flow_matching.py 9.9 KB

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  1. # Copyright (c) 2024 Alibaba Inc (authors: Xiang Lyu, Zhihao Du)
  2. # 2025 Alibaba Inc (authors: Xiang Lyu, Bofan Zhou)
  3. #
  4. # Licensed under the Apache License, Version 2.0 (the "License");
  5. # you may not use this file except in compliance with the License.
  6. # You may obtain a copy of the License at
  7. #
  8. # http://www.apache.org/licenses/LICENSE-2.0
  9. #
  10. # Unless required by applicable law or agreed to in writing, software
  11. # distributed under the License is distributed on an "AS IS" BASIS,
  12. # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  13. # See the License for the specific language governing permissions and
  14. # limitations under the License.
  15. import threading
  16. import torch
  17. import torch.nn.functional as F
  18. from matcha.models.components.flow_matching import BASECFM
  19. class ConditionalCFM(BASECFM):
  20. def __init__(self, in_channels, cfm_params, n_spks=1, spk_emb_dim=64, estimator: torch.nn.Module = None):
  21. super().__init__(
  22. n_feats=in_channels,
  23. cfm_params=cfm_params,
  24. n_spks=n_spks,
  25. spk_emb_dim=spk_emb_dim,
  26. )
  27. self.t_scheduler = cfm_params.t_scheduler
  28. self.training_cfg_rate = cfm_params.training_cfg_rate
  29. self.inference_cfg_rate = cfm_params.inference_cfg_rate
  30. in_channels = in_channels + (spk_emb_dim if n_spks > 0 else 0)
  31. # Just change the architecture of the estimator here
  32. self.estimator = estimator
  33. self.lock = threading.Lock()
  34. @torch.inference_mode()
  35. def forward(self, mu, mask, n_timesteps, temperature=1.0, spks=None, cond=None, prompt_len=0, cache=torch.zeros(1, 80, 0, 2)):
  36. """Forward diffusion
  37. Args:
  38. mu (torch.Tensor): output of encoder
  39. shape: (batch_size, n_feats, mel_timesteps)
  40. mask (torch.Tensor): output_mask
  41. shape: (batch_size, 1, mel_timesteps)
  42. n_timesteps (int): number of diffusion steps
  43. temperature (float, optional): temperature for scaling noise. Defaults to 1.0.
  44. spks (torch.Tensor, optional): speaker ids. Defaults to None.
  45. shape: (batch_size, spk_emb_dim)
  46. cond: Not used but kept for future purposes
  47. Returns:
  48. sample: generated mel-spectrogram
  49. shape: (batch_size, n_feats, mel_timesteps)
  50. """
  51. z = torch.randn_like(mu).to(mu.device).to(mu.dtype) * temperature
  52. cache_size = cache.shape[2]
  53. # fix prompt and overlap part mu and z
  54. if cache_size != 0:
  55. z[:, :, :cache_size] = cache[:, :, :, 0]
  56. mu[:, :, :cache_size] = cache[:, :, :, 1]
  57. z_cache = torch.concat([z[:, :, :prompt_len], z[:, :, -34:]], dim=2)
  58. mu_cache = torch.concat([mu[:, :, :prompt_len], mu[:, :, -34:]], dim=2)
  59. cache = torch.stack([z_cache, mu_cache], dim=-1)
  60. t_span = torch.linspace(0, 1, n_timesteps + 1, device=mu.device, dtype=mu.dtype)
  61. if self.t_scheduler == 'cosine':
  62. t_span = 1 - torch.cos(t_span * 0.5 * torch.pi)
  63. return self.solve_euler(z, t_span=t_span, mu=mu, mask=mask, spks=spks, cond=cond), cache
  64. def solve_euler(self, x, t_span, mu, mask, spks, cond):
  65. """
  66. Fixed euler solver for ODEs.
  67. Args:
  68. x (torch.Tensor): random noise
  69. t_span (torch.Tensor): n_timesteps interpolated
  70. shape: (n_timesteps + 1,)
  71. mu (torch.Tensor): output of encoder
  72. shape: (batch_size, n_feats, mel_timesteps)
  73. mask (torch.Tensor): output_mask
  74. shape: (batch_size, 1, mel_timesteps)
  75. spks (torch.Tensor, optional): speaker ids. Defaults to None.
