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from __future__ import annotations

import argparse
import functools
import json
import logging
import os
import time
from dataclasses import dataclass
from pathlib import Path

import gradio as gr
import torch

try:
    import spaces
except ImportError:
    class _SpacesFallback:
        @staticmethod
        def GPU(*_args, **_kwargs):
            def _decorator(func):
                return func

            return _decorator

    spaces = _SpacesFallback()

from nano_tts_runtime import DEFAULT_VOICE, NanoTTSService
from text_normalization_pipeline import WeTextProcessingManager, prepare_tts_request_texts

APP_DIR = Path(__file__).resolve().parent
CHECKPOINT_PATH = APP_DIR / "weights" / "tts"
AUDIO_TOKENIZER_PATH = APP_DIR / "weights" / "codec"
OUTPUT_DIR = Path("/tmp") / "nano-tts-space"
PRELOAD_ENV_VAR = "NANO_TTS_PRELOAD_AT_STARTUP"
DEMO_METADATA_PATH = APP_DIR / "assets" / "demo.jsonl"

MODE_VOICE_CLONE = "voice_clone"


@dataclass(frozen=True)
class DemoEntry:
    demo_id: str
    name: str
    prompt_audio_path: Path
    text: str


def load_demo_entries() -> list[DemoEntry]:
    if not DEMO_METADATA_PATH.is_file():
        logging.warning("demo metadata file not found: %s", DEMO_METADATA_PATH)
        return []

    demo_entries: list[DemoEntry] = []
    for line_index, raw_line in enumerate(DEMO_METADATA_PATH.read_text(encoding="utf-8").splitlines(), start=1):
        line = raw_line.strip()
        if not line:
            continue
        try:
            payload = json.loads(line)
        except Exception:
            logging.warning("failed to parse demo metadata line=%s", line_index, exc_info=True)
            continue

        relative_audio_path = str(payload.get("role", "")).strip()
        text = str(payload.get("text", "")).strip()
        if not relative_audio_path or not text:
            logging.warning("skip invalid demo metadata line=%s role/text missing", line_index)
            continue

        prompt_audio_path = (APP_DIR / relative_audio_path).resolve()
        if not prompt_audio_path.is_file():
            logging.warning("skip demo metadata line=%s prompt audio missing: %s", line_index, prompt_audio_path)
            continue

        name = str(payload.get("name", "")).strip() or f"Demo {len(demo_entries) + 1}: {prompt_audio_path.stem}"
        demo_entries.append(
            DemoEntry(
                demo_id=f"demo-{len(demo_entries) + 1}",
                name=name,
                prompt_audio_path=prompt_audio_path,
                text=text,
            )
        )

    return demo_entries


DEMO_ENTRIES = load_demo_entries()
DEMO_ENTRY_MAP = {entry.demo_id: entry for entry in DEMO_ENTRIES}
DEMO_AUDIO_PATH_MAP = {str(entry.prompt_audio_path): entry for entry in DEMO_ENTRIES}
DEMO_ENTRY_NAME_MAP = {entry.name: entry for entry in DEMO_ENTRIES}
DEFAULT_DEMO_ENTRY = DEMO_ENTRIES[0] if DEMO_ENTRIES else None
DEFAULT_DEMO_CASE_ID = DEFAULT_DEMO_ENTRY.demo_id if DEFAULT_DEMO_ENTRY is not None else ""
DEFAULT_DEMO_AUDIO_PATH = str(DEFAULT_DEMO_ENTRY.prompt_audio_path) if DEFAULT_DEMO_ENTRY is not None else ""
DEFAULT_DEMO_TEXT = DEFAULT_DEMO_ENTRY.text if DEFAULT_DEMO_ENTRY is not None else ""
DEMO_CASE_CHOICES = [(entry.name, entry.demo_id) for entry in DEMO_ENTRIES]


def parse_bool_env(name: str, default: bool) -> bool:
    value = os.getenv(name)
    if value is None:
        return default
    return value.strip().lower() in {"1", "true", "yes", "y", "on"}


def parse_port(value: str | None, default: int) -> int:
    if not value:
        return default
    try:
        return int(value)
    except ValueError:
        return default


def maybe_delete_file(path: str | Path | None) -> None:
    if not path:
        return
    try:
        Path(path).unlink(missing_ok=True)
    except OSError:
        logging.warning("failed to delete temporary file: %s", path, exc_info=True)


def normalize_demo_case_id(demo_case_id: str | None) -> str:
    normalized = str(demo_case_id or "").strip()
    if not normalized:
        return ""
    if normalized in DEMO_ENTRY_MAP:
        return normalized
    matched_entry = DEMO_ENTRY_NAME_MAP.get(normalized)
    if matched_entry is not None:
        return matched_entry.demo_id
    return ""


