NLP-Legal-Texts / model_inference.py
Daniel Steinigen
add demonstrator
a50f42c
raw history blame
No virus
17.9 kB
import json
import logging
from typing import List, Any
import copy
import torch
from torch.utils.data import Dataset
from transformers import AutoTokenizer, AutoModelForTokenClassification, Trainer
from util.process_data import Sample, Entity, EntityType, EntityTypeSet, SampleList, Token, Relation
from util.configuration import InferenceConfiguration
valid_relations = { # head : [tail, ...]
"StatedKeyFigure": ["StatedKeyFigure", "Condition", "StatedExpression", "DeclarativeExpression"],
"DeclarativeKeyFigure": ["DeclarativeKeyFigure", "Condition", "StatedExpression", "DeclarativeExpression"],
"StatedExpression": ["Unit", "Factor", "Range", "Condition"],
"DeclarativeExpression": ["DeclarativeExpression", "Unit", "Factor", "Range", "Condition"],
"Condition": ["Condition", "StatedExpression", "DeclarativeExpression"],
"Range": ["Range"]
}
class TokenClassificationDataset(Dataset):
""" Pytorch Dataset """
def __init__(self, encodings, labels):
self.encodings = encodings
self.labels = labels
def __getitem__(self, idx):
item = {key: torch.tensor(val[idx]) for key, val in self.encodings.items()}
item['labels'] = torch.tensor(self.labels[idx])
return item
def __len__(self):
return len(self.labels)
class TransformersInference():
def __init__(self, config: InferenceConfiguration):
super().__init__()
self.__logger = logging.getLogger(self.__class__.__name__)
self.__logger.info(f"Load Configuration: {config.dict()}")
with open(f"classification.json", mode='r', encoding="utf-8") as f:
self.__entity_type_set = EntityTypeSet.parse_obj(json.load(f))
self.__entity_type_label_to_id_mapping = {x.label: x.idx for x in self.__entity_type_set.all_types()}
self.__entity_type_id_to_label_mapping = {x.idx: x.label for x in self.__entity_type_set.all_types()}
self.__logger.info("Load Model: " + config.model_path_keyfigure)
self.__tokenizer = AutoTokenizer.from_pretrained(config.transformer_model,
padding="max_length", max_length=512, truncation=True)
self.__model = AutoModelForTokenClassification.from_pretrained(config.model_path_keyfigure, num_labels=(
len(self.__entity_type_set)))
self.__trainer = Trainer(model=self.__model)
self.__merge_entities = config.merge_entities
self.__split_len = config.split_len
self.__extract_relations = config.extract_relations
# add special tokens
entity_groups = self.__entity_type_set.groups
num_entity_groups = len(entity_groups)
lst_special_tokens = ["[REL]", "[SUB]", "[/SUB]", "[OBJ]", "[/OBJ]"]
for grp_idx, grp in enumerate(entity_groups):
lst_special_tokens.append(f"[GRP-{grp_idx:02d}]")
lst_special_tokens.extend([f"[ENT-{ent:02d}]" for ent in grp if ent != self.__entity_type_set.id_of_non_entity])
lst_special_tokens.extend([f"[/ENT-{ent:02d}]" for ent in grp if ent != self.__entity_type_set.id_of_non_entity])
lst_special_tokens = sorted(list(set(lst_special_tokens)))
special_tokens_dict = {'additional_special_tokens': lst_special_tokens }
num_added_toks = self.__tokenizer.add_special_tokens(special_tokens_dict)
self.__logger.info(f"Added {num_added_toks} new special tokens. All special tokens: '{self.__tokenizer.all_special_tokens}'")
self.__logger.info("Initialization completed.")
def run_inference(self, sample_list: SampleList):
group_predictions = []
group_entity_ids = []
self.__logger.info("Predict Entities ...")
