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component-tester

sgcarstrends
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Testingreactaitesting

About

The component-tester skill automatically runs Vitest tests for React components when they're created or modified, ensuring tests pass and coverage thresholds are maintained. It executes component-specific tests with coverage reporting and provides detailed feedback on test results and coverage metrics. Use this during component development or before pull requests to maintain code quality.

Quick Install

Claude Code

Recommended
Plugin CommandRecommended
/plugin add https://github.com/sgcarstrends/sgcarstrends
Git CloneAlternative
git clone https://github.com/sgcarstrends/sgcarstrends.git ~/.claude/skills/component-tester

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

Documentation

Component Tester Skill

This Skill automatically runs Vitest tests when React components are modified to ensure code quality and test coverage.

When to Activate

  • After creating a new React component
  • When modifying existing component implementation
  • Before creating a pull request with component changes
  • When fixing bugs in components

Actions Performed

  1. Identify Component: Determine which component was created or modified
  2. Run Tests: Execute pnpm test -- <component-path> without watch mode
  3. Check Coverage: Verify test coverage meets project thresholds
  4. Report Results: Provide clear feedback on:
    • Test pass/fail status
    • Coverage percentages (statements, branches, functions, lines)
    • Specific failing tests with error messages
    • Coverage gaps requiring additional tests

Example Usage

// User modifies: src/app/blog/_components/progress-bar.tsx
// Skill automatically runs:
// pnpm test -- src/app/blog/_components/progress-bar

// Output:
// ✓ should render progress bar with correct width
// ✓ should update progress on scroll
// ✓ should hide when not scrolled
// Coverage: 95% statements, 90% branches, 100% functions, 95% lines

Tools Used

  • Read: Examine component files and test files
  • Grep: Locate related test files
  • Bash: Execute pnpm test commands

Test Naming Convention

All tests should follow the "should" convention:

  • ✅ "should render title and children"
  • ✅ "should display empty state when data is empty"
  • ❌ "renders title and children"

Coverage Thresholds

Flag components with coverage below:

  • Statements: 80%
  • Branches: 75%
  • Functions: 80%
  • Lines: 80%

Related Files

  • Test location: __tests__/ directories next to components
  • Test suffix: .test.ts or .test.tsx
  • Configuration: vitest.config.ts in project root

GitHub Repository

sgcarstrends/sgcarstrends
Path: apps/web/.claude/skills/component-tester
apiaws-lambdabackendhonojob-schedulerneon-postgres

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