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Machine Learning in Production: From Models to Products
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  • Title: Machine Learning in Production: From Models to Products
  • Author(s) Christian Kastner
  • Publisher: The MIT Press (April 8, 2025); eBook (Creative Commons Licensed)
  • License(s): Creative Commons License (CC)
  • Paperback: 624 pages
  • eBook: HTML
  • Language: English
  • ISBN-10: 0262049724
  • ISBN-13: 978-0262049726
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Book Description

This book shows them how to assess it in the context of the business’s goals, reframe it to work optimally for both the data scientist and the employer, and then execute on it. it’s packed with real-world examples that take you from start to finish: from ask to actionable insight.

About the Authors
  • Christian Kästner is an Assistant Professor in the School of Computer Science at Carnegie Mellon University, Pittsburgh, PA, USA.
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