agentskills.codes

Skill Tester

Install

mkdir -p .claude/skills/skill-tester-konankirajesh7-raj && curl -L -o skill.zip "https://agentskills.codes/api/skills/download/13947" && unzip -o skill.zip -d .claude/skills/skill-tester-konankirajesh7-raj && rm skill.zip

Installs to .claude/skills/skill-tester-konankirajesh7-raj

Activation

This is the description your AI agent reads to decide when to run this skill — the better it matches your request, the more reliably it fires.

Skill Tester
12 charsno explicit “when” trigger

About this skill

Skill Tester


Name: skill-tester Tier: POWERFUL Category: Engineering Quality Assurance Dependencies: None (Python Standard Library Only) Author: Claude Skills Engineering Team Version: 1.0.0 Last Updated: 2026-02-16


Description

The Skill Tester is a comprehensive meta-skill designed to validate, test, and score the quality of skills within the claude-skills ecosystem. This powerful quality assurance tool ensures that all skills meet the rigorous standards required for BASIC, STANDARD, and POWERFUL tier classifications through automated validation, testing, and scoring mechanisms.

As the gatekeeping system for skill quality, this meta-skill provides three core capabilities:

  1. Structure Validation - Ensures skills conform to required directory structures, file formats, and documentation standards
  2. Script Testing - Validates Python scripts for syntax, imports, functionality, and output format compliance
  3. Quality Scoring - Provides comprehensive quality assessment across multiple dimensions with letter grades and improvement recommendations

This skill is essential for maintaining ecosystem consistency, enabling automated CI/CD integration, and supporting both manual and automated quality assurance workflows. It serves as the foundation for pre-commit hooks, pull request validation, and continuous integration processes that maintain the high-quality standards of the claude-skills repository.

Core Features

Comprehensive Skill Validation

  • Structure Compliance: Validates directory structure, required files (SKILL.md, README.md, scripts/, references/, assets/, expected_outputs/)
  • Documentation Standards: Checks SKILL.md frontmatter, section completeness, minimum line counts per tier
  • File Format Validation: Ensures proper Markdown formatting, YAML frontmatter syntax, and file naming conventions

Advanced Script Testing

  • Syntax Validation: Compiles Python scripts to detect syntax errors before execution
  • Import Analysis: Enforces standard library only policy, identifies external dependencies
  • Runtime Testing: Executes scripts with sample data, validates argparse implementation, tests --help functionality
  • Output Format Compliance: Verifies dual output support (JSON + human-readable), proper error handling

Multi-Dimensional Quality Scoring

  • Documentation Quality (25%): SKILL.md depth and completeness, README clarity, reference documentation quality
  • Code Quality (25%): Script complexity, error handling robustness, output format consistency, maintainability
  • Completeness (25%): Required directory presence, sample data adequacy, expected output verification
  • Usability (25%): Example clarity, argparse help text quality, installation simplicity, user experience

Tier Classification System

Automatically classifies skills based on complexity and functionality:

BASIC Tier Requirements

  • Minimum 100 lines in SKILL.md
  • At least 1 Python script (100-300 LOC)
  • Basic argparse implementation
  • Simple input/output handling
  • Essential documentation coverage

STANDARD Tier Requirements

  • Minimum 200 lines in SKILL.md
  • 1-2 Python scripts (300-500 LOC each)
  • Advanced argparse with subcommands
  • JSON + text output formats
  • Comprehensive examples and references
  • Error handling and edge case management

POWERFUL Tier Requirements

  • Minimum 300 lines in SKILL.md
  • 2-3 Python scripts (500-800 LOC each)
  • Complex argparse with multiple modes
  • Sophisticated output formatting and validation
  • Extensive documentation and reference materials
  • Advanced error handling and recovery mechanisms
  • CI/CD integration capabilities

Architecture & Design

Modular Design Philosophy

The skill-tester follows a modular architecture where each component serves a specific validation purpose:

  • skill_validator.py: Core structural and documentation validation engine
  • script_tester.py: Runtime testing and execution validation framework
  • quality_scorer.py: Multi-dimensional quality assessment and scoring system

Standards Enforcement

All validation is performed against well-defined standards documented in the references/ directory:

  • Skill Structure Specification: Defines mandatory and optional components
  • Tier Requirements Matrix: Detailed requirements for each skill tier
  • Quality Scoring Rubric: Comprehensive scoring methodology and weightings

Integration Capabilities

Designed for seamless integration into existing development workflows:

  • Pre-commit Hooks: Prevents substandard skills from being committed
  • CI/CD Pipelines: Automated quality gates in pull request workflows
  • Manual Validation: Interactive command-line tools for development-time validation
  • Batch Processing: Bulk validation and scoring of existing skill repositories

