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  "documentTitle": "2025 Accel Race for compute",
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  "notes": "The chart uses a stacked bar format to show the composition of CapEx over time, with a summary total on the right.",
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      "text": "Source: Nvidia - 'Introduction to NVIDIA DGC H100/H200 Systems'; 'The Rising Costs of Training Frontier AI Model' - Cottier et Al (2024); Turner & Townsend Data Centre Cost Index 2024; Google - 'Growing the internet while reducing energy consumption'",
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