AI Models Can’t Easily Hide Their Reasoning, and That’s Good for AI Safety
Photo by Engin Akyurt from Pexels Some of the most promising work in AI safety rests on a convenient accident: today’s reasoning models tend to think out loud. They narrate their way through a…
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