Hören und Lesen

Tritt ein in eine Welt voller Geschichten

  • Mehr als 600.000 Hörbücher und E-Book
  • Jederzeit kündbar
  • Exklusive Titel und Originals
  • komfortabler Kinder-Modus
Abonniere jetzt
se-device-image-1200x1200
Cover for Pachyderm Workflows for Machine Learning: The Complete Guide for Developers and Engineers

Pachyderm Workflows for Machine Learning: The Complete Guide for Developers and Engineers

Sprachen
Englisch
Format
Kategorie

Sachbuch

"Pachyderm Workflows for Machine Learning"

"Pachyderm Workflows for Machine Learning" is a definitive guide to mastering data-centric pipelines and reproducible workflow orchestration using Pachyderm. The book systematically unpacks the platform’s foundational architecture, from its innovative data versioning and provenance models to the practical interplay with Kubernetes and container technologies. Readers are equipped with a deep technical understanding of system scaling, resiliency, and storage models critical for robust machine learning operations across on-premises, cloud, and hybrid infrastructures.

Delving into the intricacies of pipeline design, the book navigates through declarative specifications, multi-stage data transformations, and seamless integration with leading machine learning frameworks including TensorFlow, PyTorch, and Scikit-learn. Emphasis is placed on building resilient, automated, and reusable MLOps pipelines, alongside advanced strategies for resource optimization, governance, and collaborative artifact management. Real-world practices for system monitoring, upgrades, and disaster recovery are paired with expert insights on security, compliance, and policy enforcement for regulated environments.

With dedicated chapters on performance engineering, hyperparameter search, active learning, and productionizing research pipelines, this resource bridges the gap between ML science and scalable engineering. Readers will discover proven blueprints for automating end-to-end workflows, ensuring data integrity, and extending Pachyderm’s capabilities within the broader machine learning ecosystem. Whether you are an ML engineer, data scientist, or platform architect, this book provides actionable methodologies and forward-looking guidance to empower sustainable, traceable, and high-performance machine learning operations.

© 2025 HiTeX Press (E-Book): 6610000973903

Erscheinungsdatum

E-Book: 24. Juli 2025

Tags

    Wähle dein Abo-Modell

    • Über 600.000 Titel

    • Lade Titel herunter mit dem Offline Modus

    • Exklusive Titel und Storytel Originals

    • Sicher für Kinder (Kindermodus)

    • Einfach jederzeit kündbar

    Basic

    Für alle, die gelegentlich hören und lesen.

    8.90 € /Monat

    • Jederzeit kündbar

    • Abo-Upgrade jederzeit möglich

    Angebot jetzt aktivieren
    Am beliebtesten!

    Unlimited

    Für alle, die unbegrenzt hören und lesen möchten.

    18.90 € /Monat

    • Jederzeit kündbar

    • Wechsel zu Basic jederzeit möglich

    Angebot jetzt aktivieren