Pretty much the only thing I think AI could be useful for - forecasting the weather based off tracking massive amounts of data. I look forward to seeing how this particular field of study is improved.

Bonus points, AI weather modeling, for once, saves energy relative to physics models. Pair it with some sort of light weight physical model to keep the hallucinations at bay, and you’ve got a good combo.

  • chaosCruiser
    link
    fedilink
    English
    arrow-up
    6
    arrow-down
    3
    ·
    edit-2
    1 month ago

    About 4 years ago, this video showed that a ML model can be used to cut costs on physics simulations. It’s about time we did that with weather too.

    • RvTV95XBeo@sh.itjust.worksOP
      link
      fedilink
      English
      arrow-up
      4
      arrow-down
      2
      ·
      1 month ago

      It’s not just about cutting costs, but also improving accuracy. Physical simulations factor in a dozen or so weather conditions to predict outcomes. Machine learning can track thousands of conditions, drawing connections not realized in physical models, leading to much more accurate statistical models.

      • chaosCruiser
        link
        fedilink
        English
        arrow-up
        1
        ·
        1 month ago

        Yeah, that’s pretty impressive. I wonder if you could apply the same philosophy in other areas too. Instead of training the model with data produced in a simulation, you could just feed it real world data instead. Like, if you gave a bunch of stress-strain data to a model, could you make better predictions about the behavior of physical structures, such as bridges and towers.

          • chaosCruiser
            link
            fedilink
            English
            arrow-up
            1
            arrow-down
            1
            ·
            1 month ago

            Yes there are, but would it be possible to replace them with ML and get more accurate predictions?

      • futatorius@lemm.ee
        link
        fedilink
        English
        arrow-up
        2
        arrow-down
        1
        ·
        1 month ago

        Physical simulations factor in a dozen or so weather conditions to predict outcomes.

        Many more parameters than that.

        Machine learning can track thousands of conditions

        Scientists already know which ones are relevant. You’re not going find any big surprises there with an AI. Shotgun-style factor analysis has already been done to death. The price of baked beans doesn’t impact the wind direction in the Persian Gulf. It’s OK to not consider it.

        drawing connections not realized in physical models

        Again, it’s possible but unlikely. And you’d need an AI that could be queried to tell you what factors it considered, and most of them don’t work that way right now.

        Statistical models don’t become more accurate because you throw irrelevant parameters at them. But that’s how ML systems work.