feat: Integrate IndexTTS2 model and update related schemas and frontend components
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# Copyright (c) 2023 Amphion.
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#
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# This source code is licensed under the MIT license found in the
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# LICENSE file in the root directory of this source tree.
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import math
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import random
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from torch.utils.data import ConcatDataset, Dataset
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from torch.utils.data.sampler import (
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BatchSampler,
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RandomSampler,
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Sampler,
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SequentialSampler,
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)
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class ScheduledSampler(Sampler):
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"""A sampler that samples data from a given concat-dataset.
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Args:
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concat_dataset (ConcatDataset): a concatenated dataset consisting of all datasets
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batch_size (int): batch size
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holistic_shuffle (bool): whether to shuffle the whole dataset or not
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logger (logging.Logger): logger to print warning message
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Usage:
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For cfg.train.batch_size = 3, cfg.train.holistic_shuffle = False, cfg.train.drop_last = True:
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>>> list(ScheduledSampler(ConcatDataset([0, 1, 2], [3, 4, 5], [6, 7, 8]])))
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[3, 4, 5, 0, 1, 2, 6, 7, 8]
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"""
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def __init__(
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self, concat_dataset, batch_size, holistic_shuffle, logger=None, type="train"
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):
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if not isinstance(concat_dataset, ConcatDataset):
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raise ValueError(
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"concat_dataset must be an instance of ConcatDataset, but got {}".format(
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type(concat_dataset)
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)
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)
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if not isinstance(batch_size, int):
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raise ValueError(
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"batch_size must be an integer, but got {}".format(type(batch_size))
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)
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if not isinstance(holistic_shuffle, bool):
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raise ValueError(
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"holistic_shuffle must be a boolean, but got {}".format(
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type(holistic_shuffle)
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)
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)
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self.concat_dataset = concat_dataset
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self.batch_size = batch_size
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self.holistic_shuffle = holistic_shuffle
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affected_dataset_name = []
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affected_dataset_len = []
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for dataset in concat_dataset.datasets:
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dataset_len = len(dataset)
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dataset_name = dataset.get_dataset_name()
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if dataset_len < batch_size:
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affected_dataset_name.append(dataset_name)
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affected_dataset_len.append(dataset_len)
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self.type = type
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for dataset_name, dataset_len in zip(
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affected_dataset_name, affected_dataset_len
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):
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if not type == "valid":
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logger.warning(
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"The {} dataset {} has a length of {}, which is smaller than the batch size {}. This may cause unexpected behavior.".format(
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type, dataset_name, dataset_len, batch_size
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)
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)
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def __len__(self):
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# the number of batches with drop last
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num_of_batches = sum(
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[
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math.floor(len(dataset) / self.batch_size)
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for dataset in self.concat_dataset.datasets
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]
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)
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return num_of_batches * self.batch_size
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def __iter__(self):
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iters = []
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for dataset in self.concat_dataset.datasets:
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iters.append(
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SequentialSampler(dataset).__iter__()
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if self.holistic_shuffle
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else RandomSampler(dataset).__iter__()
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)
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init_indices = [0] + self.concat_dataset.cumulative_sizes[:-1]
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output_batches = []
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for dataset_idx in range(len(self.concat_dataset.datasets)):
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cur_batch = []
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for idx in iters[dataset_idx]:
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cur_batch.append(idx + init_indices[dataset_idx])
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if len(cur_batch) == self.batch_size:
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output_batches.append(cur_batch)
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cur_batch = []
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if self.type == "valid" and len(cur_batch) > 0:
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output_batches.append(cur_batch)
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cur_batch = []
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# force drop last in training
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random.shuffle(output_batches)
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output_indices = [item for sublist in output_batches for item in sublist]
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return iter(output_indices)
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def build_samplers(concat_dataset: Dataset, cfg, logger, type):
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sampler = ScheduledSampler(
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concat_dataset,
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cfg.train.batch_size,
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cfg.train.sampler.holistic_shuffle,
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logger,
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type,
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)
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batch_sampler = BatchSampler(
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sampler,
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cfg.train.batch_size,
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cfg.train.sampler.drop_last if not type == "valid" else False,
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)
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return sampler, batch_sampler
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