pandas replace nan
data["Gender"].fillna("No Gender", inplace = True)
pandas replace nan
data["Gender"].fillna("No Gender", inplace = True)
python pandas replace nan with null
df.fillna('', inplace=True)
python fillna with mode
data['Native Country'] = data['Native Country'].fillna(data['Native Country'].mode()[0])
python pandas fillna
# importing pandas module
import pandas as pd
# making data frame from csv file
nba = pd.read_csv("nba.csv")
# replacing na values in college with No college
nba["College"].fillna("No College", inplace = True)
# OR
nba.College.fillna("No College", inplace = True)
print(nba)
fillna pandas inplace
When inplace = True , the data is modified in place, which means it will return nothing and the dataframe is now updated. When inplace = False , which is the default, then the operation is performed and it returns a copy of the object. You then need to save it to something.
Copyright © 2021 Codeinu
Forgot your account's password or having trouble logging into your Account? Don't worry, we'll help you to get back your account. Enter your email address and we'll send you a recovery link to reset your password. If you are experiencing problems resetting your password contact us