Hoppa till huvudinnehåll
HemGoogle Cloud

course

Introduction to Data Engineering on Google Cloud

GrundläggandeFärdighetsnivå
Uppdaterad 2026-05
Learn the data engineering role on Google Cloud. Explore data sources, storage solutions, ETL/ELT architectures, BigQuery, Dataform, and Dataproc.
Börja Kursen Gratis
Google CloudCloud
3 tim 41 min
42 videos
80 exercises
4,350 XP
Uttalande om prestation

Skapa ditt gratiskonto

Fortsätt Med GoogleVisa fler alternativ

eller


Genom att fortsätta accepterar du våra Användarvillkor, vår Integritetspolicy och att dina uppgifter lagras i USA.

Älskad av elever på tusentals företag

Group

Training a Team?

Try for Business

Kursbeskrivning

This course introduces the data engineering role on Google Cloud. You'll learn about data sources, sinks, formats, and storage solutions, then explore replication, migration, and ETL/ELT architectures using BigQuery, Dataform, Dataproc, and Cloud Composer. The course includes hands-on labs with Datastream, BigLake, and Serverless Spark.

Förkunskapskrav

Det finns inga förkunskapskrav för den här kursen
1

Course Introduction

This section welcomes you to the Introduction to Data Engineering on Google Cloud course, and provides an overview of the course structure and goals.
Starta Kapitel
2

Data Engineering Tasks and Components

This module provides an introduction to the role of a data engineer. It covers key concepts such as data sources and sinks, data formats, storage options on Google Cloud, metadata management, and the use of Analytics Hub for data sharing within and outside an organization.
Starta Kapitel
3

Data Replication and Migration

This module provides an overview of data replication and migration on Google Cloud. It covers the basic architecture, the 'gcloud' command-line tool, Storage Transfer Service, Transfer Appliance, and Datastream, along with their functionalities and use cases.
Starta Kapitel
4

The Extract and Load Data Pipeline Pattern

This module focuses on data extraction and loading processes on Google Cloud, particularly with BigQuery. It covers the basic extraction and loading architecture, the bq command-line tool, BigQuery Data Transfer Service, and BigLake as an alternative to traditional extract-load patterns.
Starta Kapitel
5

The Extract, Load, and Transform Data Pipeline Pattern

This module provides an overview of ELT (extract, load, transform) processes on Google Cloud. It covers the basic ELT architecture, a common ELT pipeline example, BigQuery's capabilities for scripting and scheduling SQL, and the functionality and use cases of Dataform.
Starta Kapitel
7

Automation Techniques

This module focuses on automation patterns and options for pipelines on Google Cloud. It covers various tools and services like Cloud Scheduler, Workflows, Cloud Composer, Cloud Run functions, and Eventarc, along with their functionalities and use cases for automation.
Starta Kapitel
8

Course Summary

In this final section, we review what was presented in this course and discuss the next steps to continue your cloud learning journey.
Starta Kapitel
Introduction to Data Engineering on Google Cloud
Kursen
är

Få ett prestationsutlåtande

Lägg till denna inloggningsuppgifter i din LinkedIn-profil, ditt CV eller ditt CV
Dela det på sociala medier och i ditt prestationssamtal
Registrera Dig Nu

Gå med över 19 miljoner elever och börja Introduction to Data Engineering on Google Cloud idag!

Skapa ditt gratiskonto

Fortsätt Med GoogleVisa fler alternativ

eller


Genom att fortsätta accepterar du våra Användarvillkor, vår Integritetspolicy och att dina uppgifter lagras i USA.

Utveckla dina datakunskaper med DataCamp för mobilen

Gör framsteg när du är på språng med våra mobila kurser och dagliga 5-minuters kodningsutmaningar.