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  "documentTitle": "arm | Investor Presentation Deck | 33 slides",
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  "presentationDate": "2018-05-01 00:00:00",
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      "text": "Machine Learning (ML) processor\nObject Detection (OD) processor\nNeural Network (NN) software libraries",
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      "text": "Mobile - 1.7Bn to 2.2Bn\nSmart IP Cameras - 160M to 1.3Bn\nAI-enabled devices - 300M to 3.2Bn",
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      "text": "Project Trillium: Arm ML for All Devices",
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