Deriving Insights and Financial Summaries from Public Data Using Large Language Models

International Journal of Innovative Research in Engineering and Multidisciplinary Physical Sciences 12 (6):1-12 (2024)
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Abstract

This paper investigates how large language models (LLMs) can be applied to publicly available financial data to generate automated financial summaries and provide actionable recommendations for investors. We demonstrate how LLMs can process both structured financial data (balance sheets, income statements, stock prices) and unstructured text (earnings calls, management commentary) to derive insights, predict trends, and automate financial reporting. By focusing on a specific publicly traded company, this research outlines the methodology for leveraging LLMs to analyze company performance and generate investor-focused summaries and recommendations.

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