# mlflow **Repository Path**: null_131_7267/mlflow ## Basic Information - **Project Name**: mlflow - **Description**: Open source platform for the complete machine learning lifecycle - **Primary Language**: Python - **License**: Apache-2.0 - **Default Branch**: master - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 0 - **Created**: 2021-07-29 - **Last Updated**: 2021-07-29 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README ==================== MLflow Alpha Release ==================== **Note:** The current version of MLflow is an alpha release. This means that APIs and data formats are subject to change! **Note 2:** We do not currently support running MLflow on Windows. Despite this, we would appreciate any contributions to make MLflow work better on Windows. Installing ---------- Install MLflow from PyPi via ``pip install mlflow`` MLflow requires ``conda`` to be on the ``PATH`` for the projects feature. Documentation ------------- Official documentation for MLflow can be found at https://mlflow.org/docs/latest/index.html. Community --------- To discuss MLflow or get help, please subscribe to our mailing list (mlflow-users@googlegroups.com) or join us on Slack at https://tinyurl.com/mlflow-slack. To report bugs, please use GitHub issues. Running a Sample App With the Tracking API ------------------------------------------ The programs in ``example`` use the MLflow Tracking API. For instance, run:: python example/quickstart/test.py This program will use `MLflow Tracking API `_, which logs tracking data in ``./mlruns``. This can then be viewed with the Tracking UI. Launching the Tracking UI ------------------------- The MLflow Tracking UI will show runs logged in ``./mlruns`` at ``_. Start it with:: mlflow ui Running a Project from a URI ---------------------------- The ``mlflow run`` command lets you run a project packaged with a MLproject file from a local path or a Git URI:: mlflow run example/tutorial -P alpha=0.4 mlflow run git@github.com:databricks/mlflow-example.git -P alpha=0.4 See ``example/tutorial`` for a sample project with an MLproject file. Saving and Serving Models ------------------------- To illustrate managing models, the ``mlflow.sklearn`` package can log scikit-learn models as MLflow artifacts and then load them again for serving. There is an example training application in ``example/quickstart/test_sklearn.py`` that you can run as follows:: $ python example/quickstart/test_sklearn.py Score: 0.666 Model saved in run $ mlflow sklearn serve -r model $ curl -d '[{"x": 1}, {"x": -1}]' -H 'Content-Type: application/json' -X POST localhost:5000/invocations Contributing ------------ We happily welcome contributions to MLflow. Please see our `contribution guide `_ for details.