Authors
Hamza Landolsi1 and Ines Abdeljaoued-Tej1,2, 1University of Carthage, Tunisia, 2University of Tunis El Manar, Tunisia
Abstract
Generative Artificial Intelligence (GenAI) is revolutionizing the business world by increasing availability, efficiency, cost reduction, and innovation. This paper explores the application of Large Language Models (LLMs) and GenAI to finance. It proposes a novel framework on how we can imagine robo-advisory systems, from a traditional rigid platform to a more humanized solution that further engages the investor in a hand-picking asset selection process and better understands their goals and profile using LLMs. We designed an end-to-end solution to overcome many limitations such as lack of flexibility in robo-advisors, lack of possible asset types (usually only equities) and the problem of real-time access to high quality data. The solution architecture includes dynamic client profiling, risk aversion estimation and portfolio optimization. Using robust data pipelines to curate the latest market information, the Asset Selector Agent has been customized. Through iterative development, we employed prompt engineering and multi-agent workflows to enhance user interactions and deliver meaningful insights. By developing an innovative chatbot platform, we demonstrate the potential of LLMs to transform customer service, increase engagement, and provide strategic financial advice.
Keywords
Generative AI, Large Language Models (LLMs), Big Data, Practical Applications, Agentic Design Patterns, Finance, Investment analysis, Portfolio Optimization