I have a dataframe with this type of data (too many columns):

col1        int64
col2        int64
col3        category
col4        category
col5        category

Columns look like this:

Name: col3, dtype: category
Categories (8, object): [B, C, E, G, H, N, S, W]

I want to convert all the values in each column to integer like this:

[1, 2, 3, 4, 5, 6, 7, 8]

I solved this for one column by this:

dataframe['c'] = pandas.Categorical.from_array(dataframe.col3).codes

Now I have two columns in my dataframe - old col3 and new c and need to drop old columns.

That's bad practice. It works but in my dataframe there are too many columns and I don't want do it manually.

How can I do this more cleverly?

16 Answers 16


First, to convert a Categorical column to its numerical codes, you can do this easier with: dataframe['c'].cat.codes.
Further, it is possible to select automatically all columns with a certain dtype in a dataframe using select_dtypes. This way, you can apply above operation on multiple and automatically selected columns.

First making an example dataframe:

In [75]: df = pd.DataFrame({'col1':[1,2,3,4,5], 'col2':list('abcab'),  'col3':list('ababb')})

In [76]: df['col2'] = df['col2'].astype('category')

In [77]: df['col3'] = df['col3'].astype('category')

In [78]: df.dtypes
col1       int64
col2    category
col3    category
dtype: object

Then by using select_dtypes to select the columns, and then applying .cat.codes on each of these columns, you can get the following result:

In [80]: cat_columns = df.select_dtypes(['category']).columns

In [81]: cat_columns
Out[81]: Index([u'col2', u'col3'], dtype='object')

In [83]: df[cat_columns] = df[cat_columns].apply(lambda x: x.cat.codes)

In [84]: df
   col1  col2  col3
0     1     0     0
1     2     1     1
2     3     2     0
3     4     0     1
4     5     1     1


  1. NaN becomes -1
  2. This method is fast because the relationship between code and category is readily available and do not need to be computed.
  • 21
    is there a easy way we get a mapping between category code and category string values?
    – Allan Ruin
    Jul 28, 2016 at 8:51
  • 7
    You can use: df['col2'].cat.categories for instance.
    – ogrisel
    Oct 8, 2016 at 13:56
  • 16
    Pointing out for anyone concerned that this will map NaN's uniquely to -1 Apr 7, 2017 at 23:44
  • 2
    Love the 2 liners ;)
    – Jose A
    Jul 18, 2018 at 14:09
  • 2
    Watch out that if the categorical is ordered (an ordinal) then the numerical codes returned by cat.codes may NOT be the ones you see in the Series !
    – paulperry
    Feb 7, 2019 at 22:09

This works for me:

pandas.factorize( ['B', 'C', 'D', 'B'] )[0]


[0, 1, 2, 0]
  • 6
    underrated answer
    – aryanknp
    Jan 7, 2021 at 13:04
  • 9
    great, much simpler than the accepted answer
    – Moritz
    Jan 19, 2021 at 18:12
  • 4
    I agree, this is a very good and efficient answer
    – Laurent
    Apr 9, 2021 at 7:34
  • 4
    best answer, imho Dec 22, 2021 at 12:48
  • 4
    While this solves the problem, you should prefer the accessor pd.Series.cat.codes over pd.factorize for performance reasons. Internally, a categorical is already a list of indices and extracting that via .cat.codes takes O(0) time, whereas (re-)factorizing via pd.factorize takes O(n) time (currently no fast-path for categorical). Feb 8, 2023 at 9:26

If your concern was only that you making a extra column and deleting it later, just dun use a new column at the first place.

dataframe = pd.DataFrame({'col1':[1,2,3,4,5], 'col2':list('abcab'),  'col3':list('ababb')})
dataframe.col3 = pd.Categorical.from_array(dataframe.col3).codes

You are done. Now as Categorical.from_array is deprecated, use Categorical directly

dataframe.col3 = pd.Categorical(dataframe.col3).codes

If you also need the mapping back from index to label, there is even better way for the same

dataframe.col3, mapping_index = pd.Series(dataframe.col3).factorize()

check below


Here multiple columns need to be converted. So, one approach i used is ..

for col_name in df.columns:
    if(df[col_name].dtype == 'object'):
        df[col_name]= df[col_name].astype('category')
        df[col_name] = df[col_name].cat.codes

This converts all string / object type columns to categorical. Then applies codes to each type of category.


