| from torch.nn.functional import pad
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| from torch.utils.data import Dataset
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| import torch
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| import json
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| from transformers import PreTrainedTokenizer
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|
|
| from dataclasses import dataclass
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|
|
|
|
| def longest_common_subsequence(a, b, s_i=0, s_j=0) -> list:
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| a = a.numpy()
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| b = b.numpy()
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| m, n = len(a), len(b)
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|
|
| i = s_i
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| j = s_j
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| result = []
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|
|
| while i < m and j < n:
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| if a[i][1] == 0:
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| i += 1
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| continue
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| if b[j] == 0:
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| j += 1
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| continue
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|
|
| if a[i][1] == b[j]:
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| result.append(i+1)
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| i += 1
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| j += 1
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| elif a[i][1] < b[j]:
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| i += 1
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| else:
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| j += 1
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|
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| return result
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|
|
| def get_pooler_tensor(segments_idxs):
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|
|
| padded_idx_batch = []
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| max_seg, max_len_all = 0, 0
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| pad_multiple = 4
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|
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| for seg_idx, max_len in segments_idxs:
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| max_len_all = max(max_len_all, max_len)
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| max_seg = max(max_seg, len(seg_idx))
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|
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| padded = torch.stack([
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| pad(x, (0, max_len - len(x)), value=-1)
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| for x in seg_idx
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| ])
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|
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| padded_idx_batch.append(padded)
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|
|
|
|
| def pad2d(t, h, w):
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| return pad(t, (0, w - t.size(1), 0, h - t.size(0)), value=-1)
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|
|
|
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| padded_idx_batch = torch.stack([
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| pad2d(p, max_seg, max_len_all) for p in padded_idx_batch
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| ])
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|
|
|
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| mask = padded_idx_batch != -1
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| safe_idx = padded_idx_batch.masked_fill(~mask, 0)
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|
|
| return {'safe_idx': safe_idx, 'mask': mask}
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|
|
| def prepare_pooler(offset_mapping, starts, phrases_offsets):
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| seg_idxs = []
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| for offset, start, phrases_offset in zip(offset_mapping, starts, phrases_offsets):
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|
|
| seg_idx = []
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|
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| token_offset_start = [start.item()]
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|
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| longest_common_offset = token_offset_start + longest_common_subsequence(offset, phrases_offset, start)
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| student_max_len = 1
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|
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| for i in range(1, len(longest_common_offset)):
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| seg_idx.append(torch.arange(longest_common_offset[i - 1], longest_common_offset[i]))
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| student_max_len = max(student_max_len, seg_idx[-1].size(0))
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|
|
| seg_idxs.append((seg_idx, student_max_len))
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|
|
| return get_pooler_tensor(seg_idxs)
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|
|
|
|
| class LLMDataset(Dataset):
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| def __init__(self, file_path, tokenizer, syntactic_file, prompt_max_len=512):
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|
|
| self.dataset = []
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|
|
| with open(file_path, "r", encoding="utf-8") as f:
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| for line in f:
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| data = json.loads(line)
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| self.dataset.append(data)
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|
|
| s_prompt = tokenizer(
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| data['prompt'],
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| max_length=prompt_max_len,
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| truncation=True,
