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import os | |
from typing import List, Union | |
from faster_whisper import WhisperModel, download_model | |
from src.config import ModelConfig, VadInitialPromptMode | |
from src.hooks.progressListener import ProgressListener | |
from src.languages import get_language_from_name | |
from src.modelCache import ModelCache | |
from src.whisper.abstractWhisperContainer import AbstractWhisperCallback, AbstractWhisperContainer | |
from src.utils import format_timestamp | |
class FasterWhisperContainer(AbstractWhisperContainer): | |
def __init__(self, model_name: str, device: str = None, compute_type: str = "float16", | |
download_root: str = None, | |
cache: ModelCache = None, models: List[ModelConfig] = []): | |
super().__init__(model_name, device, compute_type, download_root, cache, models) | |
def ensure_downloaded(self): | |
""" | |
Ensure that the model is downloaded. This is useful if you want to ensure that the model is downloaded before | |
passing the container to a subprocess. | |
""" | |
model_config = self._get_model_config() | |
if os.path.isdir(model_config.url): | |
model_config.path = model_config.url | |
else: | |
model_config.path = download_model(model_config.url, output_dir=self.download_root) | |
def _get_model_config(self) -> ModelConfig: | |
""" | |
Get the model configuration for the model. | |
""" | |
for model in self.models: | |
if model.name == self.model_name: | |
return model | |
return None | |
def _create_model(self): | |
print("Loading faster whisper model " + self.model_name + " for device " + str(self.device)) | |
model_config = self._get_model_config() | |
if model_config.type == "whisper" and model_config.url not in ["tiny", "base", "small", "medium", "large", "large-v2"]: | |
raise Exception("FasterWhisperContainer does not yet support Whisper models. Use ct2-transformers-converter to convert the model to a faster-whisper model.") | |
device = self.device | |
if (device is None): | |
device = "auto" | |
model = WhisperModel(model_config.url, device=device, compute_type=self.compute_type) | |
return model | |
def create_callback(self, language: str = None, task: str = None, initial_prompt: str = None, | |
initial_prompt_mode: VadInitialPromptMode = VadInitialPromptMode.PREPREND_FIRST_SEGMENT, | |
**decodeOptions: dict) -> AbstractWhisperCallback: | |
""" | |
Create a WhisperCallback object that can be used to transcript audio files. | |
Parameters | |
---------- | |
language: str | |
The target language of the transcription. If not specified, the language will be inferred from the audio content. | |
task: str | |
The task - either translate or transcribe. | |
initial_prompt: str | |
The initial prompt to use for the transcription. | |
initial_prompt_mode: VadInitialPromptMode | |
The mode to use for the initial prompt. If set to PREPEND_FIRST_SEGMENT, the initial prompt will be prepended to the first segment of audio. | |
If set to PREPEND_ALL_SEGMENTS, the initial prompt will be prepended to all segments of audio. | |
decodeOptions: dict | |
Additional options to pass to the decoder. Must be pickleable. | |
Returns | |
------- | |
A WhisperCallback object. | |
""" | |
return FasterWhisperCallback(self, language=language, task=task, initial_prompt=initial_prompt, initial_prompt_mode=initial_prompt_mode, **decodeOptions) | |
class FasterWhisperCallback(AbstractWhisperCallback): | |
def __init__(self, model_container: FasterWhisperContainer, language: str = None, task: str = None, | |
initial_prompt: str = None, initial_prompt_mode: VadInitialPromptMode=VadInitialPromptMode.PREPREND_FIRST_SEGMENT, | |
**decodeOptions: dict): | |
self.model_container = model_container | |
self.language = language | |
self.task = task | |
self.initial_prompt = initial_prompt | |
self.initial_prompt_mode = initial_prompt_mode | |
self.decodeOptions = decodeOptions | |
self._printed_warning = False | |
def invoke(self, audio, segment_index: int, prompt: str, detected_language: str, progress_listener: ProgressListener = None): | |
""" | |
Peform the transcription of the given audio file or data. | |
Parameters | |
---------- | |
audio: Union[str, np.ndarray, torch.Tensor] | |
The audio file to transcribe, or the audio data as a numpy array or torch tensor. | |
segment_index: int | |
The target language of the transcription. If not specified, the language will be inferred from the audio content. | |
task: str | |
The task - either translate or transcribe. | |
progress_listener: ProgressListener | |
A callback to receive progress updates. | |
""" | |
model: WhisperModel = self.model_container.get_model() | |
language_code = self._lookup_language_code(self.language) if self.language else None | |
# Copy decode options and remove options that are not supported by faster-whisper | |
decodeOptions = self.decodeOptions.copy() | |
verbose = decodeOptions.pop("verbose", None) | |
logprob_threshold = decodeOptions.pop("logprob_threshold", None) | |
patience = decodeOptions.pop("patience", None) | |
length_penalty = decodeOptions.pop("length_penalty", None) | |
suppress_tokens = decodeOptions.pop("suppress_tokens", None) | |
if (decodeOptions.pop("fp16", None) is not None): | |
if not self._printed_warning: | |
print("WARNING: fp16 option is ignored by faster-whisper - use compute_type instead.") | |
self._printed_warning = True | |
# Fix up decode options | |
if (logprob_threshold is not None): | |
decodeOptions["log_prob_threshold"] = logprob_threshold | |
decodeOptions["patience"] = float(patience) if patience is not None else 1.0 | |
decodeOptions["length_penalty"] = float(length_penalty) if length_penalty is not None else 1.0 | |
# See if supress_tokens is a string - if so, convert it to a list of ints | |
decodeOptions["suppress_tokens"] = self._split_suppress_tokens(suppress_tokens) | |
initial_prompt = self._get_initial_prompt(self.initial_prompt, self.initial_prompt_mode, prompt, segment_index) | |
segments_generator, info = model.transcribe(audio, \ | |
language=language_code if language_code else detected_language, task=self.task, \ | |
initial_prompt=initial_prompt, \ | |
**decodeOptions | |
) | |
segments = [] | |
for segment in segments_generator: | |
segments.append(segment) | |
if progress_listener is not None: | |
progress_listener.on_progress(segment.end, info.duration) | |
if verbose: | |
print("[{}->{}] {}".format(format_timestamp(segment.start, True), format_timestamp(segment.end, True), | |
segment.text)) | |
text = " ".join([segment.text for segment in segments]) | |
# Convert the segments to a format that is easier to serialize | |
whisper_segments = [{ | |
"text": segment.text, | |
"start": segment.start, | |
"end": segment.end, | |
# Extra fields added by faster-whisper | |
"words": [{ | |
"start": word.start, | |
"end": word.end, | |
"word": word.word, | |
"probability": word.probability | |
} for word in (segment.words if segment.words is not None else []) ] | |
} for segment in segments] | |
result = { | |
"segments": whisper_segments, | |
"text": text, | |
"language": info.language if info else None, | |
# Extra fields added by faster-whisper | |
"language_probability": info.language_probability if info else None, | |
"duration": info.duration if info else None | |
} | |
if progress_listener is not None: | |
progress_listener.on_finished() | |
return result | |
def _split_suppress_tokens(self, suppress_tokens: Union[str, List[int]]): | |
if (suppress_tokens is None): | |
return None | |
if (isinstance(suppress_tokens, list)): | |
return suppress_tokens | |
return [int(token) for token in suppress_tokens.split(",")] | |
def _lookup_language_code(self, language: str): | |
language = get_language_from_name(language) | |
if language is None: | |
raise ValueError("Invalid language: " + language) | |
return language.code | |