As data science continues to evolve, the ever-growing size of datasets poses significant computational challenges. Traditional CPU-based processing often struggles to keep pace with the demands of data science workflows. Accelerated computing with GPUs offers a solution by enabling massive parallelism and significantly reducing processing times for data-heavy tasks. In this session, we will explore GPU computing architecture, how it differs from CPUs, and why it is particularly well-suited for data science workloads. This hands-on lab will dive into the different approaches to GPU programming, from low-level CUDA coding to high-level Python libraries within RAPIDS such as, CuPy, cuDF, cuGraph, and cuML.
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Kevin Lee
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