# --------------------------------------------------------------- # Copyright (c) __________________________ 2023. # # This source code is licensed under the MIT license found in the # LICENSE file in the root directory of this source tree. # --------------------------------------------------------------- import numpy as np import torch import random import re from .constants import TEXT_CUTOFF_POINTS def get_text_window(all_text, context_start, tgt_token='[MASK1]', window_size=10, widen_rate=0.5, max_widen_len=2, min_sent_len=10): ''' window_size : measured as number of full sentences. min_sent_len : minimum size of sentences in characters widen_rate : rate that window size increases or decreases randomly by 1 ''' assert widen_rate >= 0.0 and widen_rate <= 1.0 assert max_widen_len >= 0 sentence_split = [] text_len = 0 context_sent_idx = None for s in all_text.split('. '): sent_len = len(s) text_len += sent_len if sent_len >= min_sent_len: sentence_split.append(s.strip()) #Track when context starts within sentences if text_len >= context_start and context_sent_idx is None: context_sent_idx = len(sentence_split) sentence_split.append(tgt_token) if len(all_text) >= context_start or context_sent_idx is None: #Random spot in middle mid_pt = len(sentence_split) // 2 sentence_split.insert(mid_pt, tgt_token) context_sent_idx = mid_pt #sum([len(s) for s in sentence_split[:mid_pt]]) #Calculate window size flexibly if random.random() < widen_rate: #increase or decrease ? inc_dec = 1 if random.random() < 0.5 else -1 #randomly pick a change size change_size = random.randint(0, max_widen_len) window_size += (inc_dec * change_size) start_idx = context_sent_idx - int(np.ceil(window_size / 2)) end_idx = context_sent_idx + window_size // 2 if start_idx < 0: end_idx -= start_idx start_idx = 0 elif end_idx > len(sentence_split): start_idx = start_idx - (end_idx - len(sentence_split)) end_idx = len(sentence_split) #ensure limits start_idx = max(start_idx, 0) end_idx = min(end_idx, len(sentence_split)) output = '. '.join(sentence_split[start_idx:end_idx]) output = re.sub(r'\[\d+\]', '', output) return output def stack_dict(list_batch): collated_batch = {} for batch in list_batch: if batch is None: continue for name, data in batch.items(): if name not in collated_batch: collated_batch[name] = [] collated_batch[name].append(data) return collated_batch def stack_tensor_dict(dict_tensors): for k in list(dict_tensors.keys()): dict_tensors = torch.stack(dict_tensors[k], dim=0) return dict_tensors def shift_right_vec(x, start_values=0.0): x_len = len(x.shape) one_frame = [1] * x_len if x_len == 3: one_frame[0] = x.size(0) one_frame[-1] = x.size(-1) elif x_len == 2: one_frame[0] = x.size(0) elif x_len == 1: pass else: raise ValueError("Input has invalid shape") start_seq = torch.ones(one_frame, device=x.device, dtype=torch.float32) start_seq = start_seq * start_values if x_len == 3: return torch.cat([start_seq, x[:,:-1, :]], dim=1) elif x_len == 2: return torch.cat([start_seq, x[:, :-1]], dim=1) elif x_len == 1: return torch.cat([start_seq, x[:-1]], dim=0) else: raise NotImplementedError() def shift_tokens_right(input_ids, pad_token_id, dim=-1): """Shift input ids one token to the right, and wrap the last non pad token (usually ).""" prev_output_tokens = input_ids.clone() index_of_eos = (input_ids.ne(pad_token_id).sum(dim=dim) - 1).unsqueeze(-1) prev_output_tokens[:, 0] = input_ids.gather(1, index_of_eos).squeeze() prev_output_tokens[:, 1:] = input_ids[:, :-1] return prev_output_tokens def shift_tokens_right_pad(input_ids, pad_token_id, dim=-1): """Shift input ids one token to the right, and pad front.""" prev_output_tokens = input_ids.clone() prev_output_tokens[:, 0] = pad_token_id prev_output_tokens[:, 1:] = input_ids[:, :-1] return prev_output_tokens class BaseDataset(torch.utils.data.Dataset): def __init__(self, tokenizer, window_size, widen_rate, max_widen_len, min_sent_len, max_source_len, max_target_len, pad_to_max_len, ignore_pad_token_for_loss, tgt_token=''): super().