Modern enterprises need to quickly deliver the right data to a growing data consumer audience to drive strategic initiatives, often encompassing data science and machine learning, and thereby create competitive advantage. But many of these projects are failing because yesterday’s processes and systems can no longer meet today’s analytics requirements. Traditional data pipelines are breaking, and data quality is suffering.
The following Gartner report will inform your understanding of DataOps and where to apply it including:
Gartner, Innovation Insight for DataOps, Nick Heudecker, Ted Friedman, Alan Dayley, 27 December 2018
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