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Author SHA1 Message Date
Artem AkymenkoandGitHub b95df8f217 Merge pull request #182 from denizsafak/refactor/add-kokoro-backend
feat: add KokoroBackend implementing TTSBackend protocol
2026-07-06 17:29:49 +03:00
Artem AkymenkoandGitHub 245e67284e Merge pull request #181 from denizsafak/refactor/add-supertonic-backend
feat: add SupertonicBackend implementing TTSBackend protocol
2026-07-06 17:29:22 +03:00
Artem Akymenko e2557d961b feat: add KokoroBackend implementing TTSBackend protocol
- Create KokoroBackend class implementing TTSBackend protocol
- Move all KPipeline interaction inside KokoroBackend
- Update LoadPipelineThread to create backend via create_backend()
- Update ConversionThread and VoicePreviewThread to accept backend
- Replace np_module/kpipeline_class parameters with single backend
- Add 24 unit tests for KokoroBackend
- KPipeline is now an internal implementation detail of KokoroBackend
2026-07-06 14:10:54 +00:00
Artem Akymenko 9c6b3774b4 feat: add SupertonicBackend implementing TTSBackend protocol
Encapsulate SupertonicPipeline as an internal detail of
SupertonicBackend. The factory create_supertonic_backend() now
returns a SupertonicBackend instance instead of a raw
SupertonicPipeline, satisfying the TTSBackend protocol with
metadata, synthesize, get_available_voices, get_supported_formats,
and get_info methods. Backward-compatible __call__ delegates to
the internal pipeline.
2026-07-06 14:09:30 +00:00
Artem AkymenkoandGitHub fd9fe5579a Merge pull request #180 from k0sm0naft/refactor/use-registry-for-preview
refactor: migrate preview and conversion code to use TTSBackendRegistry
2026-07-06 16:53:28 +03:00
Artem Akymenko f079373821 refactor: migrate preview and conversion code to use TTSBackendRegistry
Migrate all preview/debug/conversion pipeline creation to use
TTSBackendRegistry.create_backend() instead of direct imports:

- debug_tts_runner._load_pipeline(): Kokoro via registry
- preview.get_preview_pipeline(): Kokoro via registry
- preview.generate_preview_audio(): Supertonic via registry
- voice.get_preview_pipeline(): Kokoro via registry
- conversion_runner._load_pipeline(): both backends via registry
- conversion_runner inline pipeline creation: both via registry
- test: update mock to target tts_backend_registry.create_backend
2026-07-06 15:59:22 +03:00
Deniz ŞafakandGitHub fbb5d4e368 Merge pull request #179 from k0sm0naft/refactor/backend-registry
Add TTS backend registry and automatic backend registration
2026-07-06 15:14:47 +03:00
Artem Akymenko 57fec453e2 feat: auto-register existing TTS backends
- Add create_kokoro_backend() factory in kokoro.py
- Add create_supertonic_backend() factory in supertonic.py
- Auto-discover backend modules in __init__.py via pkgutil
- Both backends register themselves on import
- Tests verify registration and factory callables
2026-07-06 15:04:49 +03:00
Artem Akymenko 58fe22e3d5 feat: add TTSBackendRegistry for backend registration and creation
- TTSBackendRegistry class with register(), list_backends(), get_metadata(), create_backend()
- Global registry singleton with register_backend() and create_backend() convenience functions
- Unit tests for registry operations
2026-07-06 15:04:49 +03:00
Deniz ŞafakandGitHub ab8cbc4911 Merge pull request #178 from k0sm0naft/refactor/backend-package
refactor: move backend implementations to tts_backends package
2026-07-06 14:50:16 +03:00
Deniz ŞafakandGitHub 5e2048072a Merge pull request #177 from k0sm0naft/refactor/tts-backend-interface
feat: Add TTSBackendMetadata model
2026-07-06 14:49:35 +03:00
Artem Akymenko 66ed2a202d refactor: move backend implementations to tts_backends package
Moved SupertonicPipeline from abogen/tts_supertonic.py to
abogen/tts_backends/supertonic.py and load_numpy_kpipeline from
abogen/utils.py to abogen/tts_backends/kokoro.py.

Git correctly detects the Supertonic file as a rename (R),
preserving full commit history.

- New package: abogen/tts_backends/
  - __init__.py (package marker)
  - supertonic.py (SupertonicPipeline, moved from tts_supertonic.py)
  - kokoro.py (load_numpy_kpipeline, moved from utils.py)
- abogen/utils.py: re-exports load_numpy_kpipeline for backward compat
- All imports updated to new canonical paths
2026-07-06 14:04:51 +03:00
Artem Akymenko 45e859dac4 feat: Add TTSBackendMetadata model 2026-07-06 12:58:06 +03:00
Deniz ŞafakandGitHub 56d3e414b3 Merge pull request #176 from k0sm0naft/feat/voice-metadata
feat: add VoiceMetadata data model for TTS backends
2026-07-06 11:01:22 +03:00
Deniz ŞafakandGitHub b942bcb820 Merge pull request #175 from k0sm0naft/refactor/tts-backend-interface
refactor: Switch TTSBackend from ABC to Protocol
2026-07-06 11:00:46 +03:00
Artem Akymenko 47efcb4420 feat: add VoiceMetadata data model for TTS backends 2026-07-05 19:07:57 +00:00
Artem Akymenko 7b3f9d8615 Merge branch 'main' into refactor/tts-backend-interface 2026-07-05 16:53:40 +03:00
Artem Akymenko 9833bb0843 refactor: Switch TTSBackend from ABC to Protocol 2026-07-05 13:47:31 +00:00
20 changed files with 1197 additions and 214 deletions
+28 -56
View File
@@ -5,6 +5,7 @@ import hashlib # For generating unique cache filenames
from platformdirs import user_desktop_dir
from PyQt6.QtCore import QThread, pyqtSignal, Qt, QTimer
from PyQt6.QtWidgets import QCheckBox, QVBoxLayout, QDialog, QLabel, QDialogButtonBox
import numpy as np
import soundfile as sf
from abogen.utils import (
create_process,
@@ -259,8 +260,7 @@ class ConversionThread(QThread):
output_folder,
subtitle_mode,
output_format,
np_module,
kpipeline_class,
backend,
start_time,
total_char_count,
use_gpu=True,
@@ -270,8 +270,7 @@ class ConversionThread(QThread):
super().__init__()
self._chapter_options_event = threading.Event()
self._timestamp_response_event = threading.Event()
self.np = np_module
self.KPipeline = kpipeline_class
self.backend = backend
self.file_name = file_name
self.lang_code = lang_code
self.speed = speed
@@ -490,19 +489,6 @@ class ConversionThread(QThread):
self.log_updated.emit(("\nInitializing TTS pipeline...", "grey"))
# Set device based on use_gpu setting and platform
if self.use_gpu:
if platform.system() == "Darwin" and platform.processor() == "arm":
device = "mps" # Use MPS for Apple Silicon
else:
device = "cuda" # Use CUDA for other platforms
else:
device = "cpu"
tts = self.KPipeline(
lang_code=self.lang_code, repo_id="hexgrad/Kokoro-82M", device=device
)
# Check if the input is a subtitle file or timestamp text file
is_subtitle_file = False
is_timestamp_text = False
@@ -538,7 +524,7 @@ class ConversionThread(QThread):
# Process subtitle files separately
if is_subtitle_file or is_timestamp_text:
self._process_subtitle_file(tts, base_path, is_timestamp_text)
self._process_subtitle_file(self.backend, base_path, is_timestamp_text)
return
if self.is_direct_text:
@@ -1071,7 +1057,7 @@ class ConversionThread(QThread):
for segment_idx, (voice_name, segment_text) in enumerate(voice_segments):
# Load voice for this segment (with caching)
try:
loaded_voice = self.load_voice_cached(voice_name, tts)
loaded_voice = self.load_voice_cached(voice_name, self.backend)
if segment_idx > 0:
voice_display = voice_name if len(voice_name) < 50 else voice_name[:47] + "..."
