Spaces:
Sleeping
Sleeping
File size: 37,020 Bytes
5238467 6ec60d5 5325fcc 6ec60d5 5238467 5325fcc 5238467 5325fcc 6ec60d5 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 6ec60d5 5238467 5325fcc 5238467 6ec60d5 5238467 6ec60d5 5238467 6ec60d5 5238467 6ec60d5 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 6ec60d5 5238467 6ec60d5 5238467 6ec60d5 5238467 6ec60d5 5238467 6ec60d5 5238467 6ec60d5 5238467 5325fcc 5238467 6ec60d5 5238467 6ec60d5 5238467 6ec60d5 5238467 6ec60d5 5238467 6ec60d5 5238467 6ec60d5 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 5325fcc 5238467 |
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359 360 361 362 363 364 365 366 367 368 369 370 371 372 373 374 375 376 377 378 379 380 381 382 383 384 385 386 387 388 389 390 391 392 393 394 395 396 397 398 399 400 401 402 403 404 405 406 407 408 409 410 411 412 413 414 415 416 417 418 419 420 421 422 423 424 425 426 427 428 429 430 431 432 433 434 435 436 437 438 439 440 441 442 443 444 445 446 447 448 449 450 451 452 453 454 455 456 457 458 459 460 461 462 463 464 465 466 467 468 469 470 471 472 473 474 475 476 477 478 479 480 481 482 483 484 485 486 487 488 489 490 491 492 493 494 495 496 497 498 499 500 501 502 503 504 505 506 507 508 509 510 511 512 513 514 515 516 517 518 519 520 521 522 523 524 525 526 527 528 529 530 531 532 533 534 535 536 537 538 539 540 541 542 543 544 545 546 547 548 549 550 551 552 553 554 555 556 557 558 559 560 561 562 563 564 565 566 567 568 569 570 571 572 573 574 575 576 577 578 579 580 581 582 583 584 585 586 587 588 589 590 591 592 593 594 595 596 597 598 599 600 601 602 603 604 605 606 607 608 609 610 611 612 613 614 615 616 617 618 619 620 621 622 623 624 625 626 627 628 629 630 631 632 633 634 635 636 637 638 639 640 641 642 643 644 645 646 647 648 649 650 651 652 653 654 655 656 657 658 659 660 661 662 663 664 665 666 667 668 669 670 671 672 673 674 675 676 677 678 679 680 681 682 683 684 685 686 687 688 689 690 691 692 693 694 695 696 697 698 699 700 701 702 703 704 705 706 707 708 709 710 711 712 713 714 715 716 717 718 719 720 721 722 723 724 725 726 727 728 729 730 731 732 733 734 735 736 737 738 739 740 741 742 743 744 745 746 747 |
# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the license found in the
# LICENSE file in the root directory of this source tree.
"""
Transformer model, with streaming support, xformer attention support
and easy causal attention with a potentially finite receptive field.
See `StreamingTransformer` for more information.
Unlike regular PyTorch Transformer, we make the hard choice that batches are first.
"""
import typing as tp
from einops import rearrange
import torch
import torch.nn as nn
from torch.nn import functional as F
from torch.utils.checkpoint import checkpoint as torch_checkpoint
from xformers import ops
from .rope import RotaryEmbedding
from .streaming import StreamingModule
_efficient_attention_backend: str = 'torch'
def set_efficient_attention_backend(backend: str = 'torch'):
# Using torch by default, it seems a bit faster on older P100 GPUs (~20% faster).
global _efficient_attention_backend
assert _efficient_attention_backend in ['xformers', 'torch']
_efficient_attention_backend = backend
def _get_attention_time_dimension(memory_efficient: bool) -> int:
if _efficient_attention_backend == 'torch' and memory_efficient:
return 2
else:
return 1
def _is_profiled() -> bool:
# Return true if we are currently running with a xformers profiler activated.
try:
from xformers.profiler import profiler
except ImportError:
return False
return profiler._Profiler._CURRENT_PROFILER is not None
def create_norm_fn(norm_type: str, dim: int, **kwargs) -> nn.Module:
"""Create normalization module for transformer encoder layer.
Args:
norm_type (str): Normalization method.
dim (int): Dimension of the normalized layer.
**kwargs (dict): Additional parameters for normalization layer.
Returns:
nn.Module: Normalization module.
