Stable Diffusion in Code (AI Image Generation) - Computerphile

2022 ж. 19 Қаз.
282 363 Рет қаралды

Mike Continues his look at AI Image Generation with Stable Diffusion
Mike's code: colab.research.google.com/dri...
Jonathan: twitter.com/johnowhitaker/sta...
/ computerphile
/ computer_phile
This video was filmed and edited by Sean Riley.
Computer Science at the University of Nottingham: bit.ly/nottscomputer
Computerphile is a sister project to Brady Haran's Numberphile. More at www.bradyharan.com

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  • this guy makes sense. I want more of him teaching SD and how it works.

    @bustedd66@bustedd66 Жыл бұрын
  • I'm sorry but , "unlock your face with your phone" just cracked me up..

    @paulspaws1521@paulspaws1521 Жыл бұрын
    • This is inadvertently an excellent poetic description of someone using the selfie camera to apply makeup.

      @deadfr0g@deadfr0g Жыл бұрын
    • Unlock your phace with your fone

      @zwenkwiel816@zwenkwiel816 Жыл бұрын
    • I think he was referring to using the Energizer Power Max P18K whilst in bed... :)

      @afog@afog Жыл бұрын
    • Hahahaha didn't even notice!

      @davidm2.johnston684@davidm2.johnston684 Жыл бұрын
    • I am reminded of an odd commercial from a few years ago: "apply directly to the forehead".

      @absalomdraconis@absalomdraconis Жыл бұрын
  • If anyone is stuck with the code. The "i" should be a "t" in this line in the loop: ``` latents = scheduler.step(noise_pred, i, latents)["prev_sample"] ```

    @BernardJollans@BernardJollans Жыл бұрын
    • Did you get the code working?. for me it's showing "unsupported operand type(s) for /: 'DecoderOutput' and 'int'" in line 59

      @alenmathew8115@alenmathew811510 ай бұрын
    • @@alenmathew8115 in the last few lines, change this line image = (image / 2 + 0.5).clamp(0, 1) to this image = (image.sample / 2 + 0.5).clamp(0, 1)

      @Phobos221B@Phobos221B10 ай бұрын
    • man this helped me. thanks bro :)

      @peepdawg8995@peepdawg899510 ай бұрын
    • Thanks man because of you I solved this error

      @mayurpatil9871@mayurpatil98718 ай бұрын
    • Also in the Image Loop section, this needs to be moved inside the for loop : ``` # Prep Scheduler scheduler.set_timesteps(num_inference_steps) ```

      @romainflorentz5771@romainflorentz57716 ай бұрын
  • I've been using Stable Diffusion to _deCGI_ images. Take a screenshot from a game, run it through SD with a low noise rate, give it a detailed description of everything in the picture and it produces pretty solid photo recreations of the images. Also, often, it gets possessed by Eldritch gods and spews out monsters.

    @DampeS8N@DampeS8N Жыл бұрын
    • So win-win, right?

      @zwenkwiel816@zwenkwiel816 Жыл бұрын
    • now do it in real time with DLSS and you've got something huge

      @MattRose30000@MattRose30000 Жыл бұрын
    • @@MattRose30000 This is a long way off. It isn't just that it currently takes my 3090 Ti about 5 minutes to do one frame at 1024x1024 but also it can't be playing a game at the same time and also-also it would be very disorienting because each frame will be a _different_ photo that isn't consistent from frame to frame but probably the worst part is that _you need to write a text prompt that reflects what is in the scene for each frame somehow._

      @DampeS8N@DampeS8N Жыл бұрын
    • @@DampeS8N that’s great. Have you messed around with reusing seeds across different frames? I imagine if you get an output you like you’d want to reuse that seed

      @FayezButts@FayezButts Жыл бұрын
    • @@DampeS8N making text to video is the easy part, making video to text is the hard part.

      @dibbidydoo4318@dibbidydoo4318 Жыл бұрын
  • The very concept of embeddings is amazing to me. It's literally "organize concepts themselves into points in space, where similar things are closer together, in many many dimensions; now you can do arithmetic on *the meanings of words, phrases, and sentences.* " Want to add the meaning of "horse" and the meaning of "male"? Well, just add these vectors together and the resulting coordinates will point right at "stallion"! They amaze me so much that, when I watched Everything, Everywhere, All At Once for the first time, I completely geeked out when I realized their description of the organization of the multiverse is effectively a well-embedded latent space 😅

    @IceMetalPunk@IceMetalPunk Жыл бұрын
    • @@mrteco4236 It literally is and is done all the time.

