modelFactory.py 30 KB

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  1. '''
  2. Created on 2019年5月16日
  3. @author: User
  4. '''
  5. import os
  6. import sys
  7. sys.path.append(os.path.abspath("../.."))
  8. from keras import models
  9. from keras import layers
  10. # from keras_contrib.layers import CRF
  11. from keras.preprocessing.sequence import pad_sequences
  12. from keras import optimizers,losses,metrics
  13. from BiddingKG.dl.common.Utils import *
  14. import tensorflow as tf
  15. import json
  16. class Model_role_classify():
  17. def __init__(self,lazyLoad=getLazyLoad()):
  18. #self.model_role_file = os.path.abspath("../role/models/model_role.model.hdf5")
  19. self.model_role_file = os.path.dirname(__file__)+"/../role/log/new_biLSTM-ep012-loss0.028-val_loss0.040-f10.954.h5"
  20. self.model_role = None
  21. self.graph = tf.get_default_graph()
  22. if not lazyLoad:
  23. self.getModel()
  24. def getModel(self):
  25. if self.model_role is None:
  26. self.model_role = models.load_model(self.model_role_file,custom_objects={'precision':precision,'recall':recall,'f1_score':f1_score})
  27. return self.model_role
  28. def encode(self,tokens,begin_index,end_index,**kwargs):
  29. return embedding(spanWindow(tokens=tokens,begin_index=begin_index,end_index=end_index,size=10),shape=(2,10,128))
  30. def predict(self,x):
  31. x = np.transpose(np.array(x),(1,0,2,3))
  32. with self.graph.as_default():
  33. return self.getModel().predict([x[0],x[1]])
  34. class Model_role_classify_word():
  35. def __init__(self,lazyLoad=getLazyLoad(),config=None):
  36. if USE_PAI_EAS:
  37. lazyLoad = True
  38. #self.model_role_file = os.path.abspath("../role/log/ep071-loss0.107-val_loss0.122-f10.956.h5")
  39. # self.model_role_file = os.path.dirname(__file__)+"/../role/models/ep038-loss0.140-val_loss0.149-f10.947.h5"
  40. #self.model_role_file = os.path.abspath("../role/log/textcnn_ep017-loss0.088-val_loss0.125-f10.955.h5")
  41. self.model_role = None
  42. self.sess_role = tf.Session(graph=tf.Graph(),config=config)
  43. if not lazyLoad:
  44. self.getModel()
  45. def getModel(self):
  46. if self.model_role is None:
  47. with self.sess_role.as_default() as sess:
  48. with self.sess_role.graph.as_default():
  49. meta_graph_def = tf.saved_model.loader.load(sess=self.sess_role, tags=["serve"], export_dir=os.path.dirname(__file__)+"/role_savedmodel")
  50. signature_key = tf.saved_model.signature_constants.DEFAULT_SERVING_SIGNATURE_DEF_KEY
  51. signature_def = meta_graph_def.signature_def
  52. input0 = self.sess_role.graph.get_tensor_by_name(signature_def[signature_key].inputs["input0"].name)
  53. input1 = self.sess_role.graph.get_tensor_by_name(signature_def[signature_key].inputs["input1"].name)
  54. # input2 = self.sess_role.graph.get_tensor_by_name(signature_def[signature_key].inputs["input2"].name)
  55. output = self.sess_role.graph.get_tensor_by_name(signature_def[signature_key].outputs["outputs"].name)
  56. self.model_role = [[input0,input1],output] #,input2
  57. return self.model_role
  58. '''
  59. def load_weights(self):
  60. model = self.getModel()
  61. model.load_weights(self.model_role_file)
  62. '''
  63. def encode(self,tokens,begin_index,end_index,entity_text,**kwargs):
  64. _span = spanWindow(tokens=tokens,begin_index=begin_index,end_index=end_index,size=20,center_include=False,word_flag=True,text=entity_text) #size=12 center_include=True
