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  "documentTitle": "2025 Bond Cap Artificial Intelligence AI 2025",
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  "notes": "The chart uses a logarithmic scale on the y-axis to visualize the massive growth in data requirements.",
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      "text": "Note: Only \"notable\" language models shown (per Epoch AI, includes state of the art improvement on a recognized benchmark, >1K citations, historically relevant, with significant use). Source: Epoch AI (5/25)",
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      "text": "Training Dataset Size (Number of Words) for Key AI Models – 1950-2025, per Epoch AI",
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