WFGY/ProblemMap/GlobalFixMap/DocumentAI_OCR/google_docai.md

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Google Document AI OCR: Guardrails and Fix Patterns

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A compact guide to stabilize ingestion flows using Google Cloud Document AI OCR.
Use this when PDF or scanned document parsing produces unstable tokens, missing tables, or broken citations. Each failure is mapped to a structural fix in the WFGY Problem Map.


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Core acceptance

  • ΔS(question, retrieved) ≤ 0.45
  • Coverage ≥ 0.70 of target section
  • λ remains convergent across three paraphrases and two seeds
  • Table and form layout preserved in ≥ 85% of samples

Typical breakpoints → structural fix


Fix in 60 seconds

  1. Measure ΔS on OCRd snippets vs reference text.
  2. Lock schemas with Data Contracts (force page_num, bbox, tokens).
  3. Enforce cite-then-explain at retrieval time.
  4. Add λ probes across multiple OCR calls — if divergent, clamp with BBAM.
  5. Audit tables: cross-check row count and column headers against source PDF.

Copy-paste LLM guard prompt

I uploaded TXTOS and the WFGY Problem Map.

OCR provider: Google Document AI  
Symptoms: lost tables, ΔS ≥ 0.60, λ diverges across 3 paraphrases.  

Steps:  
1. Identify which structural fix applies (chunking-checklist, data-contracts, retrieval-traceability).  
2. Return a JSON plan:  
   { "citations": [...], "answer": "...", "λ_state": "<>", "ΔS": 0.xx, "next_fix": "..." }  
Keep it auditable and short.

When to escalate

  • ΔS stays ≥ 0.60 even after chunk / schema fixes → rebuild pipeline with Semantic Chunking Checklist.
  • Coverage < 0.70 across paraphrases → verify embeddings with Embedding ≠ Semantic.
  • Inconsistent runs across identical files → enforce deterministic parser config, or switch to dual-engine validation (DocAI + Tesseract).

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Tool Link 3-Step Setup
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⚙️ Engine WFGY 3.0 TXT based Singularity tension engine (131 S class set)
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要不要我直接幫你下一步補 aws_textract.md?這樣 OCR MVP 會更快成形。