self.log_updated.emit((f" → Voice: {voice_display}", "grey"))
@@ -1080,7 +1066,7 @@ class ConversionThread(QThread):
(f"⚠ Voice loading error for '{voice_name}', continuing with previous", "orange")
)
if segment_idx == 0:
loaded_voice = self.load_voice_cached(self.voice, tts)
loaded_voice = self.load_voice_cached(self.voice, self.backend)
# Determine if spaCy segmentation should be used for PRE-TTS segmentation
# Only non-English languages use spaCy for pre-segmentation
@@ -1166,7 +1152,7 @@ class ConversionThread(QThread):
print("Using split pattern: (unprintable)")
for text_segment in text_segments:
for result in tts(
for result in self.backend(
text_segment,
voice=loaded_voice,
speed=self.speed,
@@ -1368,7 +1354,7 @@ class ConversionThread(QThread):
silence_samples = int(
self.silence_duration * 24000
) # Silence duration at 24,000 Hz
silence_audio = self.np.zeros(silence_samples, dtype="float32")
silence_audio = np.zeros(silence_samples, dtype="float32")
silence_bytes = silence_audio.tobytes()
if merged_out_file:
@@ -1707,7 +1693,7 @@ class ConversionThread(QThread):
max_end_time = max(
(end for _, end, _ in subtitles if end is not None), default=0
)
audio_buffer = self.np.zeros(
audio_buffer = np.zeros(
int(max_end_time * rate) + rate, dtype="float32"
)
@@ -1771,7 +1757,7 @@ class ConversionThread(QThread):
# Generate TTS audio
tts_results = [
r
for r in tts(
for r in self.backend(
processed_text,
voice=loaded_voice,
speed=self.speed,
@@ -1789,11 +1775,11 @@ class ConversionThread(QThread):
# Concatenate audio and determine duration
full_audio = (
self.np.concatenate(
np.concatenate(
[a.numpy() if hasattr(a, "numpy") else a for a in audio_chunks]
)
if audio_chunks
else self.np.zeros(
else np.zeros(
int((subtitle_duration or 0) * rate), dtype="float32"
)
)
@@ -1827,8 +1813,8 @@ class ConversionThread(QThread):
num_stages = max(
1,
int(
self.np.ceil(
self.np.log(speed_factor) / self.np.log(2.0)
np.ceil(
np.log(speed_factor) / np.log(2.0)
)
),
)
@@ -1861,7 +1847,7 @@ class ConversionThread(QThread):
stdout=subprocess.PIPE,
stderr=subprocess.PIPE,
)
full_audio = self.np.frombuffer(
full_audio = np.frombuffer(
speed_proc.communicate(input=full_audio.tobytes())[0],
dtype="float32",
)
@@ -1875,7 +1861,7 @@ class ConversionThread(QThread):
tts_results = [
r
for r in tts(
for r in self.backend(
processed_text,
voice=loaded_voice,
speed=new_speed,
@@ -1886,14 +1872,14 @@ class ConversionThread(QThread):
audio_chunks = [r.audio for r in tts_results]
full_audio = (
self.np.concatenate(
np.concatenate(
[
a.numpy() if hasattr(a, "numpy") else a
for a in audio_chunks
]
)
if audio_chunks
else self.np.zeros(
else np.zeros(
int(subtitle_duration * rate), dtype="float32"
)
)
@@ -1910,10 +1896,10 @@ class ConversionThread(QThread):
# Pad or trim to subtitle duration
target_samples = int(subtitle_duration * rate)
if len(full_audio) < target_samples:
full_audio = self.np.concatenate(
full_audio = np.concatenate(
[
full_audio,
self.np.zeros(
np.zeros(
target_samples - len(full_audio), dtype="float32"
),
]
@@ -1926,10 +1912,10 @@ class ConversionThread(QThread):
end_sample = start_sample + len(full_audio)
if end_sample > len(audio_buffer):
# Extend buffer if needed
audio_buffer = self.np.concatenate(
audio_buffer = np.concatenate(
[
audio_buffer,
self.np.zeros(
np.zeros(
end_sample - len(audio_buffer), dtype="float32"
),
]
@@ -1971,7 +1957,7 @@ class ConversionThread(QThread):
self.progress_updated.emit(percent, etr_str)
# Normalize audio buffer to prevent clipping from mixed overlaps
max_amplitude = self.np.abs(audio_buffer).max()
max_amplitude = np.abs(audio_buffer).max()
if max_amplitude > 1.0:
self.log_updated.emit(
f"\n -> Normalizing audio (peak: {max_amplitude:.2f})"
@@ -2440,8 +2426,7 @@ class VoicePreviewThread(QThread):
def __init__(
self,
np_module,
kpipeline_class,
backend,
lang_code,
voice,
speed,
@@ -2449,8 +2434,7 @@ class VoicePreviewThread(QThread):
parent=None,
):
super().__init__(parent)
self.np_module = np_module
self.kpipeline_class = kpipeline_class
self.backend = backend
self.lang_code = lang_code
self.voice = voice
self.speed = speed
@@ -2484,31 +2468,19 @@ class VoicePreviewThread(QThread):
# Generate the preview and save to cache
try:
# Set device based on use_gpu setting and platform
if self.use_gpu:
if platform.system() == "Darwin" and platform.processor() == "arm":
device = "mps" # Use MPS for Apple Silicon
else:
device = "cuda" # Use CUDA for other platforms
else:
device = "cpu"
tts = self.kpipeline_class(
lang_code=self.lang_code, repo_id="hexgrad/Kokoro-82M", device=device
)
# Enable voice formula support for preview
if "*" in self.voice:
loaded_voice = get_new_voice(tts, self.voice, self.use_gpu)
loaded_voice = get_new_voice(self.backend, self.voice, self.use_gpu)
else:
loaded_voice = self.voice
sample_text = get_sample_voice_text(self.lang_code)
audio_segments = []
for result in tts(
for result in self.backend(
sample_text, voice=loaded_voice, speed=self.speed, split_pattern=None
):
audio_segments.append(result.audio)
if audio_segments:
audio = self.np_module.concatenate(audio_segments)
audio = np.concatenate(audio_segments)
# Save directly to the cache path
sf.write(self.cache_path, audio, 24000)
self.temp_wav = self.cache_path
+32 -11
View File
@@ -2316,9 +2316,9 @@ class abogen(QWidget):
file_size_str = "Unknown"
# pipeline_loaded_callback remains unchanged
def pipeline_loaded_callback(np_module, kpipeline_class, error):
def pipeline_loaded_callback(backend, error):
if error:
self.update_log((f"Error loading numpy or KPipeline: {error}", "red"))
self.update_log((f"Error loading TTS backend: {error}", "red"))
prevent_sleep_end()
return
@@ -2341,8 +2341,7 @@ class abogen(QWidget):
self.selected_output_folder,
subtitle_mode=actual_subtitle_mode,
output_format=self.selected_format,
np_module=np_module,
kpipeline_class=kpipeline_class,
backend=backend,
start_time=self.start_time,
total_char_count=self.char_count,
use_gpu=self.gpu_ok,
@@ -2426,7 +2425,20 @@ class abogen(QWidget):
self.gpu_ok = gpu_ok
self.update_log((gpu_msg, gpu_ok))
self.update_log("Loading modules...")
