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  "documentTitle": "2022 Air Street Capital The State of AI Report 2022",
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      "text": "NVIDIA has been investing heavily in AI research and producing some of the best works in imaging over the years. For instance, their latest work on view synthesis just won the best paper award at SIGGRAPH, one of the most prestigious computer graphics conferences. But NVIDIA has now gone a step further and applied their reinforcement learning work to design their next-generation AI chip, the H100 GPU.",
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