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Qwen 3.6 27B is the sweet spot for local development

748 points12 hoursquesma.com
iagooar10 hours ago

I love my MacBook Pro M5 128GB RAM and I love qwen3.6.

BUT DO NOT buy this MacBook if you plan on doing serious coding using local LLMs with it. The reason is simple: your fingers will burn and your head will explode from the noise.

Running any kind of sophisticated job on the very laptop you are using is just not viable. Sure you can use it in clamshell mode, but forget touching it while working with AI coding or agents.

If you want to run Qwen3.6 27B / 35B at its best, get a MacMini M4 with 64GB of RAM and put it in the basement - or at least a few meters from your desk. Connect to it over LAN or Tailscale. The MacMini will also cost you almost 1/3 of the MacBook Pro.

Thank me later.

astrostl6 hours ago

> MacBook Pro M5 128GB RAM

614 GB/s of memory bandwidth

> MacMini M4 with 64GB of RAM

273 GB/s of memory bandwidth (also only currently available with 48GB)

When it comes to inference speed, you want your model to fit in memory, and then to have as much memory bandwidth as possible. In this case a hypothetical Mini with 1TB of memory would still be over 2x slower with 27-35B models.

And FWIW I have an M4 Max MBP 128GB that I keep on a Roost laptop stand, with a separate keyboard/mouse/video. It does fire up the cooling jets when running local LLMs, but stays within tolerance for me on noise. I haven't heat-tested it on longer runs, but I imagine the risen airflow helps a ton.

bigyabai5 hours ago

> When it comes to inference speed, you want your model to fit in memory, and then to have as much memory bandwidth as possible.

This is only true when your GPU isn't bottlenecked building a KV cache, which it usually will be on Apple Silicon. The Achilles heel of the M-series chips are their weak, SOC-grade GPU that holds back the Max and Ultra models from having interactive TTFTs on larger models and contexts.

jasonjmcghee1 hour ago

I'm surprised no one has else has mentioned - low power mode.

With no speculative decoding, using high power mode, I get 80 t/s on 35B A3B - and it gets hot and spins up. On low power mode I get 38 t/s - no fans, cool to warm laptop.

If you currently don't use speculative decoding and you start using it, it can nearly offset the difference between high and low power, and it's night and day experience.

I almost always keep my laptop on low power mode.

anon37383920 minutes ago

Can you mention what inference stack you're using? I've tried MTP several times with that model and it always seems to significantly cut my token generation speed from ~60 tokens/sec to ~40 (M3 Max).

SwellJoe9 hours ago

I opted to buy a normal 32GB laptop for this very reason. I know how loud and hot the GPUs in my desktop run when running even smallish models like Qwen 27B or Gemma 4 31B (which is a better model for most than Qwen 3.6, despite the benchmarks). I also have a Strix Halo which doesn't get loud, because it has a single huge fan, but it does get hot. So, there's no way a laptop could work as hard as models make them work, and not be unbearable. Tiny fans trying to remove all that heat? They gotta be screaming. No reason to spend all that money on a laptop that I couldn't realistically make use of. I do run a lot of VMs on my desktop, but I can get to those on a VPN.

It's a nice idea to run a model on a laptop so you can work anywhere...but, that's a job for models in the cloud. Not much data has to traverse the network, so it's not a big deal. Or one could also setup a VPN so you can reach a self-hosted model on a big box at home for things that require data privacy.

All that said, there are models that work great on very small devices for some tasks and won't work it to death. Gemma 4 12B QAT 4-bit runs on a 16GB device, maybe even smaller, including a tablet. It's the best self-hostable vision model I've tested for my purposes (categorization, identification, labeling, type stuff), beating much larger models. It's also a decent conversationalist with good prose but it doesn't know much of anything (not a lot of the world fits in 7GB), so it needs search if you want to use it for research. It's a pretty good tool user. I definitely wouldn't want to use it for code, though, beyond very simple stuff.

girvo8 hours ago

Gemma is better than Qwen at everything except coding, in all my evaluations. Which is a shame because that is what I use them for!

UncleOxidant7 hours ago

It would be great if the Gemma folks would release a code-focused model. Probably won't happen, but it's fun to dream.

SwellJoe6 hours ago

The Ornith folks say they're doing that, but haven't released the Gemma-based 31b yet (https://github.com/deepreinforce-ai/Ornith-1). But, also, the Qwen-based 35b MoE Ornith version performs worse than Qwen 3.6 and Qwen AgentWorld on my benchmarks (which are focused on finding security bugs, so not exactly the same as agentic coding, but closely related skills).

That said, the reason they're able to release Ornith branded post-trains of both Gemma and Qwen is because they're open weights under a friendly license. Someone, not just Google, could make a coding focused Gemma post-train. I don't think it's actually much weaker than Qwen 3.6 for coding; Gemma 4 31b outperforms Qwen 3.6 27b by a wide margin on security bug hunting (at least for the specific bugs in my benchmarks, which are mostly relatively difficult bugs from the Mythos-reported bugs).

I'd really love to see a bigger MoE from Google, though. A 70b or 120b MoE would likely be super fun.

ekianjo6 hours ago

gemma is also worse for tool calling. not just coding

+1
satvikpendem4 hours ago
andai9 hours ago

> The reason is simple: your fingers will burn and your head will explode from the noise.

So, just buy a mac mini and put it in the other room? ( Like everyone was doing in February? :)

I've been running coding agents on my laptop in yolo mode for the past half year or so (though mostly not local ones, laptop too slow!) and the way I'm doing that without terror is that I just gave them their own Linux user "agent". They're free to nuke their homedir /agent, and they can't touch (or even read) mine.

There's some slight ergonomics issues (I need to sudo into the user to do anything, but I set up an alias for it), sometimes I get issues with permissions or ownership (gave up on "sticky bits" and just made a function I can run once a day when it breaks).

There's enough hassle that I wish I just had a dedicated machine for it, and then I'd just give them root on it. (For giggles I gave claude root on a $3 VPS and that's going just fine...)

But yeah after months of trial and error I reinvented "just buy a mac mini" from first principles...

iagooar9 hours ago

Just buy a Mac Mini really is good advice if you want to get into real, always-on convenient agentic work.

Soon it is going to be good even for coding using local LLMs. Until then, just run API models on it for coding, local LLMs for "knowledge" work or daily driver agent like Hermes.

marcuskaz9 hours ago

Except they're not available, 3-4 month wait time.

KiwiJohnno5 hours ago

I ordered a mac mini m4 pro with 48 gb of ram a couple of weeks ago. Apple said 8-9 weeks.

+1
iagooar8 hours ago
roadside_picnic7 hours ago

In general if you're setting up a local LLM you should assume it's going to be primarily working as a server and talking to various clients. I use my MBP, but that's because I don't travel much anymore so it can happily work as a server at all times. With the right agent setup you can probably manage most things from your phone even if you don't have a seperate machine to use as a client.

I have an older laptop I run a hermes agent on backed by an API based open (non-local) model and Macbook Pro M4 for running another model locally (also using hermes). The agents have a Mattermost (open source version of slack) server they run and I run Mattermost on my phone so I can talk to them and task them with things. In fact, it was through the hermes WhatsApp endpoint that I got the first agent (non-local) to setup the Mattermost server and unboard the second agent (local mbp).

Then I can just chat with them through Mattermost when I need work done. Whenever I need something done I just hope on the Mattermost server and chat with them. I've had them build me multiple research reports (the fully local agent did awesome at this), learn how to use Stable Diffusion on my desktop to generate images, install and perform maintenance on various local services I run (including Open WebUI).

jtbaker6 hours ago

Nope, have both these machines, can confirm the M5 max blows the M4 mini away. It does get hot, but I use it mostly with an external monitor and keyboard. Conceptually I like the headless model better with a workstation, but work was buying the M5 and can't get it in any other form factor at the monute.

827a5 hours ago

Apple does not sell a 64GB variant of the M4 Mac Mini. IIRC they never have; its always capped out at 48GB.

If you were planning on getting an M5 128GB; just get a DGX Spark (~$4500) or a 5090-equipped machine (~$4500) plus a Macbook Air (~$1500). You'll come in below the M5 Max 128 pricing (~$6700+ USD) and be happier for it.

dd8601fn2 hours ago

I'm using a 64GB M4 Mac Mini.

They pulled them a month or two ago, right after I bought it.

angoragoats5 hours ago

The Mac mini was available with 64GB of RAM literally 4 days ago; the option was discontinued on June 25th.

dgacmu4 hours ago

That's incorrect, I have one on my desk right now. They've stopped selling it now, but I got one a year and a half ago:

> Apple M4 Pro chip with 14‑core CPU, 20‑core GPU, 16-core Neural Engine 64GB unified memory 2TB SSD storage 10 Gigabit Ethernet Three Thunderbolt 5 ports, HDMI port, two USB‑C ports, headphone jack Accessory Kit $2,649.00

swang10 hours ago

I have an M4 Max and when I was trying out local LLM work with pi it has probably felt like the hottest I've ever felt any kind of Macbook be. I could feel the radiated heat off it even a few inches away. Honestly felt hotter than any Intel Macbook I've used. Because of that I stopped as I didn't want to harm my laptop in case I need to hold it for 10 years due to all the supply issues/price increases.

dimitrios19 hours ago

I tried to run it on a M4 Air for shits and giggles.

After about 1 minute the entire machine basically bricked and I had to hard reset :D

somewhatrandom97 hours ago

Try using DwarfStar 4 and use the --power flag: https://github.com/antirez/ds4#reducing-heat-power-usage-and...

boomskats7 hours ago

Can you run Qwen 3.6 27B on antirez/ds4 now? I thought it was all about the DeepSeek models.

somewhatrandom97 hours ago

No, I don't think Qwen, but I believe he may try and put some version of GLM in it.

amatecha3 hours ago

I wonder if that's why there is such a good selection of 128gb M5 MBP's on the Apple Certified Refurbished store lol https://www.apple.com/ca/shop/refurbished/mac/macbook-pro-12...

sixothree13 minutes ago

Wait. Did they raise their prices a second time?

acters10 hours ago

Would the new upcoming AMD AI ryzen halo desktop be a better value offer? or dgx spark?

You would have to get a third party reseller/scalper or refurbished mac mini to get 64gb of ram ever since apple stopped selling it.

girvo8 hours ago

My GB10 Spark-alike is absolutely amazingly fun… but it is not cost effective. Step 3.7 Flash is shockingly capable (IQ4_XS and used for web dev mainly), but it cost me $6800 AUD. They’re even more expensive now. The numbers just don’t make sense: with proper triple head MTP I can get it up to ~40tk/s decode and it runs at around 1000+ tk/s prefill.

$6800 is a lot of API credits for GLM, for example, on any provider you want to use.

Now being able to run models uncensored and with privacy has value! But the cost for these is rough today.

I still am going to buy a second one haha

c7b9 hours ago

My 2c: you don't need the Strix Halo desktop, the chip comes in many rigs, most of them cheaper, the performance difference isn't worth it. It used to be half the price of a DGX Spark or a Mac with 128GB RAM. If you can still find it at that price I'd say it's the best bang for your buck. Otherwise, Macs have 2-3x the memory bandwidth of the DGX Spark, depending on the chip, so I'd prefer them. Unless you're planning on building a cluster. The DGX Spark has two 100GB/s connectors, ideal for clustering. But I haven't checked what else you could get for the price of two DGX Sparks.

brandensilva3 hours ago

Thoughts on a M5 Ultra 768GB if it drops? What's the price to make it worth it for you over a spark cluster?

I'm wanting to run Kimi 2.6/2.7 GGUF on it and just slap it in the server rack, but trying to decide if a spark cluster makes more sense.

lee_ars9 hours ago

I'm currently fiddling with a DGX Spark and Qwen3.6-35B-A3B (specifically Qwen3.6-35B-A3B-NVFP4 under vLLM, with EAGLE3 speculative decoding via eagle3-dogacel-vllm), and it's pretty okay in terms of smarts. The speed is relatively usable at about 50 tok/sec with a 256k context window, and it's definitely smart enough to one-shot some basic coding tasks. I had it doing reverse engineering/disassembly of some ancient MS-DOS assembly language games from the 80s and it handled the task well and produced good outputs.

But it's also really easy to trip up. I fed it some of my Ars pieces and asked it to analyze themes and composition, and it got into a looping argument with me over how it was unable to analyze "my" writing because "the user cannot be the article author, the user is the user, the user did not write the article, the article author wrote the article." I was utterly unable to convince it that I was in fact me.

Qwen3.6-35B-A3B hums along at about 50GB of RAM used with --gpu-memory-utilization=0.42. I haven't tried Qwen3.6-27B (I'd likely grab Qwen3.6-27B-FP8, I think), but I'm curious to see if it makes much of a difference.

coder5436 hours ago

Compared to a dynamic quant like Unsloth's UD-Q4_K_XL, which keeps some important parameters in higher precision, a basic NVFP4 quant seems to do a lot more damage to the model unless it is carefully calibrated.

I would recommend using llama-server if you're just on a single Spark. You get access to dynamic quants like that more easily, the performance is not that different from vLLM most of the time these days, and it is much faster and easier to switch between models.

As far as intelligence goes, Qwen3.6-27B is much smarter than the 35B-A3B model, but that's also not the sort of thing to argue with an AI model about in the first place. Just open a new chat and try again.

Gemma-4-31B is not as good at agentic use cases as Qwen3.6-27B, but it is a fairly balanced model overall, and worth trying out too. Its MTP can nearly triple the performance of the model, where the benefits of MTP or Eagle seem more limited for Qwen3.6-27B in my testing, maybe doubling the speed.

cpburns20097 hours ago

Looping is a common problem with the Qwen models. I've had good luck using --repeat-penalty=1.1 with llama.cpp and 27B. vLLM should have a similar option.

rnxrx8 hours ago

There are also nvfp4 quants of Qwen 3.6 27/35 floating around. I've done benchmarks of both and the quality difference vs fp8/bf16 was barely notable. Honestly the nvfp4 capability is the most interesting feature of the Spark (at least for me).

anon3738397 hours ago

I use Qwen 3.6 35B-A3B constantly, but I don’t see the type of behavior you mentioned. I’m using Unsloth’s Q8_K_XL quant.

gnerd006 hours ago

`llama-server` looping mitigations --repeat-penalty something greater than 1.0, set reasoning/thinking OFF explicitly, prefer a gguf with more than 4bit quant

pkroll9 hours ago

Check the LLM benchmarks once it's out: it's such a common use case for these kinds of machines, you won't be waiting long.

c7b8 hours ago

This. Do consider local LLMs, but set aside a dedicated machine for it. Connect via VPN or reverse proxy. If it's not a Mac them I'd also put a server distro on it. No need for a desktop environment, save your RAM.

tedivm8 hours ago

I have a Linux box with two 3090s and it's been great for running Qwen3.6 27b. I lowered the power on each card down to 250w, and then built a small ducting/fan system to vent the waste heat outside. The machine is pretty much silent, and I'm still getting 110 tokens per second out of it for coding tasks.

https://github.com/tedivm/qwen36-27b-docker

trollbridge3 hours ago

Or just buy an R9700 and put it in the basement?

seunosewa2 hours ago

You can get some work done by using low power mode even when plugged in, and making your fan start running when the temps just start to rise (maybe 40 degrees. Use a third party fan app to set it up

geophile9 hours ago

That's exactly what I'm doing -- Mini M4 Pro 64GB, qwen3.6.

My hearing is not great, but I think I would have noticed the fan, and I have never heard it. In fact, I had to google to find out if it even has a fan.

trollbridge3 hours ago

I'm still kicking myself for buying a 32GB M1 Max Studio two years ago when it wouldn't have been that difficult to get a 64GB instead.

Arch-TK6 hours ago

It's okay, completely wrong thread for this statement, but I wouldn't voluntarily use current MacOS (no idea if the older variants weren't terrible) over anything but ssh. Worse than Windows 11.

amatecha3 hours ago

"macOS" (or however they spell it now) is pretty bad, but I'm not sure it's possible Apple could ever possibly produce an OS as bad as Windows 11 lol, it's really surprising to me to see someone suggest it's somehow actually worse?! How many times has an Apple OS wiped your hard drive or otherwise been completely borked from a forced update? I know multiple people personally who have experienced this with Windows 10/11, not once with a Mac. Just that alone is like the end of the argument for me, ignoring all the shockingly brutal UI problems.

braebo5 hours ago

I could not disagree more.

toephu28 hours ago

I just checked apple's website and configured them:

Mac Studio: Ships: 16–18 weeks

Mac mini: Ships: 10–12 weeks

xd19369 hours ago

Apple does not currently sell a Mac Mini with 64GB RAM.

iagooar9 hours ago

Get a 2nd hand one. I was lucky enough to get a new one first, last week I get a 2nd hand one in order to run one of my Hermes minions at work.

stevenaenns9 hours ago

how many tokens/s generation do you get?

iagooar9 hours ago

Ballpark 25-30 tok / sec on the Mac Mini Pro M4 + qwen3.6 35B. The generation itself is good, prefill is known to be slow on any Apple M-chip architecture. It is really decent.

angoragoats5 hours ago

They did until 4 days ago, so I’d forgive the OP for not knowing that the option was discontinued.

ako1 hour ago

You could use an external keyboard?

