This question already has an answer here:
Working with the dataframe df:
Product_ID | Category_A | Category _B 1232 0 0 1343 Unknown X 2543 Nan 0 2549 Y Y 0349 X X 8533 Y X
I would like to create a new column Category_Final, with the following rules:
- If Category_A is 0, Unknown or Nan, Category_Final should be "Unknown"
- If Category_A is the Same as Category_B, Category_Final should be 0
- If Category_A is different than Category_B,Category_Final should be X
Product_ID | Category_A | Category _B | Category_Final 1232 0 0 Unknown 1343 Unknown X Unknown 2543 Nan 0 Unknown 2549 Y Y 0 0349 X X 0 8533 Y X X
I managed to get the logic for 0 and X, but I don't know how to include the Unknown Logic.
df['Category_Final'] = np.where(df['Category_A'] != df['Category_B'], 'X', '0')