lit_module.py 9.2 KB

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  1. import itertools
  2. from typing import Any, Callable
  3. import lightning as L
  4. import torch
  5. import torch.nn.functional as F
  6. import wandb
  7. from diffusers.schedulers import DDIMScheduler, UniPCMultistepScheduler
  8. from diffusers.utils.torch_utils import randn_tensor
  9. from lightning.pytorch.loggers import TensorBoardLogger, WandbLogger
  10. from matplotlib import pyplot as plt
  11. from torch import nn
  12. from fish_speech.models.vq_diffusion.unet1d import Unet1DDenoiser
  13. from fish_speech.models.vqgan.modules.encoders import (
  14. SpeakerEncoder,
  15. TextEncoder,
  16. VQEncoder,
  17. )
  18. from fish_speech.models.vqgan.utils import plot_mel, sequence_mask
  19. class VQDiffusion(L.LightningModule):
  20. def __init__(
  21. self,
  22. optimizer: Callable,
  23. lr_scheduler: Callable,
  24. mel_transform: nn.Module,
  25. vq_encoder: VQEncoder,
  26. speaker_encoder: SpeakerEncoder,
  27. text_encoder: TextEncoder,
  28. denoiser: Unet1DDenoiser,
  29. vocoder: nn.Module,
  30. hop_length: int = 640,
  31. sample_rate: int = 32000,
  32. ):
  33. super().__init__()
  34. # Model parameters
  35. self.optimizer_builder = optimizer
  36. self.lr_scheduler_builder = lr_scheduler
  37. # Generator and discriminators
  38. self.mel_transform = mel_transform
  39. self.noise_scheduler_train = DDIMScheduler(num_train_timesteps=1000)
  40. self.noise_scheduler_infer = UniPCMultistepScheduler(num_train_timesteps=1000)
  41. # Modules
  42. self.vq_encoder = vq_encoder
  43. self.speaker_encoder = speaker_encoder
  44. self.text_encoder = text_encoder
  45. self.denoiser = denoiser
  46. self.vocoder = vocoder
  47. self.hop_length = hop_length
  48. self.sampling_rate = sample_rate
  49. # Freeze vocoder
  50. for param in self.vocoder.parameters():
  51. param.requires_grad = False
  52. def configure_optimizers(self):
  53. optimizer = self.optimizer_builder(self.parameters())
  54. lr_scheduler = self.lr_scheduler_builder(optimizer)
  55. return {
  56. "optimizer": optimizer,
  57. "lr_scheduler": {
  58. "scheduler": lr_scheduler,
  59. "interval": "step",
  60. },
  61. }
  62. def normalize_mels(self, x):
  63. # x is in range -10.1 to 3.1, normalize to -1 to 1
  64. x_min, x_max = -10.1, 3.1
  65. return (x - x_min) / (x_max - x_min) * 2 - 1
  66. def denormalize_mels(self, x):
  67. x_min, x_max = -10.1, 3.1
  68. return (x + 1) / 2 * (x_max - x_min) + x_min
  69. def training_step(self, batch, batch_idx):
  70. audios, audio_lengths = batch["audios"], batch["audio_lengths"]
  71. features, feature_lengths = batch["features"], batch["feature_lengths"]
  72. audios = audios.float()
  73. features = features.float().mT
  74. audios = audios[:, None, :]
  75. with torch.no_grad():
  76. gt_mels = self.mel_transform(audios)
  77. mel_lengths = audio_lengths // self.hop_length
  78. feature_masks = torch.unsqueeze(
  79. sequence_mask(feature_lengths, features.shape[2]), 1
  80. ).to(gt_mels.dtype)
  81. mel_masks = torch.unsqueeze(sequence_mask(mel_lengths, gt_mels.shape[2]), 1).to(
  82. gt_mels.dtype
  83. )
  84. speaker_features = self.speaker_encoder(gt_mels, mel_masks)
  85. vq_features, vq_loss = self.vq_encoder(features, feature_masks)
  86. # vq_features is 50 hz, need to convert to true mel size
  87. vq_features = F.interpolate(vq_features, size=gt_mels.shape[2], mode="nearest")
  88. text_features = self.text_encoder(vq_features, mel_masks, g=speaker_features)
  89. # Sample noise that we'll add to the images
  90. normalized_gt_mels = self.normalize_mels(gt_mels)
  91. noise = torch.randn_like(normalized_gt_mels)
  92. # Sample a random timestep for each image
  93. timesteps = torch.randint(
  94. 0,
  95. self.noise_scheduler_train.config.num_train_timesteps,
  96. (normalized_gt_mels.shape[0],),
  97. device=normalized_gt_mels.device,
  98. ).long()
  99. # Add noise to the clean images according to the noise magnitude at each timestep
  100. # (this is the forward diffusion process)
  101. noisy_images = self.noise_scheduler_train.add_noise(
  102. normalized_gt_mels, noise, timesteps
  103. )
  104. # Predict