"""
if norm_type == 'layer_norm':
return nn.LayerNorm(dim, eps=1e-5, **kwargs)
else:
raise ValueError(f"Unknown norm type: {norm_type}")
def create_sin_embedding(positions: torch.Tensor, dim: int, max_period: float = 10000,
dtype: torch.dtype = torch.float32) -> torch.Tensor:
"""Create sinusoidal positional embedding, with shape `[B, T, C]`.
Args:
positions (torch.Tensor): LongTensor of positions.
dim (int): Dimension of the embedding.
max_period (float): Maximum period of the cosine/sine functions.
dtype (torch.dtype or str): dtype to use to generate the embedding.
Returns:
torch.Tensor: Sinusoidal positional embedding.
"""
# We aim for BTC format
assert dim % 2 == 0
half_dim = dim // 2
positions = positions.to(dtype)
adim = torch.arange(half_dim, device=positions.device, dtype=dtype).view(1, 1, -1)
max_period_tensor = torch.full([], max_period, device=positions.device, dtype=dtype) # avoid sync point
phase = positions / (max_period_tensor ** (adim / (half_dim - 1)))
return torch.cat([torch.cos(phase), torch.sin(phase)], dim=-1)
def expand_repeated_kv(x: torch.Tensor, n_rep: int, memory_efficient: bool) -> torch.Tensor:
"""torch.repeat_interleave(x, dim=2, repeats=n_rep) from xlformers."""
if n_rep == 1:
return x
if _efficient_attention_backend == 'torch' and memory_efficient:
bs, n_kv_heads, slen, head_dim = x.shape
return (
x[:, :, None, :, :]
.expand(bs, n_kv_heads, n_rep, slen, head_dim)
.reshape(bs, n_kv_heads * n_rep, slen, head_dim)
)
else:
bs, slen, n_kv_heads, head_dim = x.shape
return (
x[:, :, :, None, :]
.expand(bs, slen, n_kv_heads, n_rep, head_dim)
.reshape(bs, slen, n_kv_heads * n_rep, head_dim)
)
class LayerScale(nn.Module):
"""Layer scale from [Touvron et al 2021] (https://arxiv.org/pdf/2103.17239.pdf).
This rescales diagonally the residual outputs close to 0, with a learnt scale.
Args:
channels (int): Number of channels.
init (float): Initial scale.
channel_last (bool): If True, expect `[*, C]` shaped tensors, otherwise, `[*, C, T]`.
device (torch.device or str, optional): Device on which to initialize the module.
dtype (torch.dtype, optional): dtype to use to initialize the module.
"""
def __init__(self, channels: int, init: float = 1e-4, channel_last: bool = True,
device=None, dtype=None):
super().__init__()
self.channel_last = channel_last
self.scale = nn.Parameter(
torch.full((channels,), init,
requires_grad=True, device=device, dtype=dtype))
def forward(self, x: torch.Tensor):
if self.channel_last:
return self.scale * x
else:
return self.scale[:, None] * x
class StreamingMultiheadAttention(StreamingModule):
"""Similar to `nn.MultiheadAttention` but with support for streaming, causal evaluation.
Args:
embed_dim (int): Dimension to project to.
num_heads (int): Number of heads.
dropout (float): Dropout level.
bias (bool): Use bias in projections.
causal (bool): Causal mask applied automatically.
past_context (int, optional): Receptive field for the causal mask, infinite if None.
custom (bool): Use custom MHA implementation, for testing / benchmarking.
memory_efficient (bool): Use xformers based memory efficient attention.
attention_as_float32 (bool): Perform the attention as float32
(especially important with memory_efficient as autocast won't do this automatically).
rope (`RotaryEmbedding`, optional): Rope embedding to use.
cross_attention: Should be true when used as a cross attention.
All keys and values must be available at once, streaming is only for the queries.
Cannot be used with `causal` or `rope` (as it wouldn't make sens to
interpret the time steps in the keys relative to those in the queries).
safe_streaming (bool): Bug fix, will go away with xformers update.
qk_layer_norm (bool): Layer normalization applied to queries and keys before dot product.
kv_repeat (int): If > 1, will repeat keys and queries multiple times (need to divide num_heads).
This will lead to faster decoding time on A100 or other GPUs with tensorcore.
device (torch.device, optional): Device on which to initialize.
dtype (torch.dtype, optional): dtype to use.
