
mcp-ml-lab
MCP server by github.com/rohithraju-ops/mcp-ml-lab
Run end-to-end ML experiments from natural language (XGBoost, LightGBM, Optuna).
About mcp-ml-lab
mcp-ml-lab is an MCP (Model Context Protocol) server published by rohithraju-ops in the official MCP registry, listed under AI & ML on Loomal. Run end-to-end ML experiments from natural language (XGBoost, LightGBM, Optuna).
It ships as a Python package on PyPI (mcp-ml-lab), so any MCP client that can launch a local process can run it.
Development happens in the open at github.com/rohithraju-ops/mcp-ml-lab.
Use mcp-ml-lab with your agent
claude mcp add mcp-ml-lab -- uvx mcp-ml-lab{
"mcpServers": {
"mcp-ml-lab": {
"command": "uvx",
"args": [
"mcp-ml-lab"
]
}
}
}mcp-ml-labFrequently asked questions
- What is mcp-ml-lab?
- mcp-ml-lab is an MCP (Model Context Protocol) server by rohithraju-ops in the AI & ML category. Run end-to-end ML experiments from natural language (XGBoost, LightGBM, Optuna).
- How do I connect mcp-ml-lab to Claude, Cursor, or another MCP client?
- Install mcp-ml-lab from its pypi package (mcp-ml-lab) and register it under "mcpServers" in your client's MCP configuration — for example claude_desktop_config.json or Cursor's mcp.json — then restart the client.
- Is mcp-ml-lab open source?
- Yes — the source code is public at github.com/rohithraju-ops/mcp-ml-lab.
- Can AI agents pay to use mcp-ml-lab?
- Not yet through Loomal — mcp-ml-lab is listed as a free directory entry. If its maintainer verifies ownership, they can set per-call USDC pricing that agents pay over x402, with settlement on Base.
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Listing data from the official MCP registry and GitHub, refreshed periodically. Not affiliated with the maintainer unless claimed. Maintain mcp-ml-lab? Claim this listing free by verifying GitHub ownership, or contact us.