MENU

Fun & Interesting

Creating an ETL Data Pipeline on Google Cloud with Cloud Data Fusion & Airflow - Part 1

TechTrapture 57,056 lượt xem 1 year ago
Video Not Working? Fix It Now

Part 2 - https://youtu.be/kxV4_xDchCc
Source Code - https://github.com/vishal-bulbule/etl-pipeline-datafusion-airflow

Creating an ETL Data Pipeline on Google Cloud with Cloud Data Fusion & Airflow
Explore the magic of building an ETL pipeline in Google Cloud with this comprehensive tutorial. Learn how to craft a seamless process for extracting, transforming, and loading data into BigQuery, then visualize it effortlessly in Looker Studio.

Step 1: Begin by extracting dummy employee data using the Python Faker library, seamlessly storing it in a designated Google Cloud Storage (GCS) bucket.

Step 2: Dive into the creation of a Cloud Fusion instance, setting up the groundwork for your data pipeline journey.

Step 3: Unveil the magic of Data Fusion as you craft a robust pipeline. Witness the transformation of data while ensuring sensitive information remains masked, ultimately loading it into BigQuery for further analysis.

Step 4: Elevate your data visualization game as you harness the power of Looker Studio, bringing your insights to life in a visually compelling manner.

Join me on this illuminating journey through the intricacies of ETL pipelines, empowering you to master data orchestration and visualization in the Google Cloud ecosystem.

Playlist
Learn Google Cloud in 2025
https://youtube.com/playlist?list=PLLrA_pU9-Gz2OnBoICkewd9-Fc9Mi0nm7&si=8kkB3ct5wDHCMkoi

Data Engineering Hands-on Projects
https://www.youtube.com/playlist?list=PLLrA_pU9-Gz2DaQDcY5g9aYczmipBQ_Ek

Looking to get in touch?
Drop me a line at vishal.bulbule@techtrapture.com

Linkedin
https://www.linkedin.com/in/vishal-bulbule/

Medium Blog
https://medium.com/@VishalBulbule

Github
Source Code
https://github.com/vishal-bulbule

💬 Join Our WhatsApp Community for Discussions and Updates:
https://chat.whatsapp.com/I7omzvh5BZrILaBCPL8pPq

#googlecloud #gcp #airflow #dataengineeringessentials #dataengineering #bigquery #dataengineeringprojects

Comment