334 lines
15 KiB
Python
334 lines
15 KiB
Python
import math
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import random
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from abc import abstractmethod
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import torch
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import torch.nn as nn
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import torch.nn.functional as F
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from torch import autocast
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from tortoise.models.arch_util import normalization, AttentionBlock
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def is_latent(t):
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return t.dtype == torch.float
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def is_sequence(t):
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return t.dtype == torch.long
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def timestep_embedding(timesteps, dim, max_period=10000):
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"""
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Create sinusoidal timestep embeddings.
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:param timesteps: a 1-D Tensor of N indices, one per batch element.
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These may be fractional.
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:param dim: the dimension of the output.
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:param max_period: controls the minimum frequency of the embeddings.
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:return: an [N x dim] Tensor of positional embeddings.
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"""
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half = dim // 2
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freqs = torch.exp(
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-math.log(max_period) * torch.arange(start=0, end=half, dtype=torch.float32) / half
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).to(device=timesteps.device)
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args = timesteps[:, None].float() * freqs[None]
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embedding = torch.cat([torch.cos(args), torch.sin(args)], dim=-1)
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if dim % 2:
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embedding = torch.cat([embedding, torch.zeros_like(embedding[:, :1])], dim=-1)
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return embedding
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class TimestepBlock(nn.Module):
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@abstractmethod
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def forward(self, x, emb):
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"""
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Apply the module to `x` given `emb` timestep embeddings.
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"""
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class TimestepEmbedSequential(nn.Sequential, TimestepBlock):
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def forward(self, x, emb):
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for layer in self:
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if isinstance(layer, TimestepBlock):
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x = layer(x, emb)
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else:
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x = layer(x)
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return x
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class ResBlock(TimestepBlock):
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def __init__(
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self,
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channels,
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emb_channels,
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dropout,
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out_channels=None,
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dims=2,
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kernel_size=3,
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efficient_config=True,
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use_scale_shift_norm=False,
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):
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super().__init__()
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self.channels = channels
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self.emb_channels = emb_channels
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self.dropout = dropout
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self.out_channels = out_channels or channels
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self.use_scale_shift_norm = use_scale_shift_norm
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padding = {1: 0, 3: 1, 5: 2}[kernel_size]
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eff_kernel = 1 if efficient_config else 3
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eff_padding = 0 if efficient_config else 1
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self.in_layers = nn.Sequential(
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normalization(channels),
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nn.SiLU(),
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nn.Conv1d(channels, self.out_channels, eff_kernel, padding=eff_padding),
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)
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self.emb_layers = nn.Sequential(
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nn.SiLU(),
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nn.Linear(
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emb_channels,
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2 * self.out_channels if use_scale_shift_norm else self.out_channels,
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),
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)
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self.out_layers = nn.Sequential(
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normalization(self.out_channels),
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nn.SiLU(),
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nn.Dropout(p=dropout),
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nn.Conv1d(self.out_channels, self.out_channels, kernel_size, padding=padding),
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)
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if self.out_channels == channels:
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self.skip_connection = nn.Identity()
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else:
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self.skip_connection = nn.Conv1d(channels, self.out_channels, eff_kernel, padding=eff_padding)
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def forward(self, x, emb):
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h = self.in_layers(x)
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emb_out = self.emb_layers(emb).type(h.dtype)
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while len(emb_out.shape) < len(h.shape):
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emb_out = emb_out[..., None]
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if self.use_scale_shift_norm:
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out_norm, out_rest = self.out_layers[0], self.out_layers[1:]
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scale, shift = torch.chunk(emb_out, 2, dim=1)
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h = out_norm(h) * (1 + scale) + shift
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h = out_rest(h)
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else:
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h = h + emb_out
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h = self.out_layers(h)
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return self.skip_connection(x) + h
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class DiffusionLayer(TimestepBlock):
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def __init__(self, model_channels, dropout, num_heads):
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super().__init__()
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self.resblk = ResBlock(model_channels, model_channels, dropout, model_channels, dims=1, use_scale_shift_norm=True)
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self.attn = AttentionBlock(model_channels, num_heads, relative_pos_embeddings=True)
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def forward(self, x, time_emb):
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y = self.resblk(x, time_emb)
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return self.attn(y)
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class DiffusionTts(nn.Module):
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def __init__(
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self,
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model_channels=512,
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num_layers=8,
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in_channels=100,
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in_latent_channels=512,
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in_tokens=8193,
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out_channels=200, # mean and variance
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dropout=0,
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use_fp16=False,
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num_heads=16,
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# Parameters for regularization.
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layer_drop=.1,
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unconditioned_percentage=.1, # This implements a mechanism similar to what is used in classifier-free training.
