Astronomer's the Dataflow Cast

Building a Unified Data Platform at Pattern with William Graham

The orchestration of data workflows at scale requires both flexibility and security. At Pattern, decoupling scheduling from orchestration has reshaped how data teams manage large-scale pipelines.

In this episode, we are joined by William Graham, Senior Data Engineer at Pattern, who explains how his team leverages Apache Airflow alongside their open-source tool Heimdall to streamline scheduling, orchestration and access management.

 

Key Takeaways:

00:00 Introduction.

02:44 Structure of Pattern’s data teams across acquisition, engineering and platform.

04:27 How Airflow became the central scheduler for batch jobs.

08:57 Credential management challenges that led to decoupling scheduling and orchestration.

12:21 Heimdall simplifies multi-application access through a unified interface.

13:15 Standardized operators in Airflow using Heimdall integration.

17:13 Open-source contributions and early adoption of Heimdall within Pattern.

21:01 Community support for Airflow and satisfaction with scheduling flexibility.

 

Resources Mentioned:

Pattern website

Apache Airflow

Heimdall on GitHub

Netflix Genie


Thanks for listening to “The Data Flowcast: Mastering Apache Airflow® for Data Engineering and 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.

Be Our Guest

Interested in being a guest on The Data Flowcast? Fill out the form and we will be in touch.

Build, run, & observe your data workflows.
All in one place.

Build, run, & observe
your data workflows.
All in one place.

Try Astro today and get up to $500 in free credits during your 14-day trial.