April 2026
Intermediate to advanced
412 pages
10h 17m
English
In the previous chapters, we focused on techniques and approaches for building data pipelines. You ingested data from source systems, built transformations, materialized the results as Delta Lake tables, and applied initial performance optimizations - the pipeline works.
The next question is how to run this pipeline in production. How do you safely deploy it and evolve it over time? What happens when you need to fix bugs, improve performance, or introduce new features? And how do you manage the development and maintenance of multiple data-engineering projects, with multiple developers working in parallel?
These questions move us beyond pipeline implementation and into production readiness, collaborative ...
Read now
Unlock full access