
Auto-sklearn in Practice (eBook, ePUB)
The Complete Guide for Developers and Engineers
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"Auto-sklearn in Practice" Auto-sklearn in Practice is a comprehensive exploration of automated machine learning (AutoML) through the lens of one of the leading open-source Python frameworks. The book begins by grounding the reader in foundational AutoML concepts and the distinctive architecture of auto-sklearn, unraveling how this tool seamlessly fits into and elevates contemporary data science workflows. Its in-depth coverage encompasses essential aspects such as installation, key terminology, supported machine learning tasks, and environment best practices, establishing a strong technical b...
"Auto-sklearn in Practice"
Auto-sklearn in Practice is a comprehensive exploration of automated machine learning (AutoML) through the lens of one of the leading open-source Python frameworks. The book begins by grounding the reader in foundational AutoML concepts and the distinctive architecture of auto-sklearn, unraveling how this tool seamlessly fits into and elevates contemporary data science workflows. Its in-depth coverage encompasses essential aspects such as installation, key terminology, supported machine learning tasks, and environment best practices, establishing a strong technical baseline for practitioners and researchers alike.
Going far beyond surface-level usage, this volume meticulously details the underlying mechanisms that give auto-sklearn its power: adaptive pipeline search, Bayesian optimization, robust ensemble construction, and advanced meta-learning strategies. Readers will master the full lifecycle of automated machine learning-including automation of feature engineering, handling complex or large-scale datasets, resource-efficient parallelization, search space tuning, and incorporating custom or external algorithms. Each chapter highlights practical advice, from debugging preprocessing failures to tracking experiments and optimizing throughput and latency for production-scale deployments.
Crucially, the book addresses contemporary demands for model interpretability, explainability, and robust MLOps practices. It guides the reader through integrating feature importance analysis, applying model-agnostic explanation techniques, generating automated reports for compliance, and implementing secure, traceable, and scalable workflows in real-world environments. Auto-sklearn in Practice stands as both an authoritative reference and an actionable guide, advancing not only the technical mastery of automated machine learning, but also championing responsible and ethical adoption in diverse research and industry domains.
Auto-sklearn in Practice is a comprehensive exploration of automated machine learning (AutoML) through the lens of one of the leading open-source Python frameworks. The book begins by grounding the reader in foundational AutoML concepts and the distinctive architecture of auto-sklearn, unraveling how this tool seamlessly fits into and elevates contemporary data science workflows. Its in-depth coverage encompasses essential aspects such as installation, key terminology, supported machine learning tasks, and environment best practices, establishing a strong technical baseline for practitioners and researchers alike.
Going far beyond surface-level usage, this volume meticulously details the underlying mechanisms that give auto-sklearn its power: adaptive pipeline search, Bayesian optimization, robust ensemble construction, and advanced meta-learning strategies. Readers will master the full lifecycle of automated machine learning-including automation of feature engineering, handling complex or large-scale datasets, resource-efficient parallelization, search space tuning, and incorporating custom or external algorithms. Each chapter highlights practical advice, from debugging preprocessing failures to tracking experiments and optimizing throughput and latency for production-scale deployments.
Crucially, the book addresses contemporary demands for model interpretability, explainability, and robust MLOps practices. It guides the reader through integrating feature importance analysis, applying model-agnostic explanation techniques, generating automated reports for compliance, and implementing secure, traceable, and scalable workflows in real-world environments. Auto-sklearn in Practice stands as both an authoritative reference and an actionable guide, advancing not only the technical mastery of automated machine learning, but also championing responsible and ethical adoption in diverse research and industry domains.
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