mirror of
https://github.com/denizsafak/abogen.git
synced 2026-07-18 13:40:27 +02:00
- Normalize Pipeline public API: create_pipeline(plugin_id, *, lang_code, device) - EngineConfig: add lang_code field per Architecture Amendment #1 - Kokoro plugin reads config.lang_code (fixes functional regression) - Static voice catalog in PluginManifest.voices (None = dynamic/VoiceLister) - get_voices() reads from manifest without creating Engine - Remove dead kwargs (sample_rate, auto_download, total_steps) from SuperTonic - Clean up unused imports and dead code in engine implementations - Fix test expectations for VoiceLister (mock overrides) - Add clear_preview_pipelines() for resource management
267 lines
8.4 KiB
Python
267 lines
8.4 KiB
Python
"""SuperTonic Pipeline — self-contained TTS pipeline for the plugin.
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This module provides the SuperTonicPipeline class and supporting utilities
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used by the SuperTonic plugin. It is independent of the legacy
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abogen.tts_backends module.
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"""
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from __future__ import annotations
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import ast
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import logging
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import re
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from typing import Any, Iterable, Iterator, Optional
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import numpy as np
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logger = logging.getLogger(__name__)
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def _ensure_float32_mono(wav: Any) -> np.ndarray:
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arr = np.asarray(wav, dtype="float32")
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if arr.ndim == 2:
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if arr.shape[0] == 1 and arr.shape[1] > 1:
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arr = arr.reshape(-1)
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else:
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arr = arr[:, 0]
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return arr.reshape(-1)
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def _resample_linear(audio: np.ndarray, src_rate: int, dst_rate: int) -> np.ndarray:
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if src_rate == dst_rate:
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return audio
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if audio.size == 0:
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return audio
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ratio = dst_rate / float(src_rate)
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new_len = int(round(audio.size * ratio))
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if new_len <= 1:
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return np.zeros(0, dtype="float32")
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x_old = np.linspace(0.0, 1.0, num=audio.size, endpoint=False)
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x_new = np.linspace(0.0, 1.0, num=new_len, endpoint=False)
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return np.interp(x_new, x_old, audio).astype("float32", copy=False)
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def _split_text(
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text: str, *, split_pattern: Optional[str], max_chunk_length: int
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) -> list[str]:
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stripped = (text or "").strip()
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if not stripped:
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return []
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parts: list[str]
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if split_pattern:
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try:
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parts = [p.strip() for p in re.split(split_pattern, stripped) if p.strip()]
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except re.error:
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parts = [stripped]
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else:
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parts = [stripped]
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result: list[str] = []
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for part in parts:
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if len(part) <= max_chunk_length:
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result.append(part)
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continue
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start = 0
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while start < len(part):
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end = min(len(part), start + max_chunk_length)
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if end < len(part):
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ws = part.rfind(" ", start, end)
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if ws > start + 40:
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end = ws
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chunk = part[start:end].strip()
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if chunk:
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result.append(chunk)
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start = end
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return result
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_UNSUPPORTED_CHARS_RE = re.compile(
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r"unsupported character\(s\):\s*(\[[^\]]*\])", re.IGNORECASE
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)
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def _parse_unsupported_characters(error: BaseException) -> list[str]:
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"""Best-effort extraction of unsupported characters from SuperTonic errors."""
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message = " ".join(
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str(part) for part in getattr(error, "args", ()) if part is not None
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) or str(error)
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match = _UNSUPPORTED_CHARS_RE.search(message)
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if not match:
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return []
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raw = match.group(1)
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try:
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value = ast.literal_eval(raw)
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except Exception:
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return []
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if isinstance(value, (list, tuple)):
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out: list[str] = []
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for item in value:
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if item is None:
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continue
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s = str(item)
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if s:
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out.append(s)
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return out
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if isinstance(value, str) and value:
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return [value]
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return []
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def _remove_unsupported_characters(text: str, unsupported: Iterable[str]) -> str:
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result = text
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for item in unsupported:
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if not item:
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continue
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result = result.replace(item, "")
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return result
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def _configure_supertonic_gpu() -> None:
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"""Patch supertonic's config to enable GPU acceleration if available."""
