1041 lines
34 KiB
Python
Executable File
1041 lines
34 KiB
Python
Executable File
# todo: clean this mess up
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import copy
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import h5py
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import json
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import logging
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import numpy as np
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import os
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import random
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import torch
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import itertools
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from .config import cfg
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from .emb.qnt import trim, trim_random, repeat_extend_audio, merge_audio, decode_to_file
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from .utils.sampler import Sampler
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from collections import defaultdict
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from functools import cache, cached_property
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from itertools import groupby, zip_longest
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from pathlib import Path
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from typing import Any
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from torch import Tensor
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from torch.utils.data import DataLoader, Dataset as _Dataset
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from torch.utils.data.distributed import DistributedSampler
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from tqdm.auto import tqdm
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# torch.multiprocessing.set_sharing_strategy("file_system")
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_logger = logging.getLogger(__name__)
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# to-do: clean up this symmap mess
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def get_phone_symmap():
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return cfg.tokenizer.get_vocab()
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def tokenize( phones ):
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return tokenizer.encode( "".join(phones) )
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#return [*map(get_phone_symmap.get, _get_phones(path))]
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def get_lang_symmap():
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return {
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"en": 0,
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"ja": 1,
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}
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def get_tone_symmap():
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return {
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"neutral": 0,
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}
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return symmap
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def get_task_symmap():
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return {
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"<tts>": 0,
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"<tts-c>": 1,
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"<ns>": 2,
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"<sr>": 3,
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"<tse>": 4,
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"<soe>": 5,
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"<mask>": 6,
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"<eoe>": 7,
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}
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def _replace_file_extension(path, suffix):
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return (path.parent / path.name.split(".")[0]).with_suffix(suffix)
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def _get_quant_extension():
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return ".dac"
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def _get_phone_extension():
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return ".json"
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def _get_quant_path(path):
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return _replace_file_extension(path, _get_quant_extension())
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def _get_phone_path(path):
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return _replace_file_extension(path, _get_phone_extension())
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_total_durations = {}
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@cfg.diskcache()
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def _calculate_durations( type="training" ):
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if type in _total_durations:
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return _total_durations[type]
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return 0
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@cfg.diskcache()
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def _load_paths(dataset, type="training"):
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return { cfg.get_spkr( cfg.data_dir / data_dir / "dummy" ): _load_paths_from_metadata( data_dir, type=type, validate=cfg.dataset.validate and type == "training" ) for data_dir in tqdm(dataset, desc=f"Parsing dataset: {type}") }
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def _load_paths_from_metadata(dataset_name, type="training", validate=False):
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data_dir = dataset_name if cfg.dataset.use_hdf5 else cfg.data_dir / dataset_name
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_fn = _get_hdf5_paths if cfg.dataset.use_hdf5 else _get_paths_of_extensions
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def _validate( entry ):
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phones = entry['phones'] if "phones" in entry else 0
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duration = entry['duration'] if "duration" in entry else 0
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if type not in _total_durations:
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_total_durations[type] = 0
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_total_durations[type] += duration
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return cfg.dataset.min_duration <= duration and duration <= cfg.dataset.max_duration and cfg.dataset.min_phones <= phones and phones <= cfg.dataset.max_phones
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metadata_path = cfg.metadata_dir / f'{dataset_name}.json'
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metadata = {}
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if cfg.dataset.use_metadata and metadata_path.exists():
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metadata = json.loads(open( metadata_path, "r", encoding="utf-8" ).read())
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if len(metadata) == 0:
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return _fn( data_dir, type if cfg.dataset.use_hdf5 else _get_quant_extension(), validate )
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def key( dir, id ):
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if not cfg.dataset.use_hdf5:
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return data_dir / id
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return f"/{type}/{_get_hdf5_path(data_dir)}/{id}"
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return [ key(dir, id) for id in metadata.keys() if not validate or _validate(metadata[id]) ]
