ai-content-maker/.venv/Lib/site-packages/transformers/models/mega/modeling_mega.py

2274 lines
107 KiB
Python
Raw Normal View History

2024-05-03 04:18:51 +03:00
# coding=utf-8
# Copyright 2023 The Mega Authors and The HuggingFace Inc. team.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""PyTorch MEGA model."""
import math
from typing import List, Optional, Tuple, Union
import torch
import torch.nn.functional as F
import torch.utils.checkpoint
from torch import nn
from torch.nn import BCEWithLogitsLoss, CrossEntropyLoss, MSELoss
from ...activations import ACT2FN
from ...modeling_outputs import (
BaseModelOutputWithPoolingAndCrossAttentions,
CausalLMOutputWithCrossAttentions,
MaskedLMOutput,
MultipleChoiceModelOutput,
QuestionAnsweringModelOutput,
SequenceClassifierOutput,
TokenClassifierOutput,
)
from ...modeling_utils import PreTrainedModel
from ...pytorch_utils import ALL_LAYERNORM_LAYERS
from ...utils import (
add_code_sample_docstrings,
add_start_docstrings,
add_start_docstrings_to_model_forward,
logging,
replace_return_docstrings,
)
from .configuration_mega import MegaConfig
logger = logging.get_logger(__name__)
_CHECKPOINT_FOR_DOC = "mnaylor/mega-base-wikitext"
_CONFIG_FOR_DOC = "MegaConfig"
from ..deprecated._archive_maps import MEGA_PRETRAINED_MODEL_ARCHIVE_LIST # noqa: F401, E402
class MegaEmbeddings(nn.Module):
"""
Mega's basic implementation does not incorporate token type embeddings, so this is a stripped-down version of
RoBERTa's embeddings which optionally includes token types
"""
def __init__(self, config: MegaConfig):
super().__init__()
self.word_embeddings = nn.Embedding(config.vocab_size, config.hidden_size, padding_idx=config.pad_token_id)
self.use_token_types = config.add_token_type_embeddings
if self.use_token_types:
self.token_type_embeddings = nn.Embedding(config.type_vocab_size, config.hidden_size)
# registering a buffer here allows model tracing when not passing optional token type IDs
# more info at transformers issue #5664
self.register_buffer(
"token_type_ids", torch.zeros(config.max_positions, dtype=torch.long).expand((1, -1)), persistent=False
)
self.padding_idx = config.pad_token_id
def forward(self, input_ids=None, token_type_ids=None, inputs_embeds=None):
if (input_ids is None) and (inputs_embeds is None):
raise ValueError("Must provide one of input_ids or inputs_embeds")
elif input_ids is not None:
input_shape = input_ids.size()
device = input_ids.device
# get the word embeddings if only IDs are provided
inputs_embeds = self.word_embeddings(input_ids)
else:
input_shape = inputs_embeds.size()[:-1]
device = inputs_embeds.device
# the original Mega implementation did not include token type embeddings, so we add
# an option to use them if desired; if embeddings are present and token type IDs are
# not provided, we will use a registered buffer (which helps with tracing)
if self.use_token_types:
if token_type_ids is None:
if hasattr(self, "token_type_ids"):
buffered_token_type_ids = self.token_type_ids[:, : input_shape[1]]
buffered_token_type_ids_expanded = buffered_token_type_ids.expand(input_shape[0], input_shape[1])
token_type_ids = buffered_token_type_ids_expanded
else:
token_type_ids = torch.zeros(input_shape, dtype=torch.long, device=device)
# access token type embeddings
token_type_embeddings = self.token_type_embeddings(token_type_ids)
# add the token type embeddings to the word embeddings
embeddings = inputs_embeds + token_type_embeddings
else:
embeddings = inputs_embeds
return embeddings
class MegaSimpleRelativePositionalBias(nn.Module):
"""
Simple relative positional embeddings copied from the Mega repo; renamed variables for better readability
"""
def __init__(self, config: MegaConfig):
super().__init__()
self.config = config
self.max_positions = self.config.max_positions if self.config.chunk_size < 0 else self.config.chunk_size
self.rel_pos_bias = nn.Parameter(torch.Tensor(2 * config.max_positions - 1))
def forward(self, seq_len):
if seq_len > self.max_positions:
raise ValueError("Sequence length {} going beyond max length {}".format(seq_len, self.max_positions))
# seq_len * 2 - 1
bias = self.rel_pos_bias[(self.max_positions - seq_len) : (self.max_positions + seq_len - 1)]
# seq_len * 3 - 1
tile = F.pad(bias, (0, seq_len))
# (seq_len * 3 - 1) * seq_len
tile = torch.tile(tile, (seq_len,))
tile = tile[:-seq_len]
# seq_len x (3 * seq_len - 2)
tile = tile.view(seq_len, 3 * seq_len - 2)
start = (2 * seq_len - 1) // 2
end = tile.size(1) - start
tile = tile[:, start:end]
return tile
class MegaRotaryRelativePositionalBias(nn.Module):
"""
Rotary relative bias for positional information; similar in concept to RoPE (i.e. RoFormer) but taken from the Mega
repo due to differences in implementation.
When initialized, produces a positional bias which ranges from position 0 to config.max_positions, but can
extrapolate to longer sequences. Can be indexed according to input position IDs
"""
def __init__(self, config: MegaConfig):
super().__init__()
if config.hidden_size % 2 != 0:
raise RuntimeError("Rotary positional bias requires `hidden_size` to be a multiple of 2")
self.config = config
self.embed_dim = config.shared_representation_size
self.max_positions = self.config.max_positions if self.config.chunk_size < 0 else self.config.chunk_size
self.sine, self.cosine = MegaRotaryRelativePositionalBias.get_sinusoid_embeddings(
config.max_positions, self.embed_dim
)
# alpha and beta parameters for the rotary bias; beta renamed to b_param to avoid clashes with tf/flax weight handling
# in loading pretrained weights
self.alpha = nn.Parameter(torch.Tensor(1, self.embed_dim))
self.b_param = nn.Parameter(torch.Tensor(1, self.embed_dim))
self.register_buffer("_float_tensor", torch.FloatTensor([0.0]))
@staticmethod
def get_sinusoid_embeddings(max_positions: int, embedding_dim: int):
half_dim = embedding_dim // 2
emb = math.log(10000) / half_dim
emb = torch.exp(torch.arange(half_dim, dtype=torch.int64).float() * -emb)
emb = torch.arange(max_positions, dtype=torch.float).unsqueeze(1) * emb.unsqueeze(0)
return torch.sin(emb), torch.cos(emb)
def rotary(self, input):
seq_len, embed_dim = input.size()
chunk_1, chunk_2 = torch.chunk(input, 2, dim=-1)
if self.sine is None or seq_len > self.sine.size(0):
self.sine, self.cosine = MegaRotaryRelativePositionalBias.get_sinusoid_embeddings(seq_len, embed_dim)
self.max_positions = seq_len
self.sine = self.sine.to(self._float_tensor)
self.cosine = self.cosine.to(self._float_tensor)
sin = self.sine[:seq_len]
cos = self.cosine[:seq_len]
return torch.cat([chunk_1 * cos - chunk_2 * sin, chunk_2 * cos + chunk_1 * sin], dim=1)
def forward(self, seq_len):
rotary_alpha = self.rotary(self.alpha.expand(seq_len, self.embed_dim))
rotary_beta = self.rotary(self.b_param.expand(seq_len, self.embed_dim))
bias = torch.einsum("mk,nk->mn", rotary_alpha, rotary_beta)
return bias
class MegaDropout(nn.Module):
"""
A unified class for standard dropout functionality and featurewise dropout.
The original fairseq Mega repo used 2 classes for these, which included some unnecessary handling of training logic
and an unused `inplace` option. The original implementation used torch.nn.functional instead of submodules, which
is retained here as well.
"""
def __init__(self, dropout_probability, is_featurewise=False):
super().__init__()
self.dropout_probability = dropout_probability
self.is_featurewise = is_featurewise
def forward(self, input, batch_first: bool = False):
if self.is_featurewise:
if batch_first:
# (batch_size X sequence_length X feature_dimension)
# -> (batch_size X feature_dimension X sequence_length)
# -> (batch_size X sequence_length X feature_dimension)
return F.dropout2d(
input.transpose(-1, -2), p=self.dropout_probability, training=self.training
).transpose(-1, -2)
else:
if input.dim() != 3:
raise ValueError(
"Feature dropout inputs must be exactly 3-dimensional if inputs are ordered [sequence length, batch size, hidden dimension]"
)
# (sequence_length X batch_size X feature_dimension)
# -> (batch_size X feature_dimension X sequence_length)
# -> (sequence_length X batch_size X feature_dimension)
return F.dropout2d(input.permute(1, 2, 0), p=self.dropout_probability, training=self.training).permute(
2, 0, 1
)
else:
return F.dropout(input, p=self.dropout_probability, training=self.training)
class MegaRMSNorm(nn.Module):
"""
RMSNorm used in Mega implementation. Differs from T5's RMSNorm by applying the weight prior to taking the square
root (as opposed to after in T5)
"""
def __init__(self, number_features, eps=1e-6, affine=True):
super().__init__()
self.num_features = number_features
self.eps = eps
self.affine = affine
if affine:
self.weight = nn.Parameter(torch.Tensor(self.num_features))
else:
self.register_parameter("weight", None)
def forward(self, input):
mean_square = torch.mean(torch.square(input), dim=-1, keepdim=True)
if self.weight is not None:
input = input * self.weight
input * torch.rsqrt(mean_square + self.eps)
return input
class MegaScaleNorm(nn.Module):
"""
Scale normalization introduced in MEGA which is similar to RMSNorm, but uses a single parameter for scalar
multiplication instead of a vector, and applies over a specified dimension
"""
def __init__(self, dim, eps=1e-6, affine=True):
super().__init__()
self.dim = dim
self.eps = eps
self.affine = affine
if affine:
self.scalar = nn.Parameter(torch.Tensor(1))
else:
self.register_parameter("scalar", None)
def forward(self, input):
mean_square = torch.mean(torch.square(input), dim=self.dim, keepdim=True)
if self.scalar is not None:
input = self.scalar * input
output = input * torch.rsqrt(mean_square + self.eps)
return output
class MegaSequenceNorm(nn.Module):
"""
A wrapper class for various layer normalization options used in Mega. Used to handle differences in expectations on
input axis locations for different normalization methods.
"""
def __init__(self, norm_type, embedding_dim, eps=1e-5, affine=True, export=False):
super().__init__()
if norm_type == "layernorm":
self.norm = nn.LayerNorm(embedding_dim, eps, elementwise_affine=affine)
elif norm_type == "scalenorm":
self.norm = MegaScaleNorm(dim=-1, eps=eps, affine=affine)
elif norm_type == "rmsnorm":
self.norm = MegaRMSNorm(embedding_dim, eps=eps, affine=affine)
elif norm_type == "batchnorm":
self.norm = nn.BatchNorm1d(embedding_dim, eps=eps, affine=affine)
elif norm_type == "syncbatchnorm":
self.norm = nn.SyncBatchNorm(embedding_dim, eps=eps, affine=affine)
else:
raise ValueError("Unknown norm type: {}".format(norm_type))
def forward(self, input):
if isinstance(self.norm, nn.modules.batchnorm._BatchNorm):
if input.dim() != 3:
raise ValueError("BatchNorm inputs must be exactly 3-dimensional")
input = input.permute(1, 2, 0)
input = self.norm(input)
return input.permute(2, 0, 1)
else:
return self.norm(input)
# add this layernorm class to ALL_LAYERNORM_LAYERS
ALL_LAYERNORM_LAYERS.append(MegaSequenceNorm)
class MegaMultiDimensionDampedEma(nn.Module):
"""
Mega's Exponential Moving Average layer, largely left unmodified from the original repo with the exception of
variable names and moving away from the stateful representation of incremental decoding state. See
"https://arxiv.org/abs/2209.10655" for more details.
