DataOps - CI/CD Glossary Definition
DataOps brings version control, automated testing, and CI/CD discipline to data pipelines for faster, more reliable data.
DataOps applies agile and CI/CD practices to data pipelines: version control, automated testing, continuous integration, and monitoring of data workflows to deliver reliable data faster.
DataOps treats analytics pipelines as software products, with the same review, test, and deploy rigor teams use for application code.
Core practices
DataOps means pipelines in version control, data tests in CI, automated deployment across environments, and observability on freshness and quality in production.
Related guides
MLOps - CI/CD Glossary DefinitionMLOps: MLOps applies CI/CD, testing, monitoring, and automation practices to the machine-learning lifecycle,…
Data Pipeline - CI/CD Glossary DefinitionData Pipeline: A data pipeline is an automated series of steps that moves data from sources to destinations,…
Data Quality - CI/CD Glossary DefinitionData Quality: Data quality measures how accurate, complete, consistent, and timely data is relative to expect…