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def _get_hdf5_path(path):
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# to-do: better validation
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#print(path)
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return str(path)
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def _get_hdf5_paths( data_dir, type="training", validate=False ):
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data_dir = str(data_dir)
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def _validate(child):
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phones = child.attrs['phonemes']
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duration = child.attrs['duration']
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if type not in _total_durations:
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_total_durations[type] = 0
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_total_durations[type] += child.attrs['duration']
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return cfg.dataset.min_duration <= duration and duration <= cfg.dataset.max_duration and cfg.dataset.min_phones <= phones and phones <= cfg.dataset.max_phones
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key = f"/{type}/{_get_hdf5_path(data_dir)}"
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return [ Path(f"{key}/{child.attrs['id']}") for child in cfg.hdf5[key].values() if not validate or _validate(child) ] if key in cfg.hdf5 else []
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def _get_paths_of_extensions( path, extensions=_get_quant_extension(), validate=False ):
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if isinstance(path, str):
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path = Path(path)
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def _validate(path):
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if "".join(path.suffixes) not in extensions:
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return False
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if not _get_phone_path(path).exists() or not _get_quant_path(path).exists():
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return False
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if not validate:
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return True
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# to-do: find an easy way to determine size from pickled quants without loading
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# to-do: find a consistent way to derive phoneme count from filesize (probably can't due to utf-8)
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phones = len(_get_phones(_get_phone_path(path))) # _get_phone_path(path).stat().st_size // 2 + 1
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return cfg.dataset.min_phones <= phones and phones <= cfg.dataset.max_phones
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return [ p for p in list(path.iterdir()) if _validate(p) ] if path.exists() and path.is_dir() else []
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def _load_quants(path) -> Tensor:
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if _get_quant_extension() == ".dac":
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qnt = np.load(_get_quant_path(path), allow_pickle=True)[()]
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return torch.from_numpy(qnt["codes"].astype(int))[0][:, :].t().to(torch.int16)
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return torch.load(_get_quant_path(path))[0][:, :].t().to(torch.int16)
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# prune consecutive spaces
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def _cleanup_phones( phones, targets=[" "]):
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return [ p for i, p in enumerate(phones) if p not in targets or ( p in targets and p != phones[i-1] ) ]
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@cache
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def _get_phones(path, language="en"):
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if _get_quant_extension() == ".json":
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metadata = json.loads(open(_get_phone_path(path), "r", encoding="utf-8").read())
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content = metadata["phonemes"]
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else:
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content = open(_get_phone_path(path), "r", encoding="utf-8").read().split(" ")
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return "".join(content)
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def _interleaved_reorder(l, fn):
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groups = defaultdict(list)
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for e in l:
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groups[fn(e)].append(e)
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groups = {k: groups[k] for k in sorted(groups)}
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for interleaved in zip_longest(*groups.values()):
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for value in interleaved:
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if value is not None:
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yield value
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class Dataset(_Dataset):
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def __init__(
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self,
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phone_symmap=None,
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training=False,
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extra_paths_by_spkr_name: dict[str, list] = {},
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):
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super().__init__()
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self._head = None
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self.sampler = None
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self.paths = []
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self.training = training
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self.dataset_type = "training" if self.training else "validation"
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self.dataset = cfg.dataset.training if self.training else cfg.dataset.validation
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self.sampler_type = cfg.dataset.sample_type if self.dataset_type == "training" else "path"
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# to-do: do not do validation if there's nothing in the validation
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# this just makes it be happy
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if len(self.dataset) == 0:
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self.dataset = cfg.dataset.training
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# dict of paths keyed by speaker names
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self.paths_by_spkr_name = _load_paths(self.dataset, self.dataset_type)
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# cull speakers if they do not have enough utterances
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if cfg.dataset.min_utterances > 0:
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keys = list(self.paths_by_spkr_name.keys())
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for key in keys:
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if len(self.paths_by_spkr_name[key]) < cfg.dataset.min_utterances:
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del self.paths_by_spkr_name[key]
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self.paths = list(itertools.chain.from_iterable(self.paths_by_spkr_name.values()))
