LightRAG integration with 22 tools for document management, querying, knowledge graph operations, and system management

    9 stars
    Python
    Updated Oct 6, 2025

    Table of Contents

    • 🎉 Status: 100% Functional
    • Features
    • Quick Start
    • Installation
    • Usage
    • Command Line
    • Environment Variables
    • Configuration
    • MCP Client Configuration
    • Implementation Details
    • Available Tools (22 Total - All Working ✅)
    • Document Management Tools (6 tools)
    • insert_text
    • insert_texts
    • upload_document
    • scan_documents
    • get_documents
    • get_documents_paginated
    • delete_document
    • clear_documents
    • Query Tools (2 tools)
    • query_text
    • query_text_stream
    • Knowledge Graph Tools (6 tools)
    • get_knowledge_graph
    • get_graph_labels
    • check_entity_exists
    • update_entity
    • update_relation
    • delete_entity
    • delete_relation
    • System Management Tools (4 tools)
    • get_pipeline_status
    • get_track_status
    • get_document_status_counts
    • clear_cache
    • get_health
    • Example Workflows
    • Complete Document Management Workflow
    • Knowledge Graph Management Workflow
    • System Monitoring Workflow
    • Error Handling
    • Error Response Format
    • Common Error Scenarios
    • Connection Errors
    • Validation Errors
    • API Errors
    • Troubleshooting
    • Quick Diagnostics
    • Common Issues
    • Server Won't Start
    • Connection Refused
    • Authentication Failed
    • Timeout Errors
    • Tool Not Found
    • Debug Mode
    • Getting Help
    • Development
    • License

    Table of Contents

    • 🎉 Status: 100% Functional
    • Features
    • Quick Start
    • Installation
    • Usage
    • Command Line
    • Environment Variables
    • Configuration
    • MCP Client Configuration
    • Implementation Details
    • Available Tools (22 Total - All Working ✅)
    • Document Management Tools (6 tools)
    • insert_text
    • insert_texts
    • upload_document
    • scan_documents
    • get_documents
    • get_documents_paginated
    • delete_document
    • clear_documents
    • Query Tools (2 tools)
    • query_text
    • query_text_stream
    • Knowledge Graph Tools (6 tools)
    • get_knowledge_graph
    • get_graph_labels
    • check_entity_exists
    • update_entity
    • update_relation
    • delete_entity
    • delete_relation
    • System Management Tools (4 tools)
    • get_pipeline_status
    • get_track_status
    • get_document_status_counts
    • clear_cache
    • get_health
    • Example Workflows
    • Complete Document Management Workflow
    • Knowledge Graph Management Workflow
    • System Monitoring Workflow
    • Error Handling
    • Error Response Format
    • Common Error Scenarios
    • Connection Errors
    • Validation Errors
    • API Errors
    • Troubleshooting
    • Quick Diagnostics
    • Common Issues
    • Server Won't Start
    • Connection Refused
    • Authentication Failed
    • Timeout Errors
    • Tool Not Found
    • Debug Mode
    • Getting Help
    • Development
    • License

    Documentation

    Daniel LightRAG MCP Server

    A comprehensive MCP (Model Context Protocol) server that provides 100% functional integration with LightRAG API, offering 22 fully working tools across 4 categories for complete document management, querying, knowledge graph operations, and system management.

    🎉 Status: 100% Functional

    All 22 tools are working perfectly after comprehensive testing and optimization:

    • ✅ Document Management: 6/6 tools working (100%)
    • ✅ Query Operations: 2/2 tools working (100%)
    • ✅ Knowledge Graph: 6/6 tools working (100%)
    • ✅ System Management: 4/4 tools working (100%)
    • ✅ Health Check: 1/1 tools working (100%)

    Features

    • Document Management: 6 tools for inserting, uploading, scanning, retrieving, and managing documents
    • Query Operations: 2 tools for text queries with regular and streaming responses
    • Knowledge Graph: 6 tools for accessing, checking, updating, and managing entities and relations
    • System Management: 4 tools for health checks, status monitoring, and cache management
    • Comprehensive Error Handling: Robust error handling with detailed error messages
    • Full API Coverage: Complete integration with LightRAG API 0.1.96+

    Quick Start

    1. Install the server:

    bash
    pip install -e .

    2. Start LightRAG server (ensure it's running on http://localhost:9621)

    3. Configure your MCP client (e.g., Claude Desktop):

    json
    {
         "mcpServers": {
           "daniel-lightrag": {
             "command": "python",
             "args": ["-m", "daniel_lightrag_mcp"]
           }
         }
       }

    4. Test the connection:

    Use the get_health tool to verify everything is working.

