from diffusers import AutoencoderKL, UNet2DConditionModel, StableDiffusionPipeline, StableDiffusionImg2ImgPipeline, DPMSolverMultistepScheduler import gradio as gr import torch from PIL import Image import utils import datetime import time import psutil start_time = time.time() is_colab = utils.is_google_colab() class Model: def __init__(self, name, path="", prefix=""): self.name = name self.path = path self.prefix = prefix self.pipe_t2i = None self.pipe_i2i = None models = [ Model("Arcane", "nitrosocke/Arcane-Diffusion", "arcane style "), Model("Dreamlike Diffusion 1.0", "dreamlike-art/dreamlike-diffusion-1.0", "dreamlikeart "), Model("Archer", "nitrosocke/archer-diffusion", "archer style "), Model("Anything V3", "Linaqruf/anything-v3.0", ""), Model("Modern Disney", "nitrosocke/mo-di-diffusion", "modern disney style "), Model("Classic Disney", "nitrosocke/classic-anim-diffusion", "classic disney style "), Model("Loving Vincent (Van Gogh)", "dallinmackay/Van-Gogh-diffusion", "lvngvncnt "), Model("Wavyfusion", "wavymulder/wavyfusion", "wa-vy style "), Model("Analog Diffusion", "wavymulder/Analog-Diffusion", "analog style "), Model("Redshift renderer (Cinema4D)", "nitrosocke/redshift-diffusion", "redshift style "), Model("Midjourney v4 style", "prompthero/midjourney-v4-diffusion", "mdjrny-v4 style "), Model("Waifu", "hakurei/waifu-diffusion"), Model("Cyberpunk Anime", "DGSpitzer/Cyberpunk-Anime-Diffusion", "dgs illustration style "), Model("Elden Ring", "nitrosocke/elden-ring-diffusion", "elden ring style "), Model("TrinArt v2", "naclbit/trinart_stable_diffusion_v2"), Model("Spider-Verse", "nitrosocke/spider-verse-diffusion", "spiderverse style "), Model("Balloon Art", "Fictiverse/Stable_Diffusion_BalloonArt_Model", "BalloonArt "), Model("Tron Legacy", "dallinmackay/Tron-Legacy-diffusion", "trnlgcy "), Model("Pokémon", "lambdalabs/sd-pokemon-diffusers"), Model("Pony Diffusion", "AstraliteHeart/pony-diffusion"), Model("Robo Diffusion", "nousr/robo-diffusion"), ] custom_model = None if is_colab: models.insert(0, Model("Custom model")) custom_model = models[0] last_mode = "txt2img" current_model = models[1] if is_colab else models[0] current_model_path = current_model.path if is_colab: pipe = StableDiffusionPipeline.from_pretrained( current_model.path, torch_dtype=torch.get_default_dtype(), scheduler=DPMSolverMultistepScheduler.from_pretrained(current_model.path, subfolder="scheduler"), safety_checker=lambda images, clip_input: (images, False) ) else: pipe = StableDiffusionPipeline.from_pretrained( current_model.path, torch_dtype=torch.get_default_dtype(), scheduler=DPMSolverMultistepScheduler.from_pretrained(current_model.path, subfolder="scheduler") ) if torch.cuda.is_available(): pipe = pipe.to("cuda") pipe.enable_xformers_memory_efficient_attention() device = "GPU 🔥" if torch.cuda.is_available() else "CPU 🥶" def error_str(error, title="Error"): return f"""#### {title} {error}""" if error else "" def custom_model_changed(path): models[0].path = path global current_model current_model = models[0] def on_model_change(model_name): prefix = "Enter prompt. \"" + next((m.prefix for m in models if m.name == model_name), None) + "\" is prefixed automatically" if model_name != models[0].name else "Don't forget to use the custom model prefix in the prompt!" return gr.update(visible = model_name == models[0].name), gr.update(placeholder=prefix) def inference(model_name, prompt, guidance, steps, n_images=1, width=512, height=512, seed=0, img=None, strength=0.5, neg_prompt=""): print(psutil.virtual_memory()) # print memory usage global current_model for model in models: if model.name == model_name: current_model = model model_path = current_model.path generator = torch.Generator('cuda').manual_seed(seed) if seed != 0 else None try: if img is not None: return img_to_img(model_path, prompt, n_images, neg_prompt, img, strength, guidance, steps, width, height, generator), None else: return txt_to_img(model_path, prompt, n_images, neg_prompt, guidance, steps, width, height, generator), None except Exception as e: return None, error_str(e) def