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self.samplers = { name: Sampler( paths, keep_all=True ) for name, paths in self.paths_by_spkr_name.items() }
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# dict of speakers keyed by speaker group
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self.spkrs_by_spkr_group = {}
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for data_dir in self.dataset:
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spkr = cfg.get_spkr( data_dir / "dummy" )
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spkr_group = cfg.get_spkr_group( data_dir / "dummy" )
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if spkr not in self.paths_by_spkr_name or len(self.paths_by_spkr_name[spkr]) < cfg.dataset.min_utterances:
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continue
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if spkr_group not in self.spkrs_by_spkr_group:
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self.spkrs_by_spkr_group[spkr_group] = []
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self.spkrs_by_spkr_group[spkr_group].append( spkr )
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self.spkr_groups = list(self.spkrs_by_spkr_group.keys())
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self.spkr_samplers = { name: Sampler( [*set(speakers)], keep_all=True ) for name, speakers in self.spkrs_by_spkr_group.items() }
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if self.sampler_type == "path":
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self.paths = [*_interleaved_reorder(self.paths, self.get_speaker)]
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self.noise_paths = _load_paths(cfg.dataset.noise, "noise")
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self.noise_paths = list(itertools.chain.from_iterable(self.noise_paths.values()))
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self.phone_symmap = phone_symmap or self._get_phone_symmap()
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self.spkr_symmap = self._get_spkr_symmap()
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self.spkr_group_symmap = self._get_spkr_group_symmap()
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self.lang_symmap = self._get_lang_symmap()
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self.tone_symmap = self._get_tone_symmap()
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self.task_symmap = self._get_task_symmap()
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# assert len(self.phone_symmap) < 256, "Unique token count should be [0,255] to fit within uint8"
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self.text_dtype = torch.uint8 if len(self.phone_symmap) < 256 else torch.int16
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if len(self.paths) == 0:
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raise ValueError(f"No valid path is found for {self.dataset_type}")
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#self.duration = _total_durations[self.dataset_type] if self.dataset_type in _total_durations else 0
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self.duration = _calculate_durations(self.dataset_type)
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@cached_property
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def phones(self):
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return sorted(set().union(*[_get_phones(path) for path in self.paths]))
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def get_speaker(self, path):
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if isinstance(path, str):
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path = Path(path)
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res = cfg.get_spkr(path)
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return res
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def get_speaker_group(self, path):
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if isinstance(path, str):
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path = Path(path)
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res = cfg.get_spkr_group(path)
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return res
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def get_language(self, speaker_group):
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lang = "en"
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for k, v in cfg.dataset.speaker_languages.items():
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if speaker_group in v:
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lang = k
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break
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return lang
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@cached_property
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def spkrs(self):
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return sorted({self.get_speaker(path) for path in self.paths})
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@cached_property
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def tasks(self):
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return cfg.dataset.tasks_list # ["tts", "tts", "ns", "sr", "tse", "tts", "tts"] # , "cse", "nse"
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def save_state_dict(self, path):
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state_dict = {
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"samplers": { name: sampler.current_pool for name, sampler in self.samplers.items() }
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}
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torch.save(state_dict, path)
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def load_state_dict(self, path):
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state_dict = torch.load(path)
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if "samplers" in state_dict:
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# better than naively setting the entire object
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for name, sampler in state_dict["samplers"].items():
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if name not in self.samplers:
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continue
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self.samplers[name].current_pool = sampler
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def _get_phone_symmap(self):
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return get_phone_symmap()
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def _get_spkr_symmap(self):
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return {s: i for i, s in enumerate(self.spkrs)}
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def _get_spkr_group_symmap(self):
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return {s: i for i, s in enumerate(self.spkr_groups)}
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def _get_lang_symmap(self):
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return get_lang_symmap()
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def _get_tone_symmap(self):
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return get_tone_symmap()
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def _get_task_symmap(self):
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return get_task_symmap()
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"""
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def get_task_token( self, token, levels=cfg.model.max_levels ):
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if not hasattr(self, "task_symmap"):
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self.task_symmap = self._get_task_symmap()
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return torch.Tensor([[ self.task_symmap[f'<{token}>'] for _ in range(levels) ]]).to(dtype=torch.int16)
