2

I have three columns which represent my data. I am trying to update the final column 'Val' based on the input of the first two.

I want the maximum of the 'Range', categorised by the 'Cat' column. Following that, I would like to update the 'Val' column based on the minimum value of the 'Val' column in that group.

Input
    Cat Range Val
0    1    0   1.0
2    1    2   1.5
3    1    3   2.0
5    1    5   9.0
6    2    0   1.5
7    2    5   2.0
8    2   10   0.5
9    2   15   2.8
10   2   20   9.0 

Desired Output (Only Lines 5 and 10 change):
    Cat Range Val
0    1    0   1.0
2    1    2   1.5
3    1    3   2.0
5    1    5   1.0
6    2    0   1.5
7    2    5   2.0
8    2   10   0.5
9    2   15   2.8
10   2   20   0.5 

My elementary knowledge of pandas suggested this approach, however it does not work and I cannot seem to resolve it.

df.loc[df.groupby(['Cat'])['Range'].max(), 'Val'] = df.groupby('Cat')['Val'].min()
2

You can use lambda function with numpy.where if need compare by Val column:

f = lambda x: np.where(x == x.max(), x.min(), x)
df['Val'] = df.groupby(['Cat'])['Val'].transform(f)
print (df)
    Cat  Range  Val
0     1      0  1.0
2     1      2  1.5
3     1      3  2.0
5     1      5  1.0
6     2      0  1.5
7     2      5  2.0
8     2     10  0.5
9     2     15  2.8
10    2     20  0.5

Use if need compare by max in Range column use GroupBy.transform if need replace all max values per groups:

m = df['Range'].eq(df.groupby(['Cat'])['Range'].transform('max'))
df.loc[m, 'Val'] = df.groupby('Cat')['Val'].transform('min')

print (df)
    Cat  Range  Val
0     1      0  1.0
2     1      2  1.5
3     1      3  2.0
5     1      5  1.0
6     2      0  1.5
7     2      5  2.0
8     2     10  0.5
9     2     15  2.8
10    2     20  0.5
1

If you need to replace only first max value of Range per group you can use df.loc and DataFrameGroupBy.idxmax :

In [3545]: (df.loc[df.groupby('Cat')['Range'].idxmax(), 'Val'] = 
            df.groupby('Cat')['Val'].transform('min'))

In [3546]: df
Out[3546]: 
    Cat  Range  Val
0     1      0  1.0
2     1      2  1.5
3     1      3  2.0
5     1      5  1.0
6     2      0  1.5
7     2      5  2.0
8     2     10  0.5
9     2     15  2.8
10    2     20  0.5
0
0
df.merge(df.groupby(['Cat'])['Range'].max().reset_index(), how='inner').groupby('Cat')['Val'].min()

Is this what you're looking for?

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.