  65. # print(_span)
  66. _encode_span = encodeInput(_span, word_len=20, word_flag=True,userFool=False) # word_len=20
  67. # print(_encode_span)
  68. return _encode_span
  69. def fix_digit_eng(self, text):
  70. '''
  71. 处理数字及英文编号等
  72. :param text:
  73. :return:
  74. '''
  75. text = re.sub('第[一二三1-3]([条项章]|中学|医院|附属)|第三方(服务机构)?', 'xxx', text)
  76. text = re.sub('第01(中标|成交)?候选人', '第一中标候选人', text)
  77. text = re.sub('(标[段的包项]|品目)[一二三1-3]', '标段', text)
  78. text = re.sub('第?[一二三1-3](标段?|[分子标]?包)', 'd标段', text)
  79. text = re.sub('[a-zA-Z][a-zA-Z0-9=&_—-]{3,}', 'abc', text)
  80. text = re.sub('[【(\[][0-9]{2,}[\])】]|\d+([::.-]\d+)+', 'd', text)
  81. text = re.sub('[一二三四五六七八九十]{2,}|[四五六七八九十]+', 'd', text)
  82. text = re.sub('\d{2,}(\.\d+)?|\d\.\d+|[04-9]', 'd', text)
  83. text = re.sub('序号:\d+', '序号:d', text)
  84. text = re.sub('第?[一二三四五六七八九十\d]+次|[一二三四五六七八九十\d]+、|([^\w]|^)序:?\d+', ' d', text) # ,序:1,单位名称:
  85. text = re.sub('(中标|成交|中选|入围)(工程|项目)', '工程', text) # 修复易错分为中标人
  86. text = re.sub('约定|(盖章|签名):?', ' ', text) # 修复 233233636 错分为中标人 国有产权网上竞价有关约定 辽阳市公共资源交易中心 ,标 修复 273505905 乡镇签名:盖章: 次村产权交易服务中心 预测为中标
  87. text = re.sub('中介机构', '投标机构', text) # 251058999 错分为中标人 序号:2,中介机构名称:
  88. text = re.sub('(采购|招标)人名称、地址和联系方式:|采购方,指', '采购人:', text) # 275065998 修复 224703143 采购的中标人;采购方,指 预测为中标
  89. if re.search('(最终)?排名:', text) and re.search('(最终)?排名:第?[123一二三]', text)==None:
  90. text = re.sub('(最终)?排名:', ' ', text)
  91. text = re.sub('交易单位', '发布单位', text)
  92. text = re.sub('[,:]各种数据:', ':', text) # 20240620优化 478331984 山东省交通运输厅站源提取不到 各种数据:中标单位,各种数据:济南金曰公路工程有限公司,
  93. text = re.sub('电子签章', '', text) # 20240924 修复 529923459 电子签名:投标人名称(电子签章:西君兰信息科技有限公司,2024年9月7日 预测为中标
  94. text = re.sub('采购方式', 'xxxx', text) # 修复 499096797 招标人预测错误
  95. text = re.sub('中标人\d名称', '中标人名称', text) # 修复 499096797 中标人预测错误
  96. return text.replace('(', '(').replace(')', ')').replace('單', '单').replace('稱','承').replace('標', '标').replace('採購', '采购').replace('機構', '机构')
  97. def encode_word(self, sentence_text, begin_index, end_index, size=20, **kwargs):
  98. '''
  99. 上下文数字化,使用字偏移
  100. :param sentence_text: 句子文本
  101. :param begin_index: 实体字开始位置
  102. :param end_index: 实体字结束位置
  103. :param size: 字偏移量
  104. :param kwargs:
  105. :return:
  106. '''
  107. _span = get_context(sentence_text, begin_index, end_index,size=size, center_include=False) # size=12 center_include=True
  108. # print(_span)
  109. _span = [self.fix_digit_eng(text) for text in _span]
  110. _encode_span = encodeInput(_span, word_len=30, word_flag=True, userFool=False) # word_len=20
  111. # print(_encode_span)
  112. return _encode_span
  113. def predict(self,x):
  114. x = np.transpose(np.array(x),(1,0,2))
  115. model_role = self.getModel()
  116. assert len(x)==len(model_role[0])
  117. feed_dict = {}
  118. for _x,_t in zip(x,model_role[0]):
  119. feed_dict[_t] = _x
  120. list_result = limitRun(self.sess_role,[model_role[1]],feed_dict)[0]
  121. return list_result
  122. #return self.sess_role.run(model_role[1],feed_dict=feed_dict)
  123. class Model_money_classify():
  124. def __init__(self,lazyLoad=getLazyLoad(),config=None):
  125. if USE_PAI_EAS:
  126. lazyLoad = True
  127. self.model_money_file = os.path.dirname(__file__)+"/../money/models/model_money_word.h5"
