AI-POWERED FINANCIAL STRATEGY: TRANSFORMING BUSINESS DECISION-MAKING THROUGH PREDICTIVE ANALYTICS

Abstract
Artificial intelligence (AI)-based predictive analytics has also become a revolutionary approach to contemporary financial planning, as it allows organizations to harness the power of large volumes of data to make accurate predictions, risk management and strategic planning. This article reviews how the element of predictive analytics is being incorporated into corporate financial systems and their potential to contribute to more accurate decisions, more effective utilization of resources and creating sustainable competitive advantages. With a quantitative comparative methodology, the authors review secondary data published in industry reports, financial databases, and peer-reviewed case studies, extending the discussion to use cases in bank, asset management, and corporate treasury activities. Evidence suggests that companies that implement AI-driven predictive analytics enjoy an average improvement in forecasting accuracy, an average 15-20 percent reduction in operational expenses, and a 10-15 percent increase in ROI within the first two years of use. The paper introduces a dual-frame model: the algorithmic basis and strategic refractions of AI implementation into financial workflows and a KPI-based ROI measurement framework based on practical performance experience. The innovation is in the combination of technical information on AI modeling with applied strategic financial performance, which addresses a gap noted in previous literature where implementation has not always been explained in terms of concrete business performance. This research makes a contribution to the financial technology literature by linking predictive analytics outcomes to executive-level decision pipelines, giving the research a dual theoretical and practical value to CFOs, risk managers, and policymakers. The paper closes with findings and recommendations on how to implement effective governance, ethical compliance and capability development strategies to ensure long term value contribution through adoption of AI in the context of an increasingly data-driven economy. Keywords - AI-driven finance, Predictive analytics, Business decision-making, Financial strategy, Data-driven decisions