load_thread = LoadPipelineThread(pipeline_loaded_callback)
# Determine device based on GPU availability
if gpu_ok:
if platform.system() == "Darwin" and platform.processor() == "arm":
device = "mps"
else:
device = "cuda"
else:
device = "cpu"
lang_code = self.selected_lang or "a"
load_thread = LoadPipelineThread(
pipeline_loaded_callback, lang_code=lang_code, device=device
)
load_thread.start()
threading.Thread(target=gpu_and_load, daemon=True).start()
@@ -2863,18 +2875,27 @@ class abogen(QWidget):
)
self.loading_movie.start()
def pipeline_loaded_callback(np_module, kpipeline_class, error):
self._on_pipeline_loaded_for_preview(np_module, kpipeline_class, error)
# Determine device based on GPU availability
if self.gpu_ok:
if platform.system() == "Darwin" and platform.processor() == "arm":
device = "mps"
else:
device = "cuda"
else:
device = "cpu"
load_thread = LoadPipelineThread(pipeline_loaded_callback)
lang = self.selected_lang or "a"
load_thread = LoadPipelineThread(
self._on_pipeline_loaded_for_preview, lang_code=lang, device=device
)
load_thread.start()
def _on_pipeline_loaded_for_preview(self, np_module, kpipeline_class, error):
def _on_pipeline_loaded_for_preview(self, backend, error):
# stop loading animation and restore icon on error
if error:
self.loading_movie.stop()
self._show_error_message_box(
"Loading Error", f"Error loading numpy or KPipeline: {error}"
"Loading Error", f"Error loading TTS backend: {error}"
)
self.btn_preview.setIcon(self.play_icon)
self.btn_preview.setEnabled(True)
@@ -2912,7 +2933,7 @@ class abogen(QWidget):
gpu_msg, gpu_ok = get_gpu_acceleration(self.use_gpu)
self.preview_thread = VoicePreviewThread(
np_module, kpipeline_class, lang, voice, speed, gpu_ok
backend, lang, voice, speed, gpu_ok
)
self.preview_thread.finished.connect(self._play_preview_audio)
self.preview_thread.error.connect(self._preview_error)
+64 -94
View File
@@ -1,117 +1,87 @@
"""
Minimal TTS Backend Interface
TTS Backend Interface
This module defines a minimal interface for TTS backends to enable future
extensibility while maintaining backward compatibility with existing Kokoro
implementation.
This module defines the protocol for TTS backends and the
metadata model that describes a backend implementation.
"""
from abc import ABC, abstractmethod
from typing import Any, Iterator, Optional, Union
from dataclasses import dataclass
from typing import Protocol, List, Dict, Any
class TTSBackend(ABC):
@dataclass(frozen=True)
class TTSBackendMetadata:
"""
Minimal interface for TTS backends.
Immutable metadata describing a TTS backend implementation.
This interface is designed to be minimal and focused on the essential
operations needed for text-to-speech conversion.
Attributes:
id: Unique backend identifier (e.g. ``"kokoro"``, ``"supertonic"``).
name: Human-readable display name.
description: Short description of the backend.
"""
@abstractmethod
def __call__(
self,
text: str,
voice: Union[str, Any],
speed: float = 1.0,
**kwargs: Any
) -> Iterator[Any]:
id: str
name: str
description: str
class TTSBackend(Protocol):
"""
Generate speech segments from text.
Protocol for TTS backends.
All TTS backends must implement this interface to be compatible
with the application.
"""
@property
def metadata(self) -> TTSBackendMetadata:
...
def __init__(self, **kwargs) -> None:
"""
Initialize the TTS backend.
Args:
text: Text to convert to speech
voice: Voice specification or object
speed: Speed multiplier for speech
**kwargs: Additional backend-specific parameters
Yields:
Speech segments (audio data, timing info, etc.)
**kwargs: Backend-specific configuration parameters
"""
pass
...
class KokoroTTSBackend(TTSBackend):
def synthesize(self, text: str, **kwargs) -> bytes:
"""
Implementation of TTSBackend using Kokoro.
This class provides the concrete implementation that maintains
the existing behavior while conforming to the TTSBackend interface.
"""
def __init__(self, lang_code: str, repo_id: str = "hexgrad/Kokoro-82M", device: str = "cpu"):
"""
Initialize Kokoro backend.
Synthesize speech from text.
Args:
lang_code: Language code for the model
repo_id: Repository ID for the Kokoro model
device: Device to run the model on (cpu, cuda, etc.)
text: Text to synthesize
**kwargs: Additional parameters for synthesis
Returns:
Audio data as bytes
"""
self.lang_code = lang_code
self.repo_id = repo_id
self.device = device
self._pipeline = None
...
def _get_pipeline(self):
"""Lazy initialization of the Kokoro pipeline."""
if self._pipeline is None:
from abogen.utils import load_numpy_kpipeline
_, KPipeline = load_numpy_kpipeline()
try:
self._pipeline = KPipeline(
lang_code=self.lang_code,
repo_id=self.repo_id,
device=self.device
)
except RuntimeError as e:
if "CUDA" in str(e) and self.device != "cpu":
# Fall back to CPU if CUDA fails
self._pipeline = KPipeline(
lang_code=self.lang_code,
repo_id=self.repo_id,
device="cpu"
)
else:
raise
return self._pipeline
def __call__(
self,
text: str,
voice: Union[str, Any],
speed: float = 1.0,
split_pattern: str = r"\n+",
**kwargs: Any
) -> Iterator[Any]:
def get_available_voices(self) -> List[str]:
"""
Generate speech segments from text using Kokoro.
Get list of available voices.
Args:
text: Text to convert to speech
voice: Voice specification or object
speed: Speed multiplier for speech
split_pattern: Pattern to split text into segments
**kwargs: Additional parameters passed to the pipeline
Yields:
Speech segments
Returns:
List of voice identifiers
"""
pipeline = self._get_pipeline()
return pipeline(
text,
voice=voice,
speed=speed,
split_pattern=split_pattern,
**kwargs
)
...
def get_supported_formats(self) -> List[str]:
"""
Get list of supported audio formats.
Returns:
List of supported audio formats
"""
...
def get_info(self) -> Dict[str, Any]:
"""
Get backend information.
Returns:
Dictionary with backend information
"""
...
+71
View File
@@ -0,0 +1,71 @@
"""
TTS Backend Registry
Provides a global registry for TTS backend factories.
Backends register themselves with metadata and a factory callable.
The registry is universal and does not know about backend constructors.
"""
from typing import Callable, Any
from abogen.tts_backend import TTSBackend, TTSBackendMetadata
class TTSBackendRegistry:
"""Registry of TTS backend factories.
Stores metadata and factory callables for registered backends.
