| import sys |
| import time |
| from dataclasses import dataclass, field |
| from typing import Dict, List, Tuple |
|
|
| import numpy as np |
| import torch |
| import torch.nn.functional as F |
| from coqpit import Coqpit |
| from torch import nn |
| from torch.utils.data import DataLoader |
| from torch.utils.data.distributed import DistributedSampler |
|
|
| from TTS.tts.utils.visual import plot_spectrogram |
| from TTS.utils.audio import AudioProcessor |
| from TTS.utils.io import load_fsspec |
| from TTS.vocoder.datasets.wavernn_dataset import WaveRNNDataset |
| from TTS.vocoder.layers.losses import WaveRNNLoss |
| from TTS.vocoder.models.base_vocoder import BaseVocoder |
| from TTS.vocoder.utils.distribution import sample_from_discretized_mix_logistic, sample_from_gaussian |
|
|
|
|
| def stream(string, variables): |
| sys.stdout.write(f"\r{string}" % variables) |
|
|
|
|
| |
| |
| class ResBlock(nn.Module): |
| def __init__(self, dims): |
| super().__init__() |
| self.conv1 = nn.Conv1d(dims, dims, kernel_size=1, bias=False) |
| self.conv2 = nn.Conv1d(dims, dims, kernel_size=1, bias=False) |
| self.batch_norm1 = nn.BatchNorm1d(dims) |
| self.batch_norm2 = nn.BatchNorm1d(dims) |
|
|
| def forward(self, x): |
| residual = x |
| x = self.conv1(x) |
| x = self.batch_norm1(x) |
| x = F.relu(x) |
| x = self.conv2(x) |
| x = self.batch_norm2(x) |
| return x + residual |
|
|
|
|
| class MelResNet(nn.Module): |
| def __init__(self, num_res_blocks, in_dims, compute_dims, res_out_dims, pad): |
| super().__init__() |
| k_size = pad * 2 + 1 |
| self.conv_in = nn.Conv1d(in_dims, compute_dims, kernel_size=k_size, bias=False) |
| self.batch_norm = nn.BatchNorm1d(compute_dims) |
| self.layers = nn.ModuleList() |
| for _ in range(num_res_blocks): |
| self.layers.append(ResBlock(compute_dims)) |
| self.conv_out = nn.Conv1d(compute_dims, res_out_dims, kernel_size=1) |
|
|
| def forward(self, x): |
| x = self.conv_in(x) |
| x = self.batch_norm(x) |
| x = F.relu(x) |
| for f in self.layers: |
| x = f(x) |
| x = self.conv_out(x) |
| return x |
|
|
|
|
| class Stretch2d(nn.Module): |
| def __init__(self, x_scale, y_scale): |
| super().__init__() |
| self.x_scale = x_scale |
| self.y_scale = y_scale |
|
|
| def forward(self, x): |
| b, c, h, w = x.size() |
| x = x.unsqueeze(-1).unsqueeze(3) |
| x = x.repeat(1, 1, 1, self.y_scale, 1, self.x_scale) |
| return x.view(b, c, h * self.y_scale, w * self.x_scale) |
|
|
|
|
| class UpsampleNetwork(nn.Module): |
| def __init__( |
| self, |
| feat_dims, |
| upsample_scales, |
| compute_dims, |
| num_res_blocks, |
| res_out_dims, |
| pad, |
| use_aux_net, |
| ): |
| super().__init__() |
| self.total_scale = np.cumproduct(upsample_scales)[-1] |
| self.indent = pad * self.total_scale |
| self.use_aux_net = use_aux_net |
| if use_aux_net: |
| self.resnet = MelResNet(num_res_blocks, feat_dims, compute_dims, res_out_dims, pad) |
| self.resnet_stretch = Stretch2d(self.total_scale, 1) |
| self.up_layers = nn.ModuleList() |
| for scale in upsample_scales: |
| k_size = (1, scale * 2 + 1) |
| padding = (0, scale) |
