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Learning Shiny

You're reading from   Learning Shiny Make the most of R's dynamic capabilities and implement web applications with Shiny

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Product type Paperback
Published in Oct 2015
Publisher
ISBN-13 9781785280900
Length 246 pages
Edition 1st Edition
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Authors (2):
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Hernan Resnizky Hernan Resnizky
Author Profile Icon Hernan Resnizky
Hernan Resnizky
Hernan Resnizky Hernan Resnizky
Author Profile Icon Hernan Resnizky
Hernan Resnizky
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Table of Contents (13) Chapters Close

Preface 1. Introducing R, RStudio, and Shiny FREE CHAPTER 2. First Steps towards Programming in R 3. An Introduction to Data Processing in R 4. Shiny Structure – Reactivity Concepts 5. Shiny in Depth – A Deep Dive into Shiny's World 6. Using R's Visualization Alternatives in Shiny 7. Advanced Functions in Shiny 8. Shiny and HTML/JavaScript 9. Interactive Graphics in Shiny 10. Sharing Applications 11. From White Paper to a Full Application Index

server.R coding


After analysis and the application's design, this is definitely the most important stage of coding. A well-programmed backend is the key to performance and consequently effective visualizations. In this part, as in every backend process, the focus should be on producing the output with as little code and processing as possible. In order to achieve this, the key is to avoid repetition.

In our example, all the outputs are produced from the same dataset, which is basically the data source filtered by the corresponding input values. As it was explained in Chapter 5, Shiny in Depth – A Deep Dive into Shiny's World, there is no need to generate the same object for every visualization, as a reactive object can be used instead. In this example, a reactive object is precisely used:

#Reactive subset

data.sset <- reactive({
  input$submitter
  isolate({
    subset(data.adult, sex %in% input$gender & age >= input$minage &
    age <= input$maxage & marital.status ...
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