Enhancing Financial Decision-Making with AI-Driven Data Analytics: A Case Study in Investment Portfolio Management

Dr. Michael Patel

Abstract


This paper investigates the application of artificial intelligence (AI) and data analytics in the field of finance, specifically focusing on investment portfolio management. Through the utilization of advanced machine learning algorithms and big data analytics, we develop a model to analyze market trends, risk factors, and investment opportunities. The research aims to demonstrate the potential of AI-driven decision support systems in improving financial decision-making processes, mitigating risks, and maximizing investment returns.


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