• sugar_in_your_tea@sh.itjust.works
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    13 days ago

    People have the capacity to track genres and whatnot, what’s so different about this?

    I think people could understand if explained probably, but unfortunately journalists rarely dive deeply enough to do that. It really doesn’t need to get too involved:

    • machine learning - tell an algorithm what it’s allowed to change and what a “good” output is and it’ll handle the rest to find the best solution
    • Bayesian networks - probability of an event given a previous event; this is the underpinnings of LLMs
    • LLM - similar to Bayesian networks, but with a lot more data

    And so on. If people can associate a technology with common applications, it’ll work a lot more like genres and people will start to intuit limitations of various technologies.

    • entropicdrift@lemmy.sdf.org
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      13 days ago

      What’s different is that most people will see it as “tech stuff” and mentally file it in a drawer with spare extension cords and adapters. They don’t care to deeply study or catalog things. Nerds care about that, and most people here, including me, are nerds, but most people are not nerds and consider learning to be a form of torture.

      People writ-large don’t care about proper genre labels either, they just kinda pick a vibe and guess off of it. Look at all the -core suffixed aesthetic names that cropped up in the last decade.