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  "documentTitle": "2019 Air Street Capital The State of AI Report 2019",
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  "notes": "The chart shows probability curves over time, comparing public aggregate forecasts with those of CS/engineering degree holders.",
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      "text": "The median respondent to the FHI survey predicts that there is a 54% chance that high-level machine intelligence will be developed by 2028.",
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      "text": "The median respondent to the FHI survey predicts that there is a 54% chance that high-level machine intelligence will be developed by 2028. High-level machine intelligence was defined as machines able to perform almost all tasks that are economically relevant today better than the median human (today) at each task. These predictions are considerably sooner than the predictions by experts in two previous surveys. In the FHI survey, respondents with a CS degree provided a slightly longer timeframe but also showed considerable overlap.",
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