Comment by vessenes

Comment by vessenes 2 days ago

27 replies

I tried Kimi on a few coding problems that Claude was spinning on. It’s good. It’s huge, way too big to be a “local” model — I think you need something like 16 H200s to run it - but it has a slightly different vibe than some of the other models. I liked it. It would definitely be useful in ensemble use cases at the very least.

summarity 2 days ago

Reasonable speeds are possible with 4bit quants on 2 512GB Mac Studios (MLX TB4 Ring - see https://x.com/awnihannun/status/1943723599971443134) or even a single socket Epyc system with >1TB of RAM (about the same real world memory throughput as the M Ultra). So $20k-ish to play with it.

For real-world speeds though yeah, you'd need serious hardware. This is more of a "deploy your own stamp" model, less a "local" model.

  • wongarsu 2 days ago

    Reasonable speeds are possible if you pay someone else to run it. Right now both NovitaAI and Parasail are running it, both available through Openrouter and both promising not to store any data. I'm sure the other big model hosters will follow if there's demand.

    I may not be able to reasonably run it myself, but at least I can choose who I trust to run it and can have inference pricing determined by a competitive market. According to their benchmarks the model is about in a class with Claude 4 Sonet, yet already costs less than one third of Sonet's inference pricing

    • winter_blue a day ago

      I’m actually finding Claude 4 Sonnet’s thinking model to be too slow to meet my needs. It literally takes several minutes per query on Cursor.

      So running it locally is the exact opposite of what I’m looking for.

      Rather, I’m willing to pay more, to have it be run on a faster than normal cloud inference machine.

      Anthropic is already too slow.

      Since this model is open source, maybe someone could offer it at a “premium” pay per use price, where the response rate / inference is done a lot faster, with more resources thrown at it.

      • terhechte a day ago

        Anthropic isn't slow. I'm running Claude Max and it's pretty fast. The problem is that Cursor slowed down their responses in order to optimize their costs. At least a ton of people are experiencing this.

      • satvikpendem a day ago

        > It literally takes several minutes per query on Cursor.

        There's your issue. Use Claude Code or the API directly and compare the speeds. Cursor is slowing down requests to maintain costs.

  • gpm 2 days ago

    > or even a single socket Epyc system with >1TB of RAM

    How many tokens/second would this likely achieve?

    • chithanh 8 hours ago

      KTransformers now supports Kimi K2 for MoE offloading

      They claim 14 tps for the 4-bit quant on a single socket system with 600 GB RAM and 14 GB GPU memory.

    • [removed] 2 days ago
      [deleted]
    • kachapopopow 2 days ago

      around 1 by the time you try to do anything useful with it (>10000 tokens)

  • refulgentis 2 days ago

    I write a local LLM client, but sometimes, I hate that local models have enough knobs to turn that people can advocate they're reasonable in any scenario - in yesterday's post re: Kimi k2, multiple people spoke up that you can "just" stream the active expert weights out of 64 GB of RAM, and use the lowest GGUF quant, and then you get something that rounds to 1 token/s, and that is reasonable for use.

    Good on you for not exaggerating.

    I am very curious what exactly they see in that, 2-3 people hopped in to handwave that you just have it do agent stuff overnight and it's well worth it. I can't even begin to imagine unless you have a metric **-ton of easily solved problems that aren't coding. Even a 90% success rate gets you into "useless" territory quick when one step depends on the other, and you're running it autonomoously for hours

    • segmondy 2 days ago

      I do deepseek at 5tk/sec at home and I'm happy with it. I don't need to do agent stuff to gain from it, I was saving to eventually build out enough to run it at 10tk/sec, but with kimi k2, plan has changed and the savings continue with a goal to run it at 5 tk/sec at home.

      • fzzzy 2 days ago

        I agree, 5 tokens per second is plenty fast for casual use.

  • tuananh 2 days ago

    looks very much usable for local usage.

handzhiev 2 days ago

I tried it a couple of times in comparison to Claude. Kimi wrote much simpler and more readable code than Claude's over-engineered solutions. It missed a few minor subtle edge cases that Claude took care of though.

nathan_compton 2 days ago

The first question I gave it (a sort of pretty simple recreational math question I asked it to code up for me) and it was outrageously wrong. In fairness, and to my surprise, OpenAI's model also failed with this task, although with some prompting, sort of got it.

[removed] 2 days ago
[deleted]
moffkalast 2 days ago

Still pretty good, someone with enough resources could distil it down to a more manageable size for the rest of us.

Xmd5a a day ago

I asked it to give me its opinion on a mail I'm writing. 95% of its content is quotes from famous authors, and the 5% I wrote is actually minimal glue in-between.

All the models I tested, which includes Sonnet 4, DeepSeekR1, 4o and Gemini 2.5 understand this isn't your normal email and what I ask is literary/philosophical criticism, not remarks about conventions, formatting or how to convey my message in a more impactful way.

    Quick fix:
    - Replace half the commas with periods.
    - Let one metaphor bloom and then stop.
    - Read it aloud; wherever you inhale, insert a line break.
    
    Before:
    >And if the collective imagination is so seized by it, it's because
    we are already—not in some other world—but in this very life, in a
    state of socio-, photo-, and videosynthesis.
    
    After:
    >The collective imagination is seized.
    >We are not in another world.
    >We are in this life, in a state of videosynthesis.

Yes, this quote is by Baudrillard. None of the other models fixated on the fact that it’s an email (I only used the word once in the prompt). My gut feeling is that this reflects not so much a lack of intelligence as a difference in model personality. Here's what it replied when I shared Gemini's analysis. The point was to have it understand that:

    Gemini, second sentence: It is less a simple email than an intellectual
    and personal exploration still in the making.
Point deflected as soon as understood:

    **Gemini is polite and pedagogical; I’m going to be blunt.**
    
    1. **This isn’t an email, it’s a trip.**
       ...
    
    2. **The content is good, the format is not.**
       ...
    
    3. **Gemini is right about one thing:**
       ...
    
       * cut 80% of the material,
       * ask **one clear question**
       * put the rest in a separate Google Doc or PDF for posterity.
    
    4. **Brutal summary:**
       Keep your draft for yourself — it’s valuable. But for the email, write a new one in **three sentences**:
    
       * thank them,
       * recall the context in one line,
       * ask the question.
    
    You’ve already got Gemini’s answer to stroke your ego — now give me the short version you’re actually going to send.

The solution to sycophancy is not disparagement (misplaced criticism). The classical true/false positive/negative dilemma is at play here. I guess the bot got caught in the crossfire of 1°) its no-bullshit attitude (it can only be an attitude) 2°) preference for delivering blunt criticism over insincere flattery 3°) being a helpful assistant. Remove point 3°), and it could have replied: "I'm not engaging in this nonsense". Preserve it and it will politely suggest that you condense your bullshit text, because shorter explanations are better than long winding rants (it's probably in the prompt).