


How to Achieve Conditional Column Creation: Exploring If-Elif-Else in Pandas DataFrame?
Creating a Conditional Column: If-Elif-Else in Pandas
The given problem asks for a new column to be added to a DataFrame based on a series of conditional criteria. The challenge lies in implementing these conditions while maintaining code efficiency and readability.
Solution Using Function Application
One approach involves creating a function that maps each row to the desired result based on the conditions:
<code class="python">def f(row): if row['A'] == row['B']: return 0 elif row['A'] > row['B']: return 1 else: return -1 df['C'] = df.apply(f, axis=1)</code>
This method is readable and easy to implement, but it is not vectorized and may lead to performance issues with large datasets.
Vectorized Solution
For efficiency, a vectorized approach using NumPy's np.where function is recommended:
<code class="python">df['C'] = np.where( df['A'] == df['B'], 0, np.where( df['A'] > df['B'], 1, -1))</code>
This operation performs the conditional selection element-wise on the DataFrame, resulting in a new column with the desired values.
This vectorized approach provides significant performance benefits compared to the function-based method. It also allows for a more concise and readable implementation of the conditional criteria.
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