Spring 2023
INDENG 142 1 - LEC 1
Introduction to Machine Learning and Data Analytics
Stewart Liu
Class #:29246
Units: 3
Instruction Mode:
In-Person Instruction
Offered through
Industrial Engineering and Operations Research
Current Enrollment
Total Open Seats:
0
Enrolled: 141
Waitlisted: 0
Capacity: 141
Waitlist Max: 5
Open Reserved Seats:
4 reserved for Operations Research and Management Science Majors with 5 or more Terms in Attendance`
2 reserved for College of Engineering Students with 3-4 Terms in Attendance
2 reserved for Industrial Engineering and Operations Research Majors with 5 or more Terms in Attendance or Transfer students in their first term at Berkeley
Final Exam
TUE, MAY 9TH
03:00 pm - 06:00 pm
Other classes by Stewart Liu
Course Catalog Description
This course introduces students to key techniques in machine learning and data analytics through a diverse set of examples using real datasets from domains such as e-commerce, healthcare, social media, sports, the Internet, and more. Through these examples, exercises in R, and a comprehensive team project, students will gain experience understanding and applying techniques such as linear regression, logistic regression, classification and regression trees, random forests, boosting, text mining, data cleaning and manipulation, data visualization, network analysis, time series modeling, clustering, principal component analysis, regularization, and large-scale learning.
Rules & Requirements
Repeat Rules
Course is not repeatable for credit.
Reserved Seats
Current Enrollment
Open Reserved Seats:
4 reserved for Operations Research and Management Science Majors with 5 or more Terms in Attendance`
2 reserved for College of Engineering Students with 3-4 Terms in Attendance
2 reserved for Industrial Engineering and Operations Research Majors with 5 or more Terms in Attendance or Transfer students in their first term at Berkeley
Textbooks & Materials
See class syllabus or https://calstudentstore.berkeley.edu/textbooks for the most current information.
Guide to Open, Free, & Affordable Course Materials