@functools.lru_cache(maxsize=2)
def get_tts_service(runtime_has_cuda: bool) -> NanoTTSService:
    return NanoTTSService(
        checkpoint_path=CHECKPOINT_PATH,
        audio_tokenizer_path=AUDIO_TOKENIZER_PATH,
        device="auto",
        dtype="auto",
        attn_implementation="auto",
        output_dir=OUTPUT_DIR,
    )


def get_runtime_tts_service() -> NanoTTSService:
    return get_tts_service(bool(torch.cuda.is_available()))


@functools.lru_cache(maxsize=1)
def get_text_normalizer_manager() -> WeTextProcessingManager:
    manager = WeTextProcessingManager()
    manager.start()
    return manager


def preload_service() -> None:
    started_at = time.monotonic()
    service = get_runtime_tts_service()
    logging.info(
        "preloading Nano-TTS model checkpoint=%s codec=%s device=%s",
        CHECKPOINT_PATH,
        AUDIO_TOKENIZER_PATH,
        service.device,
    )
    service.get_model()
    logging.info("Nano-TTS preload finished in %.2fs", time.monotonic() - started_at)


def render_mode_hint() -> str:
    return (
        "Current mode: **Voice Clone**  \n"
        "Select a Default Case or upload your own reference audio. Uploaded audio overrides the selected Default Case."
    )


def resolve_default_demo_entry() -> DemoEntry | None:
    return DEFAULT_DEMO_ENTRY


def resolve_selected_demo_entry(demo_case_id: str | None) -> DemoEntry | None:
    normalized_demo_case_id = normalize_demo_case_id(demo_case_id)
    if normalized_demo_case_id:
        demo_entry = DEMO_ENTRY_MAP.get(normalized_demo_case_id)
        if demo_entry is not None:
            return demo_entry
    return resolve_default_demo_entry()


def resolve_effective_prompt_audio_path(
    prompt_audio_path: str | None,
    selected_demo_audio_path: str | None,
) -> str | None:
    if prompt_audio_path:
        resolved_path = Path(prompt_audio_path).expanduser().resolve()
        if resolved_path.is_file():
            return str(resolved_path)
    if selected_demo_audio_path:
        resolved_path = Path(selected_demo_audio_path).expanduser().resolve()
        if resolved_path.is_file():
            return str(resolved_path)
    demo_entry = resolve_default_demo_entry()
    if demo_entry is not None:
        return str(demo_entry.prompt_audio_path)
    return None


def build_prompt_source_text(
    *,
    prompt_audio_path: str | None,
    selected_demo_audio_path: str | None,
) -> str:
    effective_prompt_audio_path = resolve_effective_prompt_audio_path(
        prompt_audio_path,
        selected_demo_audio_path,
    )
    if effective_prompt_audio_path:
        if prompt_audio_path:
            return f"Uploaded reference audio: {Path(effective_prompt_audio_path).name}"
        demo_entry = DEMO_AUDIO_PATH_MAP.get(effective_prompt_audio_path)
        if demo_entry is not None:
            return f"Default case: {demo_entry.name}"
        return f"Default case: {Path(effective_prompt_audio_path).name}"
    return "No default case available"


def refresh_prompt_preview(
    prompt_audio_path: str | None,
    selected_demo_audio_path: str | None,
):
    preview_path = resolve_effective_prompt_audio_path(
        prompt_audio_path,
        selected_demo_audio_path,
    )
    prompt_source = build_prompt_source_text(
        prompt_audio_path=prompt_audio_path,
        selected_demo_audio_path=selected_demo_audio_path,
    )
    return preview_path, prompt_source


