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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: -

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2 Answers

up vote 4 down vote accepted

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.

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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
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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)
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Thanks! Good and simple. –  user815423426 Aug 25 '13 at 22:24
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