Spring 2026 Industrial Engineering and Operations Research E4523 section 001

Data Analytics and Machine Learning

DATA ANALYTICS

Call Number 13286
Day & Time
Location
TR 4:10pm-5:25pm
To be announced
Points 3
Grading Mode Standard
Approvals Required None
Instructor Uday Menon
Type LECTURE
Method of Instruction In-Person
Course Description

IEOR students only; priority to MSBA students. Practical survey of Python tools for acquiring, cleaning, and analyzing data. Techniques for obtaining data from files, web scraping, and APIs (CSV, HTML, JSON, XML); performing core data-cleaning tasks; and using data analysis, machine learning, and visualization  libraries (NumPy, Pandas, Matplotlib, Seaborn, TensorFlow/Keras). Introduces foundational machine learning and deep learning concepts, including backpropagation, gradient descent, and implementation of neural networks with TensorFlow/Keras. Covers text mining using word, sentence, and document embeddings. Includes a group project requiring students to collect, store, and analyze a dataset of their choice and build a predictive model.  

 

Web Site Vergil
Department Industrial Engineering and Operations Research
Enrollment 1 student (100 max) as of 9:05PM Thursday, December 18, 2025
Subject Industrial Engineering and Operations Research
Number E4523
Section 001
Division School of Engineering and Applied Science: Graduate
Open To Engineering:Graduate
Note Requires co-requisite of IEOR E4501 or waiver exam
Section key 20261IEOR4523E001