ORIE 4741

ORIE 4741

Course information provided by the 2016-2017 Catalog.

Modern data sets, whether collected by scientists, engineers, medical researchers, government, financial firms, social networks, or software companies, are often big, messy, and extremely useful. This course addresses scalable robust methods for learning from big messy data. We'll cover techniques for learning with data that is messy --- consisting of real numbers, integers, booleans, categoricals, ordinals, graphs, text, sets, and more, with missing entries and with outliers --- and that is big --- which means we can only use algorithms whose complexity scales linearly in the size of the data. We will cover techniques for cleaning data, supervised and unsupervised learning, finding similar items, model validation, and feature engineering. The course will culminate in a final project in which students extract useful information from a big messy data set.


Prerequisites/Corequisites Prerequisite: familiarity with linear algebra and matrix notation, a modern scripting language (such as Python, Matlab, Julia, R), and basic complexity and O(n) notation.

When Offered Fall.

View Enrollment Information

Syllabi: none
  •   Regular Academic Session.  Choose one lecture and one discussion.

  • 4 Credits Graded

  • 18085 ORIE 4741   LEC 001

  • Instruction Mode: In Person

  • 18086 ORIE 4741   DIS 201

  • Instruction Mode: In Person

  • 18087 ORIE 4741   DIS 202

  • Instruction Mode: In Person

  • 18088 ORIE 4741   DIS 203

  • Instruction Mode: In Person

  • 18089 ORIE 4741   DIS 204

  • Instruction Mode: In Person