Arubis10 hours ago

Don't forget that your OLED screen will start to color-shift as the heat cooks the panel!

manmal10 hours ago

There is no MacBook Pro with OLED (yet).

Arubis10 hours ago

My mistake on tech; it’s a beautiful display. Alas, I speak from experience when it comes to the thermally-caused color shift. Hopefully it’ll be AppleCare covered.

overgard8 hours ago

I'm running an M5 Max 128GB with Qwen 3.6 and unreal engine in the background and it seems to be ok for me. Quite a power drain if it's not plugged in but I haven't seen any thermal issues.

oceanplexian10 hours ago

If you want to do coding with a local LLM your best bet is a 6 year old Nvidia 3090 which is substantially more powerful than the highest end overhyped Apple product for 1/5th the price.

chorizo9 hours ago

That’s 24GB VRAM. Not enough to run a 27B model at a useful quant+context size.

nsbk9 hours ago

I beg to differ. Have a look at this repo with single/double 3090 optimized configs for Qwen and Gema models: https://github.com/noonghunna/club-3090

sanderjd9 hours ago

Yeah seems to me like the mac studios with the unified memory architecture are genuinely good bang for the buck at the moment, because of this memory size consideration?

SkitterKherpi9 hours ago

You can run 8bit 27B models at 24GB, it's definitely enough for the model size.

+1
SwellJoe8 hours ago
+1
bityard9 hours ago
barbacoa7 hours ago

I'm running qwen 3.6 27b at 8bit quantization and 262k context. It takes 53gb of vram on my system.

+1
jnovek9 hours ago
angoragoats5 hours ago

So buy two.

iagooar9 hours ago

My problem is I won't accept anything lower than the 96GB the RTX Pro 6000 Blackwell has. My dream is a workstation with 2x Pro 6000 to run DeepSeek v4 Flash comfortably, possibly qwen 3.6 / ornith on turbo speed.

But man, I have never purchased a computer which is more expensive than a decent family car.

d0gsg0w00f3 hours ago

I had this dream too. My 2xDGX Sparks arrive in my reality on Monday.

jnovek9 hours ago

An M1 Ultra has 800gbps unified memory. It’s nothing to do with Apple, it’s their microarchitecture. They’re just about the only game in town with high-bandwidth memory if you want >24GB (for less than $10k, anyway).

murderfs7 hours ago

A 5090 gets you 32GB with 1.8 TB/s of memory bandwidth for ~$4k, RTX A6000 gets you 48GB at 768 GB/s for ~$3.5k, 2x 3090 gets you 48GB for $2000 or so, and if you're willing to go into the wilderness, there are much cheaper options like the AMD MI50.

jtbaker3 hours ago

The RTX 5000 Pro 72GB seems like kind of a sleeper to me, and sips < 300W of power, approx 1/2 that of its big bro the RTX 6000. Kind of dream about installing it in a 10" rack, it seems like it might be able to work? @jeffgeerling you out there?

https://www.microcenter.com/product/709071/pny-nvidia-rtx-pr...

angoragoats5 hours ago

Yeah this is just not the case at all; a 5090 or any of the recent nvidia workstation cards all fit this criteria.

Also, while memory bandwidth is important, it isn’t the only consideration. Apple’s architecture has memory bandwidth equal to a mid-range consumer GPU, but its GPU speed is much, much worse than, say, a 5080 or 5090. This translates into e.g. much slower time to first token on Mac systems compared to dedicated GPUs.

dheera8 hours ago

32GB V100

t0mpr1c31 hour ago

Meh. I'd rather have 2x RTX 5060 Ti.

cosmic_cheese9 hours ago

They really need to release those updated Studios already.

DennisP7 hours ago

Since they've reduced the max RAM on current Studios from 512GB to 96GB, I'm not holding my breath.

Matl9 hours ago

> If you want to run Qwen3.6 27B / 35B at its best, get a MacMini M4 with 64GB of RAM and put it in the basement - or at least a few meters from your desk.

Can confirm this works rather well, most things that integrate with LLMs, (agents, editors), support providing a remote (LAN) URL for Ollama, LM Studio etc.

But you do need a fast LAN connection, otherwise working with agents will be a pain.

Retr0id9 hours ago

> you do need a fast LAN connection

Huh, how come? Low-latency I can understand, but I was under the impression that token throughputs were still barely exceeding dialup bandwidths.

iagooar9 hours ago

I disagree LAN connection is the bottleneck. I do even work with it remotely via Tailscale on shaky hotel WIFI and it works fine (or as fine as any other API-based model).

cmgbhm9 hours ago

A local model on my m2 made me come to that conclusion but I definitely was having “that config is $2k more” regret. Thanks for posting this!

bilekas7 hours ago

Can you define "serious programming"? Because I use it to implement things I COULD go and figure out like algorithms or test generation or evaluations etc, the "serious" programming I tend to do myself. That is what I'm paid for.

overgard5 hours ago

Serious programming is using as many agents and loops as possible because anthropic needs you to spend more on tokens

SkitterKherpi10 hours ago

I am considering getting something like NVIDIA's RTX Spark when it comes out, though even that will be limited to 128GB.

jazzyjackson10 hours ago

They’ll sell you a bundle, either a pair or a quartet so you can have 256 or 512GB over a 400GB/s network link

I can’t figure out when it makes sense to pay 10k up front for a quantized Llama 3.1 but it’s an interesting option

c7b8 hours ago

You could fit a Q4 GLM5.2 in 512GB and still have some space for context (372-475GB for the model): https://unsloth.ai/docs/models/glm-5.2

But yeah, there's a bit of a dearth of models that could fully utilize memory in the 128-256GB bracket at the moment. But things move so fast in this space, I wouldn't base my decision on a generation of models that's just a few months old.

rnxrx8 hours ago

It depends on what's meant by "fully utilized" but fp8 quants of Nemotron 3 Super, the latest Minimax, Cohere A+ and the Mistral small and (especially) medium variants all sit in that 128-256 category, especially with full context or even moderate concurrency. In fact, in a 192GB environment I work with (Hopper GPUs, fwiw) I was pushed into using 4-bit quants with a couple of those to get the model working with a reasonable context window (..but 256 would have rocked out).

girvo8 hours ago

Not Llama 3.1, but Step 3.7 Flash is one of the few new high quality models in this size bracket. DeepSeek v4 Flash too

SkitterKherpi9 hours ago

10k is rather a lot yes. For LLMs you can use a lot of tokens with 10k with less hassle without the machine (and also it's not like electricity is free), but for some other things like video models 10k would get burned very fast. I am looking for something more in the 5k range though.

awesomeusername10 hours ago

It's out, I'm daily driving one. It's great

SkitterKherpi9 hours ago

I assume you have the dgx spark? At this point I am not 100% on the difference other than Linux and Windows. The RTX spark should come around Q4, unless I am mistaken.

vikingcat9 hours ago

Are you running a local LLM on it? Did you buy a whole laptop?

throwaway2404034 hours ago

No, buy a framework desktop.

stared7 hours ago

Yes, it gets really hot really fast.

As much as I was tempted to use it on longer projects, I had some reservations about whether it would put too much strain on my MacBook.

Abishek_Muthian2 hours ago

>Sure you can use it in clamshell mode

Wouldn't this damage the MBP display?

My RTX laptop has air intake underneath the keyboard and clamshell mode is surely a recipe for disaster; I've taken numerous measures to ensure that the laptop doesn't stay awake when the lid is down.

jarjoura9 hours ago

TBF, I just recently picked up this same model, and it's reminding me of the last gen Intel i9 MBP. Just visiting any non-basic website spins up the fans and battery life isn't great either. Yes, this thing is fast, but damn it gets hot just using it for normal tasks.

Still, I don't agree. I think this machine is meant to use local models. You just have to wear pants if you want to keep it directly on your lap. I rarely use it that way anyway. I prefer it plugged into an external display and comfortably sitting on a laptop stand.

y1n07 hours ago

Is there something wrong with the m5s? I have an m4 pro and I’ve never heard the fan on it. I don’t do much with local llms, but I naturally use the web and play games (windows games at that with wine/crossover).

inventor77777 hours ago

That seems very unusual for modern Apple Silicon. Our family has:

- M3 Pro MacBook Pro 36GB

- M2 Pro MacBook Pro 16GB

- Mac Studio M4 Max 48GB

and I have not heard the fans on any of them with normal use. The only time I've ever heard automatic fans was when I was using a local 12B model on the M3 MacBook Pro, and when running 70B models on the Studio.

You should consider checking Activity Monitor and making sure that the usual suspects are not causing issues with sustained high CPU. And you can use an app like [Stats](https://mac-stats.com) if you want to see that info while actively using the computer.

lowbloodsugar5 hours ago

This is not normal. You have a broken Mac. Make an appointment.

verdverm10 hours ago

Get an OEM Spark instead, mine are silent and can fit 2 qwen/gemma at 8bit or give you room for a bunch of other, smaller models (embed,rerank,etc)

seanmcdirmid9 hours ago

What sort of M5 are you running? A max? MacMini's don't offer max CPUs.

iagooar9 hours ago

M5 Max. But I also have a MacMini M4 Pro 64GB. Qwen3.6 runs on the M4 just fine - sure the M5 is at least 2x the speed. If Apple launches a MacMini with an M5, I will be the 1st one to get it.

kristianp9 hours ago

You're only going to get an incremental improvement with an M5 Pro mini compared to an M4 Pro mini. Memory bandwidth goes from 273GB/s to 307GB/s, about 12.5% improvement for LLMs.

freehorse7 hours ago

M5's have the neural accelarator that boosts prefill speed a lot. But token generation itself will not change that much, that's true.

iagooar9 hours ago

I thought they might ship an M5 Max version, but you are probably right.

codazoda8 hours ago

Today the Mini tops out at 48GB. Gotta go to the Studio to get 64GB.

aurareturn8 hours ago

Don't buy the Mini or Studio. Both have the M4 which lacks the Neural Accelerators, making prompt processing ~3-4x slower.

mortenjorck8 hours ago

I assume those don't just work automatically with an off-the-shelf gguf. What do you need in your local inference stack to take advantage of M5's neural accelerators?

aurareturn8 hours ago

They do work with llama.cpp and MLX automatically.

busymom010 hours ago

Also look into buying the Mac mini refurbished from Apple. They come almost brand new, same warranty and you save money.

julianlam3 hours ago

Very surprised an Apple device can have some atrocious ventilation design.

I'm running this model on a Framework 13 and the chassis barely heats up at all while running full tilt.

Fr0styMatt889 hours ago

What kind of speed in tk/s do you get with the MacBook?

iagooar9 hours ago

qwen3.6 27B MLX 8bit -> 15 tok / sec. A bit slow but it is a delightful model to use, and smart too.

qwen3.6 35B A3B MLX 8bit -> 85-90 tok / sec! It is impressively fast and roughly 90% as good as 27B (in my opinion).

samtheprogram8 hours ago

Are you sure you're running it with MLX?

2Gkashmiri4 hours ago

How is Mac studio 32gb or 96 gb ram one?

singpolyma38 hours ago

With 128 you can run 122b ;)

gigatexal7 hours ago

Same. And your M5 has acceleration that I don’t with my M3 max. I can’t do anything local it gets hotter than an Intel Mac trying to run docker from back in the day.

dzonga8 hours ago

why not buy one of those "a.i" desktop kits being sold by Nvidia/AMD and just connect to them via network ?

to me that's cheaper than paying an LLM provider such as Anthropic spreading FUD around open weight models & more sustainable too.

Gigachad6 hours ago

It's still currently way cheaper to pay open router to run qwen for you. And you have the option to use much bigger better models like DeepSeek v4 flash.

ActorNightly9 hours ago

>If you want to run Qwen3.6 27B / 35B at its best, get a MacMini M4 with 64GB of RAM and put it in the basement

Im sorry, but its time to start calling Apple sycophants out. Stop trying to push your tech jewelry on other people. You only buy those computers because they are Apple, you don't know anything about computing or running LLMs, you don't do any real work, so you should probably not give advice on what to buy.

A single 3090 will run Qwen3.6 27b fine, and its VRAM speed is twice of what the best Mac has. And the build will be cheaper. Decent CPU/Motherboard, 32gb of DDR4 ram, an SSD and a Single 3090 should run max about $4grand. Mac m4 mini is 6grand.

Then, when gpu prices come down (or you find one on a deal), you can upgrade the card, or stick a second one, and benefit from more speed. You can't do that with the trash Apple produces.

Flag me if you want, I don't care. Its embarrasing for the tech community to give advice this bad.

iagooar8 hours ago

I am not going to flag you, I am much OK with having good arguments.

I just purchased a Mac Mini M4 Pro 64GB for $3k - 2nd hand of course.

I am not a hater of Nvidia and I am planning on building a workstation based on RTX cards. You clearly do not seem to understand how convenient the MacMini actually IS - the form factor, how quiet it is, how durable it is, how well it integrates with other Macs, how well it works as a bridge to a personal agent like Hermes (integration with iMessage, Calendar, Reminders, iCloud, etc).

I am pretty sure I know a thing or two about computing, I have been in the trenches for many, many years and I have had machines of all kinds, shapes and colors. It just so happens that Macs are very capable, very convenient machines that happen to work great in the era of LLMs, too.

But you do you.

lowbloodsugar5 hours ago

If you are in Apple ecosystem, and have reasons to own one besides inference, then buying a used Mac mini pro isn’t such a bad idea. I just bought a regular Mac mini just to provide a nice front end to my Ubuntu workstation. But if all you want is inference, then a cheap PC with a 32gb 9700 (or two!) in it is far cheaper. This specific thread was about someone who already has a MacBook. A cheap PC and GPU pairs well. Or a spark: slower but more memory. Or fuck it! Get a 5090 or a 6000!

ActorNightly8 hours ago

>You clearly do not seem to understand how convenient the MacMini actually IS - the form factor, how quiet it is, how durable it is, how well it integrates with other Macs, how well it works as a bridge to a personal agent like Hermes (integration with iMessage, Calendar, Reminders, iCloud, etc).

If you are that locked in to Apple, its pretty easy to buy a used Mac Mini older gen for all the non AI stuff.

But this is a discussion about inference. Buying a Mac anything for any sort of local inference is a COLOSSAL waste of money.

zxexz2 hours ago

[dead]

bensyverson12 hours ago

The article is based on running Qwen 3.6 on a 128GB MacBook Pro. For reference, a 128GB MBP currently starts at $6699 USD [0]

Some people will be happy to pay that premium for privacy, but at roughly 10X the cost of a MacBook Neo, that money could also buy a lot of credits on OpenRouter or frontier labs.

[0]: https://www.apple.com/shop/buy-mac/macbook-pro/14-inch-space...

dofm12 hours ago

The maths there is pretty undeniable, but it is not where I'd make the split. Having a machine that can run some modest local LLMs, like the Gemma 4 12B, is really worth it.

I don't know how much serious hands-free agentic coding I will ever do on my MacBook alone, but I do know that I would not have got so far into understanding this without tinkering with local models, llama.cpp, LM Studio, and LM Studio and all that.

I totally struggled to find the right frame of mind to explore any of this stuff without feeling defeated and bamboozled. Because it's just huge, exhausting, jargon-drenched, unknowable, and I am over the hill at fifty-plus.

Until, that is, I could poke around with setting it up on my own (secondhand) machine, watching the API calls, understanding some of the terminology. I didn't even buy the machine for that; it's just adequate to the task.

The Neo is too small to really get much benefit from this opportunity to make it more visceral and knowable.

pizza23411 hours ago

> Having a machine that can run some modest local LLMs, like the Gemma 4 12B, is really worth it.

Cloud models are (much) faster, they don't consume so much power/generate heat, they have much bigger (LLM) context, they're much more precise and they have a much wider (engineering) context of the given problem.

Except privacy and use cases that are blocked by cloud models (e.g. reverse engineering), local LLMs are currently an expensive toy.

When I try to program with a local LLM (I'm on a 32/128 GB system), I end up wasting time compared to a cloud LLM.

dofm11 hours ago

Again, I would not argue against any of this.

And I can't say that I won't switch to openrouter (even just for the same models) at some point.

But one of the things I have found about my own process learning is that some lessons only come to you when you make yourself available to them. And if that means doing things the difficult way, that is what you should do.

