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Data analytics is critical for processing vast amounts of information to uncover patterns and actionable insights. Organizations such as Google, Netflix, and Spotify excel in leveraging data analytics to enhance user experiences and personalize offerings. Companies like IKEA, Samsung, Software AG, and Toyota exemplify this principle.
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