ad_user_video_predict.py 9.0 KB

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  1. import datetime
  2. import sys
  3. import traceback
  4. import numpy as np
  5. import pandas as pd
  6. from odps import ODPS
  7. from utils import data_check, get_feature_data, send_msg_to_feishu_new, RedisHelper
  8. from config import set_config
  9. from log import Log
  10. config_, _ = set_config()
  11. log_ = Log()
  12. redis_helper = RedisHelper()
  13. def predict_user_group_share_rate(dt, app_type):
  14. """预估用户组对应的有广告时分享率"""
  15. # 获取用户组特征
  16. project = config_.ad_model_data['users_share_rate'].get('project')
  17. table = config_.ad_model_data['users_share_rate'].get('table')
  18. features = [
  19. 'apptype',
  20. 'group',
  21. 'sharerate_all',
  22. 'sharerate_ad'
  23. ]
  24. user_group_df = get_feature_data(project=project, table=table, features=features, dt=dt)
  25. user_group_df['apptype'] = user_group_df['apptype'].astype(int)
  26. user_group_df = user_group_df[user_group_df['apptype'] == app_type]
  27. user_group_df['sharerate_all'] = user_group_df['sharerate_all'].astype(float)
  28. user_group_df['sharerate_ad'] = user_group_df['sharerate_ad'].astype(float)
  29. # 获取有广告时所有用户组近30天的分享率
  30. ad_all_group_share_rate = user_group_df[user_group_df['group'] == 'allmids']['sharerate_ad'].values[0]
  31. user_group_df = user_group_df[user_group_df['group'] != 'allmids']
  32. # 计算用户组有广告时分享率
  33. user_group_df['group_ad_share_rate'] = \
  34. user_group_df['sharerate_ad'] * float(ad_all_group_share_rate) / user_group_df['sharerate_all']
  35. return user_group_df
  36. def predict_video_share_rate(dt, app_type):
  37. """预估视频有广告时分享率"""
  38. # 获取视频特征
  39. project = config_.ad_model_data['videos_share_rate'].get('project')
  40. table = config_.ad_model_data['videos_share_rate'].get('table')
  41. features = [
  42. 'apptype',
  43. 'videoid',
  44. 'sharerate_all',
  45. 'sharerate_ad'
  46. ]
  47. video_df = get_feature_data(project=project, table=table, features=features, dt=dt)
  48. video_df['apptype'] = video_df['apptype'].astype(int)
  49. video_df = video_df[video_df['apptype'] == app_type]
  50. video_df['sharerate_all'] = video_df['sharerate_all'].astype(float)
  51. video_df['sharerate_ad'] = video_df['sharerate_ad'].astype(float)
  52. # 获取有广告时所有视频近30天的分享率
  53. ad_all_videos_share_rate = video_df[video_df['videoid'] == 'allvideos']['sharerate_ad'].values[0]
  54. video_df = video_df[video_df['videoid'] != 'allvideos']
  55. # 计算视频有广告时分享率
  56. video_df['video_ad_share_rate'] = \
  57. video_df['sharerate_ad'] * float(ad_all_videos_share_rate) / video_df['sharerate_all']
  58. return video_df
  59. def predict_ad_group_video(dt, config_key, config_param, threshold_record):
  60. log_.info(f"config_key = {config_key} update start ...")
  61. # 获取用户组预测值
  62. user_data_key = config_param['user'].get('data')
  63. user_rule_key = config_param['user'].get('rule')
  64. group_key_name = f"{config_.KEY_NAME_PREFIX_AD_GROUP}{user_data_key}:{user_rule_key}:{dt}"
  65. group_data = redis_helper.get_all_data_from_zset(key_name=group_key_name, with_scores=True)
  66. if group_data is None:
  67. log_.info(f"group data is None!")
  68. group_df = pd.DataFrame(data=group_data, columns=['group', 'group_ad_share_rate'])
  69. group_df = group_df[group_df['group'] != 'mean_group']
  70. log_.info(f"group_df count = {len(group_df)}")
  71. # 获取视频预测值
  72. video_data_key = config_param['video'].get('data')
  73. video_key_name = f"{config_.KEY_NAME_PREFIX_AD_VIDEO}{video_data_key}:{dt}"
  74. video_data = redis_helper.get_all_data_from_zset(key_name=video_key_name, with_scores=True)
  75. if video_data is None:
  76. log_.info(f"video data is None!")