def apply_demo_case_selection(
    demo_case_id: str,
    prompt_audio_path: str | None,
):
    demo_entry = resolve_selected_demo_entry(demo_case_id)
    if demo_entry is None:
        preview_path, prompt_source = refresh_prompt_preview(prompt_audio_path, "")
        return (
            gr.update(),
            preview_path,
            "",
            prompt_source,
        )

    selected_prompt_path = str(demo_entry.prompt_audio_path)
    preview_path, prompt_source = refresh_prompt_preview(
        prompt_audio_path,
        selected_prompt_path,
    )
    return (
        demo_entry.text,
        preview_path,
        selected_prompt_path,
        prompt_source,
    )


def validate_request(
    *,
    text: str,
    effective_prompt_audio_path: str | None,
) -> str:
    normalized_text = str(text or "").strip()

    if not normalized_text:
        raise ValueError("Please enter text to synthesize.")

    if not effective_prompt_audio_path:
        raise ValueError("No reference audio is available. Please select a Default Case or upload prompt audio.")

    return normalized_text


def build_status_text(
    *,
    result: dict[str, object],
    prepared_texts: dict[str, object],
    reference_source: str,
    runtime_device: str,
) -> str:
    text_chunks = result.get("voice_clone_text_chunks") or []
    chunk_count = len(text_chunks) if isinstance(text_chunks, list) and text_chunks else 1
    return (
        f"Done | mode={result['mode']} | ref={reference_source} | elapsed={result['elapsed_seconds']:.2f}s | "
        f"device={runtime_device} | sample_rate={result['sample_rate']} | "
        f"attn={result['effective_global_attn_implementation']} | "
        f"chunks={chunk_count} | normalization={prepared_texts['normalization_method']}"
    )


def estimate_gpu_duration(
    *args,
    **kwargs,
) -> int:
    text = kwargs.get("text", args[0] if len(args) > 0 else "")
    max_new_frames = kwargs.get("max_new_frames", args[5] if len(args) > 5 else 375)
    voice_clone_max_text_tokens = (
        kwargs.get("voice_clone_max_text_tokens", args[6] if len(args) > 6 else 75)
    )
    text_len = len(str(text or "").strip())
    estimated = 75 + (text_len // 12) + int(max_new_frames) // 8 + int(voice_clone_max_text_tokens) // 10
    return max(90, min(240, estimated))


@spaces.GPU(size="large", duration=estimate_gpu_duration)
def run_inference(
    text: str,
    prompt_audio_path: str | None,
    selected_demo_audio_path: str | None,
    enable_wetext_processing: bool,
    enable_normalize_tts_text: bool,
    max_new_frames: int,
    voice_clone_max_text_tokens: int,
    do_sample: bool,
    text_temperature: float,
    text_top_p: float,
    text_top_k: int,
    audio_temperature: float,
    audio_top_p: float,
    audio_top_k: int,
    audio_repetition_penalty: float,
    seed: float | int,
):
    generated_audio_path: str | None = None
    try:
        service = get_runtime_tts_service()
        text_normalizer_manager = get_text_normalizer_manager() if enable_wetext_processing else None
        effective_prompt_audio_path = resolve_effective_prompt_audio_path(
            prompt_audio_path,
            selected_demo_audio_path,
        )
        normalized_text = validate_request(
            text=text,
            effective_prompt_audio_path=effective_prompt_audio_path,
        )
        prepared_texts = prepare_tts_request_texts(
            text=normalized_text,
            prompt_text="",
            voice=DEFAULT_VOICE,
            enable_wetext=bool(enable_wetext_processing),
            enable_normalize_tts_text=bool(enable_normalize_tts_text),
            text_normalizer_manager=text_normalizer_manager,
        )
        prompt_source = build_prompt_source_text(
            prompt_audio_path=prompt_audio_path,
            selected_demo_audio_path=selected_demo_audio_path,
        )
        normalized_seed = None
        if seed not in {"", None}:
            resolved_seed = int(seed)
            if resolved_seed != 0:
                normalized_seed = resolved_seed

