Spring 2024
INDENG 290 004 - LEC 004
Special Topics in Industrial Engineering and Operation Research
Stochastic Optimization for Machine Learning
Ying Cui
Class #:29074
Units: 3
Instruction Mode:
In-Person Instruction
Offered through
Industrial Engineering and Operations Research
Current Enrollment
Total Open Seats:
17
Enrolled: 28
Waitlisted: 0
Capacity: 45
Waitlist Max: 10
Open Reserved Seats:
26 reserved for Industrial Engineering and Operations Research: Master of Science or PhD Students
Hours & Workload
2 to 3 hours of instructor presentation of course materials per week, and 4 to 6 hours of outside work hours per week.
Final Exam
TUE, MAY 7TH
07:00 pm - 10:00 pm
Etcheverry 3106
Other classes by Ying Cui
Course Catalog Description
Lectures and appropriate assignments on fundamental or applied topics of current interest in industrial engineering and operations research.
Class Description
Course Description
The purpose of this course is to provide graduate students with the fundamental understanding of the
basic theory, models and algorithms for stochastic optimization, and with illustrations of how the theory
and methods can be applied to many problems in contemporary machine learning and related disciplines.
In the process, students will also learn about optimization under uncertainty and related analytical tools.
Mathematical rigor is emphasized throughout the course. Students are expected to be interested in such
rigor and willing to learn and practice it.
Prerequisites
Students should have completed a foundational course in optimization such as IEOR 240/262A or its equiv-
alent. While not mandatory, students are strongly encouraged to concurrently enroll in IEOR 262B if they
have not already completed it.
Rules & Requirements
Repeat Rules
Reserved Seats
Current Enrollment
Open Reserved Seats:
26 reserved for Industrial Engineering and Operations Research: Master of Science or PhD Students
Textbooks & Materials
See class syllabus or https://calstudentstore.berkeley.edu/textbooks for the most current information.
Guide to Open, Free, & Affordable Course Materials
Associated Sections
None