Lecture |
|
|
|
|
|
|
|
Intro Machine Learning C |
Enrollment Information (not real time - data refreshed nightly)
|
|
|
|
|
Class #:
|
21671 | |
Enrollment Capacity:
|
203 |
Section:
|
C |
|
Enrollment Total:
|
192 |
Credits:
|
3.00 credits
|
|
Seats Available:
|
11 |
Dates:
|
01/30/2023 - 05/12/2023 |
|
Status:
|
OPEN WITH RESERVES |
Days, Time:
|
T R , 11:00 AM - 12:20 PM |
Room: |
Nsc 201 |
view map |
Location: |
North Campus |
|
|
|
 |
 |
Reserve Capacities |
 |
 |
Description |
Enrollment Capacity |
Enrollment Total |
|
Eng Sci MS Data Sci Seats Rsvr |
172 |
170 |
|
EE MS and EAS IoT Seats Rsvr |
10 |
10 |
|
Eng Sci MS: AI Seats Reserved |
20 |
6 |
|
 |
 |
Course Description |
 |
 |
Involves teaching computer programs to improve their performance through guided training and unguided experience. Takes both symbolic and numerical approaches. Topics include concept learning, decision trees, neural nets, latent variable models, probabilistic inference, time series models, Bayesian learning, sampling methods, computational learning theory, support vector machines, and reinforcement learning. |
 |
 |
Instructor(s) |
 |
 |
|
Vereshchaka |
look up |
|
|
 |
 |
On-line Resources |
 |
 |
|
 |
 |
Other Courses Taught By: Vereshchaka |
 |
 |
|