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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 dumbbell plot showing the progression of AI maturity scores by industry.",
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      "text": "Figure 4: Levels of AI maturity by industry, 2021 and 2024*",
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      "text": "Note: *2024 = estimated scores. Industries’ AI maturity scores represent the arithmetic average of their respective Foundational and Differentiation index. North America n= 373.",
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      "text": "Median AI Maturity (0-100): 60",
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      "text": "While industries like tech are currently far ahead in their respective AI maturity, the gap will likely narrow considerably by 2024 (Figure 4). Automotive is betting on a big surge in sales of AI-powered self-driving vehicles. Aerospace and defense firms anticipate continued demand for AI-enabled remote systems. Retail will keep raising the bar of customer experience with AI. And the life sciences industry will expand its use of AI in efficient drug development. Still, there is enormous room for growth in AI adoption across all industries and an enormous opportunity for those organizations that choose to seize it.",
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      "text": "For industry laggards like financial services and healthcare, a range of factors may be contributing to their relatively low AI maturity—including legal and regulatory challenges, inadequate AI infrastructure and a shortage of AI-trained workers.",
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      "text": "Source: Accenture Research",
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