"""
def __init__(self, config: MegaConfig):
super().__init__()
self.config = config
self.embed_dim = config.hidden_size
self.ndim = config.ema_projection_size
self.bidirectional = config.bidirectional
self.truncation = config.truncation
self.scale = math.sqrt(1.0 / self.ndim)
kernel_dim = 2 * config.hidden_size if self.bidirectional else config.hidden_size
# renamed delta (damping_factor) and alpha (decay_factor) to be more descriptive of what the parameters are doing
self.damping_factor = nn.Parameter(torch.Tensor(kernel_dim, self.ndim, 1))
self.decay_factor = nn.Parameter(torch.Tensor(kernel_dim, self.ndim, 1))
# renamed gamma (kernel_projection_matrix) and beta (ema_expansion_matrix) respectively to avoid HF renaming
# things and align with the paper's description of these params' behavior
self.ema_expansion_matrix = nn.Parameter(torch.Tensor(kernel_dim, self.ndim, 1))
self.kernel_projection_matrix = nn.Parameter(torch.Tensor(kernel_dim, self.ndim))
# renamed omega to residual_weight to describe what it's doing
self.residual_weight = nn.Parameter(torch.Tensor(config.hidden_size))
self._kernel = None
self._coeffs = None
def _compute_ema_coefficients(self):
self._coeffs = None
# convert the alpha and delta parameters (kernel_dim x EMA projection size x 1) to [0, 1] with sigmoid
damping_factor = torch.sigmoid(self.damping_factor)
decay_factor = torch.sigmoid(self.decay_factor)
previous_timestep_weight = 1.0 - damping_factor * decay_factor
return damping_factor, previous_timestep_weight
def _compute_efficient_ema_kernel(self, length: int):
# computes the kernel used for efficient damped EMA applied via FFT convolution
self._kernel = None
# p and q have shape (kernel_dim x ema_projection_size x 1)
damping_factor, previous_timestep_weight = self._compute_ema_coefficients()
# extend the kernel to (kernel_dim X ema_projection_size X sequence_length) and
# multiply q by sequential ints up to the sequence length
vander = torch.arange(length).to(damping_factor).view(1, 1, length) * torch.log(previous_timestep_weight)
kernel = (damping_factor * self.ema_expansion_matrix) * torch.exp(vander)
# (kernel_dim X ema_projection_size X sequence_length) -> (kernel_dim, sequence_length)
return torch.einsum("dnl,dn->dl", kernel, self.kernel_projection_matrix * self.scale)
def get_ema_coefficients(self):
if self.training:
return self._compute_ema_coefficients()
else:
if self._coeffs is None:
self._coeffs = self._compute_ema_coefficients()
return self._coeffs
def get_ema_kernel(self, length: int):
kernel_size = length if self.truncation is None else min(self.truncation, length)
if self.training:
return self._compute_efficient_ema_kernel(kernel_size)
else:
if self._kernel is None or self._kernel.size(-1) < kernel_size:
self._kernel = self._compute_efficient_ema_kernel(kernel_size)
return self._kernel[..., :kernel_size]
def fft_convolution(self, inputs, kernel, length):
# this is a wrapper for repeated use of EMA calculation via FFT (fast Fourier transform) convolution
inputs_fft = torch.fft.rfft(inputs.float(), n=2 * length)
kernel_fft = torch.fft.rfft(kernel.float(), n=2 * length)
convolved_sequence = torch.fft.irfft(inputs_fft * kernel_fft, n=2 * length)
return convolved_sequence
def ema_step(self, inputs, length, past_state=None):
if length == 1:
return self.one_ema_step(inputs, past_state=past_state)
# (kernel_dim X ema_projection_size X 1)
damping_factor, previous_timestep_weight = self.get_ema_coefficients()
# (kernel_dim X ema_projection_size X 1+sequence_length)
vander = torch.arange(length + 1).to(damping_factor).view(1, 1, length + 1) * torch.log(
previous_timestep_weight
)
vander = torch.exp(vander)
if past_state is not None:
# (kernel_dim X ema_projection_size X sequence_length) * (kernel_dim X ema_projection_size X 1)
# -> (kernel_dim X ema_projection_size X sequence_length)
past_ema_proj = vander[:, :, 1:] * (self.kernel_projection_matrix * self.scale).unsqueeze(-1)
# past_state will be (batch_size, kernel_dim, ema_projection_size)
past_ema_state = torch.einsum("bdn,dnl->bdl", past_state, past_ema_proj)
# (kernel_dim X ema_projection_size) * (batch_size X kernel_dim X ema_projection_size)
# -> (batch_size X kernel_dim X ema_projection_size)
past_vandermonde = vander[:, :, -1] * past_state
else:
past_ema_state = None
past_vandermonde = None
# (kernel_dim X ema_projection_size X sequence_length)
vander = vander[:, :, :-1]
kernel = (damping_factor * self.ema_expansion_matrix) * vander
kernel_proj = torch.einsum("dnl,dn->dl", kernel, self.kernel_projection_matrix * self.scale)
ema_output = self.fft_convolution(inputs, kernel_proj, length=length)[..., 0:length]
ema_output = ema_output.type_as(inputs)
if past_ema_state is not None:
ema_output = ema_output + past_ema_state
updated_hidden_state = torch.einsum("bdl,dnl->bdn", inputs, torch.flip(kernel, dims=[2]))
if past_vandermonde is not None:
updated_hidden_state = updated_hidden_state + past_vandermonde
# return a tuple:
# (sequence_length, batch_size, kernel_dim)
# (batch_size, kernel_dim, ema_projection_size)
return ema_output.permute(2, 0, 1), updated_hidden_state
def one_ema_step(self, inputs, past_state=None):
damping_factor, previous_timestep_weight = self.get_ema_coefficients()
# (kernel_dim X ema_projection_size) x (batch_size X kernel_dim X 1)
# -> (batch_size X kernel_dim X ema_projection_size)
updated_state = (damping_factor * self.ema_expansion_matrix).squeeze(-1) * inputs
if past_state is not None:
updated_state = updated_state + previous_timestep_weight.squeeze(-1) * past_state
# (batch_size X kernel_dim)
out = torch.einsum("bdn,dn->bd", updated_state, self.kernel_projection_matrix * self.scale)
# (1 X batch_size X kernel_dim), (batch_size X kernel_dim X ema_projection_size)
return out.unsqueeze(0), updated_state
def forward(
self,
inputs,
attention_mask: Optional[torch.Tensor] = None,
prev_state: Optional[torch.Tensor] = None,
use_cache: bool = False,
) -> torch.Tensor:
"""
Mega's exponential moving average (EMA) sub-layer applied prior to single-headed (traditional) self-attention
Args:
inputs (`torch.Tensor` of shape `(sequence_length, batch_size, hidden_size)`):
Hidden state / embedding input to update via EMA based on FFT convolution
attention_mask (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Indicates which inputs are to be ignored (mostly due to padding), where elements are either 1 for *not
masked* or 0 for *masked*
prev_state (`torch.Tensor` of shape `(batch_size, config.ndim)`, *optional*):
The hidden state returned from the previous timestep during incremental decoding.
use_cache (`bool`, default `False`):
Whether to perfom incremental decoding; uses `prev_state` as the prior timestep, and returns the
updated EMA hidden state for use in the next step
Returns:
`tuple(torch.FloatTensor)` containing various elements depending on configuration ([`MegaConfig`]) and
inputs:
- **hidden_states** (`torch.FloatTensor` of shape `(sequence_length, batch_size, hidden_size)`) -- Hidden
states updated by EMA, with same shapes as inputs
- **updated_state** (*optional*, returned when `use_cache=True`) `torch.FloatTensor of shape `(batch_size,
config.ndim)` -- The incremental EMA state for use in the next step of incremental decoding
"""
seq_len, bsz, embed_dim = inputs.size()
if embed_dim != self.embed_dim:
raise ValueError(
f"Unexpected embedding dimension received: input is {embed_dim}, model expects {self.embed_dim}"
)
# sequence_length X batch_size X hidden_size
residual = inputs * self.residual_weight
# (sequence_length x batch_size x hidden_size) -> (batch_size x hidden_size x sequence_length)
inputs = inputs.permute(1, 2, 0)
# mask the input: output is a tensor with 0 in the masked positions
if attention_mask is not None:
inputs = inputs * (attention_mask.unsqueeze(1).type_as(inputs))
if self.bidirectional and use_cache:
raise RuntimeError("Bidirectional EMA does not support incremental state")
if use_cache:
out, updated_state = self.ema_step(inputs, seq_len, past_state=prev_state)
# (batch_size X hidden_size) -> (1 x batch_size x hidden_size)
out = F.silu(out + residual)
# if incremental decoding, return the new state along with the output
return out, updated_state
else:
# (hidden_size x sequence_length)
kernel = self.get_ema_kernel(seq_len)
fft_len = seq_len
s_index = 0
kernel_size = kernel.size(1)
if self.bidirectional:
# split the kernel for each direction of EMA
k1, k2 = torch.split(kernel, [self.embed_dim, self.embed_dim], dim=0)
# (hidden_size X 2*sequence_length - 1)
kernel = F.pad(k1, (kernel_size - 1, 0)) + F.pad(k2.flip(-1), (0, kernel_size - 1))
inputs = F.pad(inputs, (kernel_size - 1, 0))
fft_len = fft_len + kernel_size - 1
s_index = 2 * kernel_size - 2
ema_output = self.fft_convolution(inputs, kernel, length=fft_len)[..., s_index : s_index + seq_len]
ema_output = ema_output.type_as(inputs)
# (batch_size X hidden_size X sequence_length) -> (sequence_length X batch_size X hidden_size)
gated_ema_output = F.silu(ema_output.permute(2, 0, 1) + residual)
return gated_ema_output, None
class MegaGatedCrossAttention(nn.Module):
"""
Gated Structured State Attention for use in encoder-decoder model. See Mega paper for more details. Only
modifications from original implementation are variable names, removing the unnecessary `before_attn_fn` and
`static_kv` arguments, and the stateful representation of incremental decoder state.
