video_rank.py 15 KB

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  1. import random
  2. import numpy
  3. from log import Log
  4. from config import set_config
  5. from video_recall import PoolRecall
  6. from db_helper import RedisHelper
  7. from utils import FilterVideos, send_msg_to_feishu
  8. log_ = Log()
  9. config_ = set_config()
  10. def video_rank(data, size, top_K, flow_pool_P):
  11. """
  12. 视频分发排序
  13. :param data: 各路召回的视频 type-dict {'rov_pool_recall': [], 'flow_pool_recall': []}
  14. :param size: 请求数
  15. :param top_K: 保证topK为召回池视频 type-int
  16. :param flow_pool_P: size-top_K视频为流量池视频的概率 type-float
  17. :return: rank_result
  18. """
  19. if not data['rov_pool_recall'] and not data['flow_pool_recall']:
  20. return None
  21. # 将各路召回的视频按照score从大到小排序
  22. # 小时级更新数据
  23. h_recall = [item for item in data['rov_pool_recall'] if item.get('pushFrom') == config_.PUSH_FROM['rov_recall_h']]
  24. h_recall_rank = sorted(h_recall, key=lambda k: k.get('rovScore', 0), reverse=True)
  25. # 地域分组小时级规则更新数据
  26. region_h_recall = [item for item in data['rov_pool_recall']
  27. if item.get('pushFrom') == config_.PUSH_FROM['rov_recall_region_h']]
  28. region_h_recall_rank = sorted(region_h_recall, key=lambda k: k.get('rovScore', 0), reverse=True)
  29. # 地域分组小时级更新24h规则更新数据
  30. region_24h_recall = [item for item in data['rov_pool_recall']
  31. if item.get('pushFrom') == config_.PUSH_FROM['rov_recall_region_24h']]
  32. region_24h_recall_rank = sorted(region_24h_recall, key=lambda k: k.get('rovScore', 0), reverse=True)
  33. # 地域分组天级规则更新数据
  34. region_day_recall = [item for item in data['rov_pool_recall']
  35. if item.get('pushFrom') == config_.PUSH_FROM['rov_recall_region_day']]
  36. region_day_recall_rank = sorted(region_day_recall, key=lambda k: k.get('rovScore', 0), reverse=True)
  37. # 天级规则更新数据
  38. day_recall = [item for item in data['rov_pool_recall'] if item.get('pushFrom') == config_.PUSH_FROM['rov_recall_day']]
  39. day_recall_rank = sorted(day_recall, key=lambda k: k.get('rovScore', 0), reverse=True)
  40. # ROV召回池
  41. rov_initial_recall = [
  42. item for item in data['rov_pool_recall']
  43. if item.get('pushFrom') not in
  44. [config_.PUSH_FROM['rov_recall_h'],
  45. config_.PUSH_FROM['rov_recall_region_h'],
  46. config_.PUSH_FROM['rov_recall_region_24h'],
  47. config_.PUSH_FROM['rov_recall_region_day'],
  48. config_.PUSH_FROM['rov_recall_day']]
  49. ]
  50. rov_initial_recall_rank = sorted(rov_initial_recall, key=lambda k: k.get('rovScore', 0), reverse=True)
  51. rov_recall_rank = h_recall_rank + \
  52. region_h_recall_rank + region_24h_recall_rank + region_day_recall_rank + \
  53. day_recall_rank + rov_initial_recall_rank
  54. # 流量池
  55. flow_recall_rank = sorted(data['flow_pool_recall'], key=lambda k: k.get('rovScore', 0), reverse=True)
  56. # 对各路召回的视频进行去重
  57. rov_recall_rank, flow_recall_rank = remove_duplicate(rov_recall=rov_recall_rank, flow_recall=flow_recall_rank,
  58. top_K=top_K)
  59. # log_.info('remove_duplicate finished! rov_recall_rank = {}, flow_recall_rank = {}'.format(
  60. # rov_recall_rank, flow_recall_rank))
  61. # 从ROV召回池中获取top k
  62. if len(rov_recall_rank) > 0:
  63. rank_result = rov_recall_rank[:top_K]
  64. rov_recall_rank = rov_recall_rank[top_K:]
  65. else:
  66. rank_result = flow_recall_rank[:top_K]
  67. flow_recall_rank = flow_recall_rank[top_K:]
  68. # 按概率 p 及score排序获取 size - k 个视频
  69. i = 0
  70. while i < size - top_K:
