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  "documentTitle": "2025 Bond Cap Artificial Intelligence AI 2025",
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  "notes": "The chart highlights a clear inflection point in 2015, dividing the timeline into an 'Academia Era' and an 'Industry Era'.",
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      "text": "*Machine Learning = A subset of AI where machines learn from patterns in data without being explicitly programmed. Note: Academia includes models developed by one or more institutions...",
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