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Nov 24, 2024
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STSCI 3040 - R Programming for Data Science Fall. 4 credits. Student option grading.
Forbidden Overlap: due to an overlap in content, students will receive credit for only one course in the following group: AEM 2850 , GDEV 2295 , GDEV 5290 , NTRES 6100 , STSCI 3040, STSCI 5040 . Prerequisite: ECON 3110 /STSCI 3110 , ENGRD 2700 . Co-meets with STSCI 5040 .
J. Entner.
Statistics courses usually use clean and well-behaved data, this leaves many unprepared for the messiness and chaos of data in the real world. This course aims to prepare students for dealing with data using the R programming language. The introduction will overview the basic R syntax, foundational R programming concepts such as data types, vectors arithmetic, and indexing, and importing data into R from different file formats. The data wrangling topics include how to tidy data using the tidy verse to better facilitate analysis, string processing with regular expressions and with dates and times as file formats, web scraping, and text mining. Data visualization topics will cover visualization principles, the use of ggplot2 to create custom plots, and how to communicate data-driven findings.
Outcome 1: Learn basic R syntax, foundational R programming concepts such as data types, vectors arithmetic, and indexing, and importing data into R from different file formats.
Outcome 2: Learn data wrangling topics include how to tidy data using the tidy verse.
Outcome 3: Produce professional and informative data visualizations.
Outcome 4: Use R Markdown to create reports to document data analysis and communicate findings.
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