PASS logo

Summit video library

Designing an Execution Framework for Azure Data Factory

Andy Leonard

Attend “Designing an Execution Framework for Azure Data Factory” and takeaway:

1. Comparison and contrast of Azure Data Factory debug and triggered execution.
2. Benefits and limitations of the Execute Pipeline activity.
3. Benefits and complexity of using the Azure Data Factory REST API for execution.

Experience or familiarity with developing, scheduling, and monitoring Azure Data Factory pipeline executions is suggested.

If your enterprise manages dozens of ADF pipelines, an execution framework is unnecessary overhead. If your enterprise manages thousands of ADF pipelines? You need an execution framework. But how should you implement it? Should you take a straightforward approach and use the Execute Pipeline activity or implement a metadata-driven approach using the Azure Data Factory REST API?

Get the Latest

Sign up to stay up to date with news, special announcements and educational content.

Redgate will only contact you about PASS Data Community Summit (in line with our Privacy Policy) unless you separately request emails about Redgate. You can unsubscribe from these updates at any time.