rule_rank_h.py 10 KB

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  1. import datetime
  2. import pandas as pd
  3. import math
  4. from odps import ODPS
  5. from threading import Timer
  6. from get_data import get_data_from_odps
  7. from db_helper import RedisHelper
  8. from config import set_config
  9. from log import Log
  10. config_, _ = set_config()
  11. log_ = Log()
  12. project = 'loghubods'
  13. table = 'video_each_hour_update'
  14. features = [
  15. 'videoid',
  16. 'lastonehour_preview', # 过去1小时预曝光人数
  17. 'lastonehour_view', # 过去1小时曝光人数
  18. 'lastonehour_play', # 过去1小时播放人数
  19. 'lastonehour_share', # 过去1小时分享人数
  20. 'lastonehour_return', # 过去1小时分享,过去1小时回流人数
  21. 'lastonehour_preview_total', # 过去1小时预曝光次数
  22. 'lastonehour_view_total', # 过去1小时曝光次数
  23. 'lastonehour_play_total', # 过去1小时播放次数
  24. 'lastonehour_share_total', # 过去1小时分享次数
  25. ]
  26. def h_data_check(project, table, now_date):
  27. """检查数据是否准备好"""
  28. odps = ODPS(
  29. access_id=config_.ODPS_CONFIG['ACCESSID'],
  30. secret_access_key=config_.ODPS_CONFIG['ACCESSKEY'],
  31. project=project,
  32. endpoint=config_.ODPS_CONFIG['ENDPOINT'],
  33. connect_timeout=3000,
  34. read_timeout=500000,
  35. pool_maxsize=1000,
  36. pool_connections=1000
  37. )
  38. try:
  39. dt = datetime.datetime.strftime(now_date, '%Y%m%d%H')
  40. sql = f'select * from {project}.{table} where dt = {dt}'
  41. with odps.execute_sql(sql=sql).open_reader() as reader:
  42. data_count = reader.count
  43. except Exception as e:
  44. data_count = 0
  45. return data_count
  46. def get_rov_redis_key(now_date):
  47. # 获取rov模型结果存放key
  48. redis_helper = RedisHelper()
  49. now_dt = datetime.datetime.strftime(now_date, '%Y%m%d')
  50. key_name = f'{config_.RECALL_KEY_NAME_PREFIX}{now_dt}'
  51. if not redis_helper.key_exists(key_name=key_name):
  52. pre_dt = datetime.datetime.strftime(now_date - datetime.timedelta(days=1), '%Y%m%d')
  53. key_name = f'{config_.RECALL_KEY_NAME_PREFIX}{pre_dt}'
  54. return key_name
  55. def get_feature_data(now_date):
  56. """获取特征数据"""
  57. dt = datetime.datetime.strftime(now_date, '%Y%m%d%H')
  58. # dt = '2022041310'
  59. records = get_data_from_odps(date=dt, project=project, table=table)
  60. feature_data = []
  61. for record in records:
  62. item = {}
  63. for feature_name in features:
  64. item[feature_name] = record[feature_name]
  65. feature_data.append(item)
  66. feature_df = pd.DataFrame(feature_data)
  67. return feature_df
  68. def cal_score(df, param):
  69. """
  70. 计算score
  71. :param df: 特征数据
  72. :param param: 规则参数
  73. :return:
  74. """
  75. # score计算公式: sharerate*backrate*logback*ctr
  76. # sharerate = lastonehour_share/(lastonehour_play+1000)
  77. # backrate = lastonehour_return/(lastonehour_share+10)
  78. # ctr = lastonehour_play/(lastonehour_view+1000), 对ctr限最大值:K2 = 0.6 if ctr > 0.6 else ctr
  79. # score = sharerate * backrate * LOG(lastonehour_return+1) * K2
  80. df = df.fillna(0)
  81. df['share_rate'] = df['lastonehour_share'] / (df['lastonehour_play'] + 1000)
  82. df['back_rate'] = df['lastonehour_return'] / (df['lastonehour_share'] + 10)
  83. df['log_back'] = (df['lastonehour_return'] + 1).apply(math.log)
  84. if param.get('view_type', None) == 'pre-view':
  85. df['ctr'] = df['lastonehour_play'] / (df['lastonehour_preview'] + 1000)