  76. shape: (batch_size, spk_emb_dim)
  77. cond: Not used but kept for future purposes
  78. """
  79. t, _, dt = t_span[0], t_span[-1], t_span[1] - t_span[0]
  80. t = t.unsqueeze(dim=0)
  81. # I am storing this because I can later plot it by putting a debugger here and saving it to a file
  82. # Or in future might add like a return_all_steps flag
  83. sol = []
  84. # Do not use concat, it may cause memory format changed and trt infer with wrong results!
  85. x_in = torch.zeros([2, 80, x.size(2)], device=x.device, dtype=x.dtype)
  86. mask_in = torch.zeros([2, 1, x.size(2)], device=x.device, dtype=x.dtype)
  87. mu_in = torch.zeros([2, 80, x.size(2)], device=x.device, dtype=x.dtype)
  88. t_in = torch.zeros([2], device=x.device, dtype=x.dtype)
  89. spks_in = torch.zeros([2, 80], device=x.device, dtype=x.dtype)
  90. cond_in = torch.zeros([2, 80, x.size(2)], device=x.device, dtype=x.dtype)
  91. for step in range(1, len(t_span)):
  92. # Classifier-Free Guidance inference introduced in VoiceBox
  93. x_in[:] = x
  94. mask_in[:] = mask
  95. mu_in[0] = mu
  96. t_in[:] = t.unsqueeze(0)
  97. spks_in[0] = spks
  98. cond_in[0] = cond
  99. dphi_dt = self.forward_estimator(
  100. x_in, mask_in,
  101. mu_in, t_in,
  102. spks_in,
  103. cond_in
  104. )
  105. dphi_dt, cfg_dphi_dt = torch.split(dphi_dt, [x.size(0), x.size(0)], dim=0)
  106. dphi_dt = ((1.0 + self.inference_cfg_rate) * dphi_dt - self.inference_cfg_rate * cfg_dphi_dt)
  107. x = x + dt * dphi_dt
  108. t = t + dt
  109. sol.append(x)
  110. if step < len(t_span) - 1:
  111. dt = t_span[step + 1] - t
  112. return sol[-1].float()
  113. def forward_estimator(self, x, mask, mu, t, spks, cond):
  114. if isinstance(self.estimator, torch.nn.Module):
  115. return self.estimator(x, mask, mu, t, spks, cond)
  116. else:
  117. estimator, trt_engine = self.estimator.acquire_estimator()
  118. estimator.set_input_shape('x', (2, 80, x.size(2)))
  119. estimator.set_input_shape('mask', (2, 1, x.size(2)))
  120. estimator.set_input_shape('mu', (2, 80, x.size(2)))
  121. estimator.set_input_shape('t', (2,))
  122. estimator.set_input_shape('spks', (2, 80))
  123. estimator.set_input_shape('cond', (2, 80, x.size(2)))
  124. data_ptrs = [x.contiguous().data_ptr(),
  125. mask.contiguous().data_ptr(),
  126. mu.contiguous().data_ptr(),
  127. t.contiguous().data_ptr(),
  128. spks.contiguous().data_ptr(),
  129. cond.contiguous().data_ptr(),
  130. x.data_ptr()]
  131. for i, j in enumerate(data_ptrs):
  132. estimator.set_tensor_address(trt_engine.get_tensor_name(i), j)
  133. # run trt engine
  134. assert estimator.execute_async_v3(torch.cuda.current_stream().cuda_stream) is True
  135. torch.cuda.current_stream().synchronize()
  136. self.estimator.release_estimator(estimator)
  137. return x
  138. def compute_loss(self, x1, mask, mu, spks=None, cond=None, streaming=False):
  139. """Computes diffusion loss
  140. Args:
  141. x1 (torch.Tensor): Target
  142. shape: (batch_size, n_feats, mel_timesteps)
  143. mask (torch.Tensor): target mask
  144. shape: (batch_size, 1, mel_timesteps)
  145. mu (torch.Tensor): output of encoder
  146. shape: (batch_size, n_feats, mel_timesteps)
  147. spks (torch.Tensor, optional): speaker embedding. Defaults to None.
