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#47 - Catherine Olsson & Daniel Ziegler on the fast path into high-impact ML engineering roles

80,000 Hours Podcast

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Amplification in Machine Learning

Language models in machine learning are starting to get surprisingly good, so you can train them to the point where they are saying things which sound like pretty reasonable text. The idea with a amplification, and we also have a related idea from a geoffrey irving, another researcher on the safety team around debate, is ye. So basically, imagine we're trying to build some kind of powerful question answering system. We want to train a system that gives good answers to this kind of thing. And then those sub questions get to be answered by an amel who also gets to think about it for ten minutes before giving their answer. This could potentially do a bunch of really nteresting reasoning

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