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python - Reshape dataframe to dataframe with unlimited rows and filling zeroes where no values

Is there a way to reshape DataFrame to another with unrestricted rows. I just want a DataFrame with 3 columns, no matter how many rows is going to be in DataFrame?

For example,

letters = pd.DataFrame({'Letters' : ['A', 'B', 'C','D', 'E', 'F', 'G', 'H', 
'I','J']})

Letters
0   A
1   B
2   C
3   D
4   E
5   F
6   G
7   H
8   I
9   J

and I want to reshape it like this with filling zeroes, where there is no value.

first   second  third
A       B       C
D       E       F
G       H       I
J       0       0

In numpy reshape method as far as I know you need to explicitly identify, how much columns and rows you want..

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1 Answer

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You could use NumPy reshape. arr.reshape((-1, 3)) tells NumPy to reshape arr to shape (n, 3) where n is computed for you based on the size of arr and the size of the other given dimension(s) (e.g. in this example, the value 3).

import numpy as np
import pandas as pd

letters = pd.DataFrame({'Letters' : ['A', 'B', 'C','D', 'E', 'F', 'G', 'H', 'I','J']})
arr = np.empty(((len(letters) - 1)//3 + 1)*3, dtype='O')
arr[:len(letters)] = letters['Letters']
result = pd.DataFrame(arr.reshape((-1, 3)), columns='first second third'.split())
result = result.fillna(0)
print(result)

prints

  first second third
0     A      B     C
1     D      E     F
2     G      H     I
3     J      0     0

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