| |
| |
|
|
| |
|
|
| from functools import partial |
| from typing import Optional |
|
|
| import torch |
| import torch.fx |
| import torch.nn as nn |
| import torch.nn.functional as F |
| from torch import Tensor |
|
|
| from .mha import MHA |
| from .mlp import Mlp |
|
|
| try: |
| from flash_attn.ops.triton.layer_norm import layer_norm_fn, RMSNorm |
| except ImportError: |
| layer_norm_fn, RMSNorm = None, None |
|
|
|
|
| def stochastic_depth( |
| input: Tensor, p: float, mode: str, training: bool = True |
| ) -> Tensor: |
| """ |
| Implements the Stochastic Depth from `"Deep Networks with Stochastic Depth" |
| <https://arxiv.org/abs/1603.09382>`_ used for randomly dropping residual |
| branches of residual architectures. |
| Args: |
| input (Tensor[N, ...]): The input tensor or arbitrary dimensions with the first one |
| being its batch i.e. a batch with ``N`` rows. |
| p (float): probability of the input to be zeroed. |
| mode (str): ``"batch"`` or ``"row"``. |
| ``"batch"`` randomly zeroes the entire input, ``"row"`` zeroes |
| randomly selected rows from the batch. |
| training: apply stochastic depth if is ``True``. Default: ``True`` |
| Returns: |
| Tensor[N, ...]: The randomly zeroed tensor. |
| """ |
| if p < 0.0 or p > 1.0: |
| raise ValueError(f"drop probability has to be between 0 and 1, but got {p}") |
| if mode not in ["batch", "row"]: |
| raise ValueError(f"mode has to be either 'batch' or 'row', but got {mode}") |
| if not training or p == 0.0: |
| return input |
|
|
| survival_rate = 1.0 - p |
| if mode == "row": |
| size = [input.shape[0]] + [1] * (input.ndim - 1) |
| else: |
| size = [1] * input.ndim |
| noise = torch.empty(size, dtype=input.dtype, device=input.device) |
| noise = noise.bernoulli_(survival_rate) |
| if survival_rate > 0.0: |
| noise.div_(survival_rate) |
| return input * noise |
|
|
|
|
| torch.fx.wrap("stochastic_depth") |
|
|
|
|
| class StochasticDepth(nn.Module): |
| """ |
| See :func:`stochastic_depth`. |
| """ |
|
|
| def __init__(self, p: float, mode: str) -> None: |
| super().__init__() |
| self.p = p |
| self.mode = mode |
|
|
| def forward(self, input: Tensor) -> Tensor: |
| return stochastic_depth(input, self.p, self.mode, self.training) |
|
|
| def __repr__(self) -> str: |
| s = f"{self.__class__.__name__}(p={self.p}, mode={self.mode})" |
| return s |
|
|
| |
| class Block(nn.Module): |
| def __init__( |
| self, |
| dim, |
| mixer_cls=None, |
| mlp_cls=None, |
| norm_cls=nn.LayerNorm, |
| dropout_cls=nn.Dropout, |
| prenorm=True, |
| resid_dropout1=0.0, |
| resid_dropout2=0.0, |
| drop_path1=0.0, |
| drop_path2=0.0, |
| fused_dropout_add_ln=False, |
| return_residual=False, |
| residual_in_fp32=False, |
| sequence_parallel=False, |
| mark_shared_params=False, |
| ): |
| """ |
| 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. |
| |
| 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. |
| """ |
| super().__init__() |
| self.prenorm = prenorm |
| self.fused_dropout_add_ln = fused_dropout_add_ln |
| self.return_residual = return_residual |
| self.residual_in_fp32 = residual_in_fp32 |
| if self.residual_in_fp32: |
| assert self.prenorm, "residual_in_fp32 is only compatible with prenorm=True" |
| 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) |
| self.dropout1 = dropout_cls(resid_dropout1) |
| self.drop_path1 = StochasticDepth(drop_path1, mode="row") |
| self.norm1 = norm_cls(dim) |
| self.mlp = mlp_cls(dim) |
| if not isinstance(self.mlp, nn.Identity): |
| self.dropout2 = dropout_cls(resid_dropout2) |
| self.drop_path2 = StochasticDepth(drop_path2, mode="row") |
| self.norm2 = norm_cls(dim) |
|
|
| if self.fused_dropout_add_ln: |
| assert layer_norm_fn is not None, "Triton is not installed" |
| assert isinstance(self.norm1, (nn.LayerNorm, RMSNorm)) and isinstance( |