"""
def __init__(self, embed_dim: int, num_heads: int, dropout: float = 0.0, bias: bool = True,
causal: bool = False, past_context: tp.Optional[int] = None, custom: bool = False,
memory_efficient: bool = False, attention_as_float32: bool = False,
rope: tp.Optional[RotaryEmbedding] = None, cross_attention: bool = False,
safe_streaming: bool = True, qk_layer_norm: bool = False, kv_repeat: int = 1,
device=None, dtype=None):
super().__init__()
factory_kwargs = {'device': device, 'dtype': dtype}
if past_context is not None:
assert causal
self.embed_dim = embed_dim
self.causal = causal
self.past_context = past_context
self.memory_efficient = memory_efficient
self.attention_as_float32 = attention_as_float32
self.rope = rope
self.cross_attention = cross_attention
self.safe_streaming = safe_streaming
self.num_heads = num_heads
self.dropout = dropout
self.kv_repeat = kv_repeat
if cross_attention:
assert not causal, "Causal cannot work with cross attention."
assert rope is None, "Rope cannot work with cross attention."
if memory_efficient:
_verify_xformers_memory_efficient_compat()
self.custom = _is_custom(custom, memory_efficient)
if self.custom:
out_dim = embed_dim
assert num_heads % kv_repeat == 0
assert not cross_attention or kv_repeat == 1
num_kv = num_heads // kv_repeat
kv_dim = (embed_dim // num_heads) * num_kv
out_dim += 2 * kv_dim
in_proj = nn.Linear(embed_dim, out_dim, bias=bias, **factory_kwargs)
# We try to follow the default PyTorch MHA convention, to easily compare results.
self.in_proj_weight = in_proj.weight
self.in_proj_bias = in_proj.bias
if bias:
self.in_proj_bias.data.zero_() # Following Pytorch convention
self.out_proj = nn.Linear(embed_dim, embed_dim, bias=bias, **factory_kwargs)
if bias:
self.out_proj.bias.data.zero_()
else:
assert not qk_layer_norm
assert kv_repeat == 1
self.mha = nn.MultiheadAttention(
embed_dim, num_heads, dropout=dropout, bias=bias, batch_first=True,
**factory_kwargs)
self.qk_layer_norm = qk_layer_norm
if qk_layer_norm:
assert self.custom
assert kv_repeat == 1
ln_dim = embed_dim
self.q_layer_norm = nn.LayerNorm(ln_dim)
self.k_layer_norm = nn.LayerNorm(ln_dim)
def _load_from_state_dict(self, state_dict, prefix, *args, **kwargs):
if not self.custom:
# Support compat with regular MHA
keys = [n for n, _ in self.mha.named_parameters()]
for key in keys:
if prefix + key in state_dict:
state_dict[prefix + "mha." + key] = state_dict.pop(prefix + key)
super()._load_from_state_dict(state_dict, prefix, *args, **kwargs)
def _get_mask(self, current_steps: int, device: torch.device, dtype: torch.dtype):
# Return a causal mask, accounting for potentially stored past keys/values
# We actually return a bias for the attention score, as this has the same
# convention both in the builtin MHA in Pytorch, and Xformers functions.
time_dim = _get_attention_time_dimension(self.memory_efficient)
if self.memory_efficient:
from xformers.ops import LowerTriangularMask
if current_steps == 1:
# If we only have one step, then we do not need a mask.
return None
elif 'past_keys' in self._streaming_state:
raise RuntimeError("Not supported at the moment")
else:
# Then we can safely use a lower triangular mask
return LowerTriangularMask()
if self._streaming_state:
past_keys = self._streaming_state['past_keys']
past_steps = past_keys.shape[time_dim]
else:
past_steps = 0
queries_pos = torch.arange(
past_steps, current_steps + past_steps, device=device).view(-1, 1)
keys_pos = torch.arange(past_steps + current_steps, device=device).view(1, -1)
delta = queries_pos - keys_pos
valid = delta >= 0
if self.past_context is not None:
valid &= (delta <= self.past_context)
return torch.where(
valid,
torch.zeros([], device=device, dtype=dtype),
torch.full([], float('-inf'), device=device, dtype=dtype))
def _complete_kv(self, k, v):
time_dim = _get_attention_time_dimension(self.memory_efficient)
if self.cross_attention:
