Pandas: Drop those rows in which specific columns have missing values
Pandas Handling Missing Values: Exercise-9 with Solution
Write a Pandas program to drop those rows from a given DataFrame in which spicific columns have missing values.
Test Data:
ord_no purch_amt ord_date customer_id 0 NaN NaN NaN NaN 1 NaN 270.65 2012-09-10 3001.0 2 70002.0 65.26 NaN 3001.0 3 NaN NaN NaN NaN 4 NaN 948.50 2012-09-10 3002.0 5 70005.0 2400.60 2012-07-27 3001.0 6 NaN 5760.00 2012-09-10 3001.0 7 70010.0 1983.43 2012-10-10 3004.0 8 70003.0 2480.40 2012-10-10 3003.0 9 70012.0 250.45 2012-06-27 3002.0 10 NaN 75.29 2012-08-17 3001.0 11 NaN NaN NaN NaN
Sample Solution:
Python Code :
import pandas as pd
import numpy as np
pd.set_option('display.max_rows', None)
#pd.set_option('display.max_columns', None)
df = pd.DataFrame({
'ord_no':[np.nan,np.nan,70002,np.nan,np.nan,70005,np.nan,70010,70003,70012,np.nan,np.nan],
'purch_amt':[np.nan,270.65,65.26,np.nan,948.5,2400.6,5760,1983.43,2480.4,250.45, 75.29,np.nan],
'ord_date': [np.nan,'2012-09-10',np.nan,np.nan,'2012-09-10','2012-07-27','2012-09-10','2012-10-10','2012-10-10','2012-06-27','2012-08-17',np.nan],
'customer_id':[np.nan,3001,3001,np.nan,3002,3001,3001,3004,3003,3002,3001,np.nan]})
print("Original Orders DataFrame:")
print(df)
print("\nDrop those rows in which specific columns have missing values:")
result = df.dropna(subset=['ord_no', 'customer_id'])
print(result)
Sample Output:
Original Orders DataFrame: ord_no purch_amt ord_date customer_id 0 NaN NaN NaN NaN 1 NaN 270.65 2012-09-10 3001.0 2 70002.0 65.26 NaN 3001.0 3 NaN NaN NaN NaN 4 NaN 948.50 2012-09-10 3002.0 5 70005.0 2400.60 2012-07-27 3001.0 6 NaN 5760.00 2012-09-10 3001.0 7 70010.0 1983.43 2012-10-10 3004.0 8 70003.0 2480.40 2012-10-10 3003.0 9 70012.0 250.45 2012-06-27 3002.0 10 NaN 75.29 2012-08-17 3001.0 11 NaN NaN NaN NaN Drop those rows in which specific columns have missing values: ord_no purch_amt ord_date customer_id 2 70002.0 65.26 NaN 3001.0 5 70005.0 2400.60 2012-07-27 3001.0 7 70010.0 1983.43 2012-10-10 3004.0 8 70003.0 2480.40 2012-10-10 3003.0 9 70012.0 250.45 2012-06-27 3002.0
Python Code Editor:
Have another way to solve this solution? Contribute your code (and comments) through Disqus.
Previous: Write a Pandas program to keep the rows with at least 2 NaN values in a given DataFrame.
Next: Write a Pandas program to keep the valid entries of a given DataFrame.
What is the difficulty level of this exercise?
Test your Programming skills with w3resource's quiz.
It will be nice if you may share this link in any developer community or anywhere else, from where other developers may find this content. Thanks.
https://198.211.115.131/python-exercises/pandas/missing-values/python-pandas-missing-values-exercise-9.php
- Weekly Trends and Language Statistics
- Weekly Trends and Language Statistics