alt.hn

5/31/2026 at 1:53:16 PM

I put a datacenter GPU in my gaming PC

https://blog.tymscar.com/posts/v100localllm/

by birdculture

5/31/2026 at 5:33:10 PM

I also recently decided to buy a datacenter GPU and slap it into a system. Some notes from my experience that the author doesn't mention in their article:

Decommissioned NVIDIA V100s and AMD MI50s are fairly cheap, $200 for 16gb and $400-500 for 32gb, for local experimentation. They are also very old. There's an enthusiast community keeping these two cards alive and working with current platforms and models.

Nitpick, but the V100 doesn't support bfloat16. The performance hit is not a big deal if you're fiddling with local models, but the card is on it's way out in terms of hardware features.

The MI50 does support bf16, but not the current edition of AMD ROCm. Vulkan support is good and the MI50 works with most major platforms (llama.cpp, vllm, etc.), but it's not without some pain points like manual recompilation. Fortunately the open source community has already paid most of your way.

The cooling requirements for these cards cannot be understated. A consumer grade GPU may throttle if in a small case without additional fans, but if given the same treatment a datacenter GPU will overheat itself idling. You will need to buy, at least, a bunch of decent 120mm fans to prevent this or invest in some water cooling.

I ultimately went with an AMD MI100 32GB ($950). I'm an AMD fan, current ROCm editions support it, and it was low-fuss to get things working. I'm debating getting a second so I can try out bigger models like qwen3-coder-next.

by sonzohan

5/31/2026 at 8:21:55 PM

> You will need to buy, at least, a bunch of decent 120mm fans to prevent this or invest in some water cooling

There's a cottage industry of 3D-printed fan-shrouds for data center GPUs - 120mm are often the sweet spot for quietness and practicality. The shoud smugly fits the GPUs intake, so it gets all the airflow from the attached fan(s), whose speed curves can be attached to GPU temperature.

by overfeed

5/31/2026 at 6:17:25 PM

Did you consider the R9700 or B70 when you went for the MI100? If so, what made you choose the MI100?

I've been playing with picking up a card in this class but haven't been able to justify it when running the Qwen3.6 MOE model on a 6800xt is tolerable for the type of projects I've been willing to point local AI at.

by Silagi

5/31/2026 at 7:22:17 PM

I looked at those, the Arc 1100, the w6800, MI50, MI60, v100, v620, and basically anything with 32gb of RAM:

1. I wanted an AMD card.

2. I have an RTX 3090 that's been fun to play with, but I want to get back to using it for gaming.

3. I was looking for between 30-60 tokens/second in terms of performance on the beefier models I want to run. Looking at stock Qwen3 32B the benchmarks reported about 41 tokens/second for MI100. w6800 was 18, MI50 & MI60 could do 60s but had a lot of compromises/special things to achieve that.

4. I used FitMyLLM for some spec-based comparisons (https://www.fitmyllm.com/). The MI100 is roughly double the performance on Qwen 3.5 35B A3B Q5_K_M to the R9700 (462 token/s prefill vs 239 tokens/s, 217 tokens/s vs 118 token/s for inference)

5. I was willing to throw up to $1k at a GPU; I really wanted to throw closer to $650.

To be honest, if money was no objection I would've sprung for a MI210. I also considered the MI250 as they showed up for $1250-1400 with a whopping 128GB, but the PCIE converters for that form factor don't have working AMD drivers yet.

by sonzohan

5/31/2026 at 7:59:36 PM

> The MI100 is roughly double the performance on Qwen 3.5 35B A3B Q5_K_M to the R9700 (462 token/s prefill vs 239 tokens/s, 217 tokens/s vs 118 token/s for inference)

Those prefill numbers look really low to me. I can run nearly that same model (qwen 3.6) at q4km with q6 cache on a single 3090 and get 2.3k-4.4k prefill and 100-170 generation. Just based on raw numbers I would expect the R9700 to land around 70-90 generation (about 2/3 of memory bandwidth of a 3090) and at least the same or higher prefill (nearly 3x FP16 TOPS on the R9700). That means the numbers really don't add up. Is the benchmark done with some special settings, e.g. parallel requests or with very low prompt length?

by rft

5/31/2026 at 8:22:13 PM

Numbers are from https://www.fitmyllm.com/ so they're not a real hardware benchmark just what you're expected to get. YMMV.

by sonzohan

5/31/2026 at 8:34:36 PM

Ah, ok. I took a look at the 3090 numbers and they list 400 tok/s prefill, so if I normalize my expectations to that base line the numbers you posted do make sense. I haven't dug deep into that site's methodology, but their estimates seems way off. Especially since they don't take into account cache quant when deciding whether or not you can run a model. Overall I found that website a bit confusing, but maybe the UX just didn't click with me.

by rft

5/31/2026 at 7:18:55 PM

> if given the same treatment a datacenter GPU will overheat itself idling

I have a friend who has learned this through several server grade cards over the years.

Yes your Intel 10G NIC was cheap. No you cannot just stick it in your desktop. It is expecting server level airflow, probably with a cold intake side.

He printed a fan mount, slapped it on, and they’ve been happy together since.

by doubled112

5/31/2026 at 7:51:19 PM

qwen3-coder-next runs fine on my consumer grade nvidia 4070. Performance is not spectacular, but it's only a little bit slower than a properly-fit model.

by kethinov

5/31/2026 at 7:54:09 PM

What are your settings and tokens/second? Even with 2 GPUs (MI100, RX 6600 XT 8GB) and 32GB of RAM it was running at a snails pace for me.

I didn't try a sched_spread with a 3090 and the MI100 which would provide 56GB ram

by sonzohan

5/31/2026 at 2:44:50 PM

Impressive work. But the problem is not the 30 tok/s which is fine for agentic coding and chat.

It's prefill; slow prefill kills agentic workloads dead.

If you have 100,000 tokens at ~150tok/s per the OP, you're looking at:

    You have: 100000 / (150/s)

    You want: hms

     11 min + 6.6666667 sec
Which is quite a wait indeed.

by mickeyp

5/31/2026 at 2:52:59 PM

Most people won’t be dumping 100K tokens into it at once, but I agree that all of the prefill time that adds up during a session becomes a lot to account for.

