In biology you have to pick how zoomed in do we want to get for the purposes of this particular analysis. In mechanistic interpretability research I think it's mostly a question of like how ambitious the research is. There are parallels between the development process of complex systems inside neural networks that are neural networks essentially and the like evolution process that also training on a very stupid like goals function but then gave rise to incredibly complex behaviors along the way.

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