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Upload blip_retrieval.py

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  1. BLIP/models/blip_retrieval.py +319 -0
BLIP/models/blip_retrieval.py ADDED
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+ from models.med import BertConfig, BertModel
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+ from transformers import BertTokenizer
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+
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+ import torch
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+ from torch import nn
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+ import torch.nn.functional as F
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+
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+ from models.blip import create_vit, init_tokenizer, load_checkpoint
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+
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+ class BLIP_Retrieval(nn.Module):
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+ def __init__(self,
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+ med_config = 'configs/med_config.json',
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+ image_size = 384,
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+ vit = 'base',
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+ vit_grad_ckpt = False,
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+ vit_ckpt_layer = 0,
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+ embed_dim = 256,
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+ queue_size = 57600,
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+ momentum = 0.995,
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+ negative_all_rank = False,
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+ ):
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+ """
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+ Args:
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+ med_config (str): path for the mixture of encoder-decoder model's configuration file
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+ image_size (int): input image size
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+ vit (str): model size of vision transformer
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+ """
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+ super().__init__()
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+
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+ self.visual_encoder, vision_width = create_vit(vit,image_size, vit_grad_ckpt, vit_ckpt_layer)
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+ self.tokenizer = init_tokenizer()
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+ med_config = BertConfig.from_json_file(med_config)
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+ med_config.encoder_width = vision_width
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+ self.text_encoder = BertModel(config=med_config, add_pooling_layer=False)
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+
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+ text_width = self.text_encoder.config.hidden_size
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+
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+ self.vision_proj = nn.Linear(vision_width, embed_dim)
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+ self.text_proj = nn.Linear(text_width, embed_dim)
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+
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+ self.itm_head = nn.Linear(text_width, 2)
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+
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+ # create momentum encoders
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+ self.visual_encoder_m, vision_width = create_vit(vit,image_size)
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+ self.vision_proj_m = nn.Linear(vision_width, embed_dim)
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+ self.text_encoder_m = BertModel(config=med_config, add_pooling_layer=False)
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+ self.text_proj_m = nn.Linear(text_width, embed_dim)
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+
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+ self.model_pairs = [[self.visual_encoder,self.visual_encoder_m],
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+ [self.vision_proj,self.vision_proj_m],
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+ [self.text_encoder,self.text_encoder_m],
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+ [self.text_proj,self.text_proj_m],
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+ ]
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+ self.copy_params()
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+
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+ # create the queue
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+ self.register_buffer("image_queue", torch.randn(embed_dim, queue_size))
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+ self.register_buffer("text_queue", torch.randn(embed_dim, queue_size))
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+ self.register_buffer("idx_queue", torch.full((1,queue_size),-100))
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+ self.register_buffer("ptr_queue", torch.zeros(1, dtype=torch.long))
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+
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+ self.image_queue = nn.functional.normalize(self.image_queue, dim=0)
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+ self.text_queue = nn.functional.normalize(self.text_queue, dim=0)
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+
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+ self.queue_size = queue_size
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+ self.momentum = momentum
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+ self.temp = nn.Parameter(0.07*torch.ones([]))
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+
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+ self.negative_all_rank = negative_all_rank
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+
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+
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+ def forward(self, image, caption, alpha, idx):
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+ with torch.no_grad():
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+ self.temp.clamp_(0.001,0.5)
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+
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+ image_embeds = self.visual_encoder(image)
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+ image_atts = torch.ones(image_embeds.size()[:-1],dtype=torch.long).to(image.device)
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+ image_feat = F.normalize(self.vision_proj(image_embeds[:,0,:]),dim=-1)
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+
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+ text = self.tokenizer(caption, padding='max_length', truncation=True, max_length=35,
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+ return_tensors="pt").to(image.device)
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+
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+ text_output = self.text_encoder(text.input_ids, attention_mask = text.attention_mask,
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+ return_dict = True, mode = 'text')
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+ text_feat = F.normalize(self.text_proj(text_output.last_hidden_state[:,0,:]),dim=-1)
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+