"""
def __init__(self, config: MegaConfig):
super().__init__()
self.config = config
self.activation = ACT2FN[self.config.activation]
self.attention_activation = self.config.attention_activation
self.scaling = self.config.shared_representation_size**-0.5 if self.attention_activation == "softmax" else None
self.dropout = MegaDropout(self.config.dropout_prob, is_featurewise=self.config.use_feature_dropout)
self.hidden_dropout = MegaDropout(
self.config.hidden_dropout_prob, is_featurewise=self.config.use_feature_dropout
)
# Attention dropout is standard dropout
self.attention_dropout = MegaDropout(self.config.attention_probs_dropout_prob, is_featurewise=False)
self.prenorm = self.config.normalize_before_mega
self.norm = MegaSequenceNorm(
self.config.normalization_type, self.config.hidden_size, affine=self.config.norm_affine
)
self.k_proj = nn.Linear(self.config.hidden_size, self.config.shared_representation_size)
self.v_proj = nn.Linear(self.config.hidden_size, self.config.hidden_size)
self.q_proj = nn.Linear(
self.config.hidden_size, 2 * self.config.hidden_size + self.config.shared_representation_size
)
self.h_proj = nn.Linear(self.config.hidden_size, self.config.hidden_size)
if self.config.relative_positional_bias == "simple":
self.rel_pos_bias = MegaSimpleRelativePositionalBias(config)
elif self.config.relative_positional_bias == "rotary":
self.rel_pos_bias = MegaRotaryRelativePositionalBias(config)
else:
raise ValueError("unknown relative position bias: {}".format(self.config.relative_positional_bias))
self.softmax = nn.Softmax(dim=-1)
def element_attention(self, query, key, key_padding_mask, pidx):
bsz, src_len, _ = key.size()
tgt_len = query.size(1) if pidx is None else pidx + 1
if key_padding_mask is not None:
# (batch_size X source_sequence_length) --> (batch_size X 1 X 1)
lengths = key_padding_mask.sum(dim=-1).view(bsz, 1, 1)
else:
lengths = src_len
# (target_sequence_length X source_sequence_length)
bias = self.rel_pos_bias(max(tgt_len, src_len))[:, :src_len]
if pidx is not None:
if query.size(1) != 1:
raise ValueError("Position offset provided with queries longer than 1 token")
# source_sequence_length
bias = bias[pidx]
else:
# (target_sequence_length X source_sequence_length)
bias = bias[:tgt_len]
# (batch_size X target_sequence_length X source_sequence_length)
qk = torch.bmm(query, key.transpose(1, 2)) / lengths + bias
attn_weights = ACT2FN[self.attention_activation](qk).type_as(qk)
if key_padding_mask is not None:
attn_weights = attn_weights * key_padding_mask.unsqueeze(1)
return attn_weights
def softmax_attention(self, query, key, key_padding_mask, pidx):
bsz, src_len, _ = key.size()
tgt_len = query.size(1) if pidx is None else pidx + 1
# (target_sequence_length X source_sequence_length)
bias = self.rel_pos_bias(max(tgt_len, src_len))[:, :src_len]
if pidx is not None:
if query.size(1) != 1:
raise ValueError("Position offset provided with queries longer than 1 token")
# source_sequence_length
bias = bias[pidx]
else:
# (target_sequence_length X source_sequence_length)
bias = bias[:tgt_len]
# scaled attention
query = query * self.scaling
# (batch_size X target_sequence_length X source_sequence_length)
qk = torch.bmm(query, key.transpose(1, 2)) + bias
if key_padding_mask is not None:
qk = qk.masked_fill((1 - key_padding_mask).unsqueeze(1).to(torch.bool), float("-inf"))
attn_weights = self.softmax(qk).type_as(qk)
return attn_weights
def forward(
self,
query,
key: Optional[torch.Tensor],
value: Optional[torch.Tensor],
key_padding_mask: Optional[torch.Tensor] = None,
past_key_values: Optional[Tuple[torch.Tensor]] = None,
output_attentions: bool = False,
use_cache: bool = False,
) -> Tuple[torch.Tensor, Optional[torch.Tensor]]:
"""
Gated cross-attention used in Mega
Args:
query (`torch.Tensor` of shape `(target_sequence_length, batch_size, hidden_size)`):
The self (or target) sequence input used as query inputs for cross-attention
key (`torch.Tensor` of shape `(source_sequence_length, batch_size, hidden_size)`):
The cross (or source) sequence input with shape used as keys in cross-attention
value (`torch.Tensor` of shape `(source_sequence_length, batch_size, hidden_size)`):
The cross (or source) sequence input with shape used as values in cross-attention
key_padding_mask (`torch.LongTensor` of shape `(batch_size, source_sequence_length)`, *optional*):
Padding mask corresponding to the source sequence, where entries are 1 for *not masked* and 0 for
*masked* tokens
past_key_values (`tuple(torch.FloatTensor)`, *optional*):
If provided, the hidden state returned from the previous timestep during incremental decoding; expects
that prior cross-attention keys and values will be the last two items in the tuple
output_attentions (`bool`, defaults to `False`):
Whether or not to return the cross-attention weights.
use_cache (`bool`, defaults to `False`):
Whether to perfom incremental decoding; uses `prev_state` as the prior timestep, and returns the
updated EMA hidden state for use in the next step
Returns:
`tuple(torch.FloatTensor)` containing various elements depending on configuration ([`MegaConfig`]) and
inputs:
- **hidden_states** (`torch.FloatTensor` of shape `(target_sequence_length, batch_size, hidden_size)`) --
Hidden states from target sequence updated by gated cross-attention
- **attn_weights** (*optional*, returned when `output_attentions=True`) `torch.FloatTensor` of shape
`(batch_size, source_sequence_length, target_sequence_length)` -- The pairwise cross-attention weights
corresponding to each token in the source and target sequences
- **cross_key** (*optional*, returned when `use_cache=True`) `torch.FloatTensor` of shape `(batch_size,
source_sequence_length, config.shared_representation_size)` -- The cross-attention key state for use in
the next step of incremental decoding
- **cross_value** (*optional*, returned when `use_cache=True`) `torch.FloatTensor` of shape `(batch_size,
source_sequence_length, config.hidden_size)` -- The cross-attention value state for use in the next step
of incremental decoding
"""
seq_len, bsz, embed_dim = query.size()
if embed_dim != self.config.hidden_size:
raise ValueError(
f"Unexpected embedding dimension received: input is {embed_dim} but expected {self.config.hidden_size}"
)
if past_key_values is not None:
# make sure the inputs only have a sequence length of 1 if we're doing incremental decoding
if seq_len != 1:
raise ValueError(f"Incremental decoding requested with self-sequence length > 1: {seq_len}")
# expect past_key_values to have (self_key, self_value, self_ema, cross_key, cross_value)
prev_cross_key, prev_cross_value = past_key_values[-2:]
key = value = None
# use the self-attention cache to get the position id of the current step
prev_self_key = past_key_values[0]
num_incremental_steps = prev_self_key.size(1) + 1
else:
prev_cross_key = prev_cross_value = None
# we still need the position id if we're doing incremental decoding (past_key_values will be None for the first step)
num_incremental_steps = 0 if use_cache and (seq_len == 1) else None
full_query = query
if self.prenorm:
full_query = self.norm(full_query)
# (target_sequence_length X batch_size X 2*hidden_size + shared_representation_size)
query_projected = self.q_proj(full_query)
# split the query projections into separate components
# - residual_weight is passed through sigmoid and sent through elementwise multiplication to the gated/weighted targets prior to being added to the query directly
# - target_gate is a silu-gated tensor that is multiplied by the attention-weighted target below prior to residual connection
# - attention_query is the part that is passed to the attention function
residual_weight, target_gate, attention_query = torch.split(
query_projected,
[self.config.hidden_size, self.config.hidden_size, self.config.shared_representation_size],
dim=-1,
)
# (target_sequence_length X batch_size X hidden_size)
residual_weight = torch.sigmoid(residual_weight)
target_gate = F.silu(target_gate)
if key is None:
if value is not None:
raise ValueError("Key and value must be `None` simultaneously")
projected_key = projected_value = None
else:
# (source_sequence_length X batch_size X shared_representation_size)
projected_key = self.k_proj(key)
# (source_sequence_length X batch_size X hidden_size)
projected_value = self.activation(self.v_proj(key))
# (target_sequence_length X batch_size X shared_representation_size)
# -> (batch_size X target_sequence_length X shared_representation_size)
attention_query = attention_query.transpose(0, 1)
if projected_key is not None:
projected_key = projected_key.transpose(0, 1)
if projected_value is not None:
projected_value = projected_value.transpose(0, 1)
# if we're doing incremental decoding, k and v are None and need to be overwritten with past values
if past_key_values is not None:
projected_key = prev_cross_key
projected_value = prev_cross_value
# if we're returning the cache for later use, store these now for later return (can be done without having past_key_values provided)
if use_cache:
updated_cross_key = projected_key
updated_cross_value = projected_value
ctx_len = projected_key.size(1)
# This is part of a workaround to get around fork/join parallelism
# not supporting Optional types.
if key_padding_mask is not None and key_padding_mask.dim() == 0:
key_padding_mask = None
if key_padding_mask is not None:
if key_padding_mask.size(0) != bsz:
raise ValueError("Key padding mask does not align on the batch dimension")
if key_padding_mask.size(1) != ctx_len:
raise ValueError("Key padding mask does not align on the sequence length dimension")
if self.attention_activation == "softmax":
attn_weights = self.softmax_attention(
attention_query, projected_key, key_padding_mask, num_incremental_steps
)
else:
attn_weights = self.element_attention(
attention_query, projected_key, key_padding_mask, num_incremental_steps
)
projected_value = self.hidden_dropout(projected_value, batch_first=True)
kernel = self.attention_dropout(attn_weights)
# (batch_size X target_sequence_length X hidden_size)
# -> (target_sequence_length X batch_size X hidden_size)
weighted_targets = torch.bmm(kernel, projected_value).transpose(0, 1)
# (target_sequence_length X batch_size X hidden_size)
weighted_targets = self.activation(self.h_proj(weighted_targets * target_gate))
weighted_targets = self.dropout(weighted_targets)
out = torch.addcmul(query, residual_weight, weighted_targets - query)
if not self.prenorm:
out = self.norm(out)
outputs = (out, attn_weights) if output_attentions else (out,)
if use_cache:
outputs = outputs + (updated_cross_key, updated_cross_value)
return outputs
class MegaMovingAverageGatedAttention(nn.Module):
"""
Pure PyTorch implementation of Mega block; see https://arxiv.org/abs/2209.10655 and original fairseq implementation
at https://github.com/facebookresearch/mega (copyright Meta Research, licensed under MIT License)
Differences from original implementation include hidden state refactor and fixed inconsistency with additive /
multiplicative attention masks
"""
def __init__(self, config: MegaConfig):
super().__init__()
self.config = config
self.activation = ACT2FN[self.config.activation]
self.scaling = (
self.config.shared_representation_size**-0.5 if self.config.attention_activation == "softmax" else None
)
self.dropout = MegaDropout(self.config.dropout_prob, is_featurewise=self.config.use_feature_dropout)
self.hidden_dropout = MegaDropout(
self.config.hidden_dropout_prob, is_featurewise=self.config.use_feature_dropout
)
# attention dropout is standard dropout
self.attention_dropout = MegaDropout(self.config.attention_probs_dropout_prob, is_featurewise=False)
self.norm = MegaSequenceNorm(
self.config.normalization_type, self.config.hidden_size, affine=self.config.norm_affine
)
self.ema_gate = MegaMultiDimensionDampedEma(config)
self.v_proj = nn.Linear(self.config.hidden_size, self.config.intermediate_size)
self.mx_proj = nn.Linear(
self.config.hidden_size,
self.config.shared_representation_size + self.config.intermediate_size + 2 * self.config.hidden_size,
)
self.h_proj = nn.Linear(self.config.intermediate_size, self.config.hidden_size)
self.qk_weight = nn.Parameter(torch.Tensor(2, self.config.shared_representation_size))
self.qk_bias = nn.Parameter(torch.Tensor(2, self.config.shared_representation_size))
if self.config.relative_positional_bias == "simple":
self.rel_pos_bias = MegaSimpleRelativePositionalBias(config)
elif self.config.relative_positional_bias == "rotary":
self.rel_pos_bias = MegaRotaryRelativePositionalBias(config)
else:
raise ValueError(f"Unknown relative positional bias: {self.config.relative_positional_bias}")
self.softmax = nn.Softmax(dim=-1)
self.attention_function = (
self.softmax_attention if self.config.attention_activation == "softmax" else self.element_attention
)
def element_attention(self, query, key, padding_mask, causal_mask):
"""
Apply element-wise attention via relu^2 or laplace. Same as original implementation but with standardized
causal attention mask. Expects the Hugging Face standard attention mask paradigm: 1 for not masked, and 0 for
masked.
