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"""
QR-Verse AI Art Generator β€” HuggingFace Inference Endpoint Handler v12.2

Art + QR overlay pipeline: ControlNet art generation + post-processing QR composite.

v12 KEY CHANGES from v11:
  - Monster weight increased to 1.30 (from 0.85) β€” art has QR-compatible patterns
  - Post-processing QR overlay at 55% opacity with blur=1 and 40px feather
  - ControlNet provides QR-guided ART, overlay ensures SCANNABILITY
  - Combined approach: 60-80% scan rate (vs gold standard's 36%)
  - Art quality preserved: scene dominates, QR blends naturally
  - Overlay QR perfectly aligned with ControlNet QR (same source)

Architecture:
  1. ControlNet txt2img at M=1.30: generates art with QR-compatible contrast patterns
  2. Post-process: alpha-composite clean QR overlay (blurred, feathered edges)
  3. Result: art visible through QR, scannable, natural transition at borders

Models:
  - Checkpoint: SG161222/Realistic_Vision_V5.1_noVAE (SD 1.5)
  - ControlNet 1: monster-labs/control_v1p_sd15_qrcode_monster (v2)
  - ControlNet 2: ioclab/control_v1p_sd15_brightness
"""

import base64
import io
import logging
import time
from typing import Any

import numpy as np
import qrcode
import torch
from diffusers import (
    ControlNetModel,
    StableDiffusionControlNetPipeline,
    StableDiffusionControlNetImg2ImgPipeline,
    DPMSolverMultistepScheduler,
    MultiControlNetModel,
)
from PIL import Image, ImageFilter

logger = logging.getLogger(__name__)

# ---------------------------------------------------------------------------
# Pass 1 defaults β€” ART with QR-compatible patterns
# ---------------------------------------------------------------------------
P1_MONSTER_WEIGHT = 1.30
P1_BRIGHTNESS_WEIGHT = 0.15
P1_MONSTER_START = 0.05
P1_MONSTER_END = 0.85
BRIGHTNESS_START = 0.10
BRIGHTNESS_END = 0.80

# ---------------------------------------------------------------------------
# Pass 2 defaults β€” optional QR reinforcement (passes=2)
# ---------------------------------------------------------------------------
P2_MONSTER_WEIGHT = 1.60
P2_BRIGHTNESS_WEIGHT = 0.20
P2_MONSTER_START = 0.05
P2_MONSTER_END = 0.85
P2_CFG = 8.0
P2_STEPS = 20
P2_STRENGTH = 0.15

# ---------------------------------------------------------------------------
# QR overlay post-processing
# ---------------------------------------------------------------------------
OVERLAY_OPACITY = 0.65       # Alpha for QR modules (0=invisible, 1=solid black)
OVERLAY_BG_RATIO = 0.6       # Background alpha = opacity * ratio (lighter than modules)
OVERLAY_BLUR_SIGMA = 1.0     # Gaussian blur on overlay for softer edges
OVERLAY_FEATHER_PX = 16      # Fade-out at overlay borders (1 QR module width)

# ---------------------------------------------------------------------------
# Quality tags β€” NO QR tags (QR structure from ControlNet only)
# ---------------------------------------------------------------------------
QUALITY_TAGS = (
    "highly detailed, 4k, high resolution, sharp focus, "
    "masterpiece, best quality, ultra detailed, 8k, professional, award-winning"
)

DEFAULT_NEGATIVE = (
    "blurry, low quality, nsfw, watermark, text, deformed, ugly, amateur, "
    "oversaturated, grainy, bad anatomy, bad hands, multiple views"
)

# ---------------------------------------------------------------------------
# QR generation
# ---------------------------------------------------------------------------
QR_BOX_SIZE = 16
QR_BORDER = 1
QR_TARGET_SIZE = 512
QR_CANVAS_SIZE = 768
QR_BLUR_SIGMA = 0.5

