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    Clearml Mcp

    lightweight MCP server for ClearML

    6 stars
    Python
    Updated Aug 26, 2025
    mcp-server
    ml-experiments
    ml-platform
    mlops

    Table of Contents

    • ✨ Features
    • 📋 Requirements
    • 🚀 Quick Start
    • Prerequisites
    • Installation
    • 🔌 Integrations
    • 🛠️ Available Tools
    • 📊 Task Operations
    • 🤖 Model Operations
    • 📁 Project Operations
    • 🔍 Analysis Tools
    • 💡 Usage Examples
    • Demo
    • 🏗️ Development
    • Setup
    • Available Commands
    • Testing with MCP Inspector
    • 🚨 Troubleshooting
    • 🤝 Contributing
    • 📄 License
    • 🔗 Links

    Table of Contents

    • ✨ Features
    • 📋 Requirements
    • 🚀 Quick Start
    • Prerequisites
    • Installation
    • 🔌 Integrations
    • 🛠️ Available Tools
    • 📊 Task Operations
    • 🤖 Model Operations
    • 📁 Project Operations
    • 🔍 Analysis Tools
    • 💡 Usage Examples
    • Demo
    • 🏗️ Development
    • Setup
    • Available Commands
    • Testing with MCP Inspector
    • 🚨 Troubleshooting
    • 🤝 Contributing
    • 📄 License
    • 🔗 Links

    Documentation

    ClearML MCP Server

    ClearML MCP

    PyPI version

    Python 3.10+

    License: MIT

    A lightweight Model Context Protocol (MCP) server that enables AI assistants to interact with ClearML experiments, models, and projects. Get comprehensive ML experiment context and analysis directly in your AI conversations.

    ✨ Features

    • 🔍 Experiment Discovery: Find and analyze ML experiments across projects
    • 📊 Performance Analysis: Compare model metrics and training progress
    • 📈 Real-time Metrics: Access training scalars, validation curves, and convergence analysis
    • 🏷️ Smart Search: Filter tasks by name, tags, status, and custom queries
    • 📦 Artifact Management: Retrieve model files, datasets, and experiment outputs
    • 🌐 Cross-platform: Works with all major AI assistants and code editors

    📋 Requirements

    • uv (installation guide) for uvx command
    • ClearML account with valid API credentials in ~/.clearml/clearml.conf

    🚀 Quick Start

    Prerequisites

    You need a configured ClearML environment with your credentials in ~/.clearml/clearml.conf:

    ini
    [api]
    api_server = https://api.clear.ml
    web_server = https://app.clear.ml
    files_server = https://files.clear.ml
    credentials {
        "access_key": "your-access-key",
        "secret_key": "your-secret-key"
    }

    Get your credentials from ClearML Settings.

    Installation

    bash
    # Install from PyPI
    pip install clearml-mcp
    
    # Or run directly with uvx (no installation needed)
    uvx clearml-mcp

    🔌 Integrations

    🤖 Claude Desktop

    Add to your Claude Desktop configuration:

    macOS: ~/Library/Application Support/Claude/claude_desktop_config.json

    Windows: %APPDATA%/Claude/claude_desktop_config.json

    json
    {
      "mcpServers": {
        "clearml": {
          "command": "uvx",
          "args": ["clearml-mcp"]
        }
      }
    }

    Alternative with pip installation:

    json
    {
      "mcpServers": {
        "clearml": {
          "command": "python",
          "args": ["-m", "clearml_mcp.clearml_mcp"]
        }
      }
    }

    ⚡ Cursor

    Add to your Cursor settings (Ctrl/Cmd + , → Search "MCP"):

    json
    {
      "mcp.servers": {
        "clearml": {
          "command": "uvx",
          "args": ["clearml-mcp"]
        }
      }
    }

    Or add to .cursorrules in your project:

    code
    When analyzing ML experiments or asking about model performance, use the clearml MCP server to access experiment data, metrics, and artifacts.

