gbdt_lr_inference.py 11 KB

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  1. import gc
  2. import joblib
  3. # from dao import Redis, get_product_by_id, get_custs_by_ids, load_cust_data_from_mysql
  4. from database import RedisDatabaseHelper, MySqlDao
  5. from models.rank.data import DataLoader
  6. from models.rank.data import ProductConfig, CustConfig, ShopConfig, ImportanceFeaturesMap
  7. from models.rank.data.utils import one_hot_embedding, sample_data_clear
  8. import numpy as np
  9. import pandas as pd
  10. from sklearn.preprocessing import StandardScaler
  11. import shap
  12. from tqdm import tqdm
  13. from utils import split_relation_subtable
  14. import os
  15. def generate_feats_map(product_data, cust_data):
  16. """组合卷烟、商户特征矩阵"""
  17. # 笛卡尔积联合
  18. cust_data["descartes"] = 1
  19. product_data["descartes"] = 1
  20. feats_map = pd.merge(cust_data, product_data, on="descartes").drop("descartes", axis=1)
  21. # recall_cust_list = feats_map["BB_RETAIL_CUSTOMER_CODE"].to_list()
  22. feats_map.drop('BB_RETAIL_CUSTOMER_CODE', axis=1, inplace=True)
  23. feats_map.drop('product_code', axis=1, inplace=True)
  24. # onehot编码
  25. onehot_feats = {**CustConfig.ONEHOT_CAT, **ProductConfig.ONEHOT_CAT, **ShopConfig.ONEHOT_CAT}
  26. onehot_columns = list(onehot_feats.keys())
  27. numeric_columns = feats_map.drop(onehot_columns, axis=1).columns
  28. feats_map = one_hot_embedding(feats_map, onehot_feats)
  29. # 数字特征归一化
  30. if len(numeric_columns) != 0:
  31. scaler = StandardScaler()
  32. feats_map[numeric_columns] = scaler.fit_transform(feats_map[numeric_columns])
  33. return feats_map
  34. class GbdtLrModel:
  35. def __init__(self, model_path):
  36. self.load_model(model_path)
  37. self.redis = RedisDatabaseHelper().redis
  38. self._mysql_dao = MySqlDao()
  39. self._explanier = None
  40. def load_model(self, model_path):
  41. models = joblib.load(model_path)
  42. self.gbdt_model, self.lr_model, self.onehot_encoder = models["lgbm_model"], models["lr_model"], models["onehot_encoder"]
  43. def get_cust_and_product_data(self, city_uuid, product_id):
  44. """从商户数据库中获取指定城市所有商户的id"""
  45. self.product_data = self._mysql_dao.get_product_by_id(city_uuid, product_id)[ProductConfig.FEATURE_COLUMNS]
  46. self.custs_data = self._mysql_dao.load_cust_data(city_uuid)[CustConfig.FEATURE_COLUMNS]
  47. def get_recommend_list(self, recommend_sample, recall_list):
  48. gbdt_preds = self.gbdt_model.predict(recommend_sample, pred_leaf=True)
  49. gbdt_feats_encoded = self.onehot_encoder.transform(gbdt_preds)
  50. scores = self.lr_model.predict_proba(gbdt_feats_encoded)[:, 1]
  51. recommend_list = []
  52. for cust_id, score in zip(recall_list, scores):
  53. recommend_list.append({cust_id: float(score)})
  54. recommend_list.append({"cust_code": cust_id, "recommend_score": score})
  55. recommend_list = sorted(
  56. [item for item in recommend_list if "recommend_score" in item],
  57. key=lambda x: x["recommend_score"],
  58. reverse=True
  59. )
  60. return recommend_list
  61. def generate_feats_importance(self):
  62. """生成特征重要性"""
  63. # 获取GBDT模型的特征重要性
  64. feats_importance = self.gbdt_model.feature_importances_
  65. # 获取特征名称
  66. feats_names = self.gbdt_model.feature_name_
  67. importance_dict = dict(zip(feats_names, feats_importance))
  68. onehot_feats = {**CustConfig.ONEHOT_CAT, **ShopConfig.ONEHOT_CAT, **ProductConfig.ONEHOT_CAT}
  69. for feat, categories in onehot_feats.items():
  70. related_columns = [f"{feat}_{item}" for item in categories]
  71. if related_columns:
  72. # 合并类别重要性
  73. combined_importance = sum(importance_dict[col] for col in related_columns)
  74. # 删除onehot类别列
  75. for col in related_columns:
  76. del importance_dict[col]
  77. # 添加合并后的重要性
  78. importance_dict[feat] = combined_importance
  79. # 排序
  80. sorted_importance = sorted(importance_dict.items(), key=lambda x: x[1], reverse=True)
  81. # 输出特征重要性
  82. cust_features_importance = []
  83. product_features_importance = []
  84. for feat, importance in sorted_importance:
  85. if feat in list(ImportanceFeaturesMap.CUSTOM_FEATURES_MAP.keys()):
  86. cust_features_importance.append({ImportanceFeaturesMap.CUSTOM_FEATURES_MAP[feat]: float(importance)})
  87. if feat in list(ImportanceFeaturesMap.SHOPING_FEATURES_MAP.keys()):
  88. cust_features_importance.append({ImportanceFeaturesMap.SHOPING_FEATURES_MAP[feat]: float(importance)})
  89. if feat in list(ImportanceFeaturesMap.PRODUCT_FEATRUES_MAP.keys()):
  90. product_features_importance.append({ImportanceFeaturesMap.PRODUCT_FEATRUES_MAP[feat]: float(importance)})
  91. return cust_features_importance, product_features_importance