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"""
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def sample_noise(self):
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path = random.choice(self.noise_paths)
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if cfg.dataset.use_hdf5:
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key = _get_hdf5_path(path)
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qnt = torch.from_numpy(cfg.hdf5[key]["audio"][:, :]).to(torch.int16)
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else:
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qnt = _load_quants(path)
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return qnt
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def sample_speakers(self, ignore=[]):
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choices = set(self.spkrs) - set(ignore)
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return random.choice([*choices])
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def sample_prompts(self, spkr_name, ignore):
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prom_list = []
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choices = set(self.paths_by_spkr_name[spkr_name]) - {ignore}
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choices = [*choices]
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# no other utterances, it'd make more sense to prune speakers with only one utterance in the validation step
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if len(choices) == 0:
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choices = [*set(self.paths_by_spkr_name[spkr_name])]
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"""
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raise ValueError(
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f"Failed to find another different utterance for {spkr_name}."
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)
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"""
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# shuffle it up a bit
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prom_length = 0
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if cfg.experimental:
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trim_length = random.randint(75 * 3, 75 * 6) # [3 seconds, 6 seconds]
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#trim_length = max(2, int(np.random.normal(loc=5, scale=1.25) * 75))
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else:
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trim_length = int(cfg.dataset.prompt_duration * 75) + random.randint(-75, 75)
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for _ in range(cfg.dataset.max_prompts):
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path = random.choice(choices)
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if cfg.dataset.use_hdf5:
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key = _get_hdf5_path(path)
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qnt = torch.from_numpy(cfg.hdf5[key]["audio"][:, :]).to(torch.int16)
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else:
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qnt = _load_quants(path)
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if cfg.dataset.prompt_duration > 0 and trim_length < qnt.shape[0]:
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qnt = trim( qnt, trim_length )
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prom_list.append(qnt)
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prom_length += qnt.shape[0]
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if prom_length >= trim_length or random.random() > cfg.dataset.random_utterance:
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break
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# might be better to decode => concat waveforms with silence in between => reencode
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# as you technically can't just append encodec sequences together like this without issues
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prom = torch.cat(prom_list)
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if cfg.dataset.prompt_duration > 0 and trim_length < prom.shape[0]:
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prom = trim( prom, trim_length )
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return prom
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def __getitem__(self, index):
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if self.sampler_type == "group":
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spkr_group = self.spkr_groups[index]
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#spkr_group_id = self.spkr_group_symmap[spkr_group]
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spkr_name = self.spkr_samplers[spkr_group].sample()
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spkr_id = self.spkr_symmap[spkr_name]
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path = self.samplers[spkr_name].sample()
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elif self.sampler_type == "speaker":
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spkr_name = self.spkrs[index]
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spkr_id = self.spkr_symmap[spkr_name]
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path = self.samplers[spkr_name].sample()
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spkr_group = self.get_speaker_group(path)
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#spkr_group_id = self.spkr_group_symmap[spkr_group]
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else:
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path = self.paths[index]
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spkr_name = self.get_speaker(path)
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spkr_id = self.spkr_symmap[spkr_name]
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spkr_group = self.get_speaker_group(path)
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#spkr_group_id = self.spkr_group_symmap[spkr_group]
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if cfg.dataset.use_hdf5:
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key = _get_hdf5_path(path)
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if key not in cfg.hdf5:
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raise RuntimeError(f'Key of Path ({path}) not in HDF5: {key}')
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text = cfg.hdf5[key]["text"][:]
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resps = cfg.hdf5[key]["audio"][:, :]
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text = torch.from_numpy(text).to(self.text_dtype)
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resps = torch.from_numpy(resps).to(torch.int16)
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else:
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text = torch.tensor(tokenize( _get_phones( path ) )).to(self.text_dtype)
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resps = _load_quants(path)
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lang = torch.tensor([ self.lang_symmap[ self.get_language(spkr_group) ]]).to(torch.uint8)
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# append additional prompts in an attempt to artifically increase lengths / offer new data
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if cfg.experimental and cfg.dataset.max_resps > 1 and random.random() < cfg.dataset.p_resp_append:
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choices = [*(set(self.paths_by_spkr_name[spkr_name]) - {path})]
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if len(choices) > 0:
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for _ in range( cfg.dataset.max_resps - 1 ):
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sampled_path = random.choice(choices)