+3
wahnfrieden10 hours ago
Abishek_Muthian2 hours ago

I agree completely. I think local AI is best limited to purpose built SLMs; all this craze around running quantized coding LLMs has taken the attention off SLMs.

sanderjd9 hours ago

> currently

The interesting question is whether that gap will narrow, and if so, how much, and on what timescale.

The exact answer to this question is not knowable, but if you are the kind of person who comes to a site called "hacker news", and you think there is a nonzero chance that the answer is that yes, the gap will narrow and this won't always be an expensive toy, then now seems like a pretty great time to get in the game and start exploring the capabilities.

AlpacaJones10 hours ago

The key word there is 'currently'.

+4
smt8810 hours ago
bogeholm10 hours ago

> Cloud models […] don't consume so much power/generate heat

I do realize the cloud is just someone else’s computer right? Power goes in, tokens and heat come out - just in another place

actionfromafar9 hours ago

The cloud computers produce more tokens per watt. That said, if you have a computer at home running 24/7 for other reasons and you also can use it for some LLM work, why not.

psychoslave10 hours ago

Anything done local will likely come at higher cost and at scale with less energy efficiency and commodity, with less possibility to fine tune engineer deeply on wider horizon of issues.

That's never the point of keeping local alternatives though.

dofm10 hours ago

Right.

For me this dates all the way back to installing Slackware 1.0 (0.99pl12!) on an offline 486SX rather than just using the internet-connected workstations in the lab.

Here, I already had a Mac that was powerful enough to run a local LLM, so now I do, because I can.

VerifiedReports9 hours ago

Exactly. The distinction between the various layers in "AI" systems is pretty vague to the newcomer. What is the "model" vs. the engine "running" it vs. weights?

I don't recall any previous tech stack that was barfed onto the scene with so little background or reference material, going from zero to endless undefined jargon... and no primer in sight.

For people who demand an understanding of their tools, it's a lot of work. I recognize the value of "AI" in performing the tasks I'd have to do manually; for example, keeping the data structures of my front- and back-ends in sync in a project. But do I want to interrupt my development and take weeks off to digest all of these tools?

And if I do, I want to run the show and fully understand it. And like you, I think that's best done locally.

Fr0styMatt889 hours ago

The most unexpected thing for me was kind of philosophical in a ‘holy shit’ way.

Cloud models still feel ‘magic’, like you send a request off and get something back, like it’s something ‘special’. I used to joke that ChatGPT might be some kind of mechanical turk underneath.

Watching a model run local on your own machine hits different — you realise that yes, it IS just a computer program. Which for me actually makes me appreciate the leap we’ve made MORE, not less. From an information-theoretic point of view, LLMs really are something special.

The fact that they are just programs, that I’ve now experienced first-hand that they’re just programs, makes all those questions around consciousness and intelligence much more interesting.

dofm9 hours ago

Yep — it hasn't changed how I feel about what LLMs are capable of (and very much not capable of) but this visceral feeling is fascinating.

Like, just watching a computer I already owned act like ChatGPT with the wifi disconnected.

It was the first time I stopped feeling quite so helpless, somehow.

+1
QuercusMax9 hours ago
ricardobayes9 hours ago

For the most part you can just download LM Studio and go from there. It provides a chat interface and an easy-to-use interface to browse, load and use LLM models. The engine: it is abstracted away by LM Studio, if you want to dig deep it's llama.cpp as the runtime. Weights are the files what you download, they are the models for practical purposes.

dofm9 hours ago

I definitely would recommend LM Studio as a learning environment, because it surfaces a bunch of things in relatively clear-minded ways. I am very grateful for it.

codazoda10 hours ago

I agree with the learning aspect, but I have another motivation. I suspect that closed models might become too expensive to run for personal hobbyist use. I’ve been planning to buy a 64GB machine just to allow the limited local models this enables.

ehnto3 hours ago

It's also great to have capability to run local models for more brute force tasks. Because you can change the system prompt, you can get local LLMs to do all kinds of high volume tasks without burning through tokens on a hosted model.

Just one example, I needed a bunch of images tagged and organised, with a local vision capable model I could pretty easily set that up and leave it running overnight.

I already had the GPU and memory for gaming, so it was at no cost for me to start running local models. But I feel the long term writing is on the wall, local models will only make more and more sense as they get better and more efficient.

ricardobayes9 hours ago

I'd say give it some time for the dust to settle. This field badly needs standardized benchmarks even before the conversation around model goodness can start.

rusk11 hours ago

> I totally struggled to find the right frame of mind to explore any of this stuff without feeling defeated and bamboozled.

I found LM studio to be a nice starting point. Frindlier and more featureful than Ollama and not as intimidating as llama.cpp (though you will want to use that eventually)

dofm11 hours ago

LM Studio is also nice because of the way the interface explains things; parameters have explanations and hints. It has been designed by people who really care about making it understandable.

I tried Ollama but I've settled on Unsloth Studio generally; once things really settle down I'll just run the llama-server UI, which is pretty nice.

A friend is tinkering with LLMs for amusement on a 16GB Raspberry Pi 5, and when I explained that llama.cpp now had a typical web chat interface he was so happy — it's amazing what the "table stakes" are now.

not_kurt_godel9 hours ago

> Having a machine that can run some modest local LLMs, like the Gemma 4 12B, is really worth it.

Agree having a powerful machine is really worth it in general for professionals, but strong disagree that running local LLMs has anything to do with it. It's hard enough as it is getting a good ROI on your time/money prompting/wrangling with frontier models. IMO leaning on the comparatively limited capabilities of local LLMs is best avoided in favor of keeping your own personal coding skills fresh and continuing to learn new ones.

dofm9 hours ago

I'm not that bothered about my coding skills, which are fine, and pretty up-to-date considering I'm now an old bloke. I am bothered about building an instinctive understanding that helps me deal with my anxieties and decide whether I want to carry on with this working life or quit.

I needed to do this, this way, in my own time, to put my brain back together. It has worked for me, which is why I recommend it.

YMMV.

+2
ricardobayes9 hours ago
sanderjd9 hours ago

Continuing to learn new ones, like what?

To me, "how do contemporary AI systems work and interact with contemporary hardware and how can I best take advantage of their capabilities?" is the set of skills that are worth learning at this moment.

What else is there? New / additional programming languages? New / additional database systems? frameworks? orchestrators? cloud provider / infra tooling? architectural patterns?

I dunno, all of this seems really boring and "been there done that" to me at this moment in time!

+1
not_kurt_godel9 hours ago
oceanplexian10 hours ago

Honestly your best bet is to buy a $20 Claude subscription, ask Claude to set it all up with Pi and llama.cpp and come back in 20 minutes after a cup of coffee. This is also a good idea because it will help set expectations of what a local model can do vs. a frontier model.

mullen10 hours ago

This is what I did after struggling to get llama.cpp working at a decent speed on my M1 Macbook. The secret is to very specific with your needs and targeted in what you are using llama.cpp for. Mine setup is just about strictly for qwen3-coder and now, I get a fairly decent speed out of it. I also installed Cursor to check Claude and it all worked out well.

kristianp2 hours ago

Are you talking about Qwen3 Coder 30b a3b Instruct from August 2025, which is a non-reasoning model? Or the more recent "Qwen3 Coder Next" from Feb this year with 80b params, 3b active? I found Qwen3 coder next to be quite good on openrouter [1], but couldn't run it locally.

[1] https://openrouter.ai/qwen/qwen3-coder-next

+1
trey-jones3 hours ago
cyanydeez11 hours ago

I've setup to local paradigms for local coding:

- opencode with it's webui

- deer-flow with it's research/powered front end

They both run websites so you don't have to baby sit them (eg, keep your mac open). I've build a pdf compressor over a few days by first having deer flow try and research the frameworks and pipeline. It stalls out because its not really a fluid programmer. Once it stalls out, I transferred it (manually for now) to opencode and it's refactoring it because it's just a collective bundle of sticks and it needs a lot of testing to tweak out the limited scop context. LLMs can't really hold large scopes (locally anyway, from what I've read from HN, it's possible with longer context).

It'll complete in a few days with maybe 3-4 hours of full attention interaction, but it's running 3x that without my attention. Obviously, if I paid more attention it'd run quicker, but since it's local, it's not pumping out large volumes of code, it's mostly looping over tests and capabilities as observed.

It's running Qwen3.6 35B MoE on a AMD 128GB strix halo. If I switched to the dense models, perhaps it'd be smarter, but the trade off seems to be much slower gen.

dofm11 hours ago

> - opencode with it's webui

Have you tried Paseo?

I have opencode in a VM, and the paseo daemon running in the VM, and then the Paseo Mac app. Really nice.

(You can also use the Opencode GUI to frame a remote opencode web interface)

+1
c-hendricks11 hours ago
bsder7 hours ago

> I totally struggled to find the right frame of mind to explore any of this stuff without feeling defeated and bamboozled. Because it's just huge, exhausting, jargon-drenched, unknowable, and I am over the hill at fifty-plus.

Hello, my brother, just know that you have a fellow passenger in life at the same age who thinks the same thing. I agree that the local stuff is helping my understanding a LOT.

However, my gut feel as someone who got to experience the TeleBomb after the DotBomb is that the obfuscation is INTENTIONAL--it's neither you nor your age. I remember asking people to explain to me what the OC-768 startup endgame was when roughly 10 OC-768 links could carry the world's traffic at the time--and everybody giving me blank looks. The AI Bubble has the EXACT same feel as the Telecom Bubble--just bigger.

What I really wish is that I could find a VPS-type provider where I could toss things into their NVIDIA/AMD machines for an hour or two. Alas, all of the providers seem to want massive paperwork and huge minimum purchases.

I can't wait for the bubble to pop so that we mere mortals can finally build with this stuff.

ddalex11 hours ago

I just got Claude to download and install all the models and servers and agents and prepare all the launch scripts for me... no need to learn, just ask it to do it for you

dofm11 hours ago

Right, but I am a middle-aged bloke who is experiencing existential angst about whether I can carry on in this industry.

I have a pretty deep, maybe paranoid need to be confident I have an intrinsic understanding, and I have found in my life that lessons come to you when you make yourself open to learning.

So I need to build on top of what I know, taking as much of the hard way as I can bear to take at any one time — it has to be not quite difficult enough to put me off.

I can't really explain what I have learned this way that is different, but I feel it in a way that I wouldn't if I'd simply pushed a button.

For the same reason, I have a really basic 3D printer that I've set up myself, set up Klipper, configured how I want it, learned how to calibrate, all that. And now I can say that I feel I have an understanding of 3D printing. I could hold my head above water in a discussion with a real expert, maybe find work in an adjacent field where my insights would keep me grounded.

I can afford a really good printer that has all that set up, and more, has no problems. But I'd just be someone who has a 3D printer.

(Also who am I kidding about the existence of a printer with no problems)

+2
greyskull9 hours ago
+1
sanderjd9 hours ago
swiftcoder10 hours ago

I don't necessarily think your answer is wrong for all people, but if you work in software... how do you plan to differentiate yourself from everyone else out there, if the depth of your understanding is "Claude can do it for me"?

dofm10 hours ago

This ultimately is the discussion I am here for.

I mean one of the things I use a local LLM for, because I can, is to generate starter documentation. But I ask it to — I want it to give me overviews, plans, all that. It can make something bespoke for me.

I guess I could also ask it to do the work. But where do you draw the line?

The universal labour-saving device is the great provocation of the next 100 years I think, and both Star Trek and Wall-E have grappled with it.

coldtea11 hours ago

>no need to learn, just ask it to do it for you

And that's how skills die.

+4
CamperBob210 hours ago
charcircuit10 hours ago

Except with AI models it's possible to make a backup of them creating a permanent artifact of a skill.

sorokod11 hours ago

Then what is the point of ddalex?

+1
dofm10 hours ago
kdkdjduxnd11 hours ago

[dead]

porphyra11 hours ago

You can also run Qwen 3.6 27B dense model on DGX Spark with comparable performance [1][2] for about $4000 (Asus Ascent GX10 is $3999 at various retailers).

In theory you can also get 48GB of VRAM with, say, two 3090s, but it will take up a lot of space and generate a lot of heat compared to the Macbook Pro and GB10.

[1] https://x.com/MiaAI_lab/status/2070859135399182444

[2] https://github.com/MiaAI-Lab/Qwen3.6-27B-NVFP4-vLLM

Zetaphor2 hours ago

Alternatively you could run it on Strix Halo for $1,000 less, and while it may be slightly slower you won't have to deal with NVIDIA's shit on Linux and worrying about having to use their custom kernels or Ubuntu.

esperent11 hours ago

> 48GB of VRAM with, say, two 3090s

So like... $2000+ just for the used GPUs? Plus I assume it's considerably more effort to get it working.

fluoridation11 hours ago

>Plus I assume it's considerably more effort to get it working.

Nah, not really. It is a little annoying in terms of space and power, though. Not every case and motherboard can support cards that big.

lee_ars8 hours ago

The tweet you link shows "Qwen 3.6 35b NVFP4 - 256k ctx, 110 tok/s", but I'm getting only half that, around 50 tok/sec, on a DGX Spark with Qwen3.6-35B-A3B-NVFP4 (via vLLM) plus speculative decode w/EAGLE3. I'd be ecstatic to see 110 tok/sec and I wish they had some more sourcing for the exact config, because it's double what I'm getting.

edit - after actually reading the tweets (had to use xcancel) and visiting the source git repo, switching to MTP for speculative decode makes things a hell of a lot faster, and the abliterated model plus dflash makes it even faster! I'm now seeing 70-90 tok/sec for most stuff. I like!

porphyra5 hours ago

I think Atlas might also be slightly faster than vLLM:

https://flowtivity.ai/blog/120-tok-s-1m-context-private-ai-d...

Catloafdev12 hours ago

The model they reference can be easily run with 24gb+ of VRAM, and there are other similar models capable of running easily on 16gb of VRAM. It's not like 128gb is a requirement here.

bitexploder11 hours ago

For a MBP I have 48 GB of RAM M5 Pro. It runs at about 12-14 t/s at Q4, you could probably optimize it further. RAM is not a limitation but overall memory bandwidth. Q8 is slower. 35B A3B Qwen is quite speedy, but a little less accurate. With Qwen 3.6 27B dense I can squeeze a 9B parameter model and use that for fast analysis or code scanning while 27B is churning on a task in the background. It is tight, but totally reasonable.

The real sweet spot for Qwen 27B is getting it on something like a Dual 3090 system or some other config where it can blaze at 50-80 t/s and that costs well under 6K currently. It is a surprisingly capable model. Using something like GLM for orchestration, specs, task farming and then letting Qwen churn is relatively inexpensive.

Overall I recommend people try models of this class out using OpenCode and some for pay service to experiment with them and understand how they work. I find they are very useful.

Long term, I am convinced enough that if I wanted to use local models for any number of reasons I would be okay investing in a dual GPU box. The Mac is not fast enough for me and M5 Max is just too expensive relative to GPU linux box. Still, it is nice to have the models local ON the laptop and it is useful for what I care about locally.

aunty_helen9 hours ago

I was doing some benchmarking last night on 2 3090s. The systems but old but I’m seeing 11tks 27b, 15tks 35b MoE.

The limited context is problematic. I’m not exactly sure what it’s got available but hermes was hit and miss on a prospecting job.

It does seem to be doing useful work but it’s not API call level quality

coder5436 hours ago

> The systems but old but I’m seeing 11tks 27b, 15tks 35b MoE

If that's accurate, then you must be doing something wrong/weird. On a single RTX 3090, I'm seeing substantially higher performance. Dual GPU won't necessarily give a ton of performance improvement, but it shouldn't hurt performance.

With llama-bench, I just measured Qwen3.6-27B at 41 tok/s and Qwen3.6-35B-A3B at 153 tok/s on one RTX 3090. (Those results are without MTP. With MTP, I'm seeing about 65 to 70 tok/s for Qwen3.7-27B.)

I'm using the unsloth UD-Q4_K_XL quant. If you're using bf16 for some reason, that could explain the low performance and inability to have enough context despite having 48GB of VRAM, I guess, but... don't do that.

coder5436 hours ago

> For a MBP I have 48 GB of RAM M5 Pro. It runs at about 12-14 t/s at Q4

Are you running with MTP enabled? I have seen some people on M5 hardware report 20+ t/s on Qwen3.6-27B using MTP... and I think that was a regular M5, not even M5 Pro.

+1
bitexploder6 hours ago
CMay10 hours ago

At 24GB, Gemma 4 31B QAT will be better and give more concise answers. This post is mostly about unquantized results, so it's less relevant and I can't say much about as I haven't tested Qwen or Gemma via cloud API or unquantized locally. All I can say is locally, quantized in a 24GB scenario, Gemma 4 31B is better in my tests which are mostly reasoning or C programming related.