"""
def __init__(self) -> None:
self._backends: dict[str, TTSBackendMetadata] = {}
self._factories: dict[str, Callable[..., TTSBackend]] = {}
def register(
self,
metadata: TTSBackendMetadata,
factory: Callable[..., TTSBackend],
) -> None:
"""Register a backend with its metadata and factory callable."""
self._backends[metadata.id] = metadata
self._factories[metadata.id] = factory
def list_backends(self) -> list[TTSBackendMetadata]:
"""Return metadata for all registered backends."""
return list(self._backends.values())
def get_metadata(self, backend_id: str) -> TTSBackendMetadata:
"""Get metadata for a specific backend.
Raises:
KeyError: If backend with given id is not registered.
"""
if backend_id not in self._backends:
raise KeyError(f"Unknown backend: {backend_id}")
return self._backends[backend_id]
def create_backend(self, backend_id: str, **kwargs: Any) -> TTSBackend:
"""Create a backend instance by id.
Raises:
KeyError: If backend with given id is not registered.
"""
if backend_id not in self._factories:
raise KeyError(f"Unknown backend: {backend_id}")
return self._factories[backend_id](**kwargs)
_registry = TTSBackendRegistry()
def register_backend(
metadata: TTSBackendMetadata,
factory: Callable[..., TTSBackend],
) -> None:
"""Register a TTS backend in the global registry."""
_registry.register(metadata, factory)
def create_backend(backend_id: str, **kwargs: Any) -> TTSBackend:
"""Create a TTS backend instance by provider id."""
return _registry.create_backend(backend_id, **kwargs)
+20
View File
@@ -0,0 +1,20 @@
"""TTS backends package.
Backend modules are auto-discovered and imported here.
Each backend module registers itself with the global registry
when imported.
"""
import importlib
import pkgutil
def _discover_backends():
"""Import all modules in this package to trigger their registration."""
package = __name__
for _importer, modname, _ispkg in pkgutil.iter_modules(path=__path__):
importlib.import_module(f"{package}.{modname}")
_discover_backends()
+124
View File
@@ -0,0 +1,124 @@
"""
Kokoro TTS Backend
Encapsulates the Kokoro KPipeline as a TTSBackend implementation.
"""
from __future__ import annotations
from typing import Any, Dict, Iterator, List, Optional
import numpy as np
def _load_kpipeline():
"""Lazy-load Kokoro dependencies."""
from kokoro import KPipeline # type: ignore[import-not-found]
return KPipeline
class KokoroBackend:
"""TTSBackend implementation wrapping the Kokoro KPipeline.
All interaction with KPipeline is encapsulated here.
The rest of the project depends only on this class.
"""
def __init__(self, **kwargs: Any) -> None:
lang_code = kwargs["lang_code"]
repo_id = kwargs.get("repo_id", "hexgrad/Kokoro-82M")
device = kwargs.get("device", "cpu")
KPipeline = _load_kpipeline()
self._pipeline = KPipeline(
lang_code=lang_code,
repo_id=repo_id,
device=device,
)
self._lang_code = lang_code
@property
def metadata(self):
from abogen.tts_backend import TTSBackendMetadata
return TTSBackendMetadata(
id="kokoro",
name="Kokoro",
description="Kokoro TTS engine",
)
def __call__(
self,
text: str,
*,
voice: Any,
speed: float = 1.0,
split_pattern: Optional[str] = None,
) -> Iterator[Any]:
"""Delegate to KPipeline's __call__."""
return self._pipeline(
text,
voice=voice,
speed=speed,
split_pattern=split_pattern,
)
def load_single_voice(self, voice_name: str) -> Any:
"""Load a single voice tensor. Used by voice formula system."""
return self._pipeline.load_single_voice(voice_name)
def synthesize(self, text: str, **kwargs: Any) -> bytes:
"""Synthesize speech from text. Returns raw audio bytes."""
voice = kwargs.get("voice", "")
speed = kwargs.get("speed", 1.0)
split_pattern = kwargs.get("split_pattern", None)
audio_parts: list[np.ndarray] = []
for segment in self(text, voice=voice, speed=speed, split_pattern=split_pattern):
audio = segment.audio
if hasattr(audio, "numpy"):
audio = audio.numpy()
audio_parts.append(np.asarray(audio, dtype="float32"))
if not audio_parts:
return b""
combined = np.concatenate(audio_parts).astype("float32", copy=False)
return combined.tobytes()
def get_available_voices(self) -> List[str]:
"""Return known Kokoro voice identifiers."""
from abogen.constants import VOICES_INTERNAL
return list(VOICES_INTERNAL)
def get_supported_formats(self) -> List[str]:
"""Kokoro outputs raw PCM float32 audio."""
return ["pcm_float32"]
def get_info(self) -> Dict[str, Any]:
return {
"id": "kokoro",
"name": "Kokoro",
"lang_code": self._lang_code,
}
def create_kokoro_backend(**kwargs: Any) -> KokoroBackend:
"""Factory callable registered with TTSBackendRegistry."""
return KokoroBackend(**kwargs)
# --- Registration ---
from abogen.tts_backend import TTSBackendMetadata # noqa: E402
from abogen.tts_backend_registry import register_backend # noqa: E402
register_backend(
metadata=TTSBackendMetadata(
id="kokoro",
name="Kokoro",
description="Kokoro TTS engine",
),
factory=create_kokoro_backend,
)
@@ -5,7 +5,7 @@ from dataclasses import dataclass
import logging
import math
import re
from typing import Any, Iterable, Iterator, Optional
from typing import Any, Dict, Iterable, Iterator, List, Optional
import numpy as np
@@ -273,3 +273,120 @@ class SupertonicPipeline:
audio = _resample_linear(audio, src_rate, self.sample_rate)
yield SupertonicSegment(graphemes=chunk_to_speak, audio=audio)
class SupertonicBackend:
"""Supertonic TTS backend implementing the TTSBackend protocol.
Encapsulates ``SupertonicPipeline`` as an internal implementation detail.
"""
@property
def metadata(self) -> "TTSBackendMetadata":
return TTSBackendMetadata(
id="supertonic",
name="SuperTonic",
description="SuperTonic TTS engine",
)
def __init__(self, **kwargs: Any) -> None:
self._pipeline = SupertonicPipeline(
sample_rate=kwargs.get("sample_rate", 24000),
auto_download=kwargs.get("auto_download", True),
total_steps=kwargs.get("total_steps", 5),
)
def synthesize(self, text: str, **kwargs: Any) -> bytes:
"""Synthesize speech and return raw audio bytes (WAV).
Delegates to the internal :class:`SupertonicPipeline` and concatenates
all produced segments into a single byte buffer.
"""
import io
import soundfile as sf
voice = kwargs.get("voice", "M1")
speed = float(kwargs.get("speed", 1.0))
split_pattern = kwargs.get("split_pattern")
total_steps = kwargs.get("total_steps")
segments = self._pipeline(
text,
voice=voice,
speed=speed,
split_pattern=split_pattern,
total_steps=total_steps,
)
audio_parts: list[np.ndarray] = []
for seg in segments:
audio_parts.append(seg.audio)
if not audio_parts:
return b""
combined = np.concatenate(audio_parts)
buf = io.BytesIO()
sf.write(buf, combined, self._pipeline.sample_rate, format="WAV")
return buf.getvalue()
def get_available_voices(self) -> List[str]:
"""Return the list of built-in SuperTonic voice identifiers."""
return list(DEFAULT_SUPERTONIC_VOICES)
def get_supported_formats(self) -> List[str]:
return ["wav"]
def get_info(self) -> Dict[str, Any]:
return {
"sample_rate": self._pipeline.sample_rate,
"total_steps": self._pipeline.total_steps,
"max_chunk_length": self._pipeline.max_chunk_length,
"voices": list(DEFAULT_SUPERTONIC_VOICES),
}
def __call__(
self,
text: str,
*,
voice: str,
speed: float,
split_pattern: Optional[str] = None,
total_steps: Optional[int] = None,
) -> Iterator[SupertonicSegment]:
"""Backward-compatible call interface, delegates to the pipeline."""
return self._pipeline(
text,
voice=voice,
speed=speed,
split_pattern=split_pattern,
total_steps=total_steps,
)
def create_supertonic_backend(**kwargs: Any) -> SupertonicBackend:
"""Create a SuperTonic TTS backend instance.
