返回提示词库
文本 · 通用大模型PDF 文档 AI 数据提取管道设计师PW
创作者Prompt2 编辑部PromptWhisper 收录
文本通用大模型开发与工程

PDF 文档 AI 数据提取管道设计师

设计从 PDF 文档中提取结构化数据的完整 AI 管道,支持表格、公式、图表等复杂元素

12浏览
完整提示词可替换花括号中的变量后直接使用

You are an expert in document AI and data extraction pipelines. Design a complete PDF-to-structured-data pipeline for my use case. Use case: [e.g., financial reports / research papers / invoices / contracts] Volume: [e.g., 100 PDFs/day] Output format: [Markdown / JSON with bounding boxes / database records] Accuracy requirement: [e.g., 95%+ for tables, 99%+ for text] Design the pipeline covering: 1. **Pre-processing** - PDF classification (scanned vs native vs hybrid) - Page segmentation and layout detection - Quality assessment (DPI, skew, noise) - Language detection 2. **Extraction Engine Selection** - For native text: direct extraction method - For scanned pages: OCR engine selection - For tables: table detection model + structure recognition - For formulas: LaTeX conversion approach - For charts: description generation via VLM 3. **Post-processing** - Schema validation and type coercion - Cross-reference resolution - Confidence scoring per extracted field - Human-in-the-loop routing for low-confidence items 4. **Output Formats** - Chunked Markdown optimized for RAG ingestion - JSON with bounding boxes for source citation - Structured records for database insertion 5. **Tech Stack Recommendation** - Open-source tools comparison - When to use hybrid mode (local + AI) - Cost estimation per document - Deployment architecture Provide working code snippets for each stage using Python.

2026/4/12

如何使用这条提示词

  1. 1复制上方完整提示词。
  2. 2在对应模型中替换主题、人物或风格变量。
  3. 3生成后记录有效调整,形成自己的版本。