Gemma 4 is the only model series at this parameter scale I've seen correctly answer some of these. One of the answers even made me re-evaluate what I thought the correct answer was, which I did not expect.

When I look at the Artificial Analysis numbers, I can see that some things about Qwen 3.6 look inflated as a result of either metrics that weren't measured yet for Gemma 4 31B, or for metrics that just aren't going to be relevant in a lot of the essential tasks. In a lot of the relevant metrics, Gemma 4 is either better or on par.

Then once it's all quantized all those benchmark results will be hurt, and Gemma 4 QAT has better quantized performance. I think it's more competitive unquantized than people give it credit for and way better quantized than people give it credit for.

Qwen 3.6 clearly isn't legitimately bad and maybe it's quite nice at fp16, but it was a disaster quantized in a 24GB scenario by comparison.

thewebguyd11 hours ago

I'd go for at least 32GB+. It'll fit in 24GB but leaves you little to no room for context, and that's at 4-bit quantization.

If you want to run unquantized, you definitely need 128GB.

Catloafdev11 hours ago

Nobody runs unquantized, there's literally no reason to. Q8 would be the largest anyone actually runs on consumer hardware for inference.

+1
bityard8 hours ago
bitexploder11 hours ago

It also comes down to inference speed, not "can I run this". 8-bit quant is quite a bit slower on an M5 Pro.

gchamonlive11 hours ago

[dead]

Numerlor11 hours ago

And if you go for actual GPUs it'll run much faster, I'd say 24gb may be pushing it for context, but my 5090 with 32GB VRAM is usually somewhere between 60 to 100 tok/s with mtp and 2-3k tok/s for prompt processing. I'm not sure what they cost now but it's definitely still quite far from the macbook, and there's also some other 32GB GPUs that are considerably more affordable

nok22kon11 hours ago

a computer with 24 GB VRAM is at least $3000

daemonologist10 hours ago

A 7900 XTX is about $850, and the rest of the computer basically just needs to boot Linux. You could easily build such a machine for $1500.

Even that isn't strictly necessary - you can get perfectly acceptable performance by splitting a model between multiple older 12 or 16 GB cards.

sleepyeldrazi11 hours ago

I can't speak for the US, but in Germany (where hardware is usually more expensive, not less), I got my 3090 3 months ago for 750 euro and have been running the iq4_nl 27B using q4 kv (which after recent patches in llama.cpp is in my xp indistinguishably accurate from q8 of f16) at full ctx, with MTP at 2, peaking around 70 t/s on small ctx, around 50 t/s when im around 64k and ends around 40 t/s near the cap. The rest of the PC is a 50 euro ddr3 16gb i5 4th gen box, absolutely nothing special. And this setup is often more useful than dsv4pro (and sometimes kimi, but not glm) for research and ML work.

+1
danilocesar10 hours ago
throw123456789111 hours ago

But the tokens or credits are gone. MacBook stays. You can run other models on the same MacBook. What I read people burn every month on saas… for that money you break even on that MacBook in 5 months.

Edit: it’s not just “data privacy”, when you are using Claude, you are shipping EVERYTHING to Anthropic. It’s crazy.

wilsonnb310 hours ago

Companies are already shipping everything to Microsoft or Google and 17 other companies, just the cost of doing business.

throw123456789110 hours ago

Sure, but no one gets everything. Just that one.

DANmode10 hours ago

That’s at today-prices.

If the cost doubles, or 4x, which is seems to need to for them to go profitable, what then?

wahnfrieden10 hours ago

It's much slower, and often quantized

acchow10 hours ago

That $6700 is a $5000 upgrade over a base model Macbook Pro.

$5000 in US Treasuries (currently at 4.89%) yields $244.5/yr. That's more than enough to cover the annual Claude Pro subscription ($200/yr) which includes Claude Code with lots of Sonnet usage (far better than Qwen 3.6)

neonstatic9 hours ago

I think the argument isn't that local is cheaper - it's that local is doable and delivers unparalleled privacy.

iosjunkie3 hours ago

And your government can’t take it away on a Friday afternoon.

nozzlegear12 hours ago

Just putting it out there: I run Qwen 3.6 on my M1 Mac Studio with 64gb. It's quantized and all that, but I agree with TFA: it's the sweet spot for local development right now.

dmayle11 hours ago

For that price you can put together a PC with 128GB of ram ($2000) and an RTX 5090 ($3600) and get 70-100 tokens per second instead of 45

montebicyclelo11 hours ago

Isn't the directionality important. I.e. it is currently possible to run useful / great models locally, but on high end machines; and in a few years we will likely be able to run even better models on standard machines.

stymaar11 hours ago

> The article is based on running Qwen 3.6 on a 128GB MacBook Pro. For reference, a 128GB MBP currently starts at $6699 USD [0]

Qwen3.6-27B would be faster on a 3090 that costs around $1000-1200 though so I don't think it's a good counter-argument.

Op just happened to have that MacBook, but it doesn't mean it's necessary to run the model.

boutell11 hours ago

That 3090 is going to burn 750W and it will still cap you at a 4 bit quant and ~48K context. Here's someone who worked through it:

https://github.com/noonghunna/qwen36-27b-single-3090

Flies though (50-70tps is impressive for a model this smart)

I went through roughly the same process to get it working on my M2 Macbook Pro... at awful speeds of course, since models like this one are mostly bound by memory bandwidth.

stymaar10 hours ago

> That 3090 is going to burn 750W

The 3090's TPD is 350W, but given that LLM's token generation isn't compute bound, people usually undervolt these cards to reduce power consumption. IIRC you can get as low as 200-250W without any degradation. Caveat these figures are without speculative decoding and at batch size =1.

4chandaily10 hours ago

This is correct. I have (4) 3090s in my inference server, and they are each capped at 250w. I run Qwen 3.5 122B-A10 at about 45-50tok/s on this and am quite happy with it. At idle it draws around 95-105w for all four, which is a bit high, but tolerable.

hughw9 hours ago

My eyes glaze over reading all the AI produced verbiage.

I did find a few useful parameter settings I've already discovered using my single 3090 and ollama.

I'm just remarking that the LLMs overwhelm me with minutiae, especially as I'm working on code design. I frequently ask it to restate concisely, and that helps.

[edited to mention ollama as a nice alt]

shockembopper5 hours ago

I’ve got qwen3.6 27b running on my media server atm. Given that I built on top of what I already had, it didn’t cost me nearly that amount. I’ve been running 2x 5060 ti 16gbs, and when using text only and nvfp4, I can run the model with 200k context length and roughly 50-60 toks. It’s very good, and costed me about $800 after buying the gpus from microcenter.

organsnyder11 hours ago

I run Qwen 3.6 on my Framework Desktop 128GB, and it's very performant. I know Framework has had to raise the price since I preordered mine, but they're still well under half the cost of that Macbook.

andy9911 hours ago

I get ~55 Tok/s on my framework desktop with the 35B A3B q8 model, and so far am also very happy with the coding performance.

cyanydeez11 hours ago

did you upgrade to MTP?

bityard8 hours ago

There are several variants of Qwen 3.6, the MoE models are performant on Strix Halo, but the 27B dense model (the one spoken about in TFA, and generally regarded as the best of the group in terms of quality) is not so performant: https://kyuz0.github.io/amd-strix-halo-toolboxes/

elorant10 hours ago

You can get an AMD Strix Halo with half that price even after hardware price adjustments. Besides you don't need 128GB of RAM to run a 27B model.

dannyw12 hours ago

I’m running the same model on a 48GB MBP with a q4 quant and it’s pretty decent. You definitely don’t 128GB. That’s the scale for 70B models at q8 or something.

DrammBA1 hour ago

> I’m running the same model on a 48GB MBP with a q4 quant and it’s pretty decent.

Context size?

dom9611 hours ago

I've been running it on my 48GB MBP too and it's not particularly great. Super slow and not near enough to the quality provided by even Claude Sonnet.

doodlesdev11 hours ago

How much does one of those cost in the US? Here in Brazil, your notebook is worth as much as a used Honda Fit, which seems absolutely insane. For comparison, the ThinkPad I'm currently running cost me 1/20 of how much this MBP costs here, leaving me with over $8.000 to spend with LLM inference (if I actually spent money with that).

dannyw11 hours ago

I purchased mine for approximately $4400 AUD before the price hikes. That unit is now ~$5100 AUD.

I use my MBP essentially as my workstation, it's almost always plugged in. I have a MBA (M4, 24GB RAM) that I picked up for ~A$1500 or so, and that's an amazing daily driver. I don't do local LLM inference on that unit, I can just hit my own APIs (via LM Studio) on the MBP over Tailscale.

jeffybefffy5196 hours ago

I still dont trust the Anthopic and OpenAI are not training on my code. I even just thinking keeping track of what code you have received in prompts and to train/not train on it seems like an impossibly difficult task.

andrekandre6 hours ago

am i right in assuming your code is closed-source?

i'd expect anything on github for example to be already in their training set or is training on actual usage more useful to them?

georgeven12 hours ago

I have a 1500 dollar machine that can run it at 50 tok/s (3 V100s)

Dig1t11 hours ago

How did you buy 3 V100's for $1500??

sixdimensional8 minutes ago

Not OP and just guessing, but probably SXM2 GPU modules for the V100. Those can be acquired fairly inexpensively, but there is work to do to get them working together and the V100 has some limitations on the types of models you can run.

stared7 hours ago

All experiments with Qwen 3.6 required no more than 48GB Apple Silicon. I believe you can go even further with more aggressive quantizations - one can go down even further.

In any cases, from the economic point of view, running models on laptops make little sense. Even at the pure cost of energy consumption, it might be hard to beat pricing at tokens generated at scale.

At the same time, it is a breaktrough, that will change the game. Previously such vibe coding on consumer device was not hard or costly - it was impossible.

redox9910 hours ago

I bought 2 used 3090s some years ago for $500 each. They're probably a bit more expensive now, but I guess for something like $2000 you can build a barebones 2x3090 PC which will be way faster than a Macbook. (you're fine with very basic hardware outside the GPUs)

trentor11 hours ago

Runs fine on 2x4080s or on two 5060/5070s with 16GBVRAM... and faster than on the mac.

dvduval11 hours ago

Absolutely for the average developer the token speed is just going to be too slow for it to be workable. I think we’re looking at 2028 when memory becomes cheaper again and they’ll be a lot more people using local models.

cyanydeez11 hours ago

AMD started their 128GB Halo Strix at a pretty damn good point at ~2.5k; I got mine after the first memory bump at $3k.

I think you might be a little to into the stew here.

zdragnar11 hours ago

I got mine at the same price point, and I've been pretty pleased with it. Tailscale lets me use it from my ultrabook / lightweight laptop, no burning lap or crazy fan noises. Desktops with the amd ai+ 395 are still fairly affordable for what they can do.

I haven't tried it with https://lemonade-server.ai/ yet but I just might give it a shot.

organsnyder11 hours ago

I'm running Lemonade on Nixos on my Framework Desktop. I had been trying other tools out before finding Lemonade, but Lemonade really made it plug-and-play.

Insanity12 hours ago

But you have to factor in that this device will last you 5-10 years. That said, I wouldn't spend almost $7k USD on this macbook lol.

petilon12 hours ago

Memory requirements of newer models will increase, so while the hardware may last 10 years it won't be able to run the latest models for 10 years.

roadside_picnic11 hours ago

My experience working in the open model space pretty deeply (both LLMs and diffusion models) for years now is that it is not quite as simple as that.

In the open model space an insane amount of effort goes into getting more powerful models to run with the same or less RAM. For example in the diffusion world many things that could not be run on easily under 24GB of VRAM actually run much better today with much less VRAM than they did a few years ago. You can do many things today with 8-16GB of VRAM that would not have been possible. At the same time the most advanced open models, like LTX 2.3 for video gen, still seem to respect 24GB of VRAM as the upper bound.

Similarly the standard "big" but localish open model for LLMs back in the day was Llama 3 70B, this was both a much worse and much larger model than Qwen 3.6 27B

So in two different spaces I've witnessed the "RAM required to run the best" decreasing or at least remaining stable, while the performance being achieved in both areas is astounding (LTX 2.3 is faster, better and more capable than the Wan 2.2 model that held popularity before it).

The biggest thing to watch out for is not just RAM/VRAM but memory bandwidth. You can try to "future proof" yourself with lots of RAM, but if it's 400 GB/S you're still constrained to smaller models.

+1
prima-facie10 hours ago
petilon11 hours ago

> insane amount of effort goes into getting more powerful models to run with the same or less RAM

The same can be said about operating system memory requirements. I am sure Linux and Windows kernel developers can confirm. Yet 30 years ago Solaris used to run comfortably in 16 MB of RAM, today you need 512 times that to run Linux.

Insanity12 hours ago

You raise a fair point, but I'm not convinced it'll offer a meaningful difference in performance as long as we're stuck with the current AI paradigm.

bluGill12 hours ago

Will they? Or will we find ways to optimize models and need less? Only time will tell.

naikrovek7 hours ago

Available models aren’t really trending upward in size. Not like I thought they would, anyway.

They’re trending to be the right size to be good.

Qwen3.6-35B is not as good as Qwen3.6-27B. The larger model is faster, but a lot dumber; it gets caught in loops, makes crazy mistakes, and is just not as good. It’s bigger, but it is nowhere near as good as the 27B variant.

zargon4 hours ago

Qwen3.6-35B-A3B is worse than 27B because it's an MoE and 27B is dense. 35B only passes each token through 3B of its total parameters, whereas 27B sends each token through all 27B parameters.

simonw12 hours ago

It can't run the latest models today - GLM-5.2 class models already need 1TB+ of RAM.

... but, the models that WILL run on 128GB (or 64GB or even 32GB) models today are a huge improvement on the best models that would run in the same amount of memory six months ago.

johndough9 hours ago

    > GLM-5.2 class models already need 1TB+ of RAM.
If you quantize GLM-5.2 to 4 bit, you can do it in less than 500GB: https://huggingface.co/unsloth/GLM-5.2-GGUF (table on the right)

If you find three finds that also have a 128GB MacBook, you can chain them together (the MacBooks, not your friends) and make it work.

You could also run GLM-5.2 on a single MacBook if you stream the active parameters from disk, but even with speculative decoding, you'd probably only get in the order of 1 token per second, so this is not really practical for most applications.

godwinsonsucks10 hours ago

[dead]

cyanydeez11 hours ago

I think you have too much faith in context AGI.

at 128GB, you can find almost it's entire context for Qwen3.6 35B MoE.

Again, I think you have too much faith in extrapolation. It's like you got a baby at 0 months, then measured it at 12 months and expect it to be a giant.

someperson12 hours ago

In 5-10 years, incremental cloud tokens will be far cheaper (likely but not guaranteed).

jubilanti11 hours ago

[flagged]

colinsane11 hours ago

i like that people are taking the privacy argument seriously, after however many decades. i think there are other arguments to be made for running these locally which are less settled, but IMO the Fable debacle drives it home: the surest way to embrace this technology without worry that it will be taken away from you down the road is to physically own the compute.

r_lee10 hours ago

if you need to ensure that, then just back up the model and buy hardware if the need arises

colinsane10 hours ago

that's somewhere between saying "use Android, just switch to Graphene if/when they lock it down", and saying "just switch to postmarketOS/Ubuntu Touch/whatever flavor of Linux takes off".

i've watched friends try that route; i've been through this before. taking a downgrade is never fun: if it's a thing you're likely to care about in the future, then sometimes it's better to place yourself in the right ecosystem early.

r_lee8 hours ago

I just don't see how with the whole open weight system this situation would happen or that it'd be likely enough to warrant this

in terms of privacy, yes that's a real application, but someone taking it all away? I don't see it happening.

it's not an OS or a device, it's just a box/thing that runs a model, it's really commodity stuff we're talking about

more realistic concern would be that the open labs wouldn't be able to compete in the future thus development ends, but that means you can't host models that don't come out so...

again maybe I misunderstood but I just don't see why this would be worth it just for that one concern

ricardobayes9 hours ago

Oh definitely. I've seen GLM 5.2 go for around $4 per million output tokens.

oldfuture12 hours ago

a lot of credits? we can’t predict any price change for them

AnimalMuppet11 hours ago

How many credits would it buy? How long would it take to use them up? What's the payback period?

From what I understand, for a developer, $5000/month is maybe the high end, but $5000/year is fairly standard. (Is that accurate?) So if it pays back in 15 months, that's pretty decent. If it pays back in two months, that's spectacular.

dminik11 hours ago

Using some rough napkin (well, spreadsheet) math, if you ran Qwen 27B for every minute every day at the current price of $0.195/$1.56 with a 2:1 input to output ratio (eg. agentic coding) at the advertised 22 tps it would take you just about 11 years to get to ~$5000 spent.

