report_utils.py 8.1 KB

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  1. from database.dao.mysql_dao import MySqlDao
  2. from models import Recommend
  3. from models.rank.data.config import CustConfig, ImportanceFeaturesMap, ProductConfig, DeliveryConfig
  4. from models.rank.data.utils import sample_data_clear
  5. from models.rank import generate_feats_map
  6. from core import get_logger
  7. import os
  8. import pandas as pd
  9. from utils.reports_process import feats_relation_process, build_recommend_report, eval_report_process_pre, eval_report_process
  10. logger = get_logger("utils.report")
  11. class ReportUtils:
  12. def __init__(self, city_uuid, product_id):
  13. self._recommend_model = Recommend(city_uuid)
  14. self._city_uuid = city_uuid
  15. self._product_id = product_id
  16. self._dao = MySqlDao()
  17. self._product_data = self._dao.get_product_by_id(self._city_uuid, self._product_id)[ProductConfig.FEATURE_COLUMNS]
  18. self._save_dir = os.path.join("./data/reports", city_uuid, product_id)
  19. if not os.path.exists(self._save_dir):
  20. os.makedirs(self._save_dir)
  21. def _get_recommend_data(self, cust_code_list):
  22. """获取推荐商户列表"""
  23. products_in_order = self._dao.get_product_from_order(self._city_uuid)["product_code"].unique().tolist()
  24. if self._product_id in products_in_order:
  25. recommend_data = self._recommend_model.get_recommend_list_by_gbdtlr(
  26. self._product_id, cust_code_list=cust_code_list
  27. )
  28. else:
  29. recommend_data = self._recommend_model.get_recommend_list_by_item2vec(
  30. self._product_id, cust_code_list=cust_code_list
  31. )
  32. return recommend_data
  33. def _generate_feats_map(self, cust_code_list):
  34. """根据召回的推荐列表生成品规-商户features_map"""
  35. recommend_data = self._get_recommend_data(cust_code_list)
  36. recommend_list = list(map(lambda x: x["cust_code"], recommend_data))
  37. product_data = self._product_data.copy()
  38. cust_data = self._dao.get_cust_by_ids(self._city_uuid, recommend_list)[CustConfig.FEATURE_COLUMNS]
  39. product_data = sample_data_clear(product_data, ProductConfig)
  40. cust_data = sample_data_clear(cust_data, CustConfig)
  41. feats_map = generate_feats_map(product_data, cust_data)
  42. return feats_map
  43. def _get_product_content(self):
  44. """获取品规的内容,并以字典的形式返回"""
  45. product_data = self._product_data.copy()
  46. filter_dict = product_data.to_dict('records')[0]
  47. return filter_dict
  48. def generate_feats_ralation_report(self, cust_code_list):
  49. """生成特征相关性分析报告"""
  50. logger.info("Generating feature relation report")
  51. feats_map = self._generate_feats_map(cust_code_list)
  52. product_content = self._get_product_content()
  53. shap_result = self._recommend_model._gbdtlr_model.generate_shap_interance(feats_map)
  54. report = feats_relation_process(shap_result, product_content)
  55. report.to_excel(os.path.join(self._save_dir, "品规商户特征关系表.xlsx"), index=False)
  56. logger.info("Feature relation report saved")
  57. def generate_product_report(self):
  58. """生成推荐品规信息表"""
  59. logger.info("Generating product report")
  60. product_data = self._get_product_content()
  61. with open(os.path.join(self._save_dir, "卷烟信息表.xlsx"), "w", encoding='utf-8-sig') as file:
  62. for key, value in product_data.items():
  63. if key != 'product_code':
  64. file.write(f"{ImportanceFeaturesMap.PRODUCT_FEATRUES_MAP[key]}, {value}\n")
  65. logger.info("Product report saved")
  66. def generate_recommend_report(self, cust_code_list):
  67. """生成推荐报告"""
  68. logger.info("Generating recommend report")
  69. recommend_data = self._get_recommend_data(cust_code_list)