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+ ###============== Image-text Contrastive Learning ===================###
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+ idx = idx.view(-1,1)
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+ idx_all = torch.cat([idx.t(), self.idx_queue.clone().detach()],dim=1)
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+ pos_idx = torch.eq(idx, idx_all).float()
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+ sim_targets = pos_idx / pos_idx.sum(1,keepdim=True)
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+
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+ # get momentum features
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+ with torch.no_grad():
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+ self._momentum_update()
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+ image_embeds_m = self.visual_encoder_m(image)
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+ image_feat_m = F.normalize(self.vision_proj_m(image_embeds_m[:,0,:]),dim=-1)
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+ image_feat_m_all = torch.cat([image_feat_m.t(),self.image_queue.clone().detach()],dim=1)
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+
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+ text_output_m = self.text_encoder_m(text.input_ids, attention_mask = text.attention_mask,
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+ return_dict = True, mode = 'text')
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+ text_feat_m = F.normalize(self.text_proj_m(text_output_m.last_hidden_state[:,0,:]),dim=-1)
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+ text_feat_m_all = torch.cat([text_feat_m.t(),self.text_queue.clone().detach()],dim=1)
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+
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+ sim_i2t_m = image_feat_m @ text_feat_m_all / self.temp
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+ sim_t2i_m = text_feat_m @ image_feat_m_all / self.temp
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+
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+ sim_i2t_targets = alpha * F.softmax(sim_i2t_m, dim=1) + (1 - alpha) * sim_targets
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+ sim_t2i_targets = alpha * F.softmax(sim_t2i_m, dim=1) + (1 - alpha) * sim_targets
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+
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+ sim_i2t = image_feat @ text_feat_m_all / self.temp
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+ sim_t2i = text_feat @ image_feat_m_all / self.temp
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+
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+ loss_i2t = -torch.sum(F.log_softmax(sim_i2t, dim=1)*sim_i2t_targets,dim=1).mean()
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+ loss_t2i = -torch.sum(F.log_softmax(sim_t2i, dim=1)*sim_t2i_targets,dim=1).mean()
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+
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+ loss_ita = (loss_i2t+loss_t2i)/2
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+
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+ idxs = concat_all_gather(idx)
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+ self._dequeue_and_enqueue(image_feat_m, text_feat_m, idxs)
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+
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+ ###============== Image-text Matching ===================###
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+ encoder_input_ids = text.input_ids.clone()
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+ encoder_input_ids[:,0] = self.tokenizer.enc_token_id
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+
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+ # forward the positve image-text pair
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+ bs = image.size(0)
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+ output_pos = self.text_encoder(encoder_input_ids,
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+ attention_mask = text.attention_mask,
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+ encoder_hidden_states = image_embeds,
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+ encoder_attention_mask = image_atts,
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+ return_dict = True,
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+ )
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+
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+
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+ if self.negative_all_rank:
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+ # compute sample similarity
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+ with torch.no_grad():
139
+ mask = torch.eq(idx, idxs.t())
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+
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+ image_feat_world = concat_all_gather(image_feat)
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+ text_feat_world = concat_all_gather(text_feat)
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+
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+ sim_i2t = image_feat @ text_feat_world.t() / self.temp
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+ sim_t2i = text_feat @ image_feat_world.t() / self.temp
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+
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+ weights_i2t = F.softmax(sim_i2t,dim=1)
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+ weights_i2t.masked_fill_(mask, 0)
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+
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+ weights_t2i = F.softmax(sim_t2i,dim=1)
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+ weights_t2i.masked_fill_(mask, 0)
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+
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+ image_embeds_world = all_gather_with_grad(image_embeds)
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+
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+ # select a negative image (from all ranks) for each text
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+ image_embeds_neg = []
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+ for b in range(bs):
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+ neg_idx = torch.multinomial(weights_t2i[b], 1).item()
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+ image_embeds_neg.append(image_embeds_world[neg_idx])
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+ image_embeds_neg = torch.stack(image_embeds_neg,dim=0)
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+
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+ # select a negative text (from all ranks) for each image
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+ input_ids_world = concat_all_gather(encoder_input_ids)
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+ att_mask_world = concat_all_gather(text.attention_mask)
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+
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+ text_ids_neg = []
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+ text_atts_neg = []
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+ for b in range(bs):
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+ neg_idx = torch.multinomial(weights_i2t[b], 1).item()
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+ text_ids_neg.append(input_ids_world[neg_idx])
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+ text_atts_neg.append(att_mask_world[neg_idx])
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+
