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# coding=utf-8
# Copyright 2018 The Google AI Language Team Authors and The HugginFace Inc. team.
# Copyright (c) 2018, NVIDIA CORPORATION. All rights reserved.
#
# 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 BERT model."""
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import logging
import numpy as np
import torch
from torch import nn
import torch.nn.functional as F
from torch.nn import CrossEntropyLoss, MSELoss
from pdvc.modules.until_module import PreTrainedModel, LayerNorm, CrossEn, MILNCELoss, MaxMarginRankingLoss
from pdvc.modules.module_bert import BertModel, BertConfig, BertOnlyMLMHead
from pdvc.modules.module_visual import VisualModel, VisualConfig, VisualOnlyMLMHead
from pdvc.modules.module_cross import CrossModel, CrossConfig
from pdvc.modules.module_decoder import DecoderModel, DecoderConfig
logger = logging.getLogger(__name__)
class UniVLPreTrainedModel(PreTrainedModel, nn.Module):
""" An abstract class to handle weights initialization and
a simple interface for dowloading and loading pretrained models.
"""
def __init__(self, bert_config, visual_config, cross_config, decoder_config, *inputs, **kwargs):
# utilize bert config as base config
super(UniVLPreTrainedModel, self).__init__(bert_config)
self.bert_config = bert_config
self.visual_config = visual_config
self.cross_config = cross_config
self.decoder_config = decoder_config
self.bert = None
self.visual = None
self.cross = None
self.decoder = None
@classmethod
def from_pretrained(cls, pretrained_bert_name, visual_model_name, cross_model_name, decoder_model_name,
state_dict=None, cache_dir=None, type_vocab_size=2, *inputs, **kwargs):
task_config = None
if "task_config" in kwargs.keys():
task_config = kwargs["task_config"]
if not hasattr(task_config, "local_rank"):
task_config.__dict__["local_rank"] = 0
elif task_config.local_rank == -1:
task_config.local_rank = 0
print(pretrained_bert_name, cache_dir, type_vocab_size, state_dict, task_config)
bert_config, state_dict = BertConfig.get_config(pretrained_bert_name, cache_dir, type_vocab_size, state_dict, task_config=task_config)
visual_config, _ = VisualConfig.get_config(visual_model_name, cache_dir, type_vocab_size, state_dict=None, task_config=task_config)
cross_config, _ = CrossConfig.get_config(cross_model_name, cache_dir, type_vocab_size, state_dict=None, task_config=task_config)
decoder_config, _ = DecoderConfig.get_config(decoder_model_name, cache_dir, type_vocab_size, state_dict=None, task_config=task_config)
model = cls(bert_config, visual_config, cross_config, decoder_config, *inputs, **kwargs)
assert model.bert is not None
assert model.visual is not None
if state_dict is not None:
model = cls.init_preweight(model, state_dict, task_config=task_config)
return model
class NormalizeVideo(nn.Module):
def __init__(self, task_config):
super(NormalizeVideo, self).__init__()
self.visual_norm2d = LayerNorm(task_config.video_dim)
def forward(self, video):
video = torch.as_tensor(video).float()
video = video.view(-1, video.shape[-2], video.shape[-1])
video = self.visual_norm2d(video)
return video
def show_log(task_config, info):
if task_config is None or task_config.local_rank == 0:
logger.warning(info)
def update_attr(target_name, target_config, target_attr_name, source_config, source_attr_name, default_value=None):
if hasattr(source_config, source_attr_name):
if default_value is None or getattr(source_config, source_attr_name) != default_value:
setattr(target_config, target_attr_name, getattr(source_config, source_attr_name))
show_log(source_config, "Set {}.{}: {}.".format(target_name,
target_attr_name, getattr(target_config, target_attr_name)))
return target_config
def check_attr(target_name, task_config):
return hasattr(task_config, target_name) and task_config.__dict__[target_name]
class UniVL(UniVLPreTrainedModel):
def __init__(self, bert_config, visual_config, cross_config, decoder_config, task_config):
super(UniVL, self).__init__(bert_config, visual_config, cross_config, decoder_config)
self.task_config = task_config
self.ignore_video_index = -1
assert self.task_config.max_words <= bert_config.max_position_embeddings
assert self.task_config.max_words <= decoder_config.max_target_embeddings
assert self.task_config.max_frames <= visual_config.max_position_embeddings
assert self.task_config.max_words + self.task_config.max_frames <= cross_config.max_position_embeddings
self._stage_one = True
self._stage_two = False
if check_attr('stage_two', self.task_config):
self._stage_one = False
self._stage_two = self.task_config.stage_two
show_log(task_config, "Stage-One:{}, Stage-Two:{}".format(self._stage_one, self._stage_two))
self.train_sim_after_cross = False
if self._stage_one and check_attr('train_sim_after_cross', self.task_config):
self.train_sim_after_cross = True
show_log(task_config, "Test retrieval after cross encoder.")
