Fuck this shit, why does every fucking thing need an LLM?

  • Facebones@reddthat.com
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    4 months ago

    I know at least with art, AI is starting to eat itself with the massive output of content. AI is getting trained on more and more AI content and according to what I read at least its starting to affect new outputs.

    Assuming thats true, it at least makes techie sense to me lol, I expect the same would happen to text based AI as well as more and more of the internet becomes exclusively AI generated.

    • FaceDeer@fedia.io
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      4 months ago

      The term “model collapse” gets brought up frequently to describe this, but it’s commonly very misunderstood. There actually isn’t a fundamental problem with training an AI on data that includes other AI outputs, as long as the training data is well curated to maintain its quality. That needs to be done with non-AI-generated training data already anyway so it’s not really extra effort. The research paper that popularized the term “model collapse” used an unrealistically simplistic approach, it just recycled all of an AI’s output into the training set for subsequent generations of AI without any quality control or additional training data mixed in.

      • Facebones@reddthat.com
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        4 months ago

        “Well curated”

        Say these claims are overhyped. Wouldn’t we still reach a point where it’s true, without having humans have to sit down and sift through what’s allowed and what isn’t?

        • FaceDeer@fedia.io
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          4 months ago

          Not necessarily. Curation can also be done by AIs, at least in part.

          As a concrete example, NVIDIA’s Nemotron-4 is a system specifically intended for generating “synthetic” training data for other LLMs. It consists of two separate LLMs; Nemotron-4 Instruct, which generates text, and Nemotron-4 Reward, which evaluates the outputs of Instruct to determine whether they’re good to train on.

          Humans can still be in that loop, but they don’t necessarily have to be. And the AI can help them in that role so that it’s not necessarily a huge task.