  128. self.model_money = None
  129. self.sess_money = tf.Session(graph=tf.Graph(),config=config)
  130. if not lazyLoad:
  131. self.getModel()
  132. def getModel(self):
  133. if self.model_money is None:
  134. with self.sess_money.as_default() as sess:
  135. with sess.graph.as_default():
  136. meta_graph_def = tf.saved_model.loader.load(sess,tags=["serve"],export_dir=os.path.dirname(__file__)+"/money_savedmodel")
  137. # meta_graph_def = tf.saved_model.loader.load(sess,tags=["serve"],export_dir=os.path.dirname(__file__)+"/money_savedmodel_bilstmonly")
  138. signature_key = tf.saved_model.signature_constants.DEFAULT_SERVING_SIGNATURE_DEF_KEY
  139. signature_def = meta_graph_def.signature_def
  140. input0 = sess.graph.get_tensor_by_name(signature_def[signature_key].inputs["input0"].name)
  141. input1 = sess.graph.get_tensor_by_name(signature_def[signature_key].inputs["input1"].name)
  142. input2 = sess.graph.get_tensor_by_name(signature_def[signature_key].inputs["input2"].name)
  143. output = sess.graph.get_tensor_by_name(signature_def[signature_key].outputs["outputs"].name)
  144. self.model_money = [[input0,input1,input2],output]
  145. return self.model_money
  146. '''
  147. if self.model_money is None:
  148. self.model_money = models.load_model(self.model_money_file,custom_objects={'precision':precision,'recall':recall,'f1_score':f1_score})
  149. return self.model_money
  150. '''
  151. '''
  152. def load_weights(self):
  153. model = self.getModel()
  154. model.load_weights(self.model_money_file)
  155. '''
  156. def encode(self,tokens,begin_index,end_index,**kwargs):
  157. _span = spanWindow(tokens=tokens, begin_index=begin_index, end_index=end_index, size=10, center_include=True, word_flag=True)
  158. # print(_span)
  159. return encodeInput(_span, word_len=30, word_flag=True,userFool=False)
  160. return embedding_word(_span,shape=(3,100,60))
  161. def predict(self,x):
  162. # print("shape",np.shape(x))
  163. x = np.transpose(np.array(x),(1,0,2))
  164. model_money = self.getModel()
  165. assert len(x)==len(model_money[0])
  166. feed_dict = {}
  167. for _x,_t in zip(x,model_money[0]):
  168. feed_dict[_t] = _x
  169. list_result = limitRun(self.sess_money,[model_money[1]],feed_dict)[0]
  170. #return self.sess_money.run(model_money[1],feed_dict=feed_dict)
  171. return list_result
  172. '''
  173. with self.graph.as_default():
  174. return self.getModel().predict([x[0],x[1],x[2]])
  175. '''
  176. from itertools import groupby
  177. from BiddingKG.dl.relation_extraction.model import get_words_matrix
  178. class Model_relation_extraction():
  179. def __init__(self,lazyLoad=getLazyLoad()):
  180. if USE_PAI_EAS:
  181. lazyLoad = True
  182. self.subject_model_file = os.path.dirname(__file__)+"/../relation_extraction/models2/subject_model"
  183. self.object_model_file = os.path.dirname(__file__)+"/../relation_extraction/models2/object_model"
  184. self.model_subject = None
  185. self.model_object = None
  186. self.sess_subject = tf.Session(graph=tf.Graph())
  187. self.sess_object = tf.Session(graph=tf.Graph())
  188. if not lazyLoad:
  189. self.getModel1()
  190. self.getModel2()
  191. self.entity_type_dict = {
  192. 'org': '<company/org>',
  193. 'company': '<company/org>',
  194. 'location': '<location>',
  195. 'phone': '<phone>',
  196. 'person': '<contact_person>'
