ner-bert / predict.py
aaya868868
Initial commit
66381dc
# -*- coding: utf-8 -*-
import argparse
import torch
import torch.nn as nn
import torch.nn.functional as F
from transformers import BertModel,AutoTokenizer
import os
from torch.utils import data
import numpy as np
import sys
max_seq_length = 512
class InputExample(object):
def __init__(self, guid, words, labels):
self.guid = guid
self.words = words
self.labels = labels
class InputFeatures(object):
def __init__(self, input_ids, input_mask, segment_ids, predict_mask, label_ids):
self.input_ids = input_ids
self.input_mask = input_mask
self.segment_ids = segment_ids
self.predict_mask = predict_mask
self.label_ids = label_ids
class DataProcessor(object):
def get_train_examples(self, data_dir):
raise NotImplementedError()
def get_dev_examples(self, data_dir):
raise NotImplementedError()
def get_predict_examples(self, data_dir,predict_string):
raise NotImplementedError()
def get_labels(self):
raise NotImplementedError()
@classmethod
def _read_data(cls, input_file,isPredict = False,sentence = ''):
if isPredict == False:
with open(input_file) as f:
out_lists = []
entries = f.read().strip().split("\n\n")
for entry in entries:
words = []
ner_labels = []
pos_tags = []
bio_pos_tags = []
for line in entry.splitlines():
pieces = line.strip().split()
if len(pieces) < 1:
continue
word = pieces[0]
words.append(word)
ner_labels.append(pieces[-1])
out_lists.append([words,pos_tags,bio_pos_tags,ner_labels])
else:
out_lists = []
words = []
ner_labels = []
pos_tags = []
bio_pos_tags = []
entries = sentence.strip().split(" ")
for i in entries:
if len(i) < 1:
continue
word = i
words.append(word)
ner_labels.append('O')
out_lists.append([words,pos_tags,bio_pos_tags,ner_labels])
return out_lists
class DNRTIDataProcessor(DataProcessor):
def __init__(self):
self._label_types = [ 'X', '[CLS]', '[SEP]', 'O', 'B-Area', 'B-Exp', 'B-Features', 'B-HackOrg', 'B-Idus', 'B-OffAct','B-Org', 'B-Purp', 'B-SamFile','B-SecTeam','B-Time','B-Tool','B-Way','I-Area','I-Exp','I-Features','I-HackOrg','I-Idus','I-OffAct','I-Org','I-Purp','I-SamFile','I-SecTeam','I-Time','I-Tool','I-Way']
self._num_labels = len(self._label_types)
self._label_map = {label: i for i,
label in enumerate(self._label_types)}
def get_train_examples(self, data_dir):
return self._create_examples(
self._read_data(os.path.join(data_dir, "train.txt")))
def get_dev_examples(self, data_dir):
return self._create_examples(
self._read_data(os.path.join(data_dir, "valid.txt")))
def get_predict_examples(self,data_dir, predict_string):
return self._create_examples(
self._read_data(os.path.join(data_dir, "None.txt"),True,predict_string),True)
def get_test_examples(self, data_dir):
return self._create_examples(
self._read_data(os.path.join(data_dir, "test.txt")))
def get_labels(self):
return self._label_types
def get_num_labels(self):
return self.get_num_labels
def get_label_map(self):
return self._label_map
def get_start_label_id(self):
return self._label_map['[CLS]']
def get_stop_label_id(self):
return self._label_map['[SEP]']
def _create_examples(self, all_lists,isPredict = False):
examples = []
if isPredict == False:
for (i, one_lists) in enumerate(all_lists):
guid = i
words = one_lists[0]
labels = one_lists[-1]
examples.append(InputExample(
guid=guid, words=words, labels=labels))
else:
k = 1
for i in all_lists:
guid = k
