
LightGBM Techniques and Applications (eBook, ePUB)
The Complete Guide for Developers and Engineers
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"LightGBM Techniques and Applications" "LightGBM Techniques and Applications" offers a comprehensive and authoritative exploration of one of the most impactful gradient boosting libraries in modern machine learning. The book opens with a rigorous examination of LightGBM's theoretical underpinnings and architectural design, delving into its core algorithms, histogram-based learning, memory optimizations, and cross-platform deployment methodologies. Readers are guided through both the foundational concepts and the advanced system integrations, providing a clear understanding of LightGBM's functi...
"LightGBM Techniques and Applications"
"LightGBM Techniques and Applications" offers a comprehensive and authoritative exploration of one of the most impactful gradient boosting libraries in modern machine learning. The book opens with a rigorous examination of LightGBM's theoretical underpinnings and architectural design, delving into its core algorithms, histogram-based learning, memory optimizations, and cross-platform deployment methodologies. Readers are guided through both the foundational concepts and the advanced system integrations, providing a clear understanding of LightGBM's functionality from the bottom up.
Building on this foundation, the book presents a wealth of practical insights into algorithmic enhancements, data engineering, and robust model optimization strategies. It details advanced customization options such as Exclusive Feature Bundling (EFB), Gradient-based One-Side Sampling (GOSS), and native processing for categorical features, alongside state-of-the-art hyperparameter tuning, feature optimization, and interpretability frameworks. Extensive attention is given to distributed training architectures, deployment patterns, and monitoring pipelines, ensuring that practitioners are well-equipped for scalable real-world applications.
Rounding out its coverage, the book features diverse case studies in fields such as finance, bioinformatics, IoT, and time series forecasting, illustrating LightGBM's versatility across domains. Additionally, it empowers advanced users with guidance for source code contributions, algorithmic extensions, and integration with emerging ML workflows. "LightGBM Techniques and Applications" is an indispensable resource for data scientists, engineers, and researchers seeking to master both the practical and conceptual facets of modern gradient boosting at scale.
"LightGBM Techniques and Applications" offers a comprehensive and authoritative exploration of one of the most impactful gradient boosting libraries in modern machine learning. The book opens with a rigorous examination of LightGBM's theoretical underpinnings and architectural design, delving into its core algorithms, histogram-based learning, memory optimizations, and cross-platform deployment methodologies. Readers are guided through both the foundational concepts and the advanced system integrations, providing a clear understanding of LightGBM's functionality from the bottom up.
Building on this foundation, the book presents a wealth of practical insights into algorithmic enhancements, data engineering, and robust model optimization strategies. It details advanced customization options such as Exclusive Feature Bundling (EFB), Gradient-based One-Side Sampling (GOSS), and native processing for categorical features, alongside state-of-the-art hyperparameter tuning, feature optimization, and interpretability frameworks. Extensive attention is given to distributed training architectures, deployment patterns, and monitoring pipelines, ensuring that practitioners are well-equipped for scalable real-world applications.
Rounding out its coverage, the book features diverse case studies in fields such as finance, bioinformatics, IoT, and time series forecasting, illustrating LightGBM's versatility across domains. Additionally, it empowers advanced users with guidance for source code contributions, algorithmic extensions, and integration with emerging ML workflows. "LightGBM Techniques and Applications" is an indispensable resource for data scientists, engineers, and researchers seeking to master both the practical and conceptual facets of modern gradient boosting at scale.
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