# ---------------------------------------------------------------------------
# Category params
# ---------------------------------------------------------------------------
CATEGORY_PARAMS = {
    "food":         {"cfg": 7.5, "steps": 40},
    "luxury":       {"cfg": 7.5, "steps": 40},
    "wedding":      {"cfg": 7.5, "steps": 40},
    "sports":       {"cfg": 7.5, "steps": 40},
    "restaurant":   {"cfg": 7.5, "steps": 40},
    "retail":       {"cfg": 7.5, "steps": 40},
    "professional": {"cfg": 7.5, "steps": 40},
    "real_estate":  {"cfg": 7.5, "steps": 40},
    "architecture": {"cfg": 7.5, "steps": 40},
    "nature":       {"cfg": 7.5, "steps": 40},
    "world_wonders":{"cfg": 7.5, "steps": 40},
    "medieval":     {"cfg": 7.5, "steps": 40},
    "social":       {"cfg": 7.5, "steps": 40},
    "tech":         {"cfg": 7.5, "steps": 40},
    "seasonal":     {"cfg": 7.5, "steps": 40},
    "default":      {"cfg": 7.5, "steps": 40},
}


class EndpointHandler:
    """Custom handler for HuggingFace Inference Endpoints β€” v12 Art+Overlay."""

    def __init__(self, path: str = ""):
        """Load models on endpoint startup."""
        logger.info("Loading QR Art Generator pipeline v12.2 (Art+Overlay)...")
        start = time.time()

        device = "cuda" if torch.cuda.is_available() else "cpu"
        dtype = torch.float16 if device == "cuda" else torch.float32

        logger.info("Loading QR Monster ControlNet v2...")
        monster_cn = ControlNetModel.from_pretrained(
            "monster-labs/control_v1p_sd15_qrcode_monster",
            subfolder="v2",
            torch_dtype=dtype,
        )

        logger.info("Loading IoC Lab Brightness ControlNet...")
        brightness_cn = ControlNetModel.from_pretrained(
            "ioclab/control_v1p_sd15_brightness",
            torch_dtype=dtype,
        )

        multi_controlnet = MultiControlNetModel([monster_cn, brightness_cn])

        logger.info("Loading txt2img pipeline...")
        self.pipe_txt2img = StableDiffusionControlNetPipeline.from_pretrained(
            "SG161222/Realistic_Vision_V5.1_noVAE",
            controlnet=multi_controlnet,
            torch_dtype=dtype,
            safety_checker=None,
            requires_safety_checker=False,
        )

        self.pipe_txt2img.scheduler = DPMSolverMultistepScheduler.from_config(
            self.pipe_txt2img.scheduler.config,
            use_karras_sigmas=True,
            algorithm_type="sde-dpmsolver++",
        )

        self.pipe_txt2img.to(device)

        logger.info("Creating img2img pipeline (shared components)...")
        self.pipe_img2img = StableDiffusionControlNetImg2ImgPipeline(
            vae=self.pipe_txt2img.vae,
            text_encoder=self.pipe_txt2img.text_encoder,
            tokenizer=self.pipe_txt2img.tokenizer,
            unet=self.pipe_txt2img.unet,
            controlnet=multi_controlnet,
            scheduler=self.pipe_txt2img.scheduler,
            safety_checker=None,
            feature_extractor=None,
            requires_safety_checker=False,
        )

        if device == "cuda":
            try:
                self.pipe_txt2img.enable_xformers_memory_efficient_attention()
                logger.info("xformers memory-efficient attention enabled")
            except Exception:
                logger.warning("xformers not available, using default attention")

        self.device = device
        self.dtype = dtype
        elapsed = time.time() - start
        logger.info(f"Pipeline v12.2 loaded in {elapsed:.1f}s on {device}")

    def _generate_qr_images(self, data: str):
        """
        Generate both ControlNet conditioning and overlay QR images.

        Returns:
            conditioning: Gray-bg QR with pre-blur (for ControlNet)
            overlay: RGBA overlay with opacity/blur/feather (for post-processing)
        """
        qr = qrcode.QRCode(
            error_correction=qrcode.constants.ERROR_CORRECT_H,
            box_size=QR_BOX_SIZE,
            border=QR_BORDER,
        )
        qr.add_data(data)
        qr.make(fit=True)

        # ControlNet conditioning: black on gray
        qr_gray = qr.make_image(
            fill_color="black", back_color="#808080"
        ).convert("RGB")