    Installation

    bash
    # Basic installation
    pip install -e .
    
    # With development dependencies
    pip install -e ".[dev]"

    Usage

    Command Line

    Start the MCP server:

    bash
    daniel-lightrag-mcp

    Environment Variables

    Configure the server with environment variables:

    bash
    export LIGHTRAG_BASE_URL="http://localhost:9621"
    export LIGHTRAG_API_KEY="your-api-key"  # Optional
    export LIGHTRAG_TIMEOUT="30"            # Optional
    export LOG_LEVEL="INFO"                 # Optional
    
    daniel-lightrag-mcp

    Configuration

    The server expects LightRAG to be running on http://localhost:9621 by default. Make sure your LightRAG server is started before running this MCP server.

    MCP Client Configuration

    Add to your MCP client (e.g., Claude Desktop):

    json
    {
      "mcpServers": {
        "daniel-lightrag": {
          "command": "python",
          "args": ["-m", "daniel_lightrag_mcp"],
          "env": {
            "LIGHTRAG_BASE_URL": "http://localhost:9621",
            "LIGHTRAG_API_KEY": "lightragsecretkey"
          }
        }
      }
    }

    For detailed configuration options, see MCP_CONFIGURATION_GUIDE.md.

    Implementation Details

    This server has undergone comprehensive testing and optimization to achieve 100% functionality. Key improvements include:

    • HTTP Client Fixes: Proper DELETE request handling with JSON bodies
    • Request Parameter Validation: All request models aligned with LightRAG API
    • Response Model Alignment: All response models match actual server responses
    • File Source Implementation: Critical fix preventing database corruption
    • Knowledge Graph Access: Optimized label parameters for full graph access

    For complete technical details, see IMPLEMENTATION_GUIDE.md.

    Available Tools (22 Total - All Working ✅)

    Document Management Tools (6 tools)

    insert_text

    Insert text content into LightRAG.

    Parameters:

    • text (required): Text content to insert

    Example:

    json
    {
      "text": "This is important information about machine learning algorithms and their applications in modern AI systems."
    }

    insert_texts

    Insert multiple text documents into LightRAG.

    Parameters:

    • texts (required): Array of text documents with optional title and metadata

    Example:

    json
    {
      "texts": [
        {
          "title": "AI Overview",
          "content": "Artificial Intelligence is transforming industries...",
          "metadata": {"category": "technology", "author": "researcher"}
        },
        {
          "content": "Machine learning algorithms require large datasets..."
        }
      ]
    }

    upload_document

    Upload a document file to LightRAG.

    Parameters:

    • file_path (required): Path to the file to upload

    Example:

    json
    {
      "file_path": "/path/to/document.pdf"
    }

    scan_documents

    Scan for new documents in LightRAG.

    Parameters: None

    Example:

    json
    {}

    get_documents

    Retrieve all documents from LightRAG.

    Parameters: None

    Example:

    json
    {}

    get_documents_paginated

    Retrieve documents with pagination.

    Parameters:

    • page (required): Page number (1-based)
    • page_size (required): Number of documents per page (1-100)

    Example:

    json
    {
      "page": 1,
      "page_size": 20
    }

    delete_document

    Delete a specific document by ID.

    Parameters:

    • document_id (required): ID of the document to delete

    Example:

    json
    {
      "document_id": "doc_12345"
    }

    clear_documents

    Clear all documents from LightRAG.

    Parameters: None

    Example:

    json
    {}

    Query Tools (2 tools)

    query_text

    Query LightRAG with text.

    Parameters:

    • query (required): Query text
    • mode (optional): Query mode - "naive", "local", "global", or "hybrid" (default: "hybrid")
    • only_need_context (optional): Whether to only return context without generation (default: false)

    Example:

    json
    {
      "query": "What are the main concepts in machine learning?",
      "mode": "hybrid",
      "only_need_context": false
    }

    query_text_stream

    Stream query results from LightRAG.

    Parameters:

    • query (required): Query text
    • mode (optional): Query mode - "naive", "local", "global", or "hybrid" (default: "hybrid")
    • only_need_context (optional): Whether to only return context without generation (default: false)

    Example:

    json
    {
      "query": "Explain the evolution of artificial intelligence",
      "mode": "global"
    }

    Knowledge Graph Tools (6 tools)

    get_knowledge_graph

    Retrieve the knowledge graph from LightRAG.

    Parameters: None

    Example:

    json
    {}

    get_graph_labels

    Get labels from the knowledge graph.

