3

I have a MultiIndex data frame called df with 3 indexes (Fruit, Color, Taste). I want to search 1 specific index, that index being Color and see if the value exists in it.

For example: the code would look something like this. Color is an index in the dataframe not just a column.

if 'purple' in 'Color':
    print('yes')
else:
    print('no')

I only want it to search the Color not any other indexes/columns

                       Quantity     Quality
Fruit   Color   Taste
apple   red     tart     12          good
lemon   yellow  sour     11          average
grapes  purple  sweet     5          bad
lime    green   citrus    3          excellent

Thank you so much for your time!

0

4 Answers 4

6

You can use get_level_values to filter.

if "purple" in df.index.get_level_values('Color'):
    print('yes')
else:
    print('no')
0
5

You can use this if you want a tabular output:

def check(data:pd.DataFrame,l:list):
    c = data.index.get_level_values("Color").isin(l)
    return np.where(c,'yes','no')

df['Result'] = check(df,['purple'])

print(df)

                       Quantity    Quality Result
Fruit  Color  Type                              
apple  red    tart          12       good     no
lemon  yellow sour          11    average     no
grapes purple sweet          5        bad    yes
lime   green  citrus         3  excellent     no
1

You can also check if the value is in index.unique(level). This way the whole index would not need to be copied into a list. It might also make the subsequent search faster.

if "purple" in df.index.unique(level="Color"): 
    print("yes")
else: 
    print("no")
0

I agree with the other answers that df.index.get_level_values('level_name') is the right approach. However, I think the more standard pandas implementation would be to use a vectorised approach returning a boolean series (granted this wasn't exactly what the OP asked for):

is_purple = df.index.get_level_values('color') == 'purple' # <-- result is a boolean series
# Then filter as needed
only_purple = df[is_purple]
# Or use np.where to get yes/no strings if needed
df['Result'] = np.where(is_purple, 'yes', 'no')

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