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  "documentTitle": "e-Conomy SEA 2023 report: Thailand",
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      "text": "หมายเหตุ: (1) ดัชนีชี้วัดว่ามีอุปสงค์ด้านอีคอมเมิร์ซมากแค่ไหน... แหล่งที่มา: ข้อมูลภายในของ Google, ข้อมูลจาก Google Maps, การวิเคราะห์ของ Bain",
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