Automate Strategy Finding with LLM in Quant Investment

arXiv — cs.LGTuesday, November 4, 2025 at 5:00:00 AM
A new framework utilizing Large Language Models (LLMs) is set to revolutionize quantitative finance by automating strategy finding. This innovative approach tackles the limitations of traditional deep learning models, making it easier to generate and evaluate financial strategies. By employing prompt-engineered LLMs and a multi-agent system, this method promises to enhance the robustness and effectiveness of financial applications, which is crucial for investors looking to navigate complex markets.
— via World Pulse Now AI Editorial System

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