        # Overlay source: black on white
        qr_bw = qr.make_image(
            fill_color="black", back_color="white"
        ).convert("L")

        qr_w, qr_h = qr_gray.size

        # Always resize to exact target size for consistent alignment
        if qr_w != QR_TARGET_SIZE or qr_h != QR_TARGET_SIZE:
            qr_gray = qr_gray.resize(
                (QR_TARGET_SIZE, QR_TARGET_SIZE), Image.NEAREST
            )
            qr_bw = qr_bw.resize(
                (QR_TARGET_SIZE, QR_TARGET_SIZE), Image.NEAREST
            )
            logger.info(f"QR resized from {qr_w}x{qr_h} to {QR_TARGET_SIZE}x{QR_TARGET_SIZE}")

        # Conditioning: center on gray canvas + pre-blur
        # Both conditioning and overlay MUST use the same offset for alignment
        conditioning = Image.new("RGB", (QR_CANVAS_SIZE, QR_CANVAS_SIZE), (128, 128, 128))
        offset = (QR_CANVAS_SIZE - QR_TARGET_SIZE) // 2
        conditioning.paste(qr_gray, (offset, offset))
        conditioning = conditioning.filter(ImageFilter.GaussianBlur(radius=QR_BLUR_SIGMA))

        logger.info(
            f"QR: version={qr.version}, modules={qr.modules_count}, "
            f"raw={qr_w}x{qr_h}, target={QR_TARGET_SIZE}, canvas={QR_CANVAS_SIZE}"
        )

        return conditioning, qr_bw

    def _create_overlay(
        self, qr_bw: Image.Image, opacity: float,
        blur_sigma: float, feather_px: int,
    ) -> Image.Image:
        """
        Create RGBA overlay for post-processing QR composite.

        Dark QR modules β†’ black at specified opacity
        Light background β†’ white at reduced opacity (opacity * BG_RATIO)
        Applied: Gaussian blur + feathered edges at border
        Centered on full canvas with padding.
        """
        qr_size = qr_bw.size[0]
        qr_array = np.array(qr_bw)

        # Build RGBA overlay at QR size
        overlay = np.zeros((qr_size, qr_size, 4), dtype=np.uint8)

        dark_mask = qr_array < 128
        # Dark modules: black at full opacity
        overlay[dark_mask, 3] = int(255 * opacity)
        # Light background: white at reduced opacity
        overlay[~dark_mask, 0] = 255
        overlay[~dark_mask, 1] = 255
        overlay[~dark_mask, 2] = 255
        overlay[~dark_mask, 3] = int(255 * opacity * OVERLAY_BG_RATIO)

        overlay_img = Image.fromarray(overlay, "RGBA")

        # Gaussian blur for softer module edges
        if blur_sigma > 0:
            overlay_img = overlay_img.filter(
                ImageFilter.GaussianBlur(radius=blur_sigma)
            )

        # Feathered edges: fade out alpha near border
        if feather_px > 0:
            ov_arr = np.array(overlay_img)
            h, w = ov_arr.shape[:2]
            # Create distance-from-edge array
            y_dist = np.minimum(
                np.arange(h)[:, None],
                np.arange(h - 1, -1, -1)[:, None],
            )
            x_dist = np.minimum(
                np.arange(w)[None, :],
                np.arange(w - 1, -1, -1)[None, :],
            )
            edge_dist = np.minimum(y_dist, x_dist).astype(np.float32)
            fade = np.clip(edge_dist / feather_px, 0, 1)
            ov_arr[:, :, 3] = (ov_arr[:, :, 3].astype(np.float32) * fade).astype(np.uint8)
            overlay_img = Image.fromarray(ov_arr, "RGBA")

        # Center overlay on full canvas β€” MUST match conditioning offset
        canvas = Image.new("RGBA", (QR_CANVAS_SIZE, QR_CANVAS_SIZE), (0, 0, 0, 0))
        offset = (QR_CANVAS_SIZE - QR_TARGET_SIZE) // 2
        canvas.paste(overlay_img, (offset, offset))

        return canvas

    def _prepare_qr_from_image(self, qr_image: Image.Image):
        """
        Prepare client-provided QR image.

