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  1. DataOps

Data Observability

PreviousData QualityNextData Program Management

Last updated 6 months ago

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    1. and what is the dataOps cycle, i.e., "The DataOps cycle outlines the fundamental activities needed to improve how data is managed within the DataOps workflow. This cycle consists of three distinct stages: Detection, Awareness, and Iteration."\

Monte Carlo
BigEye
Databand
What is data observability
DQOps