This is also a problem for all of the Mac local LLMs. Macs are a great way to get a lot of high bandwidth memory, but their compute is very far behind current gen dedicated GPUs. Some of the expensive Mac Studio setups allow you to run very large models with usable tokens/s, but you can be waiting a long time for it to get to the point of generating those tokens.

by Aurornis

5/31/2026 at 5:52:00 PM

When you're using OpenCode it's easy to reach 100,000 tokens after a while.

by Tepix

5/31/2026 at 8:19:40 PM

The prefix cache is working properly 100k doesn’t prefill more than once

by pyrolistical

5/31/2026 at 5:17:17 PM

I wonder if this could be usefully mitigated with a combination of prompt (prefix) caching and an agent that let you control what the prompt prefix consisted of. The goal would be to incur that slow prefill once to build the prompt cache, then have subsequent prompts consist of mostly this fixed prefix plus specific instructions.

For a language like C++ where modules are split into definition (.h) and implementation (.cpp) parts, one choice of prefix would be all the header files for the project (which aren't likely to change much).

More generally the idea would be to have an agent that had cached-prefix reuse as it's primary context management goal.

Another possibility, to support caching of files that have since changed, would be for the agent to build the context as a fixed prefix reflecting some or all of the codebase in its start-of-session state, then append any changes to that, with appropriate prompting to only use the latest definition of a function.

e.g.

Say file A initially contains functions X, Y and Z, then the prompt prefix is built to include X Y Z. If the user then modifies Y -> Y', then just add that to the context, so that the cached prefix is unchanged, giving X Y Z Y'.

by HarHarVeryFunny

5/31/2026 at 5:31:20 PM

A quick search say that this is a standard feature you cache the prefill and load it at PCIe bandwidth so it should be about 0.2s

by pastage

5/31/2026 at 6:16:56 PM

[dead]

by keynha

5/31/2026 at 8:46:25 PM

The V100 and the 4090 are based on vastly different architectures, the former uses the older Volta while the latter uses Ada. Last I checked you cannot meaningfully combine them. The 3090 is better than V100, just get two 3090 and a NVLink.

by binyu

5/31/2026 at 2:39:25 PM

Tesla V100 SXM2 16GB is NOT DGX class as the author writes. It's HGX class. The V100 comes in two classes, SXM2 and SXM4, the latter coming with a Max of 80gb on board memory. Typically these are installed 8×A100 80GB SXM4 on an HGX riser, and what that gives you is NVSwitch fabric and 640GB of pooled HBM2e (on package stacked memory /w ~2 TB/s of memory bandwidth). 2u standard rack footprint too.

by Teknomadix

5/31/2026 at 6:41:02 PM

What on earth are you talking about? Your comment makes no sense.

The V100 and A100 are different generations altogether.

The V100 does not have 2TB/s.

by _zoltan_

5/31/2026 at 4:31:55 PM

I have no idea what you are trying to say.

V100 came as sxm2 and sxm3. And it was 16 and 32gb.

HGX is DGX with extra toppings.

by legitronics

5/31/2026 at 6:40:06 PM

No. DGX is when it's Nvidia's design, HGX when it's a 3rd party design.

by _zoltan_

5/31/2026 at 3:01:26 PM

> And yes, if you want the absolute best, Opus 4.8 exists. It also costs more per 20 minutes of heavy use than I paid for this entire GPU and adapter setup combined. But the gap is shockingly small.

I don't think this is a fair characterization of the situation. I use frontier models via API pre-paid tokens every single day, and I can barely rack up $100 per month. The fact that we figured out how to burn double this in 20 minutes is impressive, but I don't think it reflects the reality that many are experiencing right now. There are some exceptionally gluttonous approaches to harnessing LLMs that I think are serving as convenient straw men in these discussions.

Paying for the API will almost always be more economical than self-hosting equivalent infrastructure. I am not against self-hosting, but the article suggests a primarily economic motivation for this effort. If you are consuming fewer than 10^9 tokens per month, I really don't think it's worth your time to try and compete with the hyperscalars. Most of the money is to be found in the integration of this technology with existing businesses.

by bob1029

5/31/2026 at 3:45:09 PM

I use hosted providers myself, but I can churn through $100 worth of tokens in half a day even with cheap models like Deepseek easily. If someone's use is as light as yours, then sure - grab a subscription and you'll save far more. For higher use it will come down to how cheap your electricity is whether it is worth offloading at least some of it (for me it's not, FWIW)

by vidarh

5/31/2026 at 7:51:33 PM

Same, very surprised when people on HN are shocked by high token burn - it's really not hard if you've figured out how to use LLMs!

by solenoid0937

5/31/2026 at 4:36:06 PM

Could you share a bit about what you’re working on or what type of projects require that much usage? Is it hobby, production, revenue generating?

by iJohnDoe

5/31/2026 at 5:09:51 PM

A mix. I have hobby projects that churn through that much when I don't need the tokens for others things. I also have projects for clients that easily consumes those levels. As well as a stealth-ish potential startup. Currently I'm at 4 different subscriptions + more than I'd like in spend via OpenRouter...

What multiplies it very quickly is when you start feeding them with test suites and "Ralph loops" that run until the test suites pass, or complex chains with lots of sub-agents being triggered.

If you're sitting there watching everything, it will be hard to burn all that much even if you're running multiple things in paralle.

by vidarh

5/31/2026 at 8:16:07 PM

I'm skeptical of letting agents run free like this. Even Opus makes decisions I don't always agree with. And I quickly lose my mental model of how the code is evolving.

I get more enjoyment and better results when the coding process is me and the agent working through a plan, at each step sparring over what to do next and how. Then I also catch the bad decisions before they manifest in the code.

by codebolt

5/31/2026 at 3:51:39 PM

Claude is something like $35 per million tokens. If I was using API pricing I could trivially spend $100 in a single hour long coding session, with /fast turned on in about 10 minutes. Not sure how you guys are using it.

by oceanplexian

5/31/2026 at 4:03:57 PM

Opus is normally $5 per mtok, no idea why anyone would use /fast if they were at all concerned about price. ($5 is still pricy though tbh)

by MattRix

5/31/2026 at 4:51:55 PM

Opus is $5 per mtok of input tokens, but $25 for output.

by krzyk

5/31/2026 at 4:03:28 PM

coding is the easy part of using claude

by foolfoolz

5/31/2026 at 7:19:04 PM

> I use frontier models via API pre-paid tokens every single day, and I can barely rack up $100 per month.

