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In this article you'll learn how to use pandas' groupby () and aggregation functions step by step with clear explanations and practical examples Groupby concept is really important because of its ability to summarize, aggregate, and group data efficiently. Aggregation means applying a mathematical function to summarize data.

In this tutorial, we’ll explore the flexibility of dataframe.aggregate() through five practical examples, increasing in complexity and utility In real data science projects, you’ll be dealing with large amounts of data and trying things over and over, so for efficiency, we use groupby concept Understanding this method can significantly streamline your data analysis processes

Before diving into the examples, ensure that you have pandas installed

You can install it via pip if needed: In this section, we'll explore aggregations in pandas, from simple operations akin to what we've seen on numpy arrays, to more sophisticated operations based on the concept of a groupby For convenience, we'll use the same display magic function that we've seen in previous sections: Aggregate function in pandas performs summary computations on data, often on grouped data

But it can also be used on series objects This can be really useful for tasks such as calculating mean, sum, count, and other statistics for different groups within our data Here's the basic syntax of the aggregate function, here, After choosing the columns you want to focus on, you’ll need to choose an aggregate function

The aggregate function will receive an input of a group of several rows, perform a calculation on them and return a unique value for each of these groups.

Perhaps the most important operations made available by a groupby are aggregate, filter, transform, and apply We'll discuss each of these more fully in the next section, but before that let's. Learn how to use python pandas agg () function to perform aggregation operations like sum, mean, and count on dataframes. Pandas is a data analysis and manipulation library for python and is one of the most popular ones out there

Aggregations refer to any data transformation that produces scalar values from arrays In the previous examples, several of them were used, including count and sum You may now be wondering what happens when you apply sum() to a groupby object Optimised implementations exist for many common aggregations, such as the one in the following table.

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