Machine Learning Fundamentals
This course provides a brief introduction to the theory and practice of supervised machine learning, the discipline of teaching computers to make predictions...
By Peter Chin on Coursera
About This Course
This course provides a brief introduction to the theory and practice of supervised machine learning, the discipline of teaching computers to make predictions from labeled data. We begin with a well-known model of linear regression, moving from fundamental principles to the advanced regularization techniques essential for building robust models. We then transition from regression to classification, exploring two major paradigms for separating data: discriminative models and generative models. The course concludes in learning how to critically evaluate and compare classifier performance using industry-standard tools such as the ROC Curve. Upon completion, you will have a strong command of the core principles that underpin modern predictive modeling.
Topics Covered
Frequently Asked Questions
How much does Machine Learning Fundamentals cost?
Visit the Machine Learning Fundamentals course page for current pricing and available discounts.
Who teaches Machine Learning Fundamentals?
Machine Learning Fundamentals is taught by Peter Chin, Dartmouth College.
What skill level is Machine Learning Fundamentals for?
This course is designed for beginner learners.
Similar Courses
HTML & CSS Coding for Beginners: Build your own portfolio!
Chris Dixon
Maya for Beginners: Animation
Lucas Ridley
JavaScript for Beginners (includes 6+ real life projects)
Kalob Taulien
Beginner Bootstrap 4: Hand code beautiful responsive websites fast
Chris Dixon