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In my application I load text files that are structured as follows:

  • First non numeric column (ID)
  • A number of non-numeric columns (strings)
  • A number of numeric columns (floats)

The number of the non-numeric columns is variable. Currently I load the data into a DataFrame like this:

source = pandas.read_table(inputfile, index_col=0)

I would like to drop all non-numeric columns in one fell swoop, without knowing their names or indices, since this could be doable reading their dtype. Is this possible with pandas or do I have to cook up something on my own?

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1 Answer 1

up vote 15 down vote accepted

It`s a private method, but it will do the trick: source._get_numeric_data()

In [2]: import pandas as pd

In [3]: source = pd.DataFrame({'A': ['foo', 'bar'], 'B': [1, 2], 'C': [(1,2), (3,4)]})

In [4]: source
Out[4]:
     A  B       C
0  foo  1  (1, 2)
1  bar  2  (3, 4)

In [5]: source._get_numeric_data()
Out[5]:
   B
0  1
1  2
share|improve this answer
    
Thanks, works pretty nicely. –  Einar Oct 4 '12 at 12:30
    
Thanks! Are there any precautions in using "private methods" in pandas? Or, alternatively, why is this private? (I can open a new question, if you suggest.) –  Richard Herron Oct 4 '12 at 16:13
    
In general adding/removing/change-api of a private method is not considered a (class) api/behavior change. In other words a new version of pandas which is considered to be backwards compatible could e.g remove a private method. I believe _get_numeric_data() is mainly used to support plotting functions/methods. If you feel this is a useful method, you can do a feature request on github asking to make it part of the public api. –  Wouter Overmeire Oct 4 '12 at 18:02

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