Designing Machine Learning Systems: An Iterative Process for Production-Ready Applications
 
Product details:

ISBN13:9781098107963
ISBN10:1098107969
Binding:Paperback
No. of pages:350 pages
Size:233x180x19 mm
Weight:670 g
Language:English
589
Category:

Designing Machine Learning Systems

An Iterative Process for Production-Ready Applications
 
Edition number: 1
Publisher: O?Reilly
Date of Publication:
Number of Volumes: Print PDF
 
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Long description:

Machine learning systems are both complex and unique. Complex because they consist of many different components and involve many different stakeholders. Unique because they're data dependent, with data varying wildly from one use case to the next. In this book, you'll learn a holistic approach to designing ML systems that are reliable, scalable, maintainable, and adaptive to changing environments and business requirements.

Author Chip Huyen, co-founder of Claypot AI, considers each design decision--such as how to process and create training data, which features to use, how often to retrain models, and what to monitor--in the context of how it can help your system as a whole achieve its objectives. The iterative framework in this book uses actual case studies backed by ample references.

This book will help you tackle scenarios such as:

  • Engineering data and choosing the right metrics to solve a business problem
  • Automating the process for continually developing, evaluating, deploying, and updating models
  • Developing a monitoring system to quickly detect and address issues your models might encounter in production
  • Architecting an ML platform that serves across use cases
  • Developing responsible ML systems