Introduction to Machine Learning
COS 324
1252
1252
Info tab content
This course is a broad introduction to different machine learning paradigms and algorithms and provides a foundation for further study or independent work in machine learning and data science. Topics include linear models for classification and regression, support vector machines, clustering, dimensionality reduction, deep neural networks, Markov decision processes, planning, and reinforcement learning. The goals of this course are three-fold: to understand the landscape of machine learning, how to compute the math behind techniques, and how to use Python and relevant libraries to implement and use various methods.
Instructors tab content
Sections tab content
Section L01
- Type: Lecture
- Section: L01
- Status: O
- Enrollment: 119
- Capacity: 180
- Class Number: 21718
- Schedule: MW 01:30 PM-02:50 PM - Friend Center 101
Section P01
- Type: Precept
- Section: P01
- Status: O
- Enrollment: 29
- Capacity: 35
- Class Number: 21719
- Schedule: Th 10:00 AM-10:50 AM - Friend Center 004
Section P02
- Type: Precept
- Section: P02
- Status: O
- Enrollment: 32
- Capacity: 35
- Class Number: 21720
- Schedule: Th 11:00 AM-11:50 AM - Friend Center 004
Section P03
- Type: Precept
- Section: P03
- Status: O
- Enrollment: 18
- Capacity: 30
- Class Number: 21723
- Schedule: Th 01:30 PM-02:20 PM - Computer Science Building 302
Section P04
- Type: Precept
- Section: P04
- Status: C
- Enrollment: 0
- Capacity: 0
- Class Number: 21721
- Schedule: Th 02:30 PM-03:20 PM
Section P05
- Type: Precept
- Section: P05
- Status: O
- Enrollment: 12
- Capacity: 30
- Class Number: 21722
- Schedule: Th 03:00 PM-04:20 PM - Friend Center 112
Section P06
- Type: Precept
- Section: P06
- Status: O
- Enrollment: 28
- Capacity: 30
- Class Number: 22244
- Schedule: Th 03:30 PM-04:20 PM - Computer Science Building 105
Section P07
- Type: Precept
- Section: P07
- Status: C
- Enrollment: 0
- Capacity: 0
- Class Number: 21724
- Schedule: Th 07:30 PM-08:20 PM