      @floydmaseda@floydmaseda Жыл бұрын
    • @@mrteco4236 It's... common, in fact. There's a whole video on this channel about embeddings. And it's how CLIP fundamentally works...

      @IceMetalPunk@IceMetalPunk Жыл бұрын
    • This is super fascinating, especially as someone studying Data Science just learning about vector spaces and their many uses!

      @TheColorman@TheColorman Жыл бұрын
    • @@mrteco4236 lol

      @alexanderkirilov7820@alexanderkirilov7820 Жыл бұрын
    • @@mrteco4236 that is literally what it does bro

      @Emperorhirohito19272@Emperorhirohito19272 Жыл бұрын
  • Mike asked himself what the use case for mixing two prompts is. I used this only yesterday, to produce a photorealistic painting of an owlbear from DnD... So it has practical uses!

    @morphman86@morphman86 Жыл бұрын
    • Maybe google is planning to create new, even more impossible captchas. "Select all the cat-dogs in the picture"

      @MushookieMan@MushookieMan Жыл бұрын
    • Does it hoot or roar??

      @dembro27@dembro27 Жыл бұрын
    • @@dembro27 It hoots and growls, in fact, here at Aguefort's Adventuring Academy!

      @IceMetalPunk@IceMetalPunk Жыл бұрын
    • Its how I make my fish people too for tabletop. Tons of applications for DnD

      @euchale@euchale Жыл бұрын
    • @@euchale You get half-decent tieflings if you ask for a quarter human, a half lizard and the last quarter goat.

      @morphman86@morphman86 Жыл бұрын
  • I've been playing with Stable Diffusion (specifically the "InvokeAI" fork because I don't have 10gb VRAM), and I've found out that spamming the end with keywords like "realistic, 4k, trending on artstation, 8k, photorealistic, hyperrealistic" has more effect on how good the output image is than I thought.

    @YSPACElabs@YSPACElabs Жыл бұрын
    • You should try negative prompts.

      @ShankarSivarajan@ShankarSivarajan Жыл бұрын
    • to add, try emphasis "((x))" for specific objects. Edit: you can also use x(y), y being the weight value for that tag.

      @nicoliedolpot7213@nicoliedolpot7213 Жыл бұрын
  • "Simple, you just chip away all the stone that doesn't look like David."

    @christopherg2347@christopherg2347 Жыл бұрын
    • "I saw the angel in the marble and carved until I set him free" - Michalangelo

      @housellama@housellama Жыл бұрын
  • I love it how you simplify and explain this heap of complexity that is in generative models like this. You gave me the impulse to play around with it, inspite of being pretty complicated code due to the depth of the abstraction. It's a lot of fun to fantasize about something and have the model come up with a visual representation.

    @byteborg@byteborg Жыл бұрын
  • I really liked the stable diffusion that came with the webui that you could install on your own computer, to avoid quotas or subscription costs, and it provided easy to use UI as well. With inpaint feature inside the UI as well. Shoutouts to people who make those applications from the rough code for regular people to use.

    @Yupppi@Yupppi Жыл бұрын
  • SD is just outstanding. It can mimic the other projects and the 1.4/1.5 models will be public domain. You can't beat that.

    @jeffwads@jeffwads Жыл бұрын
    • Lol just add "dall-e 2" to your prompts XD

      @zwenkwiel816@zwenkwiel816 Жыл бұрын
    • 1.5 model just went public today i think

      @paryska991@paryska991 Жыл бұрын
    • @@paryska991 Ye

      @StefanReich@StefanReich Жыл бұрын
    • You can beat that with human creativity that doesn't require billions of calculations per second to brute force a synthetic result.

      @dgo4490@dgo4490 Жыл бұрын
    • @@dgo4490 doesn't it though?

      @zwenkwiel816@zwenkwiel816 Жыл бұрын
  • So amazing ❤ I love stable diffusion Playing around the few last weeks

    @serta5727@serta5727 Жыл бұрын
  • I like how your channel has adapted to the advent of the machine learning boom we are experiencing

    @lucamatteobarbieri2493@lucamatteobarbieri2493 Жыл бұрын
  • Love Mikes explanations, somehow he manages explain so complicated stuff in so simple and understandable way. It will be interesting to know Mikes opinion om Midjourney as it's seems like the winner for now among the picture creation AIs.

    @jenka1980@jenka1980 Жыл бұрын
  • "there are questions of ethics, there are questions on how it's trained. Let's leave those for another time" well, if that doesn't just sum up the tech industry.