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choices = [*(set(choices) - {sampled_path})]
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if cfg.dataset.use_hdf5:
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key = _get_hdf5_path(sampled_path)
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txt = cfg.hdf5[key]["text"][:]
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qnt = cfg.hdf5[key]["audio"][:, :]
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txt = np.array( txt )
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txt = torch.from_numpy(txt).to(self.text_dtype)
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qnt = torch.from_numpy(qnt).to(torch.int16)
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else:
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#txt = torch.tensor([*map(self.phone_symmap.get, _get_phones(sampled_path))]).to(self.text_dtype)
|
|
txt = torch.tensor(tokenize(_get_phones(sampled_path))).to(self.text_dtype)
|
|
qnt = _load_quants(sampled_path)
|
|
|
|
# <s>[original text] [new text]</s>
|
|
# removes the original text's </s>, includes a space, and remove the new text's <s>
|
|
text = torch.concat([ text[:-1], torch.tensor([self.phone_symmap[" "]]).to(torch.int16), txt[1:] ])
|
|
|
|
# might be better to decode => concat waveforms with silence in between => reencode
|
|
# as you technically can't just append encodec sequences together like this without issues
|
|
resps = torch.concat([ resps, qnt ])
|
|
|
|
task = "tts"
|
|
trim_length = int(cfg.dataset.prompt_duration * 75)
|
|
proms = self.sample_prompts(spkr_name, ignore=path) if random.random() < cfg.dataset.random_utterance else resps
|
|
|
|
|
|
# Disabled until I swap over to a better method
|
|
"""
|
|
task = random.choice(self.tasks)
|
|
|
|
# ensure a speaker has at least four utterances
|
|
# default to tts if not
|
|
if len(set(self.paths_by_spkr_name[spkr_name]) - {path}) < 4:
|
|
task = "tts"
|
|
noise_scale = 0.25
|
|
if task == "tts" or task == "tts-c":
|
|
trim_length = int(cfg.dataset.prompt_duration * 75)
|
|
# demote if the target is too short
|
|
if task == "tts-c" and trim_length * 2 >= resps.shape[0]:
|
|
task = "tts"
|
|
|
|
# VALL-E continuous
|
|
# ignore if target utterance is shorter than prompt duration
|
|
# to-do: actually do this for the AR only as I don't think the paper trained the NAR for this
|
|
if task == "tts-c":
|
|
proms = resps[:trim_length, :]
|
|
resps = resps[trim_length:, :]
|
|
|
|
proms = torch.cat( [self.get_task_token(task), proms] )
|
|
else:
|
|
proms = self.sample_prompts(spkr_name, ignore=path) if random.random() < cfg.dataset.random_utterance else resps
|
|
# noise suppression || speech removal
|
|
elif task == "ns" or task == "sr":
|
|
# sample random noise
|
|
noise = self.sample_noise()
|
|
# extend the noise to fill the target audio
|
|
noise = repeat_extend_audio(noise, resps.shape[0])
|
|
# create the input prompt by merging the target audio with the noise
|
|
proms = merge_audio( resps, noise, scale=[1, noise_scale], device="cpu" )
|
|
# set the target to just be the noise if <sr>
|
|
if task == "sr":
|
|
resps = noise
|
|
# prepend the task token
|
|
proms = torch.cat( [self.get_task_token(task), proms] )
|
|
|
|
# set the text prompt to empty to train without a guided text prompt
|
|
if random.random() < 0.5:
|
|
text = torch.tensor([1, 2]).to(self.text_dtype)
|
|
# target speech extraction
|
|
elif task == "tse":
|
|
# sample a random, clean, utterance for the target speaker
|
|
clean_proms = self.sample_prompts(spkr_name, ignore=path)
|
|
# sample a random, clean utterance from a different speaker
|
|
other_proms = self.sample_prompts(self.sample_speakers(ignore=[spkr_name]), ignore="")
|
|
# overlay the random speaker over the target audio
|
|
|
|
smallest_size = min(resps.shape[0], other_proms.shape[0])
|
|
if other_proms.shape[0] == smallest_size:
|
|
noisy_proms = merge_audio( resps[:smallest_size, :], other_proms, scale=[1, random.uniform(0.5, 0.75)], device="cpu" )
|
|
noisy_proms = torch.cat( [ noisy_proms, resps[smallest_size:, :] ] )
|
|
else:
|
|
noisy_proms = merge_audio( resps, other_proms[:smallest_size, :], scale=[1, random.uniform(0.5, 0.75)], device="cpu" )
|
|
noisy_proms = torch.cat( [ noisy_proms, other_proms[smallest_size:, :] ] )
|
|
|
|
# stitch together the promps
|
|
proms = torch.cat( [clean_proms, self.get_task_token(task), noisy_proms] )
|
|
|
|
# set the text prompt to empty to train without a guided text prompt
|
|
if random.random() < 0.5:
|
|
text = torch.tensor([1, 2]).to(self.text_dtype) # <s></s>
|
|
|
|
# speech editing would require higher quality transcription data (phoneme level/word level) unfortunately
|
|
# as I need to get a good clean point to trim into
|
|
# clean speech editing
|
|
elif task == "cse" or task == "nse":
|
|
choices = set(self.paths_by_spkr_name[spkr_name]) - {path}
|
|
sampled = random.sample([*choices], 4)
|
|
|
|
if cfg.dataset.use_hdf5:
|
|
texts = [ torch.from_numpy(cfg.hdf5[_get_hdf5_path(path)]["text"][:]).to(self.text_dtype) for path in sampled ]
|
|
qnts = [ torch.from_numpy(cfg.hdf5[_get_hdf5_path(path)]["audio"][:, :]).to(torch.int16) for path in sampled ]
|
|
else:
|
|
texts = [ torch.tensor([*map(self.phone_symmap.get, _get_phones(path))]).to(self.text_dtype) for path in sampled ]
|
|
qnts = [ _load_quants(path) for path in sampled ]
|
|
|
|
# remove <s></s>
|
|
for i in range(len(texts)):
|
|
texts[i] = texts[i][1:-1]
|
|
|
|
pre_text, mid_text, post_text, edit_text = texts
|
|
pre_prom, mid_prom, post_prom, edit_prom = qnts
|
|
|
|
# randomly drop out pre
|
|
if random.random() < 0.125:
|
|
pre_text = None
|
|
pre_prom = None
|
|
# randomly drop out post
|
|
if random.random() < 0.125:
|
|
post_text = None
|
|
post_prom = None
|
|
|
|
# create new text
|
|
text = torch.cat(
|
|
[ torch.Tensor( [ 1 ] ).to(dtype=self.text_dtype) ] + # <s>
|
|
([ pre_text, torch.Tensor( [ 3 ] ).to(dtype=self.text_dtype) ] if pre_text is not None else []) + # pre_text + space'
|
|
[ edit_text ] + # 'edit text'
|
|
([ torch.Tensor( [ 3 ] ).to(dtype=self.text_dtype), post_text ] if post_text is not None else []) + # 'space' + edit_text
|
|
[ torch.Tensor( [ 2 ] ).to(dtype=self.text_dtype) ] # </s>
|
|
)
|
|
|
|
if task == "nse":
|
|
# sample random noise
|
|
noise = self.sample_noise()
|
|
|
|
# it might be better to extend the noise to the sum of the pre+mid+post or pre+edit+post to keep the noise truly coherent
|
|
# but it's noise, it's supposed to be random
|
|
def noise_proms( p ):
|
|
# ignore if we turned it off
|
|
if p is None:
|
|
return None
|
|
|
|
# extend the noise to fill the target audio
|
|
n = repeat_extend_audio(noise, p.shape[0])
|
|
# merge the noise over the utterance
|
|
return merge_audio(p, n, scale=[1, noise_scale], device="cpu")
|
|
|
|
# apply noise to all pieces
|
|
pre_prom = noise_proms( pre_prom )
|
|
mid_prom = noise_proms( mid_prom )
|
|
post_prom = noise_proms( post_prom )
|
|
edit_prom = noise_proms( edit_prom )
|
|
else:
|
|
mid_prom = self.get_task_token("mask")
|
|
|
|
# create new proms
|
|
proms = torch.cat(
|
|
([ pre_prom ] if pre_prom is not None else []) +
|
|
[self.get_task_token("soe")] +
|
|
[ mid_prom ] + # is <mask> if task is CSE
|
|
[self.get_task_token("eoe")] +
|
|
([ post_prom ] if post_prom is not None else [])
|
|
)
|
|
# create new resp
|
|
resps = torch.cat(
|
|
([ pre_prom ] if pre_prom is not None else []) +
|
|
[ edit_prom ] +
|
|
([ post_prom ] if post_prom is not None else [])
|
|
)
|
|
else:
|
|
raise Exception(f'Undefined task: {task}')
|
|
"""
|
|
|
|
"""
|
|
# emulate SVC
|
|
# takes in an utterance of the target speaker, a target utterenace as a reference clip as the input prompt
|
|
# targets an utterance of the target speaker with the same tempo + pitch + etc as the reference clip
|
|
|
|
# NOTE: I do not have a clue how to go about this. I *could* dynamically generate clips through RVC here, but I imagine the penalty would be astronomical
