3

DataFrame

pd.DataFrame({'a': range(20)})

>>  
    a
0   0
1   1
2   2
3   3
4   4
5   5
6   6
7   7
8   8
9   9
10  10
11  11
12  12
13  13
14  14
15  15
16  16
17  17
18  18
19  19

Expected result:

    a   group_num
0   0   1
1   1   1
2   2   2
3   3   2
4   4   3
5   5   3
6   6   4
7   7   4
8   8   5
9   9   5
10  10  6
11  11  6
12  12  7
13  13  7
14  14  8
15  15  8
16  16  9
17  17  9
18  18  10
19  19  10

What I want to do is to assign group number, from 1 to 9, according to its value.

The idea is to sort these values and split them into 10 groups and assign from 1 to 9 to each group.

But have no idea how to implement it in Pandas

Need your helps

3
  • Can you give us a usecase that we can work on? e.g. an example with test data set and expected output? – 131 Apr 17 '18 at 13:02
  • That's too broad. Show an expected output and what you have tried – rafaelc Apr 17 '18 at 13:03
  • 1
    See pandas.qcut – ALollz Apr 17 '18 at 13:05
4

I believe need qcut for evenly sized bins:

df['b'] = pd.qcut(df['a'], 10, labels=range(1, 11))
print (df)
     a   b
0    0   1
1    1   1
2    2   2
3    3   2
4    4   3
5    5   3
6    6   4
7    7   4
8    8   5
9    9   5
10  10   6
11  11   6
12  12   7
13  13   7
14  14   8
15  15   8
16  16   9
17  17   9
18  18  10
19  19  10
Is this answer outdated?
|
0
1

And if you wanted to create groups of 2 you can use this:

df['b'] = df['a'].floordiv(2)+1
Is this answer outdated?
|
1

You can using //

df['G']=df.a//2+1
df
Out[609]: 
     a   G
0    0   1
1    1   1
2    2   2
3    3   2
4    4   3
5    5   3
6    6   4
7    7   4
8    8   5
9    9   5
10  10   6
11  11   6
12  12   7
13  13   7
14  14   8
15  15   8
16  16   9
17  17   9
18  18  10
19  19  10
Is this answer outdated?
|
1
  • This one hold for only specific case – user3595632 Apr 17 '18 at 21:02

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.