Borya-Goldarb commited on
Commit
8ceffc2
·
verified ·
1 Parent(s): 645ce19

Update pages/market_rent_estimation.py

Browse files
Files changed (1) hide show
  1. pages/market_rent_estimation.py +5 -4
pages/market_rent_estimation.py CHANGED
@@ -21,12 +21,13 @@ def main():
21
  min_size = (100 + st.session_state['min_property_lease_size_perc']) / 100 * st.session_state['building_sf']
22
  max_size = (100 + st.session_state['max_property_lease_size_perc']) / 100 * st.session_state['building_sf']
23
 
24
- # user's filter for lease size is a range in percentage around picked lease
25
- lease_min_size = (100 + st.session_state['min_property_size_perc']) / 100 * st.session_state['rented_sf']
26
- lease_max_size = (100 + st.session_state['max_property_size_perc']) / 100 * st.session_state['rented_sf']
27
 
28
  #apply all filters
29
- mask = (df_properties['rented_sf'] >= lease_min_size) & (df_properties['rented_sf'] <= lease_max_size) & (df_properties['building_sf'] >= min_size) & (df_properties['building_sf'] <= max_size) & (df_properties['months_since'] <= st.session_state['months_back'])
 
30
  df_properties_filtered = df_properties[mask]
31
 
32
  # create distances matrix for remaining rows
 
21
  min_size = (100 + st.session_state['min_property_lease_size_perc']) / 100 * st.session_state['building_sf']
22
  max_size = (100 + st.session_state['max_property_lease_size_perc']) / 100 * st.session_state['building_sf']
23
 
24
+ # # user's filter for lease size is a range in percentage around picked lease
25
+ # lease_min_size = (100 + st.session_state['min_property_size_perc']) / 100 * st.session_state['rented_sf']
26
+ # lease_max_size = (100 + st.session_state['max_property_size_perc']) / 100 * st.session_state['rented_sf']
27
 
28
  #apply all filters
29
+ # (df_properties['rented_sf'] >= lease_min_size) & (df_properties['rented_sf'] <= lease_max_size) &
30
+ mask = (df_properties['building_sf'] >= min_size) & (df_properties['building_sf'] <= max_size) & (df_properties['months_since'] <= st.session_state['months_back'])
31
  df_properties_filtered = df_properties[mask]
32
 
33
  # create distances matrix for remaining rows