  197. }
  198. self.id2predicate = {
  199. 0: "rel_person", # 公司——联系人
  200. 1: "rel_phone", # 联系人——电话
  201. 2: "rel_address" # 公司——地址
  202. }
  203. self.words_size = 128
  204. # subject_model
  205. def getModel1(self):
  206. if self.model_subject is None:
  207. with self.sess_subject.as_default() as sess:
  208. with sess.graph.as_default():
  209. meta_graph_def = tf.saved_model.loader.load(sess,tags=["serve"],export_dir=self.subject_model_file)
  210. signature_key = tf.saved_model.signature_constants.DEFAULT_SERVING_SIGNATURE_DEF_KEY
  211. signature_def = meta_graph_def.signature_def
  212. input0 = sess.graph.get_tensor_by_name(signature_def[signature_key].inputs["input0"].name)
  213. input1 = sess.graph.get_tensor_by_name(signature_def[signature_key].inputs["input1"].name)
  214. output = sess.graph.get_tensor_by_name(signature_def[signature_key].outputs["outputs"].name)
  215. self.model_subject = [[input0,input1],output]
  216. return self.model_subject
  217. # object_model
  218. def getModel2(self):
  219. if self.model_object is None:
  220. with self.sess_object.as_default() as sess:
  221. with sess.graph.as_default():
  222. meta_graph_def = tf.saved_model.loader.load(sess,tags=["serve"],export_dir=self.object_model_file)
  223. signature_key = tf.saved_model.signature_constants.DEFAULT_SERVING_SIGNATURE_DEF_KEY
  224. signature_def = meta_graph_def.signature_def
  225. input0 = sess.graph.get_tensor_by_name(signature_def[signature_key].inputs["input0"].name)
  226. input1 = sess.graph.get_tensor_by_name(signature_def[signature_key].inputs["input1"].name)
  227. input2 = sess.graph.get_tensor_by_name(signature_def[signature_key].inputs["input2"].name)
  228. output = sess.graph.get_tensor_by_name(signature_def[signature_key].outputs["outputs"].name)
  229. self.model_object = [[input0,input1,input2],output]
  230. return self.model_object
  231. def encode(self,entity_list,list_sentence):
  232. list_sentence = sorted(list_sentence, key=lambda x: x.sentence_index)
  233. entity_list = sorted(entity_list, key=lambda x: (x.sentence_index, x.begin_index))
  234. pre_data = []
  235. text_data = []
  236. last_sentence_index = -1
  237. for key, group in groupby(entity_list, key=lambda x: x.sentence_index):
  238. if key - last_sentence_index > 1:
  239. for i in range(last_sentence_index + 1, key):
  240. pre_data.extend(list_sentence[i].tokens)
  241. text_data.extend([0] * len(list_sentence[i].tokens))
  242. group = list(group)
  243. for i in range(len(group)):
  244. ent = group[i]
  245. _tokens = list_sentence[key].tokens
  246. if i == len(group) - 1:
  247. if i == 0:
  248. pre_data.extend(_tokens[:ent.begin_index])
  249. text_data.extend([0] * len(_tokens[:ent.begin_index]))
  250. pre_data.append(self.entity_type_dict[ent.entity_type])
  251. text_data.append(ent)
  252. pre_data.extend(_tokens[ent.end_index + 1:])
  253. text_data.extend([0] * len(_tokens[ent.end_index + 1:]))
  254. break
  255. else:
  256. pre_data.append(self.entity_type_dict[ent.entity_type])
  257. text_data.append(ent)
  258. pre_data.extend(_tokens[ent.end_index + 1:])
  259. text_data.extend([0] * len(_tokens[ent.end_index + 1:]))
  260. break
  261. if i == 0:
  262. pre_data.extend(_tokens[:ent.begin_index])
  263. text_data.extend([0] * len(_tokens[:ent.begin_index]))
