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      "text": "Trillions of Operations per Second (TOPS)\n10^9\n10^8\n10^7\n10^6\n10^5\n10^4\n10^3\n10^2\nSingle-threaded CPU perf\n1.5X perf per year\n1.1X per year\nGPU-Computing perf\n2X per year\n1000X In 10 years\n1980\n1990\n2000\n2010\n2020\n2030",
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      "text": "Accelerated computing is needed to tackle the most impactful opportunities of our time—like AI, climate simulation, drug discovery, ray tracing, and robotics.\nNVIDIA is uniquely dedicated to accelerated computing —working top-to-bottom—refactoring applications and creating new algorithms, and bottom-to-top—inventing new specialized processors, like RT Core and Tensor Core.",
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