  92. def generate_shap_interance(self, data):
  93. # 初始化SHAP解释器
  94. if self._explanier is None:
  95. self._explanier = shap.TreeExplainer(self.gbdt_model)
  96. # 获取数据基本信息
  97. n_samples = len(data)
  98. n_features = len(data.columns)
  99. batch_size = 500 # 可根据内存调整
  100. # 创建临时内存映射文件
  101. # temp_dir = tempfile.mkdtemp()
  102. temp_dir = "./data/tmp"
  103. temp_file = os.path.join(temp_dir, "shap_interaction_temp.dat")
  104. if os.path.exists(temp_dir):
  105. os.remove(temp_file)
  106. else:
  107. os.makedirs(temp_dir)
  108. try:
  109. # 预创建内存映射文件
  110. fp_shape = (n_samples, n_features, n_features)
  111. fp = np.memmap(temp_file, dtype=np.float32,
  112. mode='w+',
  113. shape=fp_shape)
  114. # 分批计算并存储SHAP交互值
  115. for i in tqdm(range(0, n_samples, batch_size), desc="计算SHAP交互值..."):
  116. batch_data = data.iloc[i:i+batch_size]
  117. batch_interaction = self._explanier.shap_interaction_values(batch_data)
  118. fp[i:i+len(batch_interaction)] = batch_interaction.astype(np.float32)
  119. fp.flush() # 确保数据写入磁盘
  120. # 分批计算均值
  121. mean_interaction = np.zeros((n_features, n_features), dtype=np.float32)
  122. for i in tqdm(range(0, n_samples, batch_size), desc="计算均值..."):
  123. batch = fp[i:i+batch_size] # 读取批数据并取绝对值
  124. mean_interaction += batch.sum(axis=0) # 按批累加
  125. mean_interaction /= n_samples # 计算最终均值
  126. # 构建交互矩阵DataFrame
  127. interaction_df = pd.DataFrame(
  128. mean_interaction,
  129. index=data.columns,
  130. columns=data.columns
  131. )
  132. # 分离卷烟和商户特征
  133. product_feats = [
  134. f"{feat}_{item}"
  135. for feat, categories in ProductConfig.ONEHOT_CAT.items()
  136. for item in categories
  137. ]
  138. cust_feats = [
  139. f"{feat}_{item}"
  140. for feat, categories in {**CustConfig.ONEHOT_CAT, **ShopConfig.ONEHOT_CAT}.items()
  141. for item in categories
  142. ]
  143. # 提取交叉区块
  144. cross_matrix = interaction_df.loc[product_feats, cust_feats]
  145. # 转换为长格式
  146. stacked = cross_matrix.stack().reset_index()
  147. stacked.columns = ['product_feat', 'cust_feat', 'relation']
  148. # 过滤掉零值或NaN的配对
  149. filtered = stacked[
  150. (stacked['relation'].abs() > 1e-6) & # 排除极小值
  151. (~stacked['relation'].isna()) # 排除NaN
  152. ].copy()
  153. # 排序结果
  154. results = (
  155. filtered
  156. .sort_values('relation', ascending=False)
  157. .to_dict('records')
  158. )
  159. # 替换特征名称
  160. feats_name_map = {
  161. **ImportanceFeaturesMap.CUSTOM_FEATURES_MAP,
  162. **ImportanceFeaturesMap.SHOPING_FEATURES_MAP,
  163. **ImportanceFeaturesMap.PRODUCT_FEATRUES_MAP
  164. }
  165. for item in results:
  166. # 处理产品特征名
  167. product_f = item["product_feat"]
  168. product_infos = product_f.split("_")
  169. item["product_feat"] = f"{feats_name_map['_'.join(product_infos[:-1])]}({product_infos[-1]})"
  170. # 处理客户特征名
  171. cust_f = item["cust_feat"]
  172. cust_infos = cust_f.split("_")
  173. item["cust_feat"] = f"{feats_name_map['_'.join(cust_infos[:-1])]}({cust_infos[-1]})"
  174. # 返回最终结果
  175. return pd.DataFrame(results, columns=['product_feat', 'cust_feat', 'relation'])
  176. finally:
  177. # 清理临时文件
  178. try:
  179. del fp # 必须先删除内存映射对象
  180. gc.collect()
  181. os.remove(temp_file)
  182. os.rmdir(temp_dir)
  183. except Exception as e:
  184. print(f"清理临时文件时出错: {e}")
  185. if __name__ == "__main__":
  186. model_path = "./models/rank/weights/00000000000000000000000011445301/gbdtlr_model.pkl"
  187. city_uuid = "00000000000000000000000011445301"
  188. product_id = "110102"
  189. gbdt_sort = GbdtLrModel(model_path)
  190. # gbdt_sort.sort(city_uuid, product_id)
  191. # cust_features_importance, product_features_importance = gbdt_sort.generate_feats_importance()
  192. # cust_df = pd.DataFrame([
  193. # {"Features": list(item.keys())[0], "Importance": list(item.values())[0]}
  194. # for item in cust_features_importance
  195. # ])
  196. # cust_df.to_csv("./data/cust_feats.csv", index=False)
  197. # product_df = pd.DataFrame([
  198. # {"Features": list(item.keys())[0], "Importance": list(item.values())[0]}
  199. # for item in product_features_importance
  200. # ])
  201. # product_df.to_csv("./data/product_feats.csv", index=False)
  202. data, _ = DataLoader("./data/gbdt/train_data.csv").split_dataset()
  203. data = data["data"].sample(n=300, replace=True, random_state=42)
  204. data.to_csv("./data/data.csv", index=False)
  205. # data = data["data"]
  206. result = gbdt_sort.generate_shap_interance(data)
  207. print("保存结果")
  208. result.to_csv("./data/feats_interaction.csv", index=False, encoding='utf-8-sig')
  209. split_relation_subtable(result, "./data")