# With cross attention we assume all keys and values
# are already available, and streaming is with respect
# to the queries only.
return k, v
# Complete the key/value pair using the streaming state.
if self._streaming_state:
pk = self._streaming_state['past_keys']
nk = torch.cat([pk, k], dim=time_dim)
if v is k:
nv = nk
else:
pv = self._streaming_state['past_values']
nv = torch.cat([pv, v], dim=time_dim)
else:
nk = k
nv = v
assert nk.shape[time_dim] == nv.shape[time_dim]
offset = 0
if self.past_context is not None:
offset = max(0, nk.shape[time_dim] - self.past_context)
if self._is_streaming:
self._streaming_state['past_keys'] = nk[:, offset:]
if v is not k:
self._streaming_state['past_values'] = nv[:, offset:]
if 'offset' in self._streaming_state:
self._streaming_state['offset'] += offset
else:
self._streaming_state['offset'] = torch.tensor(0)
return nk, nv
def _apply_rope(self, query: torch.Tensor, key: torch.Tensor):
time_dim = _get_attention_time_dimension(self.memory_efficient)
# Apply rope embeddings to query and key tensors.
assert self.rope is not None
if 'past_keys' in self._streaming_state:
past_keys_offset = self._streaming_state['past_keys'].shape[1]
else:
past_keys_offset = 0
if 'offset' in self._streaming_state:
past_context_offset = int(self._streaming_state['offset'].item())
else:
past_context_offset = 0
streaming_offset = past_context_offset + past_keys_offset
return self.rope.rotate_qk(query, key, start=streaming_offset, time_dim=time_dim)
def forward(self, query: torch.Tensor, key: torch.Tensor, value: torch.Tensor,
key_padding_mask=None, need_weights=False, attn_mask=None,
average_attn_weights=True, is_causal=False):
assert attn_mask is None
assert not is_causal, ("New param added in torch 2.0.1 not supported, "
"use the causal args in the constructor.")
time_dim = _get_attention_time_dimension(self.memory_efficient)
if time_dim == 2:
layout = "b h t d"
else:
layout = "b t h d"
dtype = query.dtype
if self._is_streaming:
assert self.causal or self.cross_attention, \
"Streaming only available for causal or cross attention"
if self.causal:
# At the moment we specialize only for the self-attention case.
assert query.shape[1] == key.shape[1], "Causal only for same length query / key / value"
assert value.shape[1] == key.shape[1], "Causal only for same length query / key / value"
attn_mask = self._get_mask(query.shape[1], query.device, query.dtype)
if self.custom:
# custom implementation
assert need_weights is False
assert key_padding_mask is None
if self.cross_attention:
# Different queries, keys, values, we have to spit manually the weights
# before applying the linear.
dim = self.in_proj_weight.shape[0] // 3
if self.in_proj_bias is None:
bias_q, bias_k, bias_v = None, None, None
else:
bias_q = self.in_proj_bias[:dim]
bias_k = self.in_proj_bias[dim: 2 * dim]
bias_v = self.in_proj_bias[2 * dim:]
q = nn.functional.linear(query, self.in_proj_weight[:dim], bias_q)
# todo: when streaming, we could actually save k, v and check the shape actually match.
k = nn.functional.linear(key, self.in_proj_weight[dim: 2 * dim], bias_k)
v = nn.functional.linear(value, self.in_proj_weight[2 * dim:], bias_v)
if self.qk_layer_norm is True:
q = self.q_layer_norm(q)
k = self.k_layer_norm(k)
q, k, v = [rearrange(x, f"b t (h d) -> {layout}", h=self.num_heads) for x in [q, k, v]]
else:
if not _is_profiled():
