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Machine Learning System Design
book

Machine Learning System Design

by Arseny Kravchenko, Valerii Babushkin
February 2025
Intermediate to advanced
376 pages
12h 17m
English
Manning Publications
Content preview from Machine Learning System Design

11 Features and feature engineering

This chapter covers

  • The iterative process of feature engineering
  • Analyzing feature importance
  • Selecting appropriate features for your model
  • Pros and cons of feature stores

It is often said that a mediocre model with great features will outperform a great model with poor features. From our experience, this statement couldn’t be more true. Features are the critical inputs for your system; they drive your algorithms, provide essential patterns for the model, and feed the data it needs to learn and make predictions. Without good features, the model is blind, deaf, and dumb.

While the role of feature engineering is not crucial for a system designed with a deep learning core in mind, no machine learning ...

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Publisher Resources

ISBN: 9781633438750Publisher SupportOtherPublisher WebsitePurchase Link