  77. video_df = pd.DataFrame(data=video_data, columns=['videoid', 'video_ad_share_rate'])
  78. video_df = video_df[video_df['videoid'] != -1]
  79. log_.info(f"video_df count = {len(video_df)}")
  80. if len(group_df) == 0 or len(video_df) == 0:
  81. sys.exit(1)
  82. predict_df = video_df
  83. all_group_data = []
  84. for index, item in group_df.iterrows():
  85. predict_df[item['group']] = predict_df['video_ad_share_rate'] * item['group_ad_share_rate']
  86. all_group_data.extend(predict_df[item['group']].tolist())
  87. # 计算对应的阈值
  88. # ad_threshold_mappings = config_.AD_ABTEST_THRESHOLD_CONFIG.get(config_key.split('-')[0])
  89. ad_threshold_mappings = threshold_record.get(config_key.split('-')[0])
  90. for abtest_group, ad_threshold_mapping in ad_threshold_mappings.items():
  91. threshold_data = {}
  92. for _, item in group_df.iterrows():
  93. # 获取分组对应的均值作为阈值
  94. threshold_data[item['group']] = predict_df[item['group']].mean() * ad_threshold_mapping['group']
  95. threshold_data['mean_group'] = np.mean(all_group_data) * ad_threshold_mapping['mean_group']
  96. # 获取需要多出广告的用户组,及阈值比例
  97. more_ad = config_param.get('more_ad', None)
  98. if more_ad is not None:
  99. for group_key, group_threshold_rate in more_ad.items():
  100. threshold_data[group_key] = threshold_data[group_key] * group_threshold_rate
  101. log_.info(f"config_key = {config_key}, abtest_group = {abtest_group}, threshold_data = {threshold_data}")
  102. # 将阈值写入redis
  103. abtest_config_list = config_key.split('-')
  104. abtest_id, abtest_config_tag = abtest_config_list[0], abtest_config_list[1]
  105. for key, val in threshold_data.items():
  106. key_name = f"{config_.KEY_NAME_PREFIX_AD_THRESHOLD}{abtest_id}:{abtest_config_tag}:{abtest_group}:{key}"
  107. redis_helper.set_data_to_redis(key_name=key_name, value=val, expire_time=2 * 24 * 3600)
  108. # 计算关怀模式实验阈值 并 写入Redis
  109. care_model = config_param.get('care_model', None)
  110. threshold_rate = config_param.get('threshold_rate', None)
  111. if care_model is True:
  112. care_model_threshold_data = {}
  113. for key, val in threshold_data.items():
  114. up_val = val * threshold_rate
  115. care_model_threshold_data[key] = up_val
  116. up_key_name = \
  117. f"{config_.KEY_NAME_PREFIX_AD_THRESHOLD_CARE_MODEL}{abtest_id}:{abtest_config_tag}:{abtest_group}:{key}"
  118. redis_helper.set_data_to_redis(key_name=up_key_name, value=up_val, expire_time=2 * 24 * 3600)
  119. log_.info(f"config_key = {config_key}, abtest_group = {abtest_group}, "
  120. f"care_model_threshold_data = {care_model_threshold_data}")
  121. # predict_df.to_csv(f'./data/ad_user_video_predict_{config_key}.csv')
  122. log_.info(f"config_key = {config_key} update end!")
  123. def predict():
  124. try:
  125. now_date = datetime.datetime.today()
  126. dt = datetime.datetime.strftime(now_date, '%Y%m%d')
  127. log_.info(f"dt = {dt}")
  128. # 获取阈值参数记录
  129. threshold_record = redis_helper.get_data_from_redis(key_name=config_.KEY_NAME_PREFIX_AD_THRESHOLD_RECORD)
  130. # print(threshold_record)
  131. threshold_record = eval(threshold_record)
  132. log_.info(f"threshold_record = {threshold_record}")
  133. params = config_.AD_ABTEST_CONFIG
  134. for config_key, config_param in params.items():
  135. predict_ad_group_video(dt=dt,
  136. config_key=config_key,
  137. config_param=config_param,
  138. threshold_record=threshold_record)
  139. # 阈值参数记录
  140. # redis_helper.set_data_to_redis(key_name=config_.KEY_NAME_PREFIX_AD_THRESHOLD_RECORD,
  141. # value=str(config_.AD_ABTEST_THRESHOLD_CONFIG),
  142. # expire_time=24*3600)
  143. redis_helper.set_data_to_redis(key_name=config_.KEY_NAME_PREFIX_AD_THRESHOLD_RECORD,
  144. value=str(threshold_record),
  145. expire_time=2 * 24 * 3600)
  146. msg_list = [
  147. f"env: rov-offline {config_.ENV_TEXT}",
  148. f"finished time: {datetime.datetime.strftime(datetime.datetime.now(), '%Y%m%d %H:%M:%S')}",
  149. ]
  150. send_msg_to_feishu_new(
  151. webhook=config_.FEISHU_ROBOT['ad_threshold_update_robot'].get('webhook'),
  152. key_word=config_.FEISHU_ROBOT['ad_threshold_update_robot'].get('key_word'),
  153. title='广告模型阈值更新完成',
  154. msg_list=msg_list
  155. )
  156. except Exception as e:
  157. log_.error(f"广告模型阈值更新失败, exception: {e}, traceback: {traceback.format_exc()}")
  158. msg_list = [
  159. f"env: rov-offline {config_.ENV_TEXT}",
  160. f"now time: {datetime.datetime.strftime(datetime.datetime.now(), '%Y%m%d %H:%M:%S')}",
  161. f"exception: {e}",
  162. f"traceback: {traceback.format_exc()}",
  163. ]
  164. send_msg_to_feishu_new(
  165. webhook=config_.FEISHU_ROBOT['ad_threshold_update_robot'].get('webhook'),
  166. key_word=config_.FEISHU_ROBOT['ad_threshold_update_robot'].get('key_word'),
  167. title='广告模型阈值更新失败',
  168. msg_list=msg_list
  169. )
  170. if __name__ == '__main__':
  171. # predict_ad_group_video()
  172. predict()