import math import re from typing import ( List, Union, Any, Optional, ) import numpy as np import torch import torch.nn as nn from tqdm import tqdm from transformers import PreTrainedTokenizer def get_id_and_prob(spans, offset_map): prompt_length = 0 for i in range(1, len(offset_map)): if offset_map[i] != [0, 0]: prompt_length += 1 else: break for i in range(1, prompt_length + 1): offset_map[i][0] -= (prompt_length + 1) offset_map[i][1] -= (prompt_length + 1) sentence_id = [] prob = [] for start, end in spans: prob.append(start[1] * end[1]) sentence_id.append( (offset_map[start[0]][0], offset_map[end[0]][1])) return sentence_id, prob def get_span(start_ids, end_ids, with_prob=False): """ Get span set from position start and end list. Args: start_ids (List[int]/List[tuple]): The start index list. end_ids (List[int]/List[tuple]): The end index list. with_prob (bool): If True, each element for start_ids and end_ids is a tuple aslike: (index, probability). Returns: set: The span set without overlapping, every id can only be used once. """ if with_prob: start_ids = sorted(start_ids, key=lambda x: x[0]) end_ids = sorted(end_ids, key=lambda x: x[0]) else: start_ids = sorted(start_ids) end_ids = sorted(end_ids) start_pointer = 0 end_pointer = 0 len_start = len(start_ids) len_end = len(end_ids) couple_dict = {} # 将每一个span的首/尾token的id进行配对(就近匹配,默认没有overlap的情况) while start_pointer < len_start and end_pointer < len_end: if with_prob: start_id = start_ids[start_pointer][0] end_id = end_ids[end_pointer][0] else: start_id = start_ids[start_pointer] end_id = end_ids[end_pointer] if start_id == end_id: couple_dict[end_ids[end_pointer]] = start_ids[start_pointer] start_pointer += 1 end_pointer += 1 continue if start_id < end_id: couple_dict[end_ids[end_pointer]] = start_ids[start_pointer] start_pointer += 1 continue if start_id > end_id: end_pointer += 1 continue result = [(couple_dict[end], end) for end in couple_dict] result = set(result) return result def get_bool_ids_greater_than(probs, limit=0.5, return_prob=False): """ Get idx of the last dimension in probability arrays, which is greater than a limitation. Args: probs (List[List[float]]): The input probability arrays. limit (float): The limitation for probability. return_prob (bool): Whether to return the probability Returns: List[List[int]]: The index of the last dimension meet the conditions. """ probs = np.array(probs) dim_len = len(probs.shape) if dim_len > 1: result = [] for p in probs: result.append(get_bool_ids_greater_than(p, limit, return_prob)) return result else: result = [] for i, p in enumerate(probs): if p > limit: if return_prob: result.append((i, p)) else: result.append(i) return result def dbc2sbc(s): rs = "" for char in s: code = ord(char) if code == 0x3000: code = 0x0020 else: code -= 0xfee0 if not (0x0021 <= code <= 0x7e): rs += char continue rs += chr(code) return rs def cut_chinese_sent(para): """ Cut the Chinese sentences more precisely, reference to "https://blog.csdn.net/blmoistawinde/article/details/82379256". """ para = re.sub(r'([。!?\?])([^”’])', r'\1\n\2', para) para = re.sub(r'(\.{6})([^”’])', r'\1\n\2', para) para = re.sub(r'(\…{2})([^”’])', r'\1\n\2', para) para = re.sub(r'([。!?\?][”’])([^,。!?\?])', r'\1\n\2', para) para = para.rstrip() return para.split("\n") def auto_splitter(input_texts, max_text_len, split_sentence=False): """ Split the raw texts automatically for model inference. Args: input_texts (List[str]): input raw texts. max_text_len (int): cutting length. split_sentence (bool): If True, sentence-level split will be performed. return: short_input_texts (List[str]): the short input texts for model inference. input_mapping (dict): mapping between raw text and short input texts. """ input_mapping = {} short_input_texts = [] cnt_short = 0 for cnt_org, text in enumerate(input_texts): sens = cut_chinese_sent(text) if split_sentence else [text] for sen in sens: lens = len(sen) if lens <= max_text_len: short_input_texts.append(sen) if cnt_org in input_mapping: input_mapping[cnt_org].append(cnt_short) else: input_mapping[cnt_org] = [cnt_short] cnt_short += 1 else: temp_text_list = [sen[i: i + max_text_len] for i in range(0, lens, max_text_len)] short_input_texts.extend(temp_text_list) short_idx = cnt_short cnt_short += math.ceil(lens / max_text_len) temp_text_id = [short_idx + i for i in range(cnt_short - short_idx)] if cnt_org in input_mapping: input_mapping[cnt_org].extend(temp_text_id) else: input_mapping[cnt_org] = temp_text_id return short_input_texts, input_mapping class UIEDecoder(nn.Module): keys_to_ignore_on_gpu = ["offset_mapping", "texts"] @torch.inference_mode() def predict( self, tokenizer: PreTrainedTokenizer, texts: Union[List[str], str], schema: Optional[Any] = None, batch_size: int = 64, max_length: int = 512, split_sentence: bool = False, position_prob: float = 0.5, is_english: bool = False, disable_tqdm: bool = True, ) -> List[Any]: self.eval() self.tokenizer = tokenizer self.is_english = is_english if schema is not None: self.set_schema(schema) texts = texts if isinstance(texts, str): texts = [texts] return self._multi_stage_predict( texts, batch_size, max_length, split_sentence, position_prob, disable_tqdm ) def set_schema(self, schema): if isinstance(schema, (dict, str)): schema = [schema] self._schema_tree = self._build_tree(schema) def _multi_stage_predict( self, texts: List[str], batch_size: int = 64, max_length: int = 512, split_sentence: bool = False, position_prob: float = 0.5, disable_tqdm: bool = True, ) -> List[Any]: """ Traversal the schema tree and do multi-stage prediction. """ results = [{} for _ in range(len(texts))] if len(texts) < 1 or self._schema_tree is None: return results schema_list = self._schema_tree.children[:] while len(schema_list) > 0: node = schema_list.pop(0) examples = [] input_map = {} cnt = 0 idx = 0 if not node.prefix: for data in texts: examples.append({"text": data, "prompt": dbc2sbc(node.name)}) input_map[cnt] = [idx] idx += 1 cnt += 1 else: for pre, data in zip(node.prefix, texts): if len(pre) == 0: input_map[cnt] = [] else: for p in pre: if self.is_english: if re.search(r'\[.*?\]$', node.name): prompt_prefix = node.name[:node.name.find("[", 1)].strip() cls_options = re.search(r'\[.*?\]$', node.name).group() # Sentiment classification of xxx [positive, negative] prompt = prompt_prefix + p + " " + cls_options else: prompt = node.name + p else: prompt = p + node.name examples.append( { "text": data, "prompt": dbc2sbc(prompt) } ) input_map[cnt] = [i + idx for i in range(len(pre))] idx += len(pre) cnt += 1 result_list = self._single_stage_predict( examples, batch_size, max_length, split_sentence, position_prob, disable_tqdm ) if examples else [] if not node.parent_relations: relations = [[] for _ in range(len(texts))] for k, v in input_map.items(): for idx in v: if len(result_list[idx]) == 0: continue if node.name not in results[k].keys(): results[k][node.name] = result_list[idx] else: results[k][node.name].extend(result_list[idx]) if node.name in results[k].keys(): relations[k].extend(results[k][node.name]) else: relations = node.parent_relations for k, v in input_map.items(): for i in range(len(v)): if len(result_list[v[i]]) == 0: continue if "relations" not in relations[k][i].keys(): relations[k][i]["relations"] = {node.name: result_list[v[i]]} elif node.name not in relations[k][i]["relations"].keys(): relations[k][i]["relations"][node.name] = result_list[v[i]] else: relations[k][i]["relations"][node.name].extend(result_list[v[i]]) new_relations = [[] for _ in range(len(texts))] for i in range(len(relations)): for j in range(len(relations[i])): if "relations" in relations[i][j].keys() and