txt_to_img(model_path, prompt, n_images, neg_prompt, guidance, steps, width, height, generator): print(f"{datetime.datetime.now()} txt_to_img, model: {current_model.name}") global last_mode global pipe global current_model_path if model_path != current_model_path or last_mode != "txt2img": current_model_path = model_path if is_colab or current_model == custom_model: pipe = StableDiffusionPipeline.from_pretrained( current_model_path, torch_dtype=torch.get_default_dtype(), scheduler=DPMSolverMultistepScheduler.from_pretrained(current_model.path, subfolder="scheduler"), safety_checker=lambda images, clip_input: (images, False) ) else: pipe = StableDiffusionPipeline.from_pretrained( current_model_path, torch_dtype=torch.get_default_dtype(), scheduler=DPMSolverMultistepScheduler.from_pretrained(current_model.path, subfolder="scheduler") ) # pipe = pipe.to("cpu") # pipe = current_model.pipe_t2i if torch.cuda.is_available(): pipe = pipe.to("cuda") pipe.enable_xformers_memory_efficient_attention() last_mode = "txt2img" prompt = current_model.prefix + prompt result = pipe( prompt, negative_prompt = neg_prompt, num_images_per_prompt=n_images, num_inference_steps = int(steps), guidance_scale = guidance, width = width, height = height, generator = generator) return replace_nsfw_images(result) def img_to_img(model_path, prompt, n_images, neg_prompt, img, strength, guidance, steps, width, height, generator): print(f"{datetime.datetime.now()} img_to_img, model: {model_path}") global last_mode global pipe global current_model_path if model_path != current_model_path or last_mode != "img2img": current_model_path = model_path if is_colab or current_model == custom_model: pipe = StableDiffusionImg2ImgPipeline.from_pretrained( current_model_path, torch_dtype=torch.get_default_dtype(), scheduler=DPMSolverMultistepScheduler.from_pretrained(current_model.path, subfolder="scheduler"), safety_checker=lambda images, clip_input: (images, False) ) else: pipe = StableDiffusionImg2ImgPipeline.from_pretrained( current_model_path, torch_dtype=torch.get_default_dtype(), scheduler=DPMSolverMultistepScheduler.from_pretrained(current_model.path, subfolder="scheduler") ) # pipe = pipe.to("cpu") # pipe = current_model.pipe_i2i if torch.cuda.is_available(): pipe = pipe.to("cuda") pipe.enable_xformers_memory_efficient_attention() last_mode = "img2img" prompt = current_model.prefix + prompt ratio = min(height / img.height, width / img.width) img = img.resize((int(img.width * ratio), int(img.height * ratio)), Image.LANCZOS) result = pipe( prompt, negative_prompt = neg_prompt, num_images_per_prompt=n_images, image = img, num_inference_steps = int(steps), strength = strength, guidance_scale = guidance, # width = width, # height = height, generator = generator) return replace_nsfw_images(result) def replace_nsfw_images(results): if is_colab: return results.images for i in range(len(results.images)): if results.nsfw_content_detected[i]: results.images[i] = Image.open("nsfw.png") return results.images css = """.finetuned-diffusion-div div{display:inline-flex;align-items:center;gap:.8rem;font-size:1.75rem}.finetuned-diffusion-div div h1{font-weight:900;margin-bottom:7px}.finetuned-diffusion-div p{margin-bottom:10px;font-size:94%}a{text-decoration:underline}.tabs{margin-top:0;margin-bottom:0}#gallery{min-height:20rem} """ with gr.Blocks(css=css) as demo: gr.HTML( f"""
Demo for multiple fine-tuned Stable Diffusion models, trained on different styles:
Arcane, Archer, Elden Ring, Spider-Verse, Modern Disney, Classic Disney, Loving Vincent (Van Gogh), Redshift renderer (Cinema4D), Midjourney v4 style, Waifu, Pokémon, Pony Diffusion, Robo Diffusion, Cyberpunk Anime, Tron Legacy, Balloon Art + in colab notebook you can load any other Diffusers 🧨 SD model hosted on HuggingFace 🤗.
You can skip the queue and load custom models in the colab:
Running on {device}{(" in a Google Colab." if is_colab else "")}You can also duplicate this space and upgrade to gpu by going to settings:
Models by @nitrosocke, @haruu1367, @Helixngc7293, @dal_mack, @prompthero and others. ❤️
This space uses the DPM-Solver++ sampler by Cheng Lu, et al..