Table of Contents
Reading and Shaping Pandas DataFrame from Text File with State and Region Patterns
Data Structure
Solution
1. Reading the Text File
2. Extracting State Names
3. Removing Bracket Information from Region Names
4. Removing State Header Rows
5. Final DataFrame
Extended Solution
Home Backend Development Python Tutorial How can I create a Pandas DataFrame from a text file with a specific structure that includes state and region patterns?

How can I create a Pandas DataFrame from a text file with a specific structure that includes state and region patterns?

Nov 03, 2024 am 03:05 AM

How can I create a Pandas DataFrame from a text file with a specific structure that includes state and region patterns?

Reading and Shaping Pandas DataFrame from Text File with State and Region Patterns

Creating a Pandas DataFrame from a text file with a specific structure requires strategic data manipulation. Let's delve into the problem and explore a solution to transform the provided text into the desired DataFrame.

Data Structure

The text file follows a hierarchical structure where:

  • Rows with "[edit]" are state names.
  • Rows with "[number]" are region names.
  • Region names should be repeated for the same state.

Solution

1. Reading the Text File

First, read the text file and create a DataFrame using read_csv(). Since there are no specific delimiters, specify a custom separator that does not exist in the data, such as a semicolon:

<code class="python">df = pd.read_csv('filename.txt', sep=";", names=['Region Name'])</code>
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2. Extracting State Names

Identify the rows containing state names using the str.extract() method and regular expressions to capture the state name up to "[edit]". Create a new column called 'State' with these values:

<code class="python">df.insert(0, 'State', df['Region Name'].str.extract('(.*)\[edit\]', expand=False).ffill())</code>
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3. Removing Bracket Information from Region Names

Remove the brackets and any characters enclosed within them from the 'Region Name' column:

<code class="python">df['Region Name'] = df['Region Name'].str.replace(r' \(.+$', '')</code>
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4. Removing State Header Rows

Delete the rows where "[edit]" appears in the 'Region Name' column. Create a mask using str.contains():

<code class="python">df = df[~df['Region Name'].str.contains('\[edit\]')].reset_index(drop=True)</code>
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5. Final DataFrame

At this point, you have a DataFrame with the 'State' and 'Region Name' columns, as required.

<code class="python">print(df)</code>
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Extended Solution

If you prefer to include the bracketed text in the 'Region Name' column, here is a modified solution:

<code class="python">df.insert(0, 'State', df['Region Name'].str.extract('(.*)\[edit\]', expand=False).ffill())
df = df[~df['Region Name'].str.contains('\[edit\]')].reset_index(drop=True)

print(df)</code>
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This will produce a DataFrame with 'State' and 'Region Name' columns, where the region names include the bracketed text.

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