Advancing Spark - Getting Started with MLFlow Pipelines
One of the big announcements coming from the Data + AI Summit was MLFlow pipelines, a new framework for building reliable, repeatable machine learning workflows. But what does that actually mean? How do you get started? Where does it fit into the existing ecosystem? In this video, Simon is once again joined by principal data scientist Gavi to get the low down on the available MLFlow Pipeline template, walk through some example uses and see what it actually looks like! The templates used can be found on the MLFlow site over at: https://www.mlflow.org/docs/latest/pi... And as always, if you need any help on your Lakehouse journey, give Advancing Analytics a call

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