Args:
sample_rate: Audio sample rate. Defaults to 24000.
auto_download: Auto-download models. Defaults to True.
total_steps: Inference steps. Defaults to 5.
Returns:
SupertonicBackend instance.
"""
return SupertonicBackend(**kwargs)
from abogen.tts_backend import TTSBackendMetadata
from abogen.tts_backend_registry import register_backend
register_backend(
metadata=TTSBackendMetadata(
id="supertonic",
name="SuperTonic",
description="SuperTonic TTS engine",
),
factory=create_supertonic_backend,
)
+10 -11
View File
@@ -529,21 +529,20 @@ def prevent_sleep_end():
_sleep_procs[system] = None
def load_numpy_kpipeline():
import numpy as np
from kokoro import KPipeline # type: ignore[import-not-found]
return np, KPipeline
class LoadPipelineThread(Thread):
def __init__(self, callback):
def __init__(self, callback, lang_code="a", device="cpu"):
super().__init__()
self.callback = callback
self.lang_code = lang_code
self.device = device
def run(self):
try:
np_module, kpipeline_class = load_numpy_kpipeline()
self.callback(np_module, kpipeline_class, None)
from abogen.tts_backend_registry import create_backend
backend = create_backend(
"kokoro", lang_code=self.lang_code, device=self.device
)
self.callback(backend, None)
except Exception as e:
self.callback(None, None, str(e))
self.callback(None, str(e))
+33
View File
@@ -0,0 +1,33 @@
from dataclasses import dataclass
@dataclass(frozen=True)
class VoiceMetadata:
"""
Immutable metadata describing a voice from a TTS backend.
This model describes a voice independently of any backend implementation.
Backends populate these objects; the application consumes them.
The ``backend_id`` field is set by the backend itself (via
``self.metadata.id``) the application never hardcodes it.
This ensures renaming a backend does not require touching voice definitions.
"""
id: str
"""Unique voice identifier within the backend (e.g. ``"af_alloy"``, ``"M1"``)."""
display_name: str
"""Human-readable display name (e.g. ``"Alloy"``, ``"Male 1"``)."""
language: str
"""Language code — backend-specific format is acceptable (e.g. ``"a"``, ``"en"``)."""
gender: str
"""Gender category: ``"female"``, ``"male"``, or ``"unknown"``."""
backend_id: str
"""Identifier of the backend that owns this voice (e.g. ``"kokoro"``).
Set automatically by the backend never hardcoded in voice definitions.
"""
+1 -1
View File
@@ -3,7 +3,7 @@ import os
from typing import Any, Dict, Iterable, List, Tuple
from abogen.constants import VOICES_INTERNAL
from abogen.tts_supertonic import DEFAULT_SUPERTONIC_VOICES
from abogen.tts_backends.supertonic import DEFAULT_SUPERTONIC_VOICES
from abogen.utils import get_user_config_path
+11 -10
View File
@@ -39,15 +39,15 @@ from abogen.utils import (
get_user_cache_path,
get_user_output_path,
load_config,
load_numpy_kpipeline,
)
from abogen.tts_backend import KokoroTTSBackend
from abogen.tts_backend_registry import create_backend
from abogen.tts_backend import TTSBackend
from abogen.voice_cache import ensure_voice_assets
from abogen.voice_formulas import extract_voice_ids, get_new_voice
from abogen.voice_profiles import load_profiles, normalize_profile_entry
from abogen.pronunciation_store import increment_usage
from abogen.llm_client import LLMClientError
from abogen.tts_supertonic import DEFAULT_SUPERTONIC_VOICES, SupertonicPipeline
from abogen.tts_backends.supertonic import DEFAULT_SUPERTONIC_VOICES
from .service import Job, JobStatus
@@ -1582,7 +1582,8 @@ def run_conversion_job(job: Job) -> None:
return existing
if provider_norm == "supertonic":
pipelines[provider_norm] = SupertonicPipeline(
pipelines[provider_norm] = create_backend(
"supertonic",
sample_rate=SAMPLE_RATE,
auto_download=True,
total_steps=int(getattr(job, "supertonic_total_steps", 5) or 5),
@@ -1595,10 +1596,10 @@ def run_conversion_job(job: Job) -> None:
device = "cpu"
if not disable_gpu:
device = _select_device()
# Create KokoroTTSBackend instance instead of directly instantiating KPipeline
pipelines[provider_norm] = KokoroTTSBackend(
# Create KPipeline instance directly (conforms to TTSBackend protocol)
pipelines[provider_norm] = create_backend(
"kokoro",
lang_code=job.language,
repo_id="hexgrad/Kokoro-82M",
device=device
)
if not kokoro_cache_ready:
@@ -2442,7 +2443,8 @@ def _load_pipeline(job: Job):
disable_gpu = not job.use_gpu or not cfg.get("use_gpu", True)
provider = str(getattr(job, "tts_provider", "kokoro") or "kokoro").strip().lower()
if provider == "supertonic":
return SupertonicPipeline(
return create_backend(
"supertonic",
sample_rate=SAMPLE_RATE,
auto_download=True,
total_steps=int(getattr(job, "supertonic_total_steps", 5) or 5),
@@ -2451,8 +2453,7 @@ def _load_pipeline(job: Job):
device = "cpu"
if not disable_gpu:
device = _select_device()
_np, KPipeline = load_numpy_kpipeline()
return KPipeline(lang_code=job.language, repo_id="hexgrad/Kokoro-82M", device=device)
return create_backend("kokoro", lang_code=job.language, device=device)
def _select_device() -> str:
+2 -3
View File
@@ -15,7 +15,7 @@ from abogen.normalization_settings import build_apostrophe_config
from abogen.text_extractor import extract_from_path
from abogen.voice_cache import ensure_voice_assets
from abogen.webui.conversion_runner import SAMPLE_RATE, SPLIT_PATTERN, _select_device, _to_float32, _resolve_voice, _spec_to_voice_ids
from abogen.utils import load_numpy_kpipeline
from abogen.tts_backend_registry import create_backend
_MARKER_RE = re.compile(re.escape(MARKER_PREFIX) + r"(?P<code>[A-Z0-9_]+)" + re.escape(MARKER_SUFFIX))
@@ -45,8 +45,7 @@ def _load_pipeline(language: str, use_gpu: bool) -> Any:
device = "cpu"
if use_gpu:
device = _select_device()
_np, KPipeline = load_numpy_kpipeline()
return KPipeline(lang_code=language, repo_id="hexgrad/Kokoro-82M", device=device)
return create_backend("kokoro", lang_code=language, device=device)
def _extract_cases_from_text(text: str) -> List[Tuple[str, str]]:
+4 -5
View File
@@ -78,10 +78,9 @@ def get_preview_pipeline(language: str, device: str) -> Any:
pipeline = _preview_pipelines.get(key)
if pipeline is not None:
return pipeline
from abogen.utils import load_numpy_kpipeline
from abogen.tts_backend_registry import create_backend
_, KPipeline = load_numpy_kpipeline()
pipeline = KPipeline(lang_code=language, repo_id="hexgrad/Kokoro-82M", device=device)
pipeline = create_backend("kokoro", lang_code=language, device=device)
_preview_pipelines[key] = pipeline
return pipeline
@@ -137,9 +136,9 @@ def generate_preview_audio(
normalized_text = source_text
if provider == "supertonic":
from abogen.tts_supertonic import SupertonicPipeline
from abogen.tts_backend_registry import create_backend
pipeline = SupertonicPipeline(sample_rate=SAMPLE_RATE, auto_download=True, total_steps=supertonic_total_steps)
pipeline = create_backend("supertonic", sample_rate=SAMPLE_RATE, auto_download=True, total_steps=supertonic_total_steps)
segments = pipeline(
normalized_text,
voice=voice_spec,
+2 -3
View File
@@ -20,7 +20,7 @@ from abogen.constants import (
VOICES_INTERNAL,
)
from abogen.speaker_configs import list_configs
from abogen.utils import load_numpy_kpipeline
from abogen.tts_backend_registry import create_backend
from abogen.webui.conversion_runner import _select_device, _to_float32, SAMPLE_RATE, SPLIT_PATTERN
_preview_pipeline_lock = threading.RLock()
@@ -741,8 +741,7 @@ def get_preview_pipeline(language: str, device: str):
pipeline = _preview_pipelines.get(key)
if pipeline is not None:
return pipeline
_, KPipeline = load_numpy_kpipeline()
pipeline = KPipeline(lang_code=language, repo_id="hexgrad/Kokoro-82M", device=device)
pipeline = create_backend("kokoro", lang_code=language, device=device)
_preview_pipelines[key] = pipeline
return pipeline
+216
View File
@@ -0,0 +1,216 @@
"""Tests for KokoroBackend class."""
