9 C
London
Friday, May 16, 2025
HomePandas in PythonGeneral Functions in PythonPandas: How to Add String to Each Value in Column

Pandas: How to Add String to Each Value in Column

Related stories

Learn About Opening an Automobile Repair Shop in India

Starting a car repair shop is quite a good...

Unlocking the Power: Embracing the Benefits of Tax-Free Investing

  Unlocking the Power: Embracing the Benefits of Tax-Free Investing For...

Income Splitting in Canada for 2023

  Income Splitting in Canada for 2023 The federal government’s expanded...

Can I Deduct Home Office Expenses on my Tax Return 2023?

Can I Deduct Home Office Expenses on my Tax...

Canadian Tax – Personal Tax Deadline 2022

  Canadian Tax – Personal Tax Deadline 2022 Resources and Tools...

You can use the following methods to add a string to each value in a column of a pandas DataFrame:

Method 1: Add String to Each Value in Column

df['my_column'] = 'some_string' + df['my_column'].astype(str)

Method 2: Add String to Each Value in Column Based on Condition

#define condition
mask = (df['my_column'] == 'A')

#add string to values in column equal to 'A'
df.loc[mask, 'my_column'] = 'some_string' + df['my_column'].astype(str)

The following examples show how to use each method in practice with the following pandas DataFrame:

import pandas as pd

#create DataFrame
df = pd.DataFrame({'team': ['A', 'A', 'A', 'A', 'B', 'B', 'B', 'B'],
                   'points': [18, 22, 19, 14, 14, 11, 20, 28],
                   'assists': [5, 7, 7, 9, 12, 9, 9, 4],
                   'rebounds': [11, 8, 10, 6, 6, 5, 9, 12]})

#view DataFrame
print(df)

  team  points  assists  rebounds
0    A      18        5        11
1    A      22        7         8
2    A      19        7        10
3    A      14        9         6
4    B      14       12         6
5    B      11        9         5
6    B      20        9         9
7    B      28        4        12

Example 1: Add String to Each Value in Column

The following code shows how to add the string ‘team_’ to each value in the team column:

#add string 'team_' to each value in team column
df['team'] = 'team_' + df['team'].astype(str)

#view updated DataFrame
print(df)

     team  points  assists  rebounds
0  team_A      18        5        11
1  team_B      22        7         8
2  team_C      19        7        10
3  team_D      14        9         6
4  team_E      14       12         6
5  team_F      11        9         5
6  team_G      20        9         9
7  team_H      28        4        12

Notice that the prefix ‘team_’ has been added to each value in the team column.

You can also use the following syntax to instead add ‘_team’ as a suffix to each value in the team column:

#add suffix 'team_' to each value in team column
df['team'] = df['team'].astype(str) + '_team'

#view updated DataFrame
print(df)

     team  points  assists  rebounds
0  A_team      18        5        11
1  A_team      22        7         8
2  A_team      19        7        10
3  A_team      14        9         6
4  B_team      14       12         6
5  B_team      11        9         5
6  B_team      20        9         9
7  B_team      28        4        12

Example 2: Add String to Each Value in Column Based on Condition

The following code shows how to add the prefix ‘team_’ to each value in the team column where the value is equal to ‘A’:

#define condition
mask = (df['team'] == 'A')

#add string 'team_' to values that meet the condition
df.loc[mask, 'team'] = 'team_' + df['team'].astype(str)

#view updated DataFrame
print(df)

     team  points  assists  rebounds
0  team_A      18        5        11
1  team_A      22        7         8
2  team_A      19        7        10
3  team_A      14        9         6
4       B      14       12         6
5       B      11        9         5
6       B      20        9         9
7       B      28        4        12

Notice that the prefix ‘team_’ has only been added to the values in the team column whose value was equal to ‘A’.

Additional Resources

The following tutorials explain how to perform other common operations in pandas:

Pandas: How to Select Columns Containing a Specific String
Pandas: How to Select Rows that Do Not Start with String
Pandas: How to Check if Column Contains String

Subscribe

- Never miss a story with notifications

- Gain full access to our premium content

- Browse free from up to 5 devices at once

Latest stories