

Getting randomly shadowbanned. Seemingly IP shadowbanned.


Getting randomly shadowbanned. Seemingly IP shadowbanned.


It was quiet on feeds. I could hear it on headphones, but on tinny built-in speakers you probably couldn’t.
It didn’t feel like a particularly malicious edit to me, though. The commentators were obviously avoiding politics, perhaps under order, so not bringing it up is consistent.


Lastly, “them” setting up seemingly good persistence on your system, yet not hiding any indicators of compromise, and then nuking everything when they are seen.
That seems sort of plausible to me. It was hidden, but it’s not perfectly hidden.
My interpretation was OP isn’t necessarily the target here, but a victim of some Windows hack spreading around their shared network. It’s possible the whole network was “worth” such attention.
That’s what gets upvotes on Lemmy, sadly.
This is how Voat (another Reddit clone) died. Political shitposts and clickbait tabloids crowded out every niche, so all the interesting content left.
As it turns out, doomscrolling twitter troll reposts with the same few comments in each one is quite depressing.
I don’t know a good solution, either. Clickbait works. Maybe some structural changes could help, though?


I think imagegen exposed how vapid Instagram twerking always was.
I’m sorry if that sounds shallow, but so much of social media is exactly that. If mass doomscrolling of softcore AI porn is a problem, perhaps we shouldn’t have set the system up with real softcore in the first place, and given control of the world to a few Tech Bros in the process?
If all this breaks the Insta influencer ecosystem, because scrollers realize it’s not real anyway, well… maybe that’s not such a bad thing. It sucks for honest influencers, but they’re in a toxic system.


FYI you can buy this this: https://frame.work/products/framework-desktop-mainboard-amd-ryzen-ai-max-300-series?v=FRAFMK0002
And stick a regular Nvidia GPU on it. Or an AMD one.
That’d give you the option to batch renders across the integrated and discrete GPUs, if such a thing fits your workflow. Or to use one GPU while the other is busy. And if a particular model doesn’t play nice with AMD, it’d give you the option to use Nvidia + CPU offloading very effectively.
It’s only PCIe 4.0 X4, but that’s enough for most GPUs.
TBH I’m considering exactly this, hanging my venerable 3090 off the board. As I’m feeling the FOMO crunch of all hardware getting so expensive. And $2K for 16 cores with 128GB of ridiculously fast quad channel RAM is not bad, even JUST as a CPU.


As a hobby mostly, but its useful for work. I found LLMs fascinating even before the hype, when everyone was trying to get GPT-J finetunes named after Star Trek characters to run.
Reading my own quote, I was being a bit dramatic. But at the very least it is super important to grasp some basic concepts (like MoE CPU offloading, quantization, and specs of your own hardware), and watch for new releases in LocalLlama or whatever. You kinda do have to follow and test things, yes, as there’s tons of FUD in open weights AI land.
As an example, stepfun 2.5 seems to be a great model for my hardware (single Nvidia GPU + 128GB CPU RAM), and it could have easily flown under the radar without following stuff. I also wouldn’t know to run it with ik_llama.cpp instead of mainline llama.cpp, for a considerable speed/quality boost over (say) LM Studio.
If I were to google all this now, I’d probably still get links for setting up the Deepseek distillations from Tech Bro YouTubers. That series is now dreadfully slow and long obsolete.


I dunno. Whatever the default was, so perhaps not?
But whatever Ublock Lite’s default is is probably what 99% of folks are using.


I was kidding, heh.
…They do need to get on that, though. My completely layman’s impression is that Japan has some cultural issues with immigration, but that’s becoming an existential issue.


They desperately need more immigration though, don’t they?
Maybe they could say “you can come to the festival, but only if you don’t leave.”


Yeah.
My instant reaction was “$700? It’d be a miracle if Valve hits that. What’s Ars thinking?”


Chinese electric cars were always going to take off. RAM is just a commodity; if you sell the most bits at the lowest price and sufficient speed, it works.
If you’re in edge machine learning, if you write your own software stacks for niche stuff, Chinese hardware will be killer.
But if you’re trying to run Steam games? Or CUDA projects? That’s a whole different story. It doesn’t matter how good the hardware is, they’re always going to be handicapped by software in “legacy” code. Not just for performance, but driver bugs/quirks.
Proton (and focusing everything on a good Vulkan driver) is not a bad path forward, but still. They’re working against decades of dev work targeting AMD/Nvidia/Intel, up and down the stack.