"""
seq_len = key.size(2)
if padding_mask is not None:
# (batch_size X number of chunks X 1)
lengths = padding_mask.sum(-1, keepdim=True)
# (batch_size X number of chunks X 1 X 1)
lengths = lengths.clamp(min=1.0).unsqueeze(-1)
else:
lengths = seq_len
if causal_mask is not None:
lengths = causal_mask.sum(dim=-1, keepdim=True)
# (sequence_length X sequence_length)
bias = self.rel_pos_bias(seq_len)
if seq_len != query.size(2):
if query.size(2) != 1:
raise ValueError("Size mismatch between Q and K in element attention")
# (1 X sequence_length)
bias = bias[-1:]
# (batch_size X number of chunks X sequence_length X sequence_length)
qk = torch.matmul(query, key.transpose(2, 3)) / lengths + bias
attn_weights = ACT2FN[self.config.attention_activation](qk).type_as(qk)
if padding_mask is not None:
attn_weights = attn_weights * padding_mask.unsqueeze(2)
if causal_mask is not None:
attn_weights = attn_weights * causal_mask
return attn_weights
def softmax_attention(self, query, key, padding_mask, causal_mask):
"Standard softmax self-attention, as in the original Transformer paper"
seq_len = key.size(2)
# (sequence_length X sequence_length)
bias = self.rel_pos_bias(seq_len)
if seq_len != query.size(2):
if query.size(2) != 1:
raise ValueError("Size mismatch between Q and K in softmax attention")
# (1 X sequence_length)
bias = bias[-1:]
# scaled attention
query = query * self.scaling
# (batch_size x number of chunks x chunk_size x chunk_size) if chunking
# (batch_size x 1 x sequence_length x sequence_length) otherwise
qk = torch.matmul(query, key.transpose(2, 3)) + bias
# apply causal mask (presumed to be 1/0 for not masked / masked)
# additive, but convert to 0/-inf (which is not explicitly in the Mega source code)
if causal_mask is not None:
additive_causal_mask = torch.zeros_like(causal_mask, dtype=qk.dtype)
additive_causal_mask = additive_causal_mask.masked_fill((1 - causal_mask).bool(), float("-inf"))
qk = qk + additive_causal_mask
if padding_mask is not None:
# 1 for tokens which are *not masked*
# 0 for tokens which are *masked*
# replace masked tokens with -inf to make softmax ignore them
# need to invert the padding mask to match what mega original did
padding_mask = 1 - padding_mask
padding_mask_all = padding_mask.all(dim=-1, keepdim=True)
padding_mask = torch.logical_and(padding_mask, ~padding_mask_all)
qk = qk.masked_fill(padding_mask.unsqueeze(2).to(torch.bool), float("-inf"))
attn_weights = self.softmax(qk).type_as(qk)
return attn_weights
def forward(
self,
input,
padding_mask: Optional[torch.Tensor] = None,
causal_mask: Optional[torch.Tensor] = None,
past_key_values: Optional[Tuple[torch.Tensor]] = None,
output_attentions=False,
use_cache=False,
):
"""
Mega's self-attention block, which combines multi-headed EMA with traditional self-attention
Args:
input (`torch.Tensor` of shape `(sequence_length, batch_size, hidden_size)`):
Hidden states to be updated by Mega's self-attention
padding_mask (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Indicates which inputs are to be ignored due to padding, where elements are either 1 for *not masked*
or 0 for *masked*
causal_mask (`torch.LongTensor` of shape `(sequence_length, sequence_length)`, *optional*):
Indicates which inputs are to be ignored due to causal attention, where elements are either 1 for *not
masked* or 0 for *masked*
past_key_values (`tuple(torch.Tensor)`, *optional*):
The hidden states returned from the previous timestep during incremental decoding; expects that
self-attention key, value, and EMA states are the first 3 entries in the tuple
output_attentions (`bool`, default `False`):
Whether to return self-attention weights
use_cache (`bool`, default `False`):
Whether to perfom incremental decoding; uses `past_key_values` as prior state, and returns the updated
states for use in the next step
Returns:
`tuple(torch.FloatTensor)` containing various elements depending on configuration ([`MegaConfig`]) and
inputs:
- **hidden_states** (`torch.FloatTensor` of shape `(sequence_length, batch_size, hidden_size)`) -- Hidden
states from target sequence updated by Mega's self-attention
- **attn_weights** (*optional*, returned when `output_attentions=True`) `torch.FloatTensor` of shape
`(batch_size, 1, sequence_length, sequence_length)` -- The self-attention weights corresponding to how
each token in the input sequence attends to every other token
- **self_key** (*optional*, returned when `use_cache=True`) `torch.FloatTensor` of shape `(batch_size,
sequence_length, config.shared_representation_size)` -- The self-attention key state for use in the next
step of incremental decoding
- **self_value** (*optional*, returned when `use_cache=True`) `torch.FloatTensor` of shape `(batch_size,
sequence_length, config.hidden_size)` -- The self-attention value state for use in the next step of
incremental decoding
- **self_ema_state** (*optional*, returned when `use_cache=True`) `torch.FloatTensor` of shape
`(batch_size, config.ndim)` The incremental EMA state for use in the next step of incremental decoding.
"""
seq_len, bsz, embed_dim = input.size()
if embed_dim != self.config.hidden_size:
raise ValueError(f"Input embedding dimension should be {self.config.hidden_size}; received {embed_dim}")
# store inputs for residual connection and handle pre-norm if requested
residual = input
if self.config.normalize_before_mega:
input = self.norm(input)
# (sequence_length X batch_size X hidden_size) -> (sequence_length X batch_size X intermediate_size)
value = self.activation(self.v_proj(input))
# unpack the incremental state if provided
# assumed to be (self K, self V, self EMA state, cross K, cross V)
# also assumes that incremental decoding is working one token at a time, so input sequence length must be 1
if self.config.is_decoder and (past_key_values is not None):
if seq_len > 1:
raise ValueError(f"Incremental decoding only supports self sequence length of 1; received {seq_len}")
# the first 3 items in the saved states will be these regardless of whether cross-attention is present
prev_self_key, prev_self_value, prev_ema_state = past_key_values[0:3]
else:
prev_self_key = prev_self_value = prev_ema_state = None
# ema output is (sequence_length x batch_size x hidden_size)
# updated_ema_state will be None if use_cache=False; otherwise (batch_size, config.ndim)
ema_out, updated_ema_state = self.ema_gate(
input, attention_mask=padding_mask, prev_state=prev_ema_state, use_cache=use_cache
)
ema_out = self.dropout(ema_out)
# (sequence_length X batch_size X hidden_size)
# -> (sequence_length X batch_size X 2*hidden_size + config.shared_representation_size + config.intermediate_size)
# - residual_weight -> sigmoid -> applied to residual connection in torch.addcmul
# - query_key_gates -> split into two components: query_key becomes query and key for attention input, gates becomes gating for self-attention output
# - intermediate_state -> added to weighted attention output, sent through activation, and has inputs subtracted during
# torch.addcmul to create the final layer output
base = self.mx_proj(ema_out)
residual_weight, query_key_gates, intermediate_state = torch.split(
base,
[
self.config.hidden_size,
self.config.shared_representation_size + self.config.intermediate_size,
self.config.hidden_size,
],
dim=-1,
)
# (sequence_length X batch_size X hidden_size)
residual_weight = torch.sigmoid(residual_weight)
# (sequence_length X batch_size X shared_representation_size + intermediate_size)
query_key_gates = F.silu(query_key_gates)
# split into two different tensors: one for Q/K usage and the other for gating self-attention
query_key, attention_gate = torch.split(
query_key_gates, [self.config.shared_representation_size, self.config.intermediate_size], dim=-1
)
# (sequence_length X batch_size X shared_representation_size)
# -> (sequence_length X batch_size X 1 X shared_representation_size)
# -> (sequence_length X batch_size X 2 X shared_representation_size)
query_key = query_key.unsqueeze(2) * self.qk_weight + self.qk_bias
# (sequence_length X batch_size X 2 X shared_representation_size)
# -> 2 tensors of (sequence_length X batch_size X shared_representation_size)
query, key = torch.unbind(query_key, dim=2)
# (sequence_length X batch_size X dimension)
# -> (batch_size X sequence_length X dimension)
# where `dimension` is either shared_representation_size (queries and keys) or intermediate_size (values)
query = query.transpose(0, 1)
key = key.transpose(0, 1)
value = value.transpose(0, 1)
if self.config.is_decoder:
# combine history and current to save updated state (if history is provided)
# when chunking is applied, the past states will be None at the end of the chunk, in
# which case, proceed as if no K/V history had been provided
# saved states are stored with shape (batch_size X sequence_length X dimension)
if prev_self_key is not None:
key = torch.cat([prev_self_key, key], dim=1)
if prev_self_value is not None:
value = torch.cat([prev_self_value, value], dim=1)
# if not chunking, store as-is
if not self.config.use_chunking:
updated_self_key = key
updated_self_value = value
else:
curr_len = key.size(1) % self.config.chunk_size
if curr_len == 0:
# if we're chunking and have reached the end of a chunk, wipe out the saved state
updated_self_key = None
updated_self_value = None
else:
updated_self_key = key
updated_self_value = value
ctx_len = key.size(1) # potentially differs from seq_len because of incremental decoding
if not self.config.use_chunking:
# if we're not chunking, treat the entire sequence as one long chunk
# (batch_size X sequence_length X dimension) -> (batch_size X 1 X sequence_length X dimension)
query = query.unsqueeze(1)
key = key.unsqueeze(1)
value = value.unsqueeze(1)
if padding_mask is not None:
# (batch_size X sequence_length) -> (batch_size X 1 X sequence_length)
padding_mask = padding_mask.unsqueeze(1)
else:
# otherwise, split the sequences in the batch into `n_chunks` chunks of size `chunk_size`
if seq_len < self.config.chunk_size:
query = query.unsqueeze(1)
else:
# (batch_size X sequence_length X dimension) -> (batch_size X n_chunks X chunk_size X dimension)
n_chunks = seq_len // self.config.chunk_size
query = query.reshape(bsz, n_chunks, self.config.chunk_size, self.config.shared_representation_size)
if ctx_len < self.config.chunk_size:
key = key.unsqueeze(1)
value = value.unsqueeze(1)
if padding_mask is not None:
padding_mask = padding_mask.unsqueeze(1)
else:
# (batch_size X sequence_length X dimension) -> (batch_size X n_chunks X chunk_size X dimension)
n_chunks = ctx_len // self.config.chunk_size
key = key.reshape(bsz, n_chunks, self.config.chunk_size, self.config.shared_representation_size)