    @paultapping9510@paultapping9510 Жыл бұрын
    • what ethics ? its just a tool, and its highly dependent on human input.

      @monad_tcp@monad_tcp Жыл бұрын
    • @Luiz remember the AI chatbot that became incurably racist because it was trained on data scraped from 4chan amongst other places? That sort of thing.

      @paultapping9510@paultapping9510 Жыл бұрын
    • that sums up every industry. you think people didn't copy art before ai? it's just a tool

      @purplewine7362@purplewine7362 Жыл бұрын
    • @@purplewine7362 lol, not even close to the point I was making. Never mind.

      @paultapping9510@paultapping9510 Жыл бұрын
    • @@paultapping9510 you weren't trying to make any point, otherwise you would have clarified. You were just trying to sound smart. Also, liking your own comments is pathetic.

      @purplewine7362@purplewine7362 Жыл бұрын
  • Mike is a legend, truly great videos with him

    @angeleeh@angeleeh Жыл бұрын
  • I would like to see a version of the code where it shows the result of each step, so you can see the noise getting reduced with each iteration

    @simplesimon4561@simplesimon4561 Жыл бұрын
    • me too!!

      @JalexRosa@JalexRosa Жыл бұрын
    • I think I'm going to do it. I'm downloading the source code and save a png for each step

      @gianluca.g@gianluca.g Жыл бұрын
    • Not necessarily what you're after, but if you "interrupt" a run, you can see what it's current progress was. Depending on your steps and how early you catch it, I've seen some very interesting early "noisy" images that were themselves inspiration for other images!

      @AlphaNovaOfficial@AlphaNovaOfficial Жыл бұрын
    • There is already a script for that

      @ReneArmenta19@ReneArmenta19 Жыл бұрын
    • If you run automatic1111 there’s a setting for that, uses slightly more vram, but it’s great to watch it work

      @m0nkeyb0i666@m0nkeyb0i666 Жыл бұрын
  • The current version of the reference notebook is already deprecated due to Hugging Face's API changes :) You try to operate on "image", which is now a DecoderOutput class: image = (image/ 2 + 0.5).clamp(0, 1) It is fixed by unpacking its tensor attribute with its sample method: image = (image.sample / 2 + 0.5).clamp(0, 1)

    @thomasnicolet9561@thomasnicolet9561 Жыл бұрын
    • The rest of the notebook is hard to fix, I tried but in vain. I think I'll wait for Mike's update.

      @Dancedfsk8@Dancedfsk8 Жыл бұрын
    • Same goes for pil_to_latent(): AutoencoderKL.encode() returns a AutoencoderKLOutput class: return 0.18215 * latent.mode() The desired DiagonalGaussianDistribution class is now a property ("latent_dist") of this new class: return 0.18215 * latent.latent_dist.mode()

      @victorwesterlund4826@victorwesterlund4826 Жыл бұрын
    • in img2img, I just extract the code of add_noise and used int instead of floatTesnsor. Change add_noise function to the following. also notice the for loop now loop 51 times. Not sure if this is correct, but at least it works. # View a noised version noise = torch.randn_like(encoded) # Random noise for i in tqdm(range(51)): scheduler.sigmas = scheduler.sigmas.to(device=encoded.device, dtype=encoded.dtype) scheduler.timesteps = scheduler.timesteps.to(encoded.device) sigma = scheduler.sigmas[i].flatten() while len(sigma.shape) < len(encoded.shape): sigma = sigma.unsqueeze(-1) noisy_samples = encoded + noise * sigma img = latents_to_pil(noisy_samples)[0]

      @Dancedfsk8@Dancedfsk8 Жыл бұрын
    • @@victorwesterlund4826 What is the 0.18215 for? I keep seeing it in the code but I can't find an explanation for what is does or how it's derived

      @aaron6807@aaron6807 Жыл бұрын
  • This video finally explained the code to me in a simple way! Now im less confused!!! Amazing extra documentation from you guys

    @aorusaki@aorusaki Жыл бұрын
  • I doubt DALL-E 2 is the “biggest” image generator. Stable Diffusion is probably bigger. In my circle, the biggest one is NovelAI, which is a Stable Diffusion variant specialized in anime-style images. Notably, its training data is probably the best image dataset out there in terms of detailed labels. It’s already been causing a lot of drama in the community. One notable case involved someone feeding a WIP drawing to img2img, posting it, claiming it as their own drawing. When the actual artist posts their finished image, this person then proceeds to accuse the artist of copying “their” art.

