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Paco Nathan
2019-03-24 18:20:26
2019-03-24 18:20:26
Data governance is an almost overwhelming topic. This talk surveys history, themes, plus a survey of tools, process, standards, etc. Mistakes imply data quality issues, lack of availability, and other risks that prevent leveraging data. OTOH, compliance issues aim to preventing risks of leveraging data inappropriately. Ultimately, risk management plays the 'thin edge of the wedge' in enterprise.