Skip to content

Source code for the post Effortless deployments with MLFlow, showcasing how logging models using MLFLow can provide you want to easily deploy them in production later.

Notifications You must be signed in to change notification settings

santiagxf/mlflow-deployments

Repository files navigation

Effortless deployment with MLFlow

This repository contains several examples about how to create and train models with MLFlow to then seemlessly deploy them using built-on tools, both locally on your computer, on a custom target like Kubernetes or in a cloud provider like Azure Machine Learning.

For a detailed explanation about this samples see the posts of the series:

The following samples are available:

Contributing

More than welcome! Open an issue to go over it!

About

Source code for the post Effortless deployments with MLFlow, showcasing how logging models using MLFLow can provide you want to easily deploy them in production later.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published