Prerequisites: EK381 or equivalent; EK102 or equivalent; MA225 or equivalent; EK125 or equivalent.
This is an introductory graduate course in (classical) machine learning covering the basic principles and methods of four major non-sequential supervised and unsupervised learning problems namely, classification, regression, clustering, and dimensionality reduction. A variety of contemporary applications will be explored through homeworks and a project.
FALL 2025 Schedule
| Section |
Instructor |
Location |
Schedule |
Notes |
| A1 |
Saligrama |
EPC 204 |
TR 1:30 pm-3:15 pm |
|
FALL 2025 Schedule
| Section |
Instructor |
Location |
Schedule |
Notes |
| B1 |
Saligrama |
PHO 205 |
M 6:30 pm-8:15 pm |
Waitlist Link: Here |
FALL 2025 Schedule
| Section |
Instructor |
Location |
Schedule |
Notes |
| B2 |
Saligrama |
|
ARR 12:00 am-12:00 am |
|
SPRG 2026 Schedule
| Section |
Instructor |
Location |
Schedule |
Notes |
| A1 |
Ishwar |
CDS 262 |
TR 1:30 pm-3:15 pm |
|
SPRG 2026 Schedule
| Section |
Instructor |
Location |
Schedule |
Notes |
| B1 |
Ishwar |
FLR 152 |
W 6:30 pm-8:15 pm |
|
Note that this information may change at any time. Please visit the MyBU Student Portal for the most up-to-date course information.