Introduction to RShiny
About this Course
In this hands-on course, you will learn how to use R Shiny to create data-driven web applications. By the end of the course, you will have created an interactive web application that highlights the biodiversity of America's National Parks. Your application will feature an interactive map, biodiversity calculator, trail journal and species images. Using R Shiny, you will expand your data analysis and visualization skills while developing a way to share and distribute your findings in an application. If you are a beginner level data professional, a student, a researcher, an academic marketing analyst, business and data analyst, or financial analyst, this course is for you. This four week course will give you a foundation for making and deploying Shiny applications. Along the way you will learn about user interaction (UI) controls, persistent data storage using google sheets, customizing your application with CSS and publishing through shinyapps.io. You will create your own unique application(s) that you can share with friends, colleagues, and potential employers. Course Requirement: Computer that can run R/RStudio - shinyapps.io account (free) needed to deploy to the web.Created by: Davidson College
Level: Introductory
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