Disclaimer: There's a 35% sale from Alibaba right now. And I'm not accounting for input tokens going faster than output tokens.

eli11 hours ago

Are you comparing the cost of hosted Opus to running Qwen 3.6 locally? That doesn't really seem fair.

h4ny12 hours ago

[flagged]

dang8 hours ago

Yikes, you broke the site guidelines badly with this post. Could you please review https://news.ycombinator.com/newsguidelines.html and stick to them?

You're welcome to make your substantive points thoughtfully, just not aggressively.

kllrnohj12 hours ago

> maybe tell us how much a non-Apple system that you can run that (probably similarly or faster) would cost?

Ryzen AI Max 395+ with 128GB of unified memory can be found around $3-4k.

But 27B isn't that large, either, especially if you are ok with the quantized models. So this laptop choice seems to more be a "because they had it" rather than "this is what's necessary for this particular workflow"

h4ny12 hours ago

That's my point. You can run Qwen3.6 27B with MTP and whatever else you want to bolt onto it at 256k context for much less than even a Ryzen AI Max 395+ with 128GB would cost. Even unquantized you don't need 128 GB so given your comment and the downvotes maybe I didn't word my original comment properly for this?

onion2k12 hours ago

None of the examples reflect 'real work', at least not what I'd consider real work. Being able to nail a zero-shot greenfield project is relatively easy even for a small model. There's not much context to build up and it can fall back to similar examples in the training data easily. So long as you're not asking it to invent something wholly new it'll probably manage.

The real test is whether or not it can work with your existing codebases. In my limited experiments Qwen 3.5 (maybe 3.6 is loads better) does OK on a Rust+React app, and less well on a C# monolith. Not to the point of being unusable but definitely poorly enough that I went back to Claude after 20 minutes. If I lost access to a cloud model and had to use Qwen instead I'd be visibly sad.

janalsncm11 hours ago

> Being able to nail a zero-shot greenfield project is relatively easy even for a small model

Not really germane to your comment but I hope I don’t sound old when I say I remember a time when spinning up a PoC was a week of work, and a statement like yours was pure science fiction.

cyanydeez11 hours ago

I love the ability to spin up any repo on github by pointing a local model at it with zero cost beyond the heat & electricity.

onion2k10 hours ago

[dead]

ai_fry_ur_brain10 hours ago

Yeah, and we still do take a week for people that actually care.

If I start prompting away the core of a new project I lose interest in the entire thing almost straight away. I hate it. The next day I could care less about it. In fact it just makes me lazy, like a fat person who drives everywhere.

I love typing code and thinking for myself. Im going to continue to do that. I still dont know anyone who's shipped anything truly useful with this garbage tech, let alone with a local 30b param model. So much cope in these comments.

Spending 6k on hardware to run the worlds most mediocre model truly does make you an incredibly stupid person, so Im not really suprised by these comments of people saying these tiny models are helping them so much.

Its like a special needs kid all of sudden got the ability to code, of course they'd be impressed by basically all the code it produces.

j_bum9 hours ago

I mean, have you looked for examples of things that people using local models to build and ship? Or are you just assuming it doesn’t happen?

I’ve used Qwen 3.6 27B for many things at work, and I’m regularly able use it for reasonably scoped tasks.

I’m not saying these models are perfect.

But you are complaining about people on the extreme, while at the same shouting from the opposite extreme.

hollowturtle8 hours ago

In what era spinning up a PoC required a week of work? Especially on the web. I've been a developer for roughly 20 years and that has never been the case, to the point that I believe people impressed by LLMs are the same who had a very low productivity. Today we have game jams as short as 3 days and talented people are able to produce very good PoC, with some almost complete!

janalsncm4 hours ago

1) It depends entirely on the concept you are trying to prove and how experienced you are in that domain.

2) Not every team will have someone with 20 years of experience in a particular domain eager to spin up a PoC.

spiralcoaster8 hours ago

So what you're saying is that all PoC's are guaranteed to take less than a week of work.

What are you even saying? Are you aware that there is a massive range in the scope of projects? You must work on some incredibly simple CRUD apps if this is your take.

Aurornis10 hours ago

> and it can fall back to similar examples in the training data easily.

This is an underrated consideration when evaluating the small models: The further you deviate from standard example code, the more their weaknesses show.

My experience is that Qwen3.6 produced some amazing results for a small model when I tried it with simple apps that are widely reproduced everywhere. If you want a React TODO app or to set up a little boilerplate app with shadcn and other popular tools, it will produce something that looks not too bad.

Then when I started straying outside of common tasks and into some of my more niche work, it would spin for hours and go in circles before finally producing some groan-inducing output that wasn't usable.

If you're looking for a model to help with simple refactoring or small tasks where you provide very explicit instructions for exactly what you want, but you don't want to do all of the typing yourself, they can do a lot of good work, though. But you're right that once you get into long context sessions involving topics off the beaten path, the weaknesses are very apparent.

The quantizations that are popular for making these models fit on smaller hardware make the problems worse. When you read it about online there is almost a consensus that 4-bit quants are lossless and that you can use q8_0/q8_0 kv cache quantization without any real loss, but in my experience with real projects there's a substantial degradation in long context performance with any of these quants.

CMay9 hours ago

This is my experience too. Qwen optimizes for a lot of scenarios which masks their weaker generalization compared to US frontier models.

Never go below an fp16 kv cache unless you've already tested it in advance with your model on a verified task that you know it can successfully complete. People should also test the difference using the exact same seed value so they can see how the tokens diverge. If you have memory constraints, sometimes you can still use an fp16 kv cache and use storage for an agentic buffer to work your task with mixed abstractions rather than having everything in memory.

For 4-bit weight quants, Gemma 4 31B QAT is where people should be looking instead of Qwen 3.6.

Zambyte10 hours ago

I have been using pi (and previously the codex cli) with Qwen 3.6 27b with 100k context for my development at work, and I have been very blown away by how well it works. It's not perfect, but it's enough to accelerate my normal development flow. I mostly use it for writing Go and C#.

internet10101049 minutes ago

Exactly. If the repo has all of the knowledge living inside of it that window fills up fast, even when using something like codegraph.

sosodev11 hours ago

In my experience, even with basic project concepts the small models struggle to spin up greenfield stuff. There's just too many decisions to be made and they're not good at that.

Modifying existing code is way easier if you don't expect it to be smart about it. Don't say "add X feature" and let it explore the codebase and build its own understanding. Point it at the relevant files and say "the goal is to add X feature to this code, follow Y guidelines". Now you've done the hardest part of making the decisions and it just has to follow instructions while coloring within the lines.

fluoridation11 hours ago

>Point it at the relevant files and say "the goal is to add X feature to this code, follow Y guidelines".

Is that not how you would work with any model, local or not? I wouldn't trust it to make the right decisions unattended. I just know the moment I look away it's going to do something utterly braindead.

tenuousemphasis8 hours ago

Claude Opus with xhigh thinking is surprisingly good at figuring our details. Granted I'm only using it for little hobby projects, nothing overly complicated.

verdverm10 hours ago

I had good results doing an open box reimplementation. Gave qwen access to my old projects and it rebuilt it on JAX.

https://github.com/verdverm/pge-jax

mark_l_watson8 hours ago

There are several general types of tasks that a Gemma 4 12B class model works for me, including: 1) design a large project composed of small libraries that can be coded and tested in isolation. 2) clean up old coding projects: add README files, comment code, show an example of using a new API and have it update API use, etc.

All small-scale stuff. For large integrated projects I am finding DeepSeek v4 Pro commercial API to be very inexpensive and helps me produce good results.

esafak10 hours ago

I don't use local models but have you tried augmenting the model with code intelligence MCPs like https://github.com/DeusData/codebase-memory-mcp ?

h4ny12 hours ago

> In my limited experiments Qwen 3.5 (maybe 3.6 is loads better)

1. Maybe you should tell us what those limited experiments are.

2. Maybe you should actually try 3.6 because it's huge difference in most cases. Don't forget to tell us quants and don't forget to tell us scope.

3. Maybe actually show us data compared to frontier models instead of this... vibe comment. Pretty tired of this kind of comments on HN that doesn't require logic or evidence. Just vibes. Like the pelican riding a bicycle crap that everyone has taken for granted but has no objective way of assessing goodness.

snapcaster10 hours ago

Nobody owes you a scientifically rigorous write up

mashygpig7 hours ago

It's fun to run a model locally, but I don't think the economics make sense for anyone just trying to use models atm. It's absurdly cheap to use the same model via openrouter in comparison.

Seriously, just put $10 into openrouter and play with models that are cheap but bigger than what you'd reasonably be able to run locally like deepseek v4 flash (unquantized). You'll be surprised by how far that $10 goes for a model better than what you'd be able to run. Even further on the model you would be able to run locally. Then think of how many long it would take to match the cost of spend + power on doing it locally...

Saris6 hours ago

Even with deepseek v4 flash I burned though $5 in credits in a day just playing around with Hermes, and qwen 3.6 35B is significantly more expensive.

I can run qwen 3.6 35B on my gaming PC at around 50 tok/s and other than power cost of a tiny bit extra per month, it's hardware I already owned from years ago.

I'm not really sure why qwen 3.6 35B is so expensive on openrouter, it seems abnormally high for what hardware it takes to run it.

Perenti3 hours ago

If you're not good at prompting yet, that $10 doesn't go very far. The local model allows me to learn what works and what doesn't without paying for tokens. Then when I know how not to waste them, I'll try a paid model.

an0malous2 hours ago

Those are all pre-rugpull prices though. Give it a year.

SchemaLoad6 hours ago

Agreed, I'm waiting for the time when 48GB+ ram is just the standard that computers come with rather than being the absolute top tier option. It just doesn't make sense to spend extra on a local AI computer right now when the same money would last for a decade of API pricing.

doodlesdev11 hours ago

I feel like I'm going insane seeing people buy these 128gb MBP for thousands of dollars to run models that are objectively much worse than SOTA and spending so much more. The amount spent on a 128gb M5 MAX can buy you a damned new car here. What the hell am I missing? Are developers in other countries living in such different worlds?

(I'm aware the price is, in absolute terms, more expensive where I live compared to the USA. That reinforces what I think, because anyone sane that would've bought one of those in another country would sell them as soon as they landed here and save that money.)

JeremyNT11 hours ago

I also don't understand why people in this price bracket are buying Mac laptops instead of desktop computers with GPUs? Just to flex that it's portable?

mft_8 hours ago

(I'm not one of the people you're speaking of with a 128gb M5 but) if you want to run one of the medium-sized open-weights models (Qwen 27b, 35b, Gemma 4 26b, 31b) or larger, you get into an interesting optimisation space.

* yes, you can run it on an older/smaller GPU plus system RAM but performance will suffer

* if you want optimal GPU performance you need the model in VRAM plus context, so 24GB (3090, 4090) or 32GB (5090) cards, plus a system that's reasonable powerful to plug them in to. Ideally you'd have a multiple cards working together but for optimal performance this means either 2x 3090 or nvidia's workstation cards.

* you can go for a 128gb Strix Halo system, but the memory bandwidth isn't great and they're becoming increasingly more expensive (5.5k EUR for HP laptop, 3.9k EUR for GMKtec EVO-X2 mini PC)

* you can go for a 128gb DGX Spark (5k EUR+) which also has unspectacular memory bandwidth or RTX Spark (price unclear but probably not cheaper)

* or go for a Mac with a decent CPU and a good amount of RAM (bandwidth varies by model, but typically a bit better than Strix Halo/DGX Spark and worse than bespoke GPUs.

As usual with such questions, there are of course cheaper paths (if you want to accept the tradeoffs) but Macs are reasonable vs. competition for these workloads.

ctkhn9 hours ago

I don't even travel a ton but portability is huge. It's not a flex, it's a functional thing that lets me move around within my house or work while I'm at my parents or traveling or anywhere else. Other than my media collection that lives on my home server, I want most of my files to come with me on my laptop.

jeroenhd11 hours ago

A mac with a boatload of RAM can run models that will exceed the limits of any GPU not worth at least twice the Apple hardware itself.

You get fewer tokens per second, but at some point the balance between quality and quantity makes the large model size worth the spend.

When you're spending this kind of money, you may as well treat yourself to a pretty screen and some decent speakers. Nothing the competition doesn't offer these days, but you get them for free with the car-priced RAM upgrade so why go for less.

FuckButtons5 hours ago

The fact that I can take it with me? That I don’t need internet to still have access to deepseek? The fact that electricity is expensive and an mbp uses ~10% of the power that an equivalent vram set up would using gpu’s. Also, in order to get the same vram I would need to spend a similar amount, but wouldn’t also have a machine that was useful for other workloads that need a huge amount of ram.

indemnity4 hours ago

Potentially going to sound privileged here, but why not both?

Personally when going on the road I like portability (14" MBP or MBA), but at home I want raw non-thermally throttled power.

LeBit10 hours ago

I think it is because desktop computers with GPUs with enough VRAM to run interesting models are insanely expensive, hard to source and consume a lot of electricity and dissipate a lot of heat.

redox9910 hours ago

Yeah, it's a much better idea to buy many used 3090s. 4090s or 5090s if you can afford it. Way faster.

aurareturn8 hours ago

Probably depends on what you're trying to do.

You need an expensive motherboard, cooling, PSU(s) to use multiple high end GPUs together. Then there is the noise and the fact that you can't bring it on an airplane.

ilogik10 hours ago

What GPU can I buy with >100GB of memory?

verdverm10 hours ago

DGX Spark is one, but really depends on how much you want to spend

+1
aurareturn8 hours ago
bastardoperator9 hours ago

I have a bunch of computers and gadgets, why settle on one?

satvikpendem4 hours ago

Unified memory.

btbuildem8 hours ago

I think it's silly to go for a laptop form factor. Last fall I put together a workstation with two second-hand 3090s in it (paid $850CDN each, now the best I can find is $1200). With 48GB VRAM it's reasonable - and I've been using Qwen 3.6 27B for various tasks around building KGs from text corpora / reasoning about them.

I've ran comparisons against everything that's available on OpenRouter (well, as of few weeks ago), and for $0/tok, the local 27B Qwen can't be beat. Sure, it's slower, and yeah, the office is a few degrees warmer than it ought to be -- but nobody can pull the plug, nobody is watching over my shoulder, and the results are on par with SOTA.

Can't wait for a similarly sized Qwen 3.7 - from what I've seen so far, it's a leap ahead of the previous version.

Gigachad6 hours ago

I think it still makes sense to wait. Hardware is currently hyper expensive and cloud models are subsidized. Waiting 2 years or so once memory prices have dropped and datacenters start wanting a profit would get you a usable setup that's more economical.

whichquestion6 hours ago

How much electricity does running your local models take?

alemanek2 hours ago

If your workflow benefits from the speed it quickly pays for itself when factoring in developer salaries here in the US. I recently switched companies and they bought me an M5 Max 128GB as my dev machine.

Builds and local test runs are 3 times faster than the Windows laptop option. The machine will pay for itself just based on that within 3 months. I can spin up a local kubernetes cluster and do full integration tests while I am working on other things as well.

It isn’t a strictly Mac vs Windows thing though. It looks like the culprit is the MDM software on the Windows machines is just crazy slow and constantly getting in the way.

If I was paid less it would definitely make less sense for the company to pay for this machine.

bellowsgulch10 hours ago

> Are developers in other countries living in such different worlds?

Yes. Your people earn an order of magnitude less income than Americans.

adamors11 hours ago

Yes they are, 6k is peanuts to a lot of people.

verdverm10 hours ago

It's not always about the price or being the cheapest. For me, it's about freedom, both to play and from the govt/corp censorship.

reilly30009 hours ago

It’s an asset on my balance sheet that’s already appreciating nicely and will likely be resale-able for what I paid for it for the next 7-10 years. I am on an Apple monthly installment plan so $5k is $416/month for 1 year, no interest. I’m able to run DS4 scale models and other open models without quantization, often multiple at once.

Imagine its value if war broke out over Taiwan / Greater China, or really any of the dark scenarios with global connectivity or the truthiness of commercially available models. It is a very, very difficult piece of equipment to make at any other moment in history. I wish I could have purchased more. I saw the signs and price trends and out of stocks as they unfolded. No doubt others with the means are stockpiling.

simplyluke8 hours ago

> will likely be resale-able for what I paid for it for the next 7-10 years

There is not a period in the history of computing where this is true of consumer hardware over a decade for anything other than hardware already at the very bottom of its depreciation curve. It is surprising to me that you state that as an obvious assumption.

I suppose if your base case is Taiwan war that may be true, but there's a lot of folks who seem to be assuming the current hardware crunch will go on indefinitely when the natural state of hardware is getting cheaper over time.

znpy10 hours ago

> Are developers in other countries living in such different worlds?

