Hello I am trying to split a data frame into 2: first data frame should have all the rows occurred first and remaining all occurrences into another table. please see below sample input data frame and output data frames i am looking for: i will sort data by group and number before i split

input data:

Group               number

Short               1
Short               2
Moderate            55
Moderate            31
Tall                24
Tall                11
yellow              101

Dataframe 1

Group              Number
Short                1
Moderate            55
Tall                24
Yellow              101

Dataframe 2

Group           Number
Short             2
moderate          31
Tall              11

Please advice how i can solve this problem. if its duplicate Question please point to any solution which is already provided.

Thanks

  • I'd say it's not a dupe of the linked Q since here the entries are sorted which can be exploited in a solution, – Paul Panzer Jun 13 at 18:48
up vote 4 down vote accepted

you can use groupby and first for df1:

df1 = df.reset_index().groupby('Group', as_index=False).first().set_index('index')

for df2, then you do:

df2 = df.drop(df1.index)

drop_duplicates can be used to keep the first occurrences and the rest can be sliced by excluding those indexes:

first_occ = df.drop_duplicates(subset='Group', keep='first')

rest = df[~df.index.isin(first_occ.index)]

We can exploit the fact that your df is sorted like so:

>>> df[df['Group'] != df['Group'].shift(1)]
      Group  number
0     Short       1
2  Moderate      55
4      Tall      24
6    yellow     101
>>> df[df['Group'] == df['Group'].shift(1)]
      Group  number
1     Short       2
3  Moderate      31
5      Tall      11

If you have more than two you can use this code to capture each instance:

df_set = df.set_index(df.groupby('Group').cumcount(), append=True).swaplevel(0,1)

First Occurance:

df_set.loc[0] 

Output:

      Group  number
0     Short       1
2  Moderate      55
4      Tall      24
6    yellow     101

Second Occurance:

df_set.loc[1]

Output:

      Group  number
1     Short       2
3  Moderate      31
5      Tall      11

And so on incrementing the index for loc of the df_set.

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