According to ccusage (https://github.com/ryoppippi/ccusage) if I didn’t have the 100 USD Max subscription, I’d have to pay Anthropic around 4173 USD for the month of May.

  Input     │ Output     │ Cache Create │ Cache Read    │ Total Tokens  │ Cost (USD)
  1,948,016 │ 19,435,081 │ 103,626,350  │ 6,244,194,278 │ 6,369,203,725 │ $4173.09
Edit: pulled the latest numbers, not using Fast mode at all, but still Opus for most tasks.

Nothing too egregious with my usage patterns, typically Claude Code just churning tasks in 1-2 projects at a time, sometimes while I’m asleep - and I hit around 60-80% of the weekly caps most of the time.

by KronisLV

5/31/2026 at 7:27:29 PM

How do you orchestrate this? I’m on max and would love to be hitting my caps when I’m not actively working a project

by bloudermilk

5/31/2026 at 7:33:46 PM

In my case: the Claude Code desktop app makes having a bunch of parallel sessions easy, at least compared to when I had just a bunch of terminal windows open https://claude.com/download can also couple that with Remote Control https://code.claude.com/docs/en/remote-control

Previously I still had the issue of it occasionally stopping let's say after Stage 2/7 is done in some plan and asking me to continue, though I was asleep. The options there were either looping it (like RALPH loop), or more recently they also released their dynamic workflows alongside Opus 4.8: https://claude.com/blog/introducing-dynamic-workflows-in-cla... and now I just use that.

So essentially you come up with a plan and just ask it to create a dynamic workflow for you, and it's gonna go through everything step by step, sometimes parallelizing (as it normally would with sub-agents) as necessary. Can also use worktrees if needed.

Here's an example of the UI: https://imgur.com/a/4Gr3Z2T (note that I'm using DeepSeek there for a small local utility, with a tool I'm using for managing various providers with Claude Code, but works the same with subscription)

I looked at the stuff Cline was doing with their Kanban boards too, but in the end realized that I don't really need those (for now) and that Claude Code is enough.

by KronisLV

5/31/2026 at 2:26:53 PM

The AMD MI250X GPUs are also interesting - 128GB of HBM2E at 3TB/s, sometimes you see them second-hand for under $1k, the catch obviously is that it needs an OAM socket. Never seen an easy way to hook them up to a regular mainboard.

by matja

5/31/2026 at 3:15:03 PM

An additional complication is that MI250Xes are two GPUs in one package, so you need to connect the first and last x16 SERDES groups to the host, otherwise you'll only see one GPU (or it won't work at all, idk).

Also, the cheap HPE pulls on eBay need some proprietary HPE magic to work, and I have yet to see anyone figure that out.

by Gracana

5/31/2026 at 7:29:50 PM

This person has built a converter for the OAM socket, but it is only confirmed working with NVIDIA cards at the moment (https://www.reddit.com/r/NVIDIA_SXM2PCIE/comments/1d076cn/oa...)

It fits an MI250X, and the system sees it, but the drivers don't work. They tested an HPE MI250X. There's a rumor on the thread that there are two kinds of MI250X: Ones from HPEs and everyone else's. The HPEs require a special firmware, the normal ones do not. However, the majority of the MI250Xs on the secondhand market are HPE so caveat emptor.

by sonzohan

5/31/2026 at 2:42:22 PM

These are interesting, and offer beefy through put. No point in adapting to a PCI lane thought, stuck behind the slot-bus bottleneck.

by Teknomadix

5/31/2026 at 3:23:32 PM

Ahh luckily this OAM socket will prevent me from spending money.

by plagiarist

5/31/2026 at 5:07:14 PM

[dead]

by selectively

5/31/2026 at 3:17:47 PM

Based on the title I was really hoping to see how this was used for gaming, but they just ran an LLM on it

by abejfehr

5/31/2026 at 4:31:50 PM

They said in the beginning that it doesn't even have a video out, so you cannot do gaming.

by darkwater

5/31/2026 at 5:10:56 PM

I've seen things where you have multiple video cards and can use one gpu to render to a framebuffer which is transferred to the other video card to output. I'm sure it adds latency, and it's probably unsupported... But no output doesn't mean can't do gaming... It just means gaming will be iffy.

There's some virtualized desktop server stuff too. Run a bunch of desktop sessions on a beefy computer and send a video stream to desktop players. With the right codec settings, the latency is probably ok for many games.

by toast0

5/31/2026 at 5:54:08 PM

I'm actually surprised there hasn't been a dedicated effort to support display offload to, say, the CPU's iGPU.

I'm sure manufacturers would love saving a dollar per card, and OEMs would appreciate eliminating the support calls from "I just bought a new $2500 gaming PC and no video" because they plugged the monitor into the iGPU instead of dGPU.

by hakfoo

5/31/2026 at 8:46:05 PM

I have occasionally wondered the same thing.

Thinking about it more, on my setup I have a DVI port on the motherboard that I would be happy to use with a DVI cable, but I instead need to buy a DisplayPort <-> DVI converter cable to plug directly into my video card...

Yeah, seems like an obvious thing for some motherboard providers to want to provide.

by NortySpock

5/31/2026 at 5:10:47 PM

I thought you could run games by rendering on one GPU and outputting on another? Usually comes up with dual iGPU/dGPU setups, but could work here

by yjftsjthsd-h

5/31/2026 at 6:01:22 PM

Never a problem. RemoteFX does (did) everything you'd want. Make your OS, log in remotely through an accelerated client. The real problem is Microsoft did something around Windows Server 2008 R2 that killed performance (literally halved it) for RemoteFX. You're only now reobtaining the virtualized video performance we used to have back in 2008.

by lightedman

5/31/2026 at 3:28:19 PM

Same. With no new NVIDIA gaming GPUs this year, seems like an interesting problem to solve.

by axpy906

5/31/2026 at 3:32:38 PM

I don't think that is even possible, every piece of silicon on that chip that is required to do gaming is ripped out in favor of more compute cores.

by mschuster91

5/31/2026 at 2:28:20 PM

Great write-up, I've often considered these DC cards for a project and now you've convinced me to pick one up; you describe the price of the unit against what one spends on tokens and that does it for me.

by mondainx

5/31/2026 at 5:40:39 PM

Thats why I did it. I think it’s important to put things like that into perspective

by tymscar

5/31/2026 at 2:22:43 PM

Congrats! Most people won’t want to debug drivers, kernels, ACPI, adapters, and fan headers. But for those who do, the capability-per-pound is absurd.

by lucamark

5/31/2026 at 4:46:24 PM

I was just looking into this and was worried about the fan setup. Interesting that he was able to solve it with good results.