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try:
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import onnxruntime as ort
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available = ort.get_available_providers()
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providers = []
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if "CUDAExecutionProvider" in available:
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providers.append("CUDAExecutionProvider")
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providers.append("CPUExecutionProvider")
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import supertonic.config as supertonic_config
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import supertonic.loader as supertonic_loader
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supertonic_config.DEFAULT_ONNX_PROVIDERS = providers
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supertonic_loader.DEFAULT_ONNX_PROVIDERS = providers
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logger.info("Supertonic ONNX providers configured: %s", providers)
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except Exception as exc:
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logger.warning("Could not configure supertonic GPU providers: %s", exc)
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class SupertonicSegment:
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"""A single synthesized audio segment."""
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__slots__ = ("graphemes", "audio")
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def __init__(self, graphemes: str, audio: np.ndarray) -> None:
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self.graphemes = graphemes
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self.audio = audio
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class SupertonicPipeline:
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"""Minimal adapter that mimics Kokoro's pipeline iteration interface."""
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def __init__(
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self,
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*,
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sample_rate: int,
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auto_download: bool = True,
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total_steps: int = 5,
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max_chunk_length: int = 300,
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) -> None:
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self.sample_rate = int(sample_rate)
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self.total_steps = int(total_steps)
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self.max_chunk_length = int(max_chunk_length)
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_configure_supertonic_gpu()
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try:
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from supertonic import TTS # type: ignore[import-not-found]
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except Exception as exc: # pragma: no cover
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raise RuntimeError(
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"Supertonic is not installed. Install it with `pip install supertonic`."
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) from exc
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self._tts = TTS(auto_download=auto_download)
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def __call__(
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self,
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text: str,
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*,
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voice: str,
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speed: float,
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split_pattern: Optional[str] = None,
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total_steps: Optional[int] = None,
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) -> Iterator[SupertonicSegment]:
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voice_name = (voice or "").strip() or "M1"
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steps = int(total_steps) if total_steps is not None else self.total_steps
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steps = max(2, min(15, steps))
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speed_value = float(speed) if speed is not None else 1.0
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speed_value = max(0.7, min(2.0, speed_value))
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style = self._tts.get_voice_style(voice_name=voice_name)
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chunks = _split_text(
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text, split_pattern=split_pattern, max_chunk_length=self.max_chunk_length
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)
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for chunk in chunks:
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chunk_to_speak = chunk
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removed: set[str] = set()
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last_exc: Exception | None = None
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for attempt in range(3):
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try:
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wav, duration = self._tts.synthesize(
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text=chunk_to_speak,
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voice_style=style,
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total_steps=steps,
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speed=speed_value,
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max_chunk_length=self.max_chunk_length,
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silence_duration=0.0,
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verbose=False,
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)
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break
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except ValueError as exc:
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last_exc = exc
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unsupported = _parse_unsupported_characters(exc)
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if not unsupported:
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raise
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removed.update(unsupported)
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sanitized = _remove_unsupported_characters(
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chunk_to_speak, unsupported
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).strip()
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if sanitized == chunk_to_speak.strip():
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raise
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chunk_to_speak = sanitized
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if not chunk_to_speak:
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logger.warning(
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"SuperTonic: dropped a chunk after removing unsupported characters: %s",
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sorted(removed),
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)
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break
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if attempt == 0:
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logger.warning(
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"SuperTonic: removed unsupported characters %s and retried.",
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sorted(removed),
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)
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else:
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assert last_exc is not None
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raise last_exc
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if not chunk_to_speak:
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continue
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audio = _ensure_float32_mono(wav)
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src_rate = self.sample_rate
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try:
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dur = float(duration)
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if dur > 0 and audio.size > 0:
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inferred = int(round(audio.size / dur))
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if 8000 <= inferred <= 96000:
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src_rate = inferred
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except Exception:
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pass
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if src_rate != self.sample_rate:
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audio = _resample_linear(audio, src_rate, self.sample_rate)
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yield SupertonicSegment(graphemes=chunk_to_speak, audio=audio)
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