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IT to thank for most of Radisson Hotel Group’s business initiatives

CIO Business Intelligence

Then in March, the pandemic hit and hotel activity stopped, but it gave us the chance to accelerate the company’s transformation and digitalization process that started in 2018 with a five-year plan. Until then, the IT part of Radisson was considered a cost center, but thanks to that plan, it became a central pillar of the group’s strategy.

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What Is Data Modeling? Data Modeling Best Practices for Data-Driven Organizations

erwin

Companies that want to advance artificial intelligence (AI) initiatives, for instance, won’t get very far without quality data and well-defined data models. With the right approach, data modeling promotes greater cohesion and success in organizations’ data strategies. But what is the right data modeling approach?

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Deliver on your data strategy with a data fabric

IBM Big Data Hub

When it comes to selecting an architecture that complements and enhances your data strategy, a data fabric has become an increasingly hot topic among data leaders. This architectural approach unlocks business value by simplifying data access and facilitating self-service data consumption at scale. .

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Who to Follow in 2019 for Big Data, Data Governance and GDPR Advice

erwin

With this in mind, the erwin team has compiled a list of the most valuable data governance, GDPR and Big data blogs and news sources for data management and data governance best practice advice from around the web. Top 7 Data Governance, GDPR and Big Data Blogs and News Sources from Around the Web.

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Themes and Conferences per Pacoid, Episode 8

Domino Data Lab

So this month let’s explore these themes: 2018 represented a flashpoint for DG fails, prompting headlines worldwide and resulting in much-renewed interest in the field. The longer answer is that in the context of machine learning use cases, strong assumptions about data integrity lead to brittle solutions overall.