  70. recommend_list = list(map(lambda x: x["cust_code"], recommend_data))
  71. recommend_cust_infos = self._dao.get_cust_by_ids(self._city_uuid, recommend_list)
  72. report = build_recommend_report(recommend_data, recommend_cust_infos)
  73. report.to_excel(os.path.join(self._save_dir, "商户售卖推荐表.xlsx"), index=False)
  74. logger.info("Recommend report saved")
  75. def generate_similarity_product_report(self):
  76. """生成相似卷烟表"""
  77. logger.info("Generating similarity product report")
  78. product_similarity_map = self._recommend_model._item2vec_model.generate_product_similarity_map(self._product_id)
  79. product_similarity_map = product_similarity_map[["product_name", "similarity", "brand_name", "factory_name", "is_low_tar", "is_medium", "is_tiny", "is_coarse", "is_exploding_beads", "is_abnormity", "is_cig", "is_chuangxin", "direct_retail_price", "tbc_total_length", "product_style"]]
  80. product_similarity_map = product_similarity_map.rename(
  81. columns={
  82. "product_name": "卷烟名称",
  83. "similarity": "相似度",
  84. "factory_name": "生产厂商",
  85. "brand_name": "品牌名称",
  86. "is_low_tar": "低焦油卷烟",
  87. "is_medium": "中支烟",
  88. "is_tiny": "细支烟",
  89. "is_coarse": "粗支烟",
  90. "is_exploding_beads": "爆珠烟",
  91. "is_abnormity": "异形包装",
  92. "is_cig": "雪茄烟",
  93. "is_chuangxin": "创新品类",
  94. "direct_retail_price": "卷烟建议零售价",
  95. "tbc_total_length": "烟支总长度",
  96. "product_style": "包装类型",
  97. }
  98. )
  99. product_similarity_map.to_excel(os.path.join(self._save_dir, "相似卷烟表.xlsx"), index=False)
  100. logger.info("Similarity product report saved")
  101. def generate_eval_data_pre(self):
  102. if self._product_id == '350139':
  103. eval_product_id = "350355"
  104. else:
  105. eval_product_id = self._product_id
  106. eval_order_data = self._dao.get_eval_order_by_product(self._city_uuid, eval_product_id)
  107. if not os.path.exists(os.path.join(self._save_dir, "商户售卖推荐表.xlsx")):
  108. logger.error("商户售卖推荐表 not found")
  109. recommend_data = pd.read_excel(os.path.join(self._save_dir, "商户售卖推荐表.xlsx"))
  110. report = eval_report_process_pre(eval_order_data, recommend_data)
  111. report.to_excel(os.path.join(self._save_dir, "效果验证表.xlsx"), index=False)
  112. def generate_eval_data(self, start_time, end_time, recommend_data):
  113. """根据推荐列表生成验证报告"""
  114. logger.info("Generating eval report")
  115. if self._product_id == '350139':
  116. eval_product_id = "350355"
  117. else:
  118. eval_product_id = self._product_id
  119. delivery_data = self._dao.get_delivery_data_by_product(self._city_uuid, eval_product_id, start_time, end_time)
  120. delivery_data = delivery_data[DeliveryConfig.FEATURE_COLUMNS]
  121. delivery_data = sample_data_clear(delivery_data, DeliveryConfig)
  122. recommend_data = recommend_data.drop(columns=["建议投放量(条)"], errors="ignore")
  123. report = eval_report_process(delivery_data, recommend_data)
  124. report.to_excel(os.path.join(self._save_dir, "投放验证报告.xlsx"), index=False)
  125. logger.info("Eval report saved")
  126. def generate_all_data(self, cust_code_list):
  127. logger.info("Generating all reports")
  128. self.generate_feats_ralation_report(cust_code_list)
  129. self.generate_product_report()
  130. self.generate_recommend_report(cust_code_list)
  131. self.generate_similarity_product_report()
  132. logger.info("All reports generated")
  133. if __name__ == "__main__":
  134. city_uuid = "00000000000000000000000011445301"
  135. product_id = '440298'
  136. start_time = '2025/2/10'
  137. end_time = '2025/2/16'
  138. report = ReportUtils(city_uuid, product_id)
  139. report.generate_eval_data(start_time, end_time)