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I have a pandas.DataFrame that I wish to export to a CSV file. However, pandas seems to write some of the values as float instead of int types. I couldn't not find how to change this behavior.

Building a data frame:

df = pandas.DataFrame(columns=['a','b','c','d'], index=['x','y','z'], dtype=int)
x = pandas.Series([10,10,10], index=['a','b','d'], dtype=int)
y = pandas.Series([1,5,2,3], index=['a','b','c','d'], dtype=int)
z = pandas.Series([1,2,3,4], index=['a','b','c','d'], dtype=int)
df.loc['x']=x; df.loc['y']=y; df.loc['z']=z

View it:

>>> df
    a   b    c   d
x  10  10  NaN  10
y   1   5    2   3
z   1   2    3   4

Export it:

>>> df.to_csv('test.csv', sep='\t', na_rep='0', dtype=int)
>>> for l in open('test.csv'): print l.strip('\n')
        a       b       c       d
x       10.0    10.0    0       10.0
y       1       5       2       3
z       1       2       3       4

Why do the tens have a dot zero ?

Sure, I could just stick this function into my pipeline to reconvert the whole CSV file, but it seems unnecessary:

def lines_as_integer(path):
    handle = open(path)
    yield handle.next()
    for line in handle:
        line = line.split()
        label = line[0]
        values = map(float, line[1:])
        values = map(int, values)
        yield label + '\t' + '\t'.join(map(str,values)) + '\n'
handle = open(path_table_int, 'w')
share|improve this question
you should import pandas as pd :) –  Andy Hayden Jun 13 '13 at 16:52

3 Answers 3

This is a "gotcha" in pandas (Support for integer NA), where integer columns with NaNs are converted to floats.

This trade-off is made largely for memory and performance reasons, and also so that the resulting Series continues to be “numeric”. One possibility is to use dtype=object arrays instead.

share|improve this answer
So no way to get them as integers without reparsing the whole file ? How about if I use df.fillna() ? –  xApple Jun 13 '13 at 16:55
Use dtype=object (rather than int) when creating x and df. –  Andy Hayden Jun 13 '13 at 17:00

The problem is that since you are assigning things by rows, but dtypes are grouped by columns, so things get cast to object dtype, which is not a good thing, you lose all efficiency. So one way is to convert which will coerce to float/int dtype as needed.

As we answered in another question, if you construct the frame all at once (or construct column by column) this step will not be needed

In [23]: def convert(x):
   ....:     try:
   ....:         return x.astype(int)
   ....:     except:
   ....:         return x

In [24]: df.apply(convert)
    a   b   c   d
x  10  10 NaN  10
y   1   5   2   3
z   1   2   3   4

In [25]: df.apply(convert).dtypes
a      int64
b      int64
c    float64
d      int64
dtype: object

In [26]: df.apply(convert).to_csv('test.csv')

In [27]: !cat test.csv
share|improve this answer
But then there is .0s in the c columns... :s –  Andy Hayden Jun 13 '13 at 17:08
because its a float! no choice there (well you CAN pass float_format='%.0f' to to_csv but that is could lead to loss of precision – –  Jeff Jun 13 '13 at 17:26
But but..., if you use dtype=object (e.g. in x and df via OP's construction, which I agree is not best way) then 2, 3 and 10s are all ints... it's almost always not worth worrying about anyway. This seems just like the transpose of OP's effort :s –  Andy Hayden Jun 13 '13 at 17:30
yep...keep stressing that having object dtype for numbers is bad....maybe we should put in a PerformanceWarning if that occurs (e.g. like in this case).... –  Jeff Jun 13 '13 at 17:50
If they have gone out of their way to choose dtype=object though, surely they deserve what they get (if they don't they'd get a float). A better solution would for numpy to support NaNs in integer arrays... ;) –  Andy Hayden Jun 13 '13 at 18:38
up vote 0 down vote accepted

The answer I was looking for was a slight variation of what @Jeff proposed in his answer. The credit goes to him. This is what solved my problem in the end for reference:

    import pandas
    df = pandas.DataFrame(data, columns=['a','b','c','d'], index=['x','y','z'])
    df = df.fillna(0)
    df = df.astype(int)
    df.to_csv('test.csv', sep='\t')
share|improve this answer

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