# Text Encoder ===>
bert_config = update_attr("bert_config", bert_config, "num_hidden_layers",
self.task_config, "text_num_hidden_layers")
# print('=================The bert config:==========/n',bert_config)
# print('=================The task config:==========/n',self.task_config)
self.bert = BertModel(bert_config)
bert_word_embeddings_weight = self.bert.embeddings.word_embeddings.weight
bert_position_embeddings_weight = self.bert.embeddings.position_embeddings.weight
# <=== End of Text Encoder
# Video Encoder ===>
visual_config = update_attr("visual_config", visual_config, "num_hidden_layers",
self.task_config, "visual_num_hidden_layers")
self.visual = VisualModel(visual_config)
visual_word_embeddings_weight = self.visual.embeddings.word_embeddings.weight
# <=== End of Video Encoder
if self._stage_one is False or self.train_sim_after_cross:
# Cross Encoder ===>
cross_config = update_attr("cross_config", cross_config, "num_hidden_layers",
self.task_config, "cross_num_hidden_layers")
self.cross = CrossModel(cross_config)
# <=== End of Cross Encoder
if self.train_sim_after_cross is False:
# Decoder ===>
decoder_config = update_attr("decoder_config", decoder_config, "num_decoder_layers",
self.task_config, "decoder_num_hidden_layers")
self.decoder = DecoderModel(decoder_config, bert_word_embeddings_weight, bert_position_embeddings_weight)
# <=== End of Decoder
if self.task_config.do_pretrain:
self.cls = BertOnlyMLMHead(bert_config, bert_word_embeddings_weight)
self.cls_visual = VisualOnlyMLMHead(visual_config, visual_word_embeddings_weight)
self.alm_loss_fct = CrossEntropyLoss(ignore_index=-1)
self.similarity_dense = nn.Linear(bert_config.hidden_size, 1)
self.decoder_loss_fct = CrossEntropyLoss(ignore_index=-1)
self.normalize_video = NormalizeVideo(task_config)
mILNCELoss = MILNCELoss(batch_size=task_config.batch_size // task_config.n_gpu, n_pair=task_config.n_pair, )
maxMarginRankingLoss = MaxMarginRankingLoss(margin=task_config.margin,
negative_weighting=task_config.negative_weighting,
batch_size=task_config.batch_size // task_config.n_gpu,
n_pair=task_config.n_pair,
hard_negative_rate=task_config.hard_negative_rate, )
if task_config.use_mil:
self.loss_fct = CrossEn() if self._stage_two else mILNCELoss
self._pretrain_sim_loss_fct = mILNCELoss
else:
self.loss_fct = CrossEn() if self._stage_two else maxMarginRankingLoss
self._pretrain_sim_loss_fct = maxMarginRankingLoss
self.apply(self.init_weights)
def forward(self, input_ids, token_type_ids, attention_mask, video, video_mask=None,
pairs_masked_text=None, pairs_token_labels=None, masked_video=None, video_labels_index=None,
input_caption_ids=None, decoder_mask=None, output_caption_ids=None):
input_ids = input_ids.view(-1, input_ids.shape[-1])
token_type_ids = token_type_ids.view(-1, token_type_ids.shape[-1])
attention_mask = attention_mask.view(-1, attention_mask.shape[-1])
video_mask = video_mask.view(-1, video_mask.shape[-1])
video = self.normalize_video(video)
if input_caption_ids is not None:
input_caption_ids = input_caption_ids.view(-1, input_caption_ids.shape[-1])
decoder_mask = decoder_mask.view(-1, decoder_mask.shape[-1])
sequence_output, visual_output = self.get_sequence_visual_output(input_ids, token_type_ids, attention_mask,
video, video_mask, shaped=True)
if self.training:
loss = 0.
