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      "Convert every 'Use case implementation evaluation (Cont'd)' into a declarative action title that states the finding of that page (e.g., 'Elastic RAG beats Naive RAG on context relevancy' for p.10; 'Table summarization unlocks PDF financial reports' for p.11)",
      "Replace the one-slide 'Conclusion' with a 2–3 slide closing arc: (a) summary of the 24% result, (b) recommended next steps for FS clients, (c) explicit call to action / engagement model"
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