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50x Pandas Speed up with Nvidia GPU!!!
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RAPIDS is an open-source suite of GPU-accelerated Python libraries designed to improve data science and analytics pipelines. RAPIDS cuDF is a GPU DataFrame library that provides a pandas-like API for loading, filtering, and manipulating data. In earlier releases of cuDF, it was meant for GPU-only development workflows.
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