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  "documentTitle": "2019 Air Street Capital The State of AI Report 2019",
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  "notes": "The chart shows a clear logarithmic relationship between training compute (PF/s days) and model performance.",
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      "text": "Compared to the August 2018 version of OpenAI Five, April's version is trained with 8x more compute.\nThe current version has consumed 800 petaflop/s-days and experienced about 45,000 years of Dota self-play over 10 realtime months.\nAs of The International in 2018 where the bots lost 2 games in a best of 3 math, total training experience summed to 10,000 years over 1.5 realtime months. This equates to 250 years of simulated experience per day on average.",
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