for grp_idx, grp in enumerate(self.__entity_type_set.groups):
token_lists = [[x.text for x in sample.tokens] for sample in sample_list.samples]
predictions = self.__get_predictions(token_lists, f"[GRP-{grp_idx:02d}]")
group_entity_ids_ = []
for sample, prediction_per_tokens in zip(sample_list.samples, predictions):
group_entity_ids_.append(self.generate_response_entities(sample, prediction_per_tokens, grp_idx))
group_predictions.append(predictions)
group_entity_ids.append(group_entity_ids_)
if self.__extract_relations:
self.__logger.info("Predict Relations ...")
self.__do_extract_relations(sample_list, group_predictions, group_entity_ids)
def __do_extract_relations(self, sample_list, group_predictions, group_entity_ids):
id_of_non_entity = self.__entity_type_set.id_of_non_entity
for sample_idx, sample in enumerate(sample_list.samples):
masked_tokens = []
masked_tokens_align = []
# create SUB-Mask for every entity that can be a head
head_entities = [entity_ for entity_ in sample.entities if entity_.ent_type.label in list(valid_relations.keys())]
for entity_ in head_entities:
ent_masked_tokens = []
ent_masked_tokens_align = []
last_preds = [id_of_non_entity for group in group_predictions]
last_ent_ids = [-1 for group in group_entity_ids]
for token_idx, token in enumerate(sample.tokens):
for group, ent_ids, last_pred, last_ent_id in zip(group_predictions, group_entity_ids, last_preds, last_ent_ids):
pred = group[sample_idx][token_idx]
ent_id = ent_ids[sample_idx][token_idx]
if last_pred != pred and last_pred != id_of_non_entity:
mask = "[/SUB]" if last_ent_id == entity_.id else "[/OBJ]"
ent_masked_tokens.extend([f"[/ENT-{last_pred:02d}]", mask])
ent_masked_tokens_align.extend([str(last_ent_id), str(last_ent_id)])
for group, ent_ids, last_pred, last_ent_id in zip(group_predictions, group_entity_ids, last_preds, last_ent_ids):
pred = group[sample_idx][token_idx]
ent_id = ent_ids[sample_idx][token_idx]
if last_pred != pred and pred != id_of_non_entity:
mask = "[SUB]" if ent_id == entity_.id else "[OBJ]"
ent_masked_tokens.extend([mask, f"[ENT-{pred:02d}]"])
ent_masked_tokens_align.extend([str(ent_id), str(ent_id)])
ent_masked_tokens.append(token.text)
ent_masked_tokens_align.append(token.text)
for idx, group in enumerate(group_predictions):
last_preds[idx] = group[sample_idx][token_idx]
for idx, group in enumerate(group_entity_ids):
last_ent_ids[idx] = group[sample_idx][token_idx]
for group, ent_ids, last_pred, last_ent_id in zip(group_predictions, group_entity_ids, last_preds, last_ent_ids):
pred = group[sample_idx][token_idx]
ent_id = ent_ids[sample_idx][token_idx]
if last_pred != id_of_non_entity:
mask = "[/SUB]" if last_ent_id == entity_.id else "[/OBJ]"
ent_masked_tokens.extend([f"[/ENT-{last_pred:02d}]", mask])
ent_masked_tokens_align.extend([str(last_ent_id), str(last_ent_id)])
masked_tokens.append(ent_masked_tokens)
masked_tokens_align.append(ent_masked_tokens_align)
rel_predictions = self.__get_predictions(masked_tokens, "[REL]")
self.generate_response_relations(sample, head_entities, masked_tokens_align, rel_predictions)
def generate_response_entities(self, sample: Sample, predictions_per_tokens: List[int], grp_idx: int):
entities = []
entity_ids = []
id_of_non_entity = self.__entity_type_set.id_of_non_entity
idx = grp_idx * 1000
for token, prediction in zip(sample.tokens, predictions_per_tokens):
if id_of_non_entity == prediction:
entity_ids.append(-1)
continue
idx += 1
entities.append(self.__build_entity(idx, prediction, token))
entity_ids.append(idx)
