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278 lines
11 KiB
Python
278 lines
11 KiB
Python
# Copyright (c) 2022, NVIDIA CORPORATION. All rights reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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import contextlib
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import glob
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import json
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import os
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from dataclasses import dataclass, field, is_dataclass
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from pathlib import Path
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from typing import List, Optional
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import lightning.pytorch as pl
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import torch
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from omegaconf import OmegaConf
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from nemo.collections.audio.models.audio_to_audio import AudioToAudioModel
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from nemo.core.config import hydra_runner
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from nemo.utils import logging, model_utils
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"""
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Process audio file on a single CPU/GPU. Useful for processing of moderate amounts of audio data.
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# Arguments
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model_path: path to .nemo checkpoint for an AudioToAudioModel
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pretrained_name: name of a pretrained AudioToAudioModel model (from NGC registry)
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audio_dir: path to directory with audio files
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dataset_manifest: path to dataset JSON manifest file (in NeMo format)
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max_utts: maximum number of utterances to process
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input_channel_selector: list of channels to take from audio files, defaults to `None` and takes all available channels
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input_key: key for audio filepath in the manifest file, defaults to `audio_filepath`
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output_dir: Directory where processed files will be saved
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output_filename: Output filename where manifest pointing to processed files will be written
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batch_size: batch size during inference
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cuda: Optional int to enable or disable execution of model on certain CUDA device.
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amp: Bool to decide if Automatic Mixed Precision should be used during inference
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audio_type: Str filetype of the audio. Supported = wav, flac, mp3
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overwrite_output: Bool which when set allowes repeated processing runs to overwrite previous results.
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# Usage
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AudioToAudioModel can be specified by either `model_path` or `pretrained_name`.
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Data for processing can be defined with either `audio_dir` or `dataset_manifest`.
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Processed audio is saved in `output_dir`, and a manifest for processed files is saved
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in `output_filename`.
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```
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python process_audio.py \
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model_path=null \
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pretrained_name=null \
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audio_dir="" \
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dataset_manifest="" \
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input_channel_selector=[] \
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output_dir="" \
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output_filename="" \
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batch_size=1 \
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cuda=0 \
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amp=True
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```
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"""
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@dataclass
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class ProcessConfig:
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# Required configs
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model_path: Optional[str] = None # Path to a .nemo file
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pretrained_name: Optional[str] = None # Name of a pretrained model
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audio_dir: Optional[str] = None # Path to a directory which contains audio files
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dataset_manifest: Optional[str] = None # Path to dataset's JSON manifest
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max_utts: Optional[int] = None # max number of utterances to process
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# Audio configs
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input_channel_selector: Optional[List] = None # Union types not supported Optional[Union[List, int]]
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input_key: Optional[str] = None # Can be used with a manifest
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# General configs
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output_dir: Optional[str] = None
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output_filename: Optional[str] = None
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batch_size: int = 1
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num_workers: int = 0
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# Override model config
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override_config_path: Optional[str] = None # path to a yaml config that will override the internal config file
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# Override sampler config
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# For example, to set number of steps, use `++sampler.num_samples=42`
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sampler: dict = field(default_factory=dict)
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# Set `cuda` to int to define CUDA device. If 'None', will look for CUDA
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# device anyway, and do inference on CPU only if CUDA device is not found.
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# If `cuda` is a negative number, inference will be on CPU only.
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cuda: Optional[int] = None
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amp: bool = False
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audio_type: str = "wav"
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# Recompute model predictions, even if the output folder exists.
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overwrite_output: bool = False
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@hydra_runner(config_name="ProcessConfig", schema=ProcessConfig)
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def main(cfg: ProcessConfig) -> ProcessConfig:
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logging.info(f'Hydra config: {OmegaConf.to_yaml(cfg)}')
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if is_dataclass(cfg):
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cfg = OmegaConf.structured(cfg)
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if cfg.model_path is None and cfg.pretrained_name is None:
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raise ValueError("Both cfg.model_path and cfg.pretrained_name cannot be None!")
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if cfg.audio_dir is None and cfg.dataset_manifest is None:
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raise ValueError("Both cfg.audio_dir and cfg.dataset_manifest cannot be None!")