if self._stage_one:
sim_matrix = self.get_similarity_logits(sequence_output, visual_output, attention_mask,
video_mask, shaped=True)
sim_loss = self.loss_fct(sim_matrix)
loss += sim_loss
if self._stage_two:
if self.task_config.do_pretrain:
pairs_masked_text = pairs_masked_text.view(-1, pairs_masked_text.shape[-1])
pairs_token_labels = pairs_token_labels.view(-1, pairs_token_labels.shape[-1])
masked_video = self.normalize_video(masked_video)
video_labels_index = video_labels_index.view(-1, video_labels_index.shape[-1])
sequence_output_alm, visual_output_alm = self.get_sequence_visual_output(pairs_masked_text, token_type_ids,
attention_mask, masked_video, video_mask, shaped=True)
cross_output, pooled_output, concat_mask = self._get_cross_output(sequence_output_alm, visual_output_alm, attention_mask, video_mask)
sequence_cross_output, visual_cross_output = torch.split(cross_output, [attention_mask.size(-1), video_mask.size(-1)], dim=1)
alm_loss = self._calculate_mlm_loss(sequence_cross_output, pairs_token_labels)
loss += alm_loss
nce_loss = self._calculate_mfm_loss(visual_cross_output, video, video_mask, video_labels_index)
loss += nce_loss
sim_matrix = self.get_similarity_logits(sequence_output, visual_output, attention_mask, video_mask,
shaped=True, _pretrain_joint=True)
sim_loss_joint = self._pretrain_sim_loss_fct(sim_matrix)
loss += sim_loss_joint
if (input_caption_ids is not None) and \
(self.task_config.do_pretrain
or (self.task_config.do_pretrain is False and self.task_config.task_type == "caption")):
if self.task_config.do_pretrain:
decoder_scores, res_tuples = self._get_decoder_score(sequence_output_alm, visual_output_alm,
input_ids, attention_mask, video_mask,
input_caption_ids, decoder_mask, shaped=True)
elif self.task_config.task_type == "caption":
decoder_scores, res_tuples = self._get_decoder_score(sequence_output, visual_output,
input_ids, attention_mask, video_mask,
input_caption_ids, decoder_mask, shaped=True)
else:
raise NotImplementedError
output_caption_ids = output_caption_ids.view(-1, output_caption_ids.shape[-1])
decoder_loss = self.decoder_loss_fct(decoder_scores.view(-1, self.bert_config.vocab_size), output_caption_ids.view(-1))
loss += decoder_loss
if self.task_config.do_pretrain or self.task_config.task_type == "retrieval":
if self.task_config.do_pretrain:
sim_matrix_text_visual = self.get_similarity_logits(sequence_output_alm, visual_output_alm,
attention_mask, video_mask, shaped=True)
elif self.task_config.task_type == "retrieval":
sim_matrix_text_visual = self.get_similarity_logits(sequence_output, visual_output,
attention_mask, video_mask, shaped=True)
else:
raise NotImplementedError
sim_loss_text_visual = self.loss_fct(sim_matrix_text_visual)
loss += sim_loss_text_visual
return loss
else:
return None
def _calculate_mlm_loss(self, sequence_output_alm, pairs_token_labels):
