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  "documentTitle": "AI in Retail",
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  "notes": "The chart is a 100% stacked bar chart showing the distribution of focus levels (No focus to Maximal) across 9 business functions.",
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      "text": "Need for focus: Interestingly, few respondents across revenue groups are focusing on leveraging AI for assortment planning despite the availability of data.",
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      "text": "Figure 8: % of respondents based on degree of focus for AI solutions across functions",
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      "text": "Retailers across all retailer sizes and categories are highly focused on enhancing marketing effectiveness, followed by customer insights.",
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      "text": "Effectiveness is the ability to better predict future outcomes, take better decisions, achieve better outcomes (ex. higher sales conversion)",
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      "text": "Personalisation is key, AI helps us move beyond guesswork. It shows us patterns, predicts what customers might want, and helps us craft more meaningful, timely experiences.",
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      "text": "Personalisation is key, AI helps us move beyond guesswork. It shows us patterns, predicts what customers might want, and helps us craft more meaningful, timely experiences. — Indian apparel retailer",
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