| stretch = Stretch2d(scale, 1) |
| conv = nn.Conv2d(1, 1, kernel_size=k_size, padding=padding, bias=False) |
| conv.weight.data.fill_(1.0 / k_size[1]) |
| self.up_layers.append(stretch) |
| self.up_layers.append(conv) |
|
|
| def forward(self, m): |
| if self.use_aux_net: |
| aux = self.resnet(m).unsqueeze(1) |
| aux = self.resnet_stretch(aux) |
| aux = aux.squeeze(1) |
| aux = aux.transpose(1, 2) |
| else: |
| aux = None |
| m = m.unsqueeze(1) |
| for f in self.up_layers: |
| m = f(m) |
| m = m.squeeze(1)[:, :, self.indent : -self.indent] |
| return m.transpose(1, 2), aux |
|
|
|
|
| class Upsample(nn.Module): |
| def __init__(self, scale, pad, num_res_blocks, feat_dims, compute_dims, res_out_dims, use_aux_net): |
| super().__init__() |
| self.scale = scale |
| self.pad = pad |
| self.indent = pad * scale |
| self.use_aux_net = use_aux_net |
| self.resnet = MelResNet(num_res_blocks, feat_dims, compute_dims, res_out_dims, pad) |
|
|
| def forward(self, m): |
| if self.use_aux_net: |
| aux = self.resnet(m) |
| aux = torch.nn.functional.interpolate(aux, scale_factor=self.scale, mode="linear", align_corners=True) |
| aux = aux.transpose(1, 2) |
| else: |
| aux = None |
| m = torch.nn.functional.interpolate(m, scale_factor=self.scale, mode="linear", align_corners=True) |
| m = m[:, :, self.indent : -self.indent] |
| m = m * 0.045 |
|
|
| return m.transpose(1, 2), aux |
|
|
|
|
| @dataclass |
| class WavernnArgs(Coqpit): |
| """🐸 WaveRNN model arguments. |
| |
| rnn_dims (int): |
| Number of hidden channels in RNN layers. Defaults to 512. |
| fc_dims (int): |
| Number of hidden channels in fully-conntected layers. Defaults to 512. |
| compute_dims (int): |
| Number of hidden channels in the feature ResNet. Defaults to 128. |
| res_out_dim (int): |
| Number of hidden channels in the feature ResNet output. Defaults to 128. |
| num_res_blocks (int): |
| Number of residual blocks in the ResNet. Defaults to 10. |
| use_aux_net (bool): |
| enable/disable the feature ResNet. Defaults to True. |
| use_upsample_net (bool): |
| enable/ disable the upsampling networl. If False, basic upsampling is used. Defaults to True. |
| upsample_factors (list): |
| Upsampling factors. The multiply of the values must match the `hop_length`. Defaults to ```[4, 8, 8]```. |
| mode (str): |
| Output mode of the WaveRNN vocoder. `mold` for Mixture of Logistic Distribution, `gauss` for a single |
| Gaussian Distribution and `bits` for quantized bits as the model's output. |
| mulaw (bool): |
| enable / disable the use of Mulaw quantization for training. Only applicable if `mode == 'bits'`. Defaults |
| to `True`. |
| pad (int): |
| Padding applied to the input feature frames against the convolution layers of the feature network. |
| Defaults to 2. |
| """ |
|
|
| rnn_dims: int = 512 |
| fc_dims: int = 512 |
| compute_dims: int = 128 |
| res_out_dims: int = 128 |
| num_res_blocks: int = 10 |
| use_aux_net: bool = True |
| use_upsample_net: bool = True |
| upsample_factors: List[int] = field(default_factory=lambda: [4, 8, 8]) |
| mode: str = "mold" |