    @theemathas@theemathas Жыл бұрын
    • Imagen by Google and NUWA-infinity by Microsoft are probably superior.

      @dibbidydoo4318@dibbidydoo4318 Жыл бұрын
    • Would your "circle" happen to fit after rule 33 and before rule 35?

      @felixjohnson3874@felixjohnson3874 Жыл бұрын
    • The danbooru property labeling format, to be exact. Training is rather easy as the images in the booru databases are human-labeled.

      @nicoliedolpot7213@nicoliedolpot7213 Жыл бұрын
  • Awesome explanation, thank you!

    @TaranovskiAlex@TaranovskiAlex Жыл бұрын
  • this is so interesting and has so many unexplored use cases

    @_inetuser@_inetuser Жыл бұрын
  • Immediately recognized the book on Dr. Ponds desk - Prof. Paar was one of my teachers when I studied IT sec. Nice to see it outside of Germany too!

    @DeKubus@DeKubus Жыл бұрын
  • For anyone trying to get the notebook to work and is getting this error: "TypeError: unsupported operand type(s) for /: 'DecoderOutput' and 'int'" change "image = (image / 2 + 0.5).clamp(0, 1)" to "image = (image.sample / 2 + 0.5).clamp(0, 1)". As noted at the top of the notebook it seems the huggin API has changed.

    @dakotaknutson@dakotaknutson Жыл бұрын
    • wow thank you very much can confirm that this indeed solves it👍

      @hipposhark@hipposhark Жыл бұрын
    • In my case it outputs a Hugging Face Tokens page warning? It says that I need a token? Is it free?

      @koh8614@koh8614 Жыл бұрын
    • @@koh8614 yes it is free. you need to create an account on the hugging face website and generate a token from your profile.

      @hipposhark@hipposhark Жыл бұрын
    • Thank you

      @JavadZahiri@JavadZahiri Жыл бұрын
  • This was so helpful in understanding this new tech. thank you

    @semidemiurge@semidemiurge Жыл бұрын
  • Mikes explanations Aretha best ❤

    @serta5727@serta5727 Жыл бұрын
    • Franklin true

      @JavierSalcedoC@JavierSalcedoC Жыл бұрын
    • @@JavierSalcedoC *slow clap*

      @tacklemcclean@tacklemcclean Жыл бұрын
  • Great video! Can anyone recommend any other videos that explain the text encoding and the whole clipping process used to guide the image generation based on input prompt?

    @CyberMuzHR@CyberMuzHR Жыл бұрын
  • Thanks for the explanations of how AIs are being trained. I can see a slight hint of a neural network here. I think the advantage now is that companies like Bluewillow is utilizing discord to quickly gain testers free of charge even.

    @HerleifJarle@HerleifJarle Жыл бұрын
  • Excellent explanations, as always! Thanks!

    @jytou@jytou2 ай бұрын
  • Wow this is actually pretty amazing. Fascinating stuff

    @peterw1534@peterw1534 Жыл бұрын
  • Excellent tutorial. Thank you.

    @pmo1972@pmo1972 Жыл бұрын
  • great video. today SORA was launched, nad youvideos help to understand whats going on the background. many thanks!

    @user-xv3yr5cm7f@user-xv3yr5cm7f3 ай бұрын
  • Great explanation.

    @briancunning423@briancunning423 Жыл бұрын
  • this video just put me on a wonderful path, thank you!

    @gaptastic@gaptastic Жыл бұрын
  • great video and very educational I'd love to hear you guys talk about textual inversion

    @gz6963@gz6963 Жыл бұрын
  • Hi Mike. This is the by far the most technically clear explanation of SD that I have seen so thank you for this! Now as you would be aware by now, the art community is up in arms against this tech and I would love to hear your opinion based on the factual knowledge you have. The main issue that keeps coming up is that SD tech is art theft because it steals copyrighted artwork then companies profit using the images. Another point artists are making is that SD is just a mish mash collage of original art so nothing generated by Ai is brand new. Would you agree or disagree with these points and why strictly based on from your technical knowledge.

    @aiartbx@aiartbx Жыл бұрын
  • On line 56, the image is coming from the sample property of the DecoderOutput, change to 55: with torch.no_grad(): 56: image = vae.decode(latents).sample

    @heurve@heurve Жыл бұрын
  • Thanks for this video. So the Steps is actually the Noise Level.

    @FusionDeveloper@FusionDeveloper Жыл бұрын
  • We need an entire "Frogs on stilts" channel.

