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As organizations struggle with the increasing volume, velocity, and complexity of data, having a comprehensive analytics and BI platform offers real solutions that address key challenges, such as data management and governance, predictive and prescriptiveanalytics, and democratization of insights.
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Ever since the digitization of casinos, casino managers are being exposed to a great deal of data. Hidden tangled within this sea of data lie many insights, which can open up new opportunities for growth and revenue. This is what makes the casino industry a great use case for prescriptiveanalytics technologies and applications.
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Today, modern travel and tourism thrive on data. For example, airlines have historically applied analytics to revenue management, while successful hospitality leaders make data-driven decisions around property allocation and workforce management. What is big data in the travel and tourism industry?
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