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import contextlib
import io
from typing import Tuple
import torch
import torch.nn as nn
import torch.nn.functional as F
from huggingface_hub import PyTorchModelHubMixin
with contextlib.redirect_stdout(io.StringIO()) as _torchtune_stdout:
from torchtune.models import llama3_2
_torchtune_import_output = _torchtune_stdout.getvalue()
if _torchtune_import_output.strip() != "import error: No module named 'triton'":
print(_torchtune_import_output, end="")
def llama3_2_8B():
return llama3_2.llama3_2(
vocab_size=128_256,
num_layers=32,
num_heads=32,
num_kv_heads=8,
embed_dim=4096,
max_seq_len=2048,
intermediate_dim=14_336,
attn_dropout=0.1,
norm_eps=1e-5,
rope_base=500_000,
scale_factor=32,
)
def llama3_2_300M():
return llama3_2.llama3_2(
vocab_size=128_256,
num_layers=8,
num_heads=24,
num_kv_heads=6,
embed_dim=1536,
max_seq_len=2048,
intermediate_dim=6912,
attn_dropout=0.1,
norm_eps=1e-5,
rope_base=500_000,
scale_factor=32,
)
FLAVORS = {
"llama-8B": llama3_2_8B,
"llama-300M": llama3_2_300M,
}
def _prepare_transformer(model):
embed_dim = model.tok_embeddings.embedding_dim
model.tok_embeddings = nn.Identity()
model.output = nn.Identity()
return model, embed_dim
def _create_causal_mask(seq_len: int, device: torch.device):
return torch.tril(torch.ones(seq_len, seq_len, dtype=torch.bool, device=device))
def _index_causal_mask(mask: torch.Tensor, input_pos: torch.Tensor):
"""
Args:
mask: (max_seq_len, max_seq_len)
input_pos: (batch_size, seq_len)
Returns:
(batch_size, seq_len, max_seq_len)
"""
r = mask[input_pos, :]
return r
def _multinomial_sample_one_no_sync(probs): # Does multinomial sampling without a cuda synchronization
q = torch.empty_like(probs).exponential_(1)
return torch.argmax(probs / q, dim=-1, keepdim=True).to(dtype=torch.int)
def sample_topk(logits: torch.Tensor, topk: int, temperature: float):
logits = logits / temperature
filter_value: float = -float("Inf")
indices_to_remove = logits < torch.topk(logits, topk)[0][..., -1, None]
scores_processed = logits.masked_fill(indices_to_remove, filter_value)
scores_processed = torch.nn.functional.log_softmax(scores_processed, dim=-1)
probs = torch.nn.functional.softmax(scores_processed, dim=-1)
sample_token = _multinomial_sample_one_no_sync(probs)
return sample_token
def _masked_cross_entropy(logits, targets, mask, vocab_size):
losses = F.cross_entropy(logits.reshape(-1, vocab_size), targets.reshape(-1), reduction="none")
weights = mask.reshape(-1).to(losses.dtype)
total = weights.sum().clamp_min(1.0)
return (losses * weights).sum() / total, total
@dataclass
class ModelArgs:
backbone_flavor: str
decoder_flavor: str
text_vocab_size: int
audio_vocab_size: int
audio_num_codebooks: int
MISO_TTS_8B_CONFIG = ModelArgs(
backbone_flavor="llama-8B",
decoder_flavor="llama-300M",
text_vocab_size=128_256,
audio_vocab_size=2051,
audio_num_codebooks=32,
)
class Model(
nn.Module,
PyTorchModelHubMixin,
pipeline_tag="text-to-speech",
license="other",
):
def __init__(self, config: ModelArgs):
super().__init__()
self.config = config
self.backbone, backbone_dim = _prepare_transformer(FLAVORS[config.backbone_flavor]())
self.decoder, decoder_dim = _prepare_transformer(FLAVORS[config.decoder_flavor]())
self.text_embeddings = nn.Embedding(config.text_vocab_size, backbone_dim)
self.audio_embeddings = nn.Embedding(config.audio_vocab_size * config.audio_num_codebooks, backbone_dim)
self.projection = nn.Linear(backbone_dim, decoder_dim, bias=False)
self.codebook0_head = nn.Linear(backbone_dim, config.audio_vocab_size, bias=False)
self.audio_head = nn.Parameter(torch.empty(config.audio_num_codebooks - 1, decoder_dim, config.audio_vocab_size))
def setup_caches(self, max_batch_size: int) -> None:
"""Setup KV caches and return a causal mask."""
