The Future of Data Monetization: Strategies for AI-Driven Revenue Generation
Keywords:
data monetization, artificial intelligence, predictive analyticsAbstract
The rapid expansion of data in digital economy has compel the advance strategies for monetization, while artificial intelligence (AI) playing a crucial role in extracting financial value from vast datasets. This paper explores the AI-driven data monetization frameworks that utilises machine learning algorithms, predictive analytics, and intelligent automation to transform raw data into actionable business assets.
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References
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