k += 1
words = i[0]
labels = i[3]
examples.append(InputExample(
guid=guid, words=words, labels=labels))
return examples
def _create_examples2(self, lines):
examples = []
for (i, line) in enumerate(lines):
guid = i
text = line[0]
ner_label = line[-1]
examples.append(InputExample(
guid=guid, text_a=text, labels_a=ner_label))
return examples
def example2feature(example, tokenizer, label_map, max_seq_length):
add_label = 'X'
# tokenize_count = []
tokens = ['[CLS]']
predict_mask = [0]
label_ids = [label_map['[CLS]']]
for i, w in enumerate(example.words):
sub_words = tokenizer.tokenize(w)
if not sub_words:
sub_words = ['[UNK]']
tokens.extend(sub_words)
for j in range(len(sub_words)):
if j == 0:
predict_mask.append(1)
label_ids.append(label_map[example.labels[i]])
else:
predict_mask.append(0)
label_ids.append(label_map[add_label])
if len(tokens) > max_seq_length - 1:
print('Example No.{} is too long, length is {}, truncated to {}!'.format(example.guid, len(tokens), max_seq_length))
tokens = tokens[0:(max_seq_length - 1)]
predict_mask = predict_mask[0:(max_seq_length - 1)]
label_ids = label_ids[0:(max_seq_length - 1)]
tokens.append('[SEP]')
predict_mask.append(0)
label_ids.append(label_map['[SEP]'])
input_ids = tokenizer.convert_tokens_to_ids(tokens)
segment_ids = [0] * len(input_ids)
input_mask = [1] * len(input_ids)
feat=InputFeatures(
# guid=example.guid,
# tokens=tokens,
input_ids=input_ids,
input_mask=input_mask,
segment_ids=segment_ids,
predict_mask=predict_mask,
label_ids=label_ids)
return feat
class NerDataset(data.Dataset):
def __init__(self, examples, tokenizer, label_map, max_seq_length):
self.examples=examples
self.tokenizer=tokenizer
self.label_map=label_map
self.max_seq_length=max_seq_length
def __len__(self):
return len(self.examples)
def __getitem__(self, idx):
feat=example2feature(self.examples[idx], self.tokenizer, self.label_map, max_seq_length)
return feat.input_ids, feat.input_mask, feat.segment_ids, feat.predict_mask, feat.label_ids
@classmethod
def pad(cls, batch):
seqlen_list = [len(sample[0]) for sample in batch]
maxlen = np.array(seqlen_list).max()
f = lambda x, seqlen: [sample[x] + [0] * (seqlen - len(sample[x])) for sample in batch]
input_ids_list = torch.LongTensor(f(0, maxlen))
input_mask_list = torch.LongTensor(f(1, maxlen))
segment_ids_list = torch.LongTensor(f(2, maxlen))
predict_mask_list = torch.ByteTensor(f(3, maxlen))
label_ids_list = torch.LongTensor(f(4, maxlen))
return input_ids_list, input_mask_list, segment_ids_list, predict_mask_list, label_ids_list
def f1_score(y_true, y_pred):
ignore_id=3
num_proposed = len(y_pred[y_pred>ignore_id])
num_correct = (np.logical_and(y_true==y_pred, y_true>ignore_id)).sum()
num_gold = len(y_true[y_true>ignore_id])
try:
precision = num_correct / num_proposed
except ZeroDivisionError:
precision = 1.0
try:
recall = num_correct / num_gold
except ZeroDivisionError:
recall = 1.0
try:
f1 = 2*precision*recall / (precision + recall)
except ZeroDivisionError:
if precision*recall==0:
f1=1.0
else:
f1=0
return precision, recall, f1
device = torch.device("cuda:0" if torch.cuda.is_available() else "cpu")
BertLayerNorm = torch.nn.LayerNorm
def log_sum_exp_1vec(vec):
max_score = vec[0, np.argmax(vec)]
max_score_broadcast = max_score.view(1, -1).expand(1, vec.size()[1])
return max_score + torch.log(torch.sum(torch.exp(vec - max_score_broadcast)))
