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  "documentTitle": "Future of Work Tripartite Forum: Evidence base on the Future of Work",
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  "notes": "The chart illustrates a clear inverse relationship between the number of workers retrained and the projected increase in income inequality (Gini coefficient).",
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      "text": "SOURCE: McKinsey Analysis, McKinsey GTAP model",
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