result_keep_verify.py 7.7 KB

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  1. import os
  2. import datetime
  3. import pandas as pd
  4. from data_loader import mongo_con_parse, validate_keep_one_line, fill_hourly_crawl_date
  5. from config import vj_flight_route_list_hot, vj_flight_route_list_nothot, \
  6. CLEAN_VJ_HOT_NEAR_INFO_TAB, CLEAN_VJ_HOT_FAR_INFO_TAB, CLEAN_VJ_NOTHOT_NEAR_INFO_TAB, CLEAN_VJ_NOTHOT_FAR_INFO_TAB
  7. def _validate_keep_info_df(df_keep_info_part):
  8. client, db = mongo_con_parse()
  9. count = 0
  10. if "price_diff" not in df_keep_info_part.columns:
  11. df_keep_info_part["price_diff"] = 0
  12. if "time_diff_hours" not in df_keep_info_part.columns:
  13. df_keep_info_part["time_diff_hours"] = 0
  14. for idx, row in df_keep_info_part.iterrows():
  15. df_keep_info_part.at[idx, "price_diff"] = 0
  16. df_keep_info_part.at[idx, "time_diff_hours"] = 0
  17. city_pair = row['city_pair']
  18. flight_day = row['flight_day']
  19. flight_number_1 = row['flight_number_1']
  20. flight_number_2 = row['flight_number_2']
  21. baggage = row['baggage']
  22. # update_hour = row['update_hour']
  23. # update_dt = pd.to_datetime(update_hour, format='%Y-%m-%d %H:%M:%S')
  24. into_update_hour = row['into_update_hour']
  25. into_update_dt = pd.to_datetime(into_update_hour, format='%Y-%m-%d %H:%M:%S')
  26. del_batch_time_str = row['del_batch_time_str']
  27. del_batch_dt = pd.to_datetime(del_batch_time_str, format='%Y%m%d%H%M')
  28. del_batch_std_str = del_batch_dt.strftime('%Y-%m-%d %H:%M:%S')
  29. entry_price = pd.to_numeric(row.get('adult_total_price'), errors='coerce')
  30. if city_pair in vj_flight_route_list_hot:
  31. table_name_far = CLEAN_VJ_HOT_FAR_INFO_TAB
  32. table_name_near = CLEAN_VJ_HOT_NEAR_INFO_TAB
  33. elif city_pair in vj_flight_route_list_nothot:
  34. table_name_far = CLEAN_VJ_NOTHOT_FAR_INFO_TAB
  35. table_name_near = CLEAN_VJ_NOTHOT_NEAR_INFO_TAB
  36. # 分别从远期表和近期表里查询
  37. df_query_far = validate_keep_one_line(db, table_name_far, city_pair, flight_day, flight_number_1, flight_number_2,
  38. baggage, into_update_hour, del_batch_std_str)
  39. df_query_near = validate_keep_one_line(db, table_name_near, city_pair, flight_day, flight_number_1, flight_number_2,
  40. baggage, into_update_hour, del_batch_std_str)
  41. # 合并
  42. df_query = pd.concat([df_query_far, df_query_near]).reset_index(drop=True)
  43. if (not df_query.empty) and pd.notna(entry_price):
  44. if ("adult_total_price" in df_query.columns) and ("crawl_date" in df_query.columns):
  45. df_query["adult_total_price"] = pd.to_numeric(df_query["adult_total_price"], errors="coerce")
  46. df_query["crawl_dt"] = pd.to_datetime(df_query["crawl_date"], errors="coerce")
  47. df_query = (
  48. df_query.dropna(subset=["adult_total_price", "crawl_dt"])
  49. .sort_values("crawl_dt")
  50. .reset_index(drop=True)
  51. )
  52. mask_drop = df_query["adult_total_price"] < entry_price
  53. # mask_drop = (df_query["adult_total_price"] < entry_price) & (df_query["crawl_dt"] > update_dt)
  54. if mask_drop.any():
  55. first_row = df_query.loc[mask_drop].iloc[0]
  56. price_diff = entry_price - first_row["adult_total_price"]
  57. time_diff_hours = (first_row["crawl_dt"] - into_update_dt) / pd.Timedelta(hours=1)
  58. df_keep_info_part.at[idx, "price_diff"] = round(float(price_diff), 2)
  59. df_keep_info_part.at[idx, "time_diff_hours"] = round(float(time_diff_hours), 2)
  60. pass
  61. del df_query
  62. del df_query_far
  63. del df_query_near
  64. count += 1
  65. if count % 5 == 0:
  66. print(f"cal count: {count}")
  67. print(f"计算结束")
  68. client.close()
