3min chapter

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#154 - Rohin Shah on DeepMind and trying to fairly hear out both AI doomers and doubters

80,000 Hours Podcast

CHAPTER

Different Types of Interpretability in Machine Learning

Red teaming is a way of telling when an AI system has done something good or bad on an input that you actually gave it. It's more about, okay, well, what about the inputs we didn't give it? We should probably try and find specific inputs or situations in which the AI systems do bad things. And then once you find them, you're like, aha, I found that. I found these bad things. Maybe you then train against them in order to get rid of it,. In which case it would be called adversarial training. Okay, five different categories. What sorts of different backgrounds or interests or aesthetic preferences might lead someone to be enthusiastic about working on

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