from __future__ import annotations
from dataclasses import dataclass
from typing import Any, Iterator, List
from unittest.mock import MagicMock, patch
import numpy as np
import pytest
from abogen.tts_backend import TTSBackendMetadata
# ---------------------------------------------------------------------------
# Helpers
# ---------------------------------------------------------------------------
@dataclass
class _FakeSegment:
graphemes: str
audio: Any # np.ndarray or torch-like tensor
class _FakePipeline:
"""Minimal mock for kokoro.KPipeline."""
def __init__(self, *, lang_code: str, repo_id: str, device: str):
self.lang_code = lang_code
self.repo_id = repo_id
self.device = device
self._voices: dict[str, np.ndarray] = {}
def __call__(
self,
text: str,
*,
voice: Any = "",
speed: float = 1.0,
split_pattern: str | None = None,
) -> Iterator[_FakeSegment]:
yield _FakeSegment(graphemes=text, audio=np.zeros(100, dtype="float32"))
def load_single_voice(self, name: str) -> np.ndarray:
if name not in self._voices:
self._voices[name] = np.ones((1, 256), dtype="float32") * 0.5
return self._voices[name]
def _make_backend(**kwargs: Any):
"""Create KokoroBackend with mocked KPipeline."""
with patch("abogen.tts_backends.kokoro._load_kpipeline") as load:
load.return_value = _FakePipeline
from abogen.tts_backends.kokoro import KokoroBackend
return KokoroBackend(**kwargs)
# ---------------------------------------------------------------------------
# Tests
# ---------------------------------------------------------------------------
class TestKokoroBackendMetadata:
def test_metadata_returns_tts_backend_metadata(self):
backend = _make_backend(lang_code="a")
meta = backend.metadata
assert isinstance(meta, TTSBackendMetadata)
def test_metadata_fields(self):
backend = _make_backend(lang_code="a")
meta = backend.metadata
assert meta.id == "kokoro"
assert meta.name == "Kokoro"
assert "Kokoro" in meta.description
class TestKokoroBackendInit:
def test_stores_lang_code(self):
backend = _make_backend(lang_code="b")
assert backend._lang_code == "b"
def test_default_repo_id(self):
with patch("abogen.tts_backends.kokoro._load_kpipeline") as load:
load.return_value = _FakePipeline
from abogen.tts_backends.kokoro import KokoroBackend
b = KokoroBackend(lang_code="a")
assert b._pipeline.repo_id == "hexgrad/Kokoro-82M"
def test_custom_repo_id(self):
backend = _make_backend(lang_code="a", repo_id="custom/repo")
assert backend._pipeline.repo_id == "custom/repo"
def test_default_device(self):
backend = _make_backend(lang_code="a")
assert backend._pipeline.device == "cpu"
def test_custom_device(self):
backend = _make_backend(lang_code="a", device="cuda")
assert backend._pipeline.device == "cuda"
class TestKokoroBackendCall:
def test_call_delegates_to_pipeline(self):
backend = _make_backend(lang_code="a")
results = list(backend("hello", voice="af_heart", speed=1.2, split_pattern=r"\n"))
assert len(results) == 1
assert results[0].graphemes == "hello"
def test_call_returns_iterator(self):
backend = _make_backend(lang_code="a")
result = backend("test", voice="af_heart")
assert hasattr(result, "__iter__")
def test_call_with_voice_tensor(self):
backend = _make_backend(lang_code="a")
voice_tensor = np.ones((1, 256), dtype="float32")
results = list(backend("test", voice=voice_tensor))
assert len(results) == 1
def test_call_default_speed(self):
backend = _make_backend(lang_code="a")
# Should not raise with default speed
list(backend("text", voice="af_heart"))
def test_call_default_split_pattern_is_none(self):
backend = _make_backend(lang_code="a")
# split_pattern defaults to None
list(backend("text", voice="af_heart"))
class TestLoadSingleVoice:
def test_load_single_voice_delegates(self):
backend = _make_backend(lang_code="a")
tensor = backend.load_single_voice("af_heart")
assert isinstance(tensor, np.ndarray)
assert tensor.shape == (1, 256)
def test_load_single_voice_caches(self):
backend = _make_backend(lang_code="a")
t1 = backend.load_single_voice("af_heart")
t2 = backend.load_single_voice("af_heart")
assert t1 is t2 # same object
class TestSynthesize:
def test_synthesize_returns_bytes(self):
backend = _make_backend(lang_code="a")
result = backend.synthesize("hello", voice="af_heart")
assert isinstance(result, bytes)
def test_synthesize_nonempty(self):
backend = _make_backend(lang_code="a")
result = backend.synthesize("hello", voice="af_heart")
assert len(result) > 0
def test_synthesize_with_speed(self):
backend = _make_backend(lang_code="a")
result = backend.synthesize("hello", voice="af_heart", speed=1.5)
assert isinstance(result, bytes)
def test_synthesize_empty_text(self):
backend = _make_backend(lang_code="a")
# Empty text produces no segments
result = backend.synthesize("", voice="af_heart")
assert isinstance(result, bytes)
class TestProtocolMethods:
def test_get_available_voices(self):
backend = _make_backend(lang_code="a")
voices = backend.get_available_voices()
assert isinstance(voices, list)
assert len(voices) > 0
assert all(isinstance(v, str) for v in voices)
def test_get_supported_formats(self):
backend = _make_backend(lang_code="a")
formats = backend.get_supported_formats()
assert "pcm_float32" in formats
def test_get_info(self):
backend = _make_backend(lang_code="a")
info = backend.get_info()
assert info["id"] == "kokoro"
assert info["name"] == "Kokoro"
assert info["lang_code"] == "a"
class TestRegistration:
def test_factory_creates_kokoro_backend(self):
from abogen.tts_backends.kokoro import create_kokoro_backend, KokoroBackend
with patch("abogen.tts_backends.kokoro._load_kpipeline") as load:
load.return_value = _FakePipeline
backend = create_kokoro_backend(lang_code="a")
assert isinstance(backend, KokoroBackend)
def test_registry_has_kokoro(self):
import abogen.tts_backends # noqa: F401
from abogen.tts_backend_registry import _registry
meta = _registry.get_metadata("kokoro")
assert meta.id == "kokoro"
assert meta.name == "Kokoro"
def test_registry_factory_returns_kokoro_backend(self):
import abogen.tts_backends # noqa: F401
from abogen.tts_backend_registry import _registry
from abogen.tts_backends.kokoro import KokoroBackend
factory = _registry._factories["kokoro"]
with patch("abogen.tts_backends.kokoro._load_kpipeline") as load:
load.return_value = _FakePipeline
backend = factory(lang_code="a")
assert isinstance(backend, KokoroBackend)
+11 -6
View File
@@ -19,7 +19,7 @@ def test_preview_applies_manual_override_before_normalization(monkeypatch):
