EE 595 Applied Machine Learning

An introduction course for machine learning theory, algorithms and applications. This course aims to provide students with the knowledge in understanding key elements of how to design algorithms/systems that automatically learn, improve and accumulate knowledge with experience. Topics covered in this course include decision tree learning, neural networks, Bayesian learning, reinforcement learning, ensembling multiple learning algorithms, and various application problems. The students will have chances to simulate their algorithms in a programming language and apply them to solve real-world problems.

Credits

3

Cross Listed Courses

CPE 595, AAI 595

Distribution

Computer Engineering Program Electrical Engineering Program Information and Data Engineering Program

Typically Offered Periods

Spring Semester