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Business unIntelligence: Beyond Analytics and Big Data

The old world of business intelligence is being transformed into a new biz-tech ecosystem. Analytics is forcing the recombination of operational and informational systems in a consistent and coherent IT environment for all business activities. Big data - despite the hype - introduces two very different types of information that transform how business processes interact with the external world. Together, these directions are driving new business intelligence, very different to its prior form, which presenter Dr. Barry Devlin calls "Business unIntelligence".

In this session Barry will cover business drivers and results of the biz-tech ecosystem, modern conceptual and logical architectures for information, process and people, the positioning of all forms of business analytics and big data, and provide a roadmap from today's business intelligence to tomorrow's business insight and innovation.

Dr. Barry Devlin, is founder and principal of 9sight Consulting since 2008. He specialises in human, organisational and IT implications of deep business insight solutions that combine operational, informational and collaborative environments. He is among the foremost authorities on business insight and one of the founders of data warehousing, having published the first architectural paper on the topic in 1988. With over 30 years of IT experience, including 20 years with IBM as Distinguished Engineer, he is a widely respected analyst, consultant, lecturer and author.
Recorded Sep 11 2013 42 mins
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Presented by
Dr. Barry Devlin, Founder and Principal Consultant, 9sight Consulting
Presentation preview: Business unIntelligence: Beyond Analytics and Big Data

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  • Title: Business unIntelligence: Beyond Analytics and Big Data
  • Live at: Sep 11 2013 12:00 pm
  • Presented by: Dr. Barry Devlin, Founder and Principal Consultant, 9sight Consulting
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