Claude-skill-registry intelligent-text-chunking
Split large texts into meaningful, AI-optimized chunks while preserving semantic coherence and document structure. Use when processing large documents for AI training, RAG systems, or when you need to break down content while maintaining context and relationships.
git clone https://github.com/majiayu000/claude-skill-registry
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/data/intelligent-text-chunking" ~/.claude/skills/majiayu000-claude-skill-registry-intelligent-text-chunking && rm -rf "$T"
skills/data/intelligent-text-chunking/SKILL.mdIntelligent Text Chunking
Overview
A sophisticated text segmentation skill that splits large texts into meaningful, AI-optimized chunks while preserving semantic coherence, document structure, and contextual relationships. Essential for processing large documents for AI training, RAG systems, and memory-constrained applications.
Capabilities
- Semantic Awareness: Respects topic boundaries and meaning transitions
- Structure Preservation: Maintains document hierarchy and formatting context
- Multi-language Support: Handles accented characters and diverse writing systems
- Configurable Strategies: Multiple chunking approaches for different use cases
- Context Preservation: Intelligent overlap management for context continuity
- Quality Optimization: Balances chunk size with content coherence
Chunking Strategies
1. Semantic Chunking
Split text based on meaning and topic boundaries rather than arbitrary size limits.
2. Structural Chunking
Follow document organization (headings, sections, lists) for natural divisions.
3. Fixed-Size Chunking
Create consistent-sized chunks with intelligent boundary selection.
4. Sliding Window Chunking
Create overlapping chunks for enhanced context preservation.
Implementation Examples
Language-Aware Processing
# Multi-language sentence detection sentence_patterns = { 'english': ['.', '!', '?', ';'], 'chuukese': ['.', '!', '?'], 'general': ['.', '!', '?', ';', '。', '!', '?'] } def detect_language_patterns(text): has_accents = bool(re.search(r'[áéíóúàèìòùāēīōūâêîôû]', text)) return 'chuukese' if has_accents else 'english'
Basic Usage
from .intelligent_chunker import IntelligentTextChunker, ChunkType chunker = IntelligentTextChunker( max_chunk_size=1024, overlap_ratio=0.15, preserve_sentences=True ) chunks = chunker.chunk_document(text, ChunkType.SEMANTIC)
Best Practices
- Size Balancing: Balance chunk size with content coherence
- Context Preservation: Use appropriate overlap for your use case
- Language Awareness: Configure for specific languages when known
- Quality Validation: Check chunk quality with sample reviews
- Use Case Optimization: Choose strategy based on downstream use
Dependencies
: Regular expression pattern matchingre
: Advanced sentence segmentationspacy
: Natural language processing utilitiesnltk
: Language identification supportlangdetect