In case anyone is interested, I’m using PCIE passthrough on a FreeBSD host to a Linux guest with an older Pascal card. It’s worked great and I’ve been thinking about putting a nicer card in there. The SXM route seems great, but I’ve been burned (almost literally because of the heat) by DC components before.

by jonhohle

5/31/2026 at 2:40:27 PM

Could probably avoid the crazy fan with a waterblock - I've seen a whole kit, v100 + PCIE adapter + block for £235. Yes, you'll have to pay for pump, radiators and radiator fans, but that should really quieten it down

by omarqureshi

5/31/2026 at 4:16:36 PM

The most interesting and perhaps useful for most would be how they control the fan. If you are thinking of doing this, you really want to get those fans under control, they are loud. For anyone thinking of these, v100s idle super high! 25-35watt with nothing loaded and easily 50w when a model is loaded.

by segmondy

5/31/2026 at 7:26:08 PM

This is great! I've been trying to get into local models for a while as I share the sentiment that local models will eventually be so good that there won't be a need to use frontier models for most coding tasks (perhaps that's already true today?).

I have zero experience building computers - where would I even start? I mean, aside from the things already well documented and mentioned in the blog post.

by suralind

5/31/2026 at 5:57:22 PM

> The way it works is that a vision encoder (similar to what ChatGPT and Claude use) takes image pixels and translates them into the LLM’s token embedding space. The model does not “see” the image the way a human does. Instead, the vision encoder compresses the image into a sequence of vectors that live in the same mathematical space as text tokens. The LLM then processes those vectors as if they were just another sequence of tokens.

Could you also do this for music and specifically sound synthesis? It would be awesome to vibe synthesize sounds and then see the VSTi parameters surrounding it.

by mettamage

5/31/2026 at 2:58:03 PM

The real question: did your local LLM write this post?

by whoamii

5/31/2026 at 3:41:57 PM

There are many tells aren't there? There was clearly hard human work and experimentation here, but it's a shame the OP let AI do chunks of the writing. Once you see it, it's much harder to take the post seriously.

by 20wenty

5/31/2026 at 5:43:57 PM

Not at all, no. I had this chat before about how I am one of those unlucky few that loved the way LLMs write nowadays since the mid-2000s.

Slowly but surely, I had to remove my beloved lists, emojis (though LLMs do less of that now, maybe I can incorporate them back), and emdashes.

by tymscar

5/31/2026 at 4:06:55 PM

I disagree. Not everyone has a good writing style. In those instances I think it is fair to default to llm recommendation. We may be allergic to it, but we saw one formulaic response too many ( though admittedly it does raise a question of whether HN was the intended audience for it ).

In any event, not all of us have a unique writing style worth preserving just like not all of us can write clear and clean code. Just saying.

by iugtmkbdfil834

5/31/2026 at 4:22:47 PM

I really wish it was more common to use AI for augmenting than authoring. Eg i find coding with LLMs neat when you primarily "talk" to it through code, by filling out structs, funcs, fields, etc - where it would use your changes as the template and then to work to effectively autocomplete the gaps. The more you iteratively write the less it fills in, but also the less it deviates from your intent, design, etc.

I feel like writing could use a similar harness, where it attempts to minimally reword the authors sentences, perhaps just tweaking grammar, spelling, etc. In the coding example i think the human code would be near unchangeable, the LLM would pivot around it - but in the writing example i think the human writing would have to be more mutable. I imagine it would be a configurable setting.

I've not really seen a system which focuses on this human<->LLM look, but it feels interesting to me.

by unshavedyak

5/31/2026 at 4:40:02 PM

In a sense, there is a clear market for it ( people want 'authentic' experience ). I can kinda understand it. I want pure linux experience without systemd, but I recognize that in the current ecosystem, it comes at a cost.

So the language harness makes sense to me, but corps are already cracking down on token use ( and such a harness would likely only add to the cost ). The other question is whether the people, who could benefit it would even recognize it as a problem though.

by iugtmkbdfil834

5/31/2026 at 5:12:51 PM

> I want pure linux experience without systemd, but I recognize that in the current ecosystem, it comes at a cost.

Running Alpine/Gentoo/Devuan isn't that expensive. (I'm assuming the cost is time/effort when I say this; let me know if there's another relevant metric)

by yjftsjthsd-h

5/31/2026 at 6:18:23 PM

No, you are right on point. I think I reached the same level of 'troubleshooting fatigue' my buddy did ( but he does that for a living, which adds another layer to this ). At certain point, I just want stuff to work. And right now at least, systemd provides least amount of annoyance in terms of time spent chasing issues on home machines.

FWIW, I tried Void and Devuan, but that may have been too early for me then. Naturally, now that stuff mostly works, I am debating whether I can make that attempt again;p

by iugtmkbdfil834

5/31/2026 at 4:45:21 PM

It’s not about preserving a unique writing style. When I see LLM writing my brain automatically discards the content of the writing. To me, seeing LLM writing is equivalent to going to a high-end restaurant and getting served on generic paper plates. Sure, the food looks perfectly fine and there is, in theory, nothing wrong with a paper plate. Once you see that paper plate, however, you will question how nice that establishment actually is, because a lack of care for the plates undermines the quality of the food. You automatically categorize all establishments that serve on paper plates in a specific category, one that might make you concerned if you will get food poisoning that night. LLM writing is exactly the same way for me. I don’t know if this LLM-assisted piece of text is actually a Michelin three star establishment or has had several heath violations in the last year. However, I didn’t pay for it, so putting in effort to determine if it’s LLM-assisted writing from an expert or just LLM slop that isn’t from the purported author at all isn’t worth the time.

