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  "documentTitle": "2018 Air Street Capital The State of AI Report 2018",
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      "text": "\"Worry\" - This time it's different. In previous industrial revolutions we automated human muscular power and somewhat routine cognitive skills. With increasingly advanced machine learning we will replicate more and more of human intelligence, reducing the number of well paid jobs and adding fewer jobs than are destroyed.",
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      "text": "\"Don't worry\" - Historically technology has been a net job creator and it won't be different this time. Machine learning will create more jobs than it destroys and like previous industrial revolutions, most of those jobs will be new ones that we can't imagine today. Yes, we got Automated Teller Machines at banks, but we also got many new jobs that replaced the bank teller jobs that were lost.",
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