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  "documentTitle": "2024 Benedict Evans 2024 AI eats the world",
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      "text": "Shein has disrupted fast fashion and may sell $40bn this year. Is that sustainable? -> Ask an apparel analyst",
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      "text": "Will EVs let the Chinese car industry do in the 2020s what the Japanese did in the 1980s? -> Ask a car analyst!",
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