| self.dropout1, nn.Dropout |
| ) |
|
|
| |
| |
| |
| |
| |
|
|
| |
| 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 |
| |
| 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 |
|
|
| def allocate_inference_cache(self, batch_size, max_seqlen, dtype=None, **kwargs): |
| return self.mixer.allocate_inference_cache( |
| batch_size, max_seqlen, dtype=dtype, **kwargs |
| ) |
|
|
| def forward( |
| self, |
| hidden_states: Tensor, |
| residual: Optional[Tensor] = None, |
| mixer_subset=None, |
| mixer_kwargs=None, |
| ): |
| 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. |
| """ |
| if self.prenorm: |
| if not self.fused_dropout_add_ln: |
| dropped = self.drop_path1(self.dropout1(hidden_states)) |
| residual = (dropped + residual) if residual is not None else dropped |
| hidden_states = self.norm1(residual.to(dtype=self.norm1.weight.dtype)) |
| if self.residual_in_fp32: |
| residual = residual.to(torch.float32) |
| else: |
| if self.drop_path1.p == 0 or not self.training: |
| rowscale1 = None |
| else: |
| rowscale1 = self.drop_path1( |
| torch.ones( |
| hidden_states.shape[:-1], |
| device=hidden_states.device, |
| dtype=hidden_states.dtype, |
| ) |
| ) |
| hidden_states, residual = layer_norm_fn( |
| hidden_states, |
| self.norm1.weight, |
| self.norm1.bias, |
| residual=residual, |
| eps=self.norm1.eps, |
| dropout_p=self.dropout1.p if self.training else 0.0, |
| rowscale=rowscale1, |
| prenorm=True, |
| residual_in_fp32=self.residual_in_fp32, |
| is_rms_norm=isinstance(self.norm1, RMSNorm), |
| ) |
| 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] |
| if not isinstance(self.mlp, nn.Identity): |
| if not self.fused_dropout_add_ln: |
| dropped = self.drop_path2(self.dropout2(hidden_states)) |
| residual = (dropped + residual) if residual is not None else dropped |
| hidden_states = self.norm2( |
| residual.to(dtype=self.norm2.weight.dtype) |
| ) |
| if self.residual_in_fp32: |
| residual = residual.to(torch.float32) |
| else: |
| if self.drop_path2.p == 0 or not self.training: |
| rowscale2 = None |
| else: |
| rowscale2 = self.drop_path2( |
| torch.ones( |
| hidden_states.shape[:-1], |
| device=hidden_states.device, |
| dtype=hidden_states.dtype, |
| ) |
| ) |
| hidden_states, residual = layer_norm_fn( |
| hidden_states, |
| self.norm2.weight, |
| self.norm2.bias, |
| residual=residual, |
| eps=self.norm2.eps, |
| dropout_p=self.dropout2.p if self.training else 0.0, |
| rowscale=rowscale2, |
| prenorm=True, |
| residual_in_fp32=self.residual_in_fp32, |
| is_rms_norm=isinstance(self.norm2, RMSNorm), |
| ) |
| hidden_states = self.mlp(hidden_states) |
| return hidden_states, residual |
| else: |
| assert residual is None |
| mixer_out = self.mixer( |
| hidden_states, **(mixer_kwargs if mixer_kwargs is not None else {}) |
| ) |
| if self.return_residual: |
| mixer_out, hidden_states = mixer_out |
| 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 = layer_norm_fn( |
| mixer_out, |
| self.norm1.weight, |
| self.norm1.bias, |
| residual=hidden_states, |
| eps=self.norm1.eps, |
| dropout_p=self.dropout1.p if self.training else 0.0, |
| rowscale=rowscale1, |
| prenorm=False, |
| is_rms_norm=isinstance(self.norm1, RMSNorm), |
| ) |
| if not isinstance(self.mlp, nn.Identity): |
| mlp_out = self.mlp(hidden_states) |
| if self.return_residual: |
| mlp_out, hidden_states = mlp_out |
| 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 = layer_norm_fn( |
| mlp_out, |
| self.norm2.weight, |
| self.norm2.bias, |
| residual=hidden_states, |
| eps=self.norm2.eps, |
| dropout_p=self.dropout2.p if self.training else 0.0, |
| rowscale=rowscale2, |
| prenorm=False, |
| is_rms_norm=isinstance(self.norm2, RMSNorm), |
| ) |
| return hidden_states |
|
|
|
|
| class ParallelBlock(nn.Module): |
