Article

What Is DataOps? Definition, Core Practices, and Enterprise Implementation

DataOps for enterprises: automate, govern, and monitor data pipelines to boost reliability and analytics speed.

DataOps is the application of Agile and DevOps principles to data management—specifically to the pipelines, transformations, and processes that move data from source systems to analytics and AI applications. It focuses on making data delivery faster, more reliable, and continuously improving through automation, testing, version control, and cross-team collaboration. 

DevOps applies Agile engineering practices to software application delivery, breaking down silos between development and operations. DataOps applies the same philosophy to data—breaking down silos between data producers (engineers, source system owners) and data consumers (analysts, scientists, business users). Both share practices like CI/CD, automated testing, and observability, but applied to different artifacts: application code in DevOps, data pipelines and datasets in DataOps. 

Data engineering is commonly structured around four core functions: ingestion (collecting data from source systems), storage (persisting data in warehouses, lakes, or lakehouses), transformation (cleaning, structuring, and enriching data for use), and serving (delivering data to analytics, reporting, and AI applications). DataOps provides the operational discipline—automation, testing, observability—that makes each of these pillars reliable at scale. 

A DataOps engineer designs and maintains the infrastructure, automation, and standards that make data pipelines reliable, testable, and observable. This includes building CI/CD systems for data pipelines, implementing automated quality testing frameworks, managing orchestration platforms, establishing data contracts, and creating the templates and shared tooling that enable other data engineers to build pipelines consistently. The role is the operational backbone of a modern data engineering organization.

Stay in the know

Subscribe to get weekly insights delivered to your inbox.



I consent that Teradata Corporation, as provider of this website, may occasionally send me Teradata Marketing Communications emails with information regarding products, data analytics, and event and webinar invitations. I understand that I may unsubscribe at any time by following the unsubscribe link at the bottom of any email I receive.

Your privacy is important. Your personal information will be collected, stored, and processed in accordance with the Teradata Global Privacy Statement.