


How can I split a comma-separated cell into multiple rows in a Pandas DataFrame?
Splitting a Cell into Multiple Rows in a Pandas Dataframe
Pandas offers comprehensive tools for data manipulation, including the ability to split a cell that contains multiple comma-separated values into multiple rows. In this guide, we will explore methods to achieve this using two different approaches based on pandas' version.
pandas >= 0.25
For pandas versions 0.25 and above, you can use a combination of apply, str.split, and Series.explode to achieve the desired result. Here's the code snippet:
<code class="python">(df.set_index(['order_id', 'order_date']) .apply(lambda x: x.str.split(',').explode()) .reset_index()) </code>
Explanation:
- set_index(['order_id', 'order_date']): Sets the order_id and order_date columns as the index to preserve them during subsequent operations.
- apply(lambda x: x.str.split(',').explode()): Applies a lambda function to each row. It splits the cell values (package and package_code) on the comma delimiter and explodes the resulting lists into multiple rows.
- reset_index(): Resets the index to create a new DataFrame with the exploded values as separate rows.
pandas <= 0.24
For pandas versions 0.24 and below, a more complex approach involving stack, unstack, and str.split is necessary:
<code class="python">(df.set_index(['order_date', 'order_id']) .stack() .str.split(',', expand=True) .stack() .unstack(-2) .reset_index(-1, drop=True) .reset_index() )</code>
Explanation:
- Similar to the previous approach, set_index sets order_date and order_id as the index.
- stack() collapses the rows and stacks them as a single column.
- str.split(',', expand=True) splits the combined values into multiple columns based on the comma delimiter.
- stack() stacks the columns to create a single column again.
- unstack(-2) unstacks the DataFrame at the second-last level to create rows containing the split values.
- reset_index(-1, drop=True) removes the extra level of the index.
- reset_index() adds a new index to create a new DataFrame.
Both methods will return a new DataFrame with the exploded values as separate rows, as illustrated in the desired output you provided.
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