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+ else:
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+ with torch.no_grad():
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+ mask = torch.eq(idx, idx.t())
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+
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+ sim_i2t = image_feat @ text_feat.t() / self.temp
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+ sim_t2i = text_feat @ image_feat.t() / self.temp
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+
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+ weights_i2t = F.softmax(sim_i2t,dim=1)
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+ weights_i2t.masked_fill_(mask, 0)
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+
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+ weights_t2i = F.softmax(sim_t2i,dim=1)
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+ weights_t2i.masked_fill_(mask, 0)
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+
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+ # select a negative image (from same rank) for each text
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+ image_embeds_neg = []
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+ for b in range(bs):
189
+ neg_idx = torch.multinomial(weights_t2i[b], 1).item()
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+ image_embeds_neg.append(image_embeds[neg_idx])
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+ image_embeds_neg = torch.stack(image_embeds_neg,dim=0)
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+
193
+ # select a negative text (from same rank) for each image
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+ text_ids_neg = []
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+ text_atts_neg = []
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+ for b in range(bs):
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+ neg_idx = torch.multinomial(weights_i2t[b], 1).item()
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+ text_ids_neg.append(encoder_input_ids[neg_idx])
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+ text_atts_neg.append(text.attention_mask[neg_idx])
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+
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+ text_ids_neg = torch.stack(text_ids_neg,dim=0)
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+ text_atts_neg = torch.stack(text_atts_neg,dim=0)
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+
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+ text_ids_all = torch.cat([encoder_input_ids, text_ids_neg],dim=0)
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+ text_atts_all = torch.cat([text.attention_mask, text_atts_neg],dim=0)
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+
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+ image_embeds_all = torch.cat([image_embeds_neg,image_embeds],dim=0)
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+ image_atts_all = torch.cat([image_atts,image_atts],dim=0)
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+
210
+ output_neg = self.text_encoder(text_ids_all,
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+ attention_mask = text_atts_all,
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+ encoder_hidden_states = image_embeds_all,
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+ encoder_attention_mask = image_atts_all,
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+ return_dict = True,
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+ )
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+
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+
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+ vl_embeddings = torch.cat([output_pos.last_hidden_state[:,0,:], output_neg.last_hidden_state[:,0,:]],dim=0)
219
+ vl_output = self.itm_head(vl_embeddings)
220
+
221
+ itm_labels = torch.cat([torch.ones(bs,dtype=torch.long),torch.zeros(2*bs,dtype=torch.long)],
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+ dim=0).to(image.device)
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+ loss_itm = F.cross_entropy(vl_output, itm_labels)
224
+
225
+ return loss_ita, loss_itm
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+
227
+
228
+ @torch.no_grad()
229
+ def copy_params(self):
230
+ for model_pair in self.model_pairs:
231
+ for param, param_m in zip(model_pair[0].parameters(), model_pair[1].parameters()):
232
+ param_m.data.copy_(param.data) # initialize
233
+ param_m.requires_grad = False # not update by gradient
234
+
235
+
236
+ @torch.no_grad()
237
+ def _momentum_update(self):
238
+ for model_pair in self.model_pairs:
239
+ for param, param_m in zip(model_pair[0].parameters(), model_pair[1].parameters()):
240
+ param_m.data = param_m.data * self.momentum + param.data * (1. - self.momentum)
241
+
242
+
243
+ @torch.no_grad()
244
+ def _dequeue_and_enqueue(self, image_feat, text_feat, idxs):
245
+ # gather keys before updating queue
246
+ image_feats = concat_all_gather(image_feat)
247
+ text_feats = concat_all_gather(text_feat)
248
+
249
+
250
+ batch_size = image_feats.shape[0]
251
+
252
+ ptr = int(self.ptr_queue)
253
+ assert self.queue_size % batch_size == 0 # for simplicity
254
+
255
+ # replace the keys at ptr (dequeue and enqueue)
256
+ self.image_queue[:, ptr:ptr + batch_size] = image_feats.T
257
+ self.text_queue[:, ptr:ptr + batch_size] = text_feats.T
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+ self.idx_queue[:, ptr:ptr + batch_size] = idxs.T
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+ ptr = (ptr + batch_size) % self.queue_size # move pointer
260
+
261
+ self.ptr_queue[0] = ptr
262
+
263
+
264
+ def blip_retrieval(pretrained='',**kwargs):
265
+ model = BLIP_Retrieval(**kwargs)
266
+ if pretrained:
267
+ model,msg = load_checkpoint(model,pretrained)
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+ print("missing keys:")
269
+ print(msg.missing_keys)
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+ return model
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+
272
+
273
+ @torch.no_grad()
274
+ def concat_all_gather(tensor):
275
+ """
276
+ Performs all_gather operation on the provided tensors.
277
+ *** Warning ***: torch.distributed.all_gather has no gradient.
278
+ """
279
+ tensors_gather = [torch.ones_like(tensor)
280
+ for _ in range(torch.distributed.get_world_size())]
281
+ torch.distributed.all_gather(tensors_gather, tensor, async_op=False)
282
+
283
+ output = torch.cat(tensors_gather, dim=0)
284
+ return output
285
+
286
+
287
+ class GatherLayer(torch.autograd.Function):
288
+ """
289
+ Gather tensors from all workers with support for backward propagation:
290
+ This implementation does not cut the gradients as torch.distributed.all_gather does.
291
+ """
292
+
293
+ @staticmethod
294
+ def forward(ctx, x):
295
+ output = [torch.zeros_like(x) for _ in range(torch.distributed.get_world_size())]
296
+ torch.distributed.all_gather(output, x)
297
+ return tuple(output)
298
+
299
+ @staticmethod
300
+ def backward(ctx, *grads):
301
+ all_gradients = torch.stack(grads)
302
+ torch.distributed.all_reduce(all_gradients)
303
+ return all_gradients[torch.distributed.get_rank()]
304
+
305
+
306
+ def all_gather_with_grad(tensors):
307
+ """
308
+ Performs all_gather operation on the provided tensors.
309
+ Graph remains connected for backward grad computation.
310
+ """
311
+ # Queue the gathered tensors
312
+ world_size = torch.distributed.get_world_size()
313
+ # There is no need for reduction in the single-proc case
314
+ if world_size == 1:
315
+ return tensors
316
+
317
+ tensor_all = GatherLayer.apply(tensors)
318
+
319
+ return torch.cat(tensor_all, dim=0)