Yes. Back in the my days at $faang in europe it was not uncommon to hear people getting 120-160 k€/year in compensation and we were “poor” compared to us engineers at the same faang (4-500 k$/year total compensation) with a bit of seniority…

doodlesdev9 hours ago

That makes a lot of sense! I have no idea how I'd use that much money, so maybe the 128gb MBP for messing around with local LLMs wouldn't sound so absurd :)

zx7610 hours ago

I see a lot of people writing about how expensive the hardware to run these local models is - but see no mentions of the Intel Arc Pro B50/B60/B70 which seem like decent value if you're not interested in Apple kit (as much as anything can be decent value in the current status quo).

I just got a B70 with 32GB RAM for the equivalent of $1200 (incl. sales tax and import duties to my non-US location, so presumably it could be cheaper elsewhere). The memory bandwidth is 608 GB/s. For M5 Max (32-core GPU) it's 460 GB/s and for M5 Max (40-core GPU) it's 614 GB/s. A 3090 is still faster at ~900 GB/s but you're getting 32GB VRAM for a lot less than equivalent Nvidia cards. It's about 1/3 the bandwidth of a 5090 for 1/3 the cost, but with the same 32GB VRAM. If you're interested in being able to run bigger quants with some context and stay on a lower budget then it's an appealing trade off.

I'm still exploring using these local models so don't want to spend the equivalent of $5 000 - $10 000 just to test it out. I don't mind slightly slower perf to do some experimentation more affordably.

I actually got an B50 16GB (with meager 70w TDP!) first to test an Intel card with my stack - it worked easily with Ubuntu & Vulkan. I'd read a lot about hassles and people writing them off as unusable but it seems like these are often with SYCL which doesn't even seem to outperform vulkan and so why bother? (The B50 was just $370 inclusive tax and duties). Literally `apt install` the vulkan libraries and it worked with default xe driver in 26.04 and the vulkan build of llama.cpp. The SR-IOV PF/VF also just works with qemu/kvm, no tricks required. Since I got it fwupdmgr has updated the firmware twice so Intel is presumably actually trying to support these products.

bblb2 hours ago

I got B70 few days ago. Running on CachyOS. 9070XT on PCIe x16 and B70 on the x4.

ROCm nightly was pretty easy to setup and get up running. The 9070XT has been a decent card for my use cases.

But the SYCL ecosystem versions. Absolutely horrendous and everything is hundred commits behind. Vulkan is probably the only way forward with this card.

kristianp2 hours ago

Interesting that Intels latest consumer GPUs only have 10 and 12GB respectively for the B570 and B580.

beastman8212 hours ago

FWIW I'm running gemma4 31b on my 5090 and it's pretty great as well.

QAT, MTP, 128k context.

I liked Qwen 3.6 27b too, it just seems that Gemma4 is a bit underrated.

kofu12 hours ago

My experience also aligns with this. I'm running gemma4 31B on a 4090 through llm.cpp with unsloth models. I also run Qwen 3.6. Qwen is good for thinking and planning as it is faster, but Gemma4's generated code is much higher quality in the first try (Rust, C++ and C#). so it needs less revisions to be at a level I'm comfortable for merging.

beastman8211 hours ago

I second unsloth models. I'm using them over blackwell-oriented nvfp4 models as they are (empirically) top quality and performance.

kroaton6 hours ago

NVFP4 will be better if the model provider actually post-trained properly after quantizing.

accrual12 hours ago

Nice. I flip flop between Qwen 3.5 9B Q6_M and Gemma4 12B Q4_K_M on a 4080 Super. They run at about the same speed and I can have them review each other's plan or diffs. For smaller projects I find them very capable, and I can step up to a better quant for slightly more challenging work.

nok22kon11 hours ago

you can probably run Gemma4 26B on your card also at 4 bit. World of a difference compared with 12B.

zingar10 hours ago

Where does “big model highly quantized” start getting worse than “smaller model less quantized”? Is there a general formula or is it just trial and error?

nok22kon6 hours ago

paper is a bit old, but matches current empirical recommandation: a good starting point is the biggest model you can fit at 4 bit

https://arxiv.org/abs/2212.09720

nozzlegear10 hours ago

I can't Gemma4 to actually finish a turn properly, it's always ending abruptly or making malformed tool calls. It's probably something I've misconfigured in oMLX or Opencode.

acrispino3 hours ago

possibly a problem with the chat template

https://huggingface.co/google/gemma-4-31B-it/discussions/118

clusterhacks9 hours ago

Huh. Same problem, and I run with llama.cpp. In my case, Gemma4-31B (4-bit quant though) will just stop sometimes.

0x000000012 hours ago

> ... on my Macbook Max M5 128 GB

Local development for who? How many of y'all are rocking 128GB of memory? Am I reading Apple's site correctly that it's a $10,000 laptop?

kllrnohj12 hours ago

You don't need nearly that much RAM to run Qwen 3.6 27B, though. qwen3.6:27b-q4_K_M is only 17GB, for example.

DanHulton11 hours ago

This is what I run on an M5 MacBook Air 32GB. Works great.

I’m not having it build whole features from scratch, though. I give it pretty explicit instructions closer to the class or function level, and it still saves me an immense amount of time, while I’m very connected to the code that’s written.

Definitely the sweet spot for me.

rhdunn12 hours ago

A 27B model can fit easily on a 32GB VRAM card (e.g. 5090) or a 32GB computer in RAM at FP8/Q8 (unsloth have 28.6GB Q8 files).

For 24GB VRAM cards (e.g. 4090) you can use Q6_K (22.5GB) or Q5_K_M (19.5GB) quants, possibly offloading some of the weights to RAM.

jboss109 hours ago

For the 35B model, ofloading to RAM doesn't slow it down much. If you have a nice CPU and a weak GPU, it will be fast enough to use.

__s12 hours ago

I'm on 128GB ram strix halo, bought framework desktop for a few thousand CAD back when everyone was calling framework desktop overpriced

wpm12 hours ago

It wasn't $10k a month ago

bahmboo7 hours ago

I work with a lot of 3D graphics and geo stuff so I can hit the ceiling with my 48 GB mac. It's not all LLM work. I prioritized more storage than RAM with my budget. Being able to run local llms has greatly helped me understand how they work. For day to day dev I pay for Gemini or Claude.

mr_mitm11 hours ago

Think commercial. My company invested in a local rig since privacy is important to our customers and sometimes I want to use these models on private data.

Gigachad6 hours ago

Even in that case it would make more sense to put the hardware in a server rack shared with everyone rather than inside macbooks.

At any rate it makes a stolen backpack or spilled drink a lot less damaging.

scotty799 hours ago

Qwen3.6 runs great on GPU with 24GB VRAM. You could get used 3090 for it.

spike02112 hours ago

Certainly won't work on my M4 Pro with 24GB lol

MatthiasPortzel11 hours ago

I’m using it on a 48GB machine and it causes some lag, so it might be worse on 24, but it should run.

Unsloth recommends 18GB of RAM for Qwen3.6-27B (for their version of the model).

https://unsloth.ai/docs/models/qwen3.6

whynotmaybe12 hours ago

I feel you!

Sent from my 8gb M2 Mac mini.

kevinrineer3 hours ago

I'm still rocking my nvidia 2060, which I had purchased for $400 at the time.

I struggle to imagine purchasing multiple 1k+ cards on my own dime.

jimmaswell3 hours ago

My partner has been trying various models on our server but we haven't gotten anything to run at a usable speed. Q30H engineering sample (Xeon 8570) with two cpus, 56 cores per CPU, 768GB DDR5 RAM running at 5600MHz, two old 3090s in it at the moment with an NVLink and we could put our third in there. We built this server before the prices skyrocketed because we happened across some Tyan boards on Woot that were absurdly cheap for what they are (the motherboards should be $1000+ but we got them for a few hundred).

This thing sounds like it should be a monster but we keep running into issues of the old GPU architecture, lack of support for AMX or AMX not being as big of a help as you'd hope when it does work, etc. Apparently we only got 5 tokens per second trying to set up Qwen 3.6 27B, and a similarly bad result trying to run GLM 5.2 which fits in memory but the custom kernels we had to try to contrive were too slow. I feel like this system should have tons of potential, especially if something was designed to let the AMX and huge system memory shine.

Does anyone have any suggestions? This thing was fun to set up and it's really cool but it's been a bit disappointing not getting any big tangible results so far.

We have a similar system on a single-cpu Tyan board with 256GB RAM that I'm hoping we might be able to use in conjunction with the first one if EXO ever gets good Linux support for GPU/RDMA over InfiniBand.

christina973 hours ago

Start with a quant, you can run the Qwen 27B model at 4-bit on one 3090, presumably 6/8-bit on 2x3090.

cpburns20099 hours ago

Before you run and go purchase a unified memory computer (e.g., DGX Spark, Mac, Ryzen AI Max 395 / Strix Halo), be aware dense models generally run slow on these machines. Dedicated GPUs run dense models significantly better. Look for benchmarks for your prospective machine. If you really want one of these, you'll be better off running Qwen 3.6 35B or another sparse MoE model.

ctkhn9 hours ago

I have been running qwen 3.6 35b a3b with opencode on my macbook pro 16" with m3 max and 64gb ram, and it's been great for local planning and coding. To be honest I have been on and off wishing I had future proofed with the 128gb after seeing how powerful 64gb is. On the other hand, I also haven't run up against a wall with a model that is just slightly larger than qwen.

Xeoncross8 hours ago

What is the speed on responses? (t/s)

The full 128GB is surely helpful in keeping browsers, editors and other things running since even 20-35GB models + k/v caches can eat up a lot of the core 64GB in my experience.

LeifCarrotson8 hours ago

I've also been running Qwen 3.6 35B A3b on my Windows laptop (64 GB RAM, a 4GB GPU) and it's at least tolerable. It's not fast - a few tokens per second, slower than reading speed - but I can give it a task and come back later. That was a $600 laptop off eBay a few years ago, not a $6,000 machine.

Are these unified memory Macs and giant 24GB desktop GPUs achieving dozens or hundreds of tokens per second commensurate with their 10x-20x cost?

jaggederest5 hours ago

35b A3b runs ~100 tokens a second on the best M5 Max gpu setup.

mips_avatar8 hours ago

I think the sweet spot right now is 2x 3090s and a pcie 4 motherboard with 64-128 gb of ddr4 ram, you can build this right now for $3k and it runs qwen 27b/35b stupid fast at int4.

tasoeur59 minutes ago

I know how to build PCs but suck at picking parts, would you happen to have a recommended build or links to people who've done similar ones? Heck I'll click on an affiliate link to support the author of the build :-)

starefossen10 hours ago

We have have had the same experience (qwen3.6 rocks) when we are evaluating local models for our developers in the Norwegian Government https://github.com/navikt/mlx-workspace

XCSme8 hours ago

Considering the cloud version, all three models compared in the article (Qwen 3.6 35BA3b, 3.6 27B and DeepSeek V4 Flash), have very similar performance[0], BUT on cloud, for some reason DeepSeek V4 Flash is 10-20x cheaper than the Qwen models.

If Qwen models are so much easier to run, why are the providers charging more than V4 Flash?

[0]: https://aibenchy.com/compare/qwen-qwen3-6-35b-a3b-medium/qwe... <-- compare how the three models draw hamsters svgs, lol

androiddrew3 hours ago

Dual AMD Radeon AI Pro 9700s (600 watts total 64GB of vram) runs Qwen 3.6 27B at FP8 with mtp on vLLM at 50ish TPS for decode. Cards cost $1300 a piece. Enough KV cache to fully max out two concurrent sessions.

It was super rough going to get started with them back in January, but right now the cards purrrr and I haven't even tried tuning yet. You need to use a patched vLLM image with aiter but besides that things are finally working on the ROCm front.

ljosifov9 hours ago

Running 27B dense model on M5 128GB is ok, but one can do better.

On M5 128GB one can make use of the ram and use sparse MoE. For example, DeepSeek-V4-Flash will fit, served by DwarfStar (https://github.com/antirez/ds4). One will probably improve 2x the token/sec speed, given DS4F 13B activated params in the MoE are ~1/2 of the ~27B of the dense Qwen.

27B Of the Qwen fit even on a cheaper 24GB card, e.g. amd 7900xtx (<$1K?) or slightly dearer nvidia 3090 (with cuda). With ~900 GB/s bandwidth they will likely be ~50% faster than the M5 with 600 GB/s.

drnick19 hours ago

Works beautifully on a 3090, very usable speed. Don't expect Opus 4.8-level performance, but there are some things you just need to keep local.

ljosifov9 hours ago

True - they are workhorses. Not super bright, but good enough for lots of everyday tasks. I've found sweet spot to be turning thinking off, as it adds small or no value, while increasing the token count and waiting time. Last 27B I used was https://huggingface.co/Jackrong/Qwopus3.6-27B-Coder-GGUF - specifically post-train adapted a bit to run with thinking off. I saw today the 35B-A3B MoE from the same HF acc is out, downloading that rn to try.

kroaton6 hours ago

Please don't use that garbage. Just use the base Qwen models or Nex/Orinth, as those are the only properly post-trained finetunes. The Qwopus models are marketing.

aand166 hours ago

Can you expand on why Qwopus is not recommended and what "Nex/Orinth" brings to the table?

brandall108 hours ago

This is discussed in the article:

"My personal impression is that within these quantizations Qwen 3.6 27B is as good as (or maybe slightly better than) DwarfStar4. Though, I won’t be surprised if for longer context projects DS4 has an edge."

kroaton6 hours ago

"DeepSeek-V4-Flash will fit" At Q2, 2bit? Lobotomized to death.

rvz15 minutes ago

When reading the comments, it seems that in the AI race to zero, Apple was already at the finish line. as predicted.

So it will be no surprise that there will be a time where everyone will be able to run a local model, say GLM 5.2 locally on their machine. Like it or not.

rhgraysonii12 hours ago

I have been having pretty good success with Qwen 3.5 9B for "nontrivial but not challenging work all things considered" -- it runs great on my 24gb unified memory m4 pro MacBook Pro. What do the baseline specs look like Mac-wise for getting this model to run? Am I looking at a 96gb? 128? 256?

MatthiasPortzel11 hours ago

I posted this elsewhere, but Unsloth says the 27B model should run in 18GB. That leaves little RAM for other tasks, but it depends on your tolerance for slowness I suppose. I haven’t tried it in 24GB so report back if you do.

https://unsloth.ai/docs/models/qwen3.6

dofm12 hours ago

You might be interested in Ornith 1.0 9B, which is a new intriguing post-training of Qwen 3.5 9B.

Qwen 3.6 27B will run in full offload with a 4-bit quantisation in 64GB on an M1 Max. It is quite slow.

I don't know about 48GB but 64GB should be enough.

simonw11 hours ago

I've been trying Ornith 1.0 35B, I'm pretty impressed with it: https://simonwillison.net/2026/Jun/29/ornith/

dofm11 hours ago

It's the one I have loaded right now.

It got rather tangled up when I tried it with one of my coding tests, which is a simple wordpress plugin, but I frustrate the model by asking it to write code for older PHP, break WP coding conventions and use a rather bespoke method for arranging code in objects. So it is sort of a hybrid of a green field and brown field task; a bit muddy.

It did not do as well as Qwen 3.6 35B, but the way it worked through its thoughts was interesting.

TBH I struggled to understand what DeepReinforce are doing that is materially different; the explanation of their training technique goes over my head at this point.

jensC10 hours ago

It is also available with Ollama now and I am equally impressed too.

rhgraysonii12 hours ago

Thanks! I was thinking of doing the 128gb to have some future proofing. I figure at this point, it's akin to a mechanic keeping great tools around, when it comes to having this sort of homelab and exposing it for your own uses. And great practice for building the next era of user facing computing that will be around as this proliferates.

dofm12 hours ago

I would not buy a 64GB model again, probably, if this were to remain particularly important to me. But I gather memory bandwidth is pretty important here.

So for example I'd favour a used M1 Max over a used M2 Pro, at least based on my naïve understanding. Not quite sure where the balance changes.

There appear to be some hardware improvements with the M3 and up regarding the Apple Neural Engine which I'd hope would show up in MLX performance; I remember seeing some optimisations in image generation models that are only possible on later hardware.

The GPU cores are progressively better I believe, but the memory bandwidth is lower. Though perhaps the M4 can get closer to actually saturating said bandwidth.

(And I must reiterate that my understanding of this stuff is pretty naïve.)

+1
freehorse10 hours ago
pkroll9 hours ago

Since no one else posted it... I have open-webui pointed at a linux box with 128 gig of ram and an RTX Pro 6000, and after a couple of runs on trivia, had it do one of Open WebUI's conversation starters: "Show me a code snippet of a website's sticky header in CSS and JavaScript."

