flash-attention/flash_attn/modules/block.py

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# Copyright (c) 2022, Tri Dao.
from typing import Optional
from functools import partial
import torch
import torch.nn as nn
import torch.nn.functional as F
from torch import Tensor
from torchvision.ops import StochasticDepth
from flash_attn.modules.mha import MHA
from flash_attn.modules.mlp import Mlp
try:
from flash_attn.ops.layer_norm import dropout_add_layer_norm
except ImportError:
dropout_add_layer_norm = None
class Block(nn.Module):
def __init__(self, dim, mixer_cls=None, mlp_cls=None, norm_cls=nn.LayerNorm,
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dropout_cls=nn.Dropout, prenorm=True, resid_dropout1=0., resid_dropout2=0.,
drop_path1=0., drop_path2=0., fused_dropout_add_ln=False, return_residual=False,
residual_in_fp32=False, sequence_parallel=False, mark_shared_params=False):
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"""
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For prenorm=True, this Block has a slightly different structure compared to a regular
prenorm Transformer block.
The standard block is: LN -> MHA -> Dropout -> Add -> LN -> MLP -> Dropout -> Add.
[Ref: https://arxiv.org/abs/2002.04745]
Here we have: Dropout -> Add -> LN -> MHA -> Dropout -> Add -> LN -> MLP, returning both
the hidden_states (output of the MLP) and the residual.
This is for performance reasons, as we can fuse the dropout, add and LayerNorm.
The residual needs to be provided (except for the very first block).
For prenorm=False, this Block has the same structure as a regular postnorm Transformer
block: MHA -> Dropout -> Add -> LN -> MLP -> Dropout -> Add -> LN.
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return_residual: whether each of the sub-layers (mixer and mlp) will return the residual.
This is for performance reason: for post-norm architecture, returning the input allows us
to fuse the backward of nn.Linear with the residual connection.
"""
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super().__init__()
self.prenorm = prenorm
self.fused_dropout_add_ln = fused_dropout_add_ln
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self.return_residual = return_residual
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self.residual_in_fp32 = residual_in_fp32
if self.residual_in_fp32:
assert self.prenorm, 'residual_in_fp32 is only compatible with prenorm=True'
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if mixer_cls is None:
mixer_cls = partial(MHA, num_heads=dim // 64)
if mlp_cls is None:
mlp_cls = partial(Mlp, hidden_features=4 * dim)
self.mixer = mixer_cls(dim)
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self.dropout1 = dropout_cls(resid_dropout1)
self.drop_path1 = StochasticDepth(drop_path1, mode='row')
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self.norm1 = norm_cls(dim)
self.mlp = mlp_cls(dim)
if not isinstance(self.mlp, nn.Identity):
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self.dropout2 = dropout_cls(resid_dropout2)
self.drop_path2 = StochasticDepth(drop_path2, mode='row')
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self.norm2 = norm_cls(dim)
if self.fused_dropout_add_ln:
assert dropout_add_layer_norm is not None, 'dropout_add_ln is not installed'
assert isinstance(self.norm1, nn.LayerNorm) and isinstance(self.dropout1, nn.Dropout)
# TD [2023-01-07]: TODO: During training, if sequence_parallel is False and dropout != 0.0,
# then the input to each worker in the tensor parallel group will be different.
# This would produce wrong outputs? Somehow we'd need to sync the RNG state across workers.
# For now this is not an issue because we always use sequence_parallel=True during training
# and only use sequence_parallel=False during inference.
# Mark the norm parameters as "sequence_parallel" so that we run all-reduce on their grads.
if sequence_parallel:
for p in self.norm1.parameters():
p._sequence_parallel = True
if hasattr(self, 'norm2'):
for p in self.norm2.parameters():
p._sequence_parallel = True
# Mark the norm parameters as "shared_params" so that we sync their values at init.
if mark_shared_params:
for p in self.norm1.parameters():
p._shared_params = True
if hasattr(self, 'norm2'):
for p in self.norm2.parameters():
p._shared_params = True
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def forward(self, hidden_states: Tensor, residual: Optional[Tensor] = None,
mixer_subset=None, mixer_kwargs=None):
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r"""Pass the input through the encoder layer.