# profiling breaks that propertysomehow.
assert query is key, "specialized implementation"
assert value is key, "specialized implementation"
projected = nn.functional.linear(query, self.in_proj_weight, self.in_proj_bias)
if self.kv_repeat == 1:
if time_dim == 2:
bound_layout = "b h p t d"
else:
bound_layout = "b t p h d"
packed = rearrange(projected, f"b t (p h d) -> {bound_layout}", p=3, h=self.num_heads)
q, k, v = ops.unbind(packed, dim=2)
else:
embed_dim = self.embed_dim
per_head_dim = (embed_dim // self.num_heads)
kv_heads = self.num_heads // self.kv_repeat
q = projected[:, :, :embed_dim]
start = embed_dim
end = start + per_head_dim * kv_heads
k = projected[:, :, start: end]
v = projected[:, :, end:]
q = rearrange(q, f"b t (h d) -> {layout}", h=self.num_heads)
k = rearrange(k, f"b t (h d) -> {layout}", h=kv_heads)
v = rearrange(v, f"b t (h d) -> {layout}", h=kv_heads)
if self.qk_layer_norm is True:
assert self.kv_repeat == 1
q, k = [rearrange(x, f"{layout} -> b t (h d)") for x in [q, k]]
q = self.q_layer_norm(q)
k = self.k_layer_norm(k)
q, k = [rearrange(x, f"b t (h d) -> {layout}", h=self.num_heads) for x in [q, k]]
if self.rope:
q, k = self._apply_rope(q, k)
k, v = self._complete_kv(k, v)
if self.kv_repeat > 1:
k = expand_repeated_kv(k, self.kv_repeat, self.memory_efficient)
v = expand_repeated_kv(v, self.kv_repeat, self.memory_efficient)
if self.attention_as_float32:
q, k, v = [x.float() for x in [q, k, v]]
if self.memory_efficient:
p = self.dropout if self.training else 0
if _efficient_attention_backend == 'torch':
x = torch.nn.functional.scaled_dot_product_attention(
q, k, v, is_causal=attn_mask is not None, dropout_p=p)
else:
x = ops.memory_efficient_attention(q, k, v, attn_mask, p=p)
else:
# We include the dot product as float32, for consistency
# with the other implementations that include that step
# as part of the attention. Note that when using `autocast`,
# the einsums would be done as bfloat16, but the softmax
# would be done as bfloat16, so `attention_as_float32` will
# extend a bit the range of operations done in float32,
# although this should make no difference.
q = q / q.shape[-1] ** 0.5
key_layout = layout.replace('t', 'k')
query_layout = layout
if self._is_streaming and self.safe_streaming and q.device.type == 'cuda':
with torch.autocast(device_type=q.device.type, dtype=torch.float32):
pre_w = torch.einsum(f"{query_layout},{key_layout}-> b h t k", q, k)
else:
pre_w = torch.einsum(f"{query_layout},{key_layout}-> b h t k", q, k)
if attn_mask is not None:
pre_w = pre_w + attn_mask
w = torch.softmax(pre_w, dim=-1)
w = F.dropout(w, self.dropout, training=self.training).to(v)
# Key and value have the same format.
x = torch.einsum(f"b h t k, {key_layout} -> {layout}", w, v)
x = x.to(dtype)
x = rearrange(x, f"{layout} -> b t (h d)", h=self.num_heads)
x = self.out_proj(x)
else:
key, value = self._complete_kv(key, value)
if self.attention_as_float32:
query, key, value = [x.float() for x in [query, key, value]]
x, _ = self.mha(
query, key, value, key_padding_mask,
need_weights, attn_mask, average_attn_weights)
x = x.to(dtype)
return x, None
class StreamingTransformerLayer(nn.TransformerEncoderLayer):
"""TransformerLayer with Streaming / Causal support.
This also integrates cross_attention, when passing `cross_attention=True`,
rather than having two separate classes like in PyTorch.
Args:
d_model (int): Dimension of the data.
num_heads (int): Number of heads.
dim_feedforward (int): Intermediate dimension of FF module.
dropout (float): Dropout both for MHA and FF.
bias_ff (bool): Use bias for FF.
bias_attn (bool): Use bias for MHA.
causal (bool): Causal mask applied automatically.
past_context (int, optional): Receptive field for the causal mask, infinite if None.
custom (bool): Use custom MHA implementation, for testing / benchmarking.
memory_efficient (bool): Use xformers based memory efficient attention.
attention_as_float32 (bool): Perform the attention as float32
(especially important with memory_efficient as autocast won't do this automatically).
qk_layer_norm (bool): Layer normalization applied to queries and keys before dot product in attention.
qk_layer_norm_cross (bool): Same for the cross attention.
cross_attention (bool): If True, expect to get secondary input for cross-attention.
Cross attention will use the default MHA, as it typically won't require
special treatment.
layer_scale (float, optional): If not None, LayerScale will be used with
the given value as initial scale.
rope (`RotaryEmbedding`, optional): Rope embedding to use.
attention_dropout (float, optional): If not None, separate the value of the dimension dropout
in FFN and of the attention dropout.
kv_repeat (int): If > 1, will repeat keys and queries multiple times (need to divide num_heads).
