|    Login    |    Register

Machine Learning in Production: From Models to Products

(Hardback)


Publishing Details

Full Title:

Machine Learning in Production: From Models to Products

Contributors:

By (Author) Christian Kastner

ISBN:

9780262049726

Publisher:

MIT Press Ltd

Imprint:

MIT Press

Publication Date:

6th May 2025

Country:

United States

Classifications

Readership:

General

Fiction/Non-fiction:

Non Fiction

Dewey:

005.1

Physical Properties

Physical Format:

Hardback

Number of Pages:

624

Dimensions:

Width 178mm, Height 229mm

Description

A practical and innovative textbook detailing how to build real-world software products with machine learning components, not just models. A practical and innovative textbook detailing how to build real-world software products with machine learning components, not just models. Traditional machine learning texts focus on how to train and evaluate the machine learning model, while MLOps books focus on how to streamline model development and deployment. But neither focus on how to build actual products that deliver value to users. This practical textbook, by contrast, details how to responsibly build products with machine learning components, covering the entire development lifecycle from requirements and design to quality assurance and operations. Machine Learning in Production brings an engineering mindset to the challenge of building systems that are usable, reliable, scalable, and safe within the context of real-world conditions of uncertainty, incomplete information, and resource constraints. Based on the author's popular class at Carnegie Mellon, this pioneering book integrates foundational knowledge in software engineering and machine learning to provide the holistic view needed to create not only prototype models but production-ready systems. . Integrates coverage of cutting-edge research, existing tools, and real-world applications . Provides students and professionals with an engineering view for production-ready machine learning systems . Proven in the classroom . Offers supplemental resources including slides, videos, exams, and further readings

Author Bio

Christian K stner is associate professor of computer science at Carnegie Mellon University.

See all

Other titles from MIT Press Ltd