I have tried passing the dtype parameter with read_csv as dtype={n: pandas.Categorical} but this does not work properly (the result is an Object). The manual is unclear.

  • 1
    Is one column categorical or are they all? – wegry May 16 '15 at 6:08
  • 1
    One or more, but not all. – Emre May 16 '15 at 6:24
  • Is n a string in your code snippet (it should be probably). I'll suggest using the astype method on the individual columns otherwise. – wegry May 16 '15 at 6:35
  • This is not possible at the moment (and passing pd.Categorical will not work in any case, as this is not a dtype). But you can open an enhancement request at github.com/pydata/pandas/issues – joris May 16 '15 at 9:47
  • 2
    pandas 21.0 has a CategoricalDtype; the example read_csv(...) there does what you want. – denis Nov 5 '17 at 16:22

In version 0.19.0 you can use parameter dtype='category' in read_csv:

data = 'col1,col2,col3\na,b,1\na,b,2\nc,d,3'
df = pd.read_csv(pd.compat.StringIO(data), dtype='category')
print (df)
  col1 col2 col3
0    a    b    1
1    a    b    2
2    c    d    3

print (df.dtypes)
col1    category
col2    category
col3    category
dtype: object

If want specify column for category use dtype with dictionary:

df = pd.read_csv(pd.compat.StringIO(data), dtype={'col1':'category'})
print (df)
  col1 col2  col3
0    a    b     1
1    a    b     2
2    c    d     3

print (df.dtypes)
col1    category
col2      object
col3       int64
dtype: object
  • 4
    I think yes, use df = pd.read_csv(StringIO(data), dtype={'col1':'category'}, index_col='col1') – jezrael Feb 1 '17 at 7:53
  • 1
    This just made my day. – Relaxed1 Dec 15 '18 at 15:51

Categorical is not a valid dtype.

This StackOverflow post contains details for how to store categorical data in a text file.

  • 1. Your post uses the Categorical dtype 2. The linked article talks about the "category" dtype, but I have not succeeded in using it with read_csv. Have you? – Emre May 17 '15 at 5:45
  • 1
    see pandas#10153 – deck Apr 22 '16 at 15:21

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