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  "documentTitle": "2024 Executive Perspectives Unlocking potential from AI and GenAI",
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      "text": "Large manufacturing client. Struggled to forecast market accurately (17% increase in forecast error)... driving business challenges: Inability to anticipate and adjust to market situation, Increased costs of labor & overtime, Customer dissatisfaction.",
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