Part 4 of our series on Fabric, this time looking at experiments, a tool that allows for iterative development of Machine Learning Systems in an experimental way.
In part 2 of this series we dive deeper into the process of feature engineering, a crucial part of the development lifecycle for any Machine Learning (ML) systems.
In this series of posts titled Fabric Madness, we’re going to be diving deep into some of the most interesting features of Microsoft Fabric, for an end-to-end demonstration of how to train and use a machine learning model.