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AI-powered quiz generator for regulatory, certification, and educational documentation

Project description

quiz-gen

Python 3.10+ License: MIT PyPI version Tests Coverage GitHub last commit Downloads

AI-powered quiz generator for regulatory, certification, and educational documentation. Extract structured content from complex legal and technical documents to create comprehensive learning materials.

Features

  • EUR-Lex Document Parser: Parse and structure European Union legal documents with full table of contents extraction
  • Hierarchical Document Analysis: Automatically identify document structure including chapters, sections, articles, and recitals
  • Intelligent Chunking: Extract meaningful content chunks at appropriate granularity levels (articles and recitals)
  • Table of Contents Generation: Build complete document navigation structure with 3-level hierarchy
  • Regulatory Document Support: Specialized parsing for aviation regulations, directives, and other technical documentation

Installation

pip install quiz-gen

Quick Start

Parsing EUR-Lex Documents

from quiz_gen import EURLexParser

# Parse a regulation document
url = "https://eur-lex.europa.eu/legal-content/EN/TXT/HTML/?uri=OJ:L_202401689"
parser = EURLexParser(url=url)
chunks, toc = parser.parse()

# Access structured content
print(f"Extracted {len(chunks)} content chunks")
print(f"Document has {len(toc['sections'])} major sections")

# Save results
parser.save_chunks('output_chunks.json')
parser.save_toc('output_toc.json')

Document Structure

The parser extracts documents into a multi-level hierarchy:

Level 1: Major Sections

  • Preamble
  • Enacting Terms

Level 2/3: Structural Divisions

  • Chapters
  • Sections

Level 1/2/3/4: Content Elements

  • Title
  • Citation
  • Recitals
  • Articles
  • Concluding formulas
  • Annex
  • Appendix

Working with Chunks

# Iterate through extracted chunks
for chunk in chunks:
    print(f"{chunk.title}")
    print(f"Type: {chunk.section_type.value}")
    print(f"Number: {chunk.number}")
    print(f"Content: {chunk.content[:200]}...")
    print(f"Hierarchy: {' > '.join(chunk.hierarchy_path)}")
    print()

Displaying Table of Contents

# Print formatted TOC
parser.print_toc()

# Output:
# PREAMBLE
#   Citation 
#   Recital 1
#   Recital 2
#   ...
# 
# ENACTING TERMS
#   CHAPTER I - PRINCIPLES
#     Article 1 - Subject matter and objectives
#     Article 2 - Scope

Use Cases

Compliance and Legal

  • Analyze regulatory requirements systematically
  • Track changes across document versions
  • Build searchable knowledge bases from legal texts

Documentation Processing

  • Convert unstructured documents into structured data
  • Build citation networks and cross-references
  • Support automated document analysis workflows

Education and Training

  • Generate study materials from regulatory documents
  • Create structured learning paths for certification programs
  • Extract key concepts for examination preparation

Supported Document Types

Currently supports:

  • EUR-Lex HTML Documents: European Union regulations, directives, decisions
  • Legislative Acts: Structured legal documents with formal hierarchies

Document Format Requirements

  • Documents must use EUR-Lex HTML format
  • Must contain eli-subdivision elements for proper structure identification
  • Supports multi-level hierarchies with chapters, sections, and articles

Advanced Usage

Custom Parsing Workflows

from quiz_gen import EURLexParser

parser = EURLexParser(url=document_url)

# Parse specific sections
parser._parse_preamble()  # Extract citations and recitals
parser._parse_enacting_terms()  # Extract chapters and articles
parser._parse_annexes()  # Extract annexes

# Access intermediate results
toc = parser.toc  # Full table of contents
chunks = parser.chunks  # Content chunks only

Filtering Chunks by Type

from quiz_gen import SectionType

# Get only recitals
recitals = [c for c in chunks if c.section_type == SectionType.RECITAL]

# Get only articles
articles = [c for c in chunks if c.section_type == SectionType.ARTICLE]

# Filter by chapter
chapter_1_articles = [
    c for c in articles 
    if 'CHAPTER I' in ' > '.join(c.hierarchy_path)
]

Accessing Metadata

for chunk in chunks:
    # Access structured metadata
    print(chunk.metadata)  # {'id': 'art_1', 'subtitle': '...'}
    
    # Navigate hierarchy
    print(chunk.hierarchy_path)  # ['CHAPTER I - PRINCIPLES', 'Article 1']
    
    # Identify parent sections
    print(chunk.parent_section)

Project Structure

quiz-gen/
├── src/
│   └── quiz_gen/
│       ├── parsers/
│       │   └── html/
│       │       └── eu_lex_parser.py
│       ├── models/
│       │   ├── chunk.py
│       │   ├── document.py
│       │   └── quiz.py
│       └── utils/
├── examples/
│   └── eu_lex_toc_chunks.py
├── tests/
├── data/
│   ├── processed/
│   └── raw/
└── docs/

Development

Setting up Development Environment

# Clone the repository
git clone https://github.com/yauheniya-ai/quiz-gen.git
cd quiz-gen

# Install with development dependencies
pip install -e ".[dev]"

# Run tests
pytest

# Run linting
ruff check .
black .

Project Structure

quiz-gen/
├── src/
│   └── quiz_gen/          # Module code here
│       ├── agents/
│       ├── parsers/
│       └── ...
├── examples/              # Example scripts
│   ├── easa_example.py
│   ├── test_article_47.py
│   └── run_workflow.py
├── pyproject.toml
└── .env

Contributing

Contributions are welcome! Please ensure:

  1. Code follows PEP 8 style guidelines
  2. All tests pass
  3. New features include appropriate tests
  4. Documentation is updated

API Reference

EURLexParser

Main parser class for EUR-Lex documents.

Methods:

  • parse() -> tuple[List[RegulationChunk], Dict]: Parse document and return chunks and TOC
  • fetch() -> str: Fetch HTML content from URL
  • save_chunks(filepath: str): Save chunks to JSON file
  • save_toc(filepath: str): Save table of contents to JSON file
  • print_toc(): Display formatted table of contents

RegulationChunk

Represents a parsed content chunk (article or recital).

Attributes:

  • section_type: Type of section (ARTICLE, RECITAL, etc.)
  • number: Section number (e.g., "1", "42")
  • title: Full title including subtitle
  • content: Text content
  • hierarchy_path: List of parent sections
  • metadata: Additional structured data

SectionType

Enumeration of document section types.

Values:

  • PREAMBLE: Preamble section
  • ENACTING_TERMS: Main regulatory content
  • CITATION: Citation in preamble
  • RECITAL: Recital in preamble
  • CHAPTER: Chapter division
  • SECTION: Section within chapter
  • ARTICLE: Article (main content unit)
  • ANNEX: Annex section

Roadmap

Future enhancements planned:

  • AI-powered quiz generation from extracted content
  • Support for additional document formats (PDF, DOCX, PPTX)
  • Multi-language support
  • Question validation and quality metrics
  • Integration with learning management systems
  • Version comparison and diff analysis

License

This project is licensed under the MIT License. See the LICENSE file for details.

Citation

If you use this software in academic work, please cite:

Varabyova, Y. (2026). Quiz Gen AI: AI-powered quiz generator for regulatory documentation.
GitHub repository: https://github.com/yauheniya-ai/quiz-gen

Support

Acknowledgments

Built with:

  • BeautifulSoup4 for HTML parsing
  • lxml for XML processing
  • EUR-Lex for providing structured legal documents

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