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I am an absolute beginner to Shiny, so I would appreciate your patience and any advice to my issue. Here's the server function that I'm using to output a ggplot, which works on its own, but doesn't change at all when I change the inputs:

server <- function(input, output) {
  output$plooot<-renderPlot({
    df = df %>%
    group_by(input$Category,Type) %>%
    summarise(Distribution=sum(Distribution))
    ggplot(df,aes(input$Category,Distribution,fill=Type))+geom_bar(stat="identity",position="dodge")})
}

shinyApp(ui=ui,server=server)

Here's my ui function as well just for reference:

ui <- fluidPage(    

  titlePanel("chart"),

  # Generate a row with a sidebar
  sidebarLayout(      

    # Define the sidebar with one input
    sidebarPanel(
      selectInput("Category","Category:",choices=c("a","b","c","d","e","f")),
      selectInput("a","a:", choices=unique(Table$a), selected="All"),
      selectInput("b","b:", choices=unique(Table$b), selected="All"),
      selectInput("c","c:", choices=unique(Table$c), selected="All"),
      selectInput("d","d:", choices=unique(Table$d), selected="All"),
      selectInput("e","e:", choices=unique(Table$e), selected="All"),
      selectInput("f","f:", choices=unique(Table$f), selected="All")
    ),

    # Create a spot for the barplot
    mainPanel(
      plotOutput("plooot")  
    )

  )
)

Unfortunately, I can't post the data for legal reasons, but here are two plots of what I want vs. what I have: This is want I want. This separates each category into its options and then plots two bars (the fill) for each option

This is what I get from shiny. It separates the entire dataset into the two fill options, and nothing changes when I change the inputs.

This is probably a very rudimentary mistake, but I'm having trouble understanding what I'm doing wrong.

  • 1
    group_by(input$Category,Type) needs an actual column (using NSE), not a character (which is what it gets from input$Category). Look for standard-evaluation versions of the dplyr verbs. – r2evans Aug 14 '18 at 19:14
  • 1
    For reference: dplyr.tidyverse.org/articles/programming.html – r2evans Aug 14 '18 at 19:15
  • Try ic <- enquo(input$Category) and then ... %>% group_by(!!ic,Type) .... – r2evans Aug 14 '18 at 19:31
  • 1
    I am not sure how you are storing the data (df) in the app, but df = df %>% .... might overwrite your data when you generate the plot making it impossible to update to plot after an input. – AndS. Aug 14 '18 at 19:32
  • mistersunnyd, since you're new here (well, not new, but you haven't accepted an answer in your time here at SO) ... when you find an answer that addresses your question sufficiently, please "accept" it. – r2evans Aug 14 '18 at 20:39
3

I agree with @AndS., re-assigning back to df = ... is not likely what you want/need but will almost certainly irreversibly reduce your data. Additionally, input$Category is a character and not a symbol that group_by is expecting. Try this:

library(shiny)
library(dplyr)
library(ggplot2)

ui <- fluidPage(    
  titlePanel("chart"),
  # Generate a row with a sidebar
  sidebarLayout(      
    # Define the sidebar with one input
    sidebarPanel(
      selectInput("Category","Category:",choices=colnames(mtcars))
    ),
    # Create a spot for the barplot
    mainPanel(
      plotOutput("plooot")  
    )
  )
)

server <- function(input, output) {
  output$plooot<-renderPlot({
    req(input$Category)
    icq <- sym(input$Category)
    mtcars %>%
      group_by(!!!icq, vs) %>%
      summarise(disp=sum(disp)) %>%
      ggplot(aes_string(input$Category, "disp", fill="vs")) +
      geom_bar(stat="identity", position="dodge")
  })
}

shinyApp(ui=ui,server=server)
  • 1
    Great example. I think aes_string() is (sort of) deprecated. We can make use of quosures in ggplot2 as well if we wrap sym in quo. icq <- quo(!!sym(input$Category)) then call group_by(!!icq, vs) and ggplot(aes(!!icq, disp, fill=vs)) – AndS. Aug 14 '18 at 20:02
  • Thank you so much you big, beautiful man. – mistersunnyd Aug 14 '18 at 20:05
  • 1
    @AndS., I thought so, but I admit to not having completely "mastered" the quosure scene yet. Thanks for the code hints! – r2evans Aug 14 '18 at 20:37
0

Not knowing what your data looks like, see below. The best thing to do is for any data set that will be affected by a user input, is to put it in a reactive expression. Then use that reactive expression in your output plots. I also added an "ALL" to your choices and an if function in case you want to see them all together like you have in your picture.

ui <- fluidPage(

  titlePanel("Chart"),
  sidebarLayout(
    sidebarPanel(
      selectInput("Category","Category:",choices=c("All","a","b","c","d","e","f"))
    ),
    mainPanel(
      plotOutput("Plot")
    )
  )
)

server <- function(input, output) {

  Distribution <- c(1,2,3,4,1,2,3,5,2,4)
  Category <- c("a","b","c","e","f","a","b","c","e","f")
  Type <- c("Blue","Blue","Blue","Blue","Blue","Red","Red","Red","Red","Red")

  df <- data.frame(Distribution ,Category,Type)

  df_subset <- reactive({

    if (input$Category == "All") {df}
    else{df[df$Category == input$Category,]}
  })

  output$Plot <- renderPlot({

    dat <- df_subset()

    dat <- dat %>%
      group_by(Category,Type) %>%
      summarise(Distribution=sum(Distribution))

    plot <- ggplot(dat,aes(Category,Distribution,fill=Type))+geom_bar(stat="identity",position="dodge")
    return(plot)
  })
}

shinyApp(ui=ui,server=server)

enter image description here enter image description here

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