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import gradio as gr
import torch
import requests
from io import BytesIO
from diffusers import StableDiffusionPipeline
from diffusers import DDIMScheduler
from utils import *
from inversion_utils import *
from modified_pipeline_semantic_stable_diffusion import SemanticStableDiffusionPipeline
from torch import autocast, inference_mode

def invert(x0, prompt_src="", num_diffusion_steps=100, cfg_scale_src = 3.5, eta = 1):

  #  inverts a real image according to Algorihm 1 in https://arxiv.org/pdf/2304.06140.pdf, 
  #  based on the code in https://github.com/inbarhub/DDPM_inversion
   
  #  returns wt, zs, wts:
  #  wt - inverted latent
  #  wts - intermediate inverted latents
  #  zs - noise maps

  sd_pipe.scheduler.set_timesteps(num_diffusion_steps)

  # vae encode image
  with autocast("cuda"), inference_mode():
      w0 = (sd_pipe.vae.encode(x0).latent_dist.mode() * 0.18215).float()

  # find Zs and wts - forward process
  wt, zs, wts = inversion_forward_process(sd_pipe, w0, etas=eta, prompt=prompt_src, cfg_scale=cfg_scale_src, prog_bar=True, num_inference_steps=num_diffusion_steps)
  return wt, zs, wts



def sample(wt, zs, wts, prompt_tar="", cfg_scale_tar=15, skip=36, eta = 1):

    # reverse process (via Zs and wT)
    w0, _ = inversion_reverse_process(sd_pipe, xT=wts[skip], etas=eta, prompts=[prompt_tar], cfg_scales=[cfg_scale_tar], prog_bar=True, zs=zs[skip:])
    
    # vae decode image
    with autocast("cuda"), inference_mode():
        x0_dec = sd_pipe.vae.decode(1 / 0.18215 * w0).sample
    if x0_dec.dim()<4:
        x0_dec = x0_dec[None,:,:,:]
    img = image_grid(x0_dec)
    return img

# load pipelines
sd_model_id = "runwayml/stable-diffusion-v1-5"
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
sd_pipe = StableDiffusionPipeline.from_pretrained(sd_model_id).to(device)
sd_pipe.scheduler = DDIMScheduler.from_config(sd_model_id, subfolder = "scheduler")
sem_pipe = SemanticStableDiffusionPipeline.from_pretrained(sd_model_id).to(device)


def edit(input_image, 
                    src_prompt ="", 
                    tar_prompt="", 
                    steps=100,
                    # src_cfg_scale,
                    skip=36,
                    tar_cfg_scale=15,
                    edit_concept="",
                    sega_edit_guidance=0,
                    warm_up=7,
                    neg_guidance=False):
    offsets=(0,0,0,0)
    x0 = load_512(input_image, *offsets, device)


    # invert
    # wt, zs, wts = invert(x0 =x0 , prompt_src=src_prompt, num_diffusion_steps=steps, cfg_scale_src=src_cfg_scale)
    wt, zs, wts = invert(x0 =x0 , prompt_src=src_prompt, num_diffusion_steps=steps)                    
    latnets = wts[skip].expand(1, -1, -1, -1)

    eta = 1 
    #pure DDPM output
    pure_ddpm_out = sample(wt, zs, wts, prompt_tar=tar_prompt, 
                           cfg_scale_tar=tar_cfg_scale, skip=skip, 
                           eta = eta)
    
    editing_args = dict(
    editing_prompt = [edit_concept],
    reverse_editing_direction = [neg_guidance],
    edit_warmup_steps=[warm_up],
    edit_guidance_scale=[sega_edit_guidance], 
    edit_threshold=[.93],
    edit_momentum_scale=0.5, 
    edit_mom_beta=0.6 
  )
    sega_out = sem_pipe(prompt=tar_prompt,eta=eta, latents=latnets, guidance_scale = tar_cfg_scale,
                        num_images_per_prompt=1,  
                        num_inference_steps=steps, 
                        use_ddpm=True,  wts=wts, zs=zs[skip:], **editing_args)
    return pure_ddpm_out,sega_out.images[0]


# demo
intro = """
<div style="text-align: center; max-width: 1200px; margin: 20px auto;">
<h1 style="font-weight: 900; margin-bottom: 7px;">
   Edit Friendly DDPM X Semantic Guidance: Editing Real Images
</h1>
<p>For faster inference without waiting in queue, you may duplicate the space and upgrade to GPU in settings.
<br/>
<a href="https://huggingface.co/spaces/LinoyTsaban/ddpm_sega?duplicate=true">
<img style="margin-top: 0em; margin-bottom: 0em" src="https://bit.ly/3gLdBN6" alt="Duplicate Space"></a>
<p/>"""
with gr.Blocks() as demo:
    gr.HTML(intro)
   

    with gr.Row():
        input_image = gr.Image(label="Input Image", interactive=True)
        ddpm_edited_image = gr.Image(label=f"DDPM Reconstructed Image", interactive=False)
        sega_edited_image = gr.Image(label=f"DDPM + SEGA Edited Image", interactive=False)
        input_image.style(height=512, width=512)
        ddpm_edited_image.style(height=512, width=512)
        sega_edited_image.style(height=512, width=512)

    with gr.Row():
        with gr.Column(scale=1, min_width=100):
            generate_button = gr.Button("Generate")
        # with gr.Column(scale=1, min_width=100):
        #     reset_button = gr.Button("Reset")
        # with gr.Column(scale=3):
        #     instruction = gr.Textbox(lines=1, label="Edit Instruction", interactive=True)
            
    with gr.Row():
        src_prompt = gr.Textbox(lines=1, label="Source Prompt", interactive=True)
        #edit
        tar_prompt = gr.Textbox(lines=1, label="Target Prompt", interactive=True)
        edit_concept = gr.Textbox(lines=1, label="SEGA Edit Concept", interactive=True)

    with gr.Row():
        #inversion
        steps = gr.Number(value=100, precision=0, label="Num Diffusion Steps", interactive=True)
        # src_cfg_scale = gr.Number(value=3.5, label=f"Source CFG", interactive=True)
        # reconstruction
        skip = gr.Number(value=36, precision=0, label="Skip Steps", interactive=True)
        tar_cfg_scale = gr.Number(value=15, label=f"Guidance Scale", interactive=True)
        # edit
        sega_edit_guidance = gr.Number(value=5, label=f"SEGA Edit Guidance Scale", interactive=True)
        warm_up = gr.Number(value=5, label=f"SEGA Warm-up Steps", interactive=True)
        neg_guidance = gr.Checkbox(label="SEGA Negative Guidance")
  

    # gr.Markdown(help_text)

    generate_button.click(
        fn=edit,
        inputs=[input_image, 
                    src_prompt, 
                    tar_prompt, 
                    steps,
                    # src_cfg_scale,
                    skip,
                    tar_cfg_scale,
                    edit_concept,
                    sega_edit_guidance,
                    warm_up,
                    neg_guidance   
        ],
        outputs=[ddpm_edited_image, sega_edited_image],
    )



demo.queue(concurrency_count=1)
demo.launch(share=False)