Spring 2025 Industrial Engineering and Operations Research E4579 section 001

TOPICS IN OR

MACHINE LEARNING IN PRACT

Call Number 14636
Day & Time
Location
T 6:00pm-8:30pm
To be announced
Points 3
Grading Mode Standard
Approvals Required None
Instructor Gary Kazantsev
Type LECTURE
Method of Instruction In-Person
Course Description

In this course, you'll leverage student engagement data to create a photo and text recommendation app similar to Instagram/Twitter. This app will utilize AI-generated photos and text and require you to recommend a feed from over 500,000 pieces of AI generated content. We'll explore various techniques to achieve this, including, but not limited to: Candidate Generation (Collaborative filtering, Trending, Cold start, N-tower neural network models, Cross-attention teachers, Distillation, Transfer learning, Random graph walking, Reverse indexes, LLMs as embedding), Filtering (Small online models, Caching, Deduplication, Policy), Prediction/Bidding (User logged activity based prediction (time-series), Multi-gate mixture of experts (MMOE), Regularization, Offline/Online evaluation (NDCG, p@k, r@k), Boosted Trees, Value Based Bidding), Ranking (Re-ranking, Ordering, Diversity, Enrich/Metadata/Personalization, Value Functions), Misc (Data Privacy and AI Ethics, Creator Based Models, Declared, Explicit and implicit topics, Explore/Exploit, Interpret/Understand/Context/Intention).
These concepts are applicable to various recommendation systems, from e-commerce to travel to social media to financial modeling. The instructor's experience at Uber Eats, Facebook, Instagram, and Google will provide valuable insights into real-world use cases.

Web Site Vergil
Department Industrial Engineering and Operations Research
Enrollment 37 students (70 max) as of 6:06PM Thursday, January 2, 2025
Subject Industrial Engineering and Operations Research
Number E4579
Section 001
Division School of Engineering and Applied Science: Graduate
Open To Engineering:Graduate
Section key 20251IEOR4579E001