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  "documentTitle": "This San Francisco startup has raised $12 million for its speech-recognition technology that was born out of a 'dark matter' experiment. Here's the pitch deck it used.",
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  "authorName": "Deepgram",
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  "notes": "Includes specific performance metrics (90% accuracy, 4M minutes transcribed).",
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      "text": "Brett Evanson, CTO at Smart Rhino Labs Division at Randall-Reilly",
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      "text": "We tried Google's Cloud Speech API and Nuance Dragon, and investigated several other products from companies including Amazon and Prosodica. Deepgram had the best accuracy and program by far.",
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      "name": "Cost Of Inaction",
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