3

how can i do to convert my grouped data to data frame. Each group in one dataframe? i did this to group my data I wrote:

df = pd.DataFrame({'Animal' : ['Falcon', 'Falcon',
                               'Parrot', 'Parrot'],
                   'Max Speed' : [380., 370., 24., 26.]})
df.groupby('Animal')
  • What is your expected output? Two dataframes? – Quang Hoang Apr 15 at 15:26
  • yes 2 dataframes – This Apr 15 at 15:27
  • {idx: grp for idx, grp in df.groupby('Animal')} will create a dict with DataFrame per animal – Chris A Apr 15 at 15:29
  • df1, df2 = dict(tuple(df.groupby('Animal'))).values(). Though I'd stick with the dict as the container if you need an arbitrary number of DataFrames – ALollz Apr 15 at 15:30
0
df

   Animal  Max Speed
0  Falcon      380.0
1  Falcon      370.0
2  Parrot       24.0
3  Parrot       26.0

Instead of groupby you can use .loc to get desire results in separate dataframes

df1 = df.loc[df['Animal'] == 'Falcon'].reset_index(drop = True)
df1

   Animal  Max Speed
0  Falcon      380.0
1  Falcon      370.0

df2 = df.loc[df['Animal'] == 'Parrot'].reset_index(drop = True)
df2

   Animal  Max Speed
0  Parrot       24.0
1  Parrot       26.0

You can use loop for multiple dataframes

P.S. Parrot and Falcon are the Birds ;-)

  • thank you it works – This Apr 16 at 9:50
3

Use dict comprehension:

animals = {idx: grp for idx, grp in df.groupby('Animal')}

Access with the 'Animal' as the key like:

animals['Falcon']

[out]

   Animal  Max Speed
0  Falcon      380.0
1  Falcon      370.0
  • 1
    animals = dict((*df.groupby('Animal'),)) Because that isn't confusing at all (-; – piRSquared Apr 15 at 15:42
0

You can use:

dfs = []
for i in df.groupby('Animal'):
    dfs.append(i[1])

print(dfs[0])

   Animal  Max Speed
0  Falcon      380.0
1  Falcon      370.0

print(dfs[1])
   Animal  Max Speed
2  Parrot       24.0
3  Parrot       26.0

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