| mulaw: bool = True |
| pad: int = 2 |
| feat_dims: int = 80 |
|
|
|
|
| class Wavernn(BaseVocoder): |
| def __init__(self, config: Coqpit): |
| """🐸 WaveRNN model. |
| Original paper - https://arxiv.org/abs/1802.08435 |
| Official implementation - https://github.com/fatchord/WaveRNN |
| |
| Args: |
| config (Coqpit): [description] |
| |
| Raises: |
| RuntimeError: [description] |
| |
| Examples: |
| >>> from TTS.vocoder.configs import WavernnConfig |
| >>> config = WavernnConfig() |
| >>> model = Wavernn(config) |
| |
| Paper Abstract: |
| Sequential models achieve state-of-the-art results in audio, visual and textual domains with respect to |
| both estimating the data distribution and generating high-quality samples. Efficient sampling for this |
| class of models has however remained an elusive problem. With a focus on text-to-speech synthesis, we |
| describe a set of general techniques for reducing sampling time while maintaining high output quality. |
| We first describe a single-layer recurrent neural network, the WaveRNN, with a dual softmax layer that |
| matches the quality of the state-of-the-art WaveNet model. The compact form of the network makes it |
| possible to generate 24kHz 16-bit audio 4x faster than real time on a GPU. Second, we apply a weight |
| pruning technique to reduce the number of weights in the WaveRNN. We find that, for a constant number of |
| parameters, large sparse networks perform better than small dense networks and this relationship holds for |
| sparsity levels beyond 96%. The small number of weights in a Sparse WaveRNN makes it possible to sample |
| high-fidelity audio on a mobile CPU in real time. Finally, we propose a new generation scheme based on |
| subscaling that folds a long sequence into a batch of shorter sequences and allows one to generate multiple |
| samples at once. The Subscale WaveRNN produces 16 samples per step without loss of quality and offers an |
| orthogonal method for increasing sampling efficiency. |
| """ |
| super().__init__(config) |
|
|
| if isinstance(self.args.mode, int): |
| self.n_classes = 2**self.args.mode |
| elif self.args.mode == "mold": |
| self.n_classes = 3 * 10 |
| elif self.args.mode == "gauss": |
| self.n_classes = 2 |
| else: |
| raise RuntimeError("Unknown model mode value - ", self.args.mode) |
|
|
| self.ap = AudioProcessor(**config.audio.to_dict()) |
| self.aux_dims = self.args.res_out_dims // 4 |
|
|
| if self.args.use_upsample_net: |
| assert ( |
| np.cumproduct(self.args.upsample_factors)[-1] == config.audio.hop_length |
| ), " [!] upsample scales needs to be equal to hop_length" |
| self.upsample = UpsampleNetwork( |
| self.args.feat_dims, |
| self.args.upsample_factors, |
| self.args.compute_dims, |
| self.args.num_res_blocks, |
| self.args.res_out_dims, |
| self.args.pad, |
| self.args.use_aux_net, |
| ) |
| else: |
| self.upsample = Upsample( |
| config.audio.hop_length, |
| self.args.pad, |
| self.args.num_res_blocks, |
| self.args.feat_dims, |
| self.args.compute_dims, |
| self.args.res_out_dims, |
| self.args.use_aux_net, |
| ) |
