Introduction to Data Analysis with R & Reproducible Data Science
Institute for Research in Statistics and its Applications at the University of Minnesota
With the increasing availability of data with broad applications (and the sheer size of some of these data), it is more important than ever to be able to elucidate trends, decisions, and stories from data. Our team will offer a hands on introduction to Data Science and Statistics using the free and publicly available software R. Assuming no background knowledge of software or Statistics, we will bring you up to speed on some of the most useful, modern, and popular data analysis techniques.
This short course is divided into multiple modules. On day one we will explore the basic features of R and the power of R for constructing visualizations, summaries, hypothesis tests, and statistical models from data. The modules on day two will cover a gentle introduction to logistic regression and conclude with an in-depth discussion on best practices for reproducible Data Science research and practice using R Markdown and github.
The material herein is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License