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Tackling Business Challenges with Master Data Management

Data is fast becoming the most valuable asset a business possesses. New technologies are making it easier to store, integrate and analyze ever-growing volumes of data. But technology alone can’t turn data into profit. You need a master strategy to ensure data is trusted, timely and accessible. You need MDM for the Product Domain.

Join Liaison Technologies for a discussion of MDM for the Product Domain (or PIM) from a strategic business perspective. We'll dispel the confusion surrounding this fledgling discipline and highlight some of the many pain points MDM can ease when done right. In the process, you'll discover:

• How MDM can impact your omni-channel marketing strategy
• The benefits of connecting data across an enterprise
• How to reduce time to market with clean, accessible data
Recorded Nov 4 2014 44 mins
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Presented by
Tom Marine, Principal Consultant, MDM at Liaison
Presentation preview: Tackling Business Challenges with Master Data Management

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  • Live at: Nov 4 2014 7:00 pm
  • Presented by: Tom Marine, Principal Consultant, MDM at Liaison
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