| if self.args.use_aux_net: |
| self.I = nn.Linear(self.args.feat_dims + self.aux_dims + 1, self.args.rnn_dims) |
| self.rnn1 = nn.GRU(self.args.rnn_dims, self.args.rnn_dims, batch_first=True) |
| self.rnn2 = nn.GRU(self.args.rnn_dims + self.aux_dims, self.args.rnn_dims, batch_first=True) |
| self.fc1 = nn.Linear(self.args.rnn_dims + self.aux_dims, self.args.fc_dims) |
| self.fc2 = nn.Linear(self.args.fc_dims + self.aux_dims, self.args.fc_dims) |
| self.fc3 = nn.Linear(self.args.fc_dims, self.n_classes) |
| else: |
| self.I = nn.Linear(self.args.feat_dims + 1, self.args.rnn_dims) |
| self.rnn1 = nn.GRU(self.args.rnn_dims, self.args.rnn_dims, batch_first=True) |
| self.rnn2 = nn.GRU(self.args.rnn_dims, self.args.rnn_dims, batch_first=True) |
| self.fc1 = nn.Linear(self.args.rnn_dims, self.args.fc_dims) |
| self.fc2 = nn.Linear(self.args.fc_dims, self.args.fc_dims) |
| self.fc3 = nn.Linear(self.args.fc_dims, self.n_classes) |
|
|
| def forward(self, x, mels): |
| bsize = x.size(0) |
| h1 = torch.zeros(1, bsize, self.args.rnn_dims).to(x.device) |
| h2 = torch.zeros(1, bsize, self.args.rnn_dims).to(x.device) |
| mels, aux = self.upsample(mels) |
|
|
| if self.args.use_aux_net: |
| aux_idx = [self.aux_dims * i for i in range(5)] |
| a1 = aux[:, :, aux_idx[0] : aux_idx[1]] |
| a2 = aux[:, :, aux_idx[1] : aux_idx[2]] |
| a3 = aux[:, :, aux_idx[2] : aux_idx[3]] |
| a4 = aux[:, :, aux_idx[3] : aux_idx[4]] |
|
|
| x = ( |
| torch.cat([x.unsqueeze(-1), mels, a1], dim=2) |
| if self.args.use_aux_net |
| else torch.cat([x.unsqueeze(-1), mels], dim=2) |
| ) |
| x = self.I(x) |
| res = x |
| self.rnn1.flatten_parameters() |
| x, _ = self.rnn1(x, h1) |
|
|
| x = x + res |
| res = x |
| x = torch.cat([x, a2], dim=2) if self.args.use_aux_net else x |
| self.rnn2.flatten_parameters() |
| x, _ = self.rnn2(x, h2) |
|
|
| x = x + res |
| x = torch.cat([x, a3], dim=2) if self.args.use_aux_net else x |
| x = F.relu(self.fc1(x)) |
|
|
| x = torch.cat([x, a4], dim=2) if self.args.use_aux_net else x |
| x = F.relu(self.fc2(x)) |
| return self.fc3(x) |
|
|
| def inference(self, mels, batched=None, target=None, overlap=None): |
| self.eval() |
| output = [] |
| start = time.time() |
| rnn1 = self.get_gru_cell(self.rnn1) |
| rnn2 = self.get_gru_cell(self.rnn2) |
|
|
| with torch.no_grad(): |
| if isinstance(mels, np.ndarray): |
| mels = torch.FloatTensor(mels).to(str(next(self.parameters()).device)) |
|
|
| if mels.ndim == 2: |
| mels = mels.unsqueeze(0) |
| wave_len = (mels.size(-1) - 1) * self.config.audio.hop_length |
|
|
| mels = self.pad_tensor(mels.transpose(1, 2), pad=self.args.pad, side="both") |
| mels, aux = self.upsample(mels.transpose(1, 2)) |
|
|
| if batched: |
| mels = self.fold_with_overlap(mels, target, overlap) |
| if aux is not None: |
| aux = self.fold_with_overlap(aux, target, overlap) |
|
|
| b_size, seq_len, _ = mels.size() |
|
|
| h1 = torch.zeros(b_size, self.args.rnn_dims).type_as(mels) |
| h2 = torch.zeros(b_size, self.args.rnn_dims).type_as(mels) |
| x = torch.zeros(b_size, 1).type_as(mels) |
|
|
| if self.args.use_aux_net: |