if self.__merge_entities:
entities = self.__do_merge_entities(copy.deepcopy(entities))
prev_pred = id_of_non_entity
for idx, pred in enumerate(predictions_per_tokens):
if prev_pred == pred and idx > 0:
entity_ids[idx] = entity_ids[idx-1]
prev_pred = pred
sample.entities += entities
tags = sample.tags if len(sample.tags) > 0 else [self.__entity_type_set.id_of_non_entity] * len(sample.tokens)
for tag_id, tok in enumerate(sample.tokens):
for ent in entities:
if tok.start >= ent.start and tok.start < ent.end:
tags[tag_id] = ent.ent_type.idx
logging.info(tags)
sample.tags = tags
return entity_ids
def generate_response_relations(self, sample: Sample, head_entities: List[Entity], masked_tokens_align: List[List[str]], rel_predictions: List[List[int]]):
relations = []
id_of_non_entity = self.__entity_type_set.id_of_non_entity
idx = 0
for entity_, align_per_ent, prediction_per_ent in zip(head_entities, masked_tokens_align, rel_predictions):
for token, prediction in zip(align_per_ent, prediction_per_ent):
if id_of_non_entity == prediction:
continue
try:
tail = int(token)
except:
continue
if not self.__validate_relation(sample.entities, entity_.id, tail, prediction):
continue
idx += 1
relations.append(self.__build_relation(idx, entity_.id, tail, prediction))
sample.relations = relations
def __validate_relation(self, entities: List[Entity], head: int, tail: int, prediction: int):
if head == tail: return False
head_ents = [ent.ent_type.label for ent in entities if ent.id==head]
tail_ents = [ent.ent_type.label for ent in entities if ent.id==tail]
if len(head_ents) > 0:
head_ent = head_ents[0]
else:
return False
if len(tail_ents) > 0:
tail_ent = tail_ents[0]
else:
return False
return tail_ent in valid_relations[head_ent]
def __build_entity(self, idx: int, prediction: int, token: Token) -> Entity:
return Entity(
id=idx,
text=token.text,
start=token.start,
end=token.end,
ent_type=EntityType(
idx=prediction,
label=self.__entity_type_id_to_label_mapping[prediction]
)
)
def __build_relation(self, idx: int, head: int, tail: int, prediction: int) -> Relation:
return Relation(
id=idx,
head=head,
tail=tail,
rel_type=EntityType(
idx=prediction,
label=self.__entity_type_id_to_label_mapping[prediction]
)
)
def __do_merge_entities(self, input_ents_):
out_ents = list()
current_ent = None
for ent in input_ents_:
if current_ent is None:
current_ent = ent
else:
idx_diff = ent.start - current_ent.end
if ent.ent_type.idx == current_ent.ent_type.idx and idx_diff <= 1:
current_ent.end = ent.end
current_ent.text += (" " if idx_diff == 1 else "") + ent.text
else:
out_ents.append(current_ent)
current_ent = ent
if current_ent is not None:
out_ents.append(current_ent)
return out_ents
def __get_predictions(self, token_lists: List[List[str]], trigger: str) -> List[List[int]]:
""" Get predictions of Transformer Sequence Labeling model """
if self.__split_len > 0:
token_lists_split = self.__do_split_sentences(token_lists, self.__split_len)
predictions = []
for sample_token_lists in token_lists_split:
sample_token_lists_trigger = [[trigger]+sample for sample in sample_token_lists]
val_encodings = self.__tokenizer(sample_token_lists_trigger, is_split_into_words=True, padding='max_length', truncation=True) # return_tensors="pt"
val_labels = []
for i in range(len(sample_token_lists_trigger)):
word_ids = val_encodings.word_ids(batch_index=i)
label_ids = [0 for _ in word_ids]
val_labels.append(label_ids)
val_dataset = TokenClassificationDataset(val_encodings, val_labels)