This will lead to faster decoding time on A100 or other GPUs with tensorcore.
device (torch.device, optional): Device on which to initialize.
dtype (torch.dtype, optional): dtype to use.
**kwargs: See `nn.TransformerEncoderLayer`.
"""
def __init__(self, d_model: int, num_heads: int, dim_feedforward: int = 2048, dropout: float = 0.1,
bias_ff: bool = True, bias_attn: bool = True, causal: bool = False,
past_context: tp.Optional[int] = None, custom: bool = False,
memory_efficient: bool = False, attention_as_float32: bool = False,
qk_layer_norm: bool = False, qk_layer_norm_cross: bool = False,
cross_attention: bool = False, layer_scale: tp.Optional[float] = None,
rope: tp.Optional[RotaryEmbedding] = None, attention_dropout: tp.Optional[float] = None,
kv_repeat: int = 1, norm: str = 'layer_norm', device=None, dtype=None, **kwargs):
super().__init__(d_model, num_heads, dim_feedforward, dropout,
device=device, dtype=dtype, batch_first=True, **kwargs)
factory_kwargs = {'device': device, 'dtype': dtype}
# Redefine self_attn to our streaming multi-head attention
attn_kwargs: tp.Dict[str, tp.Any] = {
'embed_dim': d_model,
'num_heads': num_heads,
'dropout': dropout if attention_dropout is None else attention_dropout,
'bias': bias_attn,
'custom': custom,
'memory_efficient': memory_efficient,
'attention_as_float32': attention_as_float32,
}
self.self_attn: StreamingMultiheadAttention = StreamingMultiheadAttention(
causal=causal, past_context=past_context, rope=rope, qk_layer_norm=qk_layer_norm,
kv_repeat=kv_repeat, **attn_kwargs, **factory_kwargs) # type: ignore
# Redefine feedforward layers to expose bias parameter
self.linear1 = nn.Linear(d_model, dim_feedforward, bias=bias_ff, **factory_kwargs)
self.linear2 = nn.Linear(dim_feedforward, d_model, bias=bias_ff, **factory_kwargs)
self.layer_scale_1: nn.Module
self.layer_scale_2: nn.Module
if layer_scale is None:
self.layer_scale_1 = nn.Identity()
self.layer_scale_2 = nn.Identity()
else:
self.layer_scale_1 = LayerScale(d_model, layer_scale, **factory_kwargs)
self.layer_scale_2 = LayerScale(d_model, layer_scale, **factory_kwargs)
self.cross_attention: tp.Optional[nn.Module] = None
if cross_attention:
self.cross_attention = StreamingMultiheadAttention(
cross_attention=True, qk_layer_norm=qk_layer_norm_cross,
**attn_kwargs, **factory_kwargs)
# Norm and dropout
self.dropout_cross = nn.Dropout(dropout)
# eps value matching that used in PyTorch reference implementation.
self.norm_cross = nn.LayerNorm(d_model, eps=1e-5, **factory_kwargs)
self.layer_scale_cross: nn.Module
if layer_scale is None:
self.layer_scale_cross = nn.Identity()
else:
self.layer_scale_cross = LayerScale(d_model, layer_scale, **factory_kwargs)
self.norm1 = create_norm_fn(norm, d_model, **factory_kwargs) # type: ignore
self.norm2 = create_norm_fn(norm, d_model, **factory_kwargs) # type: ignore
def _cross_attention_block(self, src: torch.Tensor,
cross_attention_src: torch.Tensor) -> torch.Tensor:
assert self.cross_attention is not None
# queries are from src, keys and values from cross_attention_src.
x = self.cross_attention(
src, cross_attention_src, cross_attention_src, need_weights=False)[0]
return self.dropout_cross(x) # type: ignore
def forward(self, src: torch.Tensor, src_mask: tp.Optional[torch.Tensor] = None, # type: ignore
src_key_padding_mask: tp.Optional[torch.Tensor] = None,
cross_attention_src: tp.Optional[torch.Tensor] = None):
if self.cross_attention is None:
assert cross_attention_src is None
else:
assert cross_attention_src is not None
x = src
if self.norm_first:
x = x + self.layer_scale_1(
self._sa_block(self.norm1(x), src_mask, src_key_padding_mask))
if cross_attention_src is not None:
x = x + self.layer_scale_cross(
self._cross_attention_block(
self.norm_cross(x), cross_attention_src))
x = x + self.layer_scale_2(self._ff_block(self.norm2(x)))
else:
x = self.norm1(x + self.layer_scale_1(
self._sa_block(x, src_mask, src_key_padding_mask)))
if cross_attention_src is not None:
x = self.norm_cross(
x + self.layer_scale_cross(
self._cross_attention_block(src, cross_attention_src)))
x = self.norm2(x + self.layer_scale_2(self._ff_block(x)))
return x
class StreamingTransformer(StreamingModule):
"""Transformer with Streaming / Causal support.
