![]() |
VOOZH | about |
Dataframe.aggregate() function is used to apply some aggregation across one or more columns. Aggregate using callable, string, dict or list of string/callables.
The most frequently used aggregations are:
DataFrame.aggregate(func, axis=0, *args, **kwargs)
Parameters:
Return Type: Returns Aggregated DataFrame.
For link to CSV file Used in Code, click
Output :
👁 ImageBelow, we are discussing how to add values of Excel in Python using Pandas
We can Aggregate data across all numeric columns using built-in functions such as 'sum' and 'min'.
Output:
For each column which are having numeric values, minimum and sum of all values has been found. For Pandas Dataframe df , we have four such columns Number, Age, Weight, Salary.
👁 ImageIn Pandas, we can also apply different aggregation functions across different columns. For that, we need to pass a dictionary with key containing the column names and values containing the list of aggregation functions for any specific column.
Output:
Separate aggregation has been applied to each column, if any specific aggregation is not applied on a column then it has NaN value corresponding to it.
👁 Image