i have a csv file and has v3 column but that column has some 'nan' rows. How can i except the rows.

 dataset = pd.read_csv('mypath') 

    enc = LabelEncoder()
    dataset['v3'] = enc.transform(dataset['v3'])

Edit: V3 columns has A,C,B,A,C,D,,,A,S, like that,and i want to convert it to (1,2,3,1,2,4,,,1,7)

  • Could you show your csv file content? Feb 10, 2016 at 9:08
  • What do you want to to with these rows? Drop them? (dropna) Fill the NaN values? (fillna)
    – joris
    Feb 10, 2016 at 9:09
  • no,i want to this row categorize to numbers.That row has characters. Feb 10, 2016 at 9:12
  • Can you add sample of your data? Maybe 5-6 rows and desired output. Or better Minimal, Complete, and Verifiable example.
    – jezrael
    Feb 10, 2016 at 9:13
  • Do you mean pandas.factorize? Feb 10, 2016 at 9:13

1 Answer 1


Mask the nan values by using ~isnull():

mask = ~dataset['v3'].isnull()
dataset['v3'][mask] = enc.fit_transform(dataset['v3'][mask])

Another way is to use the pandas.factorize function, which takes care of the nans automatically (assigns them -1):

dataset['v3'] = dataset['v3'].factorize()[0]
  • thanks a lot:) dataset['v3'] = dataset['v3'].factorize()[0] solved my problem Feb 10, 2016 at 10:05

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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