| """The attention (mixer) and MLP blocks are done in parallel, similar to GPT-J, GPT-NeoX, |
| and PaLM. |
| """ |
|
|
| def __init__( |
| self, |
| dim, |
| mixer_cls=None, |
| mlp_cls=None, |
| norm_cls=nn.LayerNorm, |
| dropout_cls=nn.Dropout, |
| resid_dropout1=0.0, |
| resid_dropout2=0.0, |
| tied_norm=False, |
| fused_dropout_add_ln=False, |
| residual_in_fp32=False, |
| sequence_parallel=False, |
| mark_shared_params=False, |
| ): |
| """ |
| This Block has a slightly different structure compared to a regular |
| prenorm Transformer block. |
| The standard block is: LN -> MHA / MLP -> Dropout -> Add. |
| [Ref: https://arxiv.org/abs/2002.04745] |
| Here we have: Dropout -> Add -> LN -> MHA / MLP, returning both |
| the hidden_states (output1 of the MHA / 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). |
| """ |
| super().__init__() |
| self.tied_norm = tied_norm |
| self.fused_dropout_add_ln = fused_dropout_add_ln |
| self.residual_in_fp32 = residual_in_fp32 |
| 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) |
| self.dropout1 = dropout_cls(resid_dropout1) |
| self.norm1 = norm_cls(dim) |
| self.mlp = mlp_cls(dim) |
| self.dropout2 = dropout_cls(resid_dropout2) |
| if not self.tied_norm: |
| self.norm2 = norm_cls(dim) |
|
|
| if self.fused_dropout_add_ln: |
| assert layer_norm_fn is not None, "Triton is not installed" |
| assert isinstance(self.norm1, (nn.LayerNorm, RMSNorm)) and isinstance( |
| self.dropout1, nn.Dropout |
| ) |
|
|
| |
| |
| |
| |
| |
|
|
| |
| 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 |
| |
| 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 |
|
|
| def allocate_inference_cache(self, batch_size, max_seqlen, dtype=None, **kwargs): |
| return self.mixer.allocate_inference_cache( |
| batch_size, max_seqlen, dtype=dtype, **kwargs |
| ) |
|
|
| def forward( |
| self, |
| hidden_states1: Tensor, |
| hidden_states2: Optional[Tensor] = None, |
| residual: Optional[Tensor] = None, |
| mixer_kwargs=None, |
| ): |
| r"""Pass the input through the encoder layer. |
| |
| Args: |
| hidden_states1: the output of the previous attention (mixer) or embedding layer. |
| hidden_states2: the output of the previous MLP layer (if None, will use hidden_states1). |
| residual. |
| """ |
| |
| |
| if not self.fused_dropout_add_ln: |
| dropped1 = self.dropout1(hidden_states1) |
| |
| if hidden_states2 is not None: |
| dropped2 = self.dropout2(hidden_states2) |
| residual = ( |
| (residual + dropped1 + dropped2) |
| if residual is not None |
| else dropped1 + dropped2 |
| ) |
| else: |
| residual = (residual + dropped1) if residual is not None else dropped1 |
| hidden_states1 = self.norm1(residual.to(dtype=self.norm1.weight.dtype)) |
| hidden_states2 = ( |
| self.norm2(residual.to(dtype=self.norm2.weight.dtype)) |
| if not self.tied_norm |
| else hidden_states1 |
| ) |
| if self.residual_in_fp32: |
| residual = residual.to(torch.float32) |
| else: |
| weight2, bias2 = ( |
| (self.norm2.weight, self.norm2.bias) |
| if not self.tied_norm |
| else (None, None) |
| ) |
| hidden_states1, *rest, residual = layer_norm_fn( |
| hidden_states1, |
| self.norm1.weight, |
| self.norm1.bias, |
| residual=residual, |
| x1=hidden_states2, |
| weight1=weight2, |
| bias1=bias2, |
| eps=self.norm1.eps, |
| dropout_p=self.dropout1.p if self.training else 0.0, |
| prenorm=True, |
| residual_in_fp32=self.residual_in_fp32, |
| is_rms_norm=isinstance(self.norm1, RMSNorm), |
| ) |
| if self.tied_norm: |
| hidden_states2 = hidden_states1 |
| else: |
| (hidden_states2,) = rest |
| if mixer_kwargs is None: |
| mixer_kwargs = {} |
| hidden_states1 = self.mixer(hidden_states1, **mixer_kwargs) |
| hidden_states2 = self.mlp(hidden_states2) |
| return hidden_states1, hidden_states2, residual |
|
|