MLflow MCP Server

MLflow MCP Server

A Model Context Protocol server that enables LLMs to interact with MLflow tracking servers, allowing users to query experiments, analyze runs, compare metrics, manage the model registry, and promote models through natural language.

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MLflow MCP Server

A Model Context Protocol (MCP) server that enables LLMs to interact with MLflow tracking servers. Query experiments, analyze runs, compare metrics, manage the model registry, and promote models to production — all through natural language.

Features

  • Experiment Management: List, search, and filter experiments
  • Run Analysis: Query runs, compare metrics, find best performing models
  • Metrics & Parameters: Get metric histories, compare parameters across runs
  • Artifacts: Browse and download run artifacts
  • LoggedModel Support: Search and retrieve MLflow 3 LoggedModel entities
  • Model Registry: Full registry management — register, tag, alias, stage, and promote models
  • Write & Delete Actions: Tag, alias, register, promote, and delete runs/experiments/models
  • MCP Prompts: Built-in guided workflows for common tasks
  • Pagination: Offset-based pagination for browsing large result sets

Installation

Using uvx (Recommended)

# Run directly without installation
uvx mlflow-mcp

# Or install globally
pip install mlflow-mcp

From Source

git clone https://github.com/kkruglik/mlflow-mcp.git
cd mlflow-mcp
uv sync
uv run mlflow-mcp

Configuration

Claude Desktop

Add to your Claude Desktop config file:

  • macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
  • Windows: %APPDATA%\Claude\claude_desktop_config.json
  • Linux: ~/.config/claude/claude_desktop_config.json
{
  "mcpServers": {
    "mlflow": {
      "command": "uvx",
      "args": ["mlflow-mcp"],
      "env": {
        "MLFLOW_TRACKING_URI": "http://localhost:5000"
      }
    }
  }
}

Claude Code (project-scoped)

Add .mcp.json to your project root:

{
  "mcpServers": {
    "mlflow": {
      "command": "uvx",
      "args": ["mlflow-mcp"],
      "env": {
        "MLFLOW_TRACKING_URI": "http://localhost:5000"
      }
    }
  }
}

Authenticated Server

For MLflow servers with authentication, add credentials to the env block:

{
  "mcpServers": {
    "mlflow": {
      "command": "uvx",
      "args": ["mlflow-mcp"],
      "env": {
        "MLFLOW_TRACKING_URI": "https://mlflow.company.com",
        "MLFLOW_TRACKING_USERNAME": "your-username",
        "MLFLOW_TRACKING_PASSWORD": "your-password"
      }
    }
  }
}

For Databricks or token-based auth, use MLFLOW_TRACKING_TOKEN instead:

{
  "mcpServers": {
    "mlflow": {
      "command": "uvx",
      "args": ["mlflow-mcp"],
      "env": {
        "MLFLOW_TRACKING_URI": "https://mlflow.company.com",
        "MLFLOW_TRACKING_TOKEN": "your-token"
      }
    }
  }
}

Environment Variables

Variable Required Description
MLFLOW_TRACKING_URI Yes MLflow tracking server URL, e.g. http://127.0.0.1:5000
MLFLOW_TRACKING_USERNAME No HTTP Basic Auth username (MLflow built-in auth)
MLFLOW_TRACKING_PASSWORD No HTTP Basic Auth password (MLflow built-in auth)
MLFLOW_TRACKING_TOKEN No Bearer token (Databricks or token-based setups)

Tools

Experiments

Tool Description
get_experiments() List all experiments
search_experiments(filter_string, order_by, max_results) Filter and sort experiments
get_experiment_by_name(name) Get experiment by name
get_experiment_metrics(experiment_id) Discover all unique metric keys
get_experiment_params(experiment_id) Discover all unique parameter keys
get_experiment_tags(experiment_id) Discover all unique tag keys used across runs
set_experiment_tag(experiment_id, key, value) Tag an experiment
delete_experiment(experiment_id) Delete an experiment (moves to deleted stage)

Runs

Tool Description
get_runs(experiment_id, limit, offset, order_by) List runs with full details, sorting and pagination
get_run(run_id) Get detailed run information including metrics, params, tags, artifact URI, and dataset inputs
get_parent_run(run_id) Get parent run for nested runs
query_runs(experiment_id, query, limit, offset, order_by) Filter runs, e.g. "metrics.accuracy > 0.9"
search_runs_by_tags(experiment_id, tags, limit, offset) Find runs by tag key/value
set_run_tag(run_id, key, value) Tag a run
delete_run(run_id) Delete a run (moves to deleted stage)

Metrics & Parameters

Tool Description
get_run_metrics(run_id) Get all metrics for a run
get_run_metric(run_id, metric_name) Get full metric history with steps

Artifacts

Tool Description
get_run_artifacts(run_id, path) List artifacts, supports browsing subdirectories
get_run_artifact(run_id, artifact_path) Download an artifact file
get_artifact_content(run_id, artifact_path) Read artifact content as text/JSON

Analysis & Comparison

Tool Description
get_best_run(experiment_id, metric, ascending) Find best run by metric
compare_runs(experiment_id, run_ids) Side-by-side run comparison

