42

Say I have a column in a dataframe that has some numbers and some non-numbers

>> df['foo']
0       0.0
1     103.8
2     751.1
3       0.0
4       0.0
5         -
6         -
7       0.0
8         -
9       0.0
Name: foo, Length: 9, dtype: object

How can I convert this column to np.float, and have everything else that is not float convert it to NaN?

When I try:

>> df['foo'].astype(np.float)

or

>> df['foo'].apply(np.float)

I get ValueError: could not convert string to float: -

  • For a more comprehensive explanation of pd.to_numeric along with its applications, please take a look at this answer. – cs95 Jan 16 '19 at 18:12
58

In pandas 0.17.0 convert_objects raises a warning:

FutureWarning: convert_objects is deprecated. Use the data-type specific converters pd.to_datetime, pd.to_timedelta and pd.to_numeric.

You could use pd.to_numeric method and apply it for the dataframe with arg coerce.

df1 = df.apply(pd.to_numeric, args=('coerce',))

or maybe more appropriately:

df1 = df.apply(pd.to_numeric, errors='coerce')

EDIT

The above method is only valid for pandas version >= 0.17.0, from docs what's new in pandas 0.17.0:

pd.to_numeric is a new function to coerce strings to numbers (possibly with coercion) (GH11133)

|improve this answer|||||
  • 2
    Fingers crossed this comes back, it was a great silver bullet. – Andy Hayden Nov 20 '15 at 6:44
  • 'module' object has no attribute 'to_numeric' ? – bgenchel Nov 30 '15 at 7:27
  • show edited version, it's only available from 0.17.0 pandas version – Anton Protopopov Nov 30 '15 at 7:44
31

Use the convert_objects Series method (and convert_numeric):

In [11]: s
Out[11]: 
0    103.8
1    751.1
2      0.0
3      0.0
4        -
5        -
6      0.0
7        -
8      0.0
dtype: object

In [12]: s.convert_objects(convert_numeric=True)
Out[12]: 
0    103.8
1    751.1
2      0.0
3      0.0
4      NaN
5      NaN
6      0.0
7      NaN
8      0.0
dtype: float64

Note: this is also available as a DataFrame method.

|improve this answer|||||
  • 1
    "Attempt to infer better dtype for object columns" is basically a magic bullet... (and it does dates too.) – Andy Hayden Aug 25 '13 at 22:41
  • @delgadom suprisingly there isn't a "cleaning" section in the 10 minute tutorial. I need to finish up my book :) – Andy Hayden Oct 9 '15 at 22:17
  • It's depreciated unfortunately :/ – Newskooler Jan 31 '18 at 14:43
13

You can simply use pd.to_numeric and setting error to coerce without using apply

df['foo'] = pd.to_numeric(df['foo'], errors='coerce')
|improve this answer|||||
8

First replace all the string values with None, to mark them as missing values and then convert it to float.

df['foo'][df['foo'] == '-'] = None
df['foo'] = df['foo'].astype(float)
|improve this answer|||||
  • Thanks! Good and simple. – Amelio Vazquez-Reina Aug 25 '13 at 22:24
  • Simple and works much better than the previous suggestions. – Gunay Anach Aug 9 '17 at 13:04

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.