CS 2075 INTRODUCTION TO MACHINE LEARNING

This introductory machine learning course will give an overview of many models and algorithms used in modern machine learning, including linear models, multi-layer neural networks, support vector machines, density estimation methods, Bayesian belief networks, clustering, ensemble methods, and reinforcement learning. The course will give the student the basic ideas and intuition behind these methods, as well as a more formal understanding of how and why they work. Through homework assignments, students will have an opportunity to experiment with many machine learning techniques and apply them to various real-world datasets.

Course Requirements: Instructor consent.
Minimum Credits: 3
Maximum Credits: 3

Current Sections

Spring 2024

Class No.DaysTimesRoomInstructor(s)TA(s)Type
30792 (1200)MW11:00am-12:15pmSENSQ 5129Patrick Skeba
LEC
30793 (1200)F11:00am-11:50amIS 404Harsh Sinha
REC