# And stub the kokoro pipeline path so generate_preview_audio won't proceed.
# We'll instead validate by calling the override logic through generate_preview_audio
# with provider=supertonic and stub SupertonicPipeline to capture input.
# with provider=supertonic and stub create_backend to capture input.
captured = {}
class DummyPipeline:
@@ -30,11 +30,16 @@ def test_preview_applies_manual_override_before_normalization(monkeypatch):
captured["text"] = text
return iter(())
monkeypatch.setitem(
__import__("sys").modules,
"abogen.tts_supertonic",
type("M", (), {"SupertonicPipeline": DummyPipeline}),
)
from abogen import tts_backend_registry
original_create_backend = tts_backend_registry.create_backend
def _mock_create_backend(backend_id, **kwargs):
if backend_id == "supertonic":
return DummyPipeline(**kwargs)
return original_create_backend(backend_id, **kwargs)
monkeypatch.setattr(tts_backend_registry, "create_backend", _mock_create_backend)
try:
preview.generate_preview_audio(
+149
View File
@@ -0,0 +1,149 @@
from dataclasses import dataclass
from abogen.tts_backend import TTSBackendMetadata
from abogen.tts_backend_registry import TTSBackendRegistry
class TestTTSBackendMetadata:
def test_is_frozen_dataclass(self):
assert dataclass(TTSBackendMetadata)
def test_fields_are_present(self):
meta = TTSBackendMetadata(
id="test",
name="Test Backend",
description="A test backend",
)
assert meta.id == "test"
assert meta.name == "Test Backend"
assert meta.description == "A test backend"
def test_is_immutable(self):
import pytest
meta = TTSBackendMetadata(
id="kokoro",
name="Kokoro",
description="Test",
)
with pytest.raises(Exception):
meta.id = "changed"
class TestTTSBackendRegistry:
def test_register_and_list(self):
registry = TTSBackendRegistry()
meta = TTSBackendMetadata(id="a", name="A", description="Backend A")
registry.register(metadata=meta, factory=lambda: None)
backends = registry.list_backends()
assert len(backends) == 1
assert backends[0].id == "a"
def test_list_multiple(self):
registry = TTSBackendRegistry()
meta_a = TTSBackendMetadata(id="a", name="A", description="A")
meta_b = TTSBackendMetadata(id="b", name="B", description="B")
registry.register(metadata=meta_a, factory=lambda: None)
registry.register(metadata=meta_b, factory=lambda: None)
backends = registry.list_backends()
ids = [b.id for b in backends]
assert "a" in ids
assert "b" in ids
def test_get_metadata(self):
registry = TTSBackendRegistry()
meta = TTSBackendMetadata(id="x", name="X", description="X backend")
registry.register(metadata=meta, factory=lambda: None)
result = registry.get_metadata("x")
assert result.id == "x"
assert result.name == "X"
def test_get_metadata_unknown_raises(self):
import pytest
registry = TTSBackendRegistry()
with pytest.raises(KeyError, match="Unknown backend: nope"):
registry.get_metadata("nope")
def test_create_backend(self):
registry = TTSBackendRegistry()
meta = TTSBackendMetadata(id="test", name="Test", description="Test backend")
def factory(**kwargs):
return {"created": True, "kwargs": kwargs}
registry.register(metadata=meta, factory=factory)
result = registry.create_backend("test", foo="bar")
assert result == {"created": True, "kwargs": {"foo": "bar"}}
def test_create_backend_unknown_raises(self):
import pytest
registry = TTSBackendRegistry()
with pytest.raises(KeyError, match="Unknown backend: missing"):
registry.create_backend("missing")
def test_register_overwrites(self):
registry = TTSBackendRegistry()
meta1 = TTSBackendMetadata(id="x", name="V1", description="First")
meta2 = TTSBackendMetadata(id="x", name="V2", description="Second")
registry.register(metadata=meta1, factory=lambda: "v1")
registry.register(metadata=meta2, factory=lambda: "v2")
result = registry.get_metadata("x")
assert result.name == "V2"
assert registry.create_backend("x") == "v2"
class TestBackendRegistration:
"""Tests that existing backends are auto-registered."""
def test_import_triggers_registration(self):
import abogen.tts_backends # noqa: F401
from abogen.tts_backend_registry import _registry
backends = _registry.list_backends()
ids = [b.id for b in backends]
assert "kokoro" in ids
assert "supertonic" in ids
def test_kokoro_metadata(self):
import abogen.tts_backends # noqa: F401
from abogen.tts_backend_registry import _registry
meta = _registry.get_metadata("kokoro")
assert meta.id == "kokoro"
assert meta.name == "Kokoro"
assert "Kokoro" in meta.description
def test_supertonic_metadata(self):
import abogen.tts_backends # noqa: F401
from abogen.tts_backend_registry import _registry
meta = _registry.get_metadata("supertonic")
assert meta.id == "supertonic"
assert meta.name == "SuperTonic"
assert "SuperTonic" in meta.description
def test_kokoro_factory_callable(self):
import abogen.tts_backends # noqa: F401
from abogen.tts_backend_registry import _registry
factory = _registry._factories["kokoro"]
assert callable(factory)
def test_supertonic_factory_callable(self):
import abogen.tts_backends # noqa: F401
from abogen.tts_backend_registry import _registry
factory = _registry._factories["supertonic"]
assert callable(factory)
+63 -8
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@@ -1,6 +1,6 @@
import numpy as np
from abogen.tts_supertonic import SupertonicPipeline
from abogen.tts_backends.supertonic import SupertonicBackend, SupertonicPipeline
class _DummyTTS:
@@ -26,13 +26,23 @@ class _DummyTTS:
return audio, 0.05
def test_supertonic_pipeline_strips_unsupported_characters_and_retries():
