ashishpatel26/Rapidsai_Machine_learning_on_GPU
Rapidsai_Machine_learnring_on_GPU
This project helps data scientists and machine learning engineers accelerate their data processing and machine learning models. By leveraging NVIDIA GPUs, it takes large datasets and complex computations, traditionally handled by CPUs, and outputs results much faster. It's ideal for anyone building and deploying machine learning solutions who needs to process data at scale.
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Use this if you are a data scientist or machine learning engineer struggling with long processing times for large datasets or complex models on CPU-only systems.
Not ideal if you don't have access to NVIDIA GPUs or if your datasets are small enough that CPU processing is already sufficiently fast.
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Last pushed
Jun 10, 2021
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