Learn how to leverage feature stores to make the most of your machine learning modelsKey Features: Understand the significance of feature stores in the ML life cycleDiscover how features can be shared, discovered, and re-usedLearn to make features available for online models during inferenceBook Description: Feature store is one of the storage layers in machine learning (ML) operations, where data scientists and ML engineers can store transformed and curated features for ML models.
Author(s): Jayanth Kumar M J
280 Pages
Computers + Internet, Computer Science
Description
Book Synopsis
Learn how to leverage feature stores to make the most of your machine learning models
Key Features:
Understand the significance of feature stores in the ML life cycle
Discover how features can be shared, discovered, and re-used
Learn to make features available for online models during inference
Book Description:
Feature store is one of the storage layers in machine learning (ML) operations, where data scientists and ML engineers can store transformed and curated features for ML models. This makes them available for model training, inference (batch and online), and reuse in other ML pipelines. Knowing how to utilize feature stores to their fullest potential can save you a lot of time and effort, and this book will teach you everything you need to know to get started.
Feature Store for Machine Learning is for data scientists who want to learn how to use feature stores to share and reuse each other's work and expertise. You'll be able to implement practices that help in eliminating reprocessing of data, providing model-reproducible capabilities, and reducing duplication of work, thus improving the time to production of the ML model. While this ML book offers some theoretical groundwork for developers who are just getting to grips with feature stores, there's plenty of practical know-how for those ready to put their knowledge to work. With a hands-on approach to implementation and associated methodologies, you'll get up and running in no time.
By the end of this book, you'll have understood why feature stores are essential and how to use them in your ML projects, both on your local system and on the cloud.
What You Will Learn:
Understand the significance of feature stores in a machine learning pipeline
Become well-versed with how to curate, store, share and discover features using feature stores
Explore the different components and capabilities of a feature store
Discover how to use feature stores with batch and online models
Accelerate your model life cycle and reduce costs
Deploy your first feature store for production use cases
Who this book is for:
If you have a solid grasp on machine learning basics, but need a comprehensive overview of feature stores to start using them, then this book is for you. Data/machine learning engineers and data scientists who build machine learning models for production systems in any domain, those supporting data engineers in productionizing ML models, and platform engineers who build data science (ML) platforms for the organization will also find plenty of practical advice in the later chapters of this book.
Dimensions (Overall): 9.25 Inches (H) x 7.5 Inches (W) x .59 Inches (D)
Weight: 1.07 Pounds
Suggested Age: 22 Years and Up
Number of Pages: 280
Genre: Computers + Internet
Sub-Genre: Computer Science
Publisher: Packt Publishing
Format: Paperback
Author: Jayanth Kumar M J
Language: English
Street Date: June 30, 2022
TCIN: 1011991193
UPC: 9781803230061
Item Number (DPCI): 247-23-2195
Origin: Made in the USA or Imported
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Shipping details
Estimated ship dimensions: 0.59 inches length x 7.5 inches width x 9.25 inches height
Estimated ship weight: 1.07 pounds
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