build-shiny-module
About
This skill helps developers build reusable Shiny modules with proper namespace isolation using NS(). It covers creating module UI/server pairs, handling reactive return values, and enabling inter-module communication and nested composition. Use it when extracting reusable components from growing apps, encapsulating complex logic, or composing larger applications from testable units.
Quick Install
Claude Code
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Documentation
Build Shiny Module
Create reusable Shiny UI/server module pairs with proper namespace isolation, reactive communication, composability.
When Use
- Extracting reusable component from growing Shiny app
- Building UI widget used in multiple places
- Encapsulating complex reactive logic behind clean interface
- Composing larger applications from smaller, testable units
Inputs
- Required: Module purpose and functionality description
- Required: Input/output contract (what module receives and returns)
- Optional: Whether module nests other modules (default: no)
- Optional: Framework context (golem, rhino, vanilla)
Steps
Step 1: Define the Module Interface
Before writing code, define what module accepts and returns:
Module: data_filter
Inputs: reactive dataset, column names to filter on
Outputs: reactive filtered dataset
UI: filter controls (selectInput, sliderInput, dateRangeInput)
Got: Clear contract specifying reactive inputs, reactive outputs, UI elements.
If fail: Interface unclear? Module probably too broad. Split into smaller modules with single responsibilities.
Step 2: Create the Module UI Function
#' Data Filter Module UI
#'
#' @param id Module namespace ID
#' @return A tagList of filter controls
#' @export
dataFilterUI <- function(id) {
ns <- NS(id)
tagList(
selectInput(
ns("column"),
"Filter column",
choices = NULL
),
uiOutput(ns("filter_control")),
actionButton(ns("apply"), "Apply Filter", class = "btn-primary")
)
}
Key rules:
- Function name follows
<name>UIconvention - First argument is always
id - Create
ns <- NS(id)at top - Wrap every
inputIdandoutputIdwithns() - Return
tagList()to allow flexible placement
Got: UI function creating namespaced input/output elements.
If fail: IDs collide when using module twice? Check every ID wrapped with ns(). Common miss: IDs inside renderUI() or uiOutput() — these need ns() too.
Step 3: Create the Module Server Function
#' Data Filter Module Server
#'
#' @param id Module namespace ID
#' @param data Reactive expression returning a data frame
#' @param columns Character vector of filterable column names
#' @return Reactive expression returning the filtered data frame
#' @export
dataFilterServer <- function(id, data, columns) {
moduleServer(id, function(input, output, session) {
ns <- session$ns
# Update column choices when data changes
observeEvent(data(), {
available <- intersect(columns, names(data()))
updateSelectInput(session, "column", choices = available)
})
# Dynamic filter control based on selected column
output$filter_control <- renderUI({
req(input$column)
col_data <- data()[[input$column]]
if (is.numeric(col_data)) {
sliderInput(
ns("value_range"),
"Range",
min = min(col_data, na.rm = TRUE),
max = max(col_data, na.rm = TRUE),
value = range(col_data, na.rm = TRUE)
)
} else {
selectInput(
ns("value_select"),
"Values",
choices = unique(col_data),
multiple = TRUE,
selected = unique(col_data)
)
}
})
# Return filtered data as a reactive
filtered <- eventReactive(input$apply, {
req(input$column)
col <- input$column
df <- data()
if (is.numeric(df[[col]])) {
req(input$value_range)
df[df[[col]] >= input$value_range[1] &
df[[col]] <= input$value_range[2], ]
} else {
req(input$value_select)
df[df[[col]] %in% input$value_select, ]
}
}, ignoreNULL = FALSE)
return(filtered)
})
}
Key rules:
- Function name follows
<name>Serverconvention - First argument is always
id - Additional arguments are reactive expressions or static values
- Use
moduleServer(id, function(input, output, session) { ... }) - Use
session$nsfor dynamic UI created inside server - Return reactive values explicitly
Got: Server function processing inputs and returning reactive output.
If fail: Reactive values don't update? Check inputs from dynamic UI use session$ns (not outer ns). Module returns NULL? Ensure return() is last expression inside moduleServer().
Step 4: Wire the Module into the Parent App
# In app_ui.R or ui
ui <- page_sidebar(
title = "Analysis App",
sidebar = sidebar(
dataFilterUI("filter1")
),
card(
DT::dataTableOutput("table")
)
)
# In app_server.R or server
server <- function(input, output, session) {
# Raw data source
raw_data <- reactive({ mtcars })
# Call module — capture its return value
filtered_data <- dataFilterServer(
"filter1",
data = raw_data,
columns = c("cyl", "mpg", "hp", "wt")
)
# Use the module's returned reactive
output$table <- DT::renderDataTable({
filtered_data()
})
}
Got: Module appears in UI and its returned reactive flows into downstream outputs.
If fail: Module UI doesn't render? Verify id string matches between UI and server calls. Returned reactive is NULL? Check server function actually returns value.
Step 5: Compose Nested Modules (Optional)
For modules containing other modules:
analysisUI <- function(id) {
ns <- NS(id)
tagList(
dataFilterUI(ns("filter")),
plotOutput(ns("plot"))
)
}
analysisServer <- function(id, data) {
moduleServer(id, function(input, output, session) {
# Call inner module with namespaced ID
filtered <- dataFilterServer("filter", data = data, columns = names(data()))
output$plot <- renderPlot({
req(filtered())
plot(filtered())
})
return(filtered)
})
}
Key rule: In UI, nest with ns("inner_id"). In server, call with just "inner_id" — moduleServer handles namespace chaining.
Got: Inner module renders correctly within outer module's namespace.
If fail: Inner module's UI doesn't appear? Likely forgot ns() around inner module's ID in outer UI function. Server communication breaks? Check inner module ID matches (no ns() in server call).
Step 6: Test the Module in Isolation
# Quick test app for the module
if (interactive()) {
shiny::shinyApp(
ui = fluidPage(
dataFilterUI("test"),
DT::dataTableOutput("result")
),
server = function(input, output, session) {
data <- reactive(iris)
filtered <- dataFilterServer("test", data, names(iris))
output$result <- DT::renderDataTable(filtered())
}
)
}
Got: Module works correctly in minimal test app.
If fail: Module fails in isolation but works in full app (or vice versa)? Check for implicit dependencies on global variables or parent session state.
Checks
- Module UI function accepts
idas first argument, usesNS(id) - Every input/output ID in UI wrapped with
ns() - Module server uses
moduleServer(id, function(input, output, session) { ... }) - Dynamic UI in server uses
session$nsfor IDs - Module can be instantiated multiple times without ID collisions
- Reactive return values accessible to parent app
- Module works in minimal standalone test app
Pitfalls
- Forgetting
ns()inrenderUI(): Dynamic UI created inside server must usesession$ns— outernsnot available insidemoduleServer(). - Passing non-reactive data: Module arguments that change over time must be reactive expressions. Pass
reactive(data)notdata. - ID mismatch:
idstring in UI call must exactly matchidin server call. - Not returning reactives: Module computes something parent needs? Must
return()a reactive. Forgetting this is silent bug. - Namespace in nested modules: In UI:
ns("inner_id"). In server: just"inner_id". Mixing these up causes namespace double-wrapping or missing prefixes.
See Also
scaffold-shiny-app— set up app structure before adding modulestest-shiny-app— test modules with testServer() unit testsdesign-shiny-ui— bslib layout and theming for module UIsoptimize-shiny-performance— cache and async patterns within modules
GitHub Repository
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