    Parameters: None

    Example:

    json
    {}

    check_entity_exists

    Check if an entity exists in the knowledge graph.

    Parameters:

    • entity_name (required): Name of the entity to check

    Example:

    json
    {
      "entity_name": "Machine Learning"
    }

    update_entity

    Update an entity in the knowledge graph.

    Parameters:

    • entity_id (required): ID of the entity to update
    • properties (required): Properties to update

    Example:

    json
    {
      "entity_id": "entity_123",
      "properties": {
        "description": "Updated description for machine learning",
        "category": "AI Technology"
      }
    }

    update_relation

    Update a relation in the knowledge graph.

    Parameters:

    • relation_id (required): ID of the relation to update
    • properties (required): Properties to update

    Example:

    json
    {
      "relation_id": "rel_456",
      "properties": {
        "strength": 0.9,
        "type": "implements"
      }
    }

    delete_entity

    Delete an entity from the knowledge graph.

    Parameters:

    • entity_id (required): ID of the entity to delete

    Example:

    json
    {
      "entity_id": "entity_789"
    }

    delete_relation

    Delete a relation from the knowledge graph.

    Parameters:

    • relation_id (required): ID of the relation to delete

    Example:

    json
    {
      "relation_id": "rel_101"
    }

    System Management Tools (4 tools)

    get_pipeline_status

    Get the pipeline status from LightRAG.

    Parameters: None

    Example:

    json
    {}

    get_track_status

    Get track status by ID.

    Parameters:

    • track_id (required): ID of the track to get status for

    Example:

    json
    {
      "track_id": "track_abc123"
    }

    get_document_status_counts

    Get document status counts.

    Parameters: None

    Example:

    json
    {}

    clear_cache

    Clear LightRAG cache.

    Parameters: None

    Example:

    json
    {}

    get_health

    Check LightRAG server health.

    Parameters: None

    Example:

    json
    {}

    Example Workflows

    Complete Document Management Workflow

    1. Check server health:

    json
    {"tool": "get_health", "arguments": {}}

    2. Insert documents:

    json
    {
         "tool": "insert_texts",
         "arguments": {
           "texts": [
             {
               "title": "AI Research Paper",
               "content": "Recent advances in transformer architectures have shown remarkable improvements in natural language understanding tasks...",
               "metadata": {"category": "research", "year": 2024}
             }
           ]
         }
       }

    3. Query the knowledge base:

    json
    {
         "tool": "query_text",
         "arguments": {
           "query": "What are the recent advances in transformer architectures?",
           "mode": "hybrid"
         }
       }

    4. Explore the knowledge graph:

    json
    {"tool": "get_knowledge_graph", "arguments": {}}

    5. Check entity existence:

    json
    {
         "tool": "check_entity_exists",
         "arguments": {"entity_name": "transformer architectures"}
       }

    Knowledge Graph Management Workflow

    1. Get current graph structure:

    json
    {"tool": "get_knowledge_graph", "arguments": {}}

    2. Get available labels:

    json
    {"tool": "get_graph_labels", "arguments": {}}

    3. Update entity properties:

    json
    {
         "tool": "update_entity",
         "arguments": {
           "entity_id": "transformer_arch_001",
           "properties": {
             "description": "Advanced neural network architecture for sequence processing",
             "applications": ["NLP", "computer vision", "speech recognition"],
             "year_introduced": 2017
           }
         }
       }

    4. Update relation properties:

    json
    {
         "tool": "update_relation",
         "arguments": {
           "relation_id": "rel_improves_002",
           "properties": {
             "improvement_factor": 2.5,
             "confidence": 0.92,
             "evidence": "Multiple benchmark studies"
           }
         }
       }

    System Monitoring Workflow

    1. Check overall health:

    json
    {"tool": "get_health", "arguments": {}}

    2. Monitor pipeline status:

    json
    {"tool": "get_pipeline_status", "arguments": {}}

    3. Check document processing status:

    json
    {"tool": "get_document_status_counts", "arguments": {}}

    4. Track specific operations:

    json
    {
         "tool": "get_track_status",
         "arguments": {"track_id": "upload_batch_001"}
       }

    5. Clear cache when needed:

    json
    {"tool": "clear_cache", "arguments": {}}

    Error Handling

    The server provides comprehensive error handling with detailed error messages:

    • Connection Errors: When LightRAG server is unreachable
    • Authentication Errors: When API key is invalid or missing
    • Validation Errors: When input parameters are invalid
    • API Errors: When LightRAG API returns errors
    • Timeout Errors: When requests exceed timeout limits
    • Server Errors: When LightRAG server returns 5xx status codes

