Data-Driven E-commerce Marketing Strategies: The Integration of Big Data and Artificial Intelligence
Main Article Content
Keywords
E-commerce, Big Data, Artificial Intelligence, Marketing Strategy, Personalization, Customer Experience, Predictive Analytics
Abstract
This paper explores the integration of Big Data and Artificial Intelligence (AI) in shaping modern e-commerce marketing strategies. The convergence of these technologies enables businesses to gain a deep understanding of consumer behavior, predict future trends, and provide personalized experiences at scale. Through case studies and technological analysis, we demonstrate how AI and Big Data are transforming customer interactions, optimizing marketing efforts, and increasing return on investment (ROI) in the e-commerce sector. We also highlight the challenges and future prospects of leveraging these technologies effectively.
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