I’m much more willing to read typos and bad writing than LLM writing. If I want to read the LLM rewritten version, I can run an LLM over the original writing myself. I have not yet found true that anyone is better at prompting than anyone else in a way that suggests that I wouldn’t get substantially the same results myself. Thus, I don’t think providing the version that has passed through the telephone game is accomplishing something that couldn’t be done by readers later. I have spent the vast majority of my life reading the original writing styles of people and didn’t have an issue then. I’m not convinced a problem I had was solved when we started post-processing writing with an LLM.

by gsquaredxc

5/31/2026 at 5:20:36 PM

I skim a lot. I skimmed this article and appreciated the author documenting their process. I am indifferent to LLM or human writing for technical content. I suspect I skimmed most of the LLM parts, but judging writing quality was not why I read this post, I read it because I was curious about how useful the GPU is, and if I could replicate the author's work. Some carefully written prose wouldn't have helped me do that any better. The prose in this article did the job.

by lukeschlather

5/31/2026 at 6:12:47 PM

This is mostly how I feel about it. If anything, the weird llm jitters served almost like punctuation markers. Still, I get why it riles some people up.

by iugtmkbdfil834

5/31/2026 at 4:21:30 PM

(TL;DR Can we just judge written works by their actual content?)

I’m really in the “who gives a shit” camp on something like this. A lot of people probably have an LLM punch up a blog post. It is good at turning bullet points and notes into prose, fixing run-ons, etc. Maybe I’m naive but I trust that the kind of person who posts a clearly noncommercial post like this on HN gives a crap enough that they read the final draft and confirmed it isn’t inaccurate.

This pearl-clutching about the mere use of AI regardless of how responsible or appropriate the use is, seems like a professor in 1985 throwing an essay back in a student’s face as “this was obviously printed from a computer and not typewritten like a PROPER essay! I can tell just by looking at it!”

by xp84

5/31/2026 at 6:26:12 PM

Oh then please stop reading. There are many of us who are really good at solving complex problems and also really bad at communicating them. Your attitude is just the latest bastion of bigotry. So do feel free to self-select out of useful knowledge and experience.

by lowbloodsugar

5/31/2026 at 3:08:52 PM

despite gaming being used in the title, it is not mentioned in the article, but i'm curious how this performs.

i've ran some multi vendor frankenstein setups before and sometimes it even works, so i'm curious to hear your experience with it.

by ewy1

5/31/2026 at 2:27:25 PM

Some context:

- In 2017, the v100 was a ~$10,000 GPU. I believe there was a PCI-e version but this is probably so cheap because SXM2 is going to be harder to use;

- A 5090 has 1800GB/s of internal memory bandwidth (compared to 900GB/s in the 9 year old GPU). Of course a 5090 is substantially more expensive;

- A 5090 has ~21k CUDA cores vs ~5k;

- The current $10k NVidia GPU is the RTX 6000 Pro w/ 96GB of VRAM. It has slightly more CUDA cores but it otherwise pretty much just a 5090. This is unsurprising. NVidia uses VRAM for market segmentation.

Consider this: in 5-10 years, the trillions spent on AI data centers will likewise be sold for scrap most likely. That's how short the runway is for OpenAI and Anthropic to recover that investment.

Anyway, I'm kind of impressed the author managed to get this all to work. I don't think it even would've occurred to me that someone had made an SXM2 adapter, particularly because it's not even used anymore. Like props to whoever did that.

by jmyeet

5/31/2026 at 2:43:41 PM

> Consider this: in 5-10 years, the trillions spent on AI data centers will likewise be sold for scrap most likely. That's how short the runway is for OpenAI and Anthropic to recover that investment.

Even more interesting: it'll devalue all of SaaS and the entire US tech sector.

We might have just shot our most valuable non-AI tech products in the foot.

by echelon

5/31/2026 at 3:44:57 PM

How so? I understand that flooding the market with physical goods will reduce prices and thus profits. But how would that also reduce the nonphysical SAAS stuff?

by wholinator2

5/31/2026 at 4:07:01 PM

> But how would that also reduce the nonphysical SAAS stuff?

The resulting economic crash will affect everyone, we're (IMHO) looking towards a dotcom-bust level wipeout. And many SaaS and other companies run asset-lean (i.e. they have no server hardware because that's all cloud, no real estate because it's all either wework or conventionally rented), margin-lean (the VC business model requires that, as the basic recipe is to achieve market domination by burning cash) and cash-lean (often enough, it's less than a quarter of expenses on the bank accounts).

All that "lean-ness" looks great on an investor's quarterly release sheet: no massive amounts of wealth tied up in assets and no cash sitting around on bank accounts that could be released towards investors as dividends or, if it comes from third parties, costs the company interest... but it prevents resiliency against crises.

by mschuster91

5/31/2026 at 3:52:09 PM

> We might have just shot our most valuable non-AI tech products in the foot.

Counterpoint: the fiber buildout during the dotcom boost. That crashed the economy pretty hard when the bubble burst, but we are still benefitting from all the dark fiber that was arranged for and built out back in that era. A lot of today's ISPs were able to grab up that fiber after the bust for cents on the dollar.

Assume that OpenAI and Anthropic go bust, which at least one of them likely will, and possibly a fair few of the datacenters that are under construction will also collapse. Someone will be able to snatch these physical assets again for cents on the dollar and run open-weight models on them or train new ones.

The problem isn't (and no, this is not an AI tell, everything I write here got typed on a 2022 M2 MBA by hand) the assets, they will be put up for productive usage, just as with any other large bankruptcy or bubble in history. The problem is the "IOU" that is being passed from one hand to the next like a hot potato. Assuming a recovery of, maybe, 20% after the collapse, at 1.6 trillion dollars of assets under management by some kind of private investment/debt we're looking at about 1.3 trillion dollars in valuation that is going to be wiped out.

And given that a lot of the investment market is actually backed by pension funds... this is going to be a bloodbath. Not only will there be a lot of people laid off in addition to the layoffs we already saw "due to AI", but when the pension funds and thus their payouts collapse? We'll see retirees flooding the employment markets who just try to make a living, rendering the situation for everyone else even worse. Flipping burgers used to be a gig for students, these days students compete with people of all ages desperate to survive - and thus desperate to undercut others in wages.

