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Data Engineering with Google Cloud Platform

You're reading from   Data Engineering with Google Cloud Platform A practical guide to operationalizing scalable data analytics systems on GCP

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Product type Paperback
Published in Mar 2022
Publisher Packt
ISBN-13 9781800561328
Length 440 pages
Edition 1st Edition
Languages
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Author (1):
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Adi Wijaya Adi Wijaya
Author Profile Icon Adi Wijaya
Adi Wijaya
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Table of Contents (17) Chapters Close

Preface 1. Section 1: Getting Started with Data Engineering with GCP
2. Chapter 1: Fundamentals of Data Engineering FREE CHAPTER 3. Chapter 2: Big Data Capabilities on GCP 4. Section 2: Building Solutions with GCP Components
5. Chapter 3: Building a Data Warehouse in BigQuery 6. Chapter 4: Building Orchestration 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 for Making Data-Driven Decisions with Data Studio 10. Chapter 8: Building Machine Learning Solutions on Google Cloud Platform 11. Section 3: Key Strategies for Architecting Top-Notch Data Pipelines
12. Chapter 9: User and Project Management in GCP 13. Chapter 10: Cost Strategy in GCP 14. Chapter 11: CI/CD on Google Cloud Platform for Data Engineers 15. Chapter 12: Boosting Your Confidence as a Data Engineer 16. Other Books You May Enjoy

A quick look at machine learning

First, let's understand what ML is from a Data engineering perspective. ML is a data process that uses data as input. The output of the process is a generalized formula for one specific objective. 

For better illustration, let's imagine some of the real-world use cases that use ML. The first example is a recommendation system from an e-commerce platform. This eCommerce platform may use ML to use the customer's purchase history as input data. This data can be processed to calculate how likely each customer will purchase other items in the future. Another example is a cancer predictor that uses X-ray images from the health industry. A collection of X-ray images with cancer and without cancer can be used as input data and be used to predict unidentified X-ray images.

I believe you've heard about those kinds of ML use cases and many other real-world use cases. For data engineers, it's important to notice that ML is not...

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