


When Should I Use (and When Should I Avoid) pandas.apply()?
When Should I (Not) Use pandas.apply() in My Code?
Introduction
pandas.apply() is a powerful tool that allows users to apply a function over the rows or columns of a DataFrame or Series. However, it has been known to be slower than other methods, leading to the question of when it should be used and avoided. This article examines the reasons behind apply()'s performance issues and provides practical guidelines on how to eliminate its use.
Why is apply() Slow?
apply() calculates the result for each row or column individually, which can be inefficient when vectorized operations are available. Additionally, apply() incurs overhead by handling alignment, handling complex arguments, and allocating memory.
When to Avoid apply()
Use vectorized alternatives whenever possible. Vectorized operations, such as those provided by NumPy or pandas' own vectorized functions, operate on entire arrays at once, resulting in significant performance gains.
Avoid apply() for string manipulations. Pandas provides optimized string functions that are vectorized and faster than string-based apply() calls.
Use list comprehensions for column explosions. Exploding columns of lists using apply() is inefficient. Prefer using list comprehensions or converting the column to a list and passing it to pd.DataFrame().
When to Use apply()
Functions not vectorized for DataFrames. There are functions that are vectorized for Series but not DataFrames. For example, pd.to_datetime() can be used with apply() to convert multiple columns to datetime.
Complex functions requiring row-wise processing. In certain cases, it may be necessary to apply a complex function that requires row-wise processing. However, this should be avoided if possible.
GroupBy.apply() Considerations
Use vectorized GroupBy operations. GroupBy operations have vectorized alternatives that can be more efficient.
Avoid apply() for chained transformations. Chaining multiple operations within GroupBy.apply() can result in unnecessary iterations. Use separate GroupBy calls if possible.
Other Caveats
apply() operates on the first row twice. It needs to determine if the function has side effects, which can impact performance.
Memory consumption. apply() consumes a substantial amount of memory, making it unsuitable for memory-bound applications.
Conclusion
pandas.apply() is an accessible function, but its performance limitations should be carefully considered. To avoid performance issues, it is essential to identify vectorized alternatives, explore efficient options for string manipulations, and use apply() judiciously when no other option is available. By understanding the reasons behind its inefficiency, developers can write efficient and maintainable pandas code.
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