| d = self.aux_dims |
| aux_split = [aux[:, :, d * i : d * (i + 1)] for i in range(4)] |
|
|
| for i in range(seq_len): |
| m_t = mels[:, i, :] |
|
|
| if self.args.use_aux_net: |
| a1_t, a2_t, a3_t, a4_t = (a[:, i, :] for a in aux_split) |
|
|
| x = torch.cat([x, m_t, a1_t], dim=1) if self.args.use_aux_net else torch.cat([x, m_t], dim=1) |
| x = self.I(x) |
| h1 = rnn1(x, h1) |
|
|
| x = x + h1 |
| inp = torch.cat([x, a2_t], dim=1) if self.args.use_aux_net else x |
| h2 = rnn2(inp, h2) |
|
|
| x = x + h2 |
| x = torch.cat([x, a3_t], dim=1) if self.args.use_aux_net else x |
| x = F.relu(self.fc1(x)) |
|
|
| x = torch.cat([x, a4_t], dim=1) if self.args.use_aux_net else x |
| x = F.relu(self.fc2(x)) |
|
|
| logits = self.fc3(x) |
|
|
| if self.args.mode == "mold": |
| sample = sample_from_discretized_mix_logistic(logits.unsqueeze(0).transpose(1, 2)) |
| output.append(sample.view(-1)) |
| x = sample.transpose(0, 1).type_as(mels) |
| elif self.args.mode == "gauss": |
| sample = sample_from_gaussian(logits.unsqueeze(0).transpose(1, 2)) |
| output.append(sample.view(-1)) |
| x = sample.transpose(0, 1).type_as(mels) |
| elif isinstance(self.args.mode, int): |
| posterior = F.softmax(logits, dim=1) |
| distrib = torch.distributions.Categorical(posterior) |
|
|
| sample = 2 * distrib.sample().float() / (self.n_classes - 1.0) - 1.0 |
| output.append(sample) |
| x = sample.unsqueeze(-1) |
| else: |
| raise RuntimeError("Unknown model mode value - ", self.args.mode) |
|
|
| if i % 100 == 0: |
| self.gen_display(i, seq_len, b_size, start) |
|
|
| output = torch.stack(output).transpose(0, 1) |
| output = output.cpu() |
| if batched: |
| output = output.numpy() |
| output = output.astype(np.float64) |
|
|
| output = self.xfade_and_unfold(output, target, overlap) |
| else: |
| output = output[0] |
|
|
| if self.args.mulaw and isinstance(self.args.mode, int): |
| output = AudioProcessor.mulaw_decode(output, self.args.mode) |
|
|
| |
| fade_out = np.linspace(1, 0, 20 * self.config.audio.hop_length) |
| output = output[:wave_len] |
|
|
| if wave_len > len(fade_out): |
| output[-20 * self.config.audio.hop_length :] *= fade_out |
|
|
| self.train() |
| return output |
|
|
| def gen_display(self, i, seq_len, b_size, start): |
| gen_rate = (i + 1) / (time.time() - start) * b_size / 1000 |
| realtime_ratio = gen_rate * 1000 / self.config.audio.sample_rate |
| stream( |
| "%i/%i -- batch_size: %i -- gen_rate: %.1f kHz -- x_realtime: %.1f ", |
| (i * b_size, seq_len * b_size, b_size, gen_rate, realtime_ratio), |
| ) |
|
|
| def fold_with_overlap(self, x, target, overlap): |
| """Fold the tensor with overlap for quick batched inference. |
| Overlap will be used for crossfading in xfade_and_unfold() |
| Args: |
| x (tensor) : Upsampled conditioning features. |
| shape=(1, timesteps, features) |
| target (int) : Target timesteps for each index of batch |
| overlap (int) : Timesteps for both xfade and rnn warmup |
| Return: |
| (tensor) : shape=(num_folds, target + 2 * overlap, features) |
| Details: |
| x = [[h1, h2, ... hn]] |
| Where each h is a vector of conditioning features |
