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Building High-Performance Financial Analytics Pipelines with Polars: Lazy Evaluation, Advanced Expressions,...

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Building High-Performance Financial Analytics Pipelines with Polars: Lazy Evaluation, Advanced Expressions,...

In this tutorial, we delve into building an advanced data analytics pipeline using , a lightning-fast DataFrame library designed for optimal performance and scalability. Our goal is to demonstrate how we can utilize Polars’ lazy evaluation, complex expressions, window functions, and SQL interface to process large-scale financial datasets efficiently....