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):
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super().__init__()
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self.in_channels = in_channels
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self.model_channels = model_channels
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self.out_channels = out_channels
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self.dropout = dropout
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self.num_heads = num_heads
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self.unconditioned_percentage = unconditioned_percentage
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self.enable_fp16 = use_fp16
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self.layer_drop = layer_drop
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self.inp_block = nn.Conv1d(in_channels, model_channels, 3, 1, 1)
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self.time_embed = nn.Sequential(
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nn.Linear(model_channels, model_channels),
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nn.SiLU(),
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nn.Linear(model_channels, model_channels),
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)
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# Either code_converter or latent_converter is used, depending on what type of conditioning data is fed.
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# This model is meant to be able to be trained on both for efficiency purposes - it is far less computationally
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# complex to generate tokens, while generating latents will normally mean propagating through a deep autoregressive
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# transformer network.
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self.code_embedding = nn.Embedding(in_tokens, model_channels)
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self.code_converter = nn.Sequential(
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AttentionBlock(model_channels, num_heads, relative_pos_embeddings=True),
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AttentionBlock(model_channels, num_heads, relative_pos_embeddings=True),
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AttentionBlock(model_channels, num_heads, relative_pos_embeddings=True),
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)
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self.code_norm = normalization(model_channels)
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self.latent_conditioner = nn.Sequential(
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nn.Conv1d(in_latent_channels, model_channels, 3, padding=1),
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AttentionBlock(model_channels, num_heads, relative_pos_embeddings=True),
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AttentionBlock(model_channels, num_heads, relative_pos_embeddings=True),
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AttentionBlock(model_channels, num_heads, relative_pos_embeddings=True),
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AttentionBlock(model_channels, num_heads, relative_pos_embeddings=True),
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)
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self.contextual_embedder = nn.Sequential(nn.Conv1d(in_channels,model_channels,3,padding=1,stride=2),
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nn.Conv1d(model_channels, model_channels*2,3,padding=1,stride=2),
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AttentionBlock(model_channels*2, num_heads, relative_pos_embeddings=True, do_checkpoint=False),
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AttentionBlock(model_channels*2, num_heads, relative_pos_embeddings=True, do_checkpoint=False),
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AttentionBlock(model_channels*2, num_heads, relative_pos_embeddings=True, do_checkpoint=False),
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AttentionBlock(model_channels*2, num_heads, relative_pos_embeddings=True, do_checkpoint=False),
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AttentionBlock(model_channels*2, num_heads, relative_pos_embeddings=True, do_checkpoint=False))
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self.unconditioned_embedding = nn.Parameter(torch.randn(1,model_channels,1))
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self.conditioning_timestep_integrator = TimestepEmbedSequential(
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DiffusionLayer(model_channels, dropout, num_heads),
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DiffusionLayer(model_channels, dropout, num_heads),
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DiffusionLayer(model_channels, dropout, num_heads),
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)
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self.integrating_conv = nn.Conv1d(model_channels*2, model_channels, kernel_size=1)
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self.mel_head = nn.Conv1d(model_channels, in_channels, kernel_size=3, padding=1)
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self.layers = nn.ModuleList([DiffusionLayer(model_channels, dropout, num_heads) for _ in range(num_layers)] +
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[ResBlock(model_channels, model_channels, dropout, dims=1, use_scale_shift_norm=True) for _ in range(3)])
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self.out = nn.Sequential(
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normalization(model_channels),
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nn.SiLU(),
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nn.Conv1d(model_channels, out_channels, 3, padding=1),
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)
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def get_grad_norm_parameter_groups(self):
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groups = {
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'minicoder': list(self.contextual_embedder.parameters()),
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'layers': list(self.layers.parameters()),
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'code_converters': list(self.code_embedding.parameters()) + list(self.code_converter.parameters()) + list(self.latent_conditioner.parameters()) + list(self.latent_conditioner.parameters()),
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'timestep_integrator': list(self.conditioning_timestep_integrator.parameters()) + list(self.integrating_conv.parameters()),
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'time_embed': list(self.time_embed.parameters()),
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}
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return groups
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def get_conditioning(self, conditioning_input):
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speech_conditioning_input = conditioning_input.unsqueeze(1) if len(
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conditioning_input.shape) == 3 else conditioning_input
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conds = []
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for j in range(speech_conditioning_input.shape[1]):
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conds.append(self.contextual_embedder(speech_conditioning_input[:, j]))
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conds = torch.cat(conds, dim=-1)
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conds = conds.mean(dim=-1)
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return conds
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def timestep_independent(self, aligned_conditioning, conditioning_latent, expected_seq_len, return_code_pred):
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# Shuffle aligned_latent to BxCxS format
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if is_latent(aligned_conditioning):
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aligned_conditioning = aligned_conditioning.permute(0, 2, 1)
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cond_scale, cond_shift = torch.chunk(conditioning_latent, 2, dim=1)
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if is_latent(aligned_conditioning):
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code_emb = self.latent_conditioner(aligned_conditioning)
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else:
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code_emb = self.code_embedding(aligned_conditioning).permute(0, 2, 1)
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code_emb = self.code_converter(code_emb)
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code_emb = self.code_norm(code_emb) * (1 + cond_scale.unsqueeze(-1)) + cond_shift.unsqueeze(-1)
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unconditioned_batches = torch.zeros((code_emb.shape[0], 1, 1), device=code_emb.device)
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# Mask out the conditioning branch for whole batch elements, implementing something similar to classifier-free guidance.
