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  "documentTitle": "OpenAI | Product Presentation Deck | 20 slides",
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  "authorName": "OpenAI",
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  "presentationDate": "2017-08-01 00:00:00",
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  "notes": "The charts show reward over time (timesteps) for different training methodologies.",
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      "text": "Performance on Atari Games",
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