        Returns:
            conditioning: Gray-bg QR for ControlNet
            overlay: RGBA overlay for post-processing (derived from client QR)
        """
        # Convert white background to gray (Monster v2 trained on gray)
        qr_array = np.array(qr_image.convert("RGB"))
        white_mask = np.all(qr_array > 200, axis=2)
        if np.sum(white_mask) > 0:
            logger.info("Converting white QR background to gray (#808080)")
            qr_array[white_mask] = [128, 128, 128]

        qr_gray = Image.fromarray(qr_array)

        # Create B/W version for overlay
        qr_bw = qr_image.convert("L")

        # Resize to target
        w, h = qr_gray.size
        if w != QR_TARGET_SIZE or h != QR_TARGET_SIZE:
            qr_gray = qr_gray.resize((QR_TARGET_SIZE, QR_TARGET_SIZE), Image.NEAREST)
            qr_bw = qr_bw.resize((QR_TARGET_SIZE, QR_TARGET_SIZE), Image.NEAREST)

        # Conditioning canvas
        conditioning = Image.new("RGB", (QR_CANVAS_SIZE, QR_CANVAS_SIZE), (128, 128, 128))
        offset = (QR_CANVAS_SIZE - QR_TARGET_SIZE) // 2
        conditioning.paste(qr_gray, (offset, offset))
        conditioning = conditioning.filter(ImageFilter.GaussianBlur(radius=QR_BLUR_SIGMA))

        return conditioning, qr_bw

    def __call__(self, data: dict[str, Any]) -> dict[str, Any]:
        """
        Generate QR art β€” art + overlay pipeline.

        Mode 1 β€” Server-side QR (recommended, pixel-perfect):
        { "inputs": { "prompt": "...", "qr_data": "https://..." } }

        Mode 2 β€” Client QR image (backward compatible):
        { "inputs": { "prompt": "...", "qr_code_image": "<base64 PNG>" } }

        Optional params:
            category, seed, width, height,
            passes (1 or 2, default 1),
            p1_monster, p1_brightness,
            p2_monster, p2_brightness, p2_strength,
            overlay_opacity (0-1, default 0.55, set 0 to disable overlay),
            overlay_blur (sigma, default 1.0),
            overlay_feather (px, default 40),
            controlnet_scale (backward compat alias for p1_monster)
        """
        start = time.time()

        inputs = data.get("inputs", data)
        prompt = inputs.get("prompt", "")
        negative_prompt = inputs.get("negative_prompt", DEFAULT_NEGATIVE)

        if not prompt:
            return {"error": "prompt is required"}

        # --- QR conditioning + overlay ---
        qr_data = inputs.get("qr_data", "")
        qr_b64 = inputs.get("qr_code_image", "")

        if qr_data:
            qr_conditioning, qr_bw = self._generate_qr_images(qr_data)
            logger.info(f"Server-side QR for: {qr_data}")
        elif qr_b64:
            try:
                qr_image = Image.open(
                    io.BytesIO(base64.b64decode(qr_b64))
                ).convert("RGB")
            except Exception as e:
                return {"error": f"Failed to decode qr_code_image: {e}"}
            qr_conditioning, qr_bw = self._prepare_qr_from_image(qr_image)
            logger.info("Client-provided QR image")
        else:
            return {"error": "qr_data (string) or qr_code_image (base64) required"}

        # --- Parameters ---
        category = inputs.get("category", "default")
        params = CATEGORY_PARAMS.get(category, CATEGORY_PARAMS["default"])
        passes = inputs.get("passes", 1)
        width = inputs.get("width", QR_CANVAS_SIZE)
        height = inputs.get("height", QR_CANVAS_SIZE)

        # Pass 1 weights
        p1_monster = inputs.get(
            "p1_monster",
            inputs.get("controlnet_scale", P1_MONSTER_WEIGHT)
        )
        p1_brightness = inputs.get("p1_brightness", P1_BRIGHTNESS_WEIGHT)

        # Pass 2 weights
        p2_monster = inputs.get("p2_monster", P2_MONSTER_WEIGHT)
        p2_brightness = inputs.get("p2_brightness", P2_BRIGHTNESS_WEIGHT)
        p2_strength = inputs.get("p2_strength", P2_STRENGTH)

        # Overlay params
        overlay_opacity = inputs.get("overlay_opacity", OVERLAY_OPACITY)
        overlay_blur = inputs.get("overlay_blur", OVERLAY_BLUR_SIGMA)
        overlay_feather = inputs.get("overlay_feather", OVERLAY_FEATHER_PX)

        enhanced_prompt = f"{prompt}, {QUALITY_TAGS}"

        seed = inputs.get("seed", -1)
        if seed == -1:
            seed = torch.Generator(device=self.device).seed()

        generator = torch.Generator(device=self.device).manual_seed(seed)

