MLflow is an open source platform for managing the end-to-end machine learning lifecycle. It tackles three primary functions:
- Tracking experiments to record and compare parameters and results (MLflow Tracking).
- Packaging ML code in a reusable, reproducible form in order to share with other data scientists or transfer to production (MLflow Projects).
- Managing and deploying models from a variety of ML libraries to a variety of model serving and inference platforms (MLflow Models).
MLflow is library-agnostic. You can use it with any machine learning library, and in any programming language, since all functions are accessible through a REST API and CLI. For convenience, the project also includes a Python API, R API, and Java API.
Get started using the Quickstart or by reading about the key concepts.
The current version of MLflow is a beta release. This means that APIs and storage formats are subject to breaking change.