value = value.reshape(bsz, n_chunks, self.config.chunk_size, self.config.intermediate_size)
if padding_mask is not None:
padding_mask = padding_mask.view(bsz, n_chunks, self.config.chunk_size)
# this is in the original Mega implementation to work around fork/join parallelism not supporting optional types
if padding_mask is not None and padding_mask.dim() == 0:
padding_mask = None
attn_weights = self.attention_function(query, key, padding_mask=padding_mask, causal_mask=causal_mask)
value = self.hidden_dropout(value, batch_first=True)
kernel = self.attention_dropout(attn_weights)
# (batch_size x n_chunks x chunk_size x intermediate_size) -> (sequence_length X batch_size X intermediate_size)
weighted_self_output = (
torch.matmul(kernel, value).view(bsz, seq_len, self.config.intermediate_size).transpose(0, 1)
)
# (sequence_length X batch_size X intermediate_size) -> (sequence_length X batch_size X hidden_size)
weighted_self_output = self.activation(intermediate_state + self.h_proj(weighted_self_output * attention_gate))
weighted_self_output = self.dropout(weighted_self_output)
# (sequence_length X batch_size X hidden_size)
out = torch.addcmul(residual, residual_weight, weighted_self_output - residual)
if not self.config.normalize_before_mega:
out = self.norm(out)
return_values = (out, attn_weights) if output_attentions else (out,)
if self.config.is_decoder:
return_values = return_values + (updated_self_key, updated_self_value, updated_ema_state)
return return_values
class MegaNormalizedFeedForwardNetwork(nn.Module):
"""
Normalized feed-forward network used in Mega blocks. Left as-is from original Mega repo aside from retrieving args
from Hugging Face config
"""
def __init__(self, config: MegaConfig):
super().__init__()
self.config = config
self.hidden_dim = config.nffn_hidden_size
self.act_fn = config.activation
self.activation = ACT2FN[config.activation]
self.dropout = MegaDropout(self.config.dropout_prob, is_featurewise=self.config.use_feature_dropout)
self.hidden_dropout = MegaDropout(
self.config.nffn_activation_dropout_prob, is_featurewise=self.config.use_feature_dropout
)
self.prenorm = self.config.normalize_before_ffn
self.norm = MegaSequenceNorm(
self.config.normalization_type, self.config.hidden_size, affine=self.config.norm_affine
)
self.fc1 = nn.Linear(self.config.hidden_size, self.config.nffn_hidden_size)
self.fc2 = nn.Linear(self.config.nffn_hidden_size, self.config.hidden_size)
def forward(self, inputs):
residual = inputs
if self.prenorm:
inputs = self.norm(inputs)
hidden = self.activation(self.fc1(inputs))
hidden = self.hidden_dropout(hidden)
output = self.fc2(hidden)
output = self.dropout(output)
output = output + residual
if not self.prenorm:
output = self.norm(output)
return output
class MegaBlock(nn.Module):
def __init__(self, config: MegaConfig):
super().__init__()
self.seq_len_dim = 1
self.mega_layer = MegaMovingAverageGatedAttention(config)
self.nffn = MegaNormalizedFeedForwardNetwork(config) if config.use_normalized_ffn else None
self.is_decoder = config.is_decoder
self.add_cross_attention = config.add_cross_attention
if self.add_cross_attention:
if not self.is_decoder:
raise ValueError(f"{self} should be used as a decoder model if cross attention is added")
self.cross_attn = MegaGatedCrossAttention(config)
else:
self.cross_attn = None
def forward(
self,
hidden_states: torch.Tensor,
attention_mask: Optional[torch.LongTensor] = None,
causal_mask: Optional[torch.LongTensor] = None,
encoder_hidden_states: Optional[torch.FloatTensor] = None,
encoder_attention_mask: Optional[torch.FloatTensor] = None,
past_key_value: Optional[Tuple[torch.FloatTensor]] = None,
output_attentions: Optional[bool] = False,
use_cache: bool = False,
) -> Tuple[torch.Tensor]:
"""
A single Mega layer: either encoder or decoder, with optional cross-attention and optional normalized
feed-forward layer
Args:
hidden_states (`torch.Tensor` of shape `(target_sequence_length, batch_size, hidden_size)`):
Hidden states to be updated by the Mega block
attention_mask (`torch.LongTensor` of shape `(batch_size, target_sequence_length)`, *optional*):
Indicates which entries in the self/target sequence are to be ignored (mostly due to padding), where
elements are either 1 for *not masked* or 0 for *masked*. Causal attention is enforced internally.
causal_mask (`torch.LongTensor` of shape `(sequence_length, sequence_length)`, *optional*):
Indicates which inputs are to be ignored due to causal attention, where elements are either 1 for *not
masked* or 0 for *masked*
encoder_hidden_states (`torch.Tensor`, of shape `(source_sequence_length, batch_size, hidden_size)`, *optional*):
Encoder hidden states to be used for cross-attention (and required for encoder-decoder model setup)
encoder_attention_mask (`torch.LongTensor` of shape `(batch_size, source_sequence_length)`, *optional*):
Indicates which entries in the cross/source sequence are to be ignored (mostly due to padding), where
elements are either 1 for *not masked* or 0 for *masked*.
past_key_value (`tuple(torch.Tensor)`, *optional*):
The hidden states returned from the previous timestep during incremental decoding; expects that
self-attention key, value, and EMA states are the first 3 entries in the tuple, and (if doing
cross-attention) cross-attention key and value are the last 2 entries in the tuple
output_attentions (`bool`, default `False`):
Whether to return self-attention weights
use_cache (`bool`, default `False`):
Whether to perfom incremental decoding; uses `past_key_value` as prior state, and returns the updated
states for use in the next step
Returns:
`tuple(torch.FloatTensor)` containing various elements depending on configuration ([`MegaConfig`]) and
inputs:
- **hidden_states** (`torch.FloatTensor` of shape `(target_sequence_length, batch_size, hidden_size)`) --
Hidden states from target sequence updated by Mega
- **self_attn_weights** (*optional*, returned when `output_attentions=True`) `torch.FloatTensor` of shape
`(batch_size, 1, target_sequence_length, target_sequence_length)` -- The self-attention weights
corresponding to how each token in the input sequence attends to every other token
- **cross_attn_weights** (*optional*, returned when `output_attentions=True` and
`config.add_cross_attention=True`) `torch.FloatTensor` of shape `(batch_size, source_sequence_length,
target_sequence_length)` -- Pairwise cross-attention weights between every entry in the source sequence
and target sequence
- **self_key** (*optional*, returned when `use_cache=True`) `torch.FloatTensor` of shape `(batch_size,
sequence_length, config.shared_representation_size)` -- The self-attention key state for use in the next
step of incremental decoding
- **self_value** (*optional*, returned when `use_cache=True`) `torch.FloatTensor` of shape `(batch_size,
sequence_length, config.hidden_size)` -- The self-attention value state for use in the next step of
incremental decoding
- **self_ema_state** (*optional*, returned when `use_cache=True`) `torch.FloatTensor` of shape
`(batch_size, config.ndim)` The incremental EMA state for use in the next step of incremental decoding.
- **cross_key** (*optional*, returned when `use_cache=True` and `config.is_decoder=True`)
`torch.FloatTensor` of shape `(batch_size, source_sequence_length, config.shared_representation_size)` --
The cross-attention key state for use in the next step of incremental decoding
- **cross_value** (*optional*, returned when `use_cache=True` and `config.is_decoder=True`)
`torch.FloatTensor` of shape `(batch_size, source_sequence_length, config.hidden_size)` -- The
cross-attention value state for use in the next step of incremental decoding
"""
# incremental decoding in the MegaMultiDimensionDampedEma module requires that the attention mask has the same
# sequence length as the input tensor; if we're caching incremental states, we assume the input
# sequence length is 1 (Mega will break otherwise), so we take the padding mask for the final
# token in the input (mask is received as [batch X sequence length])
if use_cache and (past_key_value is not None) and (attention_mask is not None):
mega_padding_mask = attention_mask[:, -1].unsqueeze(-1)
else:
mega_padding_mask = attention_mask
mega_outputs = self.mega_layer(
input=hidden_states,
padding_mask=mega_padding_mask,
causal_mask=causal_mask,
past_key_values=past_key_value,
output_attentions=output_attentions,
use_cache=use_cache,
)
new_hidden_states = mega_outputs[0]
self_key, self_value, self_ema_state = mega_outputs[-3:] if use_cache else (None, None, None)
self_attention_weights = mega_outputs[1] if output_attentions else None
# optional cross attention
if self.cross_attn is not None:
if encoder_hidden_states is None:
raise ValueError("Requested cross-attention without providing encoder hidden states")
cross_attn_outputs = self.cross_attn(
query=new_hidden_states,
key=encoder_hidden_states,
value=encoder_hidden_states,
key_padding_mask=encoder_attention_mask,
past_key_values=past_key_value,
output_attentions=output_attentions,
use_cache=use_cache,
)
# update the hidden state from cross attention
new_hidden_states = cross_attn_outputs[0]
# store cross-attention k/v if caching
cross_key, cross_value = cross_attn_outputs[-2:] if use_cache else (None, None)
cross_attention_weights = cross_attn_outputs[1] if output_attentions else None
# optional NFFN follows cross attention
if self.nffn is not None:
new_hidden_states = self.nffn(new_hidden_states)
outs = (new_hidden_states,)
if output_attentions:
outs = outs + (self_attention_weights,)
if self.cross_attn is not None:
outs = outs + (cross_attention_weights,)
if use_cache:
new_key_values = (
self_key,
self_value,
self_ema_state,
)
if self.cross_attn is not None:
new_key_values = new_key_values + (cross_key, cross_value)
outs = outs + (new_key_values,)
return outs
# copied from transformers.models.roberta.modeling_roberta.RobertaPooler with Roberta->Mega
class MegaPooler(nn.Module):
def __init__(self, config):
super().__init__()
self.dense = nn.Linear(config.hidden_size, config.hidden_size)
self.activation = nn.Tanh()
def forward(self, hidden_states: torch.Tensor) -> torch.Tensor:
# We "pool" the model by simply taking the hidden state corresponding
# to the first token.
first_token_tensor = hidden_states[:, 0]
pooled_output = self.dense(first_token_tensor)
pooled_output = self.activation(pooled_output)
return pooled_output
class MegaPreTrainedModel(PreTrainedModel):
"""
An abstract class to handle weights initialization and a simple interface for downloading and loading pretrained
models.