Another problem will be the capacity buildout in the semiconductor industry. It's already heading toward an oligopoly after numerous boom-bust cycles: you only have two and a half GPU chip vendors (NV, AMD, Intel), two vendors of general-purpose CPU vendors (Intel and AMD - I exclude Apple because they do not sell their CPUs to any third party and ARM because 99% of non-Apple ARM chips do not go towards servers, desktops and laptops), three RAM manufacturers (Samsung, SKhynix, Micron) and two and a half physical chip manufacturers (TSMC, Samsung, Intel). When the AI bubble bursts, it will be one of a hell of an effort to prevent at least one actor from going bankrupt.

[1] https://prospect.org/2025/11/19/ai-bubble-bigger-than-you-th...

by mschuster91

5/31/2026 at 6:18:29 PM

You're expecting that there's going to be a supply collapse only, but there's a real risk the collapse hits both supply and demand.

A lot of the current AI business is FOMO and vanity metrics. Nobody really wants to acknowledge the support tickets where the first three responses are the customer cursing because they didn't appreciate being handed off to a chatbot, or the reworks, or the compliance/policy/privacy concerns, or the internal friction and brand damage it's causing.

Right now, a lot of that is being dazzled away by how "cheap" the alternative is, since it's built on an unsustainable cost base. It's like someone opened a "restaurant" where the food was actually supplied by making a bazillion new DoorDash accounts to claim promotional credits and having them drop the food at the "kitchen". During the initial phase, the customers will forgive that the burger was cold because it was $1.79.

Once the funny money runs out and services start shuttering or pricing for actual profitability, people are going to ask about actual quality and return on investment. There will be a demand rollback.

Even if you can do it cheaper with an open-model running on fire-sale hardware, we probably don't need 500 "chatbot listens and transcribes your meeting" services that weren't that much better than dictation software running locally on a Pentium III. We probably don't need AI-powered support experiences that manage to be worse than actually keyword-searching your company's Confluence. We probably don't need to be spinning up coding agents to spend 15 minutes discombobulating and bibblewabbling and re-reading 82 billion tokens of context before making a two-line change that an actual developer with learned experience in the code would make in 15 seconds.

by hakfoo

5/31/2026 at 2:36:43 PM

I bet 3 years, but otherwise agree.

by b112

5/31/2026 at 4:21:50 PM

That's the same price per VRAM GB as an arc pro B70

by 00dazzle

5/31/2026 at 5:41:54 PM

But with miles better support, thats why I went this route. Cuda is hard to beat

by tymscar

5/31/2026 at 6:44:17 PM

The first dual core processor I built a machine with was an Opteron. It was a nice piece of hardware.

by drumhead

5/31/2026 at 6:42:01 PM

Great value for money if you have the time for tinkering and getting the compatibility to work.

by melonpan7

5/31/2026 at 7:08:10 PM

and it only gets easier and more defined from here.

by DANmode

5/31/2026 at 6:23:30 PM

All that work just to write an ai blog post. This is a cool topic but I just can’t deal with the aiisms.

by peibye

5/31/2026 at 3:25:52 PM

AI written posts will kill HN.

by KnuthIsGod

5/31/2026 at 5:46:43 PM

AI didnt edit a single word of this post.

by tymscar

5/31/2026 at 3:26:33 PM

Wow. V100. That brings back memories. Way to go.

by axpy906

5/31/2026 at 3:56:06 PM

Volta (and Pascal, which I'm using) should still be supported with driver 580 as long as you don't use the open modules, and you can use up to cuda 12.9 and cudnn 9.10.2. No need to limit yourself to an old kernel.

by viseyth

5/31/2026 at 4:18:20 PM

It is. We still run quite a few of them in prod and with 580 drivers they run just fine. Very useful GPUs still.

by markus92

5/31/2026 at 3:27:57 PM

> The compute is still real. The VRAM is still real. And the memory bandwidth is where it gets genuinely surprising.

sigh

by gtirloni

5/31/2026 at 8:55:25 PM

Usually that cloying pattern is reserved for "emotional" contexts to validate the user ("your struggles are real [despite others thinking it's in your head]").

Here it doesn't even make sense, of course the VRAM is real. Is it going to tell me that my keyboard is real next?

I wonder if this was generated with the local model, this seems to be a case where it memorized the style but not the meaning and intent.

by krackers

5/31/2026 at 3:18:25 PM

Wait a few years, everyone will be able to put one at half the price.

by wg0

5/31/2026 at 6:20:54 PM

Super interesting. I use data center GPUs at work, but I didn't know anything about this stuff.

I also use Qwen 3.7 27b at work and I agree with the author: it is perfectly capable of the jobs I give it.

by jeffrallen

5/31/2026 at 2:30:56 PM

Some resell group is going to have to make this easier. The shear amount of these cards otherwise heading towards the landfill is staggering. That is if Big Tech don't destroy them to prevent model weights from leaking.

by casey2

5/31/2026 at 3:20:10 PM

Things like this have started to show up on eBay: https://www.ebay.com/itm/198383386991

  2X NVIDIA Tesla V100 32GB NVLink Water Cooled X99 E5-2686v4 AI Workstation PC

  Item                              Quantity
  Intel Xeon E5-2686 v4 CPU           1
  2U CPU Cooler                       1
  Jingyue X99 Motherboard             1
  DDR3 Memory                         32GB
  SSD                                 480GB
  AMD Radeon R5 240 4K Display Card   1
  NVIDIA Tesla V100 32GB SXM2 GPU     2
  NVLink SXM2 Dual-GPU Baseboard      1
  Corsair Water Cooling System        2
  850W Bronze Power Supply            1
  Dual-GPU 300G NVLink SXM2 Baseboard 1
  8654 Data Cable                     2
  8654 to PCIe Adapter Card           1

by Gracana

5/31/2026 at 4:12:58 PM

terrible deal

by segmondy

5/31/2026 at 4:44:47 PM

Yeah. Not linking as an endorsement -- I do think it's cool, but it's not worth it for that price.

by Gracana

5/31/2026 at 2:35:02 PM

How would destroying the GPUs prevent the model weights from leaking? By the time you get your hands on them the memory is powered off for a long enough time that a cold-boot style attack is impossible.

by eric__cartman

5/31/2026 at 3:19:30 PM

Would you bet your trillion dollar company on that? Or would you smash up the garbage [to you] memory chips to be sure.

by sethops1

5/31/2026 at 5:11:17 PM

It's volatile memory, not flash.

by marcosdumay

5/31/2026 at 2:43:51 PM

> The shear amount of these cards otherwise heading towards the landfill is staggering.