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| add_special_tokens=False
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| )
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| data['prompt'] = tokenizer.decode(s_prompt['input_ids'])
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| data['prompt_len'] = len(s_prompt['input_ids'])
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|
|
| with open(syntactic_file, "r", encoding="utf-8") as f:
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| idx = 0
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| for line in f:
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| prompt_end = len(self.dataset[idx]['prompt'])
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| data = json.loads(line)
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| phrases_lvl1 = [prompt_end] + [prompt_end + item['end_char'] for item in data['phrases_lvl1']]
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| phrases_lvl2 = [prompt_end] + [prompt_end + item['end_char'] for item in data['phrases_lvl2']]
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|
|
| self.dataset[idx]['phrases_lvl1_offset'] = torch.tensor(phrases_lvl1)
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| self.dataset[idx]['phrases_lvl2_offset'] = torch.tensor(phrases_lvl2)
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|
|
| idx += 1
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|
|
|
|
| def __len__(self):
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| return len(self.dataset)
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|
|
| def __getitem__(self, index):
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| return (self.dataset[index]['prompt'],
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| self.dataset[index]['output'],
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| self.dataset[index]['prompt_len'],
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| self.dataset[index]['phrases_lvl1_offset'],
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| self.dataset[index]['phrases_lvl2_offset'])
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|
|
|
|
| @dataclass
|
| class LLMDataCollator:
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| tokenizer: PreTrainedTokenizer = None
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| model_type: str = ''
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| do_train: bool = True
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| max_len: int = 512
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| pad_to_multiple_of: int = 4
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| return_tensors: str = 'pt'
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| padding: bool = True
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| return_offsets_mapping: bool = True
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| n_span: int = 4
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|
|
|
|
| def __call__(self, batch):
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| prompts, fulls, prompt_lengths, phrases_lvl1_offsets, phrases_lvl2_offsets = [], [], [], [], []
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| for prompt, output, prompt_length, phrases_lvl1_offset, phrases_lvl2_offset in batch:
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| prompts.append(prompt)
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| fulls.append(prompt + output)
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| prompt_lengths.append(prompt_length)
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| phrases_lvl1_offsets.append(phrases_lvl1_offset)
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| phrases_lvl2_offsets.append(phrases_lvl2_offset)
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|
|
|
|
| inputs = self.tokenizer(
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| fulls,
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| truncation=True,
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| padding=self.padding,
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| max_length=self.max_len - 1,
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| return_tensors=self.return_tensors,
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| pad_to_multiple_of=self.pad_to_multiple_of,
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| return_offsets_mapping=self.return_offsets_mapping and self.do_train,
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| add_special_tokens=False
|
| )
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|
|
|
|
| eos_tokens = torch.full((inputs["input_ids"].size(0), 1), self.tokenizer.eos_token_id, dtype=torch.long)
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| inputs["input_ids"] = torch.cat([inputs["input_ids"], eos_tokens], dim=1)
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| inputs["attention_mask"] = torch.cat([inputs["attention_mask"],
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| torch.zeros((inputs["attention_mask"].size(0), 1), dtype=torch.long)], dim=1)
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|
|
| labels = inputs["input_ids"][:, 1:].clone().detach()
|
| labels = torch.cat([labels, torch.full((labels.size(0), 1), -100, dtype=torch.long)], dim=1)
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|
|
| input_lengths = inputs["attention_mask"].sum(dim=1)
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| prompt_lengths = torch.tensor(prompt_lengths)
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|
|
| if self.model_type in ["gpt2"]:
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| position_ids = torch.zeros(inputs['input_ids'].size(), dtype=torch.long)
|
| for i in range(input_lengths.size(0)):
|
| position_ids[i, :input_lengths[i]] = torch.arange(0, input_lengths[i], dtype=torch.long)
|
| inputs["position_ids"] = position_ids
|
|
|
| for i in range(len(labels)):
|
| labels[i, :(prompt_lengths[i] -1)] = -100
|
| labels[i, input_lengths[i]:] = -100
|
|
|
| if not self.do_train:
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| return inputs, None, labels
|
|
|
| token_offset_mapping = inputs.pop('offset_mapping', None)
|
| if token_offset_mapping is not None :
|
| starts = torch.zeros_like(prompt_lengths)
|
| pooler_tensor = prepare_pooler(token_offset_mapping, starts, phrases_lvl2_offsets)
|
|
|
| inputs['pooler_safe_idx'] = pooler_tensor['safe_idx']
|
| inputs['pooler_mask'] = pooler_tensor['mask']
|
|
|
| return inputs, labels
|
|
|