Args:
hidden_states: the sequence to the encoder layer (required).
residual: if postnorm, residual=None, If prenorm, hidden_states = Attn/MLP(LN(residual))
mixer_subset: for cross-attention only. If not None, will take a subset of x
before applying the query projection. Useful for e.g., ViT where we only care
about the CLS token in the last layer.
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"""
if self.prenorm:
if not self.fused_dropout_add_ln:
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dropped = self.drop_path1(self.dropout1(hidden_states))
residual = (dropped + residual) if residual is not None else dropped
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hidden_states = self.norm1(residual.to(dtype=self.norm1.weight.dtype))
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if self.residual_in_fp32:
residual = residual.to(torch.float32)
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else:
if self.drop_path1.p == 0 or not self.training:
rowscale1 = None
else:
rowscale1 = self.drop_path1(torch.ones(
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hidden_states.shape[:-1], device=hidden_states.device,
dtype=hidden_states.dtype)
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)
hidden_states, residual = dropout_add_layer_norm(
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hidden_states, residual, self.norm1.weight, self.norm1.bias,
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self.dropout1.p if self.training else 0.0, self.norm1.eps,
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rowscale=rowscale1, prenorm=True, residual_in_fp32=self.residual_in_fp32
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)
if mixer_kwargs is None:
mixer_kwargs = {}
if mixer_subset is not None:
mixer_kwargs['mixer_subset'] = mixer_subset
hidden_states = self.mixer(hidden_states, **mixer_kwargs)
if mixer_subset is not None:
residual = residual[:, mixer_subset]
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if not isinstance(self.mlp, nn.Identity):
if not self.fused_dropout_add_ln:
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dropped = self.drop_path2(self.dropout2(hidden_states))
residual = (dropped + residual) if residual is not None else dropped
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hidden_states = self.norm2(residual.to(dtype=self.norm2.weight.dtype))
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if self.residual_in_fp32:
residual = residual.to(torch.float32)
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else:
if self.drop_path2.p == 0 or not self.training:
rowscale2 = None
else:
rowscale2 = self.drop_path2(torch.ones(
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hidden_states.shape[:-1], device=hidden_states.device,
dtype=hidden_states.dtype)
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)
hidden_states, residual = dropout_add_layer_norm(
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hidden_states, residual, self.norm2.weight, self.norm2.bias,
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self.dropout2.p if self.training else 0.0, self.norm2.eps,
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rowscale=rowscale2, prenorm=True, residual_in_fp32=self.residual_in_fp32
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)
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hidden_states = self.mlp(hidden_states)
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return hidden_states, residual
else:
assert residual is None
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mixer_out = self.mixer(
hidden_states, **(mixer_kwargs if mixer_kwargs is not None else {})
)
if self.return_residual: # mixer out is actually a pair here
mixer_out, hidden_states = mixer_out
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if not self.fused_dropout_add_ln:
hidden_states = self.norm1((self.drop_path1(self.dropout1(mixer_out))
+ hidden_states).to(dtype=self.norm1.weight.dtype))
else:
if self.drop_path1.p == 0 or not self.training:
rowscale1 = None
else:
rowscale1 = self.drop_path1(torch.ones(
mixer_out.shape[:-1], device=mixer_out.device, dtype=mixer_out.dtype)
)
hidden_states = dropout_add_layer_norm(
mixer_out, hidden_states, self.norm1.weight, self.norm1.bias,
self.dropout1.p if self.training else 0.0, self.norm1.eps,
rowscale=rowscale1, prenorm=False
)
if not isinstance(self.mlp, nn.Identity):
mlp_out = self.mlp(hidden_states)
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if self.return_residual: # mlp out is actually a pair here
mlp_out, hidden_states = mlp_out
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if not self.fused_dropout_add_ln:
hidden_states = self.norm2((self.drop_path2(self.dropout2(mlp_out))
+ hidden_states).to(dtype=self.norm2.weight.dtype))
else:
if self.drop_path2.p == 0 or not self.training:
rowscale2 = None
else:
rowscale2 = self.drop_path2(torch.ones(
mlp_out.shape[:-1], device=mlp_out.device, dtype=mlp_out.dtype)
)
hidden_states = dropout_add_layer_norm(
mlp_out, hidden_states, self.norm2.weight, self.norm2.bias,
self.dropout2.p if self.training else 0.0, self.norm2.eps,
rowscale=rowscale2, prenorm=False
)
return hidden_states