QuantMCP: Grounding Large Language Models in Verifiable Financial Reality
Yifan Zeng

TL;DR
QuantMCP is a framework that enables large language models to access and utilize real-time, verified financial data through standardized tool invocation, improving their reliability and analytical capabilities in finance.
Contribution
The paper introduces QuantMCP, a novel protocol for securely interfacing LLMs with financial data APIs, enhancing factual accuracy and analytical depth in financial applications.
Findings
Enables LLMs to retrieve real-time financial data accurately.
Improves the reliability of LLM-based financial analysis.
Supports sophisticated data interpretation and insights generation.
Abstract
Large Language Models (LLMs) hold immense promise for revolutionizing financial analysis and decision-making, yet their direct application is often hampered by issues of data hallucination and lack of access to real-time, verifiable financial information. This paper introduces QuantMCP, a novel framework designed to rigorously ground LLMs in financial reality. By leveraging the Model Context Protocol (MCP) for standardized and secure tool invocation, QuantMCP enables LLMs to accurately interface with a diverse array of Python-accessible financial data APIs (e.g., Wind, yfinance). Users can interact via natural language to precisely retrieve up-to-date financial data, thereby overcoming LLM's inherent limitations in factual data recall. More critically, once furnished with this verified, structured data, the LLM's analytical capabilities are unlocked, empowering it to perform…
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Taxonomy
TopicsStock Market Forecasting Methods · Financial Reporting and XBRL · Explainable Artificial Intelligence (XAI)