|
|
# ahead-of-time dataset preparation of a shit ton of RVC clips might be the key.
|
|
# aside from that, I have no clue how to go about training this, as this is entirely a proof of concept task.
|
|
elif task == "svc":
|
|
# sample a random, clean utterance for the target speaker
|
|
proms = self.sample_prompts(spkr_name, ignore=path) if random.random() < cfg.dataset.random_utterance else resps
|
|
# sample a reference clip from a different speaker
|
|
ref_proms = self.sample_rvc(self.sample_speakers(ignore=[spkr_name]))
|
|
#
|
|
resps =
|
|
# stitch together the promps
|
|
proms = torch.cat( [proms, self.get_task_token(task), ref_proms] )
|
|
|
|
# set the text prompt to empty to train without a guided text prompt
|
|
if random.random() < 0.5:
|
|
text = torch.tensor([1, 2]).to(self.text_dtype)
|
|
"""
|
|
|
|
# trim to fit to requested prom/resps levels
|
|
proms = proms[:, :cfg.model.prom_levels]
|
|
resps = resps[:, :cfg.model.prom_levels]
|
|
|
|
|
|
return dict(
|
|
index=index,
|
|
path=Path(path),
|
|
spkr_name=spkr_name,
|
|
spkr_id=spkr_id,
|
|
task=task,
|
|
lang=lang,
|
|
text=text,
|
|
proms=proms,
|
|
resps=resps,
|
|
)
|
|
|
|
def head_(self, n):
|
|
self._head = n
|
|
|
|
def training_(self, value):
|
|
self.training = value
|
|
|
|
def __len__(self):
|
|
if self.sampler_type == "group":
|
|
return min(len(self.spkr_groups), self._head or len(self.spkr_groups))
|
|
if self.sampler_type == "speaker":
|
|
return min(len(self.spkrs), self._head or len(self.spkrs))
|
|
return min(len(self.paths), self._head or len(self.paths))
|
|
|
|
def pin_memory(self):
|
|
self.text = self.text.pin_memory()
|
|
self.proms = self.proms.pin_memory()
|
|
self.resps = self.resps.pin_memory()
|
|
self.resp = self.resp.pin_memory()
|
|
return self
|
|
|
|
|
|
def collate_fn(samples: list[dict]):
|
|
batch: dict[str, Any] = {k: [s[k] for s in samples] for k in samples[0]}
|
|
return batch
|
|
|
|
|
|
def _seed_worker(worker_id):
|
|
worker_seed = torch.initial_seed() % 2**32
|
|
np.random.seed(worker_seed)
|
|
random.seed(worker_seed)
|
|
|
|
|
|
def _create_dataloader(dataset, training):
|
|
sampler = None
|
|
shuffle = True
|
|
|
|
if cfg.distributed and training:
|
|
sampler = DistributedSampler(dataset)
|
|
shuffle = False
|
|
|
|
return DataLoader(
|
|
dataset=dataset,
|
|
batch_size=cfg.hyperparameters.batch_size if training else cfg.evaluation.batch_size,
|
|
shuffle=shuffle,
|
|
drop_last=training,
|
|
num_workers=cfg.dataset.workers,
|
|
collate_fn=collate_fn,
|
|
persistent_workers=cfg.dataset.workers > 1,
|
|
pin_memory=False, # True,
|
|
worker_init_fn=_seed_worker,
|
|
sampler=sampler,
|
|
)
|
|
|
|
def create_datasets():
|
|
train_dataset = Dataset( training=True )
|
|
val_dataset = Dataset( phone_symmap=train_dataset.phone_symmap, training=False )
|
|
|
|
train_state_path = cfg.relpath / "train_dataset.pt"
|
|
if train_state_path.exists():
|
|
train_dataset.load_state_dict( train_state_path )
|
|
|
|
return train_dataset, val_dataset
|
|
|
|
|
|
def create_train_val_dataloader():
|
|
train_dataset, val_dataset = create_datasets()
|
|
|
|
subtrain_dataset = copy.deepcopy(train_dataset)
|
|
if subtrain_dataset.sampler_type == "path":
|
|
subtrain_dataset.head_(cfg.evaluation.size)
|
|
|
|
train_dl = _create_dataloader(train_dataset, training=True)
|
|
val_dl = _create_dataloader(val_dataset, training=False)
|
|
subtrain_dl = _create_dataloader(subtrain_dataset, training=False)
|
|
|
|
_logger.info(str(train_dataset.phone_symmap))
|
|
_logger.info(str(train_dataset.spkr_symmap))
|
|
_logger.info(str(train_dataset.spkr_group_symmap))
|
|
|
|
_logger.info(f"#samples (train): {len(train_dataset)}.")
|
|
_logger.info(f"#samples (val): {len(val_dataset)}.")
|
|
_logger.info(f"#samples (subtrain): {len(subtrain_dataset)}.")
|
|
|
|
_logger.info(f"#duration (train): {str(train_dataset.duration)}.")
|
|
_logger.info(f"#duration (val): {str(val_dataset.duration)}.")
|
|
_logger.info(f"#duration (subtrain): {str(subtrain_dataset.duration)}.")