    @3dlabs99@3dlabs99 Жыл бұрын
  • Can we add annotations along with the image in an image2image model? The annotations to tell us which part of the image needs to be regenerated. Like I want to change the background with the annotations to that background so it gives exactly the same person with a different background? Something like Photoshop Generative AI

    @amventures1@amventures19 ай бұрын
  • I generated thousands of images with stable diffusion. It's really fun and inpiring.

    @Tymon0000@Tymon0000 Жыл бұрын
  • Thank you for the SCIENTIFIC video! It got outta control after the "novelaileak", which it is very important to leave some information as realistic as it can. I'm quite sad about the sub-culture but I still have hope on the artist / researcher to snap out from the chaos.

    @6DAMMK9@6DAMMK9 Жыл бұрын
    • what sub-culture?

      @dibbidydoo4318@dibbidydoo4318 Жыл бұрын
  • Anyone else surprised that diffusion models are the clear winners for image generation? And GANs have almost completely fallen from favor? I haven’t seen them in any recent SOTA work..

    @Mutual_Information@Mutual_Information Жыл бұрын
    • Mmm isnt it still kinda a GAN? Stable diffusion uses a transformer block not just for the diffusion but for identifying what the actual image is from the diffusion output too. So isn't that technically a GAN? Generate images from the diffusion model, then try to categorize them through an adversarial transformer network?

      @timmyt1293@timmyt1293 Жыл бұрын
    • @@timmyt1293 Actually there is no adversarial training in diffusion models in general (in particular for stable diffusion model). The condition processing is used only for guidance (free classifier guidance in this case) and from a theoretical perspective the diffusions models are closer to hierarchical variational autoencoders where the encoders are fixed diffusion steps and decoders are denoising steps with the trained noise estimation model.

      @erikp7378@erikp7378 Жыл бұрын
    • @@erikp7378 I wonder if you could impliment stable diffusion inside a GAN. So have the generator define the parameters for the stable diffusion based on an input and then give that to the classifier mixed in with non ai generated images

      @JadeNeoma@JadeNeoma Жыл бұрын
    • @@JadeNeoma I don't know how that would work.

      @dibbidydoo4318@dibbidydoo4318 Жыл бұрын
    • @@JadeNeoma its depends on which parameters you have in mind but the main point is that the operations must remain differentiable in order to optimize the model. And in the case of hyper parameters inference it is not trivial in many cases (e.g. the number of steps)

      @erikp7378@erikp7378 Жыл бұрын
  • Amazing so stable diffusion helps un clutter all that extra pixel during the process of facial recognition.

    @slimjimbigfoot589@slimjimbigfoot589 Жыл бұрын
  • Thank you for this video, it's really interesting!

    @mylittleparody2277@mylittleparody2277 Жыл бұрын
  • Stable Diffusion in code? More like “Super great explanation that’s solid gold!” 👍

    @PunmasterSTP@PunmasterSTP Жыл бұрын
  • Is there a way to use 2 image prompts instead of 2 text prompts to get a 50/50 blend?

    @Thinknotix@Thinknotix7 ай бұрын
  • I was waiting for this 🙏🙏🙏

    @levii2748@levii2748 Жыл бұрын
  • Good timing with the NovelAI leaks

    @YeloPartyHat@YeloPartyHat Жыл бұрын
  • Seeing that GPT-2 vid reminded me: we haven't had Robert Miles on in a fair while. Is he just too busy?

    @vanderkarl3927@vanderkarl3927 Жыл бұрын
    • I love his content.

      @andybaldman@andybaldman Жыл бұрын
  • [notebook error] Hello, Thanks for the fantastic video. I noticed that as of today the notebook does not run since there are some errors. I do not why, probably some library changed a bit.The first error is at line 50 of the cell with the first inference loop. Instead of 'i' there should be 't'. The second error appears at line 59. Now to access the image's tensor you have to write 'image["sample"]' instead of just 'image'.

    @martinoandreascarpolini5128@martinoandreascarpolini5128 Жыл бұрын
    • same thing for the other inference loops

      @martinoandreascarpolini5128@martinoandreascarpolini5128 Жыл бұрын
    • Thanks! this should be pinned

      @enochsit@enochsit8 ай бұрын
  • Great video. However, could you explain what this line "latent_model_input = latent_model_input / ((sigma**2 + 1) ** 0.5)" does?

    @yuxiang3147@yuxiang31477 ай бұрын
  • Well, xkcd did pick the number 4 by die roll. Seems a random enough seed to me.

    @jaymalby@jaymalby Жыл бұрын
    • I had to scroll far too much to see this mentioned, but yes I agree 4 seemed quite a good random seed there...

