19

I have a DataFrame. Two relevant columns are the following: one is a column of int and another is a column of str.

I understand that if I insert NaN into the int column, Pandas will convert all the int into float because there is no NaN value for an int.

However, when I insert None into the str column, Pandas converts all my int to float as well. This doesn't make sense to me - why does the value I put in column 2 affect column 1?

Here's a simple working example (Python 2):

import pandas as pd
df = pd.DataFrame()
df["int"] = pd.Series([], dtype=int)
df["str"] = pd.Series([], dtype=str)
df.loc[0] = [0, "zero"]
print df
print
df.loc[1] = [1, None]
print df

The output is

   int   str
0    0  zero

   int   str
0  0.0  zero
1  1.0   NaN

Is there any way to make the output the following:

   int   str
0    0  zero

   int   str
0    0  zero
1    1   NaN

without recasting the first column to int.

  • I prefer using int instead of float because the actual data in that column are integers. If there's not workaround, I'll just use float though.

  • I prefer not having to recast because in my actual code, I don't
    store the actual dtype.

  • I also need the data inserted row-by-row.

  • This works the same way not only if any column value None but if float too. – Mikhail_Sam May 15 at 12:56
24

If you set dtype=object, your series will be able to contain arbitrary data types:

df["int"] = pd.Series([], dtype=object)
df["str"] = pd.Series([], dtype=str)
df.loc[0] = [0, "zero"]
print(df)
print()
df.loc[1] = [1, None]
print(df)

   int   str
0    0  zero
1  NaN   NaN

  int   str
0   0  zero
1   1  None
  • 4
    You cannot imagine how this one helped me, reading in a csv with 200 columns... I actually experimented with with a elaborate dict for the dtypes, only to start over and over again. Thank you. – BjoernL. Feb 10 '17 at 12:42
1

this works just as good:

df["int"] = df["int"].astype(int)

from https://stackoverflow.com/a/33313377/4355695

EDIT: This doesn't work so good when the column has blanks :(

0

If you use DataFrame.append to add the data, the dtypes are preserved, and you do not have to recast or rely on object:

In [157]: df
Out[157]:
   int   str
0    0  zero

In [159]: df.append(pd.DataFrame([[1, None]], columns=['int', 'str']), ignore_index=True)
Out[159]:
   int   str
0    0  zero
1    1  None

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