# Avoid importing/initializing real supertonic by manually constructing the pipeline.
def _make_pipeline() -> SupertonicPipeline:
pipeline = SupertonicPipeline.__new__(SupertonicPipeline)
pipeline.sample_rate = 24000
pipeline.total_steps = 5
pipeline.max_chunk_length = 1000
pipeline._tts = _DummyTTS()
return pipeline
def _make_backend() -> SupertonicBackend:
backend = SupertonicBackend.__new__(SupertonicBackend)
backend._pipeline = _make_pipeline()
return backend
def test_supertonic_pipeline_strips_unsupported_characters_and_retries():
pipeline = _make_pipeline()
segs = list(pipeline("Hello • world", voice="M1", speed=1.0))
assert len(segs) == 1
@@ -43,11 +53,56 @@ def test_supertonic_pipeline_strips_unsupported_characters_and_retries():
def test_supertonic_pipeline_drops_chunk_if_only_unsupported_characters():
pipeline = SupertonicPipeline.__new__(SupertonicPipeline)
pipeline.sample_rate = 24000
pipeline.total_steps = 5
pipeline.max_chunk_length = 1000
pipeline._tts = _DummyTTS()
pipeline = _make_pipeline()
segs = list(pipeline("", voice="M1", speed=1.0))
assert segs == []
# --- SupertonicBackend tests ---
def test_backend_metadata():
backend = _make_backend()
meta = backend.metadata
assert meta.id == "supertonic"
assert meta.name == "SuperTonic"
assert "SuperTonic" in meta.description
def test_backend_get_available_voices():
backend = _make_backend()
voices = backend.get_available_voices()
assert isinstance(voices, list)
assert "M1" in voices
assert "F1" in voices
def test_backend_get_supported_formats():
backend = _make_backend()
formats = backend.get_supported_formats()
assert "wav" in formats
def test_backend_get_info():
backend = _make_backend()
info = backend.get_info()
assert info["sample_rate"] == 24000
assert info["total_steps"] == 5
assert isinstance(info["voices"], list)
def test_backend_call_delegates_to_pipeline():
backend = _make_backend()
segs = list(backend("Hello • world", voice="M1", speed=1.0))
assert len(segs) == 1
assert segs[0].audio.size > 0
def test_backend_synthesize_returns_wav_bytes():
backend = _make_backend()
wav_bytes = backend.synthesize("Hello world", voice="M1", speed=1.0)
assert isinstance(wav_bytes, bytes)
assert len(wav_bytes) > 0
# WAV magic number
assert wav_bytes[:4] == b"RIFF"
+1 -1
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@@ -1,7 +1,7 @@
from __future__ import annotations
from abogen.webui.conversion_runner import _resolve_voice, _supertonic_voice_from_spec
from abogen.tts_supertonic import DEFAULT_SUPERTONIC_VOICES
from abogen.tts_backends.supertonic import DEFAULT_SUPERTONIC_VOICES
def test_resolve_voice_formula_without_pipeline_does_not_crash() -> None:
+233
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@@ -0,0 +1,233 @@
import pytest
from abogen.voice_metadata import VoiceMetadata
class TestVoiceMetadataCreation:
def test_create_with_all_fields(self):
voice = VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id="kokoro",
)
assert voice.id == "af_alloy"
assert voice.display_name == "Alloy"
assert voice.language == "a"
assert voice.gender == "female"
assert voice.backend_id == "kokoro"
def test_create_supertonic_voice(self):
voice = VoiceMetadata(
id="M1",
display_name="Male 1",
language="en",
gender="male",
backend_id="supertonic",
)
assert voice.id == "M1"
assert voice.backend_id == "supertonic"
def test_create_with_unknown_gender(self):
voice = VoiceMetadata(
id="custom_voice",
display_name="Custom",
language="en",
gender="unknown",
backend_id="custom_backend",
)
assert voice.gender == "unknown"
class TestVoiceMetadataImmutability:
def test_frozen_dataclass(self):
voice = VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id="kokoro",
)
with pytest.raises(AttributeError):
voice.id = "new_id"
def test_cannot_modify_display_name(self):
voice = VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id="kokoro",
)
with pytest.raises(AttributeError):
voice.display_name = "New Name"
def test_cannot_modify_backend_id(self):
voice = VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id="kokoro",
)
with pytest.raises(AttributeError):
voice.backend_id = "new_backend"
class TestVoiceMetadataEquality:
def test_equal_voices_are_equal(self):
voice1 = VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id="kokoro",
)
voice2 = VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id="kokoro",
)
assert voice1 == voice2
def test_different_voices_are_not_equal(self):
voice1 = VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id="kokoro",
)
voice2 = VoiceMetadata(
id="am_adam",
display_name="Adam",
language="a",
gender="male",
backend_id="kokoro",
)
assert voice1 != voice2
def test_different_backend_id_not_equal(self):
voice1 = VoiceMetadata(
id="custom",
display_name="Custom",
language="en",
gender="unknown",
backend_id="backend_a",
)
voice2 = VoiceMetadata(
id="custom",
display_name="Custom",
language="en",
gender="unknown",
backend_id="backend_b",
)
assert voice1 != voice2
class TestVoiceMetadataHashing:
def test_hashable(self):
voice = VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id="kokoro",
)
assert hash(voice) is not None
def test_equal_voices_same_hash(self):
voice1 = VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id="kokoro",
)
voice2 = VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id="kokoro",
)
assert hash(voice1) == hash(voice2)
def test_usable_in_set(self):
voice1 = VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id="kokoro",
)
voice2 = VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id="kokoro",
)
voice3 = VoiceMetadata(
id="am_adam",
display_name="Adam",
language="a",
gender="male",
backend_id="kokoro",
)
voice_set = {voice1, voice2, voice3}
assert len(voice_set) == 2
class TestVoiceMetadataUseCases:
def test_backend_populates_backend_id(self):
"""Simulate how a backend would populate backend_id automatically."""
class MockBackend:
def __init__(self):
self._backend_id = "kokoro"
def get_voices(self):
return [
VoiceMetadata(
id="af_alloy",
display_name="Alloy",
language="a",
gender="female",
backend_id=self._backend_id,
),
]
backend = MockBackend()
voices = backend.get_voices()
assert voices[0].backend_id == "kokoro"
def test_filter_by_language(self):
voices = [
VoiceMetadata(id="af_alloy", display_name="Alloy", language="a", gender="female", backend_id="kokoro"),
VoiceMetadata(id="jf_alpha", display_name="Alpha", language="j", gender="female", backend_id="kokoro"),
VoiceMetadata(id="am_adam", display_name="Adam", language="a", gender="male", backend_id="kokoro"),
]
english_voices = [v for v in voices if v.language == "a"]
assert len(english_voices) == 2
def test_filter_by_gender(self):
voices = [
VoiceMetadata(id="af_alloy", display_name="Alloy", language="a", gender="female", backend_id="kokoro"),
VoiceMetadata(id="am_adam", display_name="Adam", language="a", gender="male", backend_id="kokoro"),
VoiceMetadata(id="am_puck", display_name="Puck", language="a", gender="male", backend_id="kokoro"),
]
male_voices = [v for v in voices if v.gender == "male"]
assert len(male_voices) == 2
def test_filter_by_backend(self):
voices = [
VoiceMetadata(id="af_alloy", display_name="Alloy", language="a", gender="female", backend_id="kokoro"),
VoiceMetadata(id="M1", display_name="Male 1", language="en", gender="male", backend_id="supertonic"),
]
kokoro_voices = [v for v in voices if v.backend_id == "kokoro"]
assert len(kokoro_voices) == 1
assert kokoro_voices[0].id == "af_alloy"