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ZhuLinsen/daily_stock_analysis

LLM 驱动的多市场股票智能分析系统:多源行情、实时新闻、决策看板与自动推送,支持零成本定时运行。 LLM-powered multi-market stock analysis system with multi-source market data, real-time news, decision dashboard, automated notifications, and cost-free scheduled runs.

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What it does

This project is an AI-powered stock analysis tool that automatically monitors stocks across Chinese, Hong Kong, and US markets, then delivers daily investment decision reports — including buy/sell signals, risk alerts, and trend scores — directly to messaging apps like Telegram, Slack, or email. It runs entirely on free cloud infrastructure, requiring no server or ongoing costs, making sophisticated market analysis accessible without a Bloomberg terminal.

Why it matters

With nearly 43,000 stars and 40,000 forks, this project signals massive demand for affordable, AI-driven financial intelligence tools — a space historically dominated by expensive institutional platforms. For founders and investors, it validates that combining AI with financial data and zero-cost deployment is a compelling product formula, particularly in Asian markets where retail investing culture is strong and self-directed traders are actively seeking an edge.

25Active

On the radar — signal detected

Stars
49.9k
Forks
43.7k
Contributors
86
Language
Python

Score updated Jun 24, 2026

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