Implementation Details

skill_validator.py Core Functions

# Primary validation workflow
validate_skill_structure() -> ValidationReport
check_skill_md_compliance() -> DocumentationReport  
validate_python_scripts() -> ScriptReport
generate_compliance_score() -> float

Key validation checks include:

  • SKILL.md frontmatter parsing and validation
  • Required section presence (Description, Features, Usage, etc.)
  • Minimum line count enforcement per tier
  • Python script argparse implementation verification
  • Standard library import enforcement
  • Directory structure compliance
  • README.md quality assessment

script_tester.py Testing Framework

# Core testing functions
syntax_validation() -> SyntaxReport
import_validation() -> ImportReport
runtime_testing() -> RuntimeReport
output_format_validation() -> OutputReport

Testing capabilities encompass:

  • Python AST-based syntax validation
  • Import statement analysis and external dependency detection
  • Controlled script execution with timeout protection
  • Argparse --help functionality verification
  • Sample data processing and output validation
  • Expected output comparison and difference reporting

quality_scorer.py Scoring System

# Multi-dimensional scoring
score_documentation() -> float  # 25% weight
score_code_quality() -> float   # 25% weight
score_completeness() -> float   # 25% weight
score_usability() -> float      # 25% weight
calculate_overall_grade() -> str # A-F grade

Scoring dimensions include:

  • Documentation: Completeness, clarity, examples, reference quality
  • Code Quality: Complexity, maintainability, error handling, output consistency
  • Completeness: Required files, sample data, expected outputs, test coverage
  • Usability: Help text quality, example clarity, installation simplicity

Usage Scenarios

Development Workflow Integration

# Pre-commit hook validation
skill_validator.py path/to/skill --tier POWERFUL --json

# Comprehensive skill testing
script_tester.py path/to/skill --timeout 30 --sample-data

# Quality assessment and scoring
quality_scorer.py path/to/skill --detailed --recommendations

CI/CD Pipeline Integration

# GitHub Actions workflow example
- name: "validate-skill-quality"
  run: |
    python skill_validator.py engineering/${{ matrix.skill }} --json | tee validation.json
    python script_tester.py engineering/${{ matrix.skill }} | tee testing.json
    python quality_scorer.py engineering/${{ matrix.skill }} --json | tee scoring.json

Batch Repository Analysis

# Validate all skills in repository
find engineering/ -type d -maxdepth 1 | xargs -I {} skill_validator.py {}

# Generate repository quality report
quality_scorer.py engineering/ --batch --output-format json > repo_quality.json

Output Formats & Reporting

Dual Output Support

All tools provide both human-readable and machine-parseable output:

Human-Readable Format

=== SKILL VALIDATION REPORT ===
Skill: engineering/example-skill
Tier: STANDARD
Overall Score: 85/100 (B)

Structure Validation: ✓ PASS
├─ SKILL.md: ✓ EXISTS (247 lines)
├─ README.md: ✓ EXISTS  
├─ scripts/: ✓ EXISTS (2 files)
└─ references/: ⚠ MISSING (recommended)

Documentation Quality: 22/25 (88%)
Code Quality: 20/25 (80%)
Completeness: 18/25 (72%)
Usability: 21/25 (84%)

Recommendations:
• Add references/ directory with documentation
• Improve error handling in main.py
• Include more comprehensive examples

JSON Format

{
  "skill_path": "engineering/example-skill",
  "timestamp": "2026-02-16T16:41:00Z",
  "validation_results": {
    "structure_compliance": {
      "score": 0.95,
      "checks": {
        "skill_md_exists": true,
        "readme_exists": true,
        "scripts_directory": true,
        "references_directory": false
      }
    },
    "overall_score": 85,
    "letter_grade": "B",
    "tier_recommendation": "STANDARD",
    "improvement_suggestions": [
      "Add references/ directory",
      "Improve error handling",
      "Include comprehensive examples"
    ]
  }
}

Quality Assurance Standards

Code Quality Requirements

  • Standard Library Only: No external dependencies (pip packages)
  • Error Handling: Comprehensive exception handling with meaningful error messages
  • Output Consistency: Standardized JSON schema and human-readable formatting
  • Performance: Efficient validation algorithms with reasonable execution time
  • Maintainability: Clear code structure, comprehensive docstrings, type hints where appropriate

Testing Standards

  • Self-Testing: The skill-tester validates itself (meta-validation)
  • Sample Data Coverage: Comprehensive test cases covering edge cases and error conditions
  • Expected Output Verification: All sample runs produce verifiable, reproducible outputs
  • Timeout Protection: Safe execution of potentially problematic scripts with timeout limits

Documentation Standards

  • Comprehensive Coverage: All functions, classes, and modules documented
  • Usage Examples: Clear,

Content truncated.

Search skills

Search the agent skills registry