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Data Governance: Achieving Sustainability Among Whiners

Recorded - available as on demand webcast

Let’s face it - no one likes the ‘G’ word. It’s too often a sour antidote to excitement and nimbleness: Triple checks, security barriers, privacy forms, council reviews. It’s as awful as pulling teeth and paying taxes, right? 

Thankfully it doesn’t have to be, and many organizations have found an effective rhythm for long-term, sustainable data stewardship. 

In this session our panelists explore how you can implement this necessary rhythm, even if you’re surrounded by governance resistors.

You will learn:

  • Good governance is empowering, not (only) a “necessarily evil”
  • The Effective As: Automation, Assignment, Attitude
  • Analytics for achieving fast failure (and recovery)

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Seth Earley
Seth Earley
Seth Earley is the Founder & CEO of Earley Information Science and the author of the award winning book The AI-Powered Enterprise: Harness the Power of Ontologies to Make Your Business Smarter, Faster, and More Profitable. An expert with 20+ years experience in Knowledge Strategy, Data and Information Architecture, Search-based Applications and Information Findability solutions. He has worked with a diverse roster of Fortune 1000 companies helping them to achieve higher levels of operating performance.

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