Args:
d_model (int): Dimension of the data.
num_heads (int): Number of heads.
dim_feedforward (int): Intermediate dimension of FF module.
dropout (float): Dropout both for MHA and FF.
bias_ff (bool): Use bias for FF.
bias_attn (bool): Use bias for MHA.
causal (bool): Causal mask applied automatically.
past_context (int, optional): Receptive field for the causal mask, infinite if None.
custom (bool): Use custom MHA implementation, for testing / benchmarking.
memory_efficient (bool): Use xformers based memory efficient attention.
attention_as_float32 (bool): Perform the attention as float32
(especially important with memory_efficient as autocast won't do this automatically).
cross_attention (bool): If True, expect to get secondary input for cross-attention.
layer_scale (float, optional): If not None, LayerScale will be used
with the given value as initial scale.
positional_embedding (str): Positional embedding strategy (sin, rope, or sin_rope).
max_period (float): Maximum period of the time embedding.
positional_scale (float): Scale of positional embedding, set to 0 to deactivate.
xpos (bool): Apply xpos exponential decay to positional embedding (rope only).
lr (float, optional): learning rate override through the `make_optim_group` API.
weight_decay (float, optional): Weight_decay override through the `make_optim_group` API.
layer_class: (subclass of `StreamingTransformerLayer): class to use
to initialize the layers, allowing further customization outside of AudioCraft.
checkpointing (str): Checkpointing strategy to reduce memory usage.
No checkpointing if set to 'none'. Per layer checkpointing using PyTorch
if set to 'torch' (entire layer checkpointed, i.e. linears are evaluated twice,
minimal memory usage, but maximal runtime). Finally, `xformers_default` provide
a policy for opting-out some operations of the checkpointing like
linear layers and attention, providing a middle ground between speed and memory.
device (torch.device, optional): Device on which to initialize.
dtype (torch.dtype, optional): dtype to use.
**kwargs: See `nn.TransformerEncoderLayer`.
"""
def __init__(self, d_model: int, num_heads: int, num_layers: int, dim_feedforward: int = 2048,
dropout: float = 0.1, bias_ff: bool = True, bias_attn: bool = True,
causal: bool = False, past_context: tp.Optional[int] = None,
custom: bool = False, memory_efficient: bool = False, attention_as_float32: bool = False,
cross_attention: bool = False, layer_scale: tp.Optional[float] = None,
positional_embedding: str = 'sin', max_period: float = 10_000, positional_scale: float = 1.,
xpos: bool = False, lr: tp.Optional[float] = None, weight_decay: tp.Optional[float] = None,
layer_class: tp.Type[StreamingTransformerLayer] = StreamingTransformerLayer,
checkpointing: str = 'none', device=None, dtype=None, **kwargs):
super().__init__()
assert d_model % num_heads == 0
self.positional_embedding = positional_embedding
self.max_period = max_period
self.positional_scale = positional_scale
self.weight_decay = weight_decay
self.lr = lr
assert positional_embedding in ['sin', 'rope', 'sin_rope']
self.rope: tp.Optional[RotaryEmbedding] = None
if self.positional_embedding in ['rope', 'sin_rope']:
assert _is_custom(custom, memory_efficient)
self.rope = RotaryEmbedding(d_model // num_heads, max_period=max_period,
xpos=xpos, scale=positional_scale, device=device)
self.checkpointing = checkpointing
assert checkpointing in ['none', 'torch', 'xformers_default', 'xformers_mm']
if self.checkpointing.startswith('xformers'):
_verify_xformers_internal_compat()
self.layers = nn.ModuleList()
for idx in range(num_layers):
self.layers.append(
layer_class(
d_model=d_model, num_heads=num_heads, dim_feedforward=dim_feedforward,
dropout=dropout, bias_ff=bias_ff, bias_attn=bias_attn,
causal=causal, past_context=past_context, custom=custom,
memory_efficient=memory_efficient, attention_as_float32=attention_as_float32,
cross_attention=cross_attention, layer_scale=layer_scale, rope=self.rope,
device=device, dtype=dtype, **kwargs))
if self.checkpointing != 'none':
for layer in self.layers:
