26

I have this line in my code which converts my data to numeric...

data["S1Q2I"] = data["S1Q2I"].convert_objects(convert_numeric=True)

The thing is that now the new pandas release (0.17.0) said that this function is deprecated.. This is the error:

FutureWarning: convert_objects is deprecated.  
Use the data-type specific converters pd.to_datetime, 
pd.to_timedelta and pd.to_numeric. 
data["S3BD5Q2A"] = data["S3BD5Q2A"].convert_objects(convert_numeric=True)

So, I went to the new documentation and I couldn't find any examples of how to use the new function to convert my data...

It only says this:

"DataFrame.convert_objects has been deprecated in favor of type-specific functions pd.to_datetime, pd.to_timestamp and pd.to_numeric (new in 0.17.0) (GH11133)."

Any help would be nice!

  • 1
    You mean this and this? What are you expecting this to do/not do? – EdChum Oct 14 '15 at 13:21
  • 7
    It's just this: data['S1Q2I'] = pd.to_numeric(data['S1Q2I']) – Evan Wright Oct 14 '15 at 14:03
  • 6
    What if I want the entire DataFrame converted if it can be? .convert_objects will act on a DataFrame, but .to_numeric only acts on a Series. – Michael Currie Dec 27 '15 at 5:22
  • 4
    Same request. How do you convert an entire DataFrame ? – PBrockmann Jan 7 '16 at 16:48
  • 2
    The newly preferred methods simply do not capture the functionality of .convert_objects, which can infer datatypes. This is CRUCIAL if you don't know in advance the types of your columns. – abalter Sep 19 '16 at 10:58
19

As explained by @EvanWright in the comments,

data['S1Q2I'] = pd.to_numeric(data['S1Q2I'])

is now the prefered way of converting types. A detailed explanation in of the change can be found in the github PR GH11133.

| improve this answer | |
7

You can effect a replacement using apply as done here. An example would be:

>>> import pandas as pd
>>> a = pd.DataFrame([{"letter":"a", "number":"1"},{"letter":"b", "number":"2"}])
>>> a.dtypes
letter    object
number    object
dtype: object
>>> b = a.apply(pd.to_numeric, errors="ignore")
>>> b.dtypes
letter    object
number     int64
dtype: object
>>> 

But it sucks in two ways:

  1. You have to use apply rather than a non-native dataframe method
  2. You have to copy to another dataframe--can't be done in place. So much for use with "big data."

I'm not really loving the direction pandas is going. I haven't used R data.table much, but so far it seems superior.

I think a data table with native, in-place type conversion is pretty basic for a competitive data analysis framework.

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3

It depends on which version of Pandas...... if you have Pandas's version 0.18.0 this type will work ........

df['col name'] = df['col name'].apply(pd.to_numeric, errors='coerce') 

another versions ........

df['col name']=df.col name .astype(float)
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0

You can get it to apply correctly to a particular variable name in a dataframe without having to copy into a different dataframe like this:

>>> import pandas as pd
>>> a = pd.DataFrame([{"letter":"a", "number":"1"},{"letter":"b", "number":"2"}])
>>> a.dtypes
letter    object
number    object
dtype: object
>>> a['number'] = a['number'].apply(pd.to_numeric, errors='coerce')
>>> a.dtypes
letter    object
number     int64
dtype: object

An example based on the original question above would be something like:

data['S1Q2I'] = data['S1Q2I'].apply(pd.to_numeric, errors='coerce')

This works the same way as your original:

data['S1Q2I'] = data['S1Q2I'].convert_objects(convert_numeric=True)

in my hands, anyway....

This doesn't address the point abalter made about inferring datatypes which is a little above my head I'm afraid!

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  • Ahh I've just read the discussion here and appreciate the limitations, now. Most annoying. But, if you have a particular dataframe column you want to convert, this is how you could do it. – magsmanston Dec 7 '16 at 8:23
0

If you convert all columns to numeric at once, this code may work.

data = data.apply(pd.to_numeric, axis=0)
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