  264. pre_data.append(self.entity_type_dict[ent.entity_type])
  265. text_data.append(ent)
  266. pre_data.extend(_tokens[ent.end_index + 1:group[i + 1].begin_index])
  267. text_data.extend([0] * len(_tokens[ent.end_index + 1:group[i + 1].begin_index]))
  268. else:
  269. pre_data.append(self.entity_type_dict[ent.entity_type])
  270. text_data.append(ent)
  271. pre_data.extend(_tokens[ent.end_index + 1:group[i + 1].begin_index])
  272. text_data.extend([0] * len(_tokens[ent.end_index + 1:group[i + 1].begin_index]))
  273. last_sentence_index = key
  274. return text_data, pre_data
  275. def check_data(self, words):
  276. # 检查数据是否包含可预测的subject和object
  277. # 没有需要预测的链接属性,直接return
  278. company_relation = 0
  279. person_relation = 0
  280. if '<company/org>' in words:
  281. company_relation += 1
  282. if '<contact_person>' in words:
  283. person_relation += 1
  284. if company_relation:
  285. company_relation += 1
  286. # 暂时不考虑地址location实体
  287. # if '<location>' in words and company_relation:
  288. # company_relation += 1
  289. if '<phone>' in words and company_relation:
  290. person_relation += 1
  291. if company_relation < 2 and person_relation < 2:
  292. return False
  293. return True
  294. def predict_by_api(self,text_in,words,sentence_vetor):
  295. status_code = 0
  296. # save([words,sentence_vetor.tolist()],"C:/Users/Administrator/Desktop/test_data.pk")
  297. try:
  298. requests_result = requests.post(API_URL + "/predict_relation", json={"sentence_vetor": sentence_vetor.tolist(), "words": words},
  299. verify=True)
  300. status_code = requests_result.status_code
  301. triple_index_list = json.loads(requests_result.text)['triple_list']
  302. # print("triple_list:",json.loads(requests_result.text)['triple_list'])
  303. print("cost_time:",json.loads(requests_result.text)['cost_time'])
  304. triple_list = [(text_in[triple[0]], triple[1], text_in[triple[2]]) for triple in triple_index_list]
  305. return triple_list,status_code
  306. except Exception as e:
  307. print(e)
  308. return [],status_code
  309. def predict(self,text_in, words, rate=0.5):
  310. _t2 = np.zeros((len(words), self.words_size))
  311. for i in range(len(words)):
  312. _t2[i] = np.array(get_words_matrix(words[i]))
  313. # a = time.time()
  314. # triple_list, status_code = self.predict_by_api(text_in, words,_t2)
  315. # print('time',time.time()-a)
  316. # print("status_code",status_code)
  317. # if status_code==200:
  318. # return triple_list
  319. # else:
  320. # 使用模型预测
  321. triple_list = []
  322. # print("tokens:",words)
  323. # _t2 = [self.words2id.get(c, 1) for c in words]
  324. _t2 = np.array([_t2])
  325. _t3 = [1 for _ in words]
  326. _t3 = np.array([_t3])
  327. # _k1 = self.model_subject.predict([_t2, _t3])
  328. _k1 = limitRun(self.sess_subject,[self.model_subject[1]],feed_dict={self.model_subject[0][0]:_t2,
  329. self.model_subject[0][1]:_t3})[0]
  330. _k1 = _k1[0, :, 0]
  331. _k1 = np.where(_k1 > rate)[0]
  332. # print('k1',_k1)
  333. _subjects = []
  334. for i in _k1:
  335. _subject = text_in[i]
  336. _subjects.append((_subject, i, i))
  337. if _subjects:
  338. _t2 = np.repeat(_t2, len(_subjects), 0)
  339. _t3 = np.repeat(_t3, len(_subjects), 0)
  340. _k1, _ = np.array([_s[1:] for _s in _subjects]).T.reshape((2, -1, 1))
  341. # _o1 = self.model_object.predict([_t2, _t3, _k1])
