30 pointsby dcastm9 hours ago5 comments
  • latexr7 hours ago
    > So I asked Claude (…)

    > I asked Claude (…)

    > So I asked him (…)

    > (…) so I asked Claude (…)

    > (…) so I asked Claude (…)

    > Thanks, Claude.

    There doesn’t seem to be one bit of original research in the post, and no explanation of the data or conclusions. For example, what exactly does it mean that the papers “held up”, and how exactly did Claude reach that conclusion? If you don’t know, we can’t trust the data. If you do know, it should be in the post.

    As it is, the post is almost devoid of information. Everything was “I asked Claude”. There’s no value here (aside from some saved tokens) above just crafting a prompt and saying “here, ask your favourite model this question”.

    • dormento7 hours ago
      And it has a citation block at the bottom! Like anyone would want to cite this in a serious context.

      This must be a troll.

  • simonw7 hours ago
    Hacker News isn't a great place to discuss papers generally.

    Having a productive discussion around a paper requires at least reading and understanding the abstract, and the most successful content on HN (sadly) is content where people can jump in with an opinion purely from reading the headline.

    Anyone know of any forums that are good for discussing papers?

    • tptacek7 hours ago
      This is true across all research subject areas (I'm not especially tuned into LLM research but am to cryptography, which also happens to be a field that gets a lot of play on HN). I think it's just a function of how many people conversant in the field are available to talk about it at any one time.
    • gcr7 hours ago
      /R/MachineLearning is not bad

      But the gold standard is a small signal or discord community of like-minded, fairly tight knit friends. You may have to organize this yourself

    • gessha7 hours ago
      There are/were isolated communities on Discord around fast.ai, MLC, MLOps that talk papers more in depth but it’s hard to organize a community without commercial or academic incentive.
      • fc417fc8025 hours ago
        The difficulty is perhaps unsurprising given the time sink that is reading a given paper to any reasonably complete degree of understanding.
    • irishcoffee7 hours ago
      I just email the authors with questions. Surprisingly high response rate.
    • simonw3 hours ago
      ... and this thread over here seems to be proving me wrong already: https://news.ycombinator.com/item?id=47893779
    • gavinray7 hours ago
      Unironically, very niche subreddits.
    • breppp7 hours ago
      [flagged]
  • gessha7 hours ago
    With big commercial labs clamming up about training details, hardware requirements going up, and overall tired sentiment about AI in general, that’s not really surprising.

    ML research shows up on the front page if it shows splashy claims or results. Mundane cockroach papers that advance the field one nudge at a time aren’t that interesting for the average reader.

    Cool to see the sentiment visualized though.

  • 7 hours ago
    undefined
  • th0ma57 hours ago
    [dead]