Loe ja kuula

Astu lugude lõputusse maailma

  • Proovi tasuta
  • Loe ja kuula nii palju, kui soovid
  • Suurim valik eestikeelseid raamatuid
  • Kokku üle 700 000 raamatu 4 keeles
Proovi tasuta
Device Banner Block-copy 894x1036
Cover for Ray Tune for Scalable Hyperparameter Optimization: The Complete Guide for Developers and Engineers

Ray Tune for Scalable Hyperparameter Optimization: The Complete Guide for Developers and Engineers

Keel
inglise
Vorming
Kategooria

Teadmiskirjandus

"Ray Tune for Scalable Hyperparameter Optimization"

"Ray Tune for Scalable Hyperparameter Optimization" provides a comprehensive guide to mastering the complexities of hyperparameter tuning in modern machine learning workflows. The book begins by establishing a rigorous foundation in large-scale hyperparameter optimization, delving into both the mathematical essentials and the real-world demands for scalability and efficiency. Readers gain a nuanced understanding of search space explosion, resource management, and the advanced metrics crucial for evaluating and driving effective and efficient optimization at scale.

The book then gives an authoritative treatment of Ray Tune’s architecture and API, offering both conceptual overviews and hands-on best practices. It details design abstractions, experiment lifecycles, robust checkpointing, fault tolerance, and plugin interfaces, empowering practitioners to extend and adapt Ray Tune to fit unique research or industry needs. Through in-depth discussions of parameter space definitions, customized scheduling algorithms, sampling strategies, and advanced resource scheduling, the text illustrates how professionals can unlock sophisticated, distributed hyperparameter search pipelines on local clusters, cloud platforms, and Kubernetes.

Culminating in practical applications, the book addresses large-scale deep learning, AutoML, and reproducibility, while also tackling operational concerns such as cluster security, monitoring, and cost optimization. Readers are guided through diagnostics, visualization, and experiment analysis, as well as advanced topics like federated tuning and neural architecture search. By combining real-world case studies, emergent best practices, and future research avenues, this book is an essential resource for data scientists, ML engineers, and researchers seeking to accelerate and industrialize their hyperparameter optimization efforts with Ray Tune.

© 2025 HiTeX Press (E-raamat): 6610000974054

Väljaandmise kuupäev

E-raamat: 24. juuli 2025

Sildid

    Vali pakett

    • Kokku üle 700 000 raamatu 4 keeles

    • Suur valik eestikeelseid raamatuid

    • Uusi raamatuid iga nädal

    • Kids Mode lastesõbralik keskkond

    Populaarne

    Unlimited

    14.99 € /kuus

    • Tühista igal ajal

    Proovi kohe

    Unlimited (aastane)

    119.99 € /aasta

    • Säästa 33%

    Proovi kohe