# Pandas normalise by column on groupby

Given a pandas dataframe such as

``````import pandas as pd

df = pd.DataFrame({'id': ['id1','id1','id2','id2'] ,
'x':  [1,2,3,4],
'y':  [10,20,30,40]})
``````

each numerical column may be normalised to the unit interval `[0,1]` with

``````columns = ['x', 'y']

for column in columns:
df[column] = (df[column] - df[column].min()) / (df[column].max() - df[column].min())
``````

resulting in

``````    id         x         y
0  id1  0.000000  0.000000
1  id1  0.333333  0.333333
2  id2  0.666667  0.666667
3  id2  1.000000  1.000000
``````

However, how to apply this normalisation on each numerical column for each `id`? The expected outcome would be in this oversimplified example

``````    id         x         y
0  id1  0.000000  0.000000
1  id1  1.000000  1.000000
2  id2  0.000000  0.000000
3  id2  1.000000  1.000000
``````

It proves unclear how to update each normalised column after

``````df.groupby(['id']).apply(lambda x: ...)
``````

``````columns = ['x', 'y']
g = df.groupby('id')[columns]
df[columns] = (df[columns] - g.transform('min')) / (g.transform('max') - g.transform('min'))

print (df)
id    x    y
0  id1  0.0  0.0
1  id1  1.0  1.0
2  id2  0.0  0.0
3  id2  1.0  1.0
``````

It proves unclear how to update each normalised column after `df.groupby(['id']).apply(lambda x: ...)`

You can `apply` again:

``````df.groupby(["id"])\
.apply(lambda id_df: id_df[columns]\
.apply(lambda serie: (serie - serie.min()) / (serie.max() - serie.min())))
``````

Probably not the best way, but if your dataframe is not huge, then this will do:

``````for column in columns:
for id in list_of_IDs:
df.loc[df.loc[id] == i,column] = (df.loc[df.loc[id] == i,column] - df.loc[df.loc[id] == i,column].min()) / df.loc[df.loc[id] == i,column].max() - df.loc[df.loc[id] == i,column].min())
``````