Handling Missing Data in Pandas

Get Job-Ready: Data Analysis using Python with 70+ Projects Start Now!!

Program 1

Pandas Dataset 1

Pandas Dataset 2

# Missing Values
import pandas as pd
myfile="D://mypandas/employee1.xlsx"
df=pd.read_excel(myfile)
print(df[['empname','TA']].dropna())


# print("Before")
# print(df) 
# print("After")
# df=df.dropna()
# print(df) 
# df.to_excel("D://mypandas/empnomissing.xlsx")
# print("----------------Success------------")

# print("Before")
# print(df) 
# df.fillna(0,inplace=True)
# print("After")
# print(df)

 

 

Your 15 seconds will encourage us to work even harder
Please share your happy experience on Google

courses

DataFlair Team

DataFlair Team provides high-impact content on programming, Java, Python, C++, DSA, AI, ML, data Science, Android, Flutter, MERN, Web Development, and technology. We make complex concepts easy to grasp, helping learners of all levels succeed in their tech careers.

Leave a Reply

Your email address will not be published. Required fields are marked *