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# setup GPU
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if cfg.cuda is None:
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if torch.cuda.is_available():
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device = [0] # use 0th CUDA device
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accelerator = 'gpu'
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else:
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device = 1
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accelerator = 'cpu'
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else:
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device = [cfg.cuda]
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accelerator = 'gpu'
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map_location = torch.device('cuda:{}'.format(device[0]) if accelerator == 'gpu' else 'cpu')
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# setup model
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if cfg.model_path is not None:
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# restore model from .nemo file path
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model_cfg = AudioToAudioModel.restore_from(restore_path=cfg.model_path, return_config=True)
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classpath = model_cfg.target # original class path
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imported_class = model_utils.import_class_by_path(classpath) # type: AudioToAudioModel
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logging.info(f"Restoring model : {imported_class.__name__}")
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audio_to_audio_model = imported_class.restore_from(
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restore_path=cfg.model_path, override_config_path=cfg.override_config_path, map_location=map_location
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) # type: AudioToAudioModel
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model_name = os.path.splitext(os.path.basename(cfg.model_path))[0]
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else:
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# restore model by name
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audio_to_audio_model = AudioToAudioModel.from_pretrained(
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model_name=cfg.pretrained_name, map_location=map_location
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) # type: AudioToAudioModel
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model_name = cfg.pretrained_name
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trainer = pl.Trainer(devices=device, accelerator=accelerator)
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audio_to_audio_model.set_trainer(trainer)
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audio_to_audio_model = audio_to_audio_model.eval()
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# override sampler if necessary
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if cfg.sampler:
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logging.info('Overriding sampler with %s', cfg.sampler)
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if hasattr(audio_to_audio_model, 'sampler'):
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for key, value in cfg.sampler.items():
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if not hasattr(audio_to_audio_model.sampler, key):
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raise RuntimeError(f'Model sampler does not have attribute {key}')
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logging.debug('Try to set model.sampler.%s to %s', key, value)
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setattr(audio_to_audio_model.sampler, key, value)
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if getattr(audio_to_audio_model.sampler, key) != value:
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raise RuntimeError(f'Failed to set model sampler attribute {key} to {value}')
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logging.info('model.sampler.%s was set to %s', key, value)
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else:
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raise RuntimeError('Model does not have a sampler')
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if cfg.audio_dir is not None:
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input_dir = cfg.audio_dir
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filepaths = list(glob.glob(os.path.join(cfg.audio_dir, f"**/*.{cfg.audio_type}"), recursive=True))
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else:
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# get filenames from manifest
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filepaths = []
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if os.stat(cfg.dataset_manifest).st_size == 0:
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raise RuntimeError(f"The input dataset_manifest {cfg.dataset_manifest} is empty.")
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input_key = 'audio_filepath' if cfg.input_key is None else cfg.input_key
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manifest_dir = Path(cfg.dataset_manifest).parent
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with open(cfg.dataset_manifest, 'r') as f:
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for line in f:
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item = json.loads(line)
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audio_file = Path(item[input_key])
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if not audio_file.is_file() and not audio_file.is_absolute():
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audio_file = manifest_dir / audio_file
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filepaths.append(str(audio_file.absolute()))
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# common path for all files
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common_path = os.path.commonpath(filepaths)
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if Path(common_path).is_relative_to(manifest_dir):
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# if all paths are relative to the manifest, use manifest dir as input dir
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input_dir = manifest_dir
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else:
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# use the parent of the common path as input dir
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input_dir = Path(common_path).parent
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if cfg.max_utts is not None:
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# Limit the number of utterances to process
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filepaths = filepaths[: cfg.max_utts]
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logging.info(f"\nProcessing {len(filepaths)} files...\n")
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# setup AMP (optional)
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if cfg.amp and torch.cuda.is_available() and hasattr(torch.cuda, 'amp') and hasattr(torch.cuda.amp, 'autocast'):
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logging.info("AMP enabled!\n")
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autocast = torch.cuda.amp.autocast
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else:
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@contextlib.contextmanager
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def autocast():
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yield
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# Compute output filename
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if cfg.output_dir is None:
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# create default output filename
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if cfg.audio_dir is not None:
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cfg.output_dir = os.path.dirname(os.path.join(cfg.audio_dir, '.')) + f'_processed_{model_name}'
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else:
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cfg.output_dir = os.path.dirname(cfg.dataset_manifest) + f'_processed_{model_name}'
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# Compute output filename
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if cfg.output_filename is None:
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# create default output filename
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cfg.output_filename = cfg.output_dir.rstrip('/') + '_manifest.json'
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# if transcripts should not be overwritten, and already exists, skip re-transcription step and return
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if not cfg.overwrite_output and os.path.exists(cfg.output_dir):
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raise RuntimeError(
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f"Previous output found at {cfg.output_dir}, and flag `overwrite_output`"
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f"is {cfg.overwrite_output}. Returning without processing."
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)
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# Process audio
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with autocast():
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with torch.no_grad():
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paths2processed_files = audio_to_audio_model.process(
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paths2audio_files=filepaths,
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output_dir=cfg.output_dir,
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batch_size=cfg.batch_size,
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num_workers=cfg.num_workers,
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input_channel_selector=cfg.input_channel_selector,
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input_dir=input_dir,
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)
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logging.info(f"Finished processing {len(filepaths)} files!")
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logging.info(f"Processed audio is available in the output directory: {cfg.output_dir}")
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# Prepare new/updated manifest with a new key for processed audio
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with open(cfg.output_filename, 'w', encoding='utf-8') as f:
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if cfg.dataset_manifest is not None:
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with open(cfg.dataset_manifest, 'r') as fr:
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for idx, line in enumerate(fr):
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item = json.loads(line)
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item['processed_audio_filepath'] = paths2processed_files[idx]
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f.write(json.dumps(item) + "\n")
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if cfg.max_utts is not None and idx >= cfg.max_utts - 1:
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break
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else:
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for idx, processed_file in enumerate(paths2processed_files):
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item = {'processed_audio_filepath': processed_file}
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f.write(json.dumps(item) + "\n")
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return cfg
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if __name__ == '__main__':
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main() # noqa pylint: disable=no-value-for-parameter
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