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      "text": "1. Does not sum up to 100% due to some minor educational levels not included\n2. 2014 statistic\nSource: McKinsey Global Institute; SSB; OECD; Scientific American article “Scientists Reading Fewer Papers for First Time in 35 Years”, 2014",
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      "text": "With generative AI, Without generative AI, Incremental technical automation potential",
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