Scaffold Shiny App
Skill Verifiziert AktivScaffold a new Shiny application using golem (production R package), rhino (enterprise), or vanilla (quick prototype) structure. Covers framework selection, project initialization, and first module creation. Use when starting a new interactive web application in R, creating a dashboard or data explorer prototype, setting up a production Shiny app as an R package with golem, or bootstrapping an enterprise Shiny project with rhino.
Scaffold new R Shiny applications efficiently with production-ready structures, tailored for various development needs from quick prototypes to enterprise-grade packages.
Funktionen
- Scaffolds Shiny apps with golem, rhino, or vanilla structures
- Covers framework selection and project initialization
- Includes steps for dependency management with renv
- Guides creation of the first module with proper namespacing
Anwendungsfälle
- Starting a new interactive web application in R
- Creating a dashboard or data explorer prototype
- Setting up a production Shiny app as an R package with golem
- Bootstrapping an enterprise Shiny project with rhino
Nicht-Ziele
- Developing complex application logic beyond initial scaffolding
- Managing deployment to production environments (though target is mentioned)
- Providing advanced UI/UX design patterns (delegated to 'design-shiny-ui')
Documentation
- info:READMEThe README is comprehensive and well-structured, but its primary purpose is to describe the entire Agent Almanac project, not just this specific skill.
Installation
/plugin install agent-almanac@pjt222-agent-almanacQualitätspunktzahl
VerifiziertVertrauenssignale
Ähnliche Erweiterungen
Build Shiny Module
100Build reusable Shiny modules with proper namespace isolation using NS(). Covers module UI/server pairs, reactive return values, inter-module communication, and nested module composition. Use when extracting a reusable component from a growing Shiny app, building a UI widget used in multiple places, encapsulating complex reactive logic behind a clean interface, or composing larger applications from smaller, testable units.
Test Shiny App
98Test Shiny applications using shinytest2 for end-to-end browser tests and testServer() for unit-testing module server logic. Covers snapshot testing, CI integration, and mocking external services. Use when adding tests to an existing Shiny application, setting up a testing strategy for a new Shiny project, writing regression tests before refactoring Shiny code, or integrating Shiny app tests into CI/CD pipelines.
Run Puzzle Tests
100Run the jigsawR test suite via WSL R execution. Supports full suite, filtered by pattern, or single file. Interprets pass/fail/skip counts and identifies failing tests. Never uses --vanilla flag (renv needs .Rprofile for activation). Use after modifying any R source code, after adding a new puzzle type or feature, before committing changes to verify nothing is broken, or when debugging a specific test failure.
Create Spatial Visualization
100Create interactive maps, elevation profiles, and spatial visualizations from GPX tracks, waypoints, or route data using R (sf, leaflet, tmap) or Observable (D3, deck.gl). Covers data import, coordinate system handling, map styling, and export to HTML or image formats. Use when visualizing a planned or completed tour route on an interactive map, creating elevation profiles for hiking or cycling routes, overlaying waypoints and POIs on a basemap, or building a web-based trip dashboard.
Containerize MCP Server
100Containerize an R-based MCP (Model Context Protocol) server using Docker. Covers mcptools integration, port exposure, stdio vs HTTP transport, and connecting Claude Code to the containerized server. Use when deploying an R MCP server without requiring a local R installation, creating a reproducible MCP server environment, running MCP servers alongside other containerized services, or distributing an MCP server to other developers.
Build Custom Mcp Server
100Build a custom MCP (Model Context Protocol) server that exposes domain-specific tools to AI assistants. Covers server implementation in Node.js or R, tool definitions, transport configuration, and testing with Claude Code. Use when you need to expose custom functionality beyond what mcptools provides, when building specialized domain-specific AI integrations, or when wrapping existing APIs or services as MCP tools.