Home » How to Merge Two or More Series in Pandas (With Examples)

How to Merge Two or More Series in Pandas (With Examples)

by Tutor Aspire

You can use the following syntax to quickly merge two or more series together into a single pandas DataFrame:

df = pd.concat([series1, series2, ...], axis=1)

The following examples show how to use this syntax in practice.

Example 1: Merge Two Series in Pandas

The following code shows how to merge together two pandas Series into a single pandas DataFrame:

import pandas as pd

#define series
series1 = pd.Series(['Mavs', 'Rockets', 'Spurs'], name='Team')
series2 = pd.Series([109, 103, 98], name='Points')

#merge series into DataFrame
df = pd.concat([series1, series2], axis=1)

#view DataFrame
df

        Team	Points
0	Mavs	109
1	Rockets	103
2	Spurs	98

Note that if one series is longer than the other, pandas will automatically provide NaN values for missing values in the resulting DataFrame:

import pandas as pd

#define series
series1 = pd.Series(['Mavs', 'Rockets', 'Spurs'], name='Team')
series2 = pd.Series([109, 103], name='Points')

#merge series into DataFrame
df = pd.concat([series1, series2], axis=1)

#view DataFrame
df

        Team	Points
0	Mavs	109
1	Rockets	103
2	Spurs	NaN

Example 2: Merge Multiple Series in Pandas

The following code shows how to merge multiple series into a single pandas DataFrame:

import pandas as pd

#define series
series1 = pd.Series(['Mavs', 'Rockets', 'Spurs'], name='Team')
series2 = pd.Series([109, 103, 98], name='Points')
series3 = pd.Series([22, 18, 15], name='Assists')
series4 = pd.Series([30, 35, 28], name='Rebounds')

#merge series into DataFrame
df = pd.concat([series1, series2, series3, series4], axis=1)

#view DataFrame
df

	Team	Points	Assists	Rebounds
0	Mavs	109	22	30
1	Rockets	103	18	35
2	Spurs	98	15	28

Additional Resources

How to Merge Two Pandas DataFrames on Index
How to Merge Pandas DataFrames on Multiple Columns
How to Stack Multiple Pandas DataFrames

You may also like