  86. else:
  87. df['ctr'] = df['lastonehour_play'] / (df['lastonehour_view'] + 1000)
  88. df['K2'] = df['ctr'].apply(lambda x: 0.6 if x > 0.6 else x)
  89. df['score'] = df['share_rate'] * df['back_rate'] * df['log_back'] * df['K2']
  90. df = df.sort_values(by=['score'], ascending=False)
  91. return df
  92. def cal_score2(df):
  93. # score2计算公式: score = lastonehour_return/(lastonehour_view+1000)
  94. df = df.fillna(0)
  95. df['score'] = df['lastonehour_return'] / (df['lastonehour_view'] + 1000)
  96. df = df.sort_values(by=['score'], ascending=False)
  97. return df
  98. def video_rank(df, now_date, now_h, rule_key, param):
  99. """
  100. 获取符合进入召回源条件的视频,与每日更新的rov模型结果视频列表进行合并
  101. :param df:
  102. :param now_date:
  103. :param now_h:
  104. :param rule_key: 小时级数据进入条件
  105. :param param: 小时级数据进入条件参数
  106. :return:
  107. """
  108. # 获取rov模型结果
  109. redis_helper = RedisHelper()
  110. key_name = get_rov_redis_key(now_date=now_date)
  111. initial_data = redis_helper.get_data_zset_with_index(key_name=key_name, start=0, end=-1, with_scores=True)
  112. log_.info(f'initial data count = {len(initial_data)}')
  113. # 获取符合进入召回源条件的视频,进入条件:小时级回流>=20 && score>=0.005
  114. return_count = param.get('return_count')
  115. score_value = param.get('score_rule')
  116. h_recall_df = df[(df['lastonehour_return'] >= return_count) & (df['score'] >= score_value)]
  117. h_recall_videos = h_recall_df['videoid'].to_list()
  118. log_.info(f'h_recall videos count = {len(h_recall_videos)}')
  119. # 写入对应的redis
  120. h_video_ids =[]
  121. h_recall_result = {}
  122. for video_id in h_recall_videos:
  123. score = h_recall_df[h_recall_df['videoid'] == video_id]['score']
  124. h_recall_result[int(video_id)] = float(score)
  125. h_video_ids.append(int(video_id))
  126. h_recall_key_name = \
  127. f"{config_.RECALL_KEY_NAME_PREFIX_BY_H}{rule_key}.{datetime.datetime.strftime(now_date, '%Y%m%d')}.{now_h}"
  128. if len(h_recall_result) > 0:
  129. redis_helper.add_data_with_zset(key_name=h_recall_key_name, data=h_recall_result, expire_time=23 * 3600)
  130. # 清空线上过滤应用列表
  131. redis_helper.del_keys(key_name=f"{config_.H_VIDEO_FILER}{rule_key}")
  132. # 去重更新rov模型结果,并另存为redis中
  133. initial_data_dup = {}
  134. for video_id, score in initial_data:
  135. if int(video_id) not in h_video_ids:
  136. initial_data_dup[int(video_id)] = score
  137. log_.info(f"initial data dup count = {len(initial_data_dup)}")
  138. initial_key_name = \
  139. f"{config_.RECALL_KEY_NAME_PREFIX_DUP_H}{rule_key}.{datetime.datetime.strftime(now_date, '%Y%m%d')}.{now_h}"
  140. if len(initial_data_dup) > 0:
  141. redis_helper.add_data_with_zset(key_name=initial_key_name, data=initial_data_dup, expire_time=23 * 3600)
  142. # # 去重合并
  143. # final_videos = [int(item) for item in h_recall_videos]
  144. # temp_videos = [int(video_id) for video_id, _ in initial_data if int(video_id) not in final_videos]
  145. # final_videos = final_videos + temp_videos
  146. # log_.info(f'final videos count = {len(final_videos)}')
  147. #
  148. # # 重新给定score
  149. # final_data = {}
  150. # for i, video_id in enumerate(final_videos):
  151. # score = 100 - i * config_.ROV_SCORE_D
  152. # final_data[video_id] = score
  153. #
  154. # # 存入对应的redis
