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  "documentTitle": "Education: 2022 M&A Deal Roundup and Trends to Watch Out for in 2023",
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      "text": "India likely to continue to mint edtech unicorns; has SEA edtech come of age?",
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      "text": "Note: APAC = Asia-Pacific; SEA = Southeast Asia\nSource: Crunchbase, L.E.K. research & analysis",
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