Apr 25, 2024  
2022-2023 Catalog 
    
2022-2023 Catalog [ARCHIVED CATALOG]

Add to My Catalog (opens a new window)

ES 288: Data Science


Units: 4

Introduces the data analytics pipeline relevant to graduate research work: obtaining raw unstructured data; cleaning, organizing, merging and identifying potential pitfalls in the data; exploring and visualizing the underlying statistics; introduction to preliminary stochastic, generative and econometric modeling methods. Introduces best-practices for handling and analyzing large multi-scale datasets using examples drawn from open-data repositories.

Course Details
Repeats Allowed for Credit: 0

Crosslisted with: MIST 270
Laboratory included
Normal Letter Grade only

Requisites and Restrictions
Instructor Permission Required: No
This is not an introduction to programming/scripting course. Students who are unsure of their preparation level should contact the instructor prior to enrollment to clarify the presumed statistical/computational/mathematical skillset. 


View course scheduling information




Add to My Catalog (opens a new window)