        result = service.synthesize(
            text=str(prepared_texts["text"]),
            mode=MODE_VOICE_CLONE,
            voice=DEFAULT_VOICE,
            prompt_audio_path=effective_prompt_audio_path or None,
            max_new_frames=int(max_new_frames),
            voice_clone_max_text_tokens=int(voice_clone_max_text_tokens),
            do_sample=bool(do_sample),
            text_temperature=float(text_temperature),
            text_top_p=float(text_top_p),
            text_top_k=int(text_top_k),
            audio_temperature=float(audio_temperature),
            audio_top_p=float(audio_top_p),
            audio_top_k=int(audio_top_k),
            audio_repetition_penalty=float(audio_repetition_penalty),
            seed=normalized_seed,
        )
        generated_audio_path = str(result["audio_path"])
        return (
            (int(result["sample_rate"]), result["waveform_numpy"]),
            build_status_text(
                result=result,
                prepared_texts=prepared_texts,
                reference_source=prompt_source,
                runtime_device=str(service.device),
            ),
            str(prepared_texts["normalized_text"]),
            prompt_source,
        )
    except Exception as exc:
        logging.exception("Nano-TTS inference failed")
        raise gr.Error(str(exc)) from exc
    finally:
        maybe_delete_file(generated_audio_path)


def build_demo():
    with gr.Blocks(title="Nano-TTS ZeroGPU Space") as demo:
        gr.Markdown(
            """
            <div class="app-card">
              <div class="app-title">Nano-TTS ZeroGPU</div>
              <div class="app-subtitle">
                Hugging Face Space edition backed by local <code>weights/tts</code> and <code>weights/codec</code>.
                ZeroGPU requests a GPU only during inference, and audio is returned after full synthesis.
              </div>
              <p>
                MOSS-TTS-Nano is a zero-shot TTS model with approximately 100M parameters, supporting 48 kHz stereo
                input and output, streaming generation, multilingual synthesis, and long-form text. It is developed by
                the <a href="https://openmoss.github.io/" target="_blank" rel="noopener noreferrer">OpenMOSS Team</a>.
                For more details, see the
                <a href="https://github.com/OpenMOSS/MOSS-TTS-Nano" target="_blank" rel="noopener noreferrer">GitHub repository</a>
                and
                <a href="https://openmoss.github.io/MOSS-TTS-Nano-Demo/" target="_blank" rel="noopener noreferrer">blog</a>.
              </p>
            </div>
            """
        )

        with gr.Row(equal_height=False):
            with gr.Column(scale=3):
                demo_case = gr.Dropdown(
                    choices=DEMO_CASE_CHOICES,
                    value=DEFAULT_DEMO_CASE_ID,
                    label="Default Case",
                    info="Select a built-in case to auto-fill the text and prompt preview.",
                    allow_custom_value=True,
                )
                text = gr.Textbox(
                    label="Target Text",
                    lines=10,
                    value=DEFAULT_DEMO_TEXT,
                    placeholder="Enter the text to synthesize.",
                )
                mode_hint = gr.Markdown(render_mode_hint())
                prompt_audio = gr.Audio(
                    label="Reference Audio Upload (optional; overrides Default Case)",
                    type="filepath",
                    sources=["upload"],
                )
                prompt_preview = gr.Audio(
                    label="Effective Prompt Preview",
                    value=DEFAULT_DEMO_AUDIO_PATH or None,
                    type="filepath",
                    interactive=False,
                )

                gr.Markdown(
                    "Runtime device and backbone are fixed by the Space and are not user-configurable. Uploaded reference audio overrides the selected Default Case."
                )

