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To work effectively, big data requires a large amount of high-quality information sources. Where is all of that data going to come from? Proactivity: Another key benefit of big data in the logistics industry is that it encourages informed decision-making and proactivity.
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From increasing the strategic use of high-value data across organizations to advancing data and governance efforts to an AI-ready state, expectations are high for the contributions of data professionals in the year ahead. Thankfully, technology can help. Information is based on the best available resources.
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This facilitates improved collaboration across departments via data virtualization, which allows users to view and analyze data without needing to move or replicate it. These large, regulated organizations depend heavily on data management and security.
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