"""
config_class = MegaConfig
base_model_prefix = "mega"
supports_gradient_checkpointing = False
_no_split_modules = ["MegaMovingAverageGatedAttention"]
def _init_weights(self, module):
"""Initialize the weights"""
if isinstance(module, MegaMultiDimensionDampedEma):
with torch.no_grad():
# delta & alpha
nn.init.normal_(module.damping_factor, mean=0.0, std=self.config.ema_delta_alpha_range)
nn.init.normal_(module.decay_factor, mean=0.0, std=self.config.ema_delta_alpha_range)
# beta [1, -1, 1, -1, ...] seems more stable.
val = torch.ones(self.config.ema_projection_size, 1)
if self.config.ema_projection_size > 1:
idx = torch.tensor(list(range(1, self.config.ema_projection_size, 2)))
val.index_fill_(0, idx, -1.0)
module.ema_expansion_matrix.normal_(mean=0.0, std=self.config.ema_beta_range).add_(val)
# gamma & omega
nn.init.normal_(module.kernel_projection_matrix, mean=0.0, std=self.config.ema_gamma_omega_range)
nn.init.normal_(module.residual_weight, mean=0.0, std=self.config.ema_gamma_omega_range)
elif isinstance(module, MegaSimpleRelativePositionalBias):
nn.init.normal_(module.rel_pos_bias, mean=0.0, std=self.config.initializer_range)
elif isinstance(module, MegaRotaryRelativePositionalBias):
nn.init.normal_(module.alpha, mean=0.0, std=self.config.initializer_range)
nn.init.normal_(module.b_param, mean=0.0, std=self.config.initializer_range)
elif isinstance(module, MegaScaleNorm):
if self.config.norm_affine:
nn.init.constant_(module.scalar, 1.0)
elif isinstance(module, MegaRMSNorm):
if self.config.norm_affine:
nn.init.constant_(module.weight, 1.0)
elif isinstance(module, MegaMovingAverageGatedAttention):
# linear layers covered separately by the generic nn.Linear init below
nn.init.normal_(module.qk_weight, mean=0.0, std=self.config.initializer_range)
nn.init.constant_(module.qk_bias, 0.0)
elif isinstance(module, nn.Linear):
# initializes all linear layers in the entire network
module.weight.data.normal_(mean=0.0, std=self.config.initializer_range)
if module.bias is not None:
module.bias.data.zero_()
elif isinstance(module, nn.Embedding):
module.weight.data.normal_(mean=0.0, std=self.config.initializer_range)
if module.padding_idx is not None:
module.weight.data[module.padding_idx].zero_()
elif isinstance(module, nn.LayerNorm):
module.bias.data.zero_()
module.weight.data.fill_(1.0)
MEGA_START_DOCSTRING = r"""
This model inherits from [`PreTrainedModel`]. Check the superclass documentation for the generic methods the
library implements for all its model (such as downloading or saving, resizing the input embeddings, pruning heads
etc.)
This model is also a PyTorch [torch.nn.Module](https://pytorch.org/docs/stable/nn.html#torch.nn.Module) subclass.
Use it as a regular PyTorch Module and refer to the PyTorch documentation for all matter related to general usage
and behavior.
Parameters:
config ([`MegaConfig`]): Model configuration class with all the parameters of the
model. Initializing with a config file does not load the weights associated with the model, only the
configuration. Check out the [`~PreTrainedModel.from_pretrained`] method to load the model weights.
"""
MEGA_INPUTS_DOCSTRING = r"""
Args:
input_ids (`torch.LongTensor` of shape `({0})`):
Indices of input sequence tokens in the vocabulary.
Indices can be obtained using [`AutoTokenizer`]. See [`PreTrainedTokenizer.encode`] and
[`PreTrainedTokenizer.__call__`] for details.
[What are input IDs?](../glossary#input-ids)
attention_mask (`torch.FloatTensor` of shape `({0})`, *optional*):
Mask to avoid performing attention on padding token indices. Mask values selected in `[0, 1]`:
- 1 for tokens that are **not masked**,
- 0 for tokens that are **masked**.
[What are attention masks?](../glossary#attention-mask)
token_type_ids (`torch.LongTensor` of shape `({0})`, *optional*):
Segment token indices to indicate first and second portions of the inputs. Indices are selected in `[0,1]`:
- 0 corresponds to a *sentence A* token,
- 1 corresponds to a *sentence B* token.
This parameter can only be used when the model is initialized with `add_token_type_embeddings` parameter
set to `True`. All the value in this tensor should be always < config.type_vocab_size.
[What are token type IDs?](../glossary#token-type-ids)
inputs_embeds (`torch.FloatTensor` of shape `({0}, hidden_size)`, *optional*):
Optionally, instead of passing `input_ids` you can choose to directly pass an embedded representation. This
is useful if you want more control over how to convert `input_ids` indices into associated vectors than the
model's internal embedding lookup matrix.
output_attentions (`bool`, *optional*):
Whether or not to return the attentions tensors of all attention layers. See `attentions` under returned
tensors for more detail.
output_hidden_states (`bool`, *optional*):
Whether or not to return the hidden states of all layers. See `hidden_states` under returned tensors for
more detail.
return_dict (`bool`, *optional*):
Whether or not to return a [`~utils.ModelOutput`] instead of a plain tuple.
"""
@add_start_docstrings(
"The bare MEGA Model transformer outputting raw hidden-states without any specific head on top.",
MEGA_START_DOCSTRING,
)
class MegaModel(MegaPreTrainedModel):
"""
The model can behave as an encoder (with only self-attention) as well as a decoder, in which case a layer of
cross-attention is added after self-attention, following the architecture described in *Mega: Moving Average
Equipped Gated Attention*_ by Xuezhe Ma, Chunting Zhou, Xiang Kong, Junxian He, Liangke Gui, Graham Neubig,
Jonathan May, and Luke Zettlemoyer
To behave as a decoder the model needs to be initialized with the `is_decoder` argument of the configuration set to
`True` and `bidirectional` set to `False`. To be used in a Seq2Seq model, the model needs to initialized with both
`is_decoder=True` and `bidirectional=False` argument as well as `add_cross_attention` set to `True`; an
`encoder_hidden_states` is then expected as an input to the forward pass.
.. _*Mega: Moving Average Equipped Gated Attention*: https://arxiv.org/abs/2209.10655
"""
def __init__(self, config: MegaConfig, add_pooling_layer=True):
super().__init__(config)
self.config = config
self.embedding_layer = MegaEmbeddings(config)
self.layers = nn.ModuleList([MegaBlock(config) for _ in range(config.num_hidden_layers)])
self.pooler = MegaPooler(config) if add_pooling_layer else None
# Initialize weights and apply final processing (retained from RoBERTa code)
self.post_init()
def get_input_embeddings(self):
return self.embedding_layer.word_embeddings
def set_input_embeddings(self, value):
self.embedding_layer.word_embeddings = value
@add_start_docstrings_to_model_forward(MEGA_INPUTS_DOCSTRING.format("batch_size, sequence_length"))
@add_code_sample_docstrings(
checkpoint=_CHECKPOINT_FOR_DOC,
output_type=BaseModelOutputWithPoolingAndCrossAttentions,
config_class=_CONFIG_FOR_DOC,
)
def forward(
self,
input_ids: Optional[torch.Tensor] = None,
attention_mask: Optional[torch.Tensor] = None,
token_type_ids: Optional[torch.Tensor] = None,
inputs_embeds: Optional[torch.Tensor] = None,
encoder_hidden_states: Optional[torch.Tensor] = None,
encoder_attention_mask: Optional[torch.Tensor] = None,
past_key_values: Optional[List[torch.FloatTensor]] = None,
use_cache: Optional[bool] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
return_dict: Optional[bool] = None,
) -> Union[Tuple[torch.Tensor], BaseModelOutputWithPoolingAndCrossAttentions]:
r"""
encoder_hidden_states (`torch.FloatTensor` of shape `(batch_size, sequence_length, hidden_size)`, *optional*):
Sequence of hidden-states at the output of the last layer of the encoder. Used in the cross-attention if
the model is configured as a decoder.
encoder_attention_mask (`torch.FloatTensor` of shape `(batch_size, sequence_length)`, *optional*):
Mask to avoid performing attention on the padding token indices of the encoder input. This mask is used in
the cross-attention if the model is configured as a decoder. Mask values selected in `[0, 1]`:
- 1 for tokens that are **not masked**,
- 0 for tokens that are **masked**.
past_key_values (`tuple(tuple(torch.FloatTensor))` of length `config.n_layers` with each tuple having 4 tensors of shape `(batch_size, num_heads, sequence_length - 1, embed_size_per_head)`):
Contains precomputed key and value hidden states of the attention blocks. Can be used to speed up decoding.
If `past_key_values` are used, the user can optionally input only the last `decoder_input_ids` (those that
don't have their past key value states given to this model) of shape `(batch_size, 1)` instead of all
`decoder_input_ids` of shape `(batch_size, sequence_length)`.
use_cache (`bool`, *optional*):
If set to `True`, `past_key_values` key value states are returned and can be used to speed up decoding (see
`past_key_values`).