What I do is, I replace values.

Like this-

df['col'].replace(to_replace=['category_1', 'category_2', 'category_3'], value=[1, 2, 3], inplace=True)

In this way, if the col column has categorical values, they get replaced by the numerical values.


For converting categorical data in column C of dataset data, we need to do the following:

from sklearn.preprocessing import LabelEncoder 
labelencoder= LabelEncoder() #initializing an object of class LabelEncoder
data['C'] = labelencoder.fit_transform(data['C']) #fitting and transforming the desired categorical column.

To convert all the columns in the Dataframe to numerical data:

df2 = df2.apply(lambda x: pd.factorize(x)[0])
  • what is I have a column with 0/1/2 and I want to transform it into 'A', 'B', 'C' ?
    – seralouk
    Oct 31, 2022 at 10:36

Answers here seem outdated. Pandas now has a factorize() function and you can create categories as:


Function signature:

pandas.factorize(values, sort=False, na_sentinel=- 1, size_hint=None)

One of the simplest ways to convert the categorical variable into dummy/indicator variables is to use get_dummies provided by pandas. Say for example we have data in which sex is a categorical value (male & female) and you need to convert it into a dummy/indicator here is how to do it.

tranning_data = pd.read_csv("../titanic/train.csv")
features = ["Age", "Sex", ] //here sex is catagorical value
X_train = pd.get_dummies(tranning_data[features])

Age Sex_female Sex_male
20    0          1
33    1          0
40    1          0
22    1          0
54    0          1

  • this is the exact pythonic way i was looking for! thank you! Mar 3, 2021 at 3:32

you can use .replace as the following:

df['col3']=df['col3'].replace(['B', 'C', 'E', 'G', 'H', 'N', 'S', 'W'],[1,2,3,4,5,6,7,8])

or .map:

df['col3']=df['col3'].map({1: 'B', 2: 'C', 3: 'E', 4:'G', 5:'H', 6:'N', 7:'S', 8:'W'})
categorical_columns =['sex','class','deck','alone']

for column in categorical_columns:
     df[column] = pd.factorize(df[column])[0]

Factorize will make each unique categorical data in a column into a specific number (from 0 to infinity).


@Quickbeam2k1 ,see below -

X = dataset.iloc[:,:].values

Using sklearn enter image description here

from sklearn.preprocessing import LabelEncoder
X[:,0] = labelencoder_X.fit_transform(X[:,0])
  • 3
    Why didn't you just correct your previous answer? Surprisingly, you are using fit_transform now instead of transform_fitand corrected the labelencoder definition. Why do you use iloc[:,:]? this is useless. What is the reason behind the image? In case you wanted to prove me and @theGtknerd wrond you failed. Jul 31, 2017 at 5:37

You can do it less code like below :

f = pd.DataFrame({'col1':[1,2,3,4,5], 'col2':list('abcab'),'col3':list('ababb')})

f['col1'] =f['col1'].astype('category').cat.codes
f['col2'] =f['col2'].astype('category').cat.codes
f['col3'] =f['col3'].astype('category').cat.codes


enter image description here


Just use manual matching:

dict = {'Non-Travel':0, 'Travel_Rarely':1, 'Travel_Frequently':2}

df['BusinessTravel'] = df['BusinessTravel'].apply(lambda x: dict.get(x))

For a certain column, if you don't care about the ordering, use this

df['col1_num'] = df['col1'].apply(lambda x: np.where(df['col1'].unique()==x)[0][0])

If you care about the ordering, specify them as a list and use this

df['col1_num'] = df['col1'].apply(lambda x: ['first', 'second', 'third'].index(x))

you can use something like this

df['Grade'].replace(['A', 'B', 'C'], [0, 1, 2], inplace=True)

use the inplace argument if so that you dont perform a copy. you select a colume and replace the distinct there with the one you want.

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