  71. # 随机生成[0, 1)浮点数
  72. rand = random.random()
  73. # log_.info('rand: {}'.format(rand))
  74. if rand < flow_pool_P:
  75. if flow_recall_rank:
  76. rank_result.append(flow_recall_rank[0])
  77. flow_recall_rank.remove(flow_recall_rank[0])
  78. else:
  79. rank_result.extend(rov_recall_rank[:size - top_K - i])
  80. return rank_result
  81. else:
  82. if rov_recall_rank:
  83. rank_result.append(rov_recall_rank[0])
  84. rov_recall_rank.remove(rov_recall_rank[0])
  85. else:
  86. rank_result.extend(flow_recall_rank[:size - top_K - i])
  87. return rank_result
  88. i += 1
  89. return rank_result
  90. def remove_duplicate(rov_recall, flow_recall, top_K):
  91. """
  92. 对多路召回的视频去重
  93. 去重原则:
  94. 如果视频在ROV召回池topK,则保留ROV召回池,否则保留流量池
  95. :param rov_recall: ROV召回池-已排序
  96. :param flow_recall: 流量池-已排序
  97. :param top_K: 保证topK为召回池视频 type-int
  98. :return:
  99. """
  100. flow_recall_result = []
  101. rov_recall_remove = []
  102. flow_recall_video_ids = [item['videoId'] for item in flow_recall]
  103. # rov_recall topK
  104. for item in rov_recall[:top_K]:
  105. if item['videoId'] in flow_recall_video_ids:
  106. flow_recall_video_ids.remove(item['videoId'])
  107. # other
  108. for item in rov_recall[top_K:]:
  109. if item['videoId'] in flow_recall_video_ids:
  110. rov_recall_remove.append(item)
  111. # rov recall remove
  112. for item in rov_recall_remove:
  113. rov_recall.remove(item)
  114. # flow recall remove
  115. for item in flow_recall:
  116. if item['videoId'] in flow_recall_video_ids:
  117. flow_recall_result.append(item)
  118. return rov_recall, flow_recall_result
  119. def bottom_strategy(size, app_type, ab_code):
  120. """
  121. 兜底策略: 从ROV召回池中获取top1000,进行状态过滤后的视频
  122. :param size: 需要获取的视频数
  123. :param app_type: 产品标识 type-int
  124. :param ab_code: abCode
  125. :return:
  126. """
  127. pool_recall = PoolRecall(app_type=app_type, ab_code=ab_code)
  128. key_name, _ = pool_recall.get_pool_redis_key(pool_type='rov')
  129. redis_helper = RedisHelper()
  130. data = redis_helper.get_data_zset_with_index(key_name=key_name, start=0, end=1000)
  131. if not data:
  132. log_.info('{} —— ROV推荐进入了二次兜底, data = {}'.format(config_.ENV_TEXT, data))
  133. send_msg_to_feishu('{} —— ROV推荐进入了二次兜底,请查看是否有数据更新失败问题。'.format(config_.ENV_TEXT))
  134. # 二次兜底
  135. bottom_data = bottom_strategy_last(size=size, app_type=app_type, ab_code=ab_code)
  136. return bottom_data
  137. # 视频状态过滤采用离线定时过滤方案
  138. # 状态过滤
  139. # filter_videos = FilterVideos(app_type=app_type, video_ids=data)
  140. # filtered_data = filter_videos.filter_video_status(video_ids=data)
  141. if len(data) > size:
  142. random_data = numpy.random.choice(data, size, False)
  143. else:
  144. random_data = data
  145. bottom_data = [{'videoId': int(item), 'pushFrom': config_.PUSH_FROM['bottom'], 'abCode': ab_code}
  146. for item in random_data]
  147. return bottom_data
  148. def bottom_strategy_last(size, app_type, ab_code):
  149. """
  150. 兜底策略: 从兜底视频中随机获取视频,进行状态过滤后的视频
  151. :param size: 需要获取的视频数
  152. :param app_type: 产品标识 type-int
  153. :param ab_code: abCode
  154. :return:
  155. """
  156. redis_helper = RedisHelper()
  157. bottom_data = redis_helper.get_data_zset_with_index(key_name=config_.BOTTOM_KEY_NAME, start=0, end=-1)
  158. random_data = numpy.random.choice(bottom_data, size * 30, False)
  159. # 视频状态过滤采用离线定时过滤方案
  160. # 状态过滤
  161. # filter_videos = FilterVideos(app_type=app_type, video_ids=random_data)
