
Optuna for Efficient Hyperparameter Optimization (eBook, ePUB)
The Complete Guide for Developers and Engineers
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"Optuna for Efficient Hyperparameter Optimization" "Optuna for Efficient Hyperparameter Optimization" is an authoritative guide dedicated to the science and practice of hyperparameter optimization, with a special focus on the Optuna framework. The book opens by examining foundational principles, elucidating how hyperparameters impact model performance across algorithms and how the careful structuring of search spaces and objective functions drives superior results. Readers are introduced to both established and cutting-edge methods, from grid and random search to sophisticated Bayesian and aut...
"Optuna for Efficient Hyperparameter Optimization" "Optuna for Efficient Hyperparameter Optimization" is an authoritative guide dedicated to the science and practice of hyperparameter optimization, with a special focus on the Optuna framework. The book opens by examining foundational principles, elucidating how hyperparameters impact model performance across algorithms and how the careful structuring of search spaces and objective functions drives superior results. Readers are introduced to both established and cutting-edge methods, from grid and random search to sophisticated Bayesian and automated approaches, all while considering reproducibility, efficiency, and scalability as central concerns in modern machine learning experimentation. Delving into Optuna's robust architecture, the book unveils the key design philosophies, core concepts, and internal mechanics that set it apart. Detailed explorations cover the lifecycle of studies and trials, the modular sampler and pruner interfaces, and distributed execution across HPC and cloud environments. Advanced techniques for search space engineering, custom sampler and pruner development, and dynamic adaptation are presented, equipping practitioners with best practices and warnings against common anti-patterns in high-dimensional and complex optimization scenarios. Bridging theory with real-world application, the text features a wealth of case studies, demonstrating Optuna's effectiveness from tabular data and deep learning to time series, NLP, and computer vision. Dedicated chapters address smooth integration with leading machine learning ecosystems, including scikit-learn, PyTorch, TensorFlow, and enterprise-level orchestration tools. The book concludes with forward-looking insights into customization, visualization, explainability, and emerging research, positioning readers to leverage Optuna for both current challenges and the rapidly evolving frontiers of hyperparameter optimization.
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