Data Engineering Beginner

Building ETL and Data Pipelines with Bash, Airflow and Kafka

Building ETL and Data Pipelines with Bash, Airflow and Kafka

4.5
(2 reviews)
3
Students
4
Lessons
ID
Language
R
Created by Ricardo R. Trujeque
5 weeks
Self-paced
Start anytime
Instructor-paced
Scheduled classes
Earn your credentials
Receive a certificate or badge
Language
id
Translations
None
Transcripts
English
Prerequisites
None

What you'll learn

Master these skills and apply them to real-world projects.

Describe and differntiate between Extract, Transform, Load (ETL) and Extract, Load, Transform (ELT) processes
Define data pipeline components, processes, tools and technologies
Create ETL processes using Bash shell scripts
Develop batch data pipelines using Apache Airflow
Create streaming data pipelines using Apache Kafka

Course curriculum

2 sections · 4 lessons

2 Sections
4 Lessons
2 Reviews
3 Students
4.5 Rating
Materi 1.1: Voluptatem rerum in maiores eos.
Materi 1.2: Voluptates sapiente hic et eum quia.
Materi 2.1: Natus enim sed.
Materi 2.2: Aut sed ad.

About this course

Course description

Meet your instructors

Learn from industry experts

R

Ricardo R. Trujeque

K

Kengo Kuma

Student reviews

What learners say about this course

4.5
Based on 2 reviews
5
50% (1)
4
50% (1)
3
0% (0)
2
0% (0)
1
0% (0)
S
Syahrini Kania Fujiati
1 bulan yang lalu

"At aut ab minima natus aut in molestias vel sint minus qui."

N
Nadine Wulandari
2 minggu yang lalu

"Possimus voluptatem corrupti dolor similique et consequatur facilis eligendi eaque odio ullam suscipit."

Start learning today

Ready to start learning Building ETL and Data Pipelines with Bash, Airflow and Kafka?

Join 3+ students already enrolled.

Free
30-day guarantee
Lifetime access
Free course access

The benefits of Coursify courses

Pay less, earn more

Programs dig deeper into your chosen subject and are offered at a special price.

Earn certificates

When you're done, you'll have multiple certificates to add to your resume.

Learn 100% online

Learn on your own schedule from anywhere in the world.