2

I have dataframe like below

age  type days 
1    a    1
2    b    3
2    b    4
3    a    5   
4    b    2
6    c    1
7    f    0
7    d    4
10   e    2
14   a    1

first I would like to binning with age

age

[0~4]

age  type days  
1    a    1
2    b    3
2    b    4
3    a    5   
4    b    2

Then sum up and count days by grouping with type

   sum count
a   6   2
b   9   3
c   0   0
d   0   0
e   0   0
f   0   0

Then I would like to apply this method to another binns.

[5~9] [11~14]

My desired result is below

   [0~4]         [5~9]      [10~14]
   sum count  sum count  sum count
a   6   2      0   0      1   1
b   9   3      0   0      0   0
c   0   0      1   1      0   0
d   0   0      4   1      0   0
e   0   0      0   0      2   1
f   0   0      0   1      0   0

How can this be done? It is very complicated for me..

2 Answers 2

4

Consider a pivot_table with pd.cut if you do not care too much about column ordering as count and sum are not paired together under the bin. With manipulation you can change such ordering.

df['bin'] = pd.cut(df.age, [0,4,9,14])

pvtdf = df.pivot_table(index='type', columns=['bin'], values='days', 
                       aggfunc=('count', 'sum')).fillna(0)

#       count                   sum               
# bin  (0, 4] (4, 9] (9, 14] (0, 4] (4, 9] (9, 14]
# type                                            
# a       2.0    0.0     1.0    6.0    0.0     1.0
# b       3.0    0.0     0.0    9.0    0.0     0.0
# c       0.0    1.0     0.0    0.0    1.0     0.0
# d       0.0    1.0     0.0    0.0    4.0     0.0
# e       0.0    0.0     1.0    0.0    0.0     2.0
# f       0.0    1.0     0.0    0.0    0.0     0.0
2

We'll use some stacking and groupby operations to get us to the desired output.

string_ = io.StringIO('''age  type days 
                         1    a    1
                         2    b    3
                         2    b    4
                         3    a    5   
                         4    b    2
                         6    c    1
                         7    f    0
                         7    d    4
                         10   e    2
                         14   a    1''')
df = pd.read_csv(string_, sep='\s+')

df['age_bins'] = pd.cut(df['age'], [0,4,9,14])

df_stacked = df.groupby(['age_bins', 'type']).agg({'days': np.sum,
                         'type': 'count'}).transpose().stack().fillna(0)
df_stacked.rename(index={'days': 'sum', 'type': 'count'}, inplace=True)

>>> df_stacked
age_bins    (0, 4]  (4, 9]  (9, 14]
      type                         
sum   a        6.0     0.0      1.0
      b        9.0     0.0      0.0
      c        0.0     1.0      0.0
      d        0.0     4.0      0.0
      e        0.0     0.0      2.0
      f        0.0     0.0      0.0
count a        2.0     0.0      1.0
      b        3.0     0.0      0.0
      c        0.0     1.0      0.0
      d        0.0     1.0      0.0
      e        0.0     0.0      1.0
      f        0.0     1.0      0.0

This doesn't produce the exact output you listed, but it's similar, and I think it will be easier to index and retrieve data from. Alternatively, you could do use the following to get something like the desired output.

>>> df_stacked.unstack(level=0)
age_bins (0, 4]      (4, 9]      (9, 14]     
          count  sum  count  sum   count  sum
type                                         
a           2.0  6.0    0.0  0.0     1.0  1.0
b           3.0  9.0    0.0  0.0     0.0  0.0
c           0.0  0.0    1.0  1.0     0.0  0.0
d           0.0  0.0    1.0  4.0     0.0  0.0
e           0.0  0.0    0.0  0.0     1.0  2.0
f           0.0  0.0    1.0  0.0     0.0  0.0

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