  105. model_output = self.denoiser(noisy_images, timesteps, mel_masks, text_features)
  106. # MSE loss without the mask
  107. noise_loss = ((model_output * mel_masks - noise * mel_masks) ** 2).sum() / (
  108. mel_masks.sum() * gt_mels.shape[1]
  109. )
  110. self.log(
  111. "train/noise_loss",
  112. noise_loss,
  113. on_step=True,
  114. on_epoch=False,
  115. prog_bar=True,
  116. logger=True,
  117. sync_dist=True,
  118. )
  119. self.log(
  120. "train/vq_loss",
  121. vq_loss,
  122. on_step=True,
  123. on_epoch=False,
  124. prog_bar=True,
  125. logger=True,
  126. sync_dist=True,
  127. )
  128. return noise_loss + vq_loss
  129. def validation_step(self, batch: Any, batch_idx: int):
  130. audios, audio_lengths = batch["audios"], batch["audio_lengths"]
  131. features, feature_lengths = batch["features"], batch["feature_lengths"]
  132. audios = audios.float()
  133. features = features.float().mT
  134. audios = audios[:, None, :]
  135. gt_mels = self.mel_transform(audios)
  136. mel_lengths = audio_lengths // self.hop_length
  137. feature_masks = torch.unsqueeze(
  138. sequence_mask(feature_lengths, features.shape[2]), 1
  139. ).to(gt_mels.dtype)
  140. mel_masks = torch.unsqueeze(sequence_mask(mel_lengths, gt_mels.shape[2]), 1).to(
  141. gt_mels.dtype
  142. )
  143. speaker_features = self.speaker_encoder(gt_mels, mel_masks)
  144. vq_features, _ = self.vq_encoder(features, feature_masks)
  145. # vq_features is 50 hz, need to convert to true mel size
  146. vq_features = F.interpolate(vq_features, size=gt_mels.shape[2], mode="nearest")
  147. text_features = self.text_encoder(vq_features, mel_masks, g=speaker_features)
  148. # Begin sampling
  149. sampled_mels = torch.randn_like(gt_mels)
  150. self.noise_scheduler_infer.set_timesteps(100)
  151. for t in self.noise_scheduler_infer.timesteps:
  152. timesteps = torch.tensor([t], device=sampled_mels.device, dtype=torch.long)
  153. # 1. predict noise model_output
  154. model_output = self.denoiser(
  155. sampled_mels, timesteps, mel_masks, text_features
  156. )
  157. # 2. compute previous image: x_t -> x_t-1
  158. sampled_mels = self.noise_scheduler_infer.step(
  159. model_output, t, sampled_mels
  160. ).prev_sample
  161. sampled_mels = self.denormalize_mels(sampled_mels)
  162. with torch.autocast(device_type=sampled_mels.device.type, enabled=False):
  163. # Run vocoder on fp32
  164. fake_audios = self.vocoder.decode(sampled_mels.float())
  165. mel_loss = F.l1_loss(gt_mels, sampled_mels)
  166. self.log(
  167. "val/mel_loss",
  168. mel_loss,
  169. on_step=False,
  170. on_epoch=True,
  171. prog_bar=True,
  172. logger=True,
  173. sync_dist=True,
  174. )
  175. for idx, (
  176. mel,
  177. gen_mel,
  178. audio,
  179. gen_audio,
  180. audio_len,
  181. ) in enumerate(
  182. zip(
  183. gt_mels,
  184. sampled_mels,
  185. audios,
  186. fake_audios,
  187. audio_lengths,
  188. )
  189. ):
  190. mel_len = audio_len // self.hop_length
  191. image_mels = plot_mel(
  192. [
  193. gen_mel[:, :mel_len],
  194. mel[:, :mel_len],
  195. ],
  196. [
  197. "Generated Spectrogram",
  198. "Ground-Truth Spectrogram",
  199. ],
  200. )
  201. if isinstance(self.logger, WandbLogger):
  202. self.logger.experiment.log(
  203. {
  204. "reconstruction_mel": wandb.Image(image_mels, caption="mels"),
  205. "wavs": [
  206. wandb.Audio(
  207. audio[0, :audio_len],
  208. sample_rate=self.sampling_rate,
  209. caption="gt",
  210. ),
  211. wandb.Audio(
  212. gen_audio[0, :audio_len],
  213. sample_rate=self.sampling_rate,
  214. caption="prediction",
  215. ),
  216. ],
  217. },
  218. )
  219. if isinstance(self.logger, TensorBoardLogger):
  220. self.logger.experiment.add_figure(
  221. f"sample-{idx}/mels",
  222. image_mels,
  223. global_step=self.global_step,
  224. )
  225. self.logger.experiment.add_audio(
  226. f"sample-{idx}/wavs/gt",
  227. audio[0, :audio_len],
  228. self.global_step,
  229. sample_rate=self.sampling_rate,
  230. )
  231. self.logger.experiment.add_audio(
  232. f"sample-{idx}/wavs/prediction",
  233. gen_audio[0, :audio_len],
  234. self.global_step,
  235. sample_rate=self.sampling_rate,
  236. )
  237. plt.close(image_mels)