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  "documentTitle": "2021 Air Street Capital The State of AI Report 2021",
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      "text": "Intenseye's computer vision models are trained to detect over 35 types of employee health and safety (EHS) incidents that human EHS inspectors cannot possibly see in real-time.",
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      "text": "Intenseye's computer vision models are trained to detect over 35 types of employee health and safety (EHS) incidents that human EHS inspectors cannot possibly see in real-time. The system is live across over 15 countries and 30 cities, having already detected over 1.8M unsafe acts in 18 months.\nComputer vision has digitized over 3,000 health and safety inspections that can now run 24/7. This AI-first approach has saved 1,460 hours of one Intenseye user, per year.\nIntenseye creates a collaborative workflow that connects AI, workplace analytics and behavior change to result in fewer injuries, reductions in insurance premiums, and an overall increase in company productivity.",
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