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volodia

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投稿

Next-Edit in Kilo, Powered by Inception Diffusion LLMs

blog.kilo.ai
2 ポイント·投稿者 volodia·15 日前·0 コメント

Mercury 2 on PinchBench: Diffusion LLM benchmarked on real OpenClaw agent tasks

inceptionlabs.ai
2 ポイント·投稿者 volodia·4 か月前·0 コメント

Mercury 2: Best-in-class speed-optimized intelligence at 1,200 tok/SEC

twitter.com
1 ポイント·投稿者 volodia·5 か月前·0 コメント

コメント

volodia
·5 か月前·議論
Thank you for the detailed feedback! I shared this already with the team.
volodia
·5 か月前·議論
This looks like an inference glitch that we are working on fixing, thank you for flagging.
volodia
·5 か月前·議論
There are many ways to do it, but the simplest approach is block diffusion: https://m-arriola.com/bd3lms/

There are also more advanced approaches, for example FlexMDM, which essentially predicts length of the "canvas" as it "paints tokens" on it.
volodia
·5 か月前·議論
Would love to hear about your experience. Send us an email.
volodia
·5 か月前·議論
Not imminently, but hard to predict where the field will go
volodia
·5 か月前·議論
There are few: fast agents, deep research, real-time voice, coding. The other thing is that when you have a fast reasoning model, you spend more effort on thinking in the same latency budget, which pushed up quality.
volodia
·5 か月前·議論
We agree! In fact, there is an emerging class of models aimed at fast agentic iteration (think of Composer, the Flash versions of proprietary and open models). We position Mercury 2 as a strong model in this category.
volodia
·5 か月前·議論
That is also our view! We see Mercury 2 as enabling very fast iteration for agentic tasks. A single shot at a problem might be less accurate, but because the model has a shorter execution time, it enables users to iterate much more quickly.
volodia
·5 か月前·議論
You can think of Mercury 2 as roughly in the same intelligence tier as other speed-optimized models (e.g., Haiku 4.5, Grok Fast, GPT-Mini–class systems). The main differentiator is latency — it’s ~5× faster at comparable quality.

We’re not positioning it as competing with the largest models (Opus 4.5, etc.) on hardest-case reasoning. It’s more of a “fast agent” model (like Composer in Cursor, or Haiku 4.5 in some IDEs): strong on common coding and tool-use tasks, and providing very quick iteration loops.
volodia
·5 か月前·議論
Thanks for trying it and for the thoughtful feedback, really appreciate it. And we’re actively working on improving quality further as we scale the models.
volodia
·5 か月前·議論
Thank you for your patience. We are working to handle the surge in demand.
volodia
·5 か月前·議論
Just to clarify one point: Mercury (the original v1, non-reasoning model) is already used in production in mainstream IDEs like Zed: https://zed.dev/blog/edit-prediction-providers

Mercury v1 focused on autocomplete and next-edit prediction. Mercury 2 extends that into reasoning and agent-style workflows, and we have editor integrations available (docs linked from the blog). I’d encourage folks to try the models!
volodia
·5 か月前·議論
I’d push back a bit on the Pareto point.

On speed/quality, diffusion has actually moved the frontier. At comparable quality levels, Mercury is >5× faster than similar AR models (including the ones referenced on the AA page). So for a fixed quality target, you can get meaningfully higher throughput.

That said, I agree diffusion models today don’t yet match the very largest AR systems (Opus, Gemini Pro, etc.) on absolute intelligence. That’s not surprising: we’re starting from smaller models and gradually scaling up. The roadmap is to scale intelligence while preserving the large inference-time advantage.
volodia
·5 か月前·議論
Co-founder / Chief Scientist at Inception here. If helpful, I’m happy to answer technical questions about Mercury 2 or diffusion LMs more broadly.
volodia
·8 か月前·議論
There is also this one that was released in October: https://github.com/kuleshov/char-mdlm
volodia
·昨年·議論
the LLaDA paper is a scaled-up version of this paper; they cite it as an anonymous ICLR submission
volodia
·昨年·議論
Great question! The model can more efficiently leverage existing GPU hardware---it performs more computation per unit of memory transferred; this means that on older hardware one should be able to get similar inference speeds as one would get on recent hardware with a classical LLM. This is actually interesting commercially, since it opens new ways of reducing AI inference costs.
volodia
·昨年·議論
Yes, we plan to be releasing a tech report soon. We are not open sourcing the models at launch time, but we have a roadmap of future releases in which we hope to make some of our models accessible to the research community.
volodia
·昨年·議論
That's a good point. In this context, we've been using "commodity GPUs" to refer to standard Nvidia hardware, in contrast to specialized chips like Groq and Cerebras. While these chips also achieve fast speeds, they are not nearly as ubiquitous as Nvidia GPUs. We think that matching their performance on standard Nvidia hardware can make AI much more affordable. We also support any GPUs, not just H100's.

We're going to be releasing a tech report soon, stay tuned!
volodia
·昨年·議論
Good question! We are not open sourcing the models at launch time, but we have a roadmap of future releases in which we hope to make some of our models accessible to the research community.