def log_sum_exp_mat(log_M, axis=-1):
return torch.max(log_M, axis)[0]+torch.log(torch.exp(log_M-torch.max(log_M, axis)[0][:, None]).sum(axis))
def log_sum_exp_batch(log_Tensor, axis=-1):
return torch.max(log_Tensor, axis)[0]+torch.log(torch.exp(log_Tensor-torch.max(log_Tensor, axis)[0].view(log_Tensor.shape[0],-1,1)).sum(axis))
class BERT_CRF_NER(nn.Module):
def __init__(self, bert_model, start_label_id, stop_label_id, num_labels, max_seq_length, batch_size, device):
super(BERT_CRF_NER, self).__init__()
self.hidden_size = 768
self.start_label_id = start_label_id
self.stop_label_id = stop_label_id
self.num_labels = num_labels
# self.max_seq_length = max_seq_length
self.batch_size = batch_size
self.device=device
self.bert = bert_model
self.dropout = torch.nn.Dropout(0.2)
self.hidden2label = nn.Linear(self.hidden_size, self.num_labels)
self.transitions = nn.Parameter(torch.randn(self.num_labels, self.num_labels))
self.transitions.data[start_label_id, :] = -10000
self.transitions.data[:, stop_label_id] = -10000
nn.init.xavier_uniform_(self.hidden2label.weight)
nn.init.constant_(self.hidden2label.bias, 0.0)
def init_bert_weights(self, module):
if isinstance(module, (nn.Linear, nn.Embedding)):
module.weight.data.normal_(mean=0.0, std=self.config.initializer_range)
elif isinstance(module, BertLayerNorm):
module.bias.data.zero_()
module.weight.data.fill_(1.0)
if isinstance(module, nn.Linear) and module.bias is not None:
module.bias.data.zero_()
def _forward_alg(self, feats):
T = feats.shape[1]
batch_size = feats.shape[0]
log_alpha = torch.Tensor(batch_size, 1, self.num_labels).fill_(-10000.).to(self.device)
log_alpha[:, 0, self.start_label_id] = 0
for t in range(1, T):
log_alpha = (log_sum_exp_batch(self.transitions + log_alpha, axis=-1) + feats[:, t]).unsqueeze(1)
log_prob_all_barX = log_sum_exp_batch(log_alpha)
return log_prob_all_barX
def _get_bert_features(self, input_ids, segment_ids, input_mask):
bert_seq_out, _ = self.bert(input_ids, token_type_ids=segment_ids, attention_mask=input_mask,return_dict=False)
bert_seq_out = self.dropout(bert_seq_out)
bert_feats = self.hidden2label(bert_seq_out)
return bert_feats
def _score_sentence(self, feats, label_ids):
T = feats.shape[1]
batch_size = feats.shape[0]
batch_transitions = self.transitions.expand(batch_size,self.num_labels,self.num_labels)
batch_transitions = batch_transitions.flatten(1)
score = torch.zeros((feats.shape[0],1)).to(device)
for t in range(1, T):
score = score + \
batch_transitions.gather(-1, (label_ids[:, t]*self.num_labels+label_ids[:, t-1]).view(-1,1)) \
+ feats[:, t].gather(-1, label_ids[:, t].view(-1,1)).view(-1,1)
return score
def _viterbi_decode(self, feats):
T = feats.shape[1]
batch_size = feats.shape[0]
log_delta = torch.Tensor(batch_size, 1, self.num_labels).fill_(-10000.).to(self.device)
log_delta[:, 0, self.start_label_id] = 0
psi = torch.zeros((batch_size, T, self.num_labels), dtype=torch.long).to(self.device)
for t in range(1, T):
log_delta, psi[:, t] = torch.max(self.transitions + log_delta, -1)
log_delta = (log_delta + feats[:, t]).unsqueeze(1)
path = torch.zeros((batch_size, T), dtype=torch.long).to(self.device)
max_logLL_allz_allx, path[:, -1] = torch.max(log_delta.squeeze(), -1)
for t in range(T-2, -1, -1):
path[:, t] = psi[:, t+1].gather(-1,path[:, t+1].view(-1,1)).squeeze()
return max_logLL_allz_allx, path