      @reinei1@reinei1 Жыл бұрын
  • Great one again!

    @ozorg@ozorg Жыл бұрын
  • thanks for the video

    @GKinWor@GKinWor Жыл бұрын
  • Fascinating.

    @ukranaut@ukranaut Жыл бұрын
  • On line 50, i should be changed to t (as we need the FloatTensor) 50: latents = scheduler.step(noise_pred, t, latents)["prev_sample"]

    @heurve@heurve Жыл бұрын
  • I don't know if this is more amazing or more frightening. Brilliant stuff.

    @miltiadiskoutsokeras9189@miltiadiskoutsokeras9189 Жыл бұрын
    • If you aren’t frightened, you aren’t paying attention.

      @andybaldman@andybaldman Жыл бұрын
    • @@andybaldman if you're frightened, you're a luddite

      @purplewine7362@purplewine7362 Жыл бұрын
    • @@purplewine7362 Or you've worked in the tech field long enough to know how dangerous this is, and how it will be used against people eventually. As happens with all tech.

      @andybaldman@andybaldman Жыл бұрын
  • 13:47 reminds me of the wave function collapse algorithm.

    @vorlon478@vorlon478 Жыл бұрын
  • Great video, really informative. I was hoping to try out your Google Colab code, although it seems broken at the moment. Are there any updates regarding this announcement regarding the known bugs? "Note: There might be a handful of bugs at the moment. The developers of this stable diffusion implementation keep changing the api. Everyone should know not to make breaking api changes so regularly! I'll do a pass over the code and fix bugs as soon as I can. Am away this week :) thanks to Michael d for bringing this to my attention."

    @t.michaeltracy2046@t.michaeltracy2046 Жыл бұрын
  • I'll copy your transcript and feed it to open.ai's playground and ask him to re-interpret your addresss for images but for my own audio interpolation in music. Brilliant.

    @peekpen@peekpen Жыл бұрын
  • Thank you for trying to fix the code after the API update broke it

    @lolerskates876@lolerskates876 Жыл бұрын
  • @14:47 - idea: hand draw your animation sequence.Give the first to image and text to AI and get the result. Then hand the resulting image, your next hand drawn frame and the text to generate the 2nd frame. Continue the process so that each new frame is a combination of the last and what you want it to look like combined. In this way the "flicker" might be reduced. But I haven't seen what you're talking about. I may be off.

    @alikaperdue@alikaperdue10 ай бұрын
  • I didn't realise that this is basically the next evolution of the "AI Upscaling" technology that has been used to in videogame mods: Take an image and then add detail until it looks like what I think it's supposed to. It's still mind-bending how it results in what it does, but AI Upscaling wasn't so scary, so I suppose this feels a bit less scary now.

    @johnnyw525@johnnyw525 Жыл бұрын
  • 12:34 beautiful cityscapes 🏙️

    @cyndicorinne@cyndicorinne11 ай бұрын
  • If you can make images by removing noise from random noise. Can you make P solutions from NP solutions the same way by training on known P solutions having "noise" added to make them NP?

    @CrystalblueMage@CrystalblueMage Жыл бұрын
  • I would do just about anything for more Mike content!

    @MadMan123654@MadMan123654 Жыл бұрын
  • What surprises me is how primitive a lot of these techniques seem to be under the hood, and how much further it can obviously be taken. These techniques are still in their infancy. For instance, there seem to be a lot of potential image-generating procedures that might converge faster than random high frequency noise. What if there could be stages with simulated random brush strokes, or generating geometric shapes, or input to 3d modelling software. If the tools that humans use to create digital art could be algorithmically leveraged by an AI, if might be even more effective. Also, if you could spatially embed the tags in the source image in a way it could be coupled to the segmentation, maybe it could be used as a tool to 'compose' an image. A blob of one color is tagged as a dog, a blob of another is tagged as a bench, and the AI interprets it with those spatially defined weights to start.

    @toohardtowatch@toohardtowatch Жыл бұрын
  • Great video. I would love to see a video about the recent controversy with GitHub copilot and GPL licenses.

    @bezmi@bezmi Жыл бұрын
  • Pretty cool!