Also, this has been the case (or at least planned) for a while.
Pascal (the GTX 1000 series) and Ampere (the RTX 3000 series) used the exact same architecture for datacenter/gaming. The big gaming dies were dual use and datacenter-optimized. This habit sort of goes back to ~2008, but Ampere and the A100 is really where “datacenter first” took off.
AMD announced a plan to unify their datacenter/gaming architecture awhile ago, and prioritized the MI300X before that. And EPYC has always been the priority, too.
Intel wanted to do this, but had some roadmap trouble.
These companies have always put datacenter first, it just took this much drama for the consumer segment to largely notice.
Also, I want to change this. I have some fandom/fictions posts in mind…
But my executive dysfunction is taking a toll. Laughs nervously.


I did find this calculator the other day
That calculator is total nonsense. Don’t trust anything like that; at best, its obsolete the week after its posted.
I’d be hesitant to buy something just for AI that doesn’t also have RTX cores because I do a lot of Blender rendering. RDNA 5 is supposed to have more competitive RTX cores
Yeah, that’s a huge caveat. AMD Blender might be better than you think though, and you can use your RTX 4060 on a Strix Halo motherboard just fine. The CPU itself is incredible for any kind of workstation workload.
along with NPU cores, so I guess my ideal would be a SoC with a ton of RAM
So far, NPUs have been useless. Don’t buy any of that marketing.
I’m also not sure under 10 tokens per second will be usable, though I’ve never really tried it.
That’s still 5 words/second. That’s not a bad reading speed.
Whether its enough? That depends. GLM 350B without thinking is smarter than most models with thinking, so I end up with better answers faster.
But anyway, I’m get more like 20 tokens a second with models that aren’t squeezed into my rig within an inch of their life. If you buy an HEDT/Server CPU with more RAM channels, it’s even faster.
If you want to look into the bleeding edge, start with https://github.com/ikawrakow/ik_llama.cpp/
And all the models on huggingface with the ik tag: https://huggingface.co/models?other=ik_llama.cpp&sort=modified
You’ll see instructions for running big models on a 4060 + RAM.
If you’re trying to like batch process documents quickly (so no CPU offloading), look at exl3s instead: https://huggingface.co/models?num_parameters=min%3A12B%2Cmax%3A32B&sort=modified&search=exl3
And run them with this: https://github.com/theroyallab/tabbyAPI
TBH this disappeared on Reddit too. All my preferred fandom subs are now cesspools, with zero depth in fandom knowledge yet weird, cultish worshipping of the material. Bigger general subs feel like bot farms.
Piefed’s /c/television is 1000x better.
But the best places on the internet for that are probably the TVTropes forums, SpaceBattles, and other “surviving” fiction boards.


Todd Howard’s ego is so big, he should run for president. He’s thinks he’s god’s gift to AAA gaming.
He makes Tim Sweeney, Phil Spencer and Randy Pitchford look meek. That… Unreal.


I mean, I’d kill for a Chinese GPU. But software lock-in for your Steam back catalog is strong.
Also, have you been watching all the Chinese GPU announcements? They’re all in on datacenter machine learning ASICs too.


This is not true. I have a single 3090 + 128GB CPU RAM (which wasn’t so expensive that long ago), and I can run GLM 4.6 350B at 6 tokens/sec, with measurably reasonable quantization quality. I can run sparser models like Stepfun 3.5, GLM Air or Minimax 2.1 much faster, and these are all better than the cheapest API models. I can batch Kimi Linear, Seed-OSS, Qwen3, and all sorts of models without any offloading for tons of speed.
…It’s not trivial to set up though. It’s definitely not turnkey. That’s the issue.
You can’t just do “ollama run” and expect good performance, as the local LLM scene is finicky and highly experimental. You have to compile forks and PRs, learn about sampling and chat formatting, perplexity and KL divergence, about quantization and MoEs and benchmarking. Everything is moving too fast, and is too performance sensitive, to make it that easy, unfortunately.
EDIT:
And if I were trying to get local LLMs setup today, for a lot of usage, I’d probably buy an AI Max 395 motherboard instead of a GPU. They aren’t horrendously priced, and they don’t slurp power like a 3090. 96GB VRAM is the perfect size for all those ~250B MoEs.
But if you go AMD, take all the finickiness for an Nvidia setup and multiply it by 10. You better know your way around pip and Linux, as if you don’t get it exactly right, performance will be horrendous, and many setups just won’t work anyway.
You mean released in 2025? No clue about 100, but start with Bugonia.
Released any year? Well, I’d tailor recommendations to your genre preferences. Not everyone likes horror, or superheroes, or a sad dog movie, even if any of those may make it into top lists.