I'd guess that the 'realtime' is a quote from StabilityAI and of course they're running that stuff on an A100. A couple of seconds is still interactive rate as generally speaking you want to think about the changes you're making to your conditioning.
Haven't tried yet but if individual steps of XL Turbo take ballpark as much time as LCM steps then... well, it's four to eight times faster. As quality generally isn't production-ready we're generally speaking about rough prompt prototyping, testing out an animation pipeline, such stuff, but that has the caveat that increasing step size often leads to markedly different results (complete change of composition, not just details) so the information you gain from those preview-quality images is limited.
Oh, "production ready quality": image quality being roughly en par with 4-step LCM means that it's nowhere near production grade. For the final render you still want to give the model more steps. OTOH I've found that some LCM-based merges do in 30 steps what other models need 80 steps for so improvements are always welcome. But I'm also worried about these distilled models being less flexible, pruning only slightly trodden paths that you actually might want the model to take.
EDIT: Addendum: I'm not seeing anything about using this stuff as a Lora. The nice thing about LCM is that you can take any model you have on your disk and turn it pretty much instantly into a model that can generate fast previews. Also, VAE decoding already can be slower than generation with LCM, so, yeah. I guess having something in between the full VAE and TAESD would be nice, TAESD is fast but is quite limited both when it comes to details, so much that you might not even be able to see what kind of texture SD generated. Oh and it also tends to get colours wrong, at least in my experience it tends to be oversaturated.
I'll get crucified for saying that because people will interpret that as an attack on their PC or something daft like that. It's not.
It's Ampere, a GPU architecture from 3.5 years ago. And even then, here's what the desktop stack was like:
3090 Ti (GA102)
3090 (GA102)
3080 Ti (GA102)
3080 12GB (GA102)
3080 (GA102)
3070 Ti (GA102/GA104)
3070 (GA104)
3060 Ti (GA104/GA103)
3060 (GA106/GA104)
3050 (GA106/GA107)
It was almost at the bottom of Nvidia's stack 3 years ago. It was a low end card then (because, you know, it was at the bottom end of what they were offering). It's an even more low end card now.
People are always fooled by Nvidia's marketing and thinking they're getting a mid range card when in reality Nvidia's giving people the scraps and pretending they're giving you a great deal. People need to demand more from these companies.
Nvidia takes a low end card, slaps a $400 price tag on it, calls it mid range, and people lap it up every time.
XL Turbotastic Mega Ginormous, etc. Hate naming schemes like this. Why not just make it v2.0 or the Pro version instead? Why use multiple words that make it sound bigger and better? Marketing BS that just sounds dumb.
Naming schemes that aren't clear are absolute garbage.
What if you're new to it, and there are 6 different recent versions of something all named with a description instead of version number? Is Jumbo newer than Mega?
Fuck it, I'm ranting about this because it still upsets me.
I wanted to buy a 3DS to play Shovel Knight and Binding of Issac. Reading up on them, BoI would only play on a New 3DS XL. Cool.
Went to the store and bought a new 3DS XL only to find out I got the wrong one. What I wanted was a NEW 3DS XL, and what I got was a 3DS XL that was new. There is a difference, and it took me 4 days to notice, and I was working out of town for the next month. So I can't return it. FUN!
So screw naming new versions of things with names instead of numbers. But somehow, Microsoft screwed that one up.
Yeah but the next version has yet a bigger training set, so what then? XXL? and what about the next ? Turbo was already used, so now we call it Nitro? This is not the "new kids" movies, you know...
Yeah I get that. Would just have made more sense given that it's widely used. Though I've been told why the name is so weird and it makes some sense now
I agree with you in general, but for Stable Diffusion, "2.0/2.1" was not an incremental direct improvement on "1.5" but was trained and behaves differently. XL is not a simple upgrade from 2.0, and since they say this Turbo model doesn't produce as detailed images it would be more confusing to have SDXL 2.0 that is worse but faster than base SDXL, and then presumably when there's a more direct improvement to SDXL have that be called SDXL 3.0 (but really it's version 2) etc.