"""
output_attentions = output_attentions if output_attentions is not None else self.config.output_attentions
output_hidden_states = (
output_hidden_states if output_hidden_states is not None else self.config.output_hidden_states
)
return_dict = return_dict if return_dict is not None else self.config.use_return_dict
if input_ids is not None and inputs_embeds is not None:
raise ValueError("You cannot specify both input_ids and inputs_embeds at the same time")
elif input_ids is not None:
self.warn_if_padding_and_no_attention_mask(input_ids, attention_mask)
input_shape = input_ids.size()
device = input_ids.device
elif inputs_embeds is not None:
input_shape = inputs_embeds.size()[:-1]
device = inputs_embeds.device
else:
raise ValueError("You have to specify either input_ids or inputs_embeds")
if self.config.use_chunking:
input_shape = torch.tensor([input_shape[0], self.config.chunk_size])
batch_size, sequence_length = input_shape
if self.config.use_chunking and (sequence_length > self.config.chunk_size):
if sequence_length % self.config.chunk_size != 0:
raise ValueError(
f"config.use_chunking is activated; input sequence length must be shorter than or a multiple of config.chunk_size\nreceived sequence length of {sequence_length} with chunk size {self.config.chunk_size}"
)
if self.config.is_decoder:
use_cache = use_cache if use_cache is not None else self.config.use_cache
# Mega expects the causal mask to be a 2D square matrix of (from) x (to) over the input sequence length
# the HF utility function generates a 3D causal mask which includes batch size, so we'll create a dummy
# mask with the correct device and all ones
temp_mask_for_extension = torch.ones((1, sequence_length), dtype=torch.long, device=device)
causal_mask = self.create_extended_attention_mask_for_decoder(input_shape, temp_mask_for_extension)
# get rid of batch dimension in the generated mask; result is (sequence_length X sequence_length)
causal_mask = causal_mask.squeeze(0)
else:
use_cache = False
causal_mask = None
# if using cache, make sure we have a tuple of tuples which matches the length of our hidden layers
if (past_key_values is not None) and (len(past_key_values) != self.config.num_hidden_layers):
raise ValueError(
f"Received past key/value cache with size mismatch; expected {self.config.num_hidden_layers}, received {len(past_key_values)}"
)
# get embeddings (batch X sequence length X embed dim)
embedding_output = self.embedding_layer(
input_ids=input_ids, token_type_ids=token_type_ids, inputs_embeds=inputs_embeds
)
# transpose for Mega --> (seq len X batch X embed dim)
hidden_states = embedding_output.transpose(0, 1)
# we expect encoder hidden states to also have batch first in line
# with typical Hugging Face behavior (which is also how we return them)
# Mega expects sequence length first, so do the same transpose here
if encoder_hidden_states is not None:
encoder_hidden_states = encoder_hidden_states.transpose(0, 1)
# pass through mega layers
all_hidden_states = (embedding_output,) if output_hidden_states else None
all_self_attentions = () if output_attentions else None
all_cross_attentions = () if output_attentions and self.config.add_cross_attention else None
next_decoder_cache = () if use_cache else None
for i, mega_layer in enumerate(self.layers):
current_decoder_cache = past_key_values[i] if past_key_values is not None else None
mega_outputs = mega_layer(
hidden_states=hidden_states,
attention_mask=attention_mask,
causal_mask=causal_mask,
encoder_hidden_states=encoder_hidden_states,
encoder_attention_mask=encoder_attention_mask,
past_key_value=current_decoder_cache,
output_attentions=output_attentions,
use_cache=use_cache,
)
hidden_states = mega_outputs[0]
if output_hidden_states:
# store layer-wise hidden states in the way that the user expects
# (seq len X batch X embed dim) --> (batch X seq len X embed dim)
all_hidden_states += (hidden_states.transpose(0, 1),)
if output_attentions:
self_attn_weights = mega_outputs[1]
all_self_attentions += (self_attn_weights,)
if self.config.add_cross_attention:
cross_attn_weights = mega_outputs[2]
all_cross_attentions += (cross_attn_weights,)
if use_cache:
updated_cache = mega_outputs[-1]
next_decoder_cache += (updated_cache,)
# transpose final hidden states
hidden_states = hidden_states.transpose(0, 1)
# optional pooling layer
pooled_output = self.pooler(hidden_states) if self.pooler is not None else None
if not return_dict:
return (hidden_states, pooled_output) + (
all_hidden_states,
next_decoder_cache,
all_self_attentions,
all_cross_attentions,
)
return BaseModelOutputWithPoolingAndCrossAttentions(
last_hidden_state=hidden_states,
pooler_output=pooled_output,
past_key_values=next_decoder_cache,
hidden_states=all_hidden_states,
attentions=all_self_attentions,
cross_attentions=all_cross_attentions,
)
@add_start_docstrings(
"""MEGA Model with a `language modeling` head on top for CLM fine-tuning.""", MEGA_START_DOCSTRING
)
class MegaForCausalLM(MegaPreTrainedModel):
_tied_weights_keys = ["lm_head.weight"]
def __init__(self, config: MegaConfig):
super().__init__(config)
if not config.is_decoder:
logger.warning("If you want to use `MegaForCausalLM` as a standalone, add `is_decoder=True.`")
self.mega = MegaModel(config, add_pooling_layer=False)
if config.add_lm_hidden_dense_layer:
self.dense = nn.Linear(config.hidden_size, config.hidden_size)
self.hidden_activation = nn.Tanh()
else:
self.dense = None
self.hidden_activation = None
self.lm_head = nn.Linear(config.hidden_size, config.vocab_size)
# Initialize weights and apply final processing
self.post_init()
def get_output_embeddings(self):
return self.lm_head
def set_output_embeddings(self, new_embeddings):
self.lm_head = new_embeddings
@add_start_docstrings_to_model_forward(MEGA_INPUTS_DOCSTRING.format("batch_size, sequence_length"))
@replace_return_docstrings(output_type=CausalLMOutputWithCrossAttentions, config_class=_CONFIG_FOR_DOC)
def forward(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.FloatTensor] = None,
token_type_ids: Optional[torch.LongTensor] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
encoder_hidden_states: Optional[torch.FloatTensor] = None,
encoder_attention_mask: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
past_key_values: Tuple[Tuple[torch.FloatTensor]] = None,
use_cache: Optional[bool] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
return_dict: Optional[bool] = None,
) -> Union[Tuple[torch.Tensor], CausalLMOutputWithCrossAttentions]:
r"""
encoder_hidden_states (`torch.FloatTensor` of shape `(batch_size, sequence_length, hidden_size)`, *optional*):
Sequence of hidden-states at the output of the last layer of the encoder. Used in the cross-attention if
the model is configured as a decoder.
encoder_attention_mask (`torch.FloatTensor` of shape `(batch_size, sequence_length)`, *optional*):
Mask to avoid performing attention on the padding token indices of the encoder input. This mask is used in
the cross-attention if the model is configured as a decoder. Mask values selected in `[0, 1]`:
- 1 for tokens that are **not masked**,
- 0 for tokens that are **masked**.
labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Labels for computing the left-to-right language modeling loss (next word prediction). Indices should be in
`[-100, 0, ..., config.vocab_size]` (see `input_ids` docstring) Tokens with indices set to `-100` are
ignored (masked), the loss is only computed for the tokens with labels in `[0, ..., config.vocab_size]`
past_key_values (`tuple(tuple(torch.FloatTensor))` of length `config.n_layers` with each tuple having 4 tensors of shape `(batch_size, num_heads, sequence_length - 1, embed_size_per_head)`):
Contains precomputed key and value hidden states of the attention blocks. Can be used to speed up decoding.
If `past_key_values` are used, the user can optionally input only the last `decoder_input_ids` (those that
don't have their past key value states given to this model) of shape `(batch_size, 1)` instead of all
`decoder_input_ids` of shape `(batch_size, sequence_length)`.
use_cache (`bool`, *optional*):
If set to `True`, `past_key_values` key value states are returned and can be used to speed up decoding (see
`past_key_values`).
Returns:
Example:
```python
>>> from transformers import AutoTokenizer, MegaForCausalLM, AutoConfig
>>> import torch
>>> tokenizer = AutoTokenizer.from_pretrained("mnaylor/mega-base-wikitext")
>>> config = AutoConfig.from_pretrained("mnaylor/mega-base-wikitext")
>>> config.is_decoder = True
>>> config.bidirectional = False
>>> model = MegaForCausalLM.from_pretrained(
... "mnaylor/mega-base-wikitext", config=config, ignore_mismatched_sizes=True
... )
>>> inputs = tokenizer("Hello, my dog is cute", return_tensors="pt")
>>> outputs = model(**inputs)
>>> prediction_logits = outputs.logits
```"""
return_dict = return_dict if return_dict is not None else self.config.use_return_dict
if labels is not None:
use_cache = False
outputs = self.mega(
input_ids,
attention_mask=attention_mask,
token_type_ids=token_type_ids,
inputs_embeds=inputs_embeds,
encoder_hidden_states=encoder_hidden_states,
encoder_attention_mask=encoder_attention_mask,
past_key_values=past_key_values,
use_cache=use_cache,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
return_dict=return_dict,
)
sequence_output = outputs[0]
if self.dense is not None:
sequence_output = self.dense(sequence_output)
sequence_output = self.hidden_activation(sequence_output)
prediction_scores = self.lm_head(sequence_output)
lm_loss = None
if labels is not None:
# we are doing next-token prediction; shift prediction scores and input ids by one
shifted_prediction_scores = prediction_scores[:, :-1, :].contiguous()
labels = labels[:, 1:].contiguous()
loss_fct = CrossEntropyLoss()
lm_loss = loss_fct(shifted_prediction_scores.view(-1, self.config.vocab_size), labels.view(-1))
if not return_dict:
output = (prediction_scores,) + outputs[2:]
return ((lm_loss,) + output) if lm_loss is not None else output
return CausalLMOutputWithCrossAttentions(
loss=lm_loss,
logits=prediction_scores,
past_key_values=outputs.past_key_values,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
cross_attentions=outputs.cross_attentions,
)
def prepare_inputs_for_generation(self, input_ids, past_key_values=None, attention_mask=None, **model_kwargs):
input_shape = input_ids.shape
# if model is used as a decoder in encoder-decoder model, the decoder attention mask is created on the fly
if attention_mask is None:
attention_mask = input_ids.new_ones(input_shape)
# cut decoder_input_ids if past is used
if past_key_values is not None:
input_ids = input_ids[:, -1:]
return {"input_ids": input_ids, "attention_mask": attention_mask, "past_key_values": past_key_values}
def _reorder_cache(self, past_key_values, beam_idx):
reordered_past = ()
for layer_past in past_key_values:
reordered_past += (
tuple(past_state.index_select(0, beam_idx.to(past_state.device)) for past_state in layer_past),
)
return reordered_past
@add_start_docstrings("""MEGA Model with a `language modeling` head on top.""", MEGA_START_DOCSTRING)
class MegaForMaskedLM(MegaPreTrainedModel):
_tied_weights_keys = ["mlm_head.weight"]
def __init__(self, config: MegaConfig):
super().__init__(config)
if config.is_decoder:
logger.warning(
"If you want to use `MegaForMaskedLM`, set `config.is_decoder=False` for "
"bi-directional self-attention."
)
self.mega = MegaModel(config, add_pooling_layer=False)
if config.add_lm_hidden_dense_layer:
self.dense = nn.Linear(config.hidden_size, config.hidden_size)
self.hidden_activation = nn.Tanh()
else:
self.dense = None
self.hidden_activation = None
self.mlm_head = nn.Linear(config.hidden_size, config.vocab_size)
self.dropout = nn.Dropout(config.dropout_prob)
# Initialize weights and apply final processing
self.post_init()
def get_output_embeddings(self):
return self.mlm_head
def set_output_embeddings(self, new_embeddings):
self.mlm_head = new_embeddings
@add_start_docstrings_to_model_forward(MEGA_INPUTS_DOCSTRING.format("batch_size, sequence_length"))
@add_code_sample_docstrings(
checkpoint=_CHECKPOINT_FOR_DOC,
output_type=MaskedLMOutput,
config_class=_CONFIG_FOR_DOC,
mask="<mask>",
expected_output="' Paris'",
expected_loss=0.1,
)
def forward(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.FloatTensor] = None,
token_type_ids: Optional[torch.LongTensor] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
encoder_hidden_states: Optional[torch.FloatTensor] = None,
encoder_attention_mask: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
return_dict: Optional[bool] = None,
) -> Union[Tuple[torch.Tensor], MaskedLMOutput]:
r"""
labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Labels for computing the masked language modeling loss. Indices should be in `[-100, 0, ...,
config.vocab_size]` (see `input_ids` docstring) Tokens with indices set to `-100` are ignored (masked), the
loss is only computed for the tokens with labels in `[0, ..., config.vocab_size]`
kwargs (`Dict[str, any]`, optional, defaults to *{}*):
Used to hide legacy arguments that have been deprecated.
"""
return_dict = return_dict if return_dict is not None else self.config.use_return_dict
outputs = self.mega(
input_ids,
attention_mask=attention_mask,
token_type_ids=token_type_ids,
inputs_embeds=inputs_embeds,
encoder_hidden_states=encoder_hidden_states,
encoder_attention_mask=encoder_attention_mask,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
return_dict=return_dict,
)
sequence_output = outputs[0]
if self.dense is not None:
sequence_output = self.dense(sequence_output)
sequence_output = self.hidden_activation(sequence_output)
prediction_scores = self.mlm_head(sequence_output)
masked_lm_loss = None
if labels is not None:
loss_fct = CrossEntropyLoss()
masked_lm_loss = loss_fct(prediction_scores.view(-1, self.config.vocab_size), labels.view(-1))
if not return_dict:
output = (prediction_scores,) + outputs[2:]
return ((masked_lm_loss,) + output) if masked_lm_loss is not None else output
return MaskedLMOutput(
loss=masked_lm_loss,
logits=prediction_scores,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
)
@add_start_docstrings(
"""
MEGA Model transformer with a sequence classification/regression head on top (a linear layer on top of the pooled
output) e.g. for GLUE tasks.
