Skip to content

Advanced Machine Learning

About This Course

In this course, we'll cover advanced methods in machine learning. While linear models remain popular in industry, modern machine learning methods take advantage of increasingly complex algorithms to provide improved performance. You’ll discover advanced applications that require specialized algorithms to model them, and learn where basic techniques would result in suboptimal solutions. We’ll also explore more techniques used to improve model performance.

What You’ll Learn

  • Trees, bootstrap aggregation, random forests, gradient boosting and support vector machines for classification and regression
  • Ensemble methods and gradient boosting
  • How to identify frequent item sets and association rules
  • Clustering data using k-means and hierarchical clustering
  • Natural language processing, recommendation systems and reinforcement learning

Course Sessions

Online Synchronous

January 2027
Dates Jan 12 - Mar 16
Location Online
Instructor Mohamed Mneimneh
Cost $1,782
Scheduled Meetings
Date
Day
Time
Location
Jan 12, 2027
Tue
6 – 9 p.m.
Online
Jan 19, 2027
Tue
6 – 9 p.m.
Online
Jan 26, 2027
Tue
6 – 9 p.m.
Online
Feb 2, 2027
Tue
6 – 9 p.m.
Online
Feb 9, 2027
Tue
6 – 9 p.m.
Online
Feb 16, 2027
Tue
6 – 9 p.m.
Online
Feb 23, 2027
Tue
6 – 9 p.m.
Online
Mar 2, 2027
Tue
6 – 9 p.m.
Online
Mar 9, 2027
Tue
6 – 9 p.m.
Online
Mar 16, 2027
Tue
6 – 9 p.m.
Online

All times are Pacific Time.

Noncredit Course

You'll earn 3.0 continuing education units (CEUs) for successfully completing this course.