  162. # filtered_data = filter_videos.filter_video_status(video_ids=random_data)
  163. bottom_data = [{'videoId': int(video_id), 'pushFrom': config_.PUSH_FROM['bottom_last'], 'abCode': ab_code}
  164. for video_id in random_data[:size]]
  165. return bottom_data
  166. def video_rank_by_w_h_rate(videos):
  167. """
  168. 视频宽高比实验(每组的前两个视频调整为横屏视频),根据视频宽高比信息对视频进行重排
  169. :param videos:
  170. :return:
  171. """
  172. redis_helper = RedisHelper()
  173. # ##### 判断前两个视频是否是置顶视频 或者 流量池视频
  174. top_2_push_from_flag = [False, False]
  175. for i, video in enumerate(videos[:2]):
  176. if video['pushFrom'] in [config_.PUSH_FROM['top'], config_.PUSH_FROM['flow_recall']]:
  177. top_2_push_from_flag[i] = True
  178. if top_2_push_from_flag[0] and top_2_push_from_flag[1]:
  179. return videos
  180. # ##### 判断前两个视频是否为横屏
  181. top_2_w_h_rate_flag = [False, False]
  182. for i, video in enumerate(videos[:2]):
  183. if video['pushFrom'] in [config_.PUSH_FROM['top'], config_.PUSH_FROM['flow_recall']]:
  184. # 视频来源为置顶 或 流量池时,不做判断
  185. top_2_w_h_rate_flag[i] = True
  186. elif video['pushFrom'] in [config_.PUSH_FROM['rov_recall'], config_.PUSH_FROM['bottom']]:
  187. # 视频来源为 rov召回池 或 一层兜底时,判断是否是横屏
  188. w_h_rate = redis_helper.get_score_with_value(
  189. key_name=config_.W_H_RATE_UP_1_VIDEO_LIST_KEY_NAME['rov_recall'], value=video['videoId'])
  190. if w_h_rate is not None:
  191. top_2_w_h_rate_flag[i] = True
  192. elif video['pushFrom'] == config_.PUSH_FROM['bottom_last']:
  193. # 视频来源为 二层兜底时,判断是否是横屏
  194. w_h_rate = redis_helper.get_score_with_value(
  195. key_name=config_.W_H_RATE_UP_1_VIDEO_LIST_KEY_NAME['bottom_last'], value=video['videoId'])
  196. if w_h_rate is not None:
  197. top_2_w_h_rate_flag[i] = True
  198. if top_2_w_h_rate_flag[0] and top_2_w_h_rate_flag[1]:
  199. return videos
  200. # ##### 前两个视频中有不符合前面两者条件的,对视频进行位置调整
  201. # 记录横屏视频位置
  202. horizontal_video_index = []
  203. # 记录流量池视频位置
  204. flow_video_index = []
  205. # 记录置顶视频位置
  206. top_video_index = []
  207. for i, video in enumerate(videos):
  208. # 视频来源为置顶
  209. if video['pushFrom'] == config_.PUSH_FROM['top']:
  210. top_video_index.append(i)
  211. # 视频来源为流量池
  212. elif video['pushFrom'] == config_.PUSH_FROM['flow_recall']:
  213. flow_video_index.append(i)
  214. # 视频来源为rov召回池 或 一层兜底
  215. elif video['pushFrom'] in [config_.PUSH_FROM['rov_recall'], config_.PUSH_FROM['bottom']]:
  216. w_h_rate = redis_helper.get_score_with_value(
  217. key_name=config_.W_H_RATE_UP_1_VIDEO_LIST_KEY_NAME['rov_recall'], value=video['videoId'])
  218. if w_h_rate is not None:
  219. horizontal_video_index.append(i)
  220. else:
  221. continue
  222. # 视频来源为 二层兜底
  223. elif video['pushFrom'] == config_.PUSH_FROM['bottom_last']:
  224. w_h_rate = redis_helper.get_score_with_value(
  225. key_name=config_.W_H_RATE_UP_1_VIDEO_LIST_KEY_NAME['bottom_last'], value=video['videoId'])
  226. if w_h_rate is not None:
  227. horizontal_video_index.append(i)
  228. else:
  229. continue
  230. # 重新排序
  231. top2_index = []
  232. for i in range(2):
  233. if i in top_video_index:
  234. top2_index.append(i)
  235. elif i in flow_video_index:
  236. top2_index.append(i)
  237. flow_video_index.remove(i)
  238. elif i in horizontal_video_index:
  239. top2_index.append(i)
  240. horizontal_video_index.remove(i)
  241. elif len(horizontal_video_index) > 0:
  242. # 调整横屏视频到第一位
  243. top2_index.append(horizontal_video_index[0])
  244. # 从横屏位置记录中移除
  245. horizontal_video_index.pop(0)
