Skip to content

1995parham-learning/drift-in-ml

Repository files navigation

Drift in Machine Learning

Drifting

Introduction

Let's delve into machine learning drift, including target drift, data drift, and concept drift, to gain a deeper understanding of how these variations can impact model performance. Following that, we can explore potential solutions to implement drift detection in a production-grade project.

Welcome to Slidev!

To start the slide show:

Edit the slides.md to see the changes.

Learn more about Slidev on documentations.

References