The thought of throwing away working cards sounds so bizarre to me. I can't believe companies would dispose them into the landfill like that, it is at least worth giving away for refuse.

by Alifatisk

5/31/2026 at 2:58:34 PM

There’s a long history of corporations doing evil things to ensure their business model succeeds

by wookmaster

5/31/2026 at 4:10:00 PM

I genuinely hope that is the case. The market is absolutely bananas now. I actually now own devices that went up in 'value' since purchase. This is not normal ( and a little scary ). This, on the other hand, is an invitation to properly recycle otherwise unwanted hardware.

by iugtmkbdfil834

5/31/2026 at 3:41:37 PM

Isn't this the same thing with 32 GB already on a PCIe socket?

https://www.ebay.com/itm/166850431555

by xioxox

5/31/2026 at 4:11:48 PM

kinda, they put that on a PCIe socket, but it's passive. Meaning no fan. If you try inference on that it overheats in 1 minute unless you have it inside a server case.

by segmondy

5/31/2026 at 2:42:16 PM

> The compute is still real. The VRAM is still real. And the memory bandwidth is where it gets genuinely surprising.

Had to stop there. Annoying. I can't stand AI use for writing. It makes any otherwise great article feel so disingenuous.

by recursivegirth

5/31/2026 at 5:48:07 PM

Agree. But I have not used AI in the slightest.

Some of us just write that. AIs had to learn it from somewhere.

by tymscar

5/31/2026 at 2:44:44 PM

What a difficult world you must live in these days

by m0rde

5/31/2026 at 2:48:43 PM

While I don’t disagree with their sentiment, I’m far more annoyed with it than the AI writing.

by peddling-brink

5/31/2026 at 2:52:59 PM

Yeah. I get that many HN comments are just complaints (heck mine was too and just as negative and shaming). But how bad of a day must you be having to try to shame someone about how they choose to write up an experience they thought was neat. Whatever, free speech and all that. Hope OC's day gets better.

by m0rde

5/31/2026 at 5:01:11 PM

It doesn’t read like shaming to me. It’s, in the grand scheme of HN comments, definitely on the more constructive side of the criticism. Maybe it could have been reworded, but I think the author of the post could very easily find it actionable in the future. I too had to stop reading the article at that point, so I think if the author wants more people to read, my advice for them is to just write like themselves. We’ve entered the start of a new Instagram filter age where many people feel they need to have LLMs reword their writing presumably for the same reasons as the original filter age. I share OC’s sentiment of pushing against the recent trend of implicitly shaming people for their individualistic writing styles.

by gsquaredxc

5/31/2026 at 2:53:59 PM

Every single HN post has the same comment now.

by qingcharles

5/31/2026 at 2:56:29 PM

Only because so many of the articles posted on HN now are AI-written, and badly, too. A lot of tech people are so impressed with LLMs’ capabilities in code that they fail to recognize how bad they are at writing enjoyable prose. And it feels like a chore to write out a whole blog post by hand when the machine could do it for you! But the result we get is so, so much worse and more annoying.

by rafram

5/31/2026 at 4:31:47 PM

I dislike AI prose too, the cadence of it really rubs me the wrong way, but, that said we've had a lot of great, informative articles lately, written with AI help, where you just have to grit your teeth and get through them to get the underlying knowledge.

I don't think that commenting on every article is going to make the posters suddenly decide to go back and rewrite it by hand. Some of them probably don't even speak English natively. The comments are getting more tiresome than the AI prose at this point.

Hopefully in a year or so the LLM output won't be so janky and obvious, so this might just be a phase everyone has to pull through.

by qingcharles

5/31/2026 at 2:55:10 PM

That line was the exact moment I also realized the post was AI written. I kept reading though, but I am left constantly guessing at which key details might be pure hallucinations.

by fouc

5/31/2026 at 5:49:24 PM

FYI, not a single line was AI written. If there is a hallucination, it’s fully mushy brain sourced.

by tymscar

5/31/2026 at 4:44:14 PM

Honestly, the default styles are pretty bad. I use Claude in my scientific writing in a very specific way. 1. I write a paragraph. 2. I put Claude into concise style mode. I then ask Claude to revise for clarity.

I can write competently, but it's natural direction is towards emotional rhythmic flow that can convey emotion/passion...but which for scientific writing, can get in the way of clear clean communication. So, I write what I mean,and Claude straightens it out...and these days (i.e. not last year), it doesn't lose my meaning that often. And since I wrote it first, these AI-isms appear less frequently, and if they do, I revise them away.

by SubiculumCode

5/31/2026 at 2:42:09 PM

[dead]

by hypfer

5/31/2026 at 2:23:33 PM

> The compute is still real. The VRAM is still real. And the memory bandwidth is where it gets genuinely surprising.

Because humans write exactly like this /s

by lelanthran

5/31/2026 at 2:29:25 PM

Where do you think llms learned to write that way?

by postalrat

5/31/2026 at 8:59:18 PM

This particular case seems to be an LLM trying to blindly apply the saccharine therapeutic pattern "your frustration is real" to a context where it doesn't make sense. No one is debating or questioning the fact that the card has 16 gigs of vram.

The point of "X is real" in a therapeutic context is to make the person feel seen and acknowledged, that his struggles are real to him and really do weigh on his mind, even if it is technically "all in his head".

by krackers

5/31/2026 at 2:46:26 PM

You can also look at past posts by the same author (before LLM usage proliferated) if you’re curious.

The project is still very cool, but it’s a little less enjoyable to read when everything sounds the same. It would be just as annoying for people to manually write in a corporate/marketing style, because humanity is what makes the small web interesting.

https://blog.tymscar.com/posts/privategithubcicd/

by jlund-molfese

5/31/2026 at 5:53:09 PM

I’m glad I’ve started this blog before the AI wave so I can prove people I’m just weird at writing.

It grinds my gears how so many people just talk about my writing style instead of the content.

by tymscar

5/31/2026 at 6:12:21 PM

> I’m glad I’ve started this blog before the AI wave so I can prove people I’m just weird at writing.

