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build-shiny-module

pjt222
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This skill helps developers build reusable Shiny modules with proper namespace isolation using NS(). It covers creating UI/server pairs, managing reactive returns, and enabling inter-module communication and nesting. Use it to extract reusable components, encapsulate complex logic, or compose larger applications from testable units.

快速安装

Claude Code

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主要方式
npx skills add pjt222/agent-almanac -a claude-code
插件命令备选方式
/plugin add https://github.com/pjt222/agent-almanac
Git 克隆备选方式
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/build-shiny-module

在 Claude Code 中复制并粘贴此命令以安装该技能

技能文档

Build Shiny Module

Create reusable Shiny UI/server module pairs with proper namespace isolation, reactive communication, and composability.

When to Use

  • Extracting a reusable component from a growing Shiny app
  • Building a UI widget that will be used in multiple places
  • Encapsulating complex reactive logic behind a clean interface
  • Composing larger applications from smaller, testable units

Inputs

  • Required: Module purpose and functionality description
  • Required: Input/output contract (what the module receives and returns)
  • Optional: Whether the module nests other modules (default: no)
  • Optional: Framework context (golem, rhino, or vanilla)

Procedure

Step 1: Define the Module Interface

Before writing code, define what the 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, and UI elements.

If fail: If the interface is unclear, the module is probably too broad. Split it 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>UI convention
  • First argument is always id
  • Create ns <- NS(id) at the top
  • Wrap every inputId and outputId with ns()
  • Return a tagList() to allow flexible placement

Got: UI function that creates namespaced input/output elements.

If fail: If IDs collide when using the module twice, check that every ID is 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>Server convention
  • First argument is always id
  • Additional arguments are reactive expressions or static values
  • Use moduleServer(id, function(input, output, session) { ... })
  • Use session$ns for dynamic UI created inside the server
  • Return reactive values explicitly

Got: Server function that processes inputs and returns reactive output.

If fail: If reactive values don't update, check that inputs from dynamic UI use session$ns (not the outer ns). If the module returns NULL, ensure return() is the 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 the UI and its returned reactive flows into downstream outputs.

If fail: If the module UI doesn't render, verify the id string matches between UI and server calls. If the returned reactive is NULL, check that the server function returns a value.

Step 5: Compose Nested Modules (Optional)

For modules that contain 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 the UI, nest with ns("inner_id"). In the server, call with just "inner_id"moduleServer handles the namespace chaining.

Got: Inner module renders correctly within the outer module's namespace.

If fail: If the inner module's UI doesn't appear, you likely forgot ns() around the inner module's ID in the outer UI function. If server communication breaks, check that the inner module ID matches (no ns() in the 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 the minimal test app.

If fail: If the module fails in isolation but works in the full app (or vice versa), check for implicit dependencies on global variables or parent session state.

Validation

  • Module UI function accepts id as first argument and uses NS(id)
  • Every input/output ID in the UI is wrapped with ns()
  • Module server uses moduleServer(id, function(input, output, session) { ... })
  • Dynamic UI in server uses session$ns for IDs
  • Module can be instantiated multiple times without ID collisions
  • Reactive return values are accessible to the parent app
  • Module works in a minimal standalone test app

Pitfalls

  • Forgetting ns() in renderUI(): Dynamic UI created inside the server must use session$ns — the outer ns is not available inside moduleServer().
  • Passing non-reactive data: Module arguments that change over time must be reactive expressions. Pass reactive(data) not data.
  • ID mismatch: The id string in the UI call must exactly match the id in the server call.
  • Not returning reactives: If the module computes something the parent needs, it must return() a reactive. Forgetting this is a 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.

Related Skills

  • scaffold-shiny-app — set up the app structure before adding modules
  • test-shiny-app — test modules with testServer() unit tests
  • design-shiny-ui — bslib layout and theming for module UIs
  • optimize-shiny-performance — cache and async patterns within modules

GitHub 仓库

pjt222/agent-almanac
路径: i18n/caveman-lite/skills/build-shiny-module
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