| Eg: target=2, overlap=1 with x.size(1)=10 |
| folded = [[h1, h2, h3, h4], |
| [h4, h5, h6, h7], |
| [h7, h8, h9, h10]] |
| """ |
|
|
| _, total_len, features = x.size() |
|
|
| |
| num_folds = (total_len - overlap) // (target + overlap) |
| extended_len = num_folds * (overlap + target) + overlap |
| remaining = total_len - extended_len |
|
|
| |
| if remaining != 0: |
| num_folds += 1 |
| padding = target + 2 * overlap - remaining |
| x = self.pad_tensor(x, padding, side="after") |
|
|
| folded = torch.zeros(num_folds, target + 2 * overlap, features).to(x.device) |
|
|
| |
| for i in range(num_folds): |
| start = i * (target + overlap) |
| end = start + target + 2 * overlap |
| folded[i] = x[:, start:end, :] |
|
|
| return folded |
|
|
| @staticmethod |
| def get_gru_cell(gru): |
| gru_cell = nn.GRUCell(gru.input_size, gru.hidden_size) |
| gru_cell.weight_hh.data = gru.weight_hh_l0.data |
| gru_cell.weight_ih.data = gru.weight_ih_l0.data |
| gru_cell.bias_hh.data = gru.bias_hh_l0.data |
| gru_cell.bias_ih.data = gru.bias_ih_l0.data |
| return gru_cell |
|
|
| @staticmethod |
| def pad_tensor(x, pad, side="both"): |
| |
| |
| b, t, c = x.size() |
| total = t + 2 * pad if side == "both" else t + pad |
| padded = torch.zeros(b, total, c).to(x.device) |
| if side in ("before", "both"): |
| padded[:, pad : pad + t, :] = x |
| elif side == "after": |
| padded[:, :t, :] = x |
| return padded |
|
|
| @staticmethod |
| def xfade_and_unfold(y, target, overlap): |
| """Applies a crossfade and unfolds into a 1d array. |
| Args: |
| y (ndarry) : Batched sequences of audio samples |
| shape=(num_folds, target + 2 * overlap) |
| dtype=np.float64 |
| overlap (int) : Timesteps for both xfade and rnn warmup |
| Return: |
| (ndarry) : audio samples in a 1d array |
| shape=(total_len) |
| dtype=np.float64 |
| Details: |
| y = [[seq1], |
| [seq2], |
| [seq3]] |
| Apply a gain envelope at both ends of the sequences |
| y = [[seq1_in, seq1_target, seq1_out], |
| [seq2_in, seq2_target, seq2_out], |
| [seq3_in, seq3_target, seq3_out]] |
| Stagger and add up the groups of samples: |
| [seq1_in, seq1_target, (seq1_out + seq2_in), seq2_target, ...] |
| """ |
|
|
| num_folds, length = y.shape |
| target = length - 2 * overlap |
| total_len = num_folds * (target + overlap) + overlap |
|
|
| |
| silence_len = overlap // 2 |
| fade_len = overlap - silence_len |
| silence = np.zeros((silence_len), dtype=np.float64) |
|
|
| |
| t = np.linspace(-1, 1, fade_len, dtype=np.float64) |
| fade_in = np.sqrt(0.5 * (1 + t)) |
| fade_out = np.sqrt(0.5 * (1 - t)) |
|
|
| |
| fade_in = np.concatenate([silence, fade_in]) |
| fade_out = np.concatenate([fade_out, silence]) |
|
|
| |
| y[:, :overlap] *= fade_in |
| y[:, -overlap:] *= fade_out |
|
|
| unfolded = np.zeros((total_len), dtype=np.float64) |
|
|
| |
| for i in range(num_folds): |
| start = i * (target + overlap) |
| end = start + target + 2 * overlap |
| unfolded[start:end] += y[i] |
|
|
| return unfolded |
|
|
| def load_checkpoint( |
| self, config, checkpoint_path, eval=False, cache=False |
