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import os
from pathlib import Path
import torch
import numpy as np
from PIL import Image
import gradio as gr
from tokenizers import Tokenizer
from torch.utils.data import Dataset
import albumentations as A
from tqdm import tqdm

from fourm.vq.vqvae import VQVAE
from fourm.models.fm import FM
from fourm.models.generate import (
    GenerationSampler,
    build_chained_generation_schedules,
    init_empty_target_modality,
    custom_text,
)
from fourm.utils.plotting_utils import decode_dict
from fourm.data.modality_info import MODALITY_INFO
from fourm.data.modality_transforms import RGBTransform
from torchvision.transforms.functional import center_crop

# Constants and configurations
DEVICE = "cuda" if torch.cuda.is_available() else "cpu"
IMG_SIZE = 224
TOKENIZER_PATH = "./fourm/utils/tokenizer/trained/text_tokenizer_4m_wordpiece_30k.json"
FM_MODEL_PATH = "EPFL-VILAB/4M-21_L"
VQVAE_PATH = "EPFL-VILAB/4M_tokenizers_DINOv2-B14-global_8k_16_224"
IMAGE_DATASET_PATH = "/home/ubuntu/GIT_REPOS/ml-4m/data/custom_data/"

# Load models
text_tokenizer = Tokenizer.from_file(TOKENIZER_PATH)
vqvae = VQVAE.from_pretrained(VQVAE_PATH)
fm_model = FM.from_pretrained(FM_MODEL_PATH).eval().to(DEVICE)

# Generation configurations
cond_domains = ["caption", "metadata"]
target_domains = ["tok_dinov2_global"]
tokens_per_target = [16]
generation_config = {
    "autoregression_schemes": ["roar"],
    "decoding_steps": [1],
    "token_decoding_schedules": ["linear"],
    "temps": [2.0],
    "temp_schedules": ["onex:0.5:0.5"],
    "cfg_scales": [1.0],
    "cfg_schedules": ["constant"],
    "cfg_grow_conditioning": True,
}
top_p, top_k = 0.8, 0.0

schedule = build_chained_generation_schedules(
    cond_domains=cond_domains,
    target_domains=target_domains,
    tokens_per_target=tokens_per_target,
    **generation_config,
)

sampler = GenerationSampler(fm_model)


class ImageDataset(Dataset):
    def __init__(self, path: str, img_sz=IMG_SIZE):
        self.path = Path(path)
        self.files = list(self.path.rglob("*"))
        self.tfms = A.Compose(
            [A.SmallestMaxSize(img_sz)])

    def __len__(self):
        return len(self.files)

    def __getitem__(self, idx):
        img = Image.open(self.files[idx]).convert("RGB")
        img = np.array(img)
        img = self.tfms(image=img)["image"]
        return Image.fromarray(img)


dataset = ImageDataset(IMAGE_DATASET_PATH)


@torch.no_grad()
def get_image_embeddings(dataset):
    cache_file = "image_emb.pt"
    if os.path.exists(cache_file):
        return torch.load(cache_file)


image_embeddings = get_image_embeddings(dataset).to(DEVICE)
print(image_embeddings.shape)

def get_similar_images(caption, brightness, num_items):
    batched_sample = {}

    for target_mod, ntoks in zip(target_domains, tokens_per_target):
        batched_sample = init_empty_target_modality(
            batched_sample, MODALITY_INFO, target_mod, 1, ntoks, DEVICE
        )

    metadata = f"v1=6 v0={num_items} v1=10 v0={brightness}"
    print(metadata)
    batched_sample = custom_text(
        batched_sample,
        input_text=caption,
        eos_token="[EOS]",
        key="caption",
        device=DEVICE,
        text_tokenizer=text_tokenizer,
    )
    batched_sample = custom_text(
        batched_sample,
        input_text=metadata,
        eos_token="[EOS]",
        key="metadata",
        device=DEVICE,
        text_tokenizer=text_tokenizer,
    )

    out_dict = sampler.generate(
        batched_sample,
        schedule,
        text_tokenizer=text_tokenizer,
        verbose=True,
        seed=0,
        top_p=top_p,
        top_k=top_k,
    )

    with torch.no_grad():
        dec_dict = decode_dict(
            out_dict,
            {"tok_dinov2_global": vqvae.to(DEVICE)},
            text_tokenizer,
            image_size=IMG_SIZE,
            patch_size=16,
            decoding_steps=1,
        )

    combined_features = dec_dict["tok_dinov2_global"]
    similarities = torch.nn.functional.cosine_similarity(
        combined_features, image_embeddings
    )
    top_indices = similarities.argsort(descending=True)[:1]
    print(top_indices, similarities[top_indices])
    return [dataset[i] for i in top_indices.cpu().numpy()]


# Gradio interface
with gr.Blocks() as demo:
    gr.Markdown("# Image Retrieval using 4M-21: An Any-to-Any Vision Model")
    with gr.Row():
        with gr.Column(scale=1):
            caption = gr.Textbox(
                label="Caption Description", placeholder="Enter image description..."
            )
            brightness = gr.Slider(
                minimum=0, maximum=255, value=5, step=1, 
                label="Brightness", info="Adjust image brightness (0-255)"
            )
            num_items = gr.Slider(
                minimum=0, maximum=50, value=5, step=1, 
                label="Number of Items", info="Number of COCO instances in image (0-50)"
            )
        with gr.Column(scale=1):
            output_images = gr.Gallery(
                label="Retrieved Images",
                show_label=True,
                elem_id="gallery",
                columns=2,
                rows=2,
                height=512,
            )
    submit_btn = gr.Button("Retrieve Most Similar Image")
    submit_btn.click(
        fn=get_similar_images,
        inputs=[caption, brightness, num_items],
        outputs=output_images,
    )

if __name__ == "__main__":
    demo.launch(share=True)