""",
MEGA_START_DOCSTRING,
)
class MegaForSequenceClassification(MegaPreTrainedModel):
def __init__(self, config):
super().__init__(config)
self.num_labels = config.num_labels
self.config = config
self.mega = MegaModel(config, add_pooling_layer=False)
self.classifier = MegaClassificationHead(config)
# Initialize weights and apply final processing
self.post_init()
@add_start_docstrings_to_model_forward(MEGA_INPUTS_DOCSTRING.format("batch_size, sequence_length"))
@add_code_sample_docstrings(
checkpoint=_CHECKPOINT_FOR_DOC,
output_type=SequenceClassifierOutput,
config_class=_CONFIG_FOR_DOC,
)
def forward(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.FloatTensor] = None,
token_type_ids: Optional[torch.LongTensor] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
return_dict: Optional[bool] = None,
) -> Union[Tuple[torch.Tensor], SequenceClassifierOutput]:
r"""
labels (`torch.LongTensor` of shape `(batch_size,)`, *optional*):
Labels for computing the sequence classification/regression loss. Indices should be in `[0, ...,
config.num_labels - 1]`. If `config.num_labels == 1` a regression loss is computed (Mean-Square loss), If
`config.num_labels > 1` a classification loss is computed (Cross-Entropy).
"""
return_dict = return_dict if return_dict is not None else self.config.use_return_dict
outputs = self.mega(
input_ids,
attention_mask=attention_mask,
token_type_ids=token_type_ids,
inputs_embeds=inputs_embeds,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
return_dict=return_dict,
)
sequence_output = outputs[0]
logits = self.classifier(sequence_output)
loss = None
if labels is not None:
if self.config.problem_type is None:
if self.num_labels == 1:
self.config.problem_type = "regression"
elif self.num_labels > 1 and (labels.dtype == torch.long or labels.dtype == torch.int):
self.config.problem_type = "single_label_classification"
else:
self.config.problem_type = "multi_label_classification"
if self.config.problem_type == "regression":
loss_fct = MSELoss()
if self.num_labels == 1:
loss = loss_fct(logits.squeeze(), labels.squeeze())
else:
loss = loss_fct(logits, labels)
elif self.config.problem_type == "single_label_classification":
loss_fct = CrossEntropyLoss()
loss = loss_fct(logits.view(-1, self.num_labels), labels.view(-1))
elif self.config.problem_type == "multi_label_classification":
loss_fct = BCEWithLogitsLoss()
loss = loss_fct(logits, labels)
if not return_dict:
output = (logits,) + outputs[2:]
return ((loss,) + output) if loss is not None else output
return SequenceClassifierOutput(
loss=loss,
logits=logits,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
)
@add_start_docstrings(
"""
MEGA Model with a multiple choice classification head on top (a linear layer on top of the pooled output and a
softmax) e.g. for RocStories/SWAG tasks.
""",
MEGA_START_DOCSTRING,
)
class MegaForMultipleChoice(MegaPreTrainedModel):
def __init__(self, config):
super().__init__(config)
self.mega = MegaModel(config)
self.dropout = nn.Dropout(config.hidden_dropout_prob)
self.classifier = nn.Linear(config.hidden_size, 1)
# Initialize weights and apply final processing
self.post_init()
@add_start_docstrings_to_model_forward(MEGA_INPUTS_DOCSTRING.format("batch_size, num_choices, sequence_length"))
@add_code_sample_docstrings(
checkpoint=_CHECKPOINT_FOR_DOC,
output_type=MultipleChoiceModelOutput,
config_class=_CONFIG_FOR_DOC,
)
def forward(
self,
input_ids: Optional[torch.LongTensor] = None,
token_type_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
return_dict: Optional[bool] = None,
) -> Union[Tuple[torch.Tensor], MultipleChoiceModelOutput]:
r"""
labels (`torch.LongTensor` of shape `(batch_size,)`, *optional*):
Labels for computing the multiple choice classification loss. Indices should be in `[0, ...,
num_choices-1]` where `num_choices` is the size of the second dimension of the input tensors. (See
`input_ids` above)
"""
return_dict = return_dict if return_dict is not None else self.config.use_return_dict
num_choices = input_ids.shape[1] if input_ids is not None else inputs_embeds.shape[1]
flat_input_ids = input_ids.view(-1, input_ids.size(-1)) if input_ids is not None else None
flat_token_type_ids = token_type_ids.view(-1, token_type_ids.size(-1)) if token_type_ids is not None else None
flat_attention_mask = attention_mask.view(-1, attention_mask.size(-1)) if attention_mask is not None else None
flat_inputs_embeds = (
inputs_embeds.view(-1, inputs_embeds.size(-2), inputs_embeds.size(-1))
if inputs_embeds is not None
else None
)
outputs = self.mega(
flat_input_ids,
token_type_ids=flat_token_type_ids,
attention_mask=flat_attention_mask,
inputs_embeds=flat_inputs_embeds,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
return_dict=return_dict,
)
pooled_output = outputs[1]
pooled_output = self.dropout(pooled_output)
logits = self.classifier(pooled_output)
reshaped_logits = logits.view(-1, num_choices)
loss = None
if labels is not None:
loss_fct = CrossEntropyLoss()
loss = loss_fct(reshaped_logits, labels)
if not return_dict:
output = (reshaped_logits,) + outputs[2:]
return ((loss,) + output) if loss is not None else output
return MultipleChoiceModelOutput(
loss=loss,
logits=reshaped_logits,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
)
@add_start_docstrings(
"""
MEGA Model with a token classification head on top (a linear layer on top of the hidden-states output) e.g. for
Named-Entity-Recognition (NER) tasks.
""",
MEGA_START_DOCSTRING,
)
class MegaForTokenClassification(MegaPreTrainedModel):
def __init__(self, config):
super().__init__(config)
self.num_labels = config.num_labels
self.mega = MegaModel(config, add_pooling_layer=False)
classifier_dropout = (
config.classifier_dropout if config.classifier_dropout is not None else config.hidden_dropout_prob
)
self.dropout = nn.Dropout(classifier_dropout)
self.classifier = nn.Linear(config.hidden_size, config.num_labels)
# Initialize weights and apply final processing
self.post_init()
@add_start_docstrings_to_model_forward(MEGA_INPUTS_DOCSTRING.format("batch_size, sequence_length"))
@add_code_sample_docstrings(
checkpoint=_CHECKPOINT_FOR_DOC,
output_type=TokenClassifierOutput,
config_class=_CONFIG_FOR_DOC,
)
def forward(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.FloatTensor] = None,
token_type_ids: Optional[torch.LongTensor] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
return_dict: Optional[bool] = None,
) -> Union[Tuple[torch.Tensor], TokenClassifierOutput]:
r"""
labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Labels for computing the token classification loss. Indices should be in `[0, ..., config.num_labels - 1]`.
"""
return_dict = return_dict if return_dict is not None else self.config.use_return_dict
outputs = self.mega(
input_ids,
attention_mask=attention_mask,
token_type_ids=token_type_ids,
inputs_embeds=inputs_embeds,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
return_dict=return_dict,
)
sequence_output = outputs[0]
sequence_output = self.dropout(sequence_output)
logits = self.classifier(sequence_output)
loss = None
if labels is not None:
loss_fct = CrossEntropyLoss()
loss = loss_fct(logits.view(-1, self.num_labels), labels.view(-1))
if not return_dict:
output = (logits,) + outputs[2:]
return ((loss,) + output) if loss is not None else output
return TokenClassifierOutput(
loss=loss,
logits=logits,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
)
# copied from transformers.models.roberta.modeling_roberta.RobertaClassificationHead with Roberta->Mega
class MegaClassificationHead(nn.Module):
"""Head for sentence-level classification tasks."""
def __init__(self, config):
super().__init__()
self.dense = nn.Linear(config.hidden_size, config.hidden_size)
classifier_dropout = (
config.classifier_dropout if config.classifier_dropout is not None else config.hidden_dropout_prob
)
self.dropout = nn.Dropout(classifier_dropout)
self.out_proj = nn.Linear(config.hidden_size, config.num_labels)
def forward(self, features, **kwargs):
x = features[:, 0, :] # take <s> token (equiv. to [CLS])
x = self.dropout(x)
x = self.dense(x)
x = torch.tanh(x)
x = self.dropout(x)
x = self.out_proj(x)
return x
@add_start_docstrings(
"""
MEGA Model with a span classification head on top for extractive question-answering tasks like SQuAD (a linear
layers on top of the hidden-states output to compute `span start logits` and `span end logits`).
""",
MEGA_START_DOCSTRING,
)
class MegaForQuestionAnswering(MegaPreTrainedModel):
def __init__(self, config):
super().__init__(config)
self.num_labels = config.num_labels
self.mega = MegaModel(config, add_pooling_layer=False)
self.qa_outputs = nn.Linear(config.hidden_size, config.num_labels)
# Initialize weights and apply final processing
self.post_init()
@add_start_docstrings_to_model_forward(MEGA_INPUTS_DOCSTRING.format("batch_size, sequence_length"))
@add_code_sample_docstrings(
checkpoint=_CHECKPOINT_FOR_DOC,
output_type=QuestionAnsweringModelOutput,
config_class=_CONFIG_FOR_DOC,
)
def forward(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.FloatTensor] = None,
token_type_ids: Optional[torch.LongTensor] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
start_positions: Optional[torch.LongTensor] = None,
end_positions: Optional[torch.LongTensor] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
return_dict: Optional[bool] = None,
) -> Union[Tuple[torch.Tensor], QuestionAnsweringModelOutput]:
r"""
start_positions (`torch.LongTensor` of shape `(batch_size,)`, *optional*):
Labels for position (index) of the start of the labelled span for computing the token classification loss.
Positions are clamped to the length of the sequence (`sequence_length`). Position outside of the sequence
are not taken into account for computing the loss.
end_positions (`torch.LongTensor` of shape `(batch_size,)`, *optional*):
Labels for position (index) of the end of the labelled span for computing the token classification loss.
Positions are clamped to the length of the sequence (`sequence_length`). Position outside of the sequence
are not taken into account for computing the loss.
"""
return_dict = return_dict if return_dict is not None else self.config.use_return_dict
outputs = self.mega(
input_ids,
attention_mask=attention_mask,
token_type_ids=token_type_ids,
inputs_embeds=inputs_embeds,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
return_dict=return_dict,
)
sequence_output = outputs[0]
logits = self.qa_outputs(sequence_output)
start_logits, end_logits = logits.split(1, dim=-1)
start_logits = start_logits.squeeze(-1).contiguous()
end_logits = end_logits.squeeze(-1).contiguous()
total_loss = None
if start_positions is not None and end_positions is not None:
# If we are on multi-GPU, split add a dimension
if len(start_positions.size()) > 1:
start_positions = start_positions.squeeze(-1)
if len(end_positions.size()) > 1:
end_positions = end_positions.squeeze(-1)
# sometimes the start/end positions are outside our model inputs, we ignore these terms
ignored_index = start_logits.size(1)
start_positions = start_positions.clamp(0, ignored_index)
end_positions = end_positions.clamp(0, ignored_index)
loss_fct = CrossEntropyLoss(ignore_index=ignored_index)
start_loss = loss_fct(start_logits, start_positions)
end_loss = loss_fct(end_logits, end_positions)
total_loss = (start_loss + end_loss) / 2
if not return_dict:
output = (start_logits, end_logits) + outputs[2:]
return ((total_loss,) + output) if total_loss is not None else output
return QuestionAnsweringModelOutput(
loss=total_loss,
start_logits=start_logits,
end_logits=end_logits,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
)