Created
April 18, 2016 04:30
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An example of using ggVis selectize with multiple=TRUE in Shiny.
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library(ggvis) | |
library(shiny) | |
#Example of Selectize, with Multiple = TRUE | |
ui = shinyUI(pageWithSidebar( | |
div(), | |
sidebarPanel( | |
sliderInput("n", "Number of points", min = 1, max = nrow(mtcars), | |
value = 10, step = 1), | |
selectizeInput( | |
'e2', 'Select Num Cylinders', choices = c(4,6,8), multiple = TRUE | |
), | |
textOutput("ex_out") | |
), | |
mainPanel( | |
ggvisOutput("plot"), | |
tableOutput("mtc_table") | |
) | |
)) | |
server = shinyServer(function(input, output, session) { | |
#This is done to fix the colors for each level | |
mtcars$cyl<-factor(mtcars$cyl, levels=c(4,6,8)) | |
# A reactive subset of mtcars | |
mtc <- reactive({ | |
mtcars %>% filter(cyl %in% as.integer(input$e2)) | |
}) | |
output$ex_out <- renderPrint({as.integer(input$e2) }) | |
# A simple visualisation. In shiny apps, need to register observers | |
# and tell shiny where to put the controls | |
mtc %>% | |
ggvis(~wt, fill = ~cyl) %>% | |
group_by(cyl) %>% | |
layer_densities() %>% | |
bind_shiny("plot", "plot_ui") | |
output$mtc_table <- renderTable({ | |
#Make the reactives wait until the minimum needed inputs have | |
#been entered. | |
validate( | |
need(input$e2, 'Please select at least one group') | |
) | |
mtc()[] | |
}) | |
}) | |
shinyApp(ui = ui, server = server) |
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### Second example, showing how validate and need can be used. | |
## This example is from Stack OVerflow. The idea of validate and need() is clearly illustrated | |
library(shiny) | |
library(ggplot2) | |
myData <- data.frame(group = sample(letters[1:4], 100, TRUE) | |
, cohort = sample(0:4, 100, TRUE) | |
, value = runif(100)) | |
runApp( | |
list(ui = fluidPage( | |
column(4, | |
checkboxGroupInput('group', 'Pick a group', choices = letters[1:4]), | |
selectizeInput('cohort', 'Pick a cohort', choices = 0:4)), | |
column(8, plotOutput('myplot')) | |
) | |
, server = function(input, output, session) { | |
appData <- reactive({ | |
myData[myData$group %in% input$group & myData$cohort == input$cohort,] | |
}) | |
output$myplot <- renderPlot({ | |
validate( | |
need(input$group, 'Please select at least one group'), | |
need(input$cohort > 0, 'Please choose a cohort greater than zero') | |
) | |
g <-ggplot(appData(),aes(x=group, y=value)) + | |
stat_summary(fun.y=sum, geom="bar") + | |
ggtitle(paste('cohort', input$cohort)) | |
g | |
}) | |
} | |
) |
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