Welcome to LightGBM’s documentation! — LightGBM 4.6.0 documentation
Explore LightGBM’s official documentation for guides, tutorials, and API references on this fast, distributed gradient boosting framework for machine learning.
This website is the official documentation hub for LightGBM, a popular machine learning framework focused on gradient boosting with decision trees. Here, you can find everything you need to get started, including installation guides, quick start tutorials, and detailed explanations of features and parameters.
Whether you’re a beginner looking to try LightGBM in Python or R, or an advanced user interested in distributed learning and GPU support, the site offers clear, well-organized resources. You’ll also find API references, tips for parameter tuning, and answers to frequently asked questions, making it easy to get the most out of LightGBM for your machine learning projects.
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