Workaccount2 6 hours ago

An update to Gemini diffusion is one of my most eagerly anticipated AI releases. It released to mild fanfare (mostly because you needed to request access to use it), and there has been silence ever since.

Hopefully it's not more Google abandonware, because it was wicked fast and a delight to use

  • ACCount37 6 hours ago

    It's not a very promising direction because autoregressive LLMs still deliver better output quality per model weight, as a rule.

    Now, is it possible that a model can combine advantages of both? Combine fast generation and multidirectional causality of diffusion with precision, capabilities and generalization of autoregression?

    Maybe. This paper is research in that direction. So far, it's not a clear upgrade over autoregressive LLMs.

    • euleriancon 3 hours ago

      Diffusion LMs do seem to be able to get more out of the same data. In a world where we are already training transformer based LLMs on all text available, diffusion LMs ability to continue learning on a fixed set of data may be able to outperform transformers

      https://arxiv.org/abs/2511.03276

      • nbardy 2 hours ago

        There’s another paper that shows you can get the same effect by training auto regression on Fill in the middle data.

        So it’s more about the mask modeling objective than Diffusion.

    • ilaksh 3 hours ago

      4-5 times faster with minimal change in quality seems like a clear upgrade in efficiency.

      • zaptrem 2 hours ago

        Latency may be better, but throughput (the thing companies care about) may be the same or worse, since every step the entire diffusion window has to be passed through the model. With AR models only the most recent token goes through, which is much more compute efficient allowing you to be memory bound. Trade off with these models is more than one token per forward pass, but idk the point where that becomes worth it (probably depends on model and diffusion window size)

    • fragmede 2 hours ago

      > still deliver better output quality per model weight, as a rule.

      is it possible to quantify that and just have a linked slider for quality and speed? If I can get an answer that's 80% right in 1/10th the time, and then iterate on that who comes out ahead?

Bolwin 2 hours ago

That's bizarre because I would expect the opposite. For reasoning you go step by step, and when you're done quickly diffuse the answer

  • naasking 26 minutes ago

    Unification in logic programming isn't a forwards-only process, so there's no reason to expect deduction in an AI to proceed in a sort of procedural step by step fashion either. What ultimately matters is that all of the various deductions unify coherently in the end.

gdiamos 4 hours ago

Diffusion is favored by current GPUs .

Over time we seem to have a tendency to build models that are well matched to our machines

Alifatisk 6 days ago

I've tried dLLMs like Mercury and they look promising.