predictions_raw, _, _ = self.__trainer.predict(val_dataset)
predictions_align = self.__align_predictions(predictions_raw, val_encodings)
confidence = [[max(token) for token in sample] for sample in predictions_align]
predictions_sample = [[token.index(max(token)) for token in sample][1:] for sample in predictions_align]
predictions_part = []
for tok, pred in zip(sample_token_lists_trigger, predictions_sample):
if trigger == "[REL]" and "[SUB]" not in tok:
predictions_part += [self.__entity_type_set.id_of_non_entity] * len(pred)
else:
predictions_part += pred
predictions.append(predictions_part)
# predictions.append([j for i in predictions_sample for j in i]))
else:
token_lists_trigger = [[trigger]+sample for sample in token_lists]
val_encodings = self.__tokenizer(token_lists_trigger, is_split_into_words=True, padding='max_length', truncation=True) # return_tensors="pt"
val_labels = []
for i in range(len(token_lists_trigger)):
word_ids = val_encodings.word_ids(batch_index=i)
label_ids = [0 for _ in word_ids]
val_labels.append(label_ids)
val_dataset = TokenClassificationDataset(val_encodings, val_labels)
predictions_raw, _, _ = self.__trainer.predict(val_dataset)
predictions_align = self.__align_predictions(predictions_raw, val_encodings)
confidence = [[max(token) for token in sample] for sample in predictions_align]
predictions = [[token.index(max(token)) for token in sample][1:] for sample in predictions_align]
return predictions
def __do_split_sentences(self, tokens_: List[List[str]], split_len_ = 200) -> List[List[List[str]]]:
# split token lists into shorter lists
res_tokens = []
for tok_lst in tokens_:
res_tokens_sample = []
length = len(tok_lst)
if length > split_len_:
num_lists = length // split_len_ + (1 if (length % split_len_) > 0 else 0)
new_length = int(length / num_lists) + 1
self.__logger.info(f"Splitting a list of {length} elements into {num_lists} lists of length {new_length}..")
start_idx = 0
for i in range(num_lists):
end_idx = min(start_idx + new_length, length)
if "\n" in tok_lst[start_idx]: tok_lst[start_idx] = "."
if "\n" in tok_lst[end_idx-1]: tok_lst[end_idx-1] = "."
res_tokens_sample.append(tok_lst[start_idx:end_idx])
start_idx = end_idx
res_tokens.append(res_tokens_sample)
else:
res_tokens.append([tok_lst])
return res_tokens
def __align_predictions(self, predictions, tokenized_inputs, sum_all_tokens=False) -> List[List[List[float]]]:
""" Align predicted labels from Transformer Tokenizer """
confidence = []
id_of_non_entity = self.__entity_type_set.id_of_non_entity
for i, tagset in enumerate(predictions):
word_ids = tokenized_inputs.word_ids(batch_index=i)
previous_word_idx = None
token_confidence = []
for k, word_idx in enumerate(word_ids):
try:
tok_conf = [value for value in tagset[k]]
except TypeError:
# use the object itself it if's not iterable
tok_conf = tagset[k]
if word_idx is not None:
# add nonentity tokens if there is a gap in word ids (usually caused by a newline token)
if previous_word_idx is not None:
diff = word_idx - previous_word_idx
for i in range(diff - 1):
tmp = [0 for _ in tok_conf]
tmp[id_of_non_entity] = 1.0
token_confidence.append(tmp)
# add confidence value if this is the first token of the word
if word_idx != previous_word_idx:
token_confidence.append(tok_conf)
else:
# if sum_all_tokens=True the confidence for all tokens of one word will be summarized
if sum_all_tokens:
token_confidence[-1] = [a + b for a, b in zip(token_confidence[-1], tok_conf)]
previous_word_idx = word_idx
confidence.append(token_confidence)
return confidence