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build-shiny-module

pjt222
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About

This skill helps developers build reusable Shiny modules with proper namespace isolation using NS(). It covers creating 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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npx skills add pjt222/agent-almanac -a claude-code
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/plugin add https://github.com/pjt222/agent-almanac
Git CloneAlternative
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/build-shiny-module

Copy and paste this command in Claude Code to install this skill

Documentation

Build Shiny Module

Reusable Shiny UI/server module pairs w/ proper namespace isolation, reactive comm, composability.

Use When

  • Extract reusable component from growing Shiny app
  • UI widget used in many places
  • Encapsulate complex reactive logic behind clean interface
  • Compose larger apps from smaller testable units

In

  • Required: Module purpose + fn desc
  • Required: In/out contract (what module receives + returns)
  • Optional: Whether module nests others (default: no)
  • Optional: Framework ctx (golem, rhino, vanilla)

Do

Step 1: Define Interface

Before code, define accepts + returns:

Module: data_filter
Inputs: reactive dataset, column names to filter on
Outputs: reactive filtered dataset
UI: filter controls (selectInput, sliderInput, dateRangeInput)

Clear contract w/ reactive ins, reactive outs, UI elements.

If err: Interface unclear → module too broad. Split into smaller, single responsibilities.

Step 2: Module UI Fn

#' 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:

  • Fn name: <name>UI convention
  • First arg always id
  • ns <- NS(id) at top
  • Wrap every inputId + outputId w/ ns()
  • Return tagList() for flexible placement

UI fn creates namespaced in/out elements.

If err: IDs collide when module used twice → check every ID wrapped w/ ns(). Common miss: IDs inside renderUI() or uiOutput() — also need ns().

Step 3: Module Server Fn

#' 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:

  • Fn name: <name>Server convention
  • First arg always id
  • Additional args = reactive exprs or static values
  • Use moduleServer(id, function(input, output, session) { ... })
  • Use session$ns for dynamic UI inside server
  • Return reactive values explicitly

Server fn processes ins + returns reactive out.

If err: Reactives don't update → check ins from dynamic UI use session$ns (not outer ns). Module returns NULL → ensure return() is last expr in moduleServer().

Step 4: Wire Module into Parent

# 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()
  })
}

Module appears in UI, returned reactive flows into downstream outs.

If err: UI doesn't render → verify id matches between UI + server calls. Returned reactive NULL → check server fn actually returns value.

Step 5: Nested Modules (Optional)

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: UI nests w/ ns("inner_id"). Server calls w/ just "inner_id"moduleServer handles namespace chaining.

Inner module renders correctly w/in outer's namespace.

If err: Inner UI doesn't appear → likely forgot ns() around inner ID in outer UI. Server comm breaks → check inner ID matches (no ns() in server call).

Step 6: Test 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())
    }
  )
}

Module works correctly in minimal test app.

If err: Fails in isolation but works in full app (or reverse) → implicit deps on global vars or parent session state.

Check

  • UI fn accepts id as first arg + uses NS(id)
  • Every in/out ID in UI wrapped w/ ns()
  • Server uses moduleServer(id, function(input, output, session) { ... })
  • Dynamic UI in server uses session$ns for IDs
  • Module instantiable many times w/o ID collisions
  • Reactive returns accessible to parent
  • Works in minimal standalone test

Traps

  • Forget ns() in renderUI(): Dynamic UI inside server must use session$ns — outer ns not available in moduleServer()
  • Non-reactive data: Args that change over time must be reactive. Pass reactive(data) not data
  • ID mismatch: id in UI call must exactly match id in server call
  • Not returning reactives: Module computes something parent needs → must return() reactive. Silent bug
  • Nested namespace: UI: ns("inner_id"). Server: just "inner_id". Mixing → double-wrapping or missing prefixes

  • scaffold-shiny-app — set up app structure before adding modules
  • test-shiny-app — test modules w/ testServer() unit tests
  • design-shiny-ui — bslib layout + theming for module UIs
  • optimize-shiny-performance — cache + async patterns w/in modules

GitHub Repository

pjt222/agent-almanac
Path: i18n/caveman-ultra/skills/build-shiny-module
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