    @peterchindove7146@peterchindove7146 Жыл бұрын
  • 3:07 earned my like. I need to go see that now. 😂

    @ben_clifford@ben_clifford Жыл бұрын
  • Could you do a video about the different samplers? (eg. DDIM, Euler, Euler a, etc.) That part of the process is still a mystery for me

    @nocturne6320@nocturne6320 Жыл бұрын
    • Ddim, euler, lms, heun and dpm all produce identical results. The ones with "a" at the end (euler a, dpm2 a) are ancestral samplers and produce different results

      @havz0r@havz0r Жыл бұрын
    • @@havz0r I ment how they work under the hood. They've already explained how the network generates images from noise, but not how the different samplers work

      @nocturne6320@nocturne6320 Жыл бұрын
  • > There are questions about ethics. There are questions about how these were trained. Maybe we deal with them another time. I really hope there is a discussion of this at some point. As a discipline that skews very white/male and enjoys relatively posh working conditions, it's very easy to insulate ourselves from the very real problems of the world. And because computers are so powerful it's also simple to automate oppression of many kinds, helping it continue to run smoothly. I think we have a responsibility to talk about these issues and I would love to see this channel model that in a constructive way.

    @acobster@acobster Жыл бұрын
  • I love this

    @cyndicorinne@cyndicorinne11 ай бұрын
  • So it is basically a morphing, blending and upscaling algorhythm of compressed/encoded data?

    @RaydenLGX@RaydenLGX Жыл бұрын
  • hi, could you guys make a video on what kernels are please?

    @reecelawson2403@reecelawson2403 Жыл бұрын
  • Only a matter of time until someone adapts this to 3d models. I mean, there are millions of 3d models on the internet in form of assets for all kind of engines and frameworks, all with a description to them, too.

    @felixmerz6229@felixmerz6229 Жыл бұрын
  • Well, done, I just don't understand how the guiding works. What if I instruct it to create a complex image that certainly wasn't in any training data with many complex relations what should be where in the inquiry? How it can be constructed as a whole instead of creating and merging the parts it may have encountered?

    @Indrikmyneur@Indrikmyneur11 ай бұрын
  • SD banned on Colab right? But some of people cracked it or bypass it and itd allows u to lauch SD on colab again, which is interesting. They probably changes something in the code of SD code to make them invisible as a unknown processed.

    @the_proffesional1713@the_proffesional17139 ай бұрын
  • I just watched this video. Obtained a Colab error on this statement: image = (image / 2 + 0.5).clamp(0, 1) . The error was: TypeError: unsupported operand type(s) for /: 'DecoderOutput' and 'int'

    @PaulFishwick@PaulFishwick Жыл бұрын
  • love this tool but im having an error when trying to noise an image to run the AI over a guide image. the add_noise def returns an error of "AttributeError: 'int' object has no attribute 'to'". It come after the call line below any help would be amazing latents = scheduler.add_noise(encoded, noise, start_timestep)

    @carlmalia29@carlmalia29 Жыл бұрын
  • so cool!

    @jaymayhoi@jaymayhoi Жыл бұрын
  • If you mention another video please also link it in the description!

    @blenderpanzi@blenderpanzi6 ай бұрын
  • what algorithms used in pakage managers? .

    @meguellatiyounes8659@meguellatiyounes8659 Жыл бұрын
  • Photoreal rarely works for me because the AI weirdiness is so obvious to the eye. I have really enjoyed creating images with various art styles though, it is extremely good at that. made some really competent artworks that (for me) are indistinguishable from a talented artist.

    @Emperorhirohito19272@Emperorhirohito19272 Жыл бұрын
    • "the AI weirdiness is so obvious to the eye" You mean those weird artifacts in the AI caused by Perlin's Noise?

      @dibbidydoo4318@dibbidydoo4318 Жыл бұрын
  • So I know you briefly mentioned the ethics of using these in the previous video (Usually around the trained images as I understand) - does Stable Diffusion allow you to not just supply that original image like the rabbit image you provided there, but the *entire* training set for a local training process based *only* on images you've provided/made/created/got permission to train based off of?

    @ZT1ST@ZT1ST Жыл бұрын
    • The trouble is that in order to specify "only include data you can learn from these specific images and no others", you'd need to retrain the entire network from zero, which costs six hundred thousand dollars worth of graphics card time.