  342. _o1 = limitRun(self.sess_object, [self.model_object[1]], feed_dict={self.model_object[0][0]: _t2,
  343. self.model_object[0][1]: _t3,
  344. self.model_object[0][2]: _k1})[0]
  345. for i, _subject in enumerate(_subjects):
  346. _oo1 = np.where(_o1[i] > 0.5)
  347. # print('_oo1', _oo1)
  348. for _ooo1, _c1 in zip(*_oo1):
  349. _object = text_in[_ooo1]
  350. _predicate = self.id2predicate[_c1]
  351. triple_list.append((_subject[0], _predicate, _object))
  352. # print([(t[0].entity_text,t[1],t[2].entity_text) for t in triple_list])
  353. return triple_list
  354. else:
  355. return []
  356. class Model_person_classify():
  357. def __init__(self,lazyLoad=getLazyLoad(),config=None):
  358. if USE_PAI_EAS:
  359. lazyLoad = True
  360. self.model_person_file = os.path.dirname(__file__)+"/../person/models/model_person.model.hdf5"
  361. self.model_person = None
  362. self.sess_person = tf.Session(graph=tf.Graph(),config=config)
  363. if not lazyLoad:
  364. self.getModel()
  365. def getModel(self):
  366. if self.model_person is None:
  367. with self.sess_person.as_default() as sess:
  368. with sess.graph.as_default():
  369. # meta_graph_def = tf.saved_model.loader.load(sess,tags=["serve"],export_dir=os.path.dirname(__file__)+"/person_savedmodel_new")
  370. meta_graph_def = tf.saved_model.loader.load(sess,tags=["serve"],export_dir=os.path.dirname(__file__)+"/person_savedmodel_new_znj")
  371. signature_key = tf.saved_model.signature_constants.DEFAULT_SERVING_SIGNATURE_DEF_KEY
  372. signature_def = meta_graph_def.signature_def
  373. input0 = sess.graph.get_tensor_by_name(signature_def[signature_key].inputs["input0"].name)
  374. input1 = sess.graph.get_tensor_by_name(signature_def[signature_key].inputs["input1"].name)
  375. output = sess.graph.get_tensor_by_name(signature_def[signature_key].outputs["outputs"].name)
  376. self.model_person = [[input0,input1],output]
  377. return self.model_person
  378. '''
  379. if self.model_person is None:
  380. self.model_person = models.load_model(self.model_person_file,custom_objects={'precision':precision,'recall':recall,'f1_score':f1_score})
  381. return self.model_person
  382. '''
  383. '''
  384. def load_weights(self):
  385. model = self.getModel()
  386. model.load_weights(self.model_person_file)
  387. '''
  388. def encode(self,tokens,begin_index,end_index,**kwargs):
  389. # return embedding(spanWindow(tokens=tokens,begin_index=begin_index,end_index=end_index,size=10),shape=(2,10,128))
  390. return embedding(spanWindow(tokens=tokens,begin_index=begin_index,end_index=end_index,size=20),shape=(2,20,128))
  391. def predict(self,x):
  392. x = np.transpose(np.array(x),(1,0,2,3))
  393. model_person = self.getModel()
  394. assert len(x)==len(model_person[0])
  395. feed_dict = {}
  396. for _x,_t in zip(x,model_person[0]):
  397. feed_dict[_t] = _x
  398. list_result = limitRun(self.sess_person,[model_person[1]],feed_dict)[0]
  399. return list_result
  400. #return self.sess_person.run(model_person[1],feed_dict=feed_dict)
  401. '''
  402. with self.graph.as_default():
  403. return self.getModel().predict([x[0],x[1]])
  404. '''
  405. class Model_form_line():
  406. def __init__(self,lazyLoad=getLazyLoad()):
  407. self.model_file = os.path.dirname(__file__)+"/../form/model/model_form.model - 副本.hdf5"
  408. self.model_form = None
  409. self.graph = tf.get_default_graph()
