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Given that AGI is what AIdevelopers all claim to be their end game , it's safe to say that scaling is widely seen as a dead end. The premise that AI could be indefinitely improved by scaling was always on shaky ground. Of course, the writing had been on the wall before that.
But quantum computing’s impact on achieving true superintelligence remains uncertain. “If you get a room of six computerscientists and ask them what superintelligence means, you’ll get 12 different answers,” Smolinski says. But they need help with truly transformative leaps.
Korotkiy ) 1951-present: Computerscientists consider whether a sufficiently powerful misaligned AI system will escape containment and end life on Earth. Foundational computerscientist Alan Turing in 1951. The message will arrive at its destination in 2029. Photo by S.
Most experts categorize it as a powerful, but narrow AImodel. Current AI advancements demonstrate impressive capabilities in specific areas. A key trend is the adoption of multiple models in production. This multi-model approach uses multiple AImodels together to combine their strengths and improve the overall output.
This means recognizing how social and historical factors influence data collection and clinical AIdevelopment. Computerscientists may not fully grasp the social and historical aspects behind the data they use, so collaboration is essential to make AImodels work well for all groups in healthcare.
Announcing the launch of the Medical AI Research Center (MedARC) Medical AI Research Center (MedARC) announced a new open and collaborative research center dedicated to advancing the field of AI in healthcare. This article delves into the details of these emerging approaches and their potential impact on AIdevelopment.
A future rogue AI with sufficiently high capabilities, that humans cannot shut down or coerce into following a safe goal, would pose a high risk of harming humans, even if such harm is merely incidental to its ultimate goal. The idea of licensing for AI has taken off in recent months, with support from some in industry.
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