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from __future__ import annotations

import io
from dataclasses import dataclass, field
from pathlib import Path
from typing import Any

import cv2
import numpy as np
from PIL import Image

import torch
from torch.utils.data import DataLoader
from torchvision import transforms as T
from torchvision.transforms import functional as F
from torchvision.transforms import InterpolationMode

import datasets
from datasets import load_dataset, load_from_disk
from transformers import CLIPTokenizer

@dataclass
class CannyCFG:
    sigma: float = 0.33
    d: int = 7
    sigma_color: float = 50
    sigma_space: float = 50


@dataclass
class LaionPrepCFG:
    dataset_name: str = 'bhargavsdesai/laion_improved_aesthetics_6.5plus_with_images'
    resolution: tuple[int, int] = (512, 512)  

    val_size: int = 10
    val_seed: int = 1

    canny: CannyCFG = field(default_factory=CannyCFG)
    cache_dir: str = './data'    

    map_bs: int = 256
    map_np: int = 8

    num_workers: int = 4

def canny_auto_median_bilateral(pil_img: Image.Image, cfg: CannyCFG) -> Image.Image:

    gray = np.array(pil_img.convert('L'), dtype=np.uint8)

    gray_bilat = cv2.bilateralFilter(
        gray, d=cfg.d, sigmaColor=cfg.sigma_color, sigmaSpace=cfg.sigma_space
    )

    v = float(np.median(gray_bilat))
    low = int(max(0, (1.0 - cfg.sigma) * v))
    high = int(min(255, (1.0 + cfg.sigma) * v))
    if high <= low:
        high = min(255, low + 1)

    edges = cv2.Canny(gray_bilat, low, high)
    return Image.fromarray(edges, mode='L')


def pil_to_png_bytes(img: Image.Image, compress_level: int = 1) -> bytes:
    buf = io.BytesIO()
    img.save(buf, format='PNG', compress_level=compress_level)
    return buf.getvalue()


def get_image_map(canny_cfg: CannyCFG, resolution: tuple[int, int]):

    def image_map(batch: dict[str, Any]) -> dict[str, Any]:
        try:
            cv2.setNumThreads(0)
        except Exception:
            pass

        out_img = []
        out_canny = []

        for img in batch['image']:  
            img = img.convert('RGB')
            img = F.resize(img, list(resolution), interpolation=InterpolationMode.BICUBIC)

            canny = canny_auto_median_bilateral(img, canny_cfg) # type: ignore
            out_img.append({'bytes': pil_to_png_bytes(img), 'path': None}) # type: ignore
            out_canny.append({'bytes': pil_to_png_bytes(canny, compress_level=1), 'path': None})

        return {'image': out_img, 'canny': out_canny}

    return image_map

def build_prepped_transform():
    to_tensor = T.ToTensor()
    norm = T.Normalize([0.5, 0.5, 0.5], [0.5, 0.5, 0.5])

    def _one(img: Image.Image, cond: Image.Image, text: Any):
        img = img.convert('RGB')
        cond = cond.convert('L')

        img_t = norm(to_tensor(img)) # [3,H,W] in [-1,1]
        cond_t = to_tensor(cond) # [1,H,W] in [0,1]
        cond_t = cond_t.repeat(3, 1, 1) # [3,H,W] to match conditioning_channels=3

        text = '' if text is None else str(text)
        return img_t, cond_t, text

    def prepped_transform(ex: dict[str, list]) -> dict[str, list]:
        imgs = ex['image']
        conds = ex['canny']
        texts = ex['text']

        px_list = []
        cond_list = []
        text_list = []

        for img, cond, t in zip(imgs, conds, texts):
            px, cv, tt = _one(img, cond, t)
            px_list.append(px)
            cond_list.append(cv)
            text_list.append(tt)

        return {
            'pixel_values': px_list,
            'conditioning_pixel_values': cond_list,
            'texts': text_list,
        }

    return prepped_transform


def get_train_collate_fn(tokeniser: CLIPTokenizer, max_length: int, no_caption_prob: float):
    def train_collator_fn(batch: list[dict[str, Any]]) -> dict[str, Any]:
        pixel_values = torch.stack([b['pixel_values'] for b in batch])
        conditioning_pixel_values = torch.stack([b['conditioning_pixel_values'] for b in batch])
        texts = [b['texts'] for b in batch]

        if no_caption_prob > 0:
            drop = torch.rand(len(texts)) < no_caption_prob
            texts = [('' if d else t) for t, d in zip(texts, drop.tolist())]

        toks = tokeniser(
            texts,
            truncation=True,
            padding='longest',
            max_length=max_length,
            return_tensors='pt',
        )

        return {
            'pixel_values': pixel_values,
            'conditioning_pixel_values': conditioning_pixel_values,
            'input_ids': toks['input_ids'],
            'attention_mask': toks['attention_mask'],
        }

    return train_collator_fn


def get_train_dataloader(train_ds, collate_fn, batch_size: int, num_workers: int=0):
    return DataLoader(
        dataset=train_ds,
        batch_size=batch_size,
        shuffle=True,
        num_workers=num_workers,
        pin_memory=True,
        persistent_workers=(num_workers > 0),
        collate_fn=collate_fn,
    )

def _dataset_dirname(cfg: LaionPrepCFG) -> str:
    H, W = cfg.resolution
    c = cfg.canny
    name = (
        f'laion_r{H}x{W}'
        f'_sigma{c.sigma}_d{c.d}_sc{c.sigma_color}_ss{c.sigma_space}'
    )
    return name.replace('.', '-')


def get_dataset(cfg: LaionPrepCFG):
    ds_dir = _dataset_dirname(cfg)
    path = (Path(cfg.cache_dir) / ds_dir).resolve()

    if path.exists():
        print(f'[load] {path}')
        return load_from_disk(str(path))

    print(f'[build] {path} (not found, creating now)')
    path.parent.mkdir(parents=True, exist_ok=True)

    ds = load_dataset(cfg.dataset_name, split='train')
    ds = ds.cast_column('image', datasets.Image(decode=True))

    image_map = get_image_map(cfg.canny, cfg.resolution)
    ds = ds.map(
        function=image_map,
        batched=True,
        batch_size=cfg.map_bs,
        num_proc=cfg.map_np, # type: ignore
    ) 

    ds = ds.cast_column('image', datasets.Image(decode=True))
    ds = ds.cast_column('canny', datasets.Image(decode=True))

    ds.save_to_disk(str(path))
    print(f'[saved] {path}')
    return ds


def prepare_laion(cfg: LaionPrepCFG):
    ds = get_dataset(cfg)

    split = ds.train_test_split(test_size=cfg.val_size, seed=cfg.val_seed, shuffle=True) # type: ignore
    train_ds, val_ds = split['train'], split['test']

    train_ds = train_ds.with_transform(build_prepped_transform())

    return train_ds, val_ds