#!/usr/bin/env python # coding: utf-8 # In[1]: import pandas as pd import os from helpers import get_data_path_for_config, get_combined_df, save_final_df_as_jsonl # In[2]: CONFIG_NAME = "home_values_forecasts" # In[3]: data_frames = [] data_dir_path = get_data_path_for_config(CONFIG_NAME) for filename in os.listdir(data_dir_path): if filename.endswith(".csv"): print("processing " + filename) cur_df = pd.read_csv(os.path.join(data_dir_path, filename)) cols = ["Month Over Month %", "Quarter Over Quarter %", "Year Over Year %"] if filename.endswith("sm_sa_month.csv"): # print('Smoothed') cur_df.columns = list(cur_df.columns[:-3]) + [ x + " (Smoothed) (Seasonally Adjusted)" for x in cols ] else: # print('Raw') cur_df.columns = list(cur_df.columns[:-3]) + cols cur_df["RegionName"] = cur_df["RegionName"].astype(str) data_frames.append(cur_df) combined_df = get_combined_df( data_frames, [ "RegionID", "RegionType", "SizeRank", "StateName", "BaseDate", ], ) combined_df # In[4]: # Adjust columns final_df = combined_df final_df = combined_df.drop("StateName", axis=1) final_df = final_df.rename( columns={ "CountyName": "County", "BaseDate": "Date", "RegionName": "Region", "RegionType": "Region Type", "RegionID": "Region ID", "SizeRank": "Size Rank", } ) # iterate over rows of final_df and populate State and City columns if the regionType is msa for index, row in final_df.iterrows(): if row["Region Type"] == "msa": regionName = row["Region"] # final_df.at[index, 'Metro'] = regionName city = regionName.split(", ")[0] final_df.at[index, "City"] = city state = regionName.split(", ")[1] final_df.at[index, "State"] = state final_df["Date"] = pd.to_datetime(final_df["Date"], format="%Y-%m-%d") final_df # In[5]: save_final_df_as_jsonl(CONFIG_NAME, final_df)