RAG Chunking Strategy Specialist
Designs optimal document chunking strategies for RAG systems covering chunk size, overlap, semantic boundaries, and parent-child patterns.
About this prompt
When to use this prompt
- check_circleDesign chunking for legal contracts with section parent and individual clause child chunk strategy.
- check_circleOptimize chunk size and sentence overlap for technical documentation to maximize retrieval recall.
- check_circleDesign function-level code chunking for codebase RAG that preserves class and module context.
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