Your previous blog posts didn't trigger any LLM detector (go on - check for yourself).

by lelanthran

5/31/2026 at 6:15:31 PM

Neither does this one. I replied in another thread. It comes out as 0% and the one from 2021 comes out as 8%. LLM detectors are all BS

by tymscar

5/31/2026 at 6:31:26 PM

GPTzero says 100% AI generated for specific paragraphs that I chose (such as `Multi-token prediction`). If you remove all the code listings, tables, etc and just paste the prose into these tools, it drops to 87% AI generated.

None of the 3x older blogs of yours that I tried went above 5% AI generated.

Maybe you're spending so much of time with the LLM that you are talking like it; in which case, take an old blog and a recent blog, give the prose from them both to you favourite LLM and ask them if the same author wrote both. I just did that on ChatGPT and on Gemini, and both found that it is extremely unlikely that the same author wrote both.

Look, if all the SOTA LLMs agree that your recent blogs sounds generated, you can't blame the reader, can you?

by lelanthran

5/31/2026 at 6:38:09 PM

GPTzero is a joke.

It thinks this is AI: “I bought a datacenter GPU that doesn’t even have a normal PCIe connector, stuck it in my gaming PC with an adapter, and now I have 32GB of VRAM across two GPUs running a 27 billion parameter model at 32 tokens per second.”

There’s nothing AI about that. Not all SOTA LLMs agree, hell, none of them do. The same exact example I sent here gives me 0% in some, 10% in others, 100% in GPTzero.

by tymscar

5/31/2026 at 7:50:47 PM

> Not all SOTA LLMs agree, hell, none of them do.

The ones I checked all agree: your recent writing is not the same author as your writing from 3 years ago...

You can check this yourself if you don't believe; make of that, what you will.

by lelanthran

5/31/2026 at 4:12:19 PM

This, setting aside the llm issue, it is dealing with hardware in ways that -- one would think - would be celebrated on HN of all places. But we focus on presentation.

by iugtmkbdfil834

5/31/2026 at 2:53:33 PM

Because their custom training data contains an emphasis on such verbiage. It doesn't come from the God-knows-how-many TB of web content the model is pre-trained on. There, such phrasing is only a drop in the sea. But the "yes, you're right" phrases, the em dash, etc., come from the later stage, for which content is created according to some (probably overprecise) guidelines.

by tgv

5/31/2026 at 3:57:14 PM

Right. The overuse of "genuinely" most of all. Seems like they put Claude through a few good rounds of training to always answer questions about its consciousness, thoughts, etc., with something about how it's "genuinely unsure," and as a result, the model learned to use "genuinely" as an intensifier in all sorts of inappropriate contexts.

by rafram

5/31/2026 at 4:14:12 PM

Oi, I personally use adverbs everywhere. Genuinely, kids these days.

by iugtmkbdfil834

5/31/2026 at 2:43:58 PM

Marketing content.

by alehlopeh

5/31/2026 at 2:47:33 PM

> Where do you think llms learned to write that way?

Not from individual human content, that's for sure - maybe MLM marketing copy? Sleazy 4AM ads?

I mean, every time this response comes up, I keep asking the person to point at something written prior to 2022 that gets 80%+ on the LLM detectors, and yet no one can find anything.

Maybe you, postalrat, can find something written in this style that was published prior to 2022.

by lelanthran

5/31/2026 at 6:07:13 PM

I have written the blog post. I know empirically that I have used 0% AI while writing it. I also know LLM detectors are total BS and they don't really work. I have tried a couple on this exact blog post, and QuillBot, for example, gave me 0% AI detected on it.

I have then used a blog post of mine from 2021. QuillBot gave me 8%...

The King James version of the Bible came out at almost 100% AI generated a while ago. It was the HN front page.

Stop thinking that if someone writes in a way that is fun or looks like what you would think an AI writes, then it is AI generated. Loads of the time it is, but sometimes it's not, and it really hurts those like me.

by tymscar

5/31/2026 at 6:34:20 PM

> I have tried a couple on this exact blog post, and QuillBot, for example, gave me 0% AI detected on it.

Don't use Quillbot; not sure why, but their model is reluctant to classify anything as AI generated. I ran into this when proof-reading a students Phd - ChatGPT, Gemini, CLaude (and others) all agreed it was AI generated, but Quillbot said it wasn't.

by lelanthran

5/31/2026 at 2:59:50 PM

It's a function of the LLM "thought process"! It's not really modeled after human speech. It is in short segments but not long form, same reason you see the same rather odd nuances in LLM generated code.

If they way you thought was to run a bunch of if statements, generate content, then feed that content back to get a "score" of what seems the most plausible, run the if statements again, and adjust / merge responses, then you would write similarly. The recognizable cadence of LLM generated content is pretty clearly the result of a lot of if statements being fused together.

by hattmall

5/31/2026 at 3:07:24 PM

You know what the sad bit is? Humans do write exactly like that. That's not even particularly egregious StalkedIn marketroid speak.

by bitwize

5/31/2026 at 2:38:43 PM

X is Y. Z is Y. And Alpha is genuinely Beta.

Classic LLM writing style.

by bossyTeacher

5/31/2026 at 2:45:00 PM

There's interesting stuff in this writeup but it sure seems like most of it was written by an LLM.

by driverdan

5/31/2026 at 2:27:17 PM

A little bit of local copium but neat read.

Isn't a rasbpi with 16gb of RAM $300 now?

by knollimar

5/31/2026 at 2:38:27 PM

The latest Raspberry Pi 5 has one 32-bit channel (2x 16-bit subchannels) of LPDDR4X-4267 SDRAM giving 17.1GB/s of bandwidth, 52x less than this GPU. Never mind lacking the CUDA and Tensor cores, so the FP16 performance is 102x less (307 GFLOPS vs 31.4 TFLOPS). So for £200, there's absolutely no comparison for this specific use-case.

by matja

5/31/2026 at 3:58:53 PM

Yeah thats what I'm saying. How is it so cheap????

by knollimar

5/31/2026 at 4:15:25 PM

V100 GPUs are e-waste.

by feisuzhu

5/31/2026 at 2:41:33 PM

I don't understand what point you're trying to make here? Are you talking about the price of RAM?

by thejj100100