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  "documentTitle": "The art of AI maturity Advancing from practice to performance North America",
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  "notes": "The chart is a dot plot comparing 'NA Achievers' and 'NA Experimenters' across various 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.",
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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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