Hlustaðu og lestu

Stígðu inn í heim af óteljandi sögum

  • Lestu og hlustaðu eins mikið og þú vilt
  • Þúsundir titla
  • Getur sagt upp hvenær sem er
  • Engin skuldbinding
Prófa frítt
is Device Banner Block 894x1036
Cover for XGBoost GPU Implementation and Optimization: The Complete Guide for Developers and Engineers

XGBoost GPU Implementation and Optimization: The Complete Guide for Developers and Engineers

Tungumál
enska
Snið
Bókaflokkur

Óskáldað efni

"XGBoost GPU Implementation and Optimization"

"XGBoost GPU Implementation and Optimization" is a comprehensive technical guide that explores the intersection of advanced machine learning and high-performance GPU computing. Beginning with the mathematical and algorithmic foundations of XGBoost, this book delves deep into topics such as gradient boosting theory, state-of-the-art regularization, sophisticated loss functions, sparsity management, and benchmark comparisons with leading libraries like CatBoost and LightGBM. Readers are provided with a robust understanding of the internal mechanics that distinguish XGBoost as a leading library in scalable, accurate machine learning solutions.

The book then transitions into the architecture, programming, and optimization of GPUs for XGBoost, covering the nuances of CUDA programming, GPU memory management, pipeline design, profiling techniques, and parallel computing paradigms. Through detailed algorithmic chapters, it guides practitioners in translating boosting methods to GPUs, optimizing data transfers, load balancing across multi-GPU systems, and accelerating inference. Core implementation details are thoroughly examined, including GPU-based histogram building, gradient aggregation, kernel fusion, and integration with XGBoost’s advanced scheduling and distributed capabilities.

Designed for data scientists, machine learning engineers, and system architects, this book finally addresses the challenges of hyperparameter optimization on GPUs, distributed and cloud deployments, and contemporary performance engineering approaches for low-latency and energy-efficient solutions. The text closes by mapping future directions—such as federated learning, green AI, AutoML integrations, and edge deployments—alongside case studies from industrial and scientific domains, making it an indispensable resource for professionals seeking to harness the full power of GPU-accelerated gradient boosting in real-world, large-scale environments.

© 2025 HiTeX Press (Rafbók): 6610000973262

Útgáfudagur

Rafbók: 24 juli 2025

Veldu áskrift

  • Yfir 900.000 hljóð- og rafbækur

  • Yfir 400 titlar frá Storytel Original

  • Barnvænt viðmót með Kids Mode

  • Vistaðu bækurnar fyrir ferðalögin

  • Hlustaðu og lestu á sama tíma

Vinsælast

Unlimited

Besti valkosturinn fyrir einn notanda

3290 kr /mánuði

  • Yfir 900.000 hljóð- og rafbækur

  • Engin skuldbinding

  • Getur sagt upp hvenær sem er

Prófaðu frítt

Family

Fyrir þau sem vilja deila sögum með fjölskyldu og vinum.

Byrjar á 3990 kr /mánuður

  • Yfir 900.000 hljóð- og rafbækur

  • ‎Engin skuldbinding

  • Getur sagt upp hvenær sem er

Þú + 1 fjölskyldumeðlimur2 aðgangar

3990 kr /mánuði

Prófaðu frítt