    🔥 Continue

    Add to your Continue configuration (~/.continue/config.json):

    json
    {
      "mcpServers": {
        "clearml": {
          "command": "uvx",
          "args": ["clearml-mcp"]
        }
      }
    }

    🦾 Cody

    Add to your Cody settings:

    json
    {
      "cody.experimental.mcp": {
        "servers": {
          "clearml": {
            "command": "uvx",
            "args": ["clearml-mcp"]
          }
        }
      }
    }

    🧠 Other AI Assistants

    For any MCP-compatible AI assistant, use this configuration:

    json
    {
      "mcpServers": {
        "clearml": {
          "command": "uvx",
          "args": ["clearml-mcp"]
        }
      }
    }

    Compatible with:

    • Zed Editor
    • OpenHands
    • Roo-Cline
    • Any MCP-enabled application

    🛠️ Available Tools

    The ClearML MCP server provides 14 comprehensive tools for ML experiment analysis:

    📊 Task Operations

    • get_task_info - Get detailed task information, parameters, and status
    • list_tasks - List tasks with advanced filtering (project, status, tags, user)
    • get_task_parameters - Retrieve hyperparameters and configuration
    • get_task_metrics - Access training metrics, scalars, and plots
    • get_task_artifacts - Get artifacts, model files, and outputs

    🤖 Model Operations

    • get_model_info - Get model metadata and configuration details
    • list_models - Browse available models with filtering
    • get_model_artifacts - Access model files and download URLs

    📁 Project Operations

    • list_projects - Discover available ClearML projects
    • get_project_stats - Get project statistics and task summaries
    • find_project_by_pattern - Find projects matching name patterns
    • find_experiment_in_project - Find specific experiments within projects

    🔍 Analysis Tools

    • compare_tasks - Compare multiple tasks by specific metrics
    • search_tasks - Advanced search by name, tags, comments, and more

    💡 Usage Examples

    Demo

    asciicast

    Once configured, you can ask your AI assistant questions like:

    • *"Show me the latest experiments in the 'computer-vision' project"*
    • *"Compare the accuracy metrics between tasks task-123 and task-456"*
    • *"What are the hyperparameters for the best performing model?"*
    • *"Find all failed experiments from last week"*
    • *"Get the training curves for my latest BERT fine-tuning"*

    🏗️ Development

    Setup

    bash
    # Clone and setup with UV
    git clone https://github.com/prassanna-ravishankar/clearml-mcp.git
    cd clearml-mcp
    uv sync
    
    # Run locally
    uv run python -m clearml_mcp.clearml_mcp

    Available Commands

    bash
    # Run tests with coverage
    uv run task coverage
    
    # Lint and format
    uv run task lint
    uv run task format
    
    # Type checking
    uv run task type
    
    # Run examples
    uv run task consolidated-debug  # Full ML debugging demo
    uv run task example-simple      # Basic integration
    uv run task find-experiments    # Discover real experiments

    Testing with MCP Inspector

    bash
    # Test the MCP server directly
    npx @modelcontextprotocol/inspector uvx clearml-mcp

    🚨 Troubleshooting

    Connection Issues

    "No ClearML projects accessible"

    • Verify your ~/.clearml/clearml.conf credentials
    • Test with: python -c "from clearml import Task; print(Task.get_projects())"
    • Check network access to your ClearML server

    Module not found errors

    • Try bunx clearml-mcp instead of uvx clearml-mcp
    • Or use direct Python: python -m clearml_mcp.clearml_mcp

    Performance Issues

    Large dataset queries

    • Use filters in list_tasks to limit results
    • Specify project_name to narrow scope
    • Use task_status filters (completed, running, failed)

    Slow metric retrieval

    • Request specific metrics instead of all metrics
    • Use compare_tasks with metric names for focused analysis

    🤝 Contributing

    Contributions welcome! This project uses:

    • UV for dependency management
    • Ruff for linting and formatting
    • Pytest for testing with 69% coverage
    • GitHub Actions for CI/CD

    See our testing philosophy and linting approach for development guidelines.

    📄 License

    MIT License - see LICENSE for details.

    🔗 Links

    • PyPI: clearml-mcp
    • ClearML: clear.ml
    • Model Context Protocol: MCP Specification

    ---

    **Created by Prass, The Nomadic Coder**

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