  155. # final_key_name = f"{config_.RECALL_KEY_NAME_PREFIX_BY_H}{datetime.datetime.strftime(now_date, '%Y%m%d')}.{now_h}"
  156. # redis_helper.add_data_with_zset(key_name=final_key_name, data=final_data, expire_time=24 * 3600)
  157. def rank_by_h(now_date, now_h, rule_params):
  158. # 获取特征数据
  159. feature_df = get_feature_data(now_date=now_date)
  160. # rank
  161. for key, value in rule_params.items():
  162. log_.info(f"rule = {key}, param = {value}")
  163. # 计算score
  164. cal_score_func = value.get('cal_score_func', 0)
  165. if cal_score_func == 2:
  166. score_df = cal_score2(df=feature_df)
  167. else:
  168. score_df = cal_score(df=feature_df, param=value)
  169. video_rank(df=score_df, now_date=now_date, now_h=now_h, rule_key=key, param=value)
  170. # to-csv
  171. score_filename = f"score_{key}_{datetime.datetime.strftime(now_date, '%Y%m%d%H')}.csv"
  172. score_df.to_csv(f'./data/{score_filename}')
  173. def h_rank_bottom(now_date, now_h, rule_key):
  174. """未按时更新数据,用上一小时结果作为当前小时的数据"""
  175. log_.info(f"rule_key = {rule_key}")
  176. # 获取rov模型结果
  177. redis_helper = RedisHelper()
  178. if now_h == 0:
  179. redis_dt = datetime.datetime.strftime(now_date - datetime.timedelta(days=1), '%Y%m%d')
  180. redis_h = 23
  181. else:
  182. redis_dt = datetime.datetime.strftime(now_date, '%Y%m%d')
  183. redis_h = now_h - 1
  184. key_prefix_list = [config_.RECALL_KEY_NAME_PREFIX_BY_H, config_.RECALL_KEY_NAME_PREFIX_DUP_H]
  185. for key_prefix in key_prefix_list:
  186. key_name = f"{key_prefix}{rule_key}.{redis_dt}.{redis_h}"
  187. initial_data = redis_helper.get_data_zset_with_index(key_name=key_name, start=0, end=-1, with_scores=True)
  188. final_data = dict()
  189. for video_id, score in initial_data:
  190. final_data[video_id] = score
  191. # 存入对应的redis
  192. final_key_name = \
  193. f"{key_prefix}{rule_key}.{datetime.datetime.strftime(now_date, '%Y%m%d')}.{now_h}"
  194. if len(final_data) > 0:
  195. redis_helper.add_data_with_zset(key_name=final_key_name, data=final_data, expire_time=23 * 3600)
  196. # 清空线上过滤应用列表
  197. redis_helper.del_keys(key_name=f"{config_.H_VIDEO_FILER}{rule_key}")
  198. def h_timer_check():
  199. rule_params = config_.RULE_PARAMS
  200. # return_count_list = [20, 10]
  201. now_date = datetime.datetime.today()
  202. log_.info(f"now_date: {datetime.datetime.strftime(now_date, '%Y%m%d%H')}")
  203. now_h = datetime.datetime.now().hour
  204. now_min = datetime.datetime.now().minute
  205. if now_h == 0:
  206. for key, _ in rule_params.items():
  207. h_rank_bottom(now_date=now_date, now_h=now_h, rule_key=key)
  208. return
  209. # 查看当前小时更新的数据是否已准备好
  210. h_data_count = h_data_check(project=project, table=table, now_date=now_date)
  211. if h_data_count > 0:
  212. log_.info(f'h_data_count = {h_data_count}')
  213. # 数据准备好,进行更新
  214. rank_by_h(now_date=now_date, now_h=now_h, rule_params=rule_params)
  215. elif now_min > 50:
  216. log_.info('h_recall data is None, use bottom data!')
  217. for key, _ in rule_params.items():
  218. h_rank_bottom(now_date=now_date, now_h=now_h, rule_key=key)
  219. else:
  220. # 数据没准备好,1分钟后重新检查
  221. Timer(60, h_timer_check).start()
  222. if __name__ == '__main__':
  223. # df1 = get_feature_data()
  224. # res = cal_score(df=df1)
  225. # video_rank(df=res, now_date=datetime.datetime.today())
  226. # rank_by_h()
  227. h_timer_check()