recommend.py 3.9 KB

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  1. from database import MySqlDao, RedisDatabaseHelper
  2. from fastapi import APIRouter, BackgroundTasks, HTTPException, status
  3. from .request_body import RecommendRequest
  4. from core import get_logger
  5. from models import Recommend
  6. import os
  7. from utils import FileStreamUtils, ReportUtils
  8. logger = get_logger("api.recommend")
  9. dao = MySqlDao()
  10. redis_client = RedisDatabaseHelper().redis
  11. router = APIRouter()
  12. def _get_itemcf_key(city_uuid, product_code):
  13. return f"fc:{city_uuid}:{product_code}"
  14. @router.post("/recommend")
  15. async def recommend(request: RecommendRequest, backgroundTasks: BackgroundTasks):
  16. """推荐接口"""
  17. logger.info(f"Recommend request: city={request.city_uuid}, product={request.product_code}, core_custs={len(request.cust_code_list)}")
  18. gbdtlr_model_path = os.path.join("./models/rank/weights", request.city_uuid, "gbdtlr_model.pkl")
  19. if not os.path.exists(gbdtlr_model_path):
  20. logger.warning(f"Model not found: {gbdtlr_model_path}")
  21. raise HTTPException(
  22. status_code=status.HTTP_404_NOT_FOUND,
  23. detail="该城市的模型未训练,请先进行训练",
  24. )
  25. recommend_model = Recommend(request.city_uuid)
  26. itemcf_key = _get_itemcf_key(request.city_uuid, request.product_code)
  27. if redis_client.exists(itemcf_key):
  28. logger.info(f"Using GBDT-LR model for product {request.product_code}, itemcf_key={itemcf_key}")
  29. recommend_list = recommend_model.get_recommend_list_by_gbdtlr(
  30. request.product_code, cust_code_list=request.cust_code_list
  31. )
  32. else:
  33. logger.info(f"Using Item2Vec model for product {request.product_code}, itemcf_key not found: {itemcf_key}")
  34. recommend_list = recommend_model.get_recommend_list_by_item2vec(
  35. request.product_code, cust_code_list=request.cust_code_list
  36. )
  37. request_data = []
  38. for index, data in enumerate(recommend_list):
  39. request_data.append(
  40. {
  41. "id": index + 1,
  42. "cust_code": data["cust_code"],
  43. "recommend_score": data["recommend_score"],
  44. }
  45. )
  46. logger.info(f"Recommend completed: {len(request_data)} customers recommended")
  47. backgroundTasks.add_task(generate_and_upload_report, request)
  48. return {"code": 200, "msg": "success", "data": {"recommendationInfo": request_data}}
  49. def generate_and_upload_report(request: RecommendRequest):
  50. """生成并上传报告到阿里云文件数据库"""
  51. logger.info(f"Background task started: generating report for {request.city_uuid}/{request.product_code}")
  52. try:
  53. report_util = ReportUtils(request.city_uuid, request.product_code)
  54. report_util.generate_all_data(request.cust_code_list)
  55. reports_dir = os.path.join("./data/reports", request.city_uuid, request.product_code)
  56. report_files = ["卷烟信息表", "品规商户特征关系表", "相似卷烟表", "商户售卖推荐表"]
  57. file_id_map = FileStreamUtils.upload_files(reports_dir, report_files)
  58. if file_id_map is None:
  59. logger.error(f"Report upload failed for {request.city_uuid}/{request.product_code}")
  60. return
  61. data_dict = {
  62. "cultivacation_id": request.cultivacation_id,
  63. "city_uuid": request.city_uuid,
  64. "limit_cycle_name": request.limit_cycle_name,
  65. "product_code": request.product_code,
  66. "product_info_table": file_id_map.get("卷烟信息表"),
  67. "relation_table": file_id_map.get("品规商户特征关系表"),
  68. "similarity_product_table": file_id_map.get("相似卷烟表"),
  69. "recommend_table": file_id_map.get("商户售卖推荐表"),
  70. }
  71. dao.insert_report(data_dict)
  72. logger.info(f"Background task completed: report uploaded for {request.city_uuid}/{request.product_code}")
  73. except Exception as e:
  74. logger.error(f"Background task failed: {e}", exc_info=True)