CML MCP Server
An MCP server for interacting with Cloudera Machine Learning (CML).
CML MCP Server
A standalone MCP (Model Context Protocol) server for interacting with Cloudera Machine Learning (CML).
Requirements
- Python 3.8+
- Required Python packages:
- mcp[cli]>=1.2.0
- requests>=2.31.0
Installation
- Install the required packages:
pip install mcp[cli] requests
Or with uv:
uv pip install mcp[cli] requests
- Set up environment variables (optional):
# Traditional environment variables
export CML_API_TOKEN="your_api_token_here"
export CML_BASE_URL="https://your-cml-instance.cloudera.com"
# MCP configuration environment variables (preferred)
export CLOUDERA_ML_API_KEY="your_api_token_here"
export CLOUDERA_ML_HOST="https://your-cml-instance.cloudera.com"
# Certificate path (optional)
export CML_CERT_FILE="/path/to/your/certificate.pem"
- Download the SSL certificate from your CML server (if using a self-signed certificate):
python download_certificate.py
This will download the certificate from the CML server specified in the CLOUDERA_ML_HOST or CML_BASE_URL environment variable and save it to cml_ca.pem.
Usage
You can run the server using any of these commands:
# Using standard Python
python3 cml_mcp_server.py
# Using uv
uv run cml_mcp_server.py
# Using uvx
uvx cml_mcp_server.py
For help and configuration information:
python3 cml_mcp_server.py --help
You can also specify custom parameters:
python3 cml_mcp_server.py --token "your_api_token" --url "https://your-cml-instance.cloudera.com" --cert "/path/to/your/certificate.pem"
Direct Usage
You can also use the direct script to list projects without using the MCP server:
python direct_list_projects.py
Integration with Claude for Desktop
To use this server with Claude for Desktop:
- Create a
claude_desktop_config.jsonfile in your Claude for Desktop configuration directory - Add the following configuration (update the path to match your server location):
{
"mcpServers": {
"cml": {
"command": "uv",
"args": ["run", "/full/path/to/cml_mcp_server.py"],
"env": {
"CLOUDERA_ML_HOST": "https://your-cml-instance.cloudera.com",
"CLOUDERA_ML_API_KEY": "your-api-key-here"
}
}
}
}
Alternatively, you can use the uv Python package manager to run the server (recommended):
{
"mcpServers": {
"cml": {
"command": "python3",
"args": ["/full/path/to/cml_mcp_server.py"],
"env": {
"CLOUDERA_ML_HOST": "https://your-cml-instance.cloudera.com",
"CLOUDERA_ML_API_KEY": "your-api-key-here"
}
}
}
}
The uv method provides better dependency isolation and faster startup times compared to standard Python execution.
Available Tools
The server provides the following MCP tools for interacting with CML:
Project Management
list_projects: List all CML projects the user has access tocreate_project: Create a new CML projectget_project: Get details of a specific CML project
File Operations
list_files: List files in a CML project at the specified pathread_file: Read the contents of a file from a CML projectupload_file: Upload a file to a CML projectrename_file: Rename a file in a CML projectpatch_file: Update file metadata (rename, move, or change attributes)
Job Management
list_jobs: List all jobs in a CML projectcreate_job: Create a new job in a CML projectcreate_job_from_file: Create a job from an existing file in a CML projectrun_job: Run a job in a CML projectlist_job_runs: List all runs for a job in a CML projectstop_job_run: Stop a running job in a CML projectschedule_job: Schedule a job to run periodically using a cron expression
Runtime Management
list_runtime_addons: List all available runtime addons (e.g., Spark3, GPU)download_ssl_cert: Download the SSL certificate from the CML server
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