import re from collections import defaultdict from multiprocessing import Pool from pathlib import Path import click import numpy as np import yaml from loguru import logger from tqdm import tqdm from fish_speech.datasets.protos.text_data_pb2 import Semantics, Sentence, TextData from fish_speech.datasets.protos.text_data_stream import pack_pb_stream from fish_speech.text import g2p from fish_speech.utils.file import AUDIO_EXTENSIONS, list_files, load_filelist def task_generator_yaml(config): with open(config, "r") as f: config = yaml.load(f, Loader=yaml.FullLoader) for row in config["datasets"]: root, source, languages, extension, parent_level = ( row["root"], row["source"], row["languages"], row["extension"], row["group_parent_level"], ) # Load the files files = list_files(root, AUDIO_EXTENSIONS, recursive=True, sort=True) grouped_files = defaultdict(list) for file in files: if parent_level == 1: p = file.parent.name elif parent_level == 2: p = file.parent.parent.name else: raise ValueError(f"Invalid parent level {parent_level}") grouped_files[p].append(file) logger.info(f"Found {len(grouped_files)} groups in {root}") for name, subset in grouped_files.items(): yield name, subset, source, languages, extension def task_generator_filelist(filelist): grouped_files = defaultdict(list) for filename, speaker, languages, text in load_filelist(filelist): grouped_files[speaker].append((Path(filename), text, languages)) logger.info(f"Found {len(grouped_files)} groups in {filelist}") for speaker, values in grouped_files.items(): yield speaker, values, "filelist", languages, None def run_task(task): name, subset, source, languages, extension = task # Parse the files sentences = [] for file in subset: if isinstance(file, tuple): file, text, languages = file else: text = None np_file = file.with_suffix(".npy") if np_file.exists() is False: logger.warning(f"Can't find {np_file}") continue if text is None: txt_file = file.with_suffix(extension) if txt_file.exists() is False: logger.warning(f"Can't find {txt_file}") continue with open(txt_file, "r") as f: text = f.read().strip() # Simple cleaning: replace { xxx } and < xxx > with space text = re.sub(r"\{.*?\}", " ", text) text = re.sub(r"<.*?>", " ", text) text = re.sub(r"\s+", " ", text) try: phones = [v for _, v in g2p(text, order=languages)] semantics = np.load(np_file) except Exception as e: logger.error(f"Failed to parse {file}: {e}") continue if isinstance(semantics, np.ndarray): semantics = semantics.tolist() sentences.append( Sentence( text=text, phones=phones, semantics=[Semantics(values=s) for s in semantics], ) ) # Pack the sentences return pack_pb_stream( TextData( source=source, name=name, languages=languages, sentences=sentences, ) ) @click.command() @click.option( "--config", type=click.Path(), default="fish_speech/configs/data/finetune.yaml" ) @click.option("--output", type=click.Path(), default="data/quantized-dataset-ft.protos") @click.option("--filelist", type=click.Path(), default=None) @click.option("--num-workers", type=int, default=16) def main(config, output, filelist, num_workers): dataset_fp = open(output, "wb") generator_fn = ( task_generator_yaml(config) if filelist is None else task_generator_filelist(filelist) ) with Pool(num_workers) as p: for result in tqdm(p.imap_unordered(run_task, generator_fn)): dataset_fp.write(result) dataset_fp.close() if __name__ == "__main__": main()