__init__() if isinstance(tokenizer, dict) and 'caption' in tokenizer: tokenizer = tokenizer['caption'] self.tokenizer = tokenizer self.window_size = window_size self.widen_rate = widen_rate self.max_widen_len = max_widen_len self.min_sent_len = min_sent_len self.max_source_len = max_source_len self.max_target_len = max_target_len self.pad_to_max_len = pad_to_max_len self.ignore_pad_token_for_loss = ignore_pad_token_for_loss self.padding = "max_length" if pad_to_max_len else False self.tgt_token = tgt_token def preprocess_all_text(self, all_text, min_cutoff_rate=0.8): #Remove text beyond the conclusion. #Method: Find the first mention of a list of words. Remove all text beyond the first mention. text_len = len(all_text) min_cutoff_idx = text_len for text in TEXT_CUTOFF_POINTS: cutoff_idx = all_text.lower().find(text.lower()) if cutoff_idx >= (text_len * min_cutoff_rate): if cutoff_idx < min_cutoff_idx: min_cutoff_idx = cutoff_idx all_text = all_text[:min_cutoff_idx] assert len(all_text) >= (text_len * min_cutoff_rate), "bug found: text >> {}".format(all_text) return all_text def get_caption_label(self, captions, all_text, context_start): caption_label = '' for key in ['title','p']: cap = captions.get(key) if isinstance(cap, list): for c in cap: #Remove location of context all_text = all_text.replace(c, '') context_start -= len(c) # split caption into senteces and remove parts that have \\ c = '. '.join([s.replace('\n', ' ') for s in c.strip().split('. ')]) caption_label += c elif cap is None: continue else: raise cap return caption_label, all_text, context_start def preprocess_captions(self, inputs, targets): model_inputs, _ = self._tokenize(self.tokenizer, inputs, max_source_len=self.max_source_len, max_target_len=self.max_target_len, is_target=False) # Setup the tokenizer for targets with self.tokenizer.as_target_tokenizer(): labels = self.tokenizer(targets, max_length=self.max_target_len, padding=self.padding, truncation=True) model_inputs["decoder_input_ids"] = shift_tokens_right(torch.tensor(labels["input_ids"]), self.tokenizer.pad_token_id) if self.padding == "max_length" and self.ignore_pad_token_for_loss: labels["input_ids"] = [ l if l != self.tokenizer.pad_token_id else -100 for l in labels["input_ids"] ] model_inputs["labels"] = torch.tensor(labels["input_ids"]) for k in list(model_inputs.keys()): model_inputs[k] = model_inputs[k].squeeze(0) model_inputs['raw'] = targets return model_inputs def _tokenize(self, tokenizer, text, max_source_len, max_target_len=32, is_target=False, shift_right=False): inputs = tokenizer( text, max_length=max_source_len, padding=self.padding, truncation=True, return_tensors="pt") labels = None if is_target: with tokenizer.as_target_tokenizer(): labels = tokenizer(text, max_length=max_target_len, padding=self.padding, truncation=True) if shift_right: inputs["decoder_input_ids"] = shift_tokens_right(torch.tensor(labels["input_ids"]).long(), tokenizer.pad_token_id, dim=-1) inputs["decoder_attention_mask"] = shift_tokens_right(torch.tensor(labels["attention_mask"]).long(), tokenizer.pad_token_id, dim=-1) if self.padding == "max_length" and self.ignore_pad_token_for_loss: labels["input_ids"] = [ l if l != tokenizer.pad_token_id else -100 for l in labels["input_ids"] ] labels["input_ids"] = torch.tensor(labels["input_ids"]).long() return inputs, labels