                with gr.Accordion("Advanced Parameters", open=False):
                    enable_wetext_processing = gr.Checkbox(
                        value=True,
                        label="Enable WeTextProcessing",
                    )
                    enable_normalize_tts_text = gr.Checkbox(
                        value=True,
                        label="Enable normalize_tts_text",
                    )
                    max_new_frames = gr.Slider(
                        minimum=64,
                        maximum=512,
                        step=16,
                        value=375,
                        label="max_new_frames",
                    )
                    voice_clone_max_text_tokens = gr.Slider(
                        minimum=25,
                        maximum=200,
                        step=5,
                        value=75,
                        label="voice_clone_max_text_tokens",
                    )
                    do_sample = gr.Checkbox(
                        value=True,
                        label="Enable Sampling",
                    )
                    seed = gr.Number(
                        value=0,
                        precision=0,
                        label="Seed (0 = random)",
                    )
                    text_temperature = gr.Slider(
                        minimum=0.1,
                        maximum=2.0,
                        step=0.05,
                        value=1.0,
                        label="text_temperature",
                    )
                    text_top_p = gr.Slider(
                        minimum=0.1,
                        maximum=1.0,
                        step=0.01,
                        value=1.0,
                        label="text_top_p",
                    )
                    text_top_k = gr.Slider(
                        minimum=1,
                        maximum=100,
                        step=1,
                        value=50,
                        label="text_top_k",
                    )
                    audio_temperature = gr.Slider(
                        minimum=0.1,
                        maximum=2.0,
                        step=0.05,
                        value=0.8,
                        label="audio_temperature",
                    )
                    audio_top_p = gr.Slider(
                        minimum=0.1,
                        maximum=1.0,
                        step=0.01,
                        value=0.95,
                        label="audio_top_p",
                    )
                    audio_top_k = gr.Slider(
                        minimum=1,
                        maximum=100,
                        step=1,
                        value=25,
                        label="audio_top_k",
                    )
                    audio_repetition_penalty = gr.Slider(
                        minimum=0.8,
                        maximum=2.0,
                        step=0.05,
                        value=1.2,
                        label="audio_repetition_penalty",
                    )

                run_btn = gr.Button("Generate Speech", variant="primary", elem_id="run-btn")

            with gr.Column(scale=2):
                output_audio = gr.Audio(label="Output Audio", type="numpy")
                status = gr.Textbox(label="Status", lines=4, interactive=False)
                normalized_text = gr.Textbox(label="Normalized Text", lines=6, interactive=False)
                prompt_source = gr.Textbox(
                    label="Prompt Source",
                    value=build_prompt_source_text(
                        prompt_audio_path=None,
                        selected_demo_audio_path=DEFAULT_DEMO_AUDIO_PATH or None,
                    ),
                    lines=4,
                    interactive=False,
                )
                selected_demo_audio_path = gr.State(DEFAULT_DEMO_AUDIO_PATH)

        demo_case.change(
            fn=apply_demo_case_selection,
            inputs=[demo_case, prompt_audio],
            outputs=[text, prompt_preview, selected_demo_audio_path, prompt_source],
        )
        prompt_audio.change(
            fn=refresh_prompt_preview,
            inputs=[prompt_audio, selected_demo_audio_path],
            outputs=[prompt_preview, prompt_source],
        )

        run_btn.click(
            fn=run_inference,
            inputs=[
                text,
                prompt_audio,
                selected_demo_audio_path,
                enable_wetext_processing,
                enable_normalize_tts_text,
                max_new_frames,
                voice_clone_max_text_tokens,
                do_sample,
                text_temperature,
                text_top_p,
                text_top_k,
                audio_temperature,
                audio_top_p,
                audio_top_k,
                audio_repetition_penalty,
                seed,
            ],
            outputs=[output_audio, status, normalized_text, prompt_source],
        )

    return demo


def main() -> None:
    parser = argparse.ArgumentParser(description="Nano-TTS ZeroGPU Hugging Face Space")
    parser.add_argument("--host", type=str, default="0.0.0.0")
    parser.add_argument(
        "--port",
        type=int,
        default=int(os.getenv("GRADIO_SERVER_PORT", os.getenv("PORT", "7860"))),
    )
    parser.add_argument("--share", action="store_true")
    args = parser.parse_args()

    logging.basicConfig(
        format="%(asctime)s %(levelname)s %(name)s: %(message)s",
        level=logging.INFO,
    )

    args.host = os.getenv("GRADIO_SERVER_NAME", args.host)
    args.port = parse_port(os.getenv("GRADIO_SERVER_PORT", os.getenv("PORT")), args.port)

    get_text_normalizer_manager()

    preload_enabled = parse_bool_env(PRELOAD_ENV_VAR, default=not bool(os.getenv("SPACE_ID")))
    if preload_enabled:
        preload_service()
    else:
        logging.info("Skipping model preload (set %s=1 to enable).", PRELOAD_ENV_VAR)

    demo = build_demo()
    demo.queue(max_size=4, default_concurrency_limit=4).launch(
        server_name=args.host,
        server_port=args.port,
        share=args.share,
        ssr_mode=False,
    )


if __name__ == "__main__":
    main()