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cuml 25.04.00 documentation

  • Introduction
  • API Reference
  • User Guide
  • cuml.accel: Zero Code Change Acceleration for Scikit-Learn, UMAP and HDBSCAN
  • Blogs and other references
  • GitHub
  • Twitter
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stable (25.04)
nightly (25.06)stable (25.04)legacy (25.02)
  • Introduction
  • API Reference
  • User Guide
  • cuml.accel: Zero Code Change Acceleration for Scikit-Learn, UMAP and HDBSCAN
  • Blogs and other references
  • GitHub
  • Twitter

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  • Blogs and other references

Blogs and other references#

The RAPIDS team blogs at https://medium.com/rapids-ai, and many of these blog posts provide deeper dives into models or key features from cuML. Here, we’ve selected just a few that are of particular interest to cuML users:

Integrations, applications, and general concepts#

  • RAPIDS Configurable Input and Output Types

  • RAPIDS on AWS Sagemaker

Tree and forest models#

  • Accelerating Random Forests up to 45x using cuML

  • RAPIDS Forest Inference Library: Prediction at 100 million rows per second

  • Sparse Forests with FIL

Other popular models#

  • Accelerating TSNE with GPUs: From hours to seconds

  • Combining Speed and Scale to Accelerate K-Means in RAPIDS cuML

  • Accelerating k-nearest neighbors 600x using RAPIDS cuML

Academic Papers#

  • Machine Learning in Python: Main developments and technology trends in data science, machine learning, and artificial intelligence (Sebastian Raschka, Joshua Patterson, Corey Nolet)

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cuml.accel: Zero-Code Change Acceleration with NVIDIA GPUs.

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