Both algorithms have their perfect and imperfect versions. The imperfect versions can make wrong answers on some samples. If you have enough number of sufficient number of imperfect copies, at least one copy would give the right answer on every sample. But for one head or one parallel module, it can only make prediction correct on some subset of all the samples. So that's really interesting. Yeah, I'd say we are just scratching the surface.

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