22 comments

  • sigbottle 31 minutes ago

    What's the hiring space and business strategy around all of these smaller AI labs? Its really cool that people like these guys get paid to optimize models and give them out for free (open source). Do a lot of these labs have forward deployed engineers doing integrations with customers who want local models? Is there a general shift towards the local model crowd?

  • kristianp 16 minutes ago

    Apparently Apple is "in talks" with the PrismML: https://www.cnbc.com/2026/07/14/apple-prismml-ai-compression...

  • simonw an hour ago

    The models themselves are showing up on Hugging Face here: https://huggingface.co/prism-ml/models

    I've tried a couple in LM Studio - the GGUF one and the MLX one - but neither worked there. Anyone else get them to work? Might be that LM Studio needs to upgrade their llama.cpp or MLX engines first.

  • erwan577 9 minutes ago

    The KV-cache memory usage also seems remarkably frugal, even at the full context length. That could make this model particularly useful in multi-agent coding workflows.

    I wish KV-cache memory usage and related optimizations were discussed more clearly in new model announcements and demos.

  • liuliu an hour ago

    The problem, of course, is if you run the UD_Q2 variant (Unsloth) which does only post-training, the number is pretty close to 1-bit model here and the 5% drop in tool-call is significant than it suggests in real-life use cases.

    • liuliu an hour ago

      You also need to pay close attention to BFCLv3 multi-turn result, that helps you to get a sense how frequently these quants will be in a doom loop.

  • syntaxing an hour ago

    For those curious about their demo, I’m pretty sure it’s using Locally AI (iOS only) that lmstudio acquired/aquihired a couple months ago.

  • luckystarr 14 minutes ago

    Tried it on Android and got "!!!!!!!!!!!!!" for answers.

  • syntaxing 33 minutes ago

    I don’t know if the llama cpp implementation is wonky (and only supports the binary version) but it’s a lot slower than 35B-A3B @ Q4_KM + MTP with CPU offloading.

    • pulse7 16 minutes ago

      Most probably not optimized yet for this model...

  • thomasjb 28 minutes ago

    I've been watching and waiting for this, interested to see how smart it is, as it fits with my interest of getting the smartest possible model running in 10GB of VRAM (RTX3060 that has to drive 2 monitors and run an llm)

  • alvatech an hour ago

    TIL that 1 bit models are actually 1.58 bit with three values +1, 0 and -1

    • NitpickLawyer an hour ago

      There's two variants of this (or, as the joke goes, for very big values of bit):

      Ternary Bonsai 27B uses ternary {−1, 0, +1} weights with FP16 group-wise scaling, giving a true 1.71 effective bits per weight.

      1-bit Bonsai 27B uses binary {−1, +1} weights with the same group-wise scaling, giving 1.125 effective bits per weight.

    • bensyverson an hour ago

      Yeah, it's an unfortunate convention from the very first "1 bit" model. But to be clear, Bonsai comes in both ternary and actual 1-bit variants.

  • erelong an hour ago

    I was trying Ornith 9B locally (it's up on Ollama) which claims:

    > Ornith-1.0-9B, which can be easily deployed on edge devices, matches or exceeds the performance of much larger models such as Gemma 4-31B and Qwen 3.6 35B.

    https://deep-reinforce.com/ornith_1_0.html

    Only tried it so much so far; it did a little better than Qwen 9B

    • liuliu an hour ago

      Note that 3.5 9B cannot do thinking (while 3.6 27B can, pretty effectively, quite verbosely).

    • janalsncm 33 minutes ago

      Is that a 1-bit LLM? I don’t understand the connection with this article.

      • erelong 3 minutes ago

        Oh, I don't actually know the difference if you want to explain it

        The title says it's 27B grade running on a phone and what I was comparing it to in my mind was a model that runs at 35B grade that could presumably run on a phone "better"?

  • xyzsparetimexyz an hour ago

    That's awesome. What's the largest model that could fit onto a single 16gb gpu at 1.125 effects bits per weight?

    • Catloafdev 22 minutes ago

      Doing some naive math, the F16 filesize is ~53.8gb, the 1-bit version is ~3.8gb, about 7% of the original size. The F16 size is roughly 2x param count, so that gives a rough ballpark of ~110B.

  • Havoc an hour ago

    This must be some sort of unpublished app?

    I can just see their image tool on the app store