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Shipping Machine Learning Systems

Shipping Machine Learning Systems

Shipping Machine Learning Systems

A Practical Guide to Building, Deploying, and Scaling in Production
Mohamed El-Geish , Monta AI
Shabaz Patel , Best Buy
Anand Sampat , OpsPro AI
Hira Dangol , Bank of America
December 2025
Paperback
9781009124201

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£29.99
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Paperback

    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.

    • Breaks down each stage of the production ML development process
    • Provides side-by-side comparisons of various practical tools for ML
    • Shares proven recipes for practitioners at companies of all sizes

    Product details

    December 2025
    Paperback
    9781009124201
    463 pages
    229 × 152 mm
    Not yet published - available from December 2025

    Table of Contents

    • Preface
    • Introduction
    • Part I. Ready, Aim, Fire, Aim, Fire, ...:
    • 1. Planning
    • 2. Data
    • 3. Model development
    • 4. Model deployment and beyond
    • 5. Compute optimizations
    • Part II. Case Studies:
    • 6. Nauto: data and model management
    • 7. Kavak: ML serverless architecture for car sales
    • 8. Instacart: journey in building Griffin
    • 9. WhatsApp: enhancing ML operations for fraud and abuse detection model
    • 10. ShortlyAI: Your AI writing partner
    • References
    • Index.
      Authors
    • Mohamed El-Geish , Monta AI

      Mohamed El-Geish is CTO and Co-Founder of Monta AI. He has built machine learning systems used daily by millions worldwide. He led Amazon's Alexa Speaker Recognition and Cisco's Contact Center AI, co-founded Voicea (acquired by Cisco), contributed to products at LinkedIn and Microsoft, and co-authored 'Computing with Data' (2019).

    • Shabaz Patel , Best Buy

      Shabaz Patel is Associate Director of Applied AI at Best Buy, where he architects scalable ML systems powering search and discovery experiences for millions of users. Previously, at One Concern, he spearheaded innovations in AI-driven climate risk mitigation. Educated at Stanford and IIT, he specializes in scalable MLOps and impactful AI deployments and founded Datmo, an ML startup.

    • Anand Sampat , OpsPro AI

      Anand Sampat is CTO and Co-Founder of OpsPro AI. He is an ML Leader and serial entrepreneur. He previously co-founded Datmo (acquired by One Concern) and led ML Solutions for One Concern, led ML for New Products at PathAI, and led ML at SambaNova Systems.

    • In collaboration with
    • Hira Dangol , Bank of America