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if self.training and self.unconditioned_percentage > 0:
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unconditioned_batches = torch.rand((code_emb.shape[0], 1, 1),
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device=code_emb.device) < self.unconditioned_percentage
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code_emb = torch.where(unconditioned_batches, self.unconditioned_embedding.repeat(aligned_conditioning.shape[0], 1, 1),
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code_emb)
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expanded_code_emb = F.interpolate(code_emb, size=expected_seq_len, mode='nearest')
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if not return_code_pred:
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return expanded_code_emb
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else:
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mel_pred = self.mel_head(expanded_code_emb)
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# Multiply mel_pred by !unconditioned_branches, which drops the gradient on unconditioned branches. This is because we don't want that gradient being used to train parameters through the codes_embedder as it unbalances contributions to that network from the MSE loss.
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mel_pred = mel_pred * unconditioned_batches.logical_not()
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return expanded_code_emb, mel_pred
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def forward(self, x, timesteps, aligned_conditioning=None, conditioning_latent=None, precomputed_aligned_embeddings=None, conditioning_free=False, return_code_pred=False):
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"""
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Apply the model to an input batch.
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:param x: an [N x C x ...] Tensor of inputs.
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:param timesteps: a 1-D batch of timesteps.
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:param aligned_conditioning: an aligned latent or sequence of tokens providing useful data about the sample to be produced.
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:param conditioning_latent: a pre-computed conditioning latent; see get_conditioning().
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:param precomputed_aligned_embeddings: Embeddings returned from self.timestep_independent()
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:param conditioning_free: When set, all conditioning inputs (including tokens and conditioning_input) will not be considered.
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:return: an [N x C x ...] Tensor of outputs.
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"""
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assert precomputed_aligned_embeddings is not None or (aligned_conditioning is not None and conditioning_latent is not None)
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assert not (return_code_pred and precomputed_aligned_embeddings is not None) # These two are mutually exclusive.
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unused_params = []
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if conditioning_free:
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code_emb = self.unconditioned_embedding.repeat(x.shape[0], 1, x.shape[-1])
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unused_params.extend(list(self.code_converter.parameters()) + list(self.code_embedding.parameters()))
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unused_params.extend(list(self.latent_conditioner.parameters()))
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else:
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if precomputed_aligned_embeddings is not None:
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code_emb = precomputed_aligned_embeddings
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else:
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code_emb, mel_pred = self.timestep_independent(aligned_conditioning, conditioning_latent, x.shape[-1], True)
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if is_latent(aligned_conditioning):
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unused_params.extend(list(self.code_converter.parameters()) + list(self.code_embedding.parameters()))
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else:
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unused_params.extend(list(self.latent_conditioner.parameters()))
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unused_params.append(self.unconditioned_embedding)
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time_emb = self.time_embed(timestep_embedding(timesteps, self.model_channels))
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code_emb = self.conditioning_timestep_integrator(code_emb, time_emb)
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x = self.inp_block(x)
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x = torch.cat([x, code_emb], dim=1)
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x = self.integrating_conv(x)
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for i, lyr in enumerate(self.layers):
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# Do layer drop where applicable. Do not drop first and last layers.
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if self.training and self.layer_drop > 0 and i != 0 and i != (len(self.layers)-1) and random.random() < self.layer_drop:
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unused_params.extend(list(lyr.parameters()))
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else:
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# First and last blocks will have autocast disabled for improved precision.
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with autocast(x.device.type, enabled=self.enable_fp16 and i != 0):
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x = lyr(x, time_emb)
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x = x.float()
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out = self.out(x)
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# Involve probabilistic or possibly unused parameters in loss so we don't get DDP errors.
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extraneous_addition = 0
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for p in unused_params:
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extraneous_addition = extraneous_addition + p.mean()
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out = out + extraneous_addition * 0
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if return_code_pred:
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return out, mel_pred
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return out
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if __name__ == '__main__':
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clip = torch.randn(2, 100, 400)
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aligned_latent = torch.randn(2,388,512)
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aligned_sequence = torch.randint(0,8192,(2,100))
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cond = torch.randn(2, 100, 400)
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ts = torch.LongTensor([600, 600])
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model = DiffusionTts(512, layer_drop=.3, unconditioned_percentage=.5)
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# Test with latent aligned conditioning
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#o = model(clip, ts, aligned_latent, cond)
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# Test with sequence aligned conditioning
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o = model(clip, ts, aligned_sequence, cond)
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