|
|
|
|
assert isinstance(subtrain_dl.dataset, Dataset)
|
|
|
|
return train_dl, subtrain_dl, val_dl
|
|
|
|
# parse dataset into better to sample metadata
|
|
def create_dataset_metadata( skip_existing=True ):
|
|
symmap = get_phone_symmap()
|
|
|
|
root = str(cfg.data_dir)
|
|
metadata_root = str(cfg.metadata_dir)
|
|
|
|
cfg.metadata_dir.mkdir(parents=True, exist_ok=True)
|
|
|
|
def add( dir, type="training", audios=True, texts=True ):
|
|
name = str(dir)
|
|
name = name.replace(root, "")
|
|
|
|
metadata_path = Path(f"{metadata_root}/{name}.json")
|
|
|
|
metadata = {} if not metadata_path.exists() else json.loads(open(str(metadata_path), "r", encoding="utf-8").read())
|
|
|
|
if not os.path.isdir(f'{root}/{name}/'):
|
|
return
|
|
# tqdm.write(f'{root}/{name}')
|
|
files = os.listdir(f'{root}/{name}/')
|
|
|
|
# grab IDs for every file
|
|
ids = { file.replace(_get_quant_extension(), "").replace(_get_phone_extension(), "") for file in files }
|
|
|
|
for id in tqdm(ids, desc=f"Processing {name}"):
|
|
try:
|
|
audio_exists = os.path.exists(f'{root}/{name}/{id}{_get_quant_extension()}') if audios else True
|
|
text_exists = os.path.exists(f'{root}/{name}/{id}{_get_phone_extension()}') if texts else True
|
|
|
|
if not audio_exists or not text_exists:
|
|
continue
|
|
|
|
key = f'{type}/{name}/{id}'
|
|
|
|
if skip_existing and key in metadata:
|
|
continue
|
|
|
|
if id not in metadata:
|
|
metadata[id] = {}
|
|
|
|
# audio
|
|
if audios:
|
|
if _get_quant_extension() == ".dac":
|
|
dac = np.load(f'{root}/{name}/{id}{_get_quant_extension()}', allow_pickle=True)[()]
|
|
qnt = torch.from_numpy(dac["codes"].astype(int))[0].t().to(dtype=torch.int16)
|
|
|
|
duration = dac["metadata"]["original_length"] / dac["metadata"]["sample_rate"]
|
|
metadata[id]["metadata"] = {
|
|
"original_length": dac["metadata"]["original_length"],
|
|
"sample_rate": dac["metadata"]["sample_rate"],
|
|
}
|
|
else:
|
|
qnt = torch.load(f'{root}/{name}/{id}{_get_quant_extension()}')[0].t()
|
|
duration = qnt.shape[0] / 75
|
|
|
|
metadata[id]["duration"] = duration
|
|
else:
|
|
metadata[id]["duration"] = 0
|
|
|
|
# text
|
|
if texts:
|
|
if _get_phone_extension() == ".json":
|
|
json_metadata = json.loads(open(f'{root}/{name}/{id}{_get_phone_extension()}', "r", encoding="utf-8").read())
|
|
content = json_metadata["phonemes"]
|
|
txt = json_metadata["text"]
|
|
else:
|
|
content = open(f'{root}/{name}/{id}{_get_phone_extension()}', "r", encoding="utf-8").read().split(" ")
|
|
txt = ""
|
|
|
|
phn = cfg.tokenizer.encode("".join(content))
|
|
phn = np.array(phn).astype(np.uint8)
|
|
|
|
metadata[id]["phones"] = len(phn)
|
|
metadata[id]["transcription"] = txt
|
|
except Exception as e:
|
|
#raise e
|
|
print(id, e)
|
|
#pass
|
|
|
|
with open(str(metadata_path), "w", encoding="utf-8") as f:
|
|
f.write( json.dumps( metadata ) )
|
|
|
|
# training
|
|
for data_dir in tqdm(sorted(cfg.dataset.training), desc="Processing Training"):
|
|
add( data_dir, type="training" )
|
|
|
|
# validation
|
|
for data_dir in tqdm(sorted(cfg.dataset.validation), desc='Processing Validation'):
|
|
add( data_dir, type="validation" )
|
|
|
|
# noise
|
|
for data_dir in tqdm(sorted(cfg.dataset.noise), desc='Processing Noise'):
|
|
add( data_dir, type="noise", texts=False )
|
|
|
|
# parse yaml to create an hdf5 file
|
|
def create_dataset_hdf5( skip_existing=True ):
|
|
cfg.dataset.use_hdf5 = True
|
|
cfg.load_hdf5(write=True)
|
|
|
|
symmap = get_phone_symmap()
|
|
|
|
root = str(cfg.data_dir)
|
|
metadata_root = str(cfg.metadata_dir)
|
|
hf = cfg.hdf5
|
|
|
|
cfg.metadata_dir.mkdir(parents=True, exist_ok=True)
|
|
|
|
def add( dir, type="training", audios=True, texts=True ):
|
|
name = str(dir)
|
|
name = name.replace(root, "")
|
|
|
|
metadata_path = Path(f"{metadata_root}/{name}.json")
|
|
|
|
metadata = {} if not metadata_path.exists() else json.loads(open(str(metadata_path), "r", encoding="utf-8").read())
|
|
|
|
if not os.path.isdir(f'{root}/{name}/'):
|
|
return
|
|
# tqdm.write(f'{root}/{name}')
|
|
files = os.listdir(f'{root}/{name}/')
|
|
|
|
# grab IDs for every file
|
|
ids = { file.replace(_get_quant_extension(), "").replace(_get_phone_extension(), "") for file in files }
|
|
|
|
for id in tqdm(ids, desc=f"Processing {name}"):
|
|
try:
|
|
audio_exists = os.path.exists(f'{root}/{name}/{id}{_get_quant_extension()}') if audios else True
|
|
text_exists = os.path.exists(f'{root}/{name}/{id}{_get_phone_extension()}') if texts else True
|
|
|
|
if not audio_exists or not text_exists:
|
|
continue
|
|
|
|
key = f'{type}/{name}/{id}'
|
|
