Skip to main content Accessibility help
×
  • Coming soon
Publisher:
Cambridge University Press
Expected online publication date:
December 2025
Print publication year:
2025
Online ISBN:
9781009127356

Book description

This book bridges the gap between theoretical machine learning (ML) and its practical application in industry. It serves as a handbook for shipping production-grade ML systems, addressing challenges often overlooked in academic texts. Drawing on their experience at several major corporations and startups, the authors focus on real-world scenarios, guiding practitioners through the ML lifecycle, from planning and data management to model deployment and optimization. They highlight common pitfalls and offer interview-based case studies from companies that illustrate diverse industrial applications and their unique challenges. Multiple pathways through the book allow readers to choose which stage of the ML development process to focus on, as well as the learning strategy ('crawl,' 'walk,' or 'run') that best suits the needs of their project or team.

Reviews

‘This book by Mohamed El-Geish, Shabaz Patel, and Anand Sampat is an invaluable reference for engineers and managers building best-in-class ML and AI systems. It provides practical guidance on essential considerations, methods, and tools, enabling teams to confidently navigate the complexities of real-world AI development and deployment.’

Hassan Sawaf - aiXplain

‘Shipping Machine Learning Systems is the rare book that goes beyond algorithms to show what it really takes to build production ML systems. It combines clear explanations with honest discussions of trade-offs at every stage, grounded in real examples from industry leaders like Instacart and WhatsApp. An essential guide for anyone serious about shipping robust ML products.’

Riham Selim - Meta

‘There is a significant difference between developing a machine learning system in a controlled lab environment and deploying it in production to serve real users. This book bridges that critical gap with clarity and depth. It is an invaluable resource for machine learning practitioners and application developers seeking to bring cutting-edge ML systems into the real world - reliably, safely, and at scale.’

Emad Elwany - AI Technology Executive

‘Shipping machine learning systems is where theory meets the real world, and this book delivers the practical guidance every engineer needs to succeed. It covers the unglamorous but essential work of deploying, monitoring, and scaling models in production. Having built AI systems at Kolena, I found the lessons here refreshingly real and immediately useful. This is the book I would hand any team building serious ML products.’

Mohamed Elgendy - Kolena

Metrics

Full text views

Total number of HTML views: 0
Total number of PDF views: 0 *
Loading metrics...

Book summary page views

Total views: 0 *
Loading metrics...

* Views captured on Cambridge Core between #date#. This data will be updated every 24 hours.

Usage data cannot currently be displayed.

Accessibility standard: Unknown

Accessibility compliance for the PDF of this book is currently unknown and may be updated in the future.