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  "documentTitle": "AI in Retail",
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  "notes": "Includes a section of qualitative testimonials from industry leaders.",
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      "text": "Need for focus: Several brands have highlighted a plethora of use cases as top priority across functions indicating that there is a need to narrow down focus to use-cases that can deliver the highest returns",
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      "text": "Backend functions while likely most amenable to AI solutions have not been as highly prioritised by brands. Interestingly, while assortment management is prioritized by apparel and bags retailers, other brands have underexplored opportunities.",
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      "text": "Al-driven insights help us plan smarter, from finding the next store location to spotting upcoming trends. But in the end, it's not just about tech—it's about using AI alongside human creativity and empathy. That's where the real magic happens. — Indian apparel retailer",
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