|
|
"""
|
|
if skip_existing and key in hf:
|
|
continue
|
|
"""
|
|
|
|
group = hf.create_group(key) if key not in hf else hf[key]
|
|
|
|
group.attrs['id'] = id
|
|
group.attrs['type'] = type
|
|
group.attrs['speaker'] = name
|
|
|
|
if id not in metadata:
|
|
metadata[id] = {}
|
|
|
|
# audio
|
|
if audios:
|
|
if _get_quant_extension() == ".dac":
|
|
dac = np.load(f'{root}/{name}/{id}{_get_quant_extension()}', allow_pickle=True)[()]
|
|
qnt = torch.from_numpy(dac["codes"].astype(int))[0].t().to(dtype=torch.int16)
|
|
|
|
duration = dac["metadata"]["original_length"] / dac["metadata"]["sample_rate"]
|
|
metadata[id]["metadata"] = {
|
|
"original_length": dac["metadata"]["original_length"],
|
|
"sample_rate": dac["metadata"]["sample_rate"],
|
|
}
|
|
else:
|
|
qnt = torch.load(f'{root}/{name}/{id}{_get_quant_extension()}')[0].t()
|
|
duration = qnt.shape[0] / 75
|
|
|
|
qnt = qnt.numpy().astype(np.int16)
|
|
|
|
if "audio" not in group:
|
|
group.create_dataset('audio', data=qnt, compression='lzf')
|
|
|
|
group.attrs['duration'] = duration
|
|
metadata[id]["duration"] = duration
|
|
else:
|
|
group.attrs['duration'] = 0
|
|
metadata[id]["duration"] = 0
|
|
|
|
# text
|
|
if texts:
|
|
if _get_phone_extension() == ".json":
|
|
json_metadata = json.loads(open(f'{root}/{name}/{id}{_get_phone_extension()}', "r", encoding="utf-8").read())
|
|
content = json_metadata["phonemes"]
|
|
txt = json_metadata["text"]
|
|
else:
|
|
content = open(f'{root}/{name}/{id}{_get_phone_extension()}', "r", encoding="utf-8").read().split(" ")
|
|
txt = ""
|
|
|
|
phn = cfg.tokenizer.encode("".join(content))
|
|
phn = np.array(phn).astype(np.uint8)
|
|
|
|
if "text" not in group:
|
|
group.create_dataset('text', data=phn, compression='lzf')
|
|
|
|
group.attrs['phonemes'] = len(phn)
|
|
group.attrs['transcription'] = txt
|
|
|
|
metadata[id]["phones"] = len(phn)
|
|
metadata[id]["transcription"] = txt
|
|
else:
|
|
group.attrs['phonemes'] = 0
|
|
metadata[id]["phones"] = 0
|
|
except Exception as e:
|
|
#raise e
|
|
print(id, e)
|
|
#pass
|
|
|
|
with open(str(metadata_path), "w", encoding="utf-8") as f:
|
|
f.write( json.dumps( metadata ) )
|
|
|
|
|
|
# training
|
|
for data_dir in tqdm(sorted(cfg.dataset.training), desc="Processing Training"):
|
|
add( data_dir, type="training" )
|
|
|
|
# validation
|
|
for data_dir in tqdm(sorted(cfg.dataset.validation), desc='Processing Validation'):
|
|
add( data_dir, type="validation" )
|
|
|
|
# noise
|
|
for data_dir in tqdm(sorted(cfg.dataset.noise), desc='Processing Noise'):
|
|
add( data_dir, type="noise", texts=False )
|
|
|
|
# write symmap
|
|
if "symmap" in hf:
|
|
del hf['symmap']
|
|
|
|
hf.create_dataset('symmap', data=json.dumps(symmap))
|
|
hf.close()
|
|
|
|
if __name__ == "__main__":
|
|
import argparse
|
|
|
|
parser = argparse.ArgumentParser("Save trained model to path.")
|
|
parser.add_argument("--action", type=str)
|
|
parser.add_argument("--tasks", type=str)
|
|
args = parser.parse_args()
|
|
|
|
task = args.action
|
|
|
|
cfg.dataset.workers = 1
|
|
|
|
class LoggerOveride:
|
|
def info(self, *args):
|
|
print(*args)
|
|
|
|
_logger = LoggerOveride()
|
|
|
|
if args.action == "hdf5":
|
|
create_dataset_hdf5()
|
|
elif args.action == "metadata":
|
|
create_dataset_metadata()
|
|
elif args.action == "sample":
|
|
train_dl, subtrain_dl, val_dl = create_train_val_dataloader()
|
|
|
|
samples = {
|
|
"training": [ next(iter(train_dl)), next(iter(train_dl)) ],
|
|
"evaluation": [ next(iter(subtrain_dl)), next(iter(subtrain_dl)) ],
|
|
"validation": [ next(iter(val_dl)), next(iter(val_dl)) ],
|
|
}
|
|
|
|
for k, v in samples.items():
|
|
for i in range(len(v)):
|
|
del v[i]['proms']
|
|
del v[i]['resps']
|
|
print(f'{k}:', v)
|
|
|
|
train_dl.dataset.save_state_dict(cfg.relpath / "train_dataset.pt")
|
|
|
|
elif args.action == "tasks":
|
|
index = 0
|
|
cfg.dataset.tasks_list = args.tasks.split(",")
|
|
|
|
train_dl, subtrain_dl, val_dl = create_train_val_dataloader()
|
|
batch = next(iter(train_dl))
|
|
|
|
for text, resps, proms, task in zip(batch["text"], batch["resps"], batch["proms"], batch["task"]):
|
|
if task not in cfg.dataset.tasks_list:
|
|
continue
|
|
|
|
print(text, task, cfg.model.prom_levels)
|
|
print( proms.shape, resps.shape )
|
|
|
|
tokens = 0
|
|
tokens += sum([ text.shape[0] for text in batch["text"] ])
|
|
tokens += sum([ resps.shape[0] for resps in batch["resps"] ])
|
|
print( tokens )
|
|
|
|
decode_to_file( proms, f"./data/{task}.proms.wav", device="cpu" )
|
|
decode_to_file( resps, f"./data/{task}.resps.wav", device="cpu" )
|
|
break |