Be Our Guest
Interested in being a guest on The Data Flowcast? Fill out the form and we will be in touch.
The future of data engineering lies in seamless orchestration and automation. In this episode, Arjun Anandkumar, Data Engineer at Telia, shares how his team uses Airflow to drive analytics and AI workflows. He highlights the challenges of scaling data platforms and how adopting best practices can simplify complex processes for teams across the organization. Arjun also discusses the transformative role of tools like Cosmos and Terraform in enhancing efficiency and collaboration.
Key Takeaways:
(02:16) Telia operates across the Nordics and Baltics, focusing on telecom and energy services.
(03:45) Airflow runs dbt models seamlessly with Cosmos on AWS MWAA.
(05:47) Cosmos improves visibility and orchestration in Airflow.
(07:00) Medallion Architecture organizes data into bronze, silver and gold layers.
(08:34) Task group challenges highlight the need for adaptable workflows.
(15:04) Scaling managed services requires trial, error and tailored tweaks.
(19:46) Terraform scales infrastructure, while YAML templates manage DAGs efficiently.
(20:00) Templated DAGs and robust testing enhance platform management.
(24:15) Open-source resources drive innovation in Airflow practices.
Resources Mentioned:
Medallion Architecture by Databricks
Thanks for listening to “The Data Flowcast: Mastering Airflow for Data Engineering & AI.” If you enjoyed this episode, please leave a 5-star review to help get the word out about the show. And be sure to subscribe so you never miss any of the insightful conversations.
Interested in being a guest on The Data Flowcast? Fill out the form and we will be in touch.
By proceeding you agree to our Privacy Policy,
our Website Terms and to receive emails from Astronomer.