      @Nerdule@Nerdule Жыл бұрын
  • so on the quality difference, dalle2 is 1024x but for some reason pretty heavily jpeg compressed, stable diffusion is 512x but (at least on replicate) much much less jpeg compressed, if at all (sometimes i’ve gotten stuff that looked compressed but it might’ve been from being trained on compressed images, not sure). so while it’s a lower resolution, i’ve found that it’s a higher quality image, but i’m sure there there are hosted versions that are much lower quality. also i’m not sure what differs between them for inpainting but i’ve found that for stable diffusion i can’t just add a mask, i have to inpaint stuff myself and get it somewhat close, otherwise i get variations on that part i was trying to get something else at

    @morgan0@morgan0 Жыл бұрын
    • oh and dalle2 is way way pricier than stable diffusion on replicate so i don’t know why they’re compressing the images so much, surely they should be able to afford storage for the images at the cost they charge

      @morgan0@morgan0 Жыл бұрын
    • I would assume thats the imperfections resulting from the upsampling from 64x64 youre seeing

      @deathstroyer@deathstroyer Жыл бұрын
    • @@deathstroyer oh yeah the autoencoder vs directly diffusing the image. would be cool to see someone fork stable diffusion and add on a non-autoencoded diffusion final step to make the output higher quality

      @morgan0@morgan0 Жыл бұрын
    • and it’s not a 64x image, it’s latent space

      @morgan0@morgan0 Жыл бұрын
  • Now Deep Dream Generator has just added a text to image diffusion generator too, and it's actually pretty decent.

    @andrewdunbar828@andrewdunbar828 Жыл бұрын
  • this whole topic blows my mind even more than when i first heard of deepfakes

    @realeques@realeques Жыл бұрын
  • Mike said link to code in description!

    @brym9159@brym9159 Жыл бұрын
    • Now sorted!

      @Computerphile@Computerphile Жыл бұрын
  • Mind giving a quick review of Bluewillow and which software does it utiized? I think you guys break down the whole infrastructure which is actually very informative.

    @LinfordMellony@LinfordMellony Жыл бұрын
    • Somebody asked that in a Discord AMA a couple of days ago. They're not telling. But it's very likely Stable Diffusion, using a finetuned custom model, or several. So it should be the same infrastructure

      @bluesailormercury@bluesailormercury Жыл бұрын
  • 7:18 is clearly a reference to xkcd 221

    @ZedaZ80@ZedaZ80 Жыл бұрын
  • I love to hear about ethical thing happen in genertaion image because it is prety serious for me.

    @asterinycht5438@asterinycht5438 Жыл бұрын
  • The code might have a bug, "TypeError: unsupported operand type(s) for /: 'DecoderOutput' and 'int'" on the line "image = (image / 2 + 0.5).clamp(0, 1)"

    @pb-vj1qs@pb-vj1qs Жыл бұрын
    • Same case here :(

      @alessandro_yt@alessandro_yt Жыл бұрын
    • change a line before to image = vae.decode(latents).sample, the .sample fixes it but now trying to get it to display

      @pb-vj1qs@pb-vj1qs Жыл бұрын
    • @@pb-vj1qs It worked now, thanks! The image is displayed here...

      @alessandro_yt@alessandro_yt Жыл бұрын
  • This is literally the first episode of Computerphile ever that I didn't understand anything of what was explained. And judging from the comments I'm the only one. Looks like I totally missed the boat on this topic.

    @nkronert@nkronert Жыл бұрын
    • what was confusing?

      @dibbidydoo4318@dibbidydoo4318 Жыл бұрын
    • @@dibbidydoo4318 it wasn't actually confusing because there wasn't anything to confuse. I had literally never heard of these developments before.

      @nkronert@nkronert Жыл бұрын
    • @@nkronert this is the followup video on the topic, check out the first one, where the whole thing is explained.

      @zwe1l1nkehaende@zwe1l1nkehaende Жыл бұрын
    • @@zwe1l1nkehaende thanks. I already found it. But I still don't really get it 😊 Doing some "best fit" on noise until a photorealistic image comes out still sounds like magic to me.

      @nkronert@nkronert Жыл бұрын
  • I don't understand at all how the result of this reconstruction process (remove noise) is stored. Sounds a bit like witchcraft to me. Remove some noise, here we go. I mean in which form is the noise reduction saved? In a database? Does it save pixels or what exactly?

    @maltimoto@maltimoto Жыл бұрын
  • Cool, very clear... but if you run in the notebook in 2024, you need to use the specific diffuser version 0.2.4, !pip install transformers diffusers==0.2.4 lpips accelerate

    @boringtaskai@boringtaskai4 ай бұрын
  • Anyone got a tutorial on cloning this and getting it setup?

    @chrisjohnston8952@chrisjohnston8952 Жыл бұрын
  • What does the training set look like? Where can I get it?

    @watchyoutube-ge8xg@watchyoutube-ge8xg Жыл бұрын
  • Interviewer is the the guy from sonic state right?

    @PapaVikingCodes@PapaVikingCodes Жыл бұрын
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