node.name in relations[i][j]["relations"].keys(): for k in range(len(relations[i][j]["relations"][node.name])): new_relations[i].append(relations[i][j]["relations"][node.name][k]) relations = new_relations prefix = [[] for _ in range(len(texts))] for k, v in input_map.items(): for idx in v: for i in range(len(result_list[idx])): if self.is_english: prefix[k].append(" of " + result_list[idx][i]["text"]) else: prefix[k].append(result_list[idx][i]["text"] + "的") for child in node.children: child.prefix = prefix child.parent_relations = relations schema_list.append(child) return results def _convert_ids_to_results(self, examples, sentence_ids, probs): """ Convert ids to raw text in a single stage. """ results = [] for example, sentence_id, prob in zip(examples, sentence_ids, probs): if len(sentence_id) == 0: results.append([]) continue result_list = [] text = example["text"] prompt = example["prompt"] for i in range(len(sentence_id)): start, end = sentence_id[i] if start < 0 and end >= 0: continue if end < 0: start += len(prompt) + 1 end += len(prompt) + 1 result = {"text": prompt[start: end], "probability": prob[i]} else: result = {"text": text[start: end], "start": start, "end": end, "probability": prob[i]} result_list.append(result) results.append(result_list) return results def _auto_splitter(self, input_texts, max_text_len, split_sentence=False): """ Split the raw texts automatically for model inference. Args: input_texts (List[str]): input raw texts. max_text_len (int): cutting length. split_sentence (bool): If True, sentence-level split will be performed. return: short_input_texts (List[str]): the short input texts for model inference. input_mapping (dict): mapping between raw text and short input texts. """ input_mapping = {} short_input_texts = [] cnt_short = 0 for cnt_org, text in enumerate(input_texts): sens = cut_chinese_sent(text) if split_sentence else [text] for sen in sens: lens = len(sen) if lens <= max_text_len: short_input_texts.append(sen) if cnt_org in input_mapping: input_mapping[cnt_org].append(cnt_short) else: input_mapping[cnt_org] = [cnt_short] cnt_short += 1 else: temp_text_list = [sen[i: i + max_text_len] for i in range(0, lens, max_text_len)] short_input_texts.extend(temp_text_list) short_idx = cnt_short cnt_short += math.ceil(lens / max_text_len) temp_text_id = [short_idx + i for i in range(cnt_short - short_idx)] if cnt_org in input_mapping: input_mapping[cnt_org].extend(temp_text_id) else: input_mapping[cnt_org] = temp_text_id return short_input_texts, input_mapping def _single_stage_predict( self, inputs: List[dict], batch_size: int = 64, max_length: int = 512, split_sentence: bool = False, position_prob: float = 0.5, disable_tqdm: bool = True, ): input_texts = [] prompts = [] for i in range(len(inputs)): input_texts.append(inputs[i]["text"]) prompts.append(inputs[i]["prompt"]) # max predict length should exclude the length of prompt and summary tokens max_predict_len = max_length - len(max(prompts)) - 3 short_input_texts, input_mapping = self._auto_splitter( input_texts, max_predict_len, split_sentence=split_sentence ) short_texts_prompts = [] for k, v in input_mapping.items(): short_texts_prompts.extend([prompts[k] for _ in range(len(v))]) short_inputs = [ { "text": short_input_texts[i], "prompt": short_texts_prompts[i] } for i in range(len(short_input_texts)) ] encoded_inputs = self.tokenizer( text=short_texts_prompts, text_pair=short_input_texts, stride=2, truncation=True, max_length=max_length, padding="longest", add_special_tokens=True, return_offsets_mapping=True, return_tensors="np") offset_maps = encoded_inputs["offset_mapping"] start_prob_concat, end_prob_concat = [], [] if disable_tqdm: batch_iterator = range(0, len(short_input_texts), batch_size) else: batch_iterator = tqdm(range(0, len(short_input_texts), batch_size), desc="Predicting", unit="batch") for batch_start in batch_iterator: batch = { key: np.array(value[batch_start: batch_start + batch_size], dtype="int64") for key, value in encoded_inputs.items() if key not in self.keys_to_ignore_on_gpu } for k, v in batch.items(): batch[k] = torch.tensor(v, device=self.device) outputs = self(**batch) start_prob, end_prob = outputs[0], outputs[1] if self.device != torch.device("cpu"): start_prob, end_prob = start_prob.cpu(), end_prob.cpu() start_prob_concat.append(start_prob.detach().numpy()) end_prob_concat.append(end_prob.detach().numpy()) start_prob_concat = np.concatenate(start_prob_concat) end_prob_concat = np.concatenate(end_prob_concat) start_ids_list = get_bool_ids_greater_than(start_prob_concat, limit=position_prob, return_prob=True) end_ids_list = get_bool_ids_greater_than(end_prob_concat, limit=position_prob, return_prob=True) input_ids = encoded_inputs['input_ids'].tolist() sentence_ids, probs = [], [] for start_ids, end_ids, ids, offset_map in zip(start_ids_list, end_ids_list, input_ids, offset_maps): span_list = get_span(start_ids, end_ids, with_prob=True) sentence_id, prob = get_id_and_prob(span_list, offset_map.tolist()) sentence_ids.append(sentence_id) probs.append(prob) results = self._convert_ids_to_results(short_inputs, sentence_ids, probs) results = self._auto_joiner(results, short_input_texts, input_mapping) return results def _auto_joiner(self, short_results, short_inputs, input_mapping): concat_results = [] is_cls_task = False for short_result in short_results: if not short_result: continue elif 'start' not in short_result[0].keys() and 'end' not in short_result[0].keys(): is_cls_task = True break else: break for k, vs in input_mapping.items(): single_results = [] if is_cls_task: cls_options = {} for v in vs: if len(short_results[v]) == 0: continue if short_results[v][0]['text'] in cls_options: cls_options[short_results[v][0]["text"]][0] += 1 cls_options[short_results[v][0]["text"]][1] += short_results[v][0]["probability"] else: cls_options[short_results[v][0]["text"]] = [1, short_results[v][0]["probability"]] if cls_options: cls_res, cls_info = max(cls_options.items(), key=lambda x: x[1]) concat_results.append( [ {"text": cls_res, "probability": cls_info[1] / cls_info[0]} ] ) else: concat_results.append([]) else: offset = 0 for v in vs: if v == 0: single_results = short_results[v] offset += len(short_inputs[v]) else: for i in range(len(short_results[v])): if 'start' not in short_results[v][i] or 'end' not in short_results[v][i]: continue short_results[v][i]["start"] += offset short_results[v][i]["end"] += offset offset += len(short_inputs[v]) single_results.extend(short_results[v]) concat_results.append(single_results) return concat_results @classmethod def _build_tree(cls, schema, name='root'): """ Build the schema tree. """ schema_tree = SchemaTree(name) for s in schema: if isinstance(s, str): schema_tree.add_child(SchemaTree(s)) elif isinstance(s, dict): for k, v in s.items(): if isinstance(v, str): child = [v] elif isinstance(v, list): child = v else: raise TypeError( f"Invalid schema, value for each key:value pairs should be list or string" f"but {type(v)} received") schema_tree.add_child(cls._build_tree(child, name=k)) else: raise TypeError(f"Invalid schema, element should be string or dict, but {type(s)} received") return schema_tree class SchemaTree(object): """ Implementation of SchemaTree """ def __init__(self, name='root', children=None): self.name = name self.children = [] self.prefix = None self.parent_relations = None if children is not None: for child in children: self.add_child(child) def __repr__(self): return self.name def add_child(self, node): assert isinstance( node, SchemaTree ), "The children of a node should be an instance of SchemaTree." self.children.append(node)