Statistical Computing

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Overview

Subject area

STA

Catalog Number

3000

Course Title

Statistical Computing

Description

Computational statistics is a fundamental part of modern data analysis. This course provides an understanding of the principles and concepts of using modern statistical programing languages for data analysis. Students will learn a programming language, such as R, to handle the manipulation of large data sets, as well as to simulate data, and to import and export data. As an introductory course in statistically oriented programming, no extensive programming background is assumed. Students will gain experience in analyzing both quantitative and qualitative data. They will learn important ideas of programming data structures, functions, iteration, input and output, debugging, logical design, and abstraction. They will learn how to fit basic statistical models and to assess and present the results. Students will also learn how to comment and organize code.

Typically Offered

Fall, Spring, Summer

Academic Career

Undergraduate

Liberal Arts

No

Credits

Minimum Units

3

Maximum Units

3

Academic Progress Units

3

Repeat For Credit

No

Components

Name

Lecture

Hours

3

Requisites

033925

Course Schedule