72.06 t/s. That's the full Qwen 3.6 27B model BF16, using MTP, running on Ollama. Yes I know I should bite the bullet and get vllm running on that box.

That was, also, at a 570 watt limit: I normally run a little less, but when I first tried this I actually forgot I had set the limit to 300 (it's a hot day, I figured why fight the A/C?), and at 300 watts the same question came back at 69.38 t/s. (The extra power matters more for compute bound things, the difference in generating LTX2.3 videos is considerably higher... but still not linear.)

kpw9412 hours ago

> What it does:

>

> --jinja for tool calling support

Pretty sure this flag hasn't done anything for a while. It's enabled by default since ~November of last year

blopker11 hours ago

I've been working with local models for the past year. There's so many possibilities, but I don't think coding is one. Coding requires so many layers beyond inference; I spent so much time trying to replicate what Claude Code does end to end locally. Understanding all the layers and keeping up with the advancements feels like a slog. Even this article messes up and misunderstands what some of the settings are doing. Qwen in particular seems to work at first, then often gets stuck in thought loops when used for actual work.

However, text-to-speech, speech-to-text, and non-code LLM use cases are so useful to have local, and don't require big hardware.

Having a universal reliable inference engine interface, I think, is the big unlock that needs to happen before app devs can ship these features.

Personal concrete use case: meeting recording app. This uses Parakeet + Qwen to create local transcriptions and post-cleanup, respectively.

Right now this app has to download and manage all these models, then bundle an inference engine to run them. It's a lot of code that probably should belong to the OS, or at least a standard interface.

While apps can offload some of this to llama.cpp or a similar process over http, that's another set of setup for the user to do before they can have a useful app.

Anyway, if you're getting started on a Mac, I'd suggest trying out oMLX (https://github.com/jundot/omlx) before messing with llama.cpp. In particular they have community benchmarks so you can see what kind of performance you're likely to get: https://omlx.ai/benchmarks. I wished each one had more configuration details though.

iwontberude11 hours ago

> I don't think coding is one

Certainly this is falsifiable easily by any of us doing it on a regular basis

> Qwen stuck in thought loops

This does happen when context is not managed effectively; creating plans, using subagents and compactions strategically resolves this

blopker10 hours ago

Sure, local coding is clearly _possible_, but it's not practical for most people. I've yet to see a reliable setup, if you have one, I'd love to see.

> creating plans, using subagents and compactions

Yes, these are all things that Claude Code does for you. However, for the thought loop issue, these are not the fixes. The canonical fix is to limit the number of thought tokens (llama.cpp's `--reasoning-budget`) or try to mess with the various penalty parameters. In any case, it's not a solved problem as far as I can tell.

RedCinnabar12 hours ago

Call me back when you can run these models on 16GB of RAM and any recent i5/i7. Until then, there’s no point on using these toy models.

guax10 hours ago

Its so funny, these "toy models" would be the wet dreams of researchers not 5 years ago.

Progress marches without mercy.

kgeist8 hours ago

Yeah people don't realize these "toy models" now completely destroy gpt-4o on most tasks, and no one called gpt-4o a toy model back in the day... It was OpenAI's flagship model from 2024 to 2025.

Gigachad6 hours ago

Tbh in 2024 most were calling these models useless for programming and a scam. It wasn't until this year things really changed. My experience with Qwen 3.6 is it can do things, and it's super impressive it can do things, but it's not any more productive than doing it myself.

giancarlostoro12 hours ago

You need it to run in about 8 GB so you have extra space for the context window.

jboss109 hours ago

They can be ran on 32GB with 8GB VRAM. I don't think these will be on 16GB for a while. (35B MoE)

TheCycoONE9 hours ago

I have 32GB of RAM with 16GB VRAM and I haven't had a lot of luck running larger models like this. Are you able to expand on that?

slim8 hours ago

use llama.cpp with cuda

TheCycoONE7 hours ago

The problem may be that it's a 7800XT which handles memory contention by freezing.

Catloafdev12 hours ago

Hello, it's the internet calling, today is that day.

https://github.com/ikawrakow/ik_llama.cpp

Edit: it's gonna be slow if you're not using any VRAM. But it's possible. Software isn't going to speed that up anytime soon, it's just a hardware bandwidth limit.

jjcm11 hours ago

I'd also look at the qwopus distil if you're using qwen 3.6 27b. It's a nice refinement of the current 27b with slightly better stats.

Jackrong has a few different ones available depending on what you're trying to do: https://huggingface.co/Jackrong

MangoCoffee10 hours ago

Running LLMs locally for development doesn’t make sense to me. The hardware gets outdated in just a few years. Even hyperscalers replace their GPUs faster than they can buy them, plus the cost of running it locally, isn’t cheap. the cost saving just ain't there.

kgeist8 hours ago

From the perspective of LLM inference, you currently mostly care about:

- Memory bandwidth; BUT the requirements are currently capped because models have stopped growing at around 1-1.5 trillion parameters for quite a while now. You only need more bandwidth if you're optimizing for the highest possible concurrency (i.e. you're a cloud provider). Also, MoE exists.

- Support for native low-precision math (like FP4 and FP8); BUT once your GPU supports native FP4 (Blackwell+), there's generally no reason for GPUs to go lower because of the obvious quality degradation.

- VRAM capacity - just like memory bandwidth, it's practically capped by 1-1.5 trillion parameter models and is unlikely to need much more in the near future. Also, the current trend is toward miniaturization: modern 30B-class models (which require far less VRAM), now completely destroy 200B-class models from just two years ago on most tasks. We also have better understanding now how to compress contexts.

Most model improvements currently seem to come from RL/harness-based methods, not from scaling models or running new algorithms that require fundamentally new GPUs.

So I don't see why GPUs that exist today must become "outdated" in a few years. They'll be seen as outdated by hyperscalers because they need to serve the maximum number of users as cheaply as possible, so of course they'll replace their GPUs with newer ones that have higher memory bandwidth or more tensor cores. But you don't need that for local inference.

logankeenan9 hours ago

3090 was released six years ago and is still very relevant for running models locally.

guax10 hours ago

> replace their GPUs faster than they can buy them

How does that work? They have negative GPUs now!

jboss109 hours ago

Qwen 3.6 35B runs on 32GB with a 1080. That GPU is from 2017.

mbgerring11 hours ago

Something I find really confusing from this post is the MLX versions of the model running much slower. As I understand it, these model versions are meant to take advantage of Apple Silicon and MacOS APIs, and should produce better/faster results. Any insight into what’s happening here?

trey-jones4 hours ago

Qwen3.6 was the first model I ran locally that seemed smart, but qwen3-coder:30b is way, way more responsive and more accurate for writing code according to my tests, including human-eval. If you can run one than you can almost certainly run the other. If you haven't tried qwen3-coder I would definitely recommend it. It feels positively snappy compared to every other local model I've tried. All you need is 32G VRAM and some heat dissipation.

jboss109 hours ago

I don't understand the talk about how expensive the hardware is. These models can run on very old or old and low end. I've been running Qwen3.6-35B Q4 on an old 1080 GPU(8GB vram) with 32GB sys RAM. I have a i7-12700.

It does about 30 tok/s which is enough for me. It's about half what the online models do, but it's enough.

I've heard their 9B models are also good, but they aren't much faster if you have the ram and a nice cpu.

These qwen3.6 models are the first ones I find can do much. GPT OSS was good, and Gemma4 is better. Gemma knows more facts, but qwen3.6 is smarter.

CMay9 hours ago

The MoE models hold up better on old hardware, but the dense models like this post promotes are in fact better. This isn't unique to Qwen. Are the dense models better-enough to use given the performance costs? It depends on what you are doing.

If a model runs fast enough for your use case and does exactly what you need it to, then you don't need a much slower model that might be more accurate. If you do anything more complicated, the dense models become more necessary and they are much more computationally heavy by comparison.

On your hardware an Unsloth quant of Gemma 4 26BA4B QAT would likely give you better results, but because it has 4B active parameters instead of Qwen's 3B active parameters, it will probably run slower.

felooboolooomba9 hours ago

Mind sharing the command line you use to rig it up?

kopirgan2 hours ago

Lost count of number of times I read this or similar:

For me it’s the first local model that actually makes sense as a general intelligence.

Otternonsenz11 hours ago

Is there any hope for people that cant even run 27B parameters, Qwen3.6 or otherwise? Are there any quantized models that do well with tool calling at smaller parameter sizes?

I do not have a crazy rig, a modest gaming one at that, but in trying to understand more about agents and their capabilities, I am SOL with my 16 GB of RAM and 8GB of VRAM. I can get most small, non tool calling models to perform well, but I've had major issues with anything over 9B doing anything more than reasoning (egregiously slow at higher parameter counts).

And so far, I cant get even Pi to extend itself or do any meaningful work with any of the models I currently can get to run.

fumeux_fume11 hours ago

I suspect with those specs, you're not in the game right now for reliably using local models for code generation. The easiest way in is a MacBook with at least 32GB of RAM. This should be able to run a 4bit quantization of qwen 3.6 using the MLX format really well.

Otternonsenz10 hours ago

Now that I’m dipping more into this space, am gonna see what I can upgrade with the motherboard I have, but RAM pricing as it is, I’ll need to be smart about when I upgrade.

I very much appreciate the frank response, as it makes me feel less defeated at knowing my understanding of how it should work is not the full issue, hahaha

fumeux_fume10 hours ago

M series macs are usually used for running these LLMs locally because the GPU and CPU share the same pool of RAM at very low latency. If you upgrade your RAM on a different kind of chipset without the Unified Memory Architecture, then it'll be much slower to produce all the tokens you need. Just another data point to add to your upgrade equation.

jboss109 hours ago

I have 8GB VRAM, but 32GB sys ram. I can run qwen 3.6 35B at 30 tok/s. I also use pi, and it's smart enough to extend itself(multishot and maybe a few tries)

For you, you could try gemma-4-26B-A4B

jboss109 hours ago

I have 8GB VRAM but 32GB RAM. Qwen 3.6 35B runs nicely.

You should look at gemma-4-26B-A4B. 16+8=24gb and Q4 is about 16GB. Not much context left, but might run.

fluoridation11 hours ago

I think at 16 GB you'd struggle to run the regular development tools nowadays, forget about any interesting inference.

Otternonsenz10 hours ago

Fully agreed, and my hope is as open models grow and change, that getting some amount of this working on Pro-sumer hardware will be more attainable.

But certainly seems like we are a few years away from that, sadly.

Am I also screwed in being able to train my own small model or adjust another one with such a non-workhorse PC?

fluoridation10 hours ago

Training requires even beefier hardware than inference.

spaqin5 hours ago

I got a 32GB of RAM and a 6GB VRAM card; tried both 27B and 35B, with pi. And it's a laptop. Speed isn't exactly a concern for me, I can enjoy the real life while the agent is doing its thing. And while they appear smart enough on the first glance, once it reads a file that's more than 100 lines it loses all memory of anything I asked it to do. The lack of failure state or any indication what might be wrong here is just frustrating. Guess local models aren't for me, unless I move to Silicon Valley and redeem my free MacBook at a local Startbucks.

jadbox11 hours ago

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SamInTheShell8 hours ago

This is probably the first small model I got through some simple web game tests without having to reset the context. It tends to opt to overwrite an entire file instead of doing edits... which editing is where most of these small models fall apart along with getting stuck in repeating loops. Only 24k tokens in so far, it did some decent newbie work.

marcuskaz9 hours ago

When is Amazon Bedrock going to get these newer models?

Offloading compute to them is much easier, except its still a limited set of open models. Most companies are already running in AWS, so it's an easy add, models run in a trusted location, just another line item on the Amazon bill. You don't have to talk anyone into signing up with a new vendor. Plus you don't have to worry about local hardware at all.

IronWolve11 hours ago

I think things are moving fast, tested that new vibethink-3B, works on many small tasks/fast, and playing with ornith-35B with a draft vibethinker-3b as a draft gave me some good speed/results.

Was just trying to see how small I could go and get acceptable results, but yeah, larger Qwen 3.6 with MTP is going to be better. Cant wait to see how AI model (unsloth/local-llm/heretic/reaper/etc communities) are tweaking/engineering quality down into smaller models. Lots of new things coming out.

happyash125 minutes ago

Qwen is so good a model.

blueside10 hours ago

i have been trying several open source models for the last few years. running qwen 3.6 27b on my 4090 is the first local llm i have used that made me start to second question if anthropic and openai are actually worth the (already) insane valuations.

don't get me wrong, the frontier models are leaps and bounds ahead of what qwen/kimikgemma are doing - but i don't need to drive a ferrari to the grocery store everytime either.

HotGarbage12 hours ago

And AI companies will continue to buy up all the silicon to make this prohibitively expensive to run at home.

dofm12 hours ago

It will run (somewhat slowly) on a five year old M1 Max with 64GB RAM.

Personally I prefer the 35B MoE model, which is fast enough to be interactively useful, and capable, but I would probably use the 27B if I wanted to generate whole applications like that.

I am unconvinced that most "local" AI applications need anything much more powerful than the Gemma 4 12B model. Local agentic coding is a small niche, but there are plenty of ways a local model can help with development tasks.

I would really like to see a 12B or 16B Qwen 3.6.

I am currently playing with Ornith 1.0 in the MoE configuration, which is based on the 35B variant of Qwen 3.5; I am not sure if it is better than the 3.6 version.

Benchmarks say it is; my own silly tests either suggest otherwise or suggest that I have to talk to it a bit differently.

sleepyeldrazi12 hours ago

I need to ask, since I have desperately wanted to make Gemma 4 12B work, but im not sure if its the quant (i usually up it to q8, which is a lot higher than iq4_nl that i use for 3.6 27B) or the model itself, but it just starts confusing itself really quickly when I give it coding tasks. And quickly starts failing tool calls.

I really want to have a model that i can run locally on my 24gb m4 pro mbp for when i don't have internet to connect to my 3090 running the qwen, and i love how gemma 4 models 'feel', but i can't make them be competent. I am in the middle of finetuning both qwen3.5 9B and gemma 4 12B just to try and make those bridge closer to 27B for coding/agentic tasks (and am trying to ternarize and DQT 27B so that it fits in ~9gb pre-KV).

How do you run the gemma? What do you use it for (and in what harness), maybe llama.cpp and pi-mono just aren't for this model and that's what i'm doing wrong.

dofm11 hours ago

It sounds to me like you're further along on this than I am, if you are fine tuning?

I am still mostly tinkering/learning rather than spilling out code, and I feel quite slow on it. So it doesn't matter too much to me if it is really slow. More the journey than the destination if that makes sense. I'm stubborn.

I have tried the Gemma 4 12B model (Unsloth's QAT version) with search/browse tools in LM Studio and Unsloth Studio, when I am trying to understand a new thing.

Basically I get it to write introductory starter documentation for me to absorb, because my big personal problem, these days, is focussing enough to start a project and then digging in; I need the help.

I have found its limits on obscure packages (that it sometimes makes up) but before that it's a bit like stumbling on a blog post that happens to be really right for your particular need. Good enough to work through.

It's stuff I could ask Perplexity to do, or ChatGPT, to be fair, I just like LM Studio for this and have the inquisitiveness to want to run it locally.

In your case: I don't believe it's the quant. I'm sure it's the model — it has good coding knowledge but it's clearly not specialised. It might be good enough at writing Python/PHP/JavaScript at a novice level. It is also quite good on WordPress tooling and functions.

But I wouldn't bother with it for agentic coding if you've got experience elsewhere. Might be interesting to see what you can do with the 9B Ornith model?

Qwen 3.6 MoE in its Unsloth version is another matter. Impressive and I am trying to find ways to support my old brain doing what I've done before.

mark_l_watson8 hours ago

I can come close to agreeing because queen-3.6-27b is my second favorite for local coding. I am using gemma4:26b-a4b-it-qat-48k (the "-48k" is from my modifying a model run with Ollama to always use a 48K context size). On a 32G Mac I use gemma4:26b-a4b-it-qat-48k and OpenCode and on my 16G MacBook Air I use gemma4:12b-it-qat-16k ("-16k" is my resizing context size) and little-coder. I break up projects into small libraries because local coding works better for me using small code bases.

I find that for local coding, I need to spend a lot of time building concise SKILLs for specific things I work on and try to only enable one or two skills per coding session.

To the author of the linked article nice job, and if you feel like adding to it, please add details on your setup.

brandall108 hours ago

Curious why OpenCode instead of a more 'full-fat' version of Pi with the larger model?

