Machine Learning System Design

Machine Learning System Design

by Valerii Babuskhin and Arseny Kravchenko
Epub (Kobo), Epub (Adobe)
Publication Date: 25/02/2025

Share This eBook:

  $44.99

Get the big picture and the important details with this end-to-end guide for designing highly effective, reliable machine learning systems.


From information gathering to release and maintenance, Machine Learning System Design guides you step-by-step through every stage of the machine learning process. Inside, you’ll find a reliable framework for building, maintaining, and improving machine learning systems at any scale or complexity.


In Machine Learning System Design: With end-to-end examples you will learn:


• The big picture of machine learning system design

• Analyzing a problem space to identify the optimal ML solution

• Ace ML system design interviews

• Selecting appropriate metrics and evaluation criteria

• Prioritizing tasks at different stages of ML system design

• Solving dataset-related problems with data gathering, error analysis, and feature engineering

• Recognizing common pitfalls in ML system development

• Designing ML systems to be lean, maintainable, and extensible over time


Authors Valeri Babushkin and Arseny Kravchenko have filled this unique handbook with campfire stories and personal tips from their own extensive careers. You’ll learn directly from their experience as you consider every facet of a machine learning system, from requirements gathering and data sourcing to deployment and management of the finished system.


About the technology


Designing and delivering a machine learning system is an intricate multistep process that requires many skills and roles. Whether you’re an engineer adding machine learning to an existing application or designing a ML system from the ground up, you need to navigate massive datasets and streams, lock down testing and deployment requirements, and master the unique complexities of putting ML models into production. That’s where this book comes in.


About the book


Machine Learning System Design shows you how to design and deploy a machine learning project from start to finish. You’ll follow a step-by-step framework for designing, implementing, releasing, and maintaining ML systems. As you go, requirement checklists and real-world examples help you prepare to deliver and optimize your own ML systems. You’ll especially love the campfire stories and personal tips, and ML system design interview tips.


What's inside


• Metrics and evaluation criteria

• Solve common dataset problems

• Common pitfalls in ML system development

• ML system design interview tips


About the reader


For readers who know the basics of software engineering and machine learning. Examples in Python.


About the author


Valerii Babushkin is an accomplished data science leader with extensive experience. He currently serves as a Senior Principal at BP. Arseny Kravchenko is a seasoned ML engineer currently working as a Senior Staff Machine Learning Engineer at Instrumental.


Table of Contents


Part 1

1 Essentials of machine learning system design

2 Is there a problem?

3 Preliminary research

4 Design document

Part 2

5 Loss functions and metrics

6 Gathering datasets

7 Validation schemas

8 Baseline solution

Part 3

9 Error analysis

10 Training pipelines

11 Features and feature engineering

12 Measuring and reporting results

Part 4

13 Integration

14 Monitoring and reliability

15 Serving and inference optimization

16 Ownership and maintenance

ISBN:
9781638357285
9781638357285
Category:
Database design & theory
Format:
Epub (Kobo), Epub (Adobe)
Publication Date:
25-02-2025
Language:
English
Publisher:
Manning

This item is delivered digitally

Reviews

Be the first to review Machine Learning System Design.