  246. elif i == 0:
  247. return videos
  248. # 重排
  249. flow_result = [videos[i] for i in flow_video_index]
  250. other_result = [videos[i] for i in range(len(videos)) if i not in top2_index and i not in flow_video_index]
  251. top2_result = []
  252. for i, j in enumerate(top2_index):
  253. item = videos[j]
  254. if i != j:
  255. # 修改abCode
  256. item['abCode'] = config_.AB_CODE['w_h_rate']
  257. top2_result.append(item)
  258. new_rank_result = top2_result
  259. for i in range(len(top2_index), len(videos)):
  260. if i in flow_video_index:
  261. new_rank_result.append(flow_result[0])
  262. flow_result.pop(0)
  263. else:
  264. new_rank_result.append(other_result[0])
  265. other_result.pop(0)
  266. return new_rank_result
  267. def video_rank_with_old_video(rank_result, old_video_recall, size, top_K, old_video_index=2):
  268. """
  269. 视频分发排序 - 包含老视频, 老视频插入固定位置
  270. :param rank_result: 排序后的结果
  271. :param size: 请求数
  272. :param old_video_index: 老视频插入的位置索引,默认为2
  273. :return: new_rank_result
  274. """
  275. if not old_video_recall:
  276. return rank_result
  277. if not rank_result:
  278. return old_video_recall[:size]
  279. # 视频去重
  280. rank_video_ids = [item['videoId'] for item in rank_result]
  281. old_video_remove = []
  282. for old_video in old_video_recall:
  283. if old_video['videoId'] in rank_video_ids:
  284. old_video_remove.append(old_video)
  285. for item in old_video_remove:
  286. old_video_recall.remove(item)
  287. if not old_video_recall:
  288. return rank_result
  289. # 插入老视频
  290. # 随机获取一个视频
  291. ind = random.randint(0, len(old_video_recall) - 1)
  292. old_video = old_video_recall[ind]
  293. # 插入
  294. if len(rank_result) < top_K:
  295. new_rank_result = rank_result + [old_video]
  296. else:
  297. new_rank_result = rank_result[:old_video_index] + [old_video] + rank_result[old_video_index:]
  298. if len(new_rank_result) > size:
  299. # 判断后两位视频来源
  300. push_from_1 = new_rank_result[-1]['pushFrom']
  301. push_from_2 = new_rank_result[-2]['pushFrom']
  302. if push_from_2 == config_.PUSH_FROM['rov_recall'] and push_from_1 == config_.PUSH_FROM['flow_recall']:
  303. new_rank_result = new_rank_result[:-2] + new_rank_result[-1:]
  304. return new_rank_result[:size]
  305. if __name__ == '__main__':
  306. d_test = [{'videoId': 10028734, 'rovScore': 99.977, 'pushFrom': 'recall_pool', 'abCode': 10000},
  307. {'videoId': 1919925, 'rovScore': 99.974, 'pushFrom': 'recall_pool', 'abCode': 10000},
  308. {'videoId': 9968118, 'rovScore': 99.972, 'pushFrom': 'recall_pool', 'abCode': 10000},
  309. {'videoId': 9934863, 'rovScore': 99.971, 'pushFrom': 'recall_pool', 'abCode': 10000},
  310. {'videoId': 10219869, 'flowPool': '1#1#1#1640830818883', 'rovScore': 82.21929728934731, 'pushFrom': 'flow_pool', 'abCode': 10000},
  311. {'videoId': 10212814, 'flowPool': '1#1#1#1640759014984', 'rovScore': 81.26694187726412, 'pushFrom': 'flow_pool', 'abCode': 10000},
  312. {'videoId': 10219437, 'flowPool': '1#1#1#1640827620520', 'rovScore': 81.21634156641908, 'pushFrom': 'flow_pool', 'abCode': 10000},
  313. {'videoId': 1994050, 'rovScore': 99.97, 'pushFrom': 'recall_pool', 'abCode': 10000},
  314. {'videoId': 9894474, 'rovScore': 99.969, 'pushFrom': 'recall_pool', 'abCode': 10000},
  315. {'videoId': 10028081, 'rovScore': 99.966, 'pushFrom': 'recall_pool', 'abCode': 10000}]
  316. res = video_rank_by_w_h_rate(videos=d_test)
  317. for tmp in res:
  318. print(tmp)