alm_scores = self.cls(sequence_output_alm)
alm_loss = self.alm_loss_fct(alm_scores.view(-1, self.bert_config.vocab_size), pairs_token_labels.view(-1))
return alm_loss
def _calculate_mfm_loss(self, visual_output_alm, video, video_mask, video_labels_index):
afm_scores = self.cls_visual(visual_output_alm)
afm_scores_tr = afm_scores.view(-1, afm_scores.shape[-1])
video_tr = video.permute(2, 0, 1)
video_tr = video_tr.view(video_tr.shape[0], -1)
logits_matrix = torch.mm(afm_scores_tr, video_tr)
video_mask_float = video_mask.to(dtype=torch.float)
mask_matrix = torch.mm(video_mask_float.view(-1, 1), video_mask_float.view(1, -1))
masked_logits = logits_matrix + (1. - mask_matrix) * -1e8
logpt = F.log_softmax(masked_logits, dim=-1)
logpt = torch.diag(logpt)
nce_loss = -logpt
video_labels_index_mask = (video_labels_index != self.ignore_video_index)
nce_loss = nce_loss.masked_select(video_labels_index_mask.view(-1))
nce_loss = nce_loss.mean()
return nce_loss
def get_sequence_visual_output(self, input_ids, token_type_ids, attention_mask, video, video_mask, shaped=False):
if shaped is False:
input_ids = input_ids.view(-1, input_ids.shape[-1])
token_type_ids = token_type_ids.view(-1, token_type_ids.shape[-1])
attention_mask = attention_mask.view(-1, attention_mask.shape[-1])
video_mask = video_mask.view(-1, video_mask.shape[-1])
video = self.normalize_video(video)
encoded_layers, _ = self.bert(input_ids, token_type_ids, attention_mask, output_all_encoded_layers=True)
sequence_output = encoded_layers[-1]
visual_layers, _ = self.visual(video, video_mask, output_all_encoded_layers=True)
visual_output = visual_layers[-1]
return sequence_output, visual_output
def _get_cross_output(self, sequence_output, visual_output, attention_mask, video_mask):
concat_features = torch.cat((sequence_output, visual_output), dim=1) # concatnate tokens and frames
concat_mask = torch.cat((attention_mask, video_mask), dim=1)
text_type_ = torch.zeros_like(attention_mask)
video_type_ = torch.ones_like(video_mask)
concat_type = torch.cat((text_type_, video_type_), dim=1)
cross_layers, pooled_output = self.cross(concat_features, concat_type, concat_mask, output_all_encoded_layers=True)
cross_output = cross_layers[-1]
return cross_output, pooled_output, concat_mask
def _mean_pooling_for_similarity(self, sequence_output, visual_output, attention_mask, video_mask,):
attention_mask_un = attention_mask.to(dtype=torch.float).unsqueeze(-1)
attention_mask_un[:, 0, :] = 0.
sequence_output = sequence_output * attention_mask_un
text_out = torch.sum(sequence_output, dim=1) / torch.sum(attention_mask_un, dim=1, dtype=torch.float)
video_mask_un = video_mask.to(dtype=torch.float).unsqueeze(-1)
visual_output = visual_output * video_mask_un
video_mask_un_sum = torch.sum(video_mask_un, dim=1, dtype=torch.float)
video_mask_un_sum[video_mask_un_sum == 0.] = 1.
