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  "documentTitle": "Megatrend 5 – Technology & Innovation",
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      "text": "As technology progresses, a novel \"brain-computer-interface\" (BCI) emerges. Taking advantage of electromagnetic flows (neural activities) in the brain, AI and probabilistic models can be used to transform thoughts into actions.",
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      "text": "Machines are increasingly complementing humans. Up to now, these interactions are mostly characterized by so-called \"Human-Machine-Interfaces\" (HMI). An example for HMI are robots in factories that help automate production and are commanded by humans. As technology progresses, a novel \"brain-computer-interface\" (BCI) emerges. Taking advantage of electromagnetic flows (neural activities) in the brain, AI and probabilistic models can be used to transform thoughts into actions. For instance, thinking of writing a word, neural activities can be collected and processed in such a way that the computer knows which word to write. A team of Meta Platforms/Facebook AI experts and engineers aims to deploy an interface able to type 100 words per minute merely by thought – an output far higher than an average typist. Car manufacturers such as Nissan are also working on BCI technology. Their aim is to steer cars with thoughts - i.e. brain-to-vehicle technology (B2V). Connecting the car directly to the brain reduces reaction time significantly, as muscle activation is omitted, reducing emergency braking by around 0.4 to 1 second – long enough to avoid accidents altogether",
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      "text": "Sources: Fraunhofer INT; Roth Institut; Nature; Roland Berger",
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      "text": "Brain-computer-interfaces could revolutionize human-machine interaction – Controlling devices and machines with thoughts is already possible",
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