AI-Driven Product Intelligence: Leveraging Network-Aware Agents to Optimize Revenue for Businesses

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Yashovardhan Chaturvedi, Roshin Unnikrishnan, Balaji Solai

Abstract

In today’s data-driven business environment, organizations are increasingly turning to artificial intelligence (AI) to extract actionable insights from vast and complex datasets. This study presents a comprehensive framework that combines AI-driven product intelligence with network-aware agents to optimize revenue and operational performance across sectors. By leveraging advanced machine learning models and graph-based contextual analysis, the proposed system enables real-time monitoring, predictive analytics, and adaptive decision-making across product lifecycles and customer interactions. Empirical analysis across retail, digital services, and consumer electronics sectors reveals significant improvements in key performance indicators, including Gross Revenue Impact, Customer Retention Rate, Forecast Accuracy, and Inventory Turnover. The deployment of network-aware agents further enhances situational awareness and responsiveness by interpreting relationships within interconnected systems such as supply chains, customer networks, and competitive landscapes. This hybrid model demonstrates scalable benefits in business intelligence, offering a strategic advantage in dynamic markets. The study concludes by highlighting the potential for future research in ethical AI governance, transparency, and long-term scalability.

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