video_out = torch.sum(visual_output, dim=1) / video_mask_un_sum
return text_out, video_out
def _cross_similarity(self, sequence_output, visual_output, attention_mask, video_mask):
b_text, s_text, h_text = sequence_output.size()
b_visual, s_visual, h_visual = visual_output.size()
retrieve_logits_list = []
step_size = 5
split_size = [step_size] * (b_text // step_size)
release_size = b_text - sum(split_size)
if release_size > 0:
split_size += [release_size]
sequence_output_splits = torch.split(sequence_output, split_size, dim=0)
attention_mask_splits = torch.split(attention_mask, split_size, dim=0)
for i in range(len(split_size)):
sequence_output_row = sequence_output_splits[i]
attention_mask_row = attention_mask_splits[i]
sequence_output_l = sequence_output_row.unsqueeze(1).repeat(1, b_visual, 1, 1)
sequence_output_l = sequence_output_l.view(-1, s_text, h_text)
attention_mask_l = attention_mask_row.unsqueeze(1).repeat(1, b_visual, 1)
attention_mask_l = attention_mask_l.view(-1, s_text)
step_truth = sequence_output_row.size(0)
visual_output_r = visual_output.unsqueeze(0).repeat(step_truth, 1, 1, 1)
visual_output_r = visual_output_r.view(-1, s_visual, h_visual)
video_mask_r = video_mask.unsqueeze(0).repeat(step_truth, 1, 1)
video_mask_r = video_mask_r.view(-1, s_visual)
cross_output, pooled_output, concat_mask = \
self._get_cross_output(sequence_output_l, visual_output_r, attention_mask_l, video_mask_r)
retrieve_logits_row = self.similarity_dense(pooled_output).squeeze(-1).view(step_truth, b_visual)
retrieve_logits_list.append(retrieve_logits_row)
retrieve_logits = torch.cat(retrieve_logits_list, dim=0)
return retrieve_logits
def get_similarity_logits(self, sequence_output, visual_output, attention_mask, video_mask, shaped=False, _pretrain_joint=False):
if shaped is False:
attention_mask = attention_mask.view(-1, attention_mask.shape[-1])
video_mask = video_mask.view(-1, video_mask.shape[-1])
if (self._stage_two and _pretrain_joint is False) or self.train_sim_after_cross:
retrieve_logits = self._cross_similarity(sequence_output, visual_output, attention_mask, video_mask)
else:
text_out, video_out = self._mean_pooling_for_similarity(sequence_output, visual_output, attention_mask, video_mask)
if self.task_config.use_mil is False:
text_out = F.normalize(text_out, dim=-1)
video_out = F.normalize(video_out, dim=-1)
retrieve_logits = torch.matmul(text_out, video_out.t())
return retrieve_logits
def _get_decoder_score(self, sequence_output, visual_output, input_ids, attention_mask, video_mask, input_caption_ids, decoder_mask, shaped=False):
if shaped is False:
input_ids = input_ids.view(-1, input_ids.shape[-1])
attention_mask = attention_mask.view(-1, attention_mask.shape[-1])
video_mask = video_mask.view(-1, video_mask.shape[-1])
input_caption_ids = input_caption_ids.view(-1, input_caption_ids.shape[-1])
decoder_mask = decoder_mask.view(-1, decoder_mask.shape[-1])
res_tuples = ()
cross_output, pooled_output, concat_mask = self._get_cross_output(sequence_output, visual_output, attention_mask, video_mask)
decoder_scores = self.decoder(input_caption_ids, encoder_outs=cross_output, answer_mask=decoder_mask, encoder_mask=concat_mask)
return decoder_scores, res_tuples
def decoder_caption(self, sequence_output, visual_output, input_ids, attention_mask, video_mask, input_caption_ids, decoder_mask,
shaped=False, get_logits=False):
if shaped is False:
input_ids = input_ids.view(-1, input_ids.shape[-1])
attention_mask = attention_mask.view(-1, attention_mask.shape[-1])
video_mask = video_mask.view(-1, video_mask.shape[-1])
input_caption_ids = input_caption_ids.view(-1, input_caption_ids.shape[-1])
decoder_mask = decoder_mask.view(-1, decoder_mask.shape[-1])
decoder_scores, _ = self._get_decoder_score(sequence_output, visual_output,
input_ids, attention_mask, video_mask,
input_caption_ids, decoder_mask, shaped=True)
if get_logits:
return decoder_scores
_, decoder_scores_result = torch.max(decoder_scores, -1)
return decoder_scores_result |