  410. if not lazyLoad:
  411. self.getModel()
  412. def getModel(self):
  413. if self.model_form is None:
  414. self.model_form = models.load_model(self.model_file,custom_objects={"precision":precision,"recall":recall,"f1_score":f1_score})
  415. return self.model_form
  416. def encode(self,data,shape=(100,60),expand=False,**kwargs):
  417. embedding = np.zeros(shape)
  418. word_model = getModel_word()
  419. for i in range(len(data)):
  420. if i>=shape[0]:
  421. break
  422. if data[i] in word_model.vocab:
  423. embedding[i] = word_model[data[i]]
  424. if expand:
  425. embedding = np.expand_dims(embedding,0)
  426. return embedding
  427. def predict(self,x):
  428. with self.graph.as_default():
  429. return self.getModel().predict(x)
  430. class Model_form_item():
  431. def __init__(self,lazyLoad=getLazyLoad(),config=None):
  432. self.model_file = os.path.dirname(__file__)+"/../form/log/ep039-loss0.038-val_loss0.064-f10.9783.h5"
  433. self.model_form = None
  434. self.sess_form = tf.Session(graph=tf.Graph(),config=config)
  435. if not lazyLoad:
  436. self.getModel()
  437. def getModel(self):
  438. if self.model_form is None:
  439. with self.sess_form.as_default() as sess:
  440. with sess.graph.as_default():
  441. meta_graph_def = tf.saved_model.loader.load(sess,tags=["serve"],export_dir="%s/form_savedmodel"%(os.path.dirname(__file__)))
  442. signature_key = tf.saved_model.signature_constants.DEFAULT_SERVING_SIGNATURE_DEF_KEY
  443. signature_def = meta_graph_def.signature_def
  444. inputs = sess.graph.get_tensor_by_name(signature_def[signature_key].inputs["inputs"].name)
  445. output = sess.graph.get_tensor_by_name(signature_def[signature_key].outputs["outputs"].name)
  446. self.model_form = [[inputs],output]
  447. return self.model_form
  448. '''
  449. if self.model_form is None:
  450. with self.graph.as_defalt():
  451. self.model_form = models.load_model(self.model_file,custom_objects={"precision":precision,"recall":recall,"f1_score":f1_score})
  452. return self.model_form
  453. '''
  454. def encode(self,data,**kwargs):
  455. return encodeInput([data], word_len=50, word_flag=True,userFool=False)[0]
  456. return encodeInput_form(data)
  457. def predict(self,x):
  458. if USE_API:
  459. requests_result = requests.post(API_URL+"/predict_form_item",json={"inputs":x.tolist()}, verify=True)
  460. list_result = json.loads(requests_result.text)['result']
  461. else:
  462. model_form = self.getModel()
  463. list_result = limitRun(self.sess_form,[model_form[1]],feed_dict={model_form[0][0]:x})[0]
  464. return list_result
  465. # return self.sess_form.run(model_form[1],feed_dict={model_form[0][0]:x})
  466. '''
  467. with self.graph.as_default():
  468. return self.getModel().predict(x)
  469. '''
  470. class Model_form_context():
  471. def __init__(self,lazyLoad=getLazyLoad(),config=None):
  472. self.model_form = None
  473. self.sess_form = tf.Session(graph=tf.Graph(),config=config)
  474. if not lazyLoad:
  475. self.getModel()
  476. def getModel(self):
  477. if self.model_form is None:
  478. with self.sess_form.as_default() as sess:
  479. with sess.graph.as_default():
  480. meta_graph_def = tf.saved_model.loader.load(sess,tags=["serve"],export_dir="%s/form_context_savedmodel"%(os.path.dirname(__file__)))
