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  "documentTitle": "2019 Air Street Capital The State of AI Report 2019",
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  "authorName": "Nathan Benaich and Ian Hogarth",
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      "text": "Local businesses: Demand at restaurants, coffee shops or other high street shops is partly dependent on weather and external events. Better demand forecasts allow these businesses to adjust staffing and supplies and increase profitability while reducing wastage. Selected examples: Tenzo, Dynamic Yield",
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