ABSTRACT With the age of digitalization, the union of Artificial Intelligence (AI) and data analytics has unveiled new dimensions in making strategic decision-making optimal. The majority of current AI applications in analytics are static, reactive, or specialized to analyze past patterns of data only and that hinders them from being applied to real-time dynamics and changing business conditions. This study hypothesizes a novel Smart Analytics model in which AI not only computes heterogeneous and high-speed data but also learns incrementally to adaptively improve data-driven strategies in terms of contextual intuition and real-time feedback loops. In contrast with prevailing models, the cutting-edge system is designed to identify automatically strategic inflection points, suggest adaptive interventions, and monitor long-term impact on multi-dimensional Key Performance Indicators (KPIs). The research is built around explainability, predictive flexibility, and strategic fit—features usually given short shrift in existing AI-analytics solutions. The research aims to achieve a self-optimizing AI system through simulations and case studies that can transform analytics into a strategic growth driver rather than a back-office support function. Results will recast organizational awareness and leverage of AI in terms of future-proof business strategy. Keywords: Smart Analytics, Artificial Intelligence (AI), Data-Driven Decision Making, Real-Time Analytics, Adaptive Machine Learning, Predictive Modeling, Context-Aware Systems, Explainable AI (XAI), Business Intelligence (BI), Strategic Optimization, Feedback Loops, Data Governance, AI in Industry, Prescriptive Analytics, Autonomous Systems
Dr. Raj Kumar Garg (Thu,) studied this question.
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