Kursus
Introduction to Data Engineering on Google Cloud
DasarTingkat Keterampilan
Diperbarui 05/2026
Google CloudCloud3 jam 41 min42 videos80 Latihan4,350 XPBukti Prestasi
Buat Akun Gratis Anda
Lanjutkan Dengan GoogleTampilkan opsi lainnyaatau
Dengan melanjutkan, Anda menerima Ketentuan Penggunaan kami, Kebijakan Privasi kami dan bahwa data Anda disimpan di Amerika Serikat.
Dipercaya oleh para pelajar di ribuan perusahaan
Training a Team?
Try for BusinessDeskripsi Kursus
Persyaratan
Tidak ada persyaratan untuk kursus ini1
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.
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.
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.
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.
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.
6
The Extract, Transform, and Load Data Pipeline Pattern
This module provides an overview of ETL (extract, transform, load) processes on Google Cloud. It covers the basic ETL architecture, GUI tools, batch and streaming data processing options (Dataproc, Dataproc Serverless), and the role of Bigtable in data pipelines.
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.
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.
Introduction to Data Engineering on Google Cloud
Kursus Selesai
Memperoleh Surat Keterangan Prestasi
Tambahkan kredensial ini ke profil LinkedIn, resume, atau CV AndaBagikan di media sosial dan dalam penilaian kinerja AndaDaftar Sekarang
Bergabung dengan 19 juta pelajar dan mulai Introduction to Data Engineering on Google Cloud Hari Ini!
Buat Akun Gratis Anda
Lanjutkan Dengan GoogleTampilkan opsi lainnyaatau
Dengan melanjutkan, Anda menerima Ketentuan Penggunaan kami, Kebijakan Privasi kami dan bahwa data Anda disimpan di Amerika Serikat.
Kembangkan keterampilan data Anda dengan DataCamp untuk Mobile
Buat kemajuan di mana saja dengan kursus mobile kami dan tantangan coding harian 5 menit.