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      "scqa_arc": "A discernible SCQA exists — Situation (s10), Complication (s11 'progress is slow'), implicit Question, Answer (s23 five-pillar recommendation) — but the middle reads more as analytical dump than tightening the question.",
      "action_titles": "Slides 10-23 use insight-bearing sentences (e.g., 'Marketing emerged as the highest priority function for driving operational effectiveness'), but slides 1-9 and 24-28 are topic labels ('About us', 'Disclaimer', 'Thank you'), giving roughly 50% action-title density.",
      "mece_structure": "The arc (priorities → maturity → enablers → challenges → process → recommendations) is reasonable, but slides 13, 15, 16, and 17 substantially overlap on 'customer-facing functions are the priority,' restating the same finding rather than partitioning the analysis.",
      "closing_strength": "Slide 23 delivers a five-pillar recommendation, but slides 27-28 collapse into a generic 'Thank you' and a Fynd contact card with no explicit next-steps or call-to-action for the retailer audience.",
      "evidence_quality": "Claims are consistently backed by survey data, named retailer quotes, global benchmarks (Amazon, Walmart on slide 18), and a $73B AI investment figure (slide 10) — the strongest axis in the deck.",
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