| ): |
| state = load_fsspec(checkpoint_path, map_location=torch.device("cpu"), cache=cache) |
| self.load_state_dict(state["model"]) |
| if eval: |
| self.eval() |
| assert not self.training |
|
|
| def train_step(self, batch: Dict, criterion: Dict) -> Tuple[Dict, Dict]: |
| mels = batch["input"] |
| waveform = batch["waveform"] |
| waveform_coarse = batch["waveform_coarse"] |
|
|
| y_hat = self.forward(waveform, mels) |
| if isinstance(self.args.mode, int): |
| y_hat = y_hat.transpose(1, 2).unsqueeze(-1) |
| else: |
| waveform_coarse = waveform_coarse.float() |
| waveform_coarse = waveform_coarse.unsqueeze(-1) |
| |
| loss_dict = criterion(y_hat, waveform_coarse) |
| return {"model_output": y_hat}, loss_dict |
|
|
| def eval_step(self, batch: Dict, criterion: Dict) -> Tuple[Dict, Dict]: |
| return self.train_step(batch, criterion) |
|
|
| @torch.no_grad() |
| def test( |
| self, assets: Dict, test_loader: "DataLoader", output: Dict |
| ) -> Tuple[Dict, Dict]: |
| ap = self.ap |
| figures = {} |
| audios = {} |
| samples = test_loader.dataset.load_test_samples(1) |
| for idx, sample in enumerate(samples): |
| x = torch.FloatTensor(sample[0]) |
| x = x.to(next(self.parameters()).device) |
| y_hat = self.inference(x, self.config.batched, self.config.target_samples, self.config.overlap_samples) |
| x_hat = ap.melspectrogram(y_hat) |
| figures.update( |
| { |
| f"test_{idx}/ground_truth": plot_spectrogram(x.T), |
| f"test_{idx}/prediction": plot_spectrogram(x_hat.T), |
| } |
| ) |
| audios.update({f"test_{idx}/audio": y_hat}) |
| |
| return figures, audios |
|
|
| def test_log( |
| self, outputs: Dict, logger: "Logger", assets: Dict, steps: int |
| ) -> Tuple[Dict, np.ndarray]: |
| figures, audios = outputs |
| logger.eval_figures(steps, figures) |
| logger.eval_audios(steps, audios, self.ap.sample_rate) |
|
|
| @staticmethod |
| def format_batch(batch: Dict) -> Dict: |
| waveform = batch[0] |
| mels = batch[1] |
| waveform_coarse = batch[2] |
| return {"input": mels, "waveform": waveform, "waveform_coarse": waveform_coarse} |
|
|
| def get_data_loader( |
| self, |
| config: Coqpit, |
| assets: Dict, |
| is_eval: True, |
| samples: List, |
| verbose: bool, |
| num_gpus: int, |
| ): |
| ap = self.ap |
| dataset = WaveRNNDataset( |
| ap=ap, |
| items=samples, |
| seq_len=config.seq_len, |
| hop_len=ap.hop_length, |
| pad=config.model_args.pad, |
| mode=config.model_args.mode, |
| mulaw=config.model_args.mulaw, |
| is_training=not is_eval, |
| verbose=verbose, |
| ) |
| sampler = DistributedSampler(dataset, shuffle=True) if num_gpus > 1 else None |
| loader = DataLoader( |
| dataset, |
| batch_size=1 if is_eval else config.batch_size, |
| shuffle=num_gpus == 0, |
| collate_fn=dataset.collate, |
| sampler=sampler, |
| num_workers=config.num_eval_loader_workers if is_eval else config.num_loader_workers, |
| pin_memory=True, |
| ) |
| return loader |
|
|
| def get_criterion(self): |
| |
| return WaveRNNLoss(self.args.mode) |
|
|
| @staticmethod |
| def init_from_config(config: "WavernnConfig"): |
| return Wavernn(config) |
|
|