Type of course:
Digital learning, Lesson
Language:
EN
Duration:
5 minutes
Proficiency:
Beginner
Target:
Professionals
SUMMARY
Throughout this lesson, you will learn about two common problems in model fitting: overfitting and underfitting. This lesson will guide you on how to identify these issues and apply strategies to avoid them. Learning to identify and avoid overfitting and underfitting is crucial for building accurate, reliable, and well-generalized machine learning models.
In this lesson, we’ll explore:
- The consequences of overfitting and underfitting
- How to identify them
- How to avoid them

About The Author
Thi Hong Nhung Dang (Nhung) is an engineer in AI at the Grenoble Institute of Technology (Grenoble INP), France. She approaches manufacturing challenges by not only leveraging data but also considering human factors, economic perspectives, and the broader context to deliver well-rounded machine learning solutions.
Learning outcomes
- By the end of this lesson, learners will be able to identify overfitting in machine learning models.
- By the end of this lesson, learners will be able to identify underfitting in machine learning models.
- By the end of this lesson, learners will be able to explain the consequences of overfitting and underfitting, as well as apply techniques to avoid them in machine learning models.
Course Content
Topics
Uncategorized