dtype = next(self.parameters()).dtype
device = next(self.parameters()).device
self.backbone.setup_caches(max_batch_size, dtype)
self.decoder.setup_caches(max_batch_size, dtype, decoder_max_seq_len=self.config.audio_num_codebooks)
self.register_buffer("backbone_causal_mask", _create_causal_mask(self.backbone.max_seq_len, device))
self.register_buffer("decoder_causal_mask", _create_causal_mask(self.config.audio_num_codebooks, device))
def generate_frame(
self,
tokens: torch.Tensor,
tokens_mask: torch.Tensor,
input_pos: torch.Tensor,
temperature: float,
topk: int,
) -> torch.Tensor:
"""
Args:
tokens: (batch_size, seq_len, audio_num_codebooks+1)
tokens_mask: (batch_size, seq_len, audio_num_codebooks+1)
input_pos: (batch_size, seq_len) positions for each token
mask: (batch_size, seq_len, max_seq_len
Returns:
(batch_size, audio_num_codebooks) sampled tokens
"""
dtype = next(self.parameters()).dtype
b, s, _ = tokens.size()
assert self.backbone.caches_are_enabled(), "backbone caches are not enabled"
curr_backbone_mask = _index_causal_mask(self.backbone_causal_mask, input_pos)
embeds = self._embed_tokens(tokens)
masked_embeds = embeds * tokens_mask.unsqueeze(-1)
h = masked_embeds.sum(dim=2)
h = self.backbone(h, input_pos=input_pos, mask=curr_backbone_mask).to(dtype=dtype)
last_h = h[:, -1, :]
c0_logits = self.codebook0_head(last_h)
c0_sample = sample_topk(c0_logits, topk, temperature)
c0_embed = self._embed_audio(0, c0_sample)
curr_h = torch.cat([last_h.unsqueeze(1), c0_embed], dim=1)
curr_sample = c0_sample.clone()
curr_pos = torch.arange(0, curr_h.size(1), device=curr_h.device).unsqueeze(0).repeat(curr_h.size(0), 1)
# Decoder caches must be reset every frame.
self.decoder.reset_caches()
for i in range(1, self.config.audio_num_codebooks):
curr_decoder_mask = _index_causal_mask(self.decoder_causal_mask, curr_pos)
decoder_h = self.decoder(self.projection(curr_h), input_pos=curr_pos, mask=curr_decoder_mask).to(
dtype=dtype
)
ci_logits = torch.mm(decoder_h[:, -1, :], self.audio_head[i - 1])
ci_sample = sample_topk(ci_logits, topk, temperature)
ci_embed = self._embed_audio(i, ci_sample)
curr_h = ci_embed
curr_sample = torch.cat([curr_sample, ci_sample], dim=1)
curr_pos = curr_pos[:, -1:] + 1
return curr_sample
def forward(
self,
tokens: torch.Tensor,
tokens_mask: torch.Tensor,
targets: torch.Tensor,
targets_mask: torch.Tensor,
decoder_idx: torch.Tensor,
) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor, torch.Tensor, torch.Tensor]:
dtype = next(self.parameters()).dtype
b, s, nc_plus_1 = tokens.size()
num_codebooks = nc_plus_1 - 1
_, s_amortized = decoder_idx.size()
targets_c0 = targets[:, :, 0]
am_idx = decoder_idx.view(b, s_amortized, 1).expand(b, s_amortized, num_codebooks - 1)
targets_c1_plus = torch.gather(targets[:, :, 1:], dim=1, index=am_idx)
valid_c0 = targets_mask[:, :, 0].bool()
valid_c1_plus = torch.gather(targets_mask[:, :, 1:].bool(), dim=1, index=am_idx)
embeds = self._embed_tokens(tokens)
masked_embeds = embeds * tokens_mask.unsqueeze(-1)
h = masked_embeds.sum(dim=2)
h = self.backbone(h).to(dtype=dtype)
c0_logits = self.codebook0_head(h)
h = h.unsqueeze(2)
target_frame = torch.cat([targets, torch.zeros(b, s, 1, device=h.device, dtype=targets.dtype)], dim=2)
target_embeds = self._embed_tokens(target_frame)
decoder_input = torch.cat([h, target_embeds[:, :, :-2, :]], dim=2)
idx = decoder_idx.view(b, s_amortized, 1, 1).expand(
b,
s_amortized,
num_codebooks,
decoder_input.size(-1),
)
decoder_input_amortized = torch.gather(decoder_input, dim=1, index=idx)
decoder_h = self.decoder(
self.projection(decoder_input_amortized).view(b * s_amortized, num_codebooks, -1).to(dtype=dtype)
)
decoder_h = decoder_h.view(b, s_amortized, num_codebooks, -1)
logits_c1_plus = torch.einsum(
"bsid,idv->bsiv",
decoder_h[:, :, 1:, :],
self.audio_head,
)
c0_loss, c0_weight = _masked_cross_entropy(
c0_logits,
targets_c0,
valid_c0,
self.config.audio_vocab_size,
)
c1_plus_loss, c1_weight = _masked_cross_entropy(
logits_c1_plus,
targets_c1_plus,
valid_c1_plus,
self.config.audio_vocab_size,
)
loss = (c0_loss * c0_weight + c1_plus_loss * c1_weight) / (c0_weight + c1_weight).clamp_min(1.0)
return c0_logits, logits_c1_plus, c0_loss, c1_plus_loss, loss
def reset_caches(self):
self.backbone.reset_caches()
self.decoder.reset_caches()
def _embed_audio(self, codebook: int, tokens: torch.Tensor) -> torch.Tensor:
return self.audio_embeddings(tokens + codebook * self.config.audio_vocab_size)
def _embed_tokens(self, tokens: torch.Tensor) -> torch.Tensor:
text_embeds = self.text_embeddings(tokens[:, :, -1]).unsqueeze(-2)
audio_tokens = tokens[:, :, :-1] + (
self.config.audio_vocab_size * torch.arange(self.config.audio_num_codebooks, device=tokens.device)
)
audio_embeds = self.audio_embeddings(audio_tokens.view(-1)).reshape(
tokens.size(0), tokens.size(1), self.config.audio_num_codebooks, -1
)
return torch.cat([audio_embeds, text_embeds], dim=-2)
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