#!/usr/bin/env python # coding: utf-8 # In[1]: import pandas as pd import os from helpers import ( get_combined_df, save_final_df_as_jsonl, handle_slug_column_mappings, ) # In[2]: DATA_DIR = "../data" PROCESSED_DIR = "../processed/" FACET_DIR = "days_on_market/" FULL_DATA_DIR_PATH = os.path.join(DATA_DIR, FACET_DIR) FULL_PROCESSED_DIR_PATH = os.path.join(PROCESSED_DIR, FACET_DIR) # In[3]: data_frames = [] exclude_columns = [ "RegionID", "SizeRank", "RegionName", "RegionType", "StateName", "Home Type", ] slug_column_mappings = { "_mean_listings_price_cut_amt_": "Mean Listings Price Cut Amount", "_med_doz_pending_": "Median Days on Pending", "_median_days_to_pending_": "Median Days to Close", "_perc_listings_price_cut_": "Percent Listings Price Cut", } for filename in os.listdir(FULL_DATA_DIR_PATH): if filename.endswith(".csv"): print("processing " + filename) # skip month files for now since they are redundant if "month" in filename: continue cur_df = pd.read_csv(os.path.join(FULL_DATA_DIR_PATH, filename)) if "_uc_sfrcondo_" in filename: cur_df["Home Type"] = "all homes (SFR + Condo)" # change column type to string cur_df["RegionName"] = cur_df["RegionName"].astype(str) elif "_uc_sfr_" in filename: cur_df["Home Type"] = "SFR" data_frames = handle_slug_column_mappings( data_frames, slug_column_mappings, exclude_columns, filename, cur_df ) combined_df = get_combined_df( data_frames, [ "RegionID", "SizeRank", "RegionName", "RegionType", "StateName", "Home Type", "Date", ], ) combined_df # In[9]: # Adjust column names final_df = combined_df.rename( columns={ "RegionID": "Region ID", "SizeRank": "Size Rank", "RegionName": "Region", "RegionType": "Region Type", "StateName": "State", } ) final_df # In[5]: save_final_df_as_jsonl(FULL_PROCESSED_DIR_PATH, final_df)