I feel like the amount of context bloat that OpenCode puts these small models into the dumb zone too quickly. The system prompt alone is 9k tokens, and when you add your own setup it can easily creep up to 15k.

mark_l_watson5 hours ago

I disabled many built in skills and increased the context size. I also use little-coder that is based in pi.

prasanthabr11 hours ago

Has anyone considered a home server? Assuming mobility is not important if we pick components to match a similar hardware would it be more value for money?

cpburns20092 hours ago

Generally speaking a home server/workstation set up is going to provide better performance at lower cost. You don't sacrifice much mobility either so long as you have an internet connection and can either SSH tunnel or use Tailscale (never used, just know it's popular).

drillsteps510 hours ago

A decent gaming machine perfectly doubles as your friendly local inference server. Just start llama-server with the model of your choosing and start chatting with it through its Web interface or connect any chat completion-compatible client (agentic or not) which will use REST to send requests and receive responses. From any device on your network. Voila.

LeBit10 hours ago

Which components are you thinking about?

prasanthabr9 hours ago

Am unsure - was hoping someone tried this and there is a tested component list of consumer grade pc parts that can do the trick

fossheart2 hours ago

> I recommend llama.cpp - a direct, open source tool that allows running models on various devices. You don’t need Ollama, and frankly - I would recommend against using that on ethical grounds.

> https://sleepingrobots.com/dreams/stop-using-ollama/

I had faced roadblocks while integrating with openclaw using ollama (Was trying to experiment with `qwen3-vl:2b`). I was tracking the issue back to openclaw at that time, I didn't even consider investigating ollama.

I attached a threads post here where I'm talking to meta ai to expand on both scenarios (not to use ollama, but llama.cpp & my take on the why this is the way it is - ie. commercial gains)

https://www.threads.com/@riojos/post/DaMXIs4k4w8

kristopolous4 hours ago

Help me improve local model performance with petsitter!

It basically exploits the face that time can be traded for intelligence with local models

https://github.com/day50-dev/Petsitter

dom9611 hours ago

What do folks use to keep on top of new model releases that are appropriate to their system? i.e. the models that will actually work on the MacBook Pro with 48GB of RAM or whatever their specs are.

I've seen sites here and there but they feel like quick little toys that don't get updated, so they always suggest old models.

simplyluke8 hours ago

The open source models have gotten heavily conflated with local development. While that is cool and I'm excited about the future of local LLMs, it is not necessary to play around with these models. Without shilling for companies I don't have a relationship with, there are a number of companies who will give you an API just like Anthropic/OpenAI and you pay per token, albeit much cheaper than the frontier labs.

I've been using the full GLM 5.2 model this way (through opencode) at work for the past week. It's quite impressive.

Alifatisk8 hours ago

Shouldn’t we call them open weight models?

simplyluke8 hours ago

That's probably more precise.

blagui7 hours ago

How you can do dev in 2026 using 64k context and without sub agents?

The benchmark seemed fine until I saw that.

If you use sub agents, they will overwrite the cache and each request will trigger full reprocessing. Have fun with that as it will crash the t/s metrics on each prefill on top of the max 64k including input + output is a major blocker.

If you push the context higher and add parallel slots the requirements will be far higher and the numbers less shiny.

zedascouves9 hours ago

Just tried on some arduino code. after 10 minutes i got a list of improvements to my code.

I ran those throu opus saking if it was good advice and was not impressed:

I read the actual qr_scanner.ino. Short answer: partially, but I'd push back on most of it. That review reads like generic ESP boilerplate advice written against an imagined version of your code — several of its "fixes" are already in your file, and its headline "critical" claim misreads what the code does. Going point by point:...

SkitterKherpi11 hours ago

27-30B in general seems to be the level where you actually start having decent models. I just wish consumer hardware hadn't stagnated so much that we can't easily go higher than that, and that even running those requires a $5k machine now.

seemaze12 hours ago

I was interested to see that Qwen3.5-122B-A10B narrowly beat Qwen3.6-27B on Donato Capitella's SWEBench-verified-mini run with a similar 128GB UMA architecture.

https://pi-local-coding-bench.dev

jononor10 hours ago

Many people in LocalLLaMA Reddit community has been reporting the same, that 3.5 122B-A10B is on par or slightly better. And a 3.6 or 3.7 od the 122B is one of the models people want to see the most.

drnick17 hours ago

Has anyone managed to cleanly integrate Web search into local models (run with llama.cpp)? The biggest limitation of the class of models that fit into one or two consumer GPUs is that they lack world knowledge, but presumably this can be remedied by enabling access to use the Internet.

kroaton6 hours ago

You're late to the party, mate; we've been doing this for years. Grab a SearXNG instance, stand up an MCP server for it, and expose the tool into your system prompt. Or use Brave Search. Or Exa if you want to pay. Any of them work. The model will pick it up straight away.

Even llama.cpp's bundled web UI handles it fine. Dead simple.

Havoc5 hours ago

Searxng is the ghetto solution. Commercial uruky is good. Basically Kagi except you can also run api calls over it

Neither is going to return much knowledge. Basically just relevant url so you need a second tool to grab them and there bot walls get tricky

mwowow6 hours ago

Working fine with LM Studio + Web search plugin

diseasedyak10 hours ago

I have 24GB of VRAM (via a RTX 4090) and run Qwen3.6-35b:iq4, so it's importance-aware quantization and isn't nearly as dumb as it sounds like, fitting the 35b into 18 GB so you have some left over. So far I've had no issues, other than it taking a while for things like image gen, which I found out if you're gonna do with any alacrity, just have a cloud model do it.

For anything else local, including writing some automation scripts and such, it works great.

Zambyte10 hours ago

Can you link the model? I also have a 24gb card (7900 XTX). I've been having success with the dense 27b model, but I'd like to see if the 35b iq4 is any better.

ai_fry_ur_brain10 hours ago

Whats your example of a "great automation script"?

aand1612 hours ago

I've come from the future to say Qwen 3.7 27B is just around the corner and slaps!

lor_louis12 hours ago

Do no give me hope like that.

layer812 hours ago

Are RAM prices down?

mendeza12 hours ago

I am eagerly waiting!

jensC10 hours ago

Me too, I am on a Jetson Orion 64GB (about 50W max). Using the nvidia graphic cards for AI seem to be so power hungry that it was not a choice I could take with todays environmental problems.

alfiedotwtf10 hours ago

Qwen 3.7 120B will kill off Antropic’s IPO

christoff128 hours ago

I just burned 20 minutes because I wanted to play hex minesweeper: https://hexabomb.pgpln.app

Source: https://chatgpt.com/share/6a42dd8a-4e28-83e8-9ef7-6ba56d665c...

stared7 hours ago

Nice!

If you want to play a hyperbolic minesweeper, Hyperrogue features that https://hyperrogue.fandom.com/wiki/Minefield

taf24 hours ago

Best way to make your M series macbook pro feel like a good old fashion intel macbook pro. Run a local model.

markdog1211 hours ago

I've tested it extensively for actual local development for my job, and hard disagree here. It's a waste of time to use it. Wish it were not true.

beastman8211 hours ago

I posted elsewhere but if you have more space try gemma4 31b

recursivedoubts8 hours ago

I would like to offer someone the next openclaw: a GUI for the mac that allows people to manage and install local models with a single click, provides GUI tools for tweaking important aspects of them, and also provides a good command line interface to those models.

hollowturtle8 hours ago

ollama is a good starting point

senorqa5 hours ago

On AMD R9700, I'm getting ~90 t/s with 35b MTP variant and ~40t/s with dense 27b MTP

drillsteps510 hours ago

I honestly don't get the hostility against local models in this thread (and in some other threads recently).

I haven't seen anyone make an argument they are as good as SotA (OpenAI, Anthropic). It's just they are approaching state where they are "as good" for some _limited_ set of use cases. Which will allow us to resolve 2 primary issues with these SotA models: privacy and vendor lock-in. Plus, they're very useful for education purposes, you get to explore what things looks like under the hood, play with various models, tools, maybe put something simple together yourself.

You get Macbook - great. You got gaming rig with a decent GPU - great (set it up as a dedicated server that you connect to through simple REST).

What exactly is wrong with any of that?

simplyluke8 hours ago

> I honestly don't get the hostility against local models in this thread

Consider that there are literally trillions of dollars being wagered on this not being the future state of computing. Not even speculating that HN is being astroturfed (though I see no reason it wouldn't be by interested parties), but many of the US tech employees here have direct financial incentives in various forms to be rooting for the failure of open source and optionally local models.

macwhisperer6 hours ago

hi guys... I run specialized quants on my 24gb air.. (I specialize in 3-bit quants that punch above their weight).. try out my version of 3.6-27b I think you be impressed https://huggingface.co/macwhisperer/Qwen3.6-27B-SuperDense

blobbers12 hours ago

How does llama.cpp use the GPU efficiently as opposed to MLX?

Is there any way to use MLX and GPU at the same time? Or does memory become a big problem?

TBH, I never understood Apple hyping these neural cores because I didn't think anyone actually uses them except maybe certain photo/video editing software.

If I can generate voice at the same time as video, that would be useful.

dannyw12 hours ago

Llama.cpp uses the GPU very effectively because inference of LLMs is very rudimentary and basically as simple as your GPU memory bandwidth. That's essentially the baseline performance ceiling, with model-specific optimisations like MTP potentially increasing it.

The neural cores aren't suitable for LLMs/transformers and isn't used in LLM inference. On the M5 and later chips, it comes with neural accelerators, aka Tensor Cores, which speed up the 'prefill' (i.e. processing your context window) part, but don't do anything for inference.

The MLX vs GGUF debate is mostly irrelevant. The GGUF pathways are optimised for apple silicon to the extent of practically identical performance to MLX. MLX is just one way of using Apple GPUs, it comes with many optimisations in the box, but they're not hard and they're no longer MLX-exclusive.

narrator10 hours ago

In hindsight, the Mac 512gb for about $10k was a total steal given that to run GLM 5.2 you need a 4x H100 to get the necessary amount of VRAM. Yeah the h100 is 2 to 8 times faster, but it's $20k a month to rent a 4xH100 VPS.

cdnsteve9 hours ago

Checkout details on what this runs on for local AI here: https://tokenstead.ai/models/qwen3-6-27b

max85397 hours ago

Running this model on a 48 GB memory MacBook Pro when offline, it performs its tasks, but of course, it’s slower than Claude or Codex.

hollowturtle8 hours ago

> Real work

Ok that's the part I'm interested in, don't care about minesweeper clones....

> Make a landing page selling candles for women that are into wellbeing and SPA.

can't be serious...

macwhisperer6 hours ago

also for those with only 16gb-- try this model https://huggingface.co/macwhisperer/Gemma4-12B-SuperDense its exceptional!

cloudengineer948 hours ago

I'm using Qwen and Gemma 4 locally and it's pretty good stuff, not frontier level but gets the job done.

hoppp8 hours ago

Its feasible but that laptop is not available for most devs.

I do have access for a 64 gb ram mac mini but most people don't.

alansaber9 hours ago

Is qwen finetuned/RL'd on any agent harness? Or does it just work well enough off the bat with opencode?

cpburns20095 hours ago

If Qwen is finetuned for a hardness, it'll be Qwen Code. Qwen 27b works well enough in OpenCode though which is what I use. My one complaint is it likes to get cute with bash commands instead of OpenCode's built-in tools. I use a skill to steer that.

zerolines9 hours ago

Yup, been rocking theQwen3.6-35B-A3B-MTP-GGUF locally with 88tk/s it's amazing.

felooboolooomba9 hours ago

What's the minimum requirement for a Nvidia card to run it? For let's say 10 t/s.

anonym2912 hours ago

Strix Halo user here. While Qwen 3.6 27B exhibits remarkable intelligence density, I will still take unsloth's dynamic IQ2_XXS of Minimax M2.7 over Q8_0 Qwen 3.6 27B any day of the week, and this isn't just because of generation speed either. I wrote my own custom harness, and I get hallucinated tool call parameters and bizarre invocations with Q3.6 27B even at Q8_0, but no issues with the IQ2_XXS of M2.7.

BoredomIsFun11 hours ago

> I get hallucinated tool call parameters and bizarre invocations

tweaking sampler might help

devin9 hours ago

If I have 10k to spend, what should I buy for the best local model experience?

wolttam8 hours ago

You can buy a pair of DGX Sparks and run Deepseek V4 Flash at ~60-70TPS (once DSpark support matures over the next few days).

That will get you a near-frontier experience. DSv4 Flash launched in April with capabilities on par with GLM 5.0, which launched in February.

simplyluke8 hours ago

I really think giving it a year for the hardware market to come back to earth and spending a fraction of that for API access to the same models is a better use of the money.

devin8 hours ago

Implicit in your answer is the belief that they will come back to earth. I wonder how realistic that belief is.

simplyluke8 hours ago

We have decades upon decades of hardware getting dramatically cheaper year over year for the same performance, and ~1 year of the inverse due to dramatic buildout for AI.

It's a surprising example of the recency bias to me to assume anything other than the market returning to its historic norm, even if the AI buildout doesn't slow, producers will scale factories to meet that demand.

m3kw92 hours ago

Hmm, i used it and it can't get past a simple coding test that 5.5 passes with light reasoning

v3ss0n8 hours ago

3.5 122B is much better. 27 B is bad at Long context and Svelte

cat_plus_plus11 hours ago

Gemma4 31B with MTP enabled is faster and I feel a bit stronger at coding. Either one can run in 32GB VRAM or unified RAM with some tuning (3 bit weights, 8 bit kv cache)

verdverm11 hours ago

Qwen's new AgentWorld model is good too: https://huggingface.co/Qwen/Qwen-AgentWorld-35B-A3B

I'm running the NVFP4 alongside Gemma4 at the same quant on an OEM Spark

colinsane10 hours ago

AgentWorld is _fantastic_. i just migrated "down" from the 122B A10B qwen model to agentworld (35B A3B) because it feels as capable, easier to steer, and it's 3x faster.

also i like that if i drop more sophisticated tools into my harness (e.g. any of the NLP/RAG-based search tools in place of grep/rg), the agent will actually reach for them and make progress faster; previous models have been reluctant to embrace new tools.

ascii0eks8412 hours ago

Very capable lora adapters are surfacing but it seems they are very niche.

DenisM12 hours ago

Can you share more? It’s the first I hear of lora outside research papers. Practical applications would be great to see.

Lora if effective could be a great reason to run local models.

mikert8912 hours ago

none of these local models are good for development, complete waste of time. nobody has $100k+ hardware sitting around at home to actually run a good model

jlongr12 hours ago

skill issue

mikert899 hours ago

the models suck

dmezzetti11 hours ago

Local models are great for a lot of things past just software development. We need to move towards solving other real world problems vs just building software. I've been focused on that with TxtAI (https://github.com/neuml/txtai) for 6 years now.

rusk12 hours ago

Spent a week trying to get sensible results out of llama 3.3 At one point it even simulated doing the work, log output and everything and when I challenged it about the missing artefacts it actually started questioning my intelligence. Seems appropriate for a Zuck enterprise.

Qwen on the other hand got straight to work with astonishing competency on the same system.

From what I read llama3 needs beefier compute to reliably invoke tools, which I presume relates to it focussing more on simulating AGI rather than being a useful tool.

culi12 hours ago

You might find this helpful. llama is not anywhere near the Pareto distribution (performance vs cost)

https://arena.ai/leaderboard/code/webdev/pareto?license=open...

https://arena.ai/leaderboard/text/pareto?license=open-source

k__12 hours ago

Llama3.1 instruct seems to be doing okay on that page, mostly because it's dirt cheap.

am17an12 hours ago

llama 3? Are you from 2023?

Nasser_CAD2 hours ago

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21712 hours ago

This is kind of like saying grass is green to be honest

madduci12 hours ago

Like everybody got 128 GB RAM..

sleepyeldrazi12 hours ago

I've been running it almost since launch on a 3090 (24gb vram), you really don't need that much. Second hand those are really cheap and i get 50-70 t/s (with MTP at 2), full ctx. IQ4_NL (unsloth) on this model seems suspiciously competent, and after the (by now not so recent) updates to q4 KV on llama.cpp, I just keep going back to it after dsv4pro disappointed me for the 100th time because it gave up on a task.

dofm12 hours ago

Doesn't need it at Q4 at least; it'll run in 64GB.

intothemild10 hours ago

Q6 can run with 256k at Q4 on 32gb easy.

200k @ K : Q5_0 V: 4_1 (which is a bit of a sweet spot)

mannyv10 hours ago

FYI token speed is somewhat irrelevant for agentic development. You let it run, then you come back. The whole point is that it's asynchronous. If it takes 4 hours, 8 hours, 16 hours...who cares?

kmike8410 hours ago

You care if you run it on a laptop. It's getting hot, fans are spinning, and you may want to use laptop for other things while the agent is working.

mannyv9 hours ago

I have a Studio 128gb, so it's not an issue.