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Data Engineering with Google Cloud Platform - Second Edition

You're reading from  Data Engineering with Google Cloud Platform - Second Edition

Product type Book
Published in Apr 2024
Publisher Packt
ISBN-13 9781835080115
Pages 476 pages
Edition 2nd Edition
Languages
Author (1):
Adi Wijaya Adi Wijaya
Profile icon Adi Wijaya

Table of Contents (19) Chapters

Preface 1. Part 1: Getting Started with Data Engineering with GCP
2. Chapter 1: Fundamentals of Data Engineering 3. Chapter 2: Big Data Capabilities on GCP 4. Part 2: Build Solutions with GCP Components
5. Chapter 3: Building a Data Warehouse in BigQuery 6. Chapter 4: Building Workflows for Batch Data Loading Using Cloud Composer 7. Chapter 5: Building a Data Lake Using Dataproc 8. Chapter 6: Processing Streaming Data with Pub/Sub and Dataflow 9. Chapter 7: Visualizing Data to Make Data-Driven Decisions with Looker Studio 10. Chapter 8: Building Machine Learning Solutions on GCP 11. Part 3: Key Strategies for Architecting Top-Notch Solutions
12. Chapter 9: User and Project Management in GCP 13. Chapter 10: Data Governance in GCP 14. Chapter 11: Cost Strategy in GCP 15. Chapter 12: CI/CD on GCP for Data Engineers 16. Chapter 13: Boosting Your Confidence as a Data Engineer 17. Index 18. Other Books You May Enjoy

Exercise – using GCP in AutoML to train an ML model

As we learned earlier in this chapter, AutoML is an automated way for you to build an ML model. It will handle model selection, hyperparameter tuning, and various data preparation steps.

Note that for the data preparation part, it will not be smart enough to transform data from very raw tables, aggregate based on business context, and automatically clean all data to create features. Those activities are still the responsibilities of data engineers and data scientists.

What AutoML will do, however, is perform simple data preparation tasks, such as detecting numeric, binary, categorical, and text features, and then apply the required transformation to be used in the ML training process. Let’s learn how to do this. Here are the steps that you will complete in this exercise:

  1. Create a Vertex AI dataset.
  2. Train the ML model using AutoML.
  3. Choose the compute and budget for AutoML.

For the use case...

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