Combining multiple columns in Pandas groupby with dictionary Last Updated : 27 Oct, 2021 Improve Improve Like Article Like Save Share Report Let’ see how to combine multiple columns in Pandas using groupby with dictionary with the help of different examples. Example #1: # importing pandas as pd import pandas as pd # Creating a dictionary d = {'id':['1', '2', '3'], 'Column 1.1':[14, 15, 16], 'Column 1.2':[10, 10, 10], 'Column 1.3':[1, 4, 5], 'Column 2.1':[1, 2, 3], 'Column 2.2':[10, 10, 10], } # Converting dictionary into a data-frame df = pd.DataFrame(d) print(df) Output: # Creating the groupby dictionary groupby_dict = {'Column 1.1':'Column 1', 'Column 1.2':'Column 1', 'Column 1.3':'Column 1', 'Column 2.1':'Column 2', 'Column 2.2':'Column 2' } # Set the index of df as Column 'id' df = df.set_index('id') # Groupby the groupby_dict created above df = df.groupby(groupby_dict, axis = 1).min() print(df) Output: Explanation Here we have grouped Column 1.1, Column 1.2 and Column 1.3 into Column 1 and Column 2.1, Column 2.2 into Column 2. Notice that the output in each column is the min value of each row of the columns grouped together. i.e in Column 1, value of first row is the minimum value of Column 1.1 Row 1, Column 1.2 Row 1 and Column 1.3 Row 1. Example #2: # importing pandas as pd import pandas as pd # Create dictionary with data dict = { "ID":[1, 2, 3], "Movies":["The Godfather", "Fight Club", "Casablanca"], "Week_1_Viewers":[30, 30, 40], "Week_2_Viewers":[60, 40, 80], "Week_3_Viewers":[40, 20, 20] }; # Convert dictionary to dataframe df = pd.DataFrame(dict); print(df) Output: # Create the groupby_dict groupby_dict = {"Week_1_Viewers":"Total_Viewers", "Week_2_Viewers":"Total_Viewers", "Week_3_Viewers":"Total_Viewers", "Movies":"Movies" } df = df.set_index('ID') df = df.groupby(groupby_dict, axis = 1).sum() print(df) Output: Explanation: Here, notice that even though ‘Movies’ isn’t being merged into another column it still has to be present in the groupby_dict, else it won’t be in the final dataframe. To calculate the Total_Viewers we have used the .sum() function which sums up all the values of the respective rows. Like Article Suggest improvement Previous Grouping Rows in pandas Next Python | Pandas Merging, Joining, and Concatenating Share your thoughts in the comments Add Your Comment Please Login to comment...