It's less like Windows 95->Windows 98 and more like DOS->Windows NT.
That's not to say it all couldn't have been better named. Personally, instead of 'XL' I'd rather they start including the base resolution and something to reference whether it uses a refiner model etc.
(Note: I use Stable Diffusion but am not involved with the AI/ML community and don't fully understand the tech -- I'm not trying to claim expert knowledge this is just my interpretation)
AFAIU SDXL is actually an erm genetic descendant of SD1.5, with its architecture expanded, weights transferred from 1.5, and then trained on bigger inputs (512x512 in the end is awfully small). SD2.0 is a completely new model, trained from scratch and as far as I'm aware noone's actually using it. Also noone is using the SDXL refiner if you go to civitai it's all models with detailer capabilities baked in, what you do see is workflows that generate an image, add some noise at the very end and repeat the last couple of steps. Using the base sdxl refiner on the output of other sdxl models is sometimes right-out comical because it sometimes has no idea what it's looking at and then produced exquisitely surface texture details of the wrong material. Say a silk keyboard because it doesn't realise that it's supposed to be ABS and, well, black silk exists.
Because AI "art" as a whole is a sham based on stolen art and the target audience is the same as cryptocurrency techbros. Gotta use those sweet buzzwords
These features are abnormally asymmetric to the point of being off-putting. General symmetry of features is a significant part of what attracts people one to another, and why facial droops from things like Bells Palsy or strokes can often be psychologically difficult for the patient who experiences them.
There's a fair chance we'll see (or actually don't see) a lot more offline use. AI apps are coming to desktop PCs and phones and it means in the long run people don't have to get some entertaining stuff from the web any more. Like if you want to a cool pic of a dragon for a wallpaper, you can just ask the AI app on your PC and it will make a bunch to choose from.
What's out there that actually works offline? Stable Diffusion is the only one I've heard about, everyone else is more interested in exclusively selling AI as a service.
You might be waiting a long time. We aren't going back and this is one of those things that are not going back into the box. So now we must prepare for it and learn to live with it as the best course of action and make sure it's not used to oppress us.
I've tried to install this multiple times but always manage to fuck it up somehow. I think the guides I'm following are outdated or pointing me to one or more incompatible files.
Tough luck running any code published by people who put out models, it's research-grade software in every sense of the word. "Works on my machine" and "the source is the configuration file" kind of thing.
Get yourself comfyui, they're always very fast when it comes to supporting new stuff and the thing is generally faster and easier on VRAM than A1111. Prerequisite is a torch (the python package) enabled with CUDA (nvidia) or rocm (AMD) or whatever Intel uses. Fair warning: Getting rocm to run on not officially supported cards is an adventure in itself, I'm still on torch-1.13.1+rocm5.2 newer builds just won't work as the GPU I'm telling rocm I have so that it runs in the first place supports instructions that my actual GPU doesn't, and they started using them.
This is great news for people who make animations with deforum as the speed increase should make Rakile's deforumation GUI much more usable for live composition and framing.
Stability detailed the model's inner workings in a research paper released Tuesday that focuses on the ADD technique.
One of the claimed advantages of SDXL Turbo is its similarity to Generative Adversarial Networks (GANs), especially in producing single-step image outputs.
Stability AI says that on an Nvidia A100 (a powerful AI-tuned GPU), the model can generate a 512×512 image in 207 ms, including encoding, a single de-noising step, and decoding.
This move has already been met with some criticism in the Stable Diffusion community, but Stability AI has expressed openness to commercial applications and invites interested parties to get in touch for more information.
Meanwhile, Stability AI itself has faced internal management issues, with an investor recently urging CEO Emad Mostaque to resign.
Stability AI offers a beta demonstration of SDXL Turbo's capabilities on its image-editing platform, Clipdrop.
The original article contains 553 words, the summary contains 138 words. Saved 75%. I'm a bot and I'm open source!
Does it actually run any faster though? For instance, if I manually spun a model with the diffusers library and ran it locally on dml, would there be any difference?
Edit: Assuming we're normalizing the output to something reasonable, e.g. a recognizable picture of a dog.