Reliable Machine Learning: Applying SRE Principles to ML in Production

Reliable Machine Learning: Applying SRE Principles to ML in Production

Cathy Chen , Niall Murphy , Kranti Parisa
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Oct 25, 2022 · Anglais · Broché (408 pages)
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Détails du livre

Format Broché
Pages 408
Langue Anglais
Publié Oct 25, 2022
Éditeur O'Reilly Media
Édition 1
ISBN-10 1098106229
ISBN-13 9781098106225

Description

This book delves into the intersection of machine learning and site reliability engineering, providing a comprehensive guide for practitioners looking to enhance the operational stability of ML applications in production. The authors bring together their extensive experience to address common challenges faced by teams deploying machine learning systems, emphasizing the need for reliability alongside innovation.

Readers are introduced to practical methodologies that apply SRE principles to the unique demands of machine learning. The book explores crucial topics such as monitoring, performance tuning, and incident management, offering strategies for maintaining system integrity while scaling. Through real-world examples and actionable insights, it equips professionals with the tools needed to create robust machine learning infrastructures.

As the field of machine learning continues to evolve, the authors highlight the importance of collaboration between data scientists and operations teams. This collaboration is essential for ensuring that ML models not only perform well in controlled environments but also function optimally once deployed, ultimately driving success in production settings.

Genres

Science & Technologie Affaires & Économie

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