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Theory And Practice Of Quality Assurance For Machine Learning Systems An Experimentdriven Approach 2024th Edition Samuel Ackerman

  • SKU: BELL-63693164
Theory And Practice Of Quality Assurance For Machine Learning Systems An Experimentdriven Approach 2024th Edition Samuel Ackerman
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Theory And Practice Of Quality Assurance For Machine Learning Systems An Experimentdriven Approach 2024th Edition Samuel Ackerman instant download after payment.

Publisher: Springer
File Extension: PDF
File size: 9.15 MB
Pages: 194
Author: Samuel Ackerman, Guy Barash, Eitan Farchi, Orna Raz, Onn Shehory
ISBN: 9783031700071, 3031700074
Language: English
Year: 2024
Edition: 2024

Product desciption

Theory And Practice Of Quality Assurance For Machine Learning Systems An Experimentdriven Approach 2024th Edition Samuel Ackerman by Samuel Ackerman, Guy Barash, Eitan Farchi, Orna Raz, Onn Shehory 9783031700071, 3031700074 instant download after payment.

This book is a self-contained introduction to engineering and testing machine learning (ML) systems. It systematically discusses and teaches the art of crafting and developing software systems that include and surround machine learning models. Crafting ML based systems that are business-grade is highly challenging, as it requires statistical control throughout the complete system development life cycle. To this end, the book introduces an “experiment first” approach, stressing the need to define statistical experiments from the beginning of the development life cycle and presenting methods for careful quantification of business requirements and identification of key factors that impact business requirements. Applying these methods reduces the risk of failure of an ML development project and of the resultant, deployed ML system. The presentation is complemented by numerous best practices, case studies and practical as well as theoretical exercises and their solutions, designed to facilitate understanding of the ideas, concepts and methods introduced. The goal of this book is to empower scientists, engineers, and software developers with the knowledge and skills necessary to create robust and reliable ML software.

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