Traditional personalization systems fail to maintain coherent user context across fragmented digital experiences, resulting in repetitive preference specification, limited contextual memory, and disjointed user journeys. Users navigate between multiple applications daily, each with isolated personalization capabilities, leading to significant cognitive burden and productivity loss. This paper examines how agentic personalization powered by Large Language Models (LLMs) addresses these limitations through goal-oriented reasoning, temporal persistence, cross-domain coordination, and proactive anticipation capabilities. By leveraging foundation models like GPT-4 and Claude as cognitive substrates, these systems implement retrieval-augmented architectures, hierarchical memory systems, and privacy-preserving frameworks that maintain persistent context across interaction boundaries. Results demonstrate substantial improvements over conventional approaches: higher contextual understanding with faster response times, increased task completion rates, and significant return on investment, particularly in healthcare and financial services sectors. Organizations implementing these technologies report improved customer satisfaction, increased operational efficiency, and reduced cognitive load for users. The integration of these capabilities enables seamless transitions between information retrieval, recommendation, and task execution while maintaining a consistent understanding of user preferences and goals across previously siloed digital ecosystems.
Rohit Upadhyay (Wed,) studied this question.
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