import random from time import time_ns import torch import spaces import gradio as gr from transformers import set_seed from kgen import models from diff import load_model, encode_prompts from dtg import process from meta import ( DEFAULT_STYLE_LIST, MODEL_FORMAT_LIST, MODEL_DEFAULT_QUALITY_LIST, DEFAULT_NEGATIVE_PROMPT, ) sdxl_pipe = load_model(model_id="KBlueLeaf/Kohaku-XL-Epsilon", device="cuda") models.load_model(models.model_list[0]) models.text_model.cuda() current_dtg_model = models.model_list[0] current_sdxl_model = "KBlueLeaf/Kohaku-XL-Epsilon" @spaces.GPU def gen( sdxl_model: str, dtg_model: str, style: str, base_prompt: str, addon_prompt: str = "", seed: int = -1, ): global current_dtg_model, current_sdxl_model, sdxl_pipe if sdxl_model != current_sdxl_model: sdxl_pipe = load_model(model_id=sdxl_model, device="cuda") current_sdxl_model = sdxl_model if dtg_model != current_dtg_model: models.load_model(dtg_model) models.text_model.cuda() current_dtg_model = dtg_model t0 = time_ns() seed = int(seed) if seed == -1: seed = random.randint(0, 2**31 - 1) prompt = ( f"{base_prompt}, {addon_prompt}, " f"{DEFAULT_STYLE_LIST[style]}, " f"{MODEL_DEFAULT_QUALITY_LIST[sdxl_model]}, " ) full_prompt = process( prompt, aspect_ratio=1.0, seed=seed, tag_length="short", ban_tags=".*alternate.*, character doll, multiple.*, .*cosplay.*, .*name, .*text.*", format=MODEL_FORMAT_LIST[sdxl_model], temperature=1.0, ) torch.cuda.empty_cache() prompt_embeds, negative_prompt_embeds, pooled_embeds2, neg_pooled_embeds2 = ( encode_prompts(sdxl_pipe, full_prompt, DEFAULT_NEGATIVE_PROMPT) ) set_seed(seed) result = sdxl_pipe( prompt_embeds=prompt_embeds, negative_prompt_embeds=negative_prompt_embeds, pooled_prompt_embeds=pooled_embeds2, negative_pooled_prompt_embeds=neg_pooled_embeds2, num_inference_steps=24, width=1024, height=1024, guidance_scale=6.0, ).images[0] torch.cuda.empty_cache() t1 = time_ns() return ( result.convert("RGB"), full_prompt, f"Cost: {(t1 - t0) / 1e9:.4}sec || Seed: {seed}", ) if __name__ == "__main__": with gr.Blocks(theme=gr.themes.Soft()) as demo: gr.Markdown("""# This Cute Dragon Girl Doesn't Exist""") with gr.Accordion("Introduction and Instructions", open=False): gr.Markdown( """ ### What is this: "This Cute Dragon Girl Doesn't Exist" is a Demo for KGen System(DanTagGen) with SDXL anime models. It is aimed to show how the DanTagGen can be used to "refine/upsample" simple prompt to help the T2I model. Since I already have some application and demo on DanTagGen. This demo is designed to be more "simple" than before. Just one click, and get the result with high quality and high diversity. ### How to use it: click "Next" button until you get the dragon girl you like. ### Resources: - My anime model: [Kohaku XL Epsilon](https://huggingface.co/KBlueLeaf/Kohaku-XL-Epsilon) - DanTagGen: [DanTagGen](https://huggingface.co/KBlueLeaf/DanTagGen-beta) - DanTagGen extension: [z-a1111-sd-webui-dtg](https://github.com/KohakuBlueleaf/z-a1111-sd-webui-dtg) """ ) with gr.Row(): with gr.Column(scale=3): with gr.Row(): sdxl_model = gr.Dropdown( MODEL_FORMAT_LIST, label="SDXL Model", value=list(MODEL_FORMAT_LIST)[0], ) dtg_model = gr.Dropdown( models.model_list, label="DTG Model", value=models.model_list[0], ) with gr.Row(): base_prompt = gr.Textbox( label="Base prompt", lines=1, value="1girl, solo, dragon girl, dragon wings, dragon horns, dragon tail", interactive=False, ) addon_propmt = gr.Textbox( label="Addon prompt", lines=1, value="cowboy shot", ) with gr.Row(): seed = gr.Number( label="Seed (-1 for random)", value=-1, minimum=-1, maximum=2**31 - 1, precision=0, ) style = gr.Dropdown( DEFAULT_STYLE_LIST, label="Style", value=list(DEFAULT_STYLE_LIST)[0], ) submit = gr.Button("Next", variant="primary") dtg_output = gr.TextArea( label="DTG output", lines=9, show_copy_button=True ) cost_time = gr.Markdown() with gr.Column(scale=4): result = gr.Image(label="Result", type="numpy", interactive=False) submit.click( fn=gen, inputs=[sdxl_model, dtg_model, style, base_prompt, addon_propmt, seed], outputs=[result, dtg_output, cost_time], ) demo.launch()