Spring 2025 Computer Science W4771 section 001

MACHINE LEARNING

Call Number 11982
Day & Time
Location
TR 1:10pm-2:25pm
451 Computer Science Building
Points 3
Grading Mode Standard
Approvals Required None
Instructor Nakul Verma
Type LECTURE
Method of Instruction In-Person
Course Description

Basic statistical principles and algorithmic paradigms of supervised machine learning.

Prerequisites: 
Multivariable calculus (e.g. MATH1201 or MATH1205 or APMA2000), linear algebra (e.g. COMS3251 or MATH2010 or MATH2015), probability (e.g. STAT1201 or STAT4001 or IEOR3658 or MATH2015), discrete math (COMS3203), and general mathematical maturity. Programming and algorithm analysis (e.g. COMS 3134). 
COMS 3770 optionally satisfies all math prerequisites for this course.

Web Site Vergil
Department Computer Science
Enrollment 67 students (110 max) as of 3:06PM Monday, June 30, 2025
Subject Computer Science
Number W4771
Section 001
Division Interfaculty
Note See: https://www.cs.columbia.edu/~verma/classes/ml/faq.html
Section key 20251COMS4771W001