# see audiocraft/optim/fsdp.py, magic signal to indicate this requires fixing the
# backward hook inside of FSDP...
layer._magma_checkpointed = True # type: ignore
assert layer.layer_drop == 0., "Need further checking" # type: ignore
def _apply_layer(self, layer, *args, **kwargs):
method = self.checkpointing
if method == 'none':
return layer(*args, **kwargs)
elif method == 'torch':
return torch_checkpoint(layer, *args, use_reentrant=False, **kwargs)
elif method.startswith('xformers'):
from xformers.checkpoint_fairinternal import checkpoint, _get_default_policy
if method == 'xformers_default':
# those operations will be saved, and not recomputed.
# According to Francisco we can get smarter policies but this is a good start.
allow_list = [
"xformers.efficient_attention_forward_cutlass.default",
"xformers_flash.flash_fwd.default",
"aten.addmm.default",
"aten.mm.default",
]
elif method == 'xformers_mm':
# those operations will be saved, and not recomputed.
# According to Francisco we can get smarter policies but this is a good start.
allow_list = [
"aten.addmm.default",
"aten.mm.default",
]
else:
raise ValueError(f"xformers checkpointing xformers policy {method} is not known.")
policy_fn = _get_default_policy(allow_list)
return checkpoint(layer, *args, policy_fn=policy_fn, **kwargs)
else:
raise ValueError(f"Checkpointing method {method} is unknown.")
def forward(self, x: torch.Tensor, *args, **kwargs):
B, T, C = x.shape
if 'offsets' in self._streaming_state:
offsets = self._streaming_state['offsets']
else:
offsets = torch.zeros(B, dtype=torch.long, device=x.device)
if self.positional_embedding in ['sin', 'sin_rope']:
positions = torch.arange(T, device=x.device).view(1, -1, 1)
positions = positions + offsets.view(-1, 1, 1)
pos_emb = create_sin_embedding(positions, C, max_period=self.max_period, dtype=x.dtype)
x = x + self.positional_scale * pos_emb
for layer in self.layers:
x = self._apply_layer(layer, x, *args, **kwargs)
if self._is_streaming:
self._streaming_state['offsets'] = offsets + T
return x
def make_optim_group(self):
group = {"params": list(self.parameters())}
if self.lr is not None:
group["lr"] = self.lr
if self.weight_decay is not None:
group["weight_decay"] = self.weight_decay
return group
# special attention related function
def _verify_xformers_memory_efficient_compat():
try:
from xformers.ops import memory_efficient_attention, LowerTriangularMask # noqa
except ImportError:
raise ImportError(
"xformers is not installed. Please install it and try again.\n"
"To install on AWS and Azure, run \n"
"FORCE_CUDA=1 TORCH_CUDA_ARCH_LIST='8.0'\\\n"
"pip install -U git+https://git@github.com/fairinternal/xformers.git#egg=xformers\n"
"To install on FAIR Cluster, run \n"
"FORCE_CUDA=1 TORCH_CUDA_ARCH_LIST='6.0;7.0'\\\n"
"pip install -U git+https://git@github.com/fairinternal/xformers.git#egg=xformers\n")
def _verify_xformers_internal_compat():
try:
from xformers.checkpoint_fairinternal import checkpoint, _get_default_policy # noqa
except ImportError:
raise ImportError(
"Francisco's fairinternal xformers is not installed. Please install it and try again.\n"
"To install on AWS and Azure, run \n"
"FORCE_CUDA=1 TORCH_CUDA_ARCH_LIST='8.0'\\\n"
"pip install -U git+https://git@github.com/fairinternal/xformers.git#egg=xformers\n"
"To install on FAIR Cluster, run \n"
"FORCE_CUDA=1 TORCH_CUDA_ARCH_LIST='6.0;7.0'\\\n"
"pip install -U git+https://git@github.com/fairinternal/xformers.git#egg=xformers\n")
def _is_custom(custom: bool, memory_efficient: bool):
return custom or memory_efficient
|