import pandas as pd from utils.s3 import save_csv_to_s3 asset_list = [ { "address": "4, King Henrys Drive", "postcode": "CR0 0PA" }, ] portfolio_id = 110 user_id = 8 asset_list = pd.DataFrame(asset_list) filename = f"{user_id}/{portfolio_id}/asset_list.csv" save_csv_to_s3( dataframe=asset_list, bucket_name="retrofit-plan-inputs-dev", file_name=filename ) body1 = { "portfolio_id": str(portfolio_id), "housing_type": "Private", "goal": "Increasing EPC", "goal_value": "A", "trigger_file_path": filename, "already_installed_file_path": "", "patches_file_path": "", "non_invasive_recommendations_file_path": "", "inclusions": [ "cavity_wall_insulation", "loft_insulation", "air_source_heat_pump", "solar_pv" ], "budget": None, "scenario_name": "Whole House", "multi_plan": False, } print(body1)