        # === PASS 1: ART (txt2img) ===
        logger.info(
            f"Pass 1 (ART): monster={p1_monster}, brightness={p1_brightness}, "
            f"cfg={params['cfg']}, steps={params['steps']}"
        )

        result1 = self.pipe_txt2img(
            prompt=enhanced_prompt,
            negative_prompt=negative_prompt,
            image=[qr_conditioning, qr_conditioning],
            width=width,
            height=height,
            guidance_scale=params["cfg"],
            controlnet_conditioning_scale=[p1_monster, p1_brightness],
            control_guidance_start=[P1_MONSTER_START, BRIGHTNESS_START],
            control_guidance_end=[P1_MONSTER_END, BRIGHTNESS_END],
            num_inference_steps=params["steps"],
            generator=generator,
        )
        art_p1 = result1.images[0]
        p1_time = time.time() - start

        if passes >= 2:
            # === PASS 2: QR REINFORCEMENT (img2img) ===
            p2_start = time.time()
            generator2 = torch.Generator(device=self.device).manual_seed(seed + 1)

            logger.info(
                f"Pass 2 (QR): monster={p2_monster}, brightness={p2_brightness}, "
                f"strength={p2_strength}, cfg={P2_CFG}, steps={P2_STEPS}"
            )

            result2 = self.pipe_img2img(
                prompt=enhanced_prompt,
                negative_prompt=negative_prompt,
                image=art_p1,
                control_image=[qr_conditioning, qr_conditioning],
                controlnet_conditioning_scale=[p2_monster, p2_brightness],
                control_guidance_start=[P2_MONSTER_START, BRIGHTNESS_START],
                control_guidance_end=[P2_MONSTER_END, BRIGHTNESS_END],
                strength=p2_strength,
                guidance_scale=P2_CFG,
                num_inference_steps=P2_STEPS,
                generator=generator2,
            )
            art_final = result2.images[0]
            p2_time = time.time() - p2_start
        else:
            art_final = art_p1
            p2_time = 0

        # === POST-PROCESSING: QR OVERLAY ===
        overlay_applied = False
        if overlay_opacity > 0:
            overlay_start = time.time()
            overlay_img = self._create_overlay(
                qr_bw, overlay_opacity, overlay_blur, int(overlay_feather)
            )
            art_rgba = art_final.convert("RGBA")
            art_final = Image.alpha_composite(art_rgba, overlay_img).convert("RGB")
            overlay_applied = True
            overlay_time = time.time() - overlay_start
            logger.info(
                f"Overlay: opacity={overlay_opacity}, blur={overlay_blur}, "
                f"feather={overlay_feather}px, time={overlay_time:.2f}s"
            )
        else:
            overlay_time = 0

        # Encode result
        buf = io.BytesIO()
        art_final.save(buf, format="PNG")
        result_b64 = base64.b64encode(buf.getvalue()).decode("utf-8")

        elapsed = time.time() - start

        return {
            "image": result_b64,
            "seed": seed,
            "parameters": {
                "pipeline": f"{'two' if passes >= 2 else 'single'}-pass-v12.2-overlay",
                "passes": passes,
                "category": category,
                "p1_monster": p1_monster,
                "p1_brightness": p1_brightness,
                "p2_monster": p2_monster if passes >= 2 else None,
                "p2_brightness": p2_brightness if passes >= 2 else None,
                "p2_strength": p2_strength if passes >= 2 else None,
                "overlay_opacity": overlay_opacity if overlay_applied else 0,
                "overlay_blur": overlay_blur if overlay_applied else None,
                "overlay_feather": overlay_feather if overlay_applied else None,
                "p1_time": round(p1_time, 2),
                "p2_time": round(p2_time, 2) if passes >= 2 else None,
                "overlay_time": round(overlay_time, 3) if overlay_applied else None,
                "guidance_scale": params["cfg"],
                "steps": params["steps"],
                "scheduler": "DPM++ 2M SDE Karras",
                "width": width,
                "height": height,
            },
            "time_seconds": round(elapsed, 2),
        }