  148. shape: (batch_size, spk_emb_dim)
  149. Returns:
  150. loss: conditional flow matching loss
  151. y: conditional flow
  152. shape: (batch_size, n_feats, mel_timesteps)
  153. """
  154. b, _, t = mu.shape
  155. # random timestep
  156. t = torch.rand([b, 1, 1], device=mu.device, dtype=mu.dtype)
  157. if self.t_scheduler == 'cosine':
  158. t = 1 - torch.cos(t * 0.5 * torch.pi)
  159. # sample noise p(x_0)
  160. z = torch.randn_like(x1)
  161. y = (1 - (1 - self.sigma_min) * t) * z + t * x1
  162. u = x1 - (1 - self.sigma_min) * z
  163. # during training, we randomly drop condition to trade off mode coverage and sample fidelity
  164. if self.training_cfg_rate > 0:
  165. cfg_mask = torch.rand(b, device=x1.device) > self.training_cfg_rate
  166. mu = mu * cfg_mask.view(-1, 1, 1)
  167. spks = spks * cfg_mask.view(-1, 1)
  168. cond = cond * cfg_mask.view(-1, 1, 1)
  169. pred = self.estimator(y, mask, mu, t.squeeze(), spks, cond, streaming=streaming)
  170. loss = F.mse_loss(pred * mask, u * mask, reduction="sum") / (torch.sum(mask) * u.shape[1])
  171. return loss, y
  172. class CausalConditionalCFM(ConditionalCFM):
  173. def __init__(self, in_channels, cfm_params, n_spks=1, spk_emb_dim=64, estimator: torch.nn.Module = None):
  174. super().__init__(in_channels, cfm_params, n_spks, spk_emb_dim, estimator)
  175. self.rand_noise = torch.randn([1, 80, 50 * 300])
  176. @torch.inference_mode()
  177. def forward(self, mu, mask, n_timesteps, temperature=1.0, spks=None, cond=None):
  178. """Forward diffusion
  179. Args:
  180. mu (torch.Tensor): output of encoder
  181. shape: (batch_size, n_feats, mel_timesteps)
  182. mask (torch.Tensor): output_mask
  183. shape: (batch_size, 1, mel_timesteps)
  184. n_timesteps (int): number of diffusion steps
  185. temperature (float, optional): temperature for scaling noise. Defaults to 1.0.
  186. spks (torch.Tensor, optional): speaker ids. Defaults to None.
  187. shape: (batch_size, spk_emb_dim)
  188. cond: Not used but kept for future purposes
  189. Returns:
  190. sample: generated mel-spectrogram
  191. shape: (batch_size, n_feats, mel_timesteps)
  192. """
  193. z = self.rand_noise[:, :, :mu.size(2)].to(mu.device).to(mu.dtype) * temperature
  194. # fix prompt and overlap part mu and z
  195. t_span = torch.linspace(0, 1, n_timesteps + 1, device=mu.device, dtype=mu.dtype)
  196. if self.t_scheduler == 'cosine':
  197. t_span = 1 - torch.cos(t_span * 0.5 * torch.pi)
  198. return self.solve_euler(z, t_span=t_span, mu=mu, mask=mask, spks=spks, cond=cond), None