from datetime import datetime import requests import os import joblib import pandas as pd import json def decode_features(df, feature_view): """Decodes features in the input DataFrame using corresponding Hopsworks Feature Store transformation functions""" df_res = df.copy() import inspect td_transformation_functions = feature_view._batch_scoring_server._transformation_functions res = {} for feature_name in td_transformation_functions: if feature_name in df_res.columns: td_transformation_function = td_transformation_functions[feature_name] sig, foobar_locals = inspect.signature(td_transformation_function.transformation_fn), locals() param_dict = dict([(param.name, param.default) for param in sig.parameters.values() if param.default != inspect._empty]) if td_transformation_function.name == "min_max_scaler": df_res[feature_name] = df_res[feature_name].map( lambda x: x * (param_dict["max_value"] - param_dict["min_value"]) + param_dict["min_value"]) elif td_transformation_function.name == "standard_scaler": df_res[feature_name] = df_res[feature_name].map( lambda x: x * param_dict['std_dev'] + param_dict["mean"]) elif td_transformation_function.name == "label_encoder": dictionary = param_dict['value_to_index'] dictionary_ = {v: k for k, v in dictionary.items()} df_res[feature_name] = df_res[feature_name].map( lambda x: dictionary_[x]) return df_res def get_model(project, model_name, evaluation_metric, sort_metrics_by): """Retrieve desired model or download it from the Hopsworks Model Registry. In second case, it will be physically downloaded to this directory""" TARGET_FILE = "model_temp.pkl" list_of_files = [os.path.join(dirpath,filename) for dirpath, _, filenames \ in os.walk('.') for filename in filenames if filename == TARGET_FILE] if list_of_files: model_path = list_of_files[0] model = joblib.load(model_path) else: if not os.path.exists(TARGET_FILE): mr = project.get_model_registry() # get best model based on custom metrics model = mr.get_best_model(model_name, evaluation_metric, sort_metrics_by) model_dir = model.download() model = joblib.load(model_dir + "/model_temp.pkl") return model def get_weather_json(date, WEATHER_API_KEY): return requests.get(f'https://weather.visualcrossing.com/VisualCrossingWebServices/rest/services/timeline/helsinki/{date}?unitGroup=metric&include=days&key={WEATHER_API_KEY}&contentType=json').json() def get_weather_data(date): WEATHER_API_KEY = os.getenv('WEATHER_API_KEY') json = get_weather_json(date, WEATHER_API_KEY) data = json['days'][0] return [ json['address'].capitalize(), data['datetime'], data['tempmax'], data['tempmin'], data['temp'], data['feelslikemax'], data['feelslikemin'], data['feelslike'], data['dew'], data['humidity'], data['precip'], data['precipprob'], data['precipcover'], data['snow'], data['snowdepth'], data['windgust'], data['windspeed'], data['winddir'], data['pressure'], data['cloudcover'], data['visibility'], data['solarradiation'], data['solarenergy'], data['uvindex'], data['conditions'] ] def get_weather_df(data): col_names = [ 'city', 'date', 'tempmax', 'tempmin', 'temp', 'feelslikemax', 'feelslikemin', 'feelslike', 'dew', 'humidity', 'precip', 'precipprob', 'precipcover', 'snow', 'snowdepth', 'windgust', 'windspeed', 'winddir', 'pressure', 'cloudcover', 'visibility', 'solarradiation', 'solarenergy', 'uvindex', 'conditions' ] new_data = pd.DataFrame( data, columns=col_names ) new_data.date = new_data.date.apply(timestamp_2_time1) return new_data def timestamp_2_time1(x): dt_obj = datetime.strptime(str(x), '%Y-%m-%d') dt_obj = dt_obj.timestamp() * 1000 return int(dt_obj) def timestamp_2_time(x): dt_obj = datetime.strptime(str(x), '%m/%d/%Y') dt_obj = dt_obj.timestamp() * 1000 return int(dt_obj)