RAG Document Preprocessing Pipeline Designer
Designs document ingestion pipelines for RAG covering PDF extraction, OCR, table parsing, metadata enrichment, and quality filtering.
About this prompt
When to use this prompt
- check_circleDesign PDF preprocessing with OCR for scanned legal contracts in an enterprise RAG knowledge base.
- check_circleBuild multi-format ingestion (PDF/DOCX/HTML) with consistent metadata for a documentation RAG.
- check_circleCreate quality filtering removing duplicate and low-quality content from RAG knowledge base index.
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