Vol. 3 No. 2 (2023): Journal of AI-Assisted Scientific Discovery
Articles

Harnessing the Power of Generative Artificial Intelligence for Dynamic Content Personalization in Customer Relationship Management Systems: A Data-Driven Framework for Optimizing Customer Engagement and Experience

Sai Ganesh Reddy
Software Development Engineer, Amazon Webservices, Dallas, Texas, USA
Ashok Kumar Reddy Sadhu
Software Engineer, Deloitte, Dallas, Texas, USA
Maksim Muravev
DevOps Engineer, Wargaming Ltd, Nicosoa, Cyprus
Dmitry Brazhenko
Software Engineer, Microsoft, USA
Maksym Parfenov
Senior Software Engineer, Spacemesh, Wroclaw, Poland
Cover

Published 01-12-2023

Keywords

  • Generative AI,
  • Customer Relationship Management (CRM),
  • Dynamic Content Personalization,
  • Natural Language Processing (NLP),
  • Deep Learning,
  • Customer Engagement,
  • Customer Experience,
  • Customer Lifetime Value (CLTV)
  • ...More
    Less

How to Cite

[1]
S. Ganesh Reddy, A. Kumar Reddy Sadhu, M. Muravev, D. Brazhenko, and M. Parfenov, “Harnessing the Power of Generative Artificial Intelligence for Dynamic Content Personalization in Customer Relationship Management Systems: A Data-Driven Framework for Optimizing Customer Engagement and Experience”, Journal of AI-Assisted Scientific Discovery, vol. 3, no. 2, pp. 379–395, Dec. 2023, Accessed: Nov. 10, 2024. [Online]. Available: https://scienceacadpress.com/index.php/jaasd/article/view/111

Abstract

The current business environment necessitates a paradigm shift within Customer Relationship Management (CRM) systems. Customers now demand hyper-personalized experiences tailored to their specific needs, preferences, and buying journeys. Traditional CRM systems, often reliant on static content, struggle to deliver this level of individualization. This research investigates the potential of generative artificial intelligence (generative AI) to address this critical gap. Generative AI offers a transformative approach for creating dynamic content that personalizes the customer experience within CRM systems.

This work proposes a data-driven framework that leverages generative AI to analyze vast repositories of customer data. This data encompasses demographics, past interactions, purchase history, and social media sentiment. By integrating natural language processing (NLP) techniques, the framework extracts key insights from customer communications. This allows for the generation of content that aligns with individual preferences and buying stages. Deep learning algorithms further enhance this personalization by identifying complex patterns and relationships within the customer data. This enables the creation of highly targeted content that resonates with each customer segment, fostering deeper customer connections and driving loyalty.

To evaluate the effectiveness of the proposed framework, a series of controlled experiments will be conducted. These experiments will analyze the impact of generative AI-powered content personalization on key performance indicators (KPIs) within the CRM system. Click-through rates, conversion rates, customer satisfaction scores, and customer lifetime value (CLTV) will serve as the primary metrics to assess the influence of dynamic content on customer engagement and experience. The findings from these experiments are expected to contribute valuable insights into the efficacy of generative AI for personalizing the customer journey within CRM systems. Additionally, the research will explore potential limitations and ethical considerations associated with the application of generative AI in this context, such as data privacy concerns and potential biases within the AI models.

This research builds upon the existing body of knowledge surrounding the application of artificial intelligence (AI) in the CRM domain. By focusing on generative AI's unique capabilities for content creation, this work aims to advance the understanding of how CRM systems can be optimized to deliver superior customer experiences in a data-driven manner. The proposed framework offers a practical approach for organizations to leverage generative AI and establish a competitive advantage in the evolving CRM landscape.

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