  69. return df_keep_info_part
  70. def verify_process(min_batch_time_str, max_batch_time_str):
  71. object_dir = "./keep_0"
  72. output_dir = f"./validate/keep"
  73. os.makedirs(output_dir, exist_ok=True)
  74. timestamp_str = datetime.datetime.now().strftime("%Y%m%d%H%M%S")
  75. save_scv = f"result_keep_verify_{timestamp_str}.csv"
  76. output_path = os.path.join(output_dir, save_scv)
  77. # 获取今天的日期
  78. # today_str = pd.Timestamp.now().strftime('%Y-%m-%d')
  79. # 检查目录是否存在
  80. if not os.path.exists(object_dir):
  81. print(f"目录不存在: {object_dir}")
  82. return
  83. # 获取所有以 keep_info_ 开头的 CSV 文件
  84. csv_files = []
  85. for file in os.listdir(object_dir):
  86. if file.startswith("keep_info_") and file.endswith(".csv"):
  87. csv_files.append(file)
  88. if not csv_files:
  89. print(f"在 {object_dir} 中没有找到 keep_info_ 开头的 CSV 文件")
  90. return
  91. csv_files.sort()
  92. # print(csv_files)
  93. min_batch_dt = datetime.datetime.strptime(min_batch_time_str, "%Y%m%d%H%M")
  94. min_batch_dt = min_batch_dt.replace(minute=0, second=0, microsecond=0)
  95. max_batch_dt = datetime.datetime.strptime(max_batch_time_str, "%Y%m%d%H%M")
  96. max_batch_dt = max_batch_dt.replace(minute=0, second=0, microsecond=0)
  97. if min_batch_dt is not None and max_batch_dt is not None and min_batch_dt > max_batch_dt:
  98. print(f"时间范围非法: min_batch_time_str({min_batch_time_str}) > max_batch_time_str({max_batch_time_str}),退出")
  99. return
  100. # 从所有的 keep_info 文件中
  101. for csv_file in csv_files:
  102. batch_time_str = (
  103. csv_file.replace("keep_info_", "").replace(".csv", "")
  104. )
  105. batch_dt = datetime.datetime.strptime(batch_time_str, "%Y%m%d%H%M")
  106. batch_hour_dt = batch_dt.replace(minute=0, second=0, microsecond=0)
  107. if min_batch_dt is not None and batch_hour_dt < min_batch_dt:
  108. continue
  109. if max_batch_dt is not None and batch_hour_dt > max_batch_dt:
  110. continue
  111. # 读取 CSV 文件
  112. csv_path = os.path.join(object_dir, csv_file)
  113. try:
  114. df_keep_info = pd.read_csv(csv_path)
  115. except Exception as e:
  116. print(f"read {csv_path} error: {str(e)}")
  117. df_keep_info = pd.DataFrame()
  118. if df_keep_info.empty:
  119. print(f"keep_info数据为空: {csv_file}")
  120. continue
  121. df_keep_info_del = df_keep_info[df_keep_info['keep_flag'] == -1].reset_index(drop=True)
  122. df_keep_info_del['del_batch_time_str'] = batch_time_str
  123. df_keep_info_del = _validate_keep_info_df(df_keep_info_del)
  124. # 根据价格变化情况, 移出时间与验证终点时间的对比, 计算 status_flag 状态
  125. price_diff_num = pd.to_numeric(df_keep_info_del.get("price_diff"), errors="coerce").fillna(0)
  126. del_batch_dt = pd.to_datetime(
  127. df_keep_info_del.get("del_batch_time_str"), format="%Y%m%d%H%M", errors="coerce"
  128. )
  129. valid_end_dt = pd.to_datetime(
  130. df_keep_info_del.get("valid_end_hour"), format="%Y-%m-%d %H:%M:%S", errors="coerce"
  131. )
  132. status_flag = pd.Series(2, index=df_keep_info_del.index, dtype="int64")
  133. status_flag.loc[price_diff_num > 0] = 1
  134. mask_zero = price_diff_num == 0
  135. mask_time_ok = mask_zero & del_batch_dt.notna() & valid_end_dt.notna() & (del_batch_dt >= valid_end_dt)
  136. status_flag.loc[mask_time_ok] = 0
  137. df_keep_info_del["status_flag"] = status_flag
  138. write_header = not os.path.exists(output_path)
  139. df_keep_info_del.to_csv(output_path, mode="a", header=write_header, index=False, encoding="utf-8-sig")
  140. del df_keep_info_del
  141. print(f"批次:{batch_time_str} 检验结束")
  142. print("检验结束")
  143. print()
  144. if __name__ == "__main__":
  145. verify_process("202603161800", "202603180800")
  146. pass