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I'm attempting to read a simple space-separated file with pandas read_csv method. However, pandas doesn't seem to be obeying my dtype argument. Maybe I'm incorrectly specifying it?

I've distilled down my somewhat complicated call to read_csv to this simple test case. I'm actually using the converters argument in my 'real' scenario but I removed this for simplicity.

Below is my ipython session:

>>> cat test.out
a b
0.76398 0.81394
0.32136 0.91063
>>> import pandas
>>> import numpy
>>> x = pandas.read_csv('test.out', dtype={'a': numpy.float32}, delim_whitespace=True)
>>> x
         a        b
0  0.76398  0.81394
1  0.32136  0.91063
>>> x.a.dtype

I've also tried this using this with a dtype of numpy.int32 or numpy.int64. These choices result in an exception:

AttributeError: 'NoneType' object has no attribute 'dtype'

I'm assuming the AttributeError is because pandas will not automatically try to convert/truncate the float values into an integer?

I'm running on a 32-bit machine with a 32-bit version of Python.

>>> !uname -a
Linux ubuntu 3.0.0-13-generic #22-Ubuntu SMP Wed Nov 2 13:25:36 UTC 2011 i686 i686 i386 GNU/Linux
>>> import platform
>>> platform.architecture()
('32bit', 'ELF')
>>> pandas.__version__
share|improve this question
I think this looks similar to this issue on github... –  Andy Hayden Mar 4 '13 at 21:38
@AndyHayden I think you're right. The AttributeError issue is exactly what the github issue is mentioning. However, in my other scenario the values are floats but pandas doesn't obey the dtype argument when I try to use a float32 instead of a float64, etc. –  durden2.0 Mar 4 '13 at 21:50

2 Answers 2

up vote 8 down vote accepted

0.10.1 doesn't really support float32 very much

see this http://pandas.pydata.org/pandas-docs/dev/whatsnew.html#dtype-specification

you can do this in 0.11 like this:

# dont' use dtype converters explicity for the columns you care about
# they will be converted to float64 if possible, or object if they cannot
df = pd.read_csv('test.csv'.....)

#### this is optional and related to the issue you posted ####
# force anything that is not a numeric to nan
# columns are the list of columns that you are interesetd in
df[columns] = df[columns].convert_objects(convert_numeric=True)

    # astype
    df[columns] = df[columns].astype('float32')

see http://pandas.pydata.org/pandas-docs/dev/basics.html#object-conversion

Its not as efficient as doing it directly in read_csv (but that requires

I have confirmed that with 0.11-dev, this DOES work (on 32-bit and 64-bit, results are the same)

In [5]: x = pd.read_csv(StringIO.StringIO(data), dtype={'a': np.float32}, delim_whitespace=True)

In [6]: x
         a        b
0  0.76398  0.81394
1  0.32136  0.91063

In [7]: x.dtypes
a    float32
b    float64
dtype: object

In [8]: pd.__version__
Out[8]: '0.11.0.dev-385ff82'

In [9]: quit()
vagrant@precise32:~/pandas$ uname -a
Linux precise32 3.2.0-23-generic-pae #36-Ubuntu SMP Tue Apr 10 22:19:09 UTC 2012 i686 i686 i386 GNU/Linux

 some low-level changes)
share|improve this answer
Would astype or convert_objects be the preferred way to do this? –  durden2.0 Mar 5 '13 at 14:36
if u need a specif dtype then use astype, convert_objects is more meant for converting from object dtypes (and is not as necessary as was in prior versions) –  Jeff Mar 5 '13 at 22:14
So is this considered a bug in pandas? It seems a bit deceiving that I can pass in a dtype and not get what I asked for or an error, etc. –  durden2.0 Mar 8 '13 at 15:28
see my answer, prob a bug in 0.10.1 –  Jeff Mar 9 '13 at 17:30
+1 for .convert_objects(convert_numeric=True), solved my problem of having a dataframe of mixed dtypes and wanting some of them to be resolved as floats. –  A.Wan Aug 5 '14 at 0:19
In [22]: df.a.dtype = pd.np.float32

In [23]: df.a.dtype
Out[23]: dtype('float32')

the above works fine for me under pandas 0.10.1

share|improve this answer
fyi, this is inplace (which is implicit), and is not safe for non-float data –  Jeff Mar 5 '13 at 11:09
@Jeff Yes, this is an inplace cast and not safe for non-float values –  pravin Mar 5 '13 at 11:26
df = pd.read_csv('sample.out', converters={'a':lambda x: pd.np.float32(x)}, delim_whitespace=True) also doesn't seem to work. –  pravin Mar 5 '13 at 11:31
I like that this is inplace so it could be a bit better on memory and speed. However, convert_objects will set NaN's if you use the convert_numeric=True argument. This approach might raise some exceptions or something if the conversion can't be done. However, I haven't looked into the details of this too much. –  durden2.0 Mar 5 '13 at 14:38
that's the point of convert_numeric=True, to remove 'nuisance' values from an otherwise numeric column –  Jeff Mar 9 '13 at 18:09

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