How to group dataframe rows into list in pandas groupby
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Chapters
00:00 How To Group Dataframe Rows Into List In Pandas Groupby
00:23 Accepted Answer Score 783
00:44 Answer 2 Score 75
01:06 Answer 3 Score 125
01:20 Answer 4 Score 61
01:42 Thank you
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Full question
https://stackoverflow.com/questions/2221...
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Tags
#python #pandas #list #aggregate #pandasgroupby
#avk47
Rise to the top 3% as a developer or hire one of them at Toptal: https://topt.al/25cXVn
--------------------------------------------------
Music by Eric Matyas
https://www.soundimage.org
Track title: Drifting Through My Dreams
--
Chapters
00:00 How To Group Dataframe Rows Into List In Pandas Groupby
00:23 Accepted Answer Score 783
00:44 Answer 2 Score 75
01:06 Answer 3 Score 125
01:20 Answer 4 Score 61
01:42 Thank you
--
Full question
https://stackoverflow.com/questions/2221...
--
Content licensed under CC BY-SA
https://meta.stackexchange.com/help/lice...
--
Tags
#python #pandas #list #aggregate #pandasgroupby
#avk47
ACCEPTED ANSWER
Score 783
You can do this using groupby to group on the column of interest and then apply list to every group:
In [1]: df = pd.DataFrame( {'a':['A','A','B','B','B','C'], 'b':[1,2,5,5,4,6]})
df
Out[1]:
a b
0 A 1
1 A 2
2 B 5
3 B 5
4 B 4
5 C 6
In [2]: df.groupby('a')['b'].apply(list)
Out[2]:
a
A [1, 2]
B [5, 5, 4]
C [6]
Name: b, dtype: object
In [3]: df1 = df.groupby('a')['b'].apply(list).reset_index(name='new')
df1
Out[3]:
a new
0 A [1, 2]
1 B [5, 5, 4]
2 C [6]
ANSWER 2
Score 125
A handy way to achieve this would be:
df.groupby('a').agg({'b':lambda x: list(x)})
Look into writing Custom Aggregations: https://www.kaggle.com/akshaysehgal/how-to-group-by-aggregate-using-py
ANSWER 3
Score 75
If performance is important go down to numpy level:
import numpy as np
df = pd.DataFrame({'a': np.random.randint(0, 60, 600), 'b': [1, 2, 5, 5, 4, 6]*100})
def f(df):
keys, values = df.sort_values('a').values.T
ukeys, index = np.unique(keys, True)
arrays = np.split(values, index[1:])
df2 = pd.DataFrame({'a':ukeys, 'b':[list(a) for a in arrays]})
return df2
Tests:
In [301]: %timeit f(df)
1000 loops, best of 3: 1.64 ms per loop
In [302]: %timeit df.groupby('a')['b'].apply(list)
100 loops, best of 3: 5.26 ms per loop
ANSWER 4
Score 61
To solve this for several columns of a dataframe:
In [5]: df = pd.DataFrame( {'a':['A','A','B','B','B','C'], 'b':[1,2,5,5,4,6],'c'
...: :[3,3,3,4,4,4]})
In [6]: df
Out[6]:
a b c
0 A 1 3
1 A 2 3
2 B 5 3
3 B 5 4
4 B 4 4
5 C 6 4
In [7]: df.groupby('a').agg(lambda x: list(x))
Out[7]:
b c
a
A [1, 2] [3, 3]
B [5, 5, 4] [3, 4, 4]
C [6] [4]
This answer was inspired from Anamika Modi's answer. Thank you!