


Changing Values Based on Matched IDs in Pandas
In Python, Pandas provides efficient data manipulation capabilities. To modify values based on matching IDs, follow these steps:
- Import Pandas: Begin by importing the Pandas library.
- Load Data: Read data from a CSV file using pandas.read_csv.
- Identify Matches: Use the == operator to create a logical condition to identify rows where ID matches a specific value (e.g., df.ID == 103).
- Overwrite Values: Utilize slicing and indexing to select rows satisfying the condition and overwrite values in the desired columns. For example, df.loc[condition, 'column'] = 'new value'.
A sample code to change FirstName and LastName for ID 103:
<code class="python">import pandas as pd df = pd.read_csv("test.csv") df.loc[df.ID == 103, 'FirstName'] = "Matt" df.loc[df.ID == 103, 'LastName'] = "Jones"</code>
Additional Notes:
- You can update multiple columns at once using a list of columns: df.loc[condition, ['column1', 'column2']] = ['new value1', 'new value2'].
- Chained assignment can also be used, but it may have unexpected behaviors and is discouraged in newer Pandas versions.
- Ensure you have the appropriate Pandas version (0.11 or newer) for overwriting values using .loc.
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