Logged Models (MLflow 3)

Tool Description
search_logged_models(experiment_ids, filter_string, order_by, max_results) Search logged models by metrics/params/tags
get_logged_model(model_id) Get full details of a logged model

Model Registry

Tool Description
get_registered_models() List all registered models
get_registered_model(name) Full model details including versions and aliases
get_model_versions(model_name) Get all versions of a model
get_model_version(model_name, version) Get version details with metrics
get_model_version_by_alias(name, alias) Get version by alias, e.g. "champion"
get_latest_versions(name, stages) Get latest versions per stage
register_model(model_name, model_uri, tags) Register a model into the registry
update_model_version(name, version, description) Update version description
set_registered_model_tag(name, key, value) Tag a registered model
set_model_alias(name, alias, version) Assign an alias to a model version
delete_model_alias(name, alias) Remove an alias from a model
copy_model_version(src_model_name, src_version, dst_model_name) Promote version to another registered model
transition_model_version_stage(name, version, stage) Transition to Staging/Production/Archived (deprecated since MLflow 2.9, use aliases instead)
delete_model_version(name, version) Delete a model version
delete_registered_model(name) Delete a registered model and all its versions

Health

Tool Description
health() Check server connectivity

Prompts

Built-in guided workflows available as slash commands in Claude:

Prompt Description
compare_runs_by_ids Compare specific runs side-by-side
find_best_run Find and analyze the best run in an experiment by metric
promote_best_model End-to-end: find best model → register → tag → alias → promote
audit_mlflow_setup Audit the MLflow setup against industry best practices — scores 7 categories 1–10 and produces a prioritized improvement roadmap

Usage Examples

Explore experiments and runs

"Show me all experiments. Which ones were updated recently?"

"What metrics and parameters are tracked in experiment 'fraud-detection'?"

"Get the top 10 runs in 'fraud-detection' sorted by test/f1. Show me the params that differ most between the top 3."

"Find all runs tagged with model_type=lightgbm and compare their recall scores."

Analyze a training run

"Show me the full details of run abc123 — metrics, params, and artifacts."

"Plot the training loss curve for run abc123." (Claude fetches metric history and renders a chart)

"This run has a parent — show me the parent run and compare their metrics."

Find and register the best model

"Find the best logged model in experiment 'fraud-detection' by test/recall. Register it as 'fraud-classifier' with a selection_metric tag."

"Which logged model in experiments 1 and 2 has the highest F1 score on the validation set?"

"Register the model from run abc123 artifact path 'model/' as 'my-classifier'."

Manage the model registry

"Show me all versions of 'fraud-classifier' with their aliases and stages."

"Set the champion alias on version 3 of fraud-classifier."

"Update the description of fraud-classifier v3 to explain what dataset it was trained on."

"Copy fraud-classifier v3 to a separate 'fraud-classifier-prod' model as the production entry."

Audit your MLflow setup

"Audit my MLflow setup"

(Triggers the audit_mlflow_setup built-in prompt — Claude explores experiments, runs, artifacts, and the model registry, then scores each area against Google/Databricks best practices)

<details> <summary>Example output</summary>

| Category             | Score  | Top Issue                                      |
|----------------------|--------|------------------------------------------------|
| Experiment Org       |  5/10  | Flat namespace, no dot-notation hierarchy      |
| Parameter Logging    |  7/10  | No parent-child nesting for tuning sweeps      |
| Metric Logging       |  6/10  | Only final values logged, no training curves   |
| Tagging Strategy     |  5/10  | Params duplicated as tags; stale test_tag      |
| Artifact Management  |  2/10  | No log_model(); artifacts on local disk        |
| Model Registry       |  3/10  | Duplicate prod models instead of aliases       |
| Reproducibility      |  3/10  | No git SHA; no mlflow.log_input() datasets     |
| Mean Score           |  4.4/10|                                                |

Top 3 improvements:
1. Call log_model() and move artifact store to S3/GCS
2. Add git SHA tag + mlflow.log_input() for dataset tracking
3. Consolidate registry to one model entry with @champion alias

</details>

End-to-end promotion workflow

"Find the best model in 'fraud-detection' by test/recall, register it as 'fraud-classifier', tag it with the framework and problem type, and set it as champion. Ask me before copying to prod."

(This maps directly to the promote_best_model built-in prompt)

Debugging

Use MCP Inspector to browse tools, call them with custom inputs, and inspect raw responses — without involving an LLM.

Published package:

npx @modelcontextprotocol/inspector uvx mlflow-mcp

Local source:

npx @modelcontextprotocol/inspector uv run --project /path/to/mlflow-mcp mlflow-mcp

Set MLFLOW_TRACKING_URI in the Inspector's environment panel, or pass it inline:

MLFLOW_TRACKING_URI=http://127.0.0.1:5000 npx @modelcontextprotocol/inspector uvx mlflow-mcp

Requirements

  • Python >=3.10
  • MLflow >=3.4.0
  • Access to an MLflow tracking server

License

MIT License - see LICENSE file for details.

Contributing

Contributions welcome! Please open an issue or submit a pull request.

Links

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