  481. signature_key = tf.saved_model.signature_constants.DEFAULT_SERVING_SIGNATURE_DEF_KEY
  482. signature_def = meta_graph_def.signature_def
  483. inputs = sess.graph.get_tensor_by_name(signature_def[signature_key].inputs["inputs"].name)
  484. output = sess.graph.get_tensor_by_name(signature_def[signature_key].outputs["outputs"].name)
  485. self.model_form = [[inputs],output]
  486. return self.model_form
  487. '''
  488. if self.model_form is None:
  489. with self.graph.as_defalt():
  490. self.model_form = models.load_model(self.model_file,custom_objects={"precision":precision,"recall":recall,"f1_score":f1_score})
  491. return self.model_form
  492. '''
  493. def encode_table(self,inner_table,size=30):
  494. def encode_item(_table,i,j):
  495. _x = [_table[j-1][i-1],_table[j-1][i],_table[j-1][i+1],
  496. _table[j][i-1],_table[j][i],_table[j][i+1],
  497. _table[j+1][i-1],_table[j+1][i],_table[j+1][i+1]]
  498. e_x = [encodeInput_form(_temp[0],MAX_LEN=30) for _temp in _x]
  499. _label = _table[j][i][1]
  500. # print(_x)
  501. # print(_x[4],_label)
  502. return e_x,_label,_x
  503. def copytable(inner_table):
  504. table = []
  505. for line in inner_table:
  506. list_line = []
  507. for item in line:
  508. list_line.append([item[0][:size],item[1]])
  509. table.append(list_line)
  510. return table
  511. table = copytable(inner_table)
  512. padding = ["#"*30,0]
  513. width = len(table[0])
  514. height = len(table)
  515. table.insert(0,[padding for i in range(width)])
  516. table.append([padding for i in range(width)])
  517. for item in table:
  518. item.insert(0,padding.copy())
  519. item.append(padding.copy())
  520. data_x = []
  521. data_y = []
  522. data_text = []
  523. data_position = []
  524. for _i in range(1,width+1):
  525. for _j in range(1,height+1):
  526. _x,_y,_text = encode_item(table,_i,_j)
  527. data_x.append(_x)
  528. _label = [0,0]
  529. _label[_y] = 1
  530. data_y.append(_label)
  531. data_text.append(_text)
  532. data_position.append([_i-1,_j-1])
  533. # input = table[_j][_i][0]
  534. # item_y = [0,0]
  535. # item_y[table[_j][_i][1]] = 1
  536. # data_x.append(encodeInput([input], word_len=50, word_flag=True,userFool=False)[0])
  537. # data_y.append(item_y)
  538. return data_x,data_y,data_text,data_position
  539. def encode(self,inner_table,**kwargs):
  540. data_x,_,_,data_position = self.encode_table(inner_table)
  541. return data_x,data_position
  542. def predict(self,x):
  543. model_form = self.getModel()
  544. list_result = limitRun(self.sess_form,[model_form[1]],feed_dict={model_form[0][0]:x})[0]
  545. return list_result
  546. # class Model_form_item():
  547. # def __init__(self,lazyLoad=False):
  548. # self.model_file = os.path.dirname(__file__)+"/ep039-loss0.038-val_loss0.064-f10.9783.h5"
  549. # self.model_form = None
  550. #
  551. # if not lazyLoad:
  552. # self.getModel()
  553. # self.graph = tf.get_default_graph()
  554. #
  555. # def getModel(self):
  556. # if self.model_form is None:
  557. # self.model_form = models.load_model(self.model_file,custom_objects={"precision":precision,"recall":recall,"f1_score":f1_score})
  558. # return self.model_form
  559. #
  560. # def encode(self,data,**kwargs):
  561. #
  562. # return encodeInput_form(data)
  563. #
  564. # def predict(self,x):
  565. # with self.graph.as_default():
  566. # return self.getModel().predict(x)