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  "documentTitle": "The art of AI maturity Advancing from practice to performance",
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  "notes": "The chart is a dumbbell plot showing the gap between two groups across 8 business functions.",
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      "text": "Note: Score 0-100, ranging from 0 = AI use case not started, 50 = AI use in early stage, 100 = having AI programs in place for full productization. The chart shows the average scores for AI use cases of different functions, between Achievers and other firms.",
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      "text": "Achievers have largely moved beyond the AI investment “tipping point,” going from experimenting with new AI in isolation to applying AI at scale to solve critical business problems (Figure 6). Achievers are 25% more likely to scale AI pilots across the enterprise compared with Experimenters.",
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      "text": "Take product development as an example: Procter & Gamble (P&G) uses “explainable AI” algorithms to harness its proprietary data and formulation models and recommend product improvements.",
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