def neg_log_likelihood(self, input_ids, segment_ids, input_mask, label_ids):
bert_feats = self._get_bert_features(input_ids, segment_ids, input_mask)
forward_score = self._forward_alg(bert_feats)
gold_score = self._score_sentence(bert_feats, label_ids)
return torch.mean(forward_score - gold_score)
def forward(self, input_ids, segment_ids, input_mask):
bert_feats = self._get_bert_features(input_ids, segment_ids, input_mask)
score, label_seq_ids = self._viterbi_decode(bert_feats)
return score, label_seq_ids
bert_model_scale = 'bert-base-cased'
tokenizer = AutoTokenizer.from_pretrained(bert_model_scale, do_lower_case=True)
device = torch.device("cuda:0" if torch.cuda.is_available() else "cpu")
DNRTIProcessor = DNRTIDataProcessor()
start_label_id = DNRTIProcessor.get_start_label_id()
stop_label_id = DNRTIProcessor.get_stop_label_id()
label_list = DNRTIProcessor.get_labels()
label_map = DNRTIProcessor.get_label_map()
batch_size = 512
bert_model = BertModel.from_pretrained(bert_model_scale)
model = BERT_CRF_NER(bert_model, start_label_id, stop_label_id, len(label_list), max_seq_length, batch_size, device)
checkpoint = torch.load('./outputs/ner_bert_crf_checkpoint.pt', map_location='cpu', weights_only=False)
epoch = checkpoint['epoch']
valid_acc_prev = checkpoint['valid_acc']
valid_f1_prev = checkpoint['valid_f1']
pretrained_dict=checkpoint['model_state']
net_state_dict = model.state_dict()
pretrained_dict_selected = {k: v for k, v in pretrained_dict.items() if k in net_state_dict}
net_state_dict.update(pretrained_dict_selected)
model.load_state_dict(net_state_dict)
print('Loaded the pretrain NER_BERT_CRF model, epoch:',checkpoint['epoch'],'valid acc:',
checkpoint['valid_acc'], 'valid f1:', checkpoint['valid_f1'])
model.to(device)
max_seq_length = 512
data_dir = 'none.txt'
def predict_sentence(sentence):
predict_string = sentence
predict_examples = DNRTIProcessor.get_predict_examples(data_dir,predict_string = predict_string)
predict_dataset = NerDataset(predict_examples,tokenizer,label_map,max_seq_length)
# model.eval()
with torch.no_grad():
demon_dataloader = data.DataLoader(dataset=predict_dataset,
batch_size=1,
shuffle=False,
num_workers=1,
collate_fn=NerDataset.pad)
for batch in demon_dataloader:
batch = tuple(t.to(device) for t in batch)
input_ids, input_mask, segment_ids, predict_mask, label_ids = batch
_, predicted_label_seq_ids = model(input_ids, segment_ids, input_mask)
# _, predicted = torch.max(out_scores, -1)
valid_predicted = torch.masked_select(predicted_label_seq_ids, predict_mask.bool())
# valid_label_ids = torch.masked_select(label_ids, predict_mask)
for i in range(1):
new_ids=predicted_label_seq_ids[i].cpu().numpy()[predict_mask[i].cpu().numpy()==1]
# print(list(map(lambda i: label_list[i], new_ids)))
xx = list(map(lambda i: label_list[i], new_ids))
result = " ".join(str(x) for x in list(map(lambda i: label_list[i], new_ids)))
for sss in xx:
if sss != "O":
pass
print("----------------")
print("source sentence: ", running_input)
print("result sentence: ", result)
if __name__ == '__main__':
parser = argparse.ArgumentParser()
parser.add_argument('-I', '--input', required=True, type=str, default="", help="Please enter the OSINT or CTI senetences.")
arguments = parser.parse_args(sys.argv[1:])
running_input = arguments.input
if running_input:
predict_sentence(running_input)
else:
print("Error!")