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  "documentTitle": "2022 Air Street Capital The State of AI Report 2022",
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  "notes": "The chart shows a significant jump in predicted structures in 2022 compared to historical published data.",
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      "text": "There are 190k empirically determined 3D structures in the Protein Data Bank today. These have been derived through X-Ray crystallography and cryogenic electron microscopy.\nThe first release of AlphaFold DB in July 2021 included 1M predicted protein structures.\nThis new release 200x's the database size. Over 500,000 researchers from 190 countries have made use of the database.\nAlphaFold mentions in AI research literature is growing massively and is predicted to triple year on year (right chart).",
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