    All errors include:

    • Error type and message
    • HTTP status code (when applicable)
    • Timestamp
    • Tool name that caused the error
    • Additional context data when available

    Error Response Format

    json
    {
      "tool": "insert_text",
      "error_type": "LightRAGConnectionError",
      "message": "Failed to connect to LightRAG server at http://localhost:9621",
      "timestamp": 1703123456.789,
      "status_code": null,
      "response_data": {}
    }

    Common Error Scenarios

    Connection Errors

    json
    {
      "error_type": "LightRAGConnectionError",
      "message": "Connection refused to http://localhost:9621",
      "status_code": null
    }

    Validation Errors

    json
    {
      "error_type": "LightRAGValidationError", 
      "message": "Missing required arguments for query_text: ['query']",
      "validation_errors": [
        {
          "loc": ["query"],
          "msg": "field required",
          "type": "value_error.missing"
        }
      ]
    }

    API Errors

    json
    {
      "error_type": "LightRAGAPIError",
      "message": "Document not found",
      "status_code": 404,
      "response_data": {
        "detail": "Document with ID 'doc_123' does not exist"
      }
    }

    Troubleshooting

    Quick Diagnostics

    1. Check LightRAG Server Status:

    bash
    curl http://localhost:9621/health

    2. Test MCP Server:

    bash
    python -m daniel_lightrag_mcp &
       sleep 2
       pkill -f daniel_lightrag_mcp

    3. Verify Installation:

    bash
    python -c "import daniel_lightrag_mcp; print('OK')"

    Common Issues

    Server Won't Start

    • Check Python version: Requires Python 3.8+
    • Verify dependencies: Run pip install -e .
    • Check port availability: Ensure no conflicts on stdio

    Connection Refused

    • LightRAG not running: Start LightRAG server first
    • Wrong URL: Verify LIGHTRAG_BASE_URL environment variable
    • Firewall blocking: Check firewall settings for port 9621

    Authentication Failed

    • Missing API key: Set LIGHTRAG_API_KEY environment variable
    • Invalid key: Verify API key with LightRAG server
    • Key format: Ensure key format matches LightRAG expectations

    Timeout Errors

    • Increase timeout: Set LIGHTRAG_TIMEOUT=60 environment variable
    • Check server load: Verify LightRAG server performance
    • Network latency: Test direct API calls with curl

    Tool Not Found

    • Restart MCP client: Reload server configuration
    • Check tool name: Verify exact tool name spelling
    • Server registration: Ensure all 22 tools are listed

    Debug Mode

    Enable detailed logging:

    bash
    export LOG_LEVEL=DEBUG
    python -m daniel_lightrag_mcp

    Getting Help

    1. Check server logs for detailed error messages

    2. Test individual tools with minimal examples

    3. Verify LightRAG server is responding correctly

    4. Review the Configuration Guide for setup details

    Development

    Install development dependencies:

    bash
    pip install -e ".[dev]"

    Run tests:

    bash
    pytest

    Run tests with coverage:

    bash
    pytest --cov=src/daniel_lightrag_mcp --cov-report=html

    Format code:

    bash
    black src/ tests/
    isort src/ tests/

    License

    MIT License

    Similar MCP

    Based on tags & features

    • ES

      Esp Rainmaker Mcp

      Python·
      9
    • PE

      Personalizationmcp

      Python·
      12
    • FA

      Fal Mcp Server

      Python·
      8
    • GG

      Gget Mcp

      Python·
      17

    Trending MCP

    Most active this week

    • PL

      Playwright Mcp

      TypeScript·
      22.1k
    • SE

      Serena

      Python·
      14.5k
    • MC

      Mcp Playwright

      TypeScript·
      4.9k
    • MC

      Mcp Server Cloudflare

      TypeScript·
      3.0k
    View All MCP Servers

    Similar MCP

    Based on tags & features

    • ES

      Esp Rainmaker Mcp

      Python·
      9
    • PE

      Personalizationmcp

      Python·
      12
    • FA

      Fal Mcp Server

      Python·
      8
    • GG

      Gget Mcp

      Python·
      17

    Trending MCP

    Most active this week

    • PL

      Playwright Mcp

      TypeScript·
      22